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IJSRET Volume 11 Issue 2, Mar-Apr-2025

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E- Nursery Retail Project Using Clustering Algorithm & Visual Data Representation
Authors:-Savita Sawant, Supriya Morve, Janhavi Bhosale

Abstract-The “E- NURSERY RETAIL” project is a dynamic and user-friendly online platform designed to revolutionize the plant nursery retail experience. This web-based solution aims to bridge the gap between plant enthusiasts and nurseries, providing a comprehensive and accessible platform for users to explore, purchase, and engage with a diverse range of plants and gardening products. The project leverages modern e-commerce functionalities, intuitive design, and community-building features to create a seamless and enriching online environment for plant enthusiasts. The platform boosts a vast and well-curated catalog of plant species. Users can explore detailed descriptions, care guides, and customer reviews to make informed purchasing decisions. An intuitive and visually appealing user interface ensures a seamless browsing and shopping experience. In this project, the implementation of the machine learning algorithm works as a recommendation system that suggests or recommends additional products to consumers. These can be based on various criteria including past purchases, search history, demographic information and other factors. This is implemented using clustering algorithms that can be used to group similar users together based on their preferences and behaviors. Visualization of data provides graphical representation of project-related information which makes complex project data more understandable and accessible, allowing project teams and stakeholders to gain insights, make informed decisions, and communicate effectively for visual data representation.

Farmer Assist Agri Bot an Automated Seeding Arrangement by Robot in Cultivation Land
Authors:-Gk. Rameswari, L.Amarnadh, N.Ganesh, R.Venkatesh, Mrs.S.Priyanka

Abstract-In recent years, robotics in agriculture sector with its implementation based on precision agriculture concept is the newly emerging technology. The main reason behind automation of farming processes are saving the time and energy required for performing repetitive farming tasks and increasing the productivity of yield by treating every crop individually using precision farming concept. Designing of such robots is model based on particular approach and certain considerations of agriculture environment in which it is going to work. These considerations and different approaches are discussed in this paper. Also, prototype of an autonomous Agriculture Robot is presented which is specifically designed for seed sowing, forming task only.

Precision Tracking and Enumeration of Benthic Species with Yolo+ Deepsort Network Improvements
Authors:-Dhanalakshmi V, Amirthajaya T, Bhuvaneshwari A

Abstract-The health of marine ecosystems is vital for biodiversity and ecological balance, with benthic species serving as key indicators of environmental conditions. Traditional monitoring methods, such as manual surveys and video analysis, are labor-intensive and error-prone. This research proposes an AI-driven solution integrating an optimized YOLO object detection model with an improved DeepSORT tracking algorithm for accurate benthic species identification and counting. The approach addresses challenges like poor visibility, occlusion, and species overlap, enhancing monitoring efficiency for conservation and fisheries management. Experimental results demonstrate an accuracy of 87.1% mAP@0.5 and 53.3% mAP@0.5:0.95, showing improvements of 1.8% and 4.0%, respectively, over YOLOv5. The integration of DeepSORT further strengthens its application in marine ranching supervision. This AI-based method offers a reliable and automated alternative for marine ecosystem evaluation and conservation efforts./p>
DOI: 10.61137/ijsret.vol.11.issue2.201

Multimodal Sentiment Analysis
Authors:-Assistant Professor Ms.S.Prathi

Abstract-Multimodal sentiment analysis (MSA) integrates data from multiple sources, such as text, audio, and visual cues, to enhance the accuracy and interpretability of sentiment classification models. Traditional sentiment analysis predominantly relies on textual data, which can be limited in capturing non-verbal nuances like tone of voice or facial expressions. This paper explores the synergy between text, speech, and visual data in sentiment analysis tasks, addressing key challenges such as data alignment, feature extraction, and fusion techniques. We compare various fusion strategies, including early, late, and hybrid fusion, using state-of-the-art deep learning architectures such as convolutional neural networks (CNNs), recurrent neural networks (RNNs), and transformers. Experimental results demonstrate that multimodal approaches significantly outperform unimodal systems, providing higher accuracy and robustness in sentiment detection. We discuss the potential applications of multimodal sentiment analysis in fields such as social media monitoring, customer sentiment analysis, and healthcare. Finally, the paper outlines future research directions, emphasizing the need for more efficient fusion techniques and the incorporation of emerging models to advance multimodal sentiment analysis further.

DOI: 10.61137/ijsret.vol.11.issue2.202

Money Theft Deterrent: Intelligent Locking and Monitoring in Bank
Authors:-Gangireddy Jayakumarreddy, Pikkili Hari Krishna, Dr.Selvarasu.S

Abstract-This work proposes an intelligent locking and monitoring system to significantly enhance money theft deterrence in banking environments. Leveraging advanced sensor technologies and AI-driven analytics, the system provides real-time threat detection and automated response. Integrated biometric authentication and multi-factor authorization protocols fortify access control to sensitive areas and cash reserves. The system employs dynamic locking mechanisms, triggered by anomalous activity, to prevent unauthorized entry and asset removal. Continuous video surveillance, coupled with intelligent image processing, identifies and tracks suspicious behaviors within the bank premises. Remote monitoring capabilities enable swift intervention by security personnel in response to potential theft attempts. Data encryption and secure communication channels ensure the integrity and confidentiality of sensitive monitoring information. Predictive analytics models are utilized to forecast potential security breaches and proactively mitigate risks. The system aims to minimize human error and response time, thereby increasing the overall effectiveness of theft deterrence. This intelligent approach provides a robust, adaptable, and scalable security solution for modern banking institutions.

DOI: 10.61137/ijsret.vol.11.issue2.203

A Study on Comparative Analysis of Working Capital Management of Selective Pump and Motor Manufacturing Companies in Coimbatore
Authors:-Author Jhanani P, Associate Professor Dr. P. Syamsundar

Abstract-This study examines the working capital management practices of three prominent motor and pump manufacturing companies in Coimbatore: A S Engineering, RI Pumps, and LGI Equipment Limited. Working capital management is crucial to financial performance, directly affecting liquidity, operational efficiency, and profitability. This paper presents a comparative analysis over five years (2019-2024), highlighting key performance indicators such as inventory, receivables, and payables turnover. The findings suggest that A S Engineering has demonstrated consistent improvements in liquidity and receivables management, while LGI Equipment shows robust liquidity but struggles with receivables. RI Pumps, although progressing, lags in inventory and cash conversion efficiency. The study’s insights offer actionable recommendations for optimizing working capital, enhancing both financial stability and competitiveness in the pump and motor manufacturing industry.

Correlation of California Bearing Ratio with Index Properties of Subgrade Soils in Konso Zone, Snnpr, Ethiopia
Authors:-Mr. Bahiru Berisha Koyrita, Associate Professor Dr. Vasudeva Rao, Assistant Professor Mr. Democrcy Dillo, Mr. Abiy Ilto

Abstract-The California Bearing Ratio (CBR) is crucial for assessing soil strength during pavement design, particularly in evaluating subgrade performance. It is tedious and time consuming to obtain CBR tested values in the laboratory even though use of CBR as a performance parameter is widely acknowledged. It is also very difficult to prepare sample at desired level in situ density for laboratory testing. This study investigates the correlation between CBR values and various index properties of subgrade soils in of Konso Zone, Ethiopia. CBR tests were performed on twenty four soil samples in the laboratory, collected from various locations in Konso Zone. This research presents and discusses the results of CBR values predicted by linear regression and multi-linear regression in comparison with the tested results of various soil properties. Experimental findings show that CBR presents meaningful statistical relationships with the liquid limit, plastic limit, plasticity index, % finer passing through 0.075mm, maximum dry density and optimum moisture content. Soil characteristics were used in predictive model development through relationship analysis to determine CBR values. The established models delivered accurate and dependable results which function as economically sound substitutes for established CBR testing methods. The study emphasizes that using index and compaction properties can effectively evaluate subgrade strength, offering a more feasible and cost-effective approach than direct CBR testing. Consequently, the proposed equations serve as practical tools for preliminary material identification in the local context. Based on the test results, the soils are categorized as fine soils. Investigation of the experimental data indicated that there exist a good correlation among the actual value and predicted value of CBR. Most important equations are proposed, and applicable with sufficient accuracy for preliminary identification of material for the local area. California bearing ration, CBR is the function of Liquid limit (LL) and plastic limit (PL) i.e. CBR =fn(LL, PL) with recommended equation of, CBR=-0.0536 (LL)- 0.1424 (PL)+12.881. Thus, from practical point of view it is easier and feasible to use index and compaction properties to evaluate the subgrade strength characterization for road design purpose within short time and less cost than the CBR test, as a result this model can have a vital role in doing so.

Combining Data Filtration and Regression Learning for Enhancing the Forecasting of Cryptocurrencies
Authors:-Neha Sunhare, Dr. Kamlesh Ahuja

Abstract-The cryptocurrency market is highly volatile and unpredictable, making traditional financial models less effective for price forecasting. Unlike stock markets, which are influenced by earnings reports and economic indicators, cryptocurrency prices are driven by a combination of market sentiment, technological developments, regulatory changes, and supply-demand dynamics. Due to the complexity and non-linearity of these factors, machine learning (ML) has emerged as a powerful tool for predicting crypto prices with greater accuracy. The proposed work employs the steepest descent based scaled back propagation algorithm along with the data pre-processing using the discrete wavelet transform (DWT) for crypto price prediction. It has been shown that the proposed system attains lesser MAPE% error compared to previously existing techniques making it a more accurate forecasting model.

DOI: 10.61137/ijsret.vol.11.issue2.204

Machine Learning-Based Network Intrusion Detection for Iot and Smart Detection Using Recursive Feature Elimination, Binning Technique and Grid Search CV
Authors:-Damilola Akinola, Micheal Olalekan Ajinaja, Yetunde Esther Ogunwale

Abstract-The rapid growth of Internet of Things (IoT) devices and smart technologies has heightened the risk of network intrusions, demanding advanced Intrusion Detection Systems (IDS) for cybersecurity. This study proposes a machine learning-based IDS framework for IoT networks, utilizing Recursive Feature Elimination (RFE), binning techniques, and GridSearch CV for feature selection and hyper parameter tuning. The framework employs the CICIDS2017 dataset, a widely used benchmark for intrusion detection, to train and validate the models.The proposed pipeline begins with data preprocessing, including attribute verification, duplicate removal, and label encoding, followed by a robust feature selection process. RFE is used to retain the most significant features, while feature engineering incorporates domain knowledge to generate new attributes. Binning techniques are applied to handle continuous features, and GridSearchCV is employed to identify the best parameter combinations for model optimization. The framework includes several machine learning models, including Logistic Regression (LR), Decision Tree (DT), Random Forest (RF), Naive Bayes (NB), and Support Vector Machine (SVM), which are optimized through the feature selection and hyperparameter tuning process.Visualization techniques are utilized to enhance understanding of feature importance and model behavior. The performance metrics highlight the effectiveness of the approach, with Random Forest achieving a notable accuracy of 99.78%, followed by Decision Tree with 99.50%. These results underscore the capability of the proposed methodology to address network intrusion detection challenges within IoT ecosystems.The framework provides a robust and scalable solution for securing interconnected IoT systems against evolving cyber threats. Its ability to efficiently detect intrusions and optimize model performance demonstrates its potential as a valuable tool for enhancing cybersecurity in IoT networks.

Development of Eco-Friendly Bricks Using Industrial and Agricultural Waste
Authors:-M P Iniya, K Sabarinathan, G Shanmugave Murugan, V Rishi

Abstract-One of the most important and often used building materials in masonry construction worldwide is brick. The environmental load brought on by trash deposition can be reduced by making bricks from waste materials. The purpose of this study is to assess the impact of adding trash made from rice husk ash. Samples were prepared with different percentages of cement, fly ash, lime, river sand, and rice husk ash. recycling a variety of waste materials, including as fly ash (40 – 60%), rice husk ash (15 – 20%), lime (10%), cement, and river sand (15 – 20%), for use in brick production. The dimensions of the brick specimen are 230 x 110 x 75 mm. Experiments are conducted to examine differences in properties including compressive strength, water absorption, hardness, and soundness. This review will lead to recommendations for additional research on the effects of that waste on bricks’ mechanical and physical properties. The uses of agricultural wastes as cheap and environmental-friendly construction materials are beneficial towards provision of affordable housing in developing country.

DOI: 10.61137/ijsret.vol.11.issue2.205

Voice Controlled Wheel Chair with Fall Detection Using Iot
Authors:-Aarthi B, Dharshana S P, Dharshini k, S.Hari Kumar

Abstract-This project aims to design and implement an assistive system for people with disabilities, combining voice- based wheelchair control, health monitoring, and emergency alert features. The system utilizes an Arduino Nano, Bluetooth communication, a mobile application, and various sensors to monitor the user’s health status in real-time. The wheelchair can be controlled via voice commands received from a mobile app, allowing users to move the wheelchair with simple verbal instructions. Health monitoring is achieved through sensors that track the user’s heart rate, body temperature, and detect falls using an accelerometer. In the event of an emergency, the system can send notifications via SMS using a GSM module, which includes the user’s GPS location and health data. Additionally, all sensor data is uploaded to the ThingSpeak IoT platform for remote monitoring and analysis. This integrated system provides not only mobility assistance but also enhances safety and well-being for disabled individuals by offering real- time health status updates and emergency alerts.

DOI: 10.61137/ijsret.vol.11.issue2.206

Voice Controlled Wheel Chair with Fall Detection Using Iot
Authors:-Aarthi B, Dharshana S P, Dharshini k, S.Hari Kumar

Abstract-This project aims to design and implement an assistive system for people with disabilities, combining voice- based wheelchair control, health monitoring, and emergency alert features. The system utilizes an Arduino Nano, Bluetooth communication, a mobile application, and various sensors to monitor the user’s health status in real-time. The wheelchair can be controlled via voice commands received from a mobile app, allowing users to move the wheelchair with simple verbal instructions. Health monitoring is achieved through sensors that track the user’s heart rate, body temperature, and detect falls using an accelerometer. In the event of an emergency, the system can send notifications via SMS using a GSM module, which includes the user’s GPS location and health data. Additionally, all sensor data is uploaded to the ThingSpeak IoT platform for remote monitoring and analysis. This integrated system provides not only mobility assistance but also enhances safety and well-being for disabled individuals by offering real- time health status updates and emergency alerts.

DOI: 10.61137/ijsret.vol.11.issue2.206

Maximizing Lifetime of IOT-Based Hetero WSNs for Sustainable Smart City Application
Authors:-Janani S, Lavanya S, Manju shri S, Mrs.K.Yazhini

Abstract-IoT-based Heterogeneous WSN (HWSN) technologies are useful instruments for accomplishing sustainability objectives in Sustainable Smart Cities (SSCs) due to their adaptability and wide range of applications. Even though WSN heterogeneity is still being investigated by researchers, it is becoming increasingly crucial to develop affordable models that address many aspects of SSC while maintaining their stability and dependability. To identify disjoint CSs that are energy-aware, we suggest a novel technique, the Required Energy Aware technique (REA). In every iteration, the REA algorithm carefully attempts to create the set that optimizes longevity while abiding by CS criteria. The output simulation increases network longevity, reduces resource consumption, and permits effective distribution of data sensing and collection activities throughout the network.

DOI: 10.61137/ijsret.vol.11.issue2.207

Future of Online Bike Rental Systems in Smart Cities
Authors:-Meenachi Sri S, Nandhini S M, Naveena M, M.Dharmalingam

Abstract-The rapid growth of urban mobility solutions has increased the demand for efficient and secure bike rental systems. This project proposes an automated bike rental system using RFID, GPS, and IoT technologies to enhance the rental experience. The system ensures accurate rentals, prevents unauthorized access, and optimizes bike availability through real-time tracking. The RFID-based scanning system enables automatic bike identification and authentication, reducing human error. Each bike has an RFID tag, while rental stations feature RFID readers for automated check-in and check-out, streamlining the rental process. GPS tracking provides real-time location monitoring, improving fleet management and user safety. Users can locate bikes, check availability, and plan trips efficiently. IoT integration connects bike locks, tracking modules, and the mobile app for seamless operation. Smart locks with RFID sensors automatically unlock bikes upon successful user verification. IoT ensures real-time updates on bike status, battery levels, and maintenance needs. The mobile application allows users to rent bikes, track rentals, and make payments securely. Secure communication protocols protect user data and prevent cyber threats. The system is scalable, supporting multiple locations and rental stations. Cloud management ensures efficient data handling and fleet coordination. By integrating automated management, real-time monitoring, and enhanced security, this system offers a reliable and safe bike rental solution for urban commuters.

DOI: 10.61137/ijsret.vol.11.issue2.208

Document Management for Loan Applications in Sales Force
Authors:-Pratham Chauhan, Bhumi Kaushal Shah

Abstract-Effective document management is critical for financial institutions handling loan applications. Salesforce, a leading CRM platform, offers robust document management solutions that streamline loan processing, improve compliance, and enhance customer experience. This research paper explores document management in Salesforce for loan applications, highlighting its features, benefits, challenges, and real-world case studies.

MATLAB Based Analysis of Synthetic Chirp Signals Using FFT and CWT
Authors:-Rudra Krishna

Abstract-This paper compares two popular methods for time-frequency analysis: the Fast Fourier Transform (FFT) and the Continuous Wavelet Transform (CWT) for a synthetic chirp signal wave. We apply these techniques to a chirp signal, which is a non-stationary signal with a frequency that changes over time. The results demonstrate the strengths and limitations of each method, highlighting the FFT’s ability to provide global frequency information and the CWT’s superior time-frequency localization. FFT renders the representation of signal only in the frequency domain. The CWT, using the morse wavelet, on other hand provides a more compact visualisation of the signal in both time and frequency domain visualising or representing the frequency domain of the signal simultaneously. The performance of these techniques is compared visually and computationally.

DOI: 10.61137/ijsret.vol.11.issue2.209

Collusion-Free MANET Communication Framework for Direct Connectivity
Authors:-Asmitha V, Jaya Malini V, Manisha M, K. Amudha

Abstract-Dynamic, infrastructure-free communication be- tween mobile devices are made possible via mobile ad hoc networks, or MANETs. Their dependability is hampered by issues including malicious activity, node cooperation, and security risks. A collusion-free MANET communication architecture for safe and effective direct mobile-to-mobile networking is pro- posed in this research. The system uses trust-based processes and sophisticated cryptographic algorithms to identify and stop node collusion. Network performance indicators like throughput, latency, and packet delivery ratio may be thoroughly analyzed through simulation using MATLAB. By improving MANETs’ overall security and dependability, the suggested method enables smooth communication in dynamic, resource-constrained con- texts. Results show that it performs better than current methods, which makes it appropriate for use in remote connectivity, military operations, and disaster recovery.

DOI: 10.61137/ijsret.vol.11.issue2.210

Window Cleaning Device
Authors:-Abinaya R, Dharanish V, Kavyasri R, Lalitha S

Abstract-Maintaining clean windows in high-rise buildings and difficult-to-reach areas is a challenging and time-consuming task. This project presents an Automated Window Cleaning Device designed to efficiently clean glass surfaces with minimal human intervention. The device is equipped with a suction motor and Velcro mechanism to adhere securely to the glass, along with wheels for smooth movement across the surface. It integrates a sprayer system for applying cleaning solution and microfiber cloths to ensure effective cleaning. The device operates on an external power supply, supported by an inbuilt backup battery to handle short-term power interruptions. Additionally, it features proximity sensors to navigate window edges and ensure full surface coverage. Users receive notifications in case of power disruptions, enhancing safety and reliability. This system offers a cost-effective, efficient, and safe solution for maintaining clean windows, reducing manual labour and improving accessibility for high-rise buildings.

DOI: 10.61137/ijsret.vol.11.issue2.211

E-Commerce Recommendation Based on Latent Features of User & Product
Authors:-Yogini Sarathe, Professor Rahul Patidar, Professor Jayshree Boaddh

Abstract-In recent years, online shopping has become an integral part of daily life, offering convenience and requiring minimal effort for purchasing products. With the rapid growth of e-commerce businesses, recommendation engines have emerged as a vital component in enhancing user experience and driving sales. These engines have gained widespread popularity due to their effectiveness and ease of integration into modern online platforms. This paper has proposed a product recommendation system that utilizes user and product features. Products that were explore by user has its own latent features that were extract and used for the recommendation. This paper extract user features as well for improving the recommendation accuracy. Experiment was done on different set of product and user counts. Result shows that proposed model has increases the prediction accuracy.

Leveraging Technology for Tax Reform in India: Emerging Trends and Impacts on Taxpayer Services
Authors:-Manikandan B, Kiruthika G, Meghana, Kavya M, Mithil Udupa, Lonika Singh U, Navyasree, N Roshan Choudhury

Abstract-The rapid application of technology in India has improved the administration of taxes, bringing along with it the solution to traditional inefficiencies, improved compliance, and better taxpayer service. Integration of digital solutions allows for transparency, reduction in fraud, and facilitates seamless revenue collection for increased economic growth. The key reforms have modernized the system by making it more efficient and user-friendly: e-Tax filing, Goods and Services Tax Network, and data analytics in tax compliance. Artificial Intelligence, machine learning, and blockchain are becoming revolutionary vehicles to detect fraud; an automated process for the benefit of taxpayers is achieved while referring to tax advice. However, it faces challenges in the form of the digital divide, cybersecurity risks, technological complexity, and resistance to change. To overcome these, strong digital infrastructure, programs for taxpayer education, and secure data management systems will be needed for the sustainable success of digital tax reforms. In line with India’s continued digital transformation, effective use of technology in building a more inclusive, efficient, and transparent tax ecosystem will be imperative.

Experimental Studies on Mechanical Properties of Self Healing Geopolymer Concrete
Authors:-S. Kavipriya, S. Adithiya, P. Gowtham, S. James Christopher

Abstract-This study investigates the development and mechanical properties of bacteria-infused self-healing ceramic-based geopolymer concrete. Geopolymer concrete, a sustainable alternative to traditional cement-based concrete, was infused with bacteria (Bacillus Megaterium) to enhance its self-healing capabilities. Geopolymer is a new development in the world of concrete in which cement is totally replaced by pozzolanic materials like fly ash and activated by highly alkaline solutions to act as a binder in the concrete mix. In this project we have totally replaced cement with ceramic powder. Therefore, efforts are made in this study to develop geopolymer concrete by employing ceramic powder as binder material and sodium hydroxide (NaOH) and sodium silicates (Na2SiO3) as alkaline activators. The activator solution (AAS) to binder solids (BS) ratio ranging from 0.4 to 1.0. Investigations are carried out to determine the fresh properties and mechanical properties such as compressive strength, splitting tensile strength, flexural strength and water absorption also carried out. Present investigation has been under taken to study the strength parameters of GPC on adding 10%, 20%, 30% of bacteria (Bacillus Megaterium) along with water in GPC. The results show that the bacteria-infused geopolymer concrete exhibits improved mechanical and self healing properties, reduced water absorption, and enhanced self-healing capabilities compared to the control concrete. This innovative material has potential applications in infrastructure development, offering a sustainable solution for concrete structures.

DOI: 10.61137/ijsret.vol.11.issue2.212

Consumer Attitudes toward Solar Panel Installation in Coimbatore
Authors:-Mukilan V, Assistant Professor Mr. T K Ashvin

Abstract-This study explores the factors influencing consumer attitudes toward installing solar panels in Coimbatore, a city known for its high solar potential and progressive outlook on environmental sustainability. Through descriptive and regression analysis of responses from 134 individuals, the study investigates economic, social, and environmental motivators and deterrents impacting solar adoption. Results indicate that trust in government-provided information, social influence, and cost-saving potential drive positive attitudes, while high installation and maintenance costs present challenges. The findings suggest targeted awareness programs and incentive-based strategies could increase solar adoption, supporting Coimbatore’s renewable energy goals.

Some Peculiarities of Creation the Laser-Induced Thin Films
Authors:-Petro P. Trokhimchuck

Abstract-Some peculiarities of generation and modeling of laser-induced films are discussing. This problem is connecting with problem of phase transformations. Difference mechanisms of generation surface and subsurface laser-induced structures are analyzing. Roles of regimes of irradiation (saturation of excitation, geometrical sizes of irradiation zone, temporal characteristics) on formation corresponding structures and geometrical form of substrate are shown. So, the surface laser-induced structures are represented of indium antimonite, indium arsenide, silicon and germanium structures, which are received after irradiation of nanosecond pulses of Neodimium laser and nanosecond and millisecond Ruby laser. Volume structures are represented for femtosecond pulse laser irradiation of silicon carbide and nanosecond pulse CO2-laser irradiation of potassium chloride. Two various models allow to explain these results. Some problems of application these results in modern optoelectronics in more wide sense (including other methods of receiving black silicon and other nanostructures) are discussing too. The application of laser radiation in more complex technological processes using ion implantation and external electromagnetic fields is also discussed.

Adapting Pre-Performance Protocols from Sports Psychology for Music Education
Authors:-Hin-Sing Au

Abstract-This comprehensive review explores how to translate the pre-performance routine protocols of sports psychology to music education. By organizing empirical research from both fields, this review aggregates evidence-based practices for performing preparation and offers structured protocols for implementation in music education. These results provide evidence that structured preparations before performance can promote performance consistency and psychological preparedness in music to a similar degree that they are known to do in sport. This review offers some useful recommendations for music educators and suggests important questions for research to follow in performance-prep technique.

The Fintech Industry in India: Current Trends and Future Prospects
Authors:-Palak Gupta

Abstract-The fintech industry in India has experienced significant growth over the past decade, driven by advancements in digital payments, regulatory support, and increased financial inclusion. This paper explores the current state of fintech in India, highlighting key segments such as digital banking, payment solutions, lending platforms, and blockchain-based innovations. Furthermore, it delves into the challenges faced by the sector, including cybersecurity threats, regulatory hurdles, and financial literacy issues. The study also provides insights into future trends, such as the rise of artificial intelligence (AI) in financial services, the role of central bank digital currencies (CBDCs), and the increasing adoption of open banking. By analyzing the trajectory of fintech in India, this research aims to provide a comprehensive understanding of its impact on the broader financial ecosystem and its future growth potential.

Circular Economy in Lithium Battery Manufacturing: Recycling Waste for a Sustainable Future
Authors:-Prabhjyot Kaur Juneja, Karan Gupta

Abstract-The exponential growth in lithium-ion battery (LIB) production has brought challenges, including significant waste generation and environmental impact. This paper explores strategies for recycling and reusing waste materials in lithium battery manufacturing to align with circular economy principles. It examines key technologies like hydrometallurgy and pyrometallurgy, evaluates their economic and environmental implications, and analyzes case studies of recycling initiatives within manufacturing facilities. By integrating experimental data and economic modeling, the study demonstrates the potential of recycling to reduce production costs, decrease reliance on virgin materials, and lower carbon emissions. The findings highlight a pathway for lithium battery manufacturers to adopt sustainable practices without compromising profitability.

DOI: 10.61137/ijsret.vol.11.issue2.219

Thermal Management during Manufacturing of Lithium-Ion Batteries
Authors:-Prabhjyot Kaur Juneja, Karan Gupta

Abstract-Thermal management is a critical aspect of lithium-ion battery (LIB) manufacturing, influencing product quality, process efficiency, and safety. This paper examines various methods for controlling temperature during key production stages such as electrode preparation, cell assembly, and electrolyte filling. Techniques like active cooling, infrared (IR) heating, and advanced thermal monitoring systems are analyzed for their effectiveness. Using case studies, experimental data, and thermal simulations, the research evaluates the impact of temperature control on material integrity, energy efficiency, and manufacturing throughput. Results indicate that optimized thermal management not only improves battery performance and lifespan but also reduces operational costs and energy consumption. Recommendations for future innovations in thermal management technologies are discussed to meet the growing demand for high-quality LIBs in electric vehicles (EVs) and energy storage systems.

DOI: 10.61137/ijsret.vol.11.issue2.220

OSINT-Based Threat Intelligence: Investigating Leaked Data on the Dark Web
Authors:-Professor Dr. Mukesh Patidar, Kasani Vignesh Kumar

Abstract-The Dark Web has become a hotspot for cybercrime, serving as a market for stolen credentials, financial data, and sensitive corporate information. It poses an emerging threat for organizations to identify and counter threats that are created from leaked data, as cybercriminals utilize advanced anonymiza- tion tools and encryption in an effort to remain anonymous to law enforcement. Open-Source Intelligence (OSINT) has been a motivating factor for cybersecurity researchers to track, analyze, and assess such threats on the basis of publicly available information as well as automated reconnaissance techniques.
This study paper examines OSINT-driven threat intelligence processes to analyze leaked data on the Dark Web. The paper explores the processes through which cybersecurity analysts use tools such as Maltego, SpiderFoot, and Scrapy in order to monitor Dark Web markets, forums, and hidden sites. The paper explores data collection methods, legal and ethical issues, and methods of evading cybercriminal detection. The study also presents real- life case studies of data breaches, breaking down the patterns in cybercrime attacks and the type of information that is most often leaked. The findings of this research provide information on the extent and impact of leaked data, establishing trends in cybercrime activity and offering countermeasures. The study highlights the importance of proactive monitoring, real-time processing, and automation in OSINT-driven threat intelligence. Future research will include the integration of AI-driven threat intelligence systems to enhance detection rates and automate Dark Web investigations, thereby improving cybersecurity defenses for or- ganizations and government agencies.

Embracing Predictive Analytics and Statistical Methods for Optimizing Financial Decision-Making in Business Intelligence
Authors:-Harinee R V, Sathya P, Subiksha T, Karthika Devi M M, Sanjana D, Monish P, Dr.R.Suganthi

Abstract-Financial decision-making demands a strategic strategy backed by data-driven insights in the quickly changing company environment. Statistical techniques and predictive analytics have become strong business intelligence tools that help firms improve resource allocation, reduce risks, and improve forecasting accuracy.(1) This study examines how statistical methods and predictive analytics can be combined to improve financial decision-making, with a focus on how they can increase strategic planning and decision accuracy. We illustrate their influence on financial performance optimization by thoroughly examining machine learning models, time series forecasting, regression analysis, and other statistical techniques. In order to demonstrate the usefulness of these approaches in business intelligence, we also go over case studies and real-world applications.(2) This paper explores how businesses can embrace these advanced methodologies to optimize financial decision-making within the broader scope of business intelligence, highlighting both the potential benefits and challenges of implementing these techniques.

IoT Based Industrial Fault Monitoring System
Authors:-Maruti Katke, Pooja Panchal, Shreya Karande, Prof. Puja Johari

Abstract-The goal of the project is to develop a system, which uses Mobile technology that keeps control of the Industrial effects and activities by using Fire, Smoke, Temperature, LDR and PIR sensor. From the sensors quantities are measured and given to the controller (Arduino). Input value will convert the analogical values into digital format and forwards to the controller. The controller will process this information and it will continuously update to server. If the sensors values exceed from the predefined values, then system will give the alert message and information is updated on the server through GPRS (General Packet Radio Service) modem. GPRS (General Packet Remote system) is the technology that underpins most of the world’s mobile phone networks. GPRS is a packet-switching protocol that allows for the transmission of data over cellular networks. Packet-switching is the process of breaking large amounts of data into smaller pieces for transmission across networks GPRS enables always-on internet access, multimedia messages, and other advanced phone features. This system has the fault monitoring capability, which leverages IoT sensors and devices to detect anomalies in machinery and processes. By continuously monitoring parameters such as temperature, vibration, and pressure, these systems can identify potential faults before they lead to significant failures. IoT (Internet of Things) applications in industrial automation allow operators to monitor and control equipment and processes remotely, which can reduce the need for on-site maintenance. This can improve efficiency, reduce costs, and enhance safety.

DOI: 10.61137/ijsret.vol.11.issue2.213

Climate Change Impact on Water Resources: Predictive Modelling with Deep Reinforcement Learning
Authors:-Assistant Professor Amit Kumar Pandey, Ms. Saloni Rathod, Ms. Sejal Gupta

Abstract-Climate change has significantly altered global hydrological patterns, leading to extreme fluctuations in water availability. This study explores the application of Deep Reinforcement Learning (DRL) to develop a predictive model for analysing climate change’s impact on water resources. By leveraging meteorological and hydrological datasets, the proposed model aims to forecast variations in water availability, quality, and demand. The study integrates climate variables such as temperature, precipitation, and humidity to enhance the decision-making capabilities of policymakers and environmental planners. The findings of this research provide a robust framework for sustainable water resource management.

DOI: 10.61137/ijsret.vol.11.issue2.214

Comparative Modal Analysis of Engineering Materials for High-Speed Machining Applications Using CATIA
Authors:-Research Scholar Nakul Bharti, Assistant Professor Neeti Soni, Assistant Professor Dr. Rajesh Rathore, Assistant Professor Praveen Patidar

Abstract-The present research investigates the comparative modal analysis of three different engineering materials – AISI 4140 alloy steel, Ti-6Al-4V titanium alloy, and carbon fiber reinforced polymer (CFRP) – using CATIA software. The study focuses on analyzing and comparing the dynamic characteristics including natural frequencies, modal stress distributions, and displacement patterns for the first ten modes of vibration in critical machine tool components. The analysis was performed on standardized test specimens with identical geometric configurations to establish a direct comparison of material-dependent behavioral patterns in high-speed machining applications. The results demonstrate that Ti-6Al-4V exhibits the highest natural frequencies ranging from 195.823 Hz to 5124.67 Hz across the ten modes, followed by AISI 4140 (171.797 Hz to 4924.49 Hz) and CFRP (98.432 Hz to 2841.31 Hz). The stress analysis reveals maximum values of 1.48E+12 N/m², 1.22E+12 N/m², and 7.14E+10 N/m² for Ti-6Al-4V, AISI 4140, and CFRP respectively at the tenth mode. Displacement patterns indicate that CFRP experiences the highest deflection (890-1240 mm), while Ti-6Al-4V demonstrates the most restricted displacement (312-587 mm). The research provides valuable insights into the dynamic behavior of these materials, facilitating informed material selection for various manufacturing applications and tooling designs. The findings particularly highlight the potential of CFRP as a lightweight alternative in applications where vibration damping and lower stress concentrations are desired. Utilizing CATIA for the component modeling and frequency analysis has enabled precise simulations and detailed insights into the material-specific behaviors under dynamic machining conditions. The findings provide essential data that could influence material selection in modern manufacturing processes. This research contributes to the field by offering a deeper understanding of how material properties affect the dynamic performance of manufacturing components, guiding production engineers in optimizing designs for precision and efficiency in various machining applications.

Token Stacking and Earn Reward System
Authors:-Shubham Gogdani, Harmit Vagadiya, Utsav Padaliya, Dhrumil Karena, Mukesh Patidar

Abstract-This paper introduces a novel approach to decentralized finance (DeFi) through a Token Stacking and Earn Reward System. By utilizing blockchain technology and smart contracts, this system allows users to stack tokens to earn rewards securely and transparently. The process is fully automated, eliminating intermediaries, which improves both efficiency and trust. This research focuses on the architecture, mechanisms, and advantages of such a system, highlighting the significant role of decentralized technologies in the evolution of financial systems.

DOI: 10.61137/ijsret.vol.11.issue2.215

Optimizing Traffic Flow and Congestion Management: An in-Depth Study of Modern Techniques and Technologies
Authors:-Nalla Keerthana, Assistant Professor Mudigonda Harish Kumar

Abstract-Traffic congestion is a persistent issue in urban areas globally, resulting in delays, increased fuel consumption, environmental pollution, and reduced quality of life. This paper examines various traffic flow and congestion management techniques, including traditional methods and modern technologies such as intelligent transportation systems (ITS), adaptive traffic signal control, and real-time data analytics. Through traffic simulation models, empirical data collection, and case studies, this research evaluates the effectiveness of these methods in reducing congestion and improving traffic flow. Results suggest that the combination of smart traffic systems, demand management, and road infrastructure improvements significantly enhances traffic performance.

Automation of Waste Segregation System Using Arduino
Authors:-C. Gnanavel, T. Gopalakrishnan, S. Ajith Arul Daniel, Vijay Ananth Suyamburajan, S. Sivaganesan

Abstract-Waste segregation is crucial for effective waste management, reducing landfill waste, and minimizing environmental hazards. This paper presents an Automated Waste Segregator (AWS) that classifies waste into metallic, wet, and dry categories using a combination of inductive, capacitive, and moisture sensors. The system incorporates an IoT-based alert mechanism to notify authorities when the waste bin reaches capacity. The proposed system offers a cost-effective and efficient solution for household and industrial waste management. Experimental results demonstrate the successful segregation of waste with high accuracy.

University Enquiry for Student Using AI ChatBot
Authors:-Sanchita Barve, Priyanka Shembade, Rutik Deshkhaire

Abstract-A chatbot is a piece of computer software that may initiate conversations between users and other machines. A broader audience can be reached with chatbot technology, which is text-based and secure. Chatbots for scholarly research are developed using AI algorithms that interpret user messages and assess user demands. Without being physically present at the company, the chatbot’s objective is to match user input when answering inquiries. The application responds to the students’ inquiries by using its intelligence. These kinds of applications can be menu-driven, form-based, command line, graphical user interface (GUI), natural processing language, etc. Web-based and TGUI are the two most popular types of user interfaces; however, sometimes another type is required. Conversational user interfaces based on chatbots are useful in this situation. One type of bot that has been utilized in chat systems is the chatbot. Users can interact with them through graphical interfaces, and this is currently the trend. They usually offer a stateful service, meaning that each session’s data is saved by the application. It’s common to be unsure about where to find information on a college’s website. It could be difficult for someone who isn’t a student or employee to locate information about colleges. A chatbot for college questions is the result of fixing these problems. It is a quick, easy, and educational widget that improves user experience on college websites by giving consumers useful information. The chatbot uses artificial intelligence (AI) and natural language processing (NLP) technology to answer user questions. Questions concerning academics, examination cells, admission, users’ attendance and grade point average, placement cells, and other diverse activities are all effectively addressed by this user interface. Chatbots are systems with integrated data that enable them to recognize user inquiries and provide answers. This approach might be an online application that provides the student with the answers to their query. Students prefer using the bot to converse and pose inquiries. After analyzing the user’s inquiry, the program provides an answer. The inquiry is answered by the machine as though it were being asked by someone. With the use of algorithms, the program answers the pupils’ query.

DOI: 10.61137/ijsret.vol.11.issue2.216

Effect of Bonding Strength on the Tensile Performance of Shape Memory Alloy Incorporated Glass Fiber Reinforced Epoxy Composites
Authors:-T. Gopalakrishnan, S. Ajith Arul Daniel, Vijay Ananth Suyamburajan, S. Sivaganesan, C. Gnanavel

Abstract-The tensile performance of Shape Memory Alloy (SMA)-incorporated Glass Fiber Reinforced Epoxy (GFRP) composites depends critically on interfacial bonding strength. This study examines the impact of SMA surface treatments (plasma, acid etching, silane coupling) on Ultimate Tensile Strength (UTS) and Young’s modulus, assessed using ASTM D3039 tensile testing. Results show that silane-coated SMA composites achieved a 33% increase in UTS and a 28% rise in Young’s modulus, with plasma-treated and acid-etched SMA wires also improving stress transfer. SEM analysis revealed that strong bonding reduced fiber pull-out and micro-cracks, while weak bonding led to early failure. These findings confirm that surface treatment enhances stress transfer efficiency, improving mechanical properties for aerospace, automotive, and structural applications.

Investigation of Momordicacharantia Seed Biodiesel with Aluminum Oxide Nano Particle on CI Engine
Authors:-Ruban M, S.Venugopal, S.Jacob, V.S Shaisundaram, Kannan S.P

Abstract-Diesel is the principle source of transportation. It adds to the success of the overall economy since it is broadly utilized because of high combustion efficiency, versatility, unwavering quality, and cost-adequacy. In any case, contamination emanations are a noteworthy disadvantage. Emission from diesel engine are a genuine risk to the earth and are viewed as one of the significant source of air pollution. The demand in biofuels from years made a scope for Momordicacharantia seed oil into biodiesels.Momordicacharantia seed oil having low calorific value contrasted with different biodiesels yet in addition upgraded us in making another alternative utilizing Momordicacharantia seed oil which has lesser emission and improvement in performance. In this exploration work, biodiesel four blends from Momordicacharantia seed oil with Aluminium oxide added substance is investigated in its emission and performance characteristics. The outcomes demonstrated B30 (30% biodiesel, 68% diesel and 2% Aluminium oxide) gives better performance when compared with different blends.

Design and Fabrication of Composite Material in Brake Pads
Authors:-S.Jacob, V.S Shaisundaram, S.Baskar, S.Ramasubramanian, Sathya Narayan M

Abstract-The use of asbestos fiber is being avoided due to its carcinogenic nature that might cause health risks. A new brake pad was produced using banana peels waste to replaced asbestos and Phenolic resin (phenol formaldehyde), as a binder was investigated. The resin was varying from 5 to 30 wt% with interval of 5 wt%. Morphology, physical, mechanical and wear properties of the brake pad were studied. The results shown that compressive strength, hardness and specific gravity of the produced samples were seen to be increasing with increased in wt% resin addition, while the oil soak, water soak, wear rate and percentage charred decreased as wt% resin increased. The samples, containing 25 wt% in uncarbonized lemon, orange and pomegranate peels. The result of this research indicates that lemon, orange and pomegranate peels particles can be effectively used as a replacement for asbestos in brake pad manufacture.

Design, Simulation and Analysis of Floating Rotor Brake Plate
Authors:-Karikalan L, Ruban M, S.Venugopal, S.Jacob, Gokula Krishnan M

Abstract-In an ever-evolving automotive landscape, brake systems play a pivotal role in ensuring vehicle safety and performance. This engineering project takes an extensive look at the design, analysis, and implications of a floating rotor brake plate, a critical component within the disc brake assembly. By examining the detailed design and modeling process, simulation analysis, and experimental testing of the floating rotor brake plate, this project addresses the limitations of traditional solid disc rotors. Key objectives include enhancing thermal management, reducing weight, and simplifying maintenance. The implications of this research extend to improving brake system design, increasing safety and reliability, reducing vehicle weight, and streamlining maintenance procedures, contributing to the automotive industry’s pursuit of safer, more efficient, and high-performance vehicles.

Review on Design of Solar Microgrid and Improvement of its Power Quality
Authors:-Sunil Yadav, Professor Amit kumar Asthana

Abstract-A microgrid, regarded as one of the cornerstones of the future smart grid, uses distributed generations and information technology to create a widely distributed automated energy delivery network. This paper presents a review of the microgrid concept, classification and control strategies. Besides, various prospective issues and challenges of microgrid implementation are highlighted and explained. Finally, the important aspects of future microgrid research are outlined. This study would help researchers, scientists, and policymakers to get in-depth and systematic knowledge on microgrid. It will also contribute to identify the key factors for mobilizing this sector for a sustainable future.

Review on a Novel Approach to Implementation of an Based Solar and Wind Power Generation Hybrid Grid
Authors:-Narendra kumar, Professor Amit kumar Asthana

Abstract-Now a day’s electricity is most needed facility for the human being. All the conventional energy resources are depleting day by day. So we have to shift from conventional to non-conventional energy resources. In this the combination of two energy resources is takes place i.e. wind and solar energy. This process reviles the sustainable energy resources without damaging the nature. We can give uninterrupted power by using hybrid energy system. Basically this system involves the integration of two energy system that will give continuous power. Solar panels are used for converting solar energy and wind turbines are used for converting wind energy into electricity. This electrical power can utilize for various purpose. Generation of electricity will be takes place at affordable cost. This paper deals with the generation of electricity by using two sources combine which leads to generate electricity with affordable cost without damaging the nature balance.

Enhancing Data Interpretation: A Deep Dive into Waterfall, Histogram, Pareto and Box & Whisker Charts
Authors:-Meha Surya K, G.Hari, Mathan Gokul K, Dinesh P R, Professor Dr. R. Suganthi

Abstract-In the era of data-driven decision-making, Impactful visualization techniques are key to gaining meaningful insights from data. This article explores four essential data visualization tools Waterfall, Histogram, Pareto, and Box & Whisker Charts each serving distinct analytical purposes. The Waterfall Chart helps track incremental changes in financial and operational metrics, while the Histogram visualizes data distribution patterns. Applying the 80/20 principle, the Pareto Chart focuses on the most significant factors impacting results to prioritize key contributors in a dataset, and the Box & Whisker Chart provides a statistical summary of data dispersion, including outliers. By understanding the functionalities and applications of these charts, professionals can enhance data interpretation, improve strategic decision-making, and present complex information more effectively. This article offers a comprehensive guide to these visualization techniques, highlighting their real- world applications and comparative advantages in various analytical scenarios.

Unlocking the Power of Data: Transformative Applications of Business Analytics in Commerce
Authors:-Ms.A.Suruthi, Ms.G.Kaviya, Ms.T.Sahana, Ms.R.Prarthana Sherin, Professor Dr.R.Suganthi

Abstract-Making data analysis to predict market trends for goods and services and to improve the operation of enterprise systems is a crucial corporate survival task in today’s cutthroat environment. However, it is becoming more and more clear that real-time data analysis is necessary for business success, and that real-time responses to analysis findings are also necessary to meet the rapidly shifting demands of regulators and customers. After outlining the problems and difficulties with current business intelligence systems, this paper outlines our vision for real-time business intelligence in the future.

Research Paper: The Effect of Temperature on the Attraction of Gravitons in a Hypothetical Framework
Authors:-Sachindra Nath Nisad

Abstract-The theory of gravity, as described by Einstein’s General Relativity, does not include a particle mediator for gravitational forces. However, in attempts to unify quantum mechanics and general relativity, gravitons are postulated as the quantum mediators of gravity. This research presents a theoretical framework in which the attraction of gravitons increases as the temperature of a system increases. We explore how temperature-induced fluctuations in quantum fields could influence the gravitational force mediated by gravitons, potentially offering new insights into the interplay between thermodynamics and gravitational forces at quantum scales.

DOI: 10.61137/ijsret.vol.11.issue2.218

AI-Powered Chatbots for Customer Support: Enhancing User Experience and Efficiency
Authors:-Sachin Patkari, Bhumi Shah

Abstract-The integration of Artificial Intelligence (AI) in customer support has revolutionized the way businesses interact with their customers. AI-powered chatbots have emerged as a pivotal tool in enhancing user experience and operational efficiency. This paper explores the development, implementation, and impact of AI-powered chatbots in customer support. We delve into the technological underpinnings, including Natural Language Processing (NLP) and Machine Learning (ML), that enable chatbots to understand and respond to customer queries effectively. Furthermore, we analyze case studies from various industries to demonstrate the tangible benefits of chatbots, such as reduced response times, improved customer satisfaction, and cost savings. The paper also addresses challenges and future directions, including ethical considerations and the potential for more advanced AI integrations. Our findings suggest that AI-powered chatbots are not only a trend but a necessity for businesses aiming to thrive in the digital age.

Remote Controlled Water Garbage Collector Using Arduino
Authors:-Professor Kadar.S.Tamboli, Suraj.S.Ghaytidak, Makrand.V.Navale, Pratik.H.Patil

Abstract-This project emphasis on design of the river waste collection. Trillions of pieces of plastic currently pollute the seas, rivers, lakes, ocean harming sea life, contaminating ecosystems and making a mess on beaches. Thus It’s important to clean up the plastic in the water, but nobody knows how best to do so yet. These days practically all the assembling procedure is being automized so as to convey the items at a quicker rate. Automation plays an important role in mass production. In this venture we have manufactured the remote worked waterway cleaning machine. Prime objective of our project is to collect all the wastes which are found floating on water bodies and to minimize labor work. These are done by using a hardware prototype and by using an Microcontroller for controlling all parts of a machine by using an smart phone by using Wi-Fi or Bluetooth. We have attempted to meet every one of the destinations to this item fruitful with the end goal that our item gets propelled in the market.

Comparative Analysis of Machine Learning Algorithms for Customer Churn Prediction
Authors:-Riyansh Agiwal

Abstract-Customer churn prediction represents a critical challenge for modern businesses across multiple sectors. This comprehensive study evaluates various machine learning algorithms for predicting customer attrition, comparing traditional approaches like logistic regression with more advanced ensemble methods such as Random Forest and XGBoost. The research demonstrates that while ensemble methods achieve superior accuracy (with XGBoost reaching 91.7% accuracy compared to logistic regression’s 83.4%), their practical implementation requires careful consideration of interpretability, computational efficiency, and business context. The integration of a Tkinter GUI significantly enhances model usability, bridging the gap between technical complexity and practical business application. This paper provides evidence-based guidance for selecting appropriate algorithms based on specific business requirements and available resources.

Transformers: A Review and Use in Text Analytics, Topic Modelling and Summarization
Authors:-Prateek Majumder, Neha Roy Choudhury, Anshuman Jha

Abstract-Automatic text summarization and zero-shot classification are crucial tasks in natural language processing (NLP), aiding in information retrieval, content compression, and text classification. Recent advances in deep learning and transformers have significantly improved the accuracy and efficiency of these tasks. This study evaluates multiple state-of-the-art transformer-based models for text summarization, including Google’s T5, PEGASUS, Facebook’s BART, and Longformer Encoder-Decoder (LED). We assess their performance using the ROUGE and BERTScore metrics to determine their effectiveness in generating concise and contextually accurate summaries. The T5 model, pre-trained on C4, achieves state-of-the-art results on many NLP benchmarks while being flexible enough to be fine-tuned to a variety of important downstream tasks [1]. Also, zero-shot classification with the facebook/bart-large-mnli model is considered in this work, with no training labels beforehand for classification of text into predefined categories. Classification accuracy for a variety of domains, including Politics, Sport, Technology, Entertainment, and Business, is considered in analysis. To classify even more precisely, a corpus with labels is fine-tuned with the BART model and improvement in prediction accuracy and loss over a range of training runs measured. Zero-shot classification, useful for general categories, is seen to have improvement room in specific domains for classification. Classification with fine-tuning of the BART model reduces evaluation loss but comes with hyperparameter search and a larger corpus for even heightened accuracy. Traditionally, zero-shot learning (ZSL) most often referred to a fairly specific type of task: learn a classifier on one set of labels and then evaluate on a different set of labels that the classifier has never seen before [2].

DOI: 10.61137/ijsret.vol.11.issue2.221

Artificial Intelligence in Cybersecurity Threat Detection
Authors:-Vaibhav Trivedi, Professor Bhoomika B. Chauhan

Abstract-The rapid growth of digital technologies has led to an exponential rise in cyber threats, making traditional security measures inadequate in combating sophisticated cyberattacks. Artificial Intelligence (AI) has emerged as a crucial technology in cybersecurity, offering enhanced threat detection through machine learning, deep learning, and behavioral analytics. AI-driven cybersecurity solutions can analyze vast datasets in real time, detect anomalies, predict potential attacks, and automate threat mitigation. By leveraging AI, organizations can strengthen their defense mechanisms against evolving cyber threats, including ransomware, phishing, and advanced persistent threats (APTs). This paper delves into the role of AI in cybersecurity, focusing on its applications in real-time threat detection, anomaly identification, and predictive analytics. Additionally, it examines the advantages, challenges, and future trends in AI-driven cybersecurity, emphasizing the importance of integrating AI with other security technologies to create a robust defense ecosystem. The findings suggest that AI-powered cybersecurity solutions significantly enhance security resilience, but ethical concerns, adversarial AI attacks, and implementation challenges must be addressed for widespread adoption.

DOI: 10.61137/ijsret.vol.11.issue2.222

Artificial Intelligence and its Scope with Special Reference to the Field of Education
Authors:-Anjani Jani, Dhaval Nathji, Ankita Hemnani, Professor Kashyap Dave

Abstract-Artificial Intelligence (AI) is revolutionizing education by introducing intelligent tutoring systems, automating administrative tasks, and enhancing personalized learning experiences. This study explores the advantages, challenges, and potential consequences of AI integration within educational settings. AI-driven technologies, such as virtual tutors and adaptive learning platforms, cater to the unique needs of students, leading to increased engagement and improved outcomes. Additionally, AI aids educators by streamlining administrative responsibilities and grading, allowing them to dedicate more time to instruction.

Enhancing Customer Relationship Management in the Automobile Industry: A Data-Driven Approach
Authors:-Kevin J Shah, Bhumi Kaushal Shah

Abstract-Customer Relationship Management (CRM) has revolutionized the automobile industry by optimizing customer interactions, enhancing service efficiency, and driving customer retention. This paper explores a structured CRM model tailored for automobile dealerships and service centers, emphasizing data-driven decision-making. The research outlines lead management, booking processes, service tracking, and customer retention strategies, demonstrating the impact of CRM automation and analytics.

Design and Implementation of a Customer Relationship Management (CRM) System for the Automobile Industry
Authors:-Rajgiri Y. Goswami, Gayathri Devraj Naidu

Abstract-Customer Relationship Management (CRM) systems play a crucial role in enhancing customer satisfaction, retention, and overall business growth. This paper presents a comprehensive design and implementation framework for a CRM system tailored for the automobile industry. The proposed system integrates lead management, booking management, service history tracking, feedback processing, customer retention strategies, and real-time reporting. The objective is to provide a centralized platform that improves customer engagement, streamlines operations, and delivers actionable insights to the business. The system’s architecture, data flow, user interface design, and performance evaluation are discussed in detail. This research highlights the benefits of automation and predictive analysis in customer relationship management for the automobile sector.

DOI: 10.61137/ijsret.vol.11.issue2.223

IoT-Based Automation and Window Monitoring System
Authors:-Nilesh Babulal Choudhary, Harshal Kisandeo Bhabad, Danish Nurrodin Shaikh, Pratik Gopal Tiwari, Professor Sanjiwani Deshmukh

Abstract-This paper presents IoT-Based Automation and Window Monitoring System development of a smart system designed to automate lighting and fan control based on occupancy detection, while simultaneously monitoring windows and doors for security purposes. The system uses Passive Infrared (PIR) sensors to detect human presence, automatically switching lights and fans on or off depending on whether a room is occupied. Magnetic or Limit switches are used to monitor the status of windows and doors, triggering an alert if they are left open beyond a specified time frame. For enhanced user convenience, notifications are sent directly to the user’s mobile device via a Wi-Fi connection, allowing real-time monitoring and control of the system from anywhere. The core of the system is built around a microcontroller (ESP32), which is responsible for managing the sensor inputs and controlling relays connected to the household appliances. The system is designed to optimize energy usage by preventing unnecessary operation of lights and fans, contributing to reduced electricity consumption. Additionally, by monitoring windows and doors, the system improves home security by notifying the user of potential security breaches. This project combines cost-effective hardware components with reliable software to create a user-friendly system that enhances both convenience and safety. It addresses the growing need for automated, energy-efficient home solutions that integrate security features, making it especially beneficial for homeowners seeking to improve their home environment with minimal effort.

Beyond Aesthetics: Analyzing the Impact of UX Design and Mobile Optimization on Online Jewellery Sales
Authors:-Sharma Lokesh. V

Abstract-The rapid growth of e-commerce has led to a transformation in the jewelry industry, where traditional brick-and-mortar stores are increasingly being replaced by online platforms. This paper explores the design, development, and implementation of an online jewelry website, with a focus on enhancing user experience, product visualization, and secure transactions. The project aims to create an intuitive, user-friendly platform that offers a wide range of jewelry products, including rings, necklaces, earrings, and bracelets, with detailed descriptions, images, and pricing. By incorporating features such as personalized recommendations, virtual try-ons, and secure payment gateways, the website will cater to the growing demand for convenient and reliable online shopping experiences. Additionally, the research will examine the importance of visual appeal, website navigation, and mobile responsiveness in attracting and retaining customers. The findings from this project highlight key challenges and best practices in building a successful online jewelry business, offering valuable insights into e-commerce trends and consumer behavior in the jewelry sector.

Enhancing Law Enforcement with Smart Glasses: A Comprehensive Investigation into Real-Time Criminal Detection Using AI and Machine Learning
Authors:-Bommireddipalli Tejaswi Bharadwaj, Siddharth Singh, Priyanshu Kumar

Abstract-Law enforcement agents can anticipate smart glasses as the next wearable technology evolution which provides innovative and enhanced crime detection capabilities. The paper develops an Intelligent Criminal Detection System (ICDS) which uses smart glasses together with artificial intelligence (AI) and machine learning (ML) features for system deployment. The system development provides police forces with better capabilities to record evidence in real time through improved facial recognition functionality. Fast suspect recognition becomes achievable through the ICDS because of Viola-Jones algorithm integration with OpenCV and YOLOv8 technology which maintains excellent performance in dynamic busy surveillance areas. This paper investigates smart glass engineering dynamics together with their contemporary implementation by police departments to understand their substantial impact on current law enforcement methods. The research evaluates devastating consequences of smart system deployment which includes privacy breaches and data security vulnerabilities together with subjects being misidentified incorrectly. The system architecture identifies the process in which smart glasses interface with police databases and current data systems. The system performance evaluation takes place in simulated environments through tests that verify its operational efficiency against conventional practices by assessing speed accuracy and dependability. This paper investigates smart glass deployment activities from real police departments at Dubai Police and New York Police Department to establish their usage in investigative functions. Research development will follow two main paths according to the paper including the improvement of real-time feedback algorithms alongside affordable systems and ethical frameworks to gain public trust. This paper includes recommended legislation which promotes appropriate use of smart glasses during law enforcement operations alongside the specified protocols. The study combines modern technology with practical field experience to expand criminal detection system knowledge about smart glass deployment.

DOI: 10.61137/ijsret.vol.11.issue2.224

Automatic Vehicle Licence Plate Recognition System Using CNN
Authors:-Assistant Professor Mr.D. Muneendra, M S Kamalesh, Rangannagari Kartheek

Abstract-This paper presents an efficient and robust method for license plate detection and recognition using a machine learning approach. The proposed system follows a three-stage process: image pre-processing, candidate extraction, and license plate verification. Initially, the input image undergoes grayscale conversion and edge detection using an extended Sobel operator. Adaptive thresholding and a novel line density filter are then applied to accurately extract potential license plate regions. A Convolutional Neural Network (CNN)-based classifier is employed to distinguish true license plates from non-license plate regions. The system is trained on diverse datasets to enhance detection accuracy under varying illumination and environmental conditions. Experimental results demonstrate the effectiveness of the proposed method in achieving high accuracy and reliability in real-time license plate recognition.

Leveraging AI for a Voice-Controlled E-Commerce Platform for the Visually Impaired
Authors:-Assistant Professor Ms.P.Priya, Sangeetha S, Jeya Harshini, Mehar Jameera T, Yoga Meenakshi

Abstract-This paper presents a novel voice- controlled e-commerce platform tailored for visually impaired users. The proposed system integrates advanced artificial intelligence (AI) techniques, including state-of-the-art speech recognition, natural language processing (NLP), and machine learning algorithms, to enhance accuracy, personalization, and overall user experience. Unique workflow diagrams illustrate the operational flow of the system as well as the specific AI modules that power contextual understanding and command execution. Experimental evaluations indicate that the integration of AI leads to significant improvements in accessibility navigation, making digital commerce more inclusive.

DOI: 10.61137/ijsret.vol.11.issue2.225

The Data Aesthete’s Compendium: Crafting Insights from the Digital Archive
Authors:-Surekaa J T, Praveen K, Suji Harini S, Dinesh Babu S, Dr. Suganthi R.

Abstract-The Data Aesthete’s Compendium: Crafting Insights from the Digital Archive explores the intersection of data science and artistic expression in interpreting digital archives. It encourages a shift from viewing data as a technical asset to recognizing it as a narrative tool. The journal focuses on transforming raw data into meaningful, engaging insights through creative and analytical approaches. Ethical considerations, including accuracy, representation, and privacy, are central to its mission. It highlights the aesthetic potential of data visualization, blending functionality with artistry. Interdisciplinary collaboration between data science, design, and social studies is emphasized to offer a holistic view. The journal also examines the future impact of emerging technologies like AI and machine learning on data interpretation. Ultimately, it aims to inspire a more thoughtful, human-centered approach to data analysis and presentation. The goal is to unlock the transformative power of data through both analytical precision and creative insight.

Growth and Development of Entrepreneurship: A Study of Self Help Groups in Mizoram State of India
Authors:-Assistant Professor Dr. T.H. Lalrokhawma

Abstract-Entrepreneurs play an important role in the development of a nation. Entrepreneurship helps improve the per capita income of a country by generating new job opportunities. It plays a significant role in increasing Gross National Product. As the GNP grows, the per capita income (PCI) also rises, leading to enhanced economic well-being for the population. Entrepreneurs in the rural parts of India are vital for checking the rate of migration of people to bigger towns and cities as they create opportunities for the rural communities. This study focus on the various factors influencing the growth and development of entrepreneurship by studying the self-help groups within Kolasib district of Mizoram state, India. The study analyse primary and secondary data collected from the respondents through structured questionnaire and personal interview. It adopts statistical tools like correlations, reliability test and factor analysis to find out the factors responsible for bringing this positive changes. The study found that these factors can be classified into three categories –internal support, eternal support and personal traits. The study also suggests the government to disclose various central and state schemes for the greater development of entrepreneurship within the state.

DOI: 10.61137/ijsret.vol.11.issue2.226

Innovation for Sustainability: Tech’s Contribution to a Greener Future
Authors:-Nisha, Devavarnani, Agalya S, Harismitha Y M, Professor Dr. R. Suganthi

Abstract-Innovative technology is becoming more necessary when it comes to sustainability and solving global environmental issues. “Tech for the Planet: Digital Innovations in Sustainability” analyzes how the development of digital technologies is changing sustainability efforts in different industries and ecosystems. The study investigates the uses of artificial intelligence (AI), the Internet of Things (IoT), blockchain, and data analytics in achieving resource optimization, environmental footprint minimization, and climate change adaptation enhancement. These technologies support smart planning and sustainable practices by enabling precise monitoring and transparent decision-making, as well as real-time data accessibility for stakeholders. The abstract focuses on real case studies and demonstrates how different digital innovations transform the energy, agricultural, transportation, and waste management industries. It also looks at important issues like digital divide, privacy issues of data, and the carbon emission of digital frameworks. The study advocates for a multi-stakeholder effort and emphasizes the role of governments, businesses, and communities in addressing technology’s impact on planetary health. This document calls attention to how digital innovations can facilitate a desirable transition toward a sustainable world while promoting necessary policies and actions.

DOI: 10.61137/ijsret.vol.11.issue2.227

Distributed Incremental Adaptive Filter Controlled Grid Interactive Residental Photovoltaic Battery Based Microgrid for Rural Electrification
Authors:-T. Gandhimathi, Associate Professor Dr.S.Pradeep

Abstract-This paper proposes the coordinated control of a hybrid AC/DC power system with renewable energy source, energy storages and critical loads. The hybrid microgrid consists of both AC and DC sides. A synchronous generator and a PV farm supply power to the system’s AC and DC sides, respectively. A bidirectional fully controlled AC/DC converter with active and reactive power decoupling technique is used to link the AC bus with the DC bus while regulating the system voltage and frequency. A DC/DC boost converter with a maximum power point tracking (MPPT) function is implemented to maximize the energy generation from the PV farm. Current controlled bidirectional DC/DC converters are applied to connect each lithium-ion battery bank to the DC bus. Lithium-ion battery banks act as energy storage devices that serve to increase the system stability by absorbing or injecting power to the grid as ancillary services. The proposed system can function in both grid-connected mode and islanding mode.

DOI: 10.61137/ijsret.vol.11.issue2.228

Math Handwriting Conversion Using AI Approach: A Lighter Alternative to Scanning
Authors:-Hien Nguyen Phuoc, Nghia Cao Trong, Linh Nguyen Hoang Anh

Abstract-Recent advances in artificial intelligence have revolutionized the way we digitize handwritten mathematical expressions, offering efficient alternatives to traditional scanning methods. These AI-driven approaches allow for real-time conversion of handwritten math to beautifully rendered equations, making them particularly valuable for students, teachers, researchers, and professionals who frequently work with mathematical notation.

Decoding Deception: A Machine Learning Approach for Detecting and Analyzing Fake News
Authors:-Y Suma Chamundeswari, Pammi Manikanta Pavan Kumar, Gidituri Jayaram, Vurigiti Sai Rohith Yadav, Yellamilli David Branham

Abstract-The spread of fake news has become a significant concern in today’s society, as misleading information can easily damage reputations and lives. To address this issue, researchers have developed fake news detection systems using machine learning techniques. The identification of fake news is rapidly gaining traction and is increasingly being adopted by various industries, either for their own use or to offer as a service to others. Machine learning (ML) and deep learning (DL) are two prominent approaches employed to determine the authenticity of news. There are various methods available for detecting false news through both ML and DL techniques. This paper presents a comprehensive analysis of fake news detection using machine learning approaches. Upon thorough examination, it was found that several ML and DL algorithms have been applied in this domain, with the Support Vector Machine (SVM) being the most commonly used ML method, and Long Short-Term Memory (LSTM) being the most widely applied DL technique.

DOI: 10.61137/ijsret.vol.11.issue2.229

Intelligent Loan Risk Assessment: A Machine Learning Framework for Personalized Credit Evaluation
Authors:-Ch. Veera Gayathri, Nurukurthi Sirisha Kumari, Yarramsetti Prasanna, Donipati Sravani, Yellamilli Joseph Branham

Abstract-Banks are essential to the global financial system, and one of their primary sources of income comes from loan interest. However, if borrowers fail to repay these loans, it can turn profits into substantial losses, highlighting the importance of assessing the risk of default before approving a loan. Machine learning techniques can be an effective method for quickly and accurately evaluating whether a credit risk should be approved. This study explored six machine learning models—Decision Tree, Random Forest, Support Vector Machine (SVM), Multi-layer Perceptron (MLP) Artificial Neural Network, Naive Bayes, and a stacking ensemble model—to predict the credit risk associated with a loan. Using a dataset of twenty factors typically found in loan applications, the stacking ensemble model achieved the highest accuracy at 78.75%. The Random Forest model, though slightly less accurate at 78.15%, was more efficient while yielding comparable results. Key factors such as credit amount, account status, age, loan duration, and loan purpose were identified as the most influential indicators of credit risk. The findings of this research further support the efficacy of machine learning models for predicting loan default risk.

DOI: 10.61137/ijsret.vol.11.issue2.230

Edge AI for Disaster Management in Smart Cities
Authors:-Manoj Gautam Tenkale

Abstract-As urbanization continues to expand, smart cities face growing risks from both natural and human-induced disasters. Conventional disaster management systems predominantly rely on centralized cloud computing, which can lead to delays, bandwidth limitations, and reduced reliability, particularly in emergency situations. Edge AI presents an innovative solution by enabling real-time data pro-cessing at the edge of the network, minimizing response time and enhancing decision-making during crises. This paper examines how Edge AI can improve disaster preparedness, detection, and response in smart cities. Through the integration of edge computing, IoT sensors, and AI-driven models, hazards can be detected in real time, predictive analytics can anticipate potential threats, and emer-gency actions can be executed autonomously—without requiring constant cloud connectivity. Case studies focusing on flood forecasting, earthquake monitoring, and fire detection illustrate the practical benefits of Edge AI in disaster mitigation. Additionally, the paper explores key challenges, including computational constraints, cybersecuri-ty risks, and the complexities of integrating Edge AI with existing urban infrastructure. The findings suggest that, when combined with IoT and 5G technology, Edge AI provides a robust, scalable, and efficient framework for disaster management. This approach ensures faster, local-ized, and more reliable emergency responses, enhancing resilience in modern smart cities.

Unveiling Energy Insights: An Explainable AI-Driven Framework for Precision Household Consumption Forecasting
Authors:-K. Srikanth, Atthuluri Lahari Prathyusha, Kanaparthi Jyothi Sravani, Vittanala Aswitha, Botta Durga Sanjay

Abstract-Effective energy management is essential for promoting sustainability, reducing carbon emissions, conserving resources, and cutting costs. However, traditional energy forecasting methods often fall short in terms of accuracy, indicating a need for more advanced solutions. Artificial intelligence (AI) has emerged as a valuable tool for energy forecasting, but its lack of transparency and interpretability makes it difficult to understand its predictions. To address this, Explainable AI (XAI) frameworks have been developed to enhance the transparency and interpretability of AI models, particularly those considered “black-box” models. This paper examines household energy consumption predictions by comparing various forecasting models using evaluation metrics such as the Coefficient of Determination (R2), Root Mean Squared Error (RMSE), Mean Squared Error (MSE), and Mean Absolute Error (MAE). After testing with unseen data, the best-performing model is selected, and its predictions are explained through two XAI techniques: Local Interpretable Model-Agnostic Explanations (LIME) and Shapley Additive Explanations (SHAP). These methods help identify key factors influencing energy consumption forecasts, such as current consumption patterns and previous energy usage. The study also highlights the importance of XAI in developing predictive models that are both reliable and consistent.

DOI: 10.61137/ijsret.vol.11.issue2.231

MindScope: A Comprehensive Review of Mental Health Assessment via Social Media Using Machine Learning and Deep Learning

Authors:-N.V.S. Sowjanya, Penjerla S S N V M Sri Raj Kumar, Kanakala Tanuja Nirmala Gnaneswari, Suravarapu Dharani Sri, Geddam Hema Alekhya, Karam Mohitha Bramarambika

Abstract-Artificial intelligence holds significant potential to revolutionize healthcare. Machine learning (ML) and deep learning (DL) techniques have been increasingly utilized for predicting and diagnosing a wide range of diseases. In addition, social media platforms such as Twitter, Facebook, and Reddit have become popular outlets for individuals to share their emotions and experiences. Following the COVID-19 pandemic, mental health concerns have escalated, prompting numerous studies that apply ML and DL models to analyses social media data for predicting mental health issues. This research aims to offer an in-depth review of the ML and DL algorithms applied to the prediction of various mental health disorders. It presents an extensive overview of 37 research papers, analysing and compiling a table of the accuracy of these algorithms across four key mental health conditions: Depression, Anxiety, Bipolar Disorder, and ADHD. The study is intended to serve as a foundational resource for future researchers and practitioners, offering insights into the performance of different ML and DL approaches. Additionally, it includes a compilation of publicly available datasets, providing valuable resources for ongoing research in this area.

DOI: 10.61137/ijsret.vol.11.issue2.232

GaitAI: Cutting-Edge Machine Learning for Biometric Gait Recognition and Analysis
Authors:-M. V. Rajesh, Putsala Pujitha, Pothula Mohana Surya Kumari, Guttula Naveen Sagar, Veesam Vamsi, Dara Prudhvi Narayana

Abstract-This study offers a comprehensive investigation into the field of gait recognition in biometric analysis, focusing on the specific challenges associated with using gait as a biometric feature. The research evaluates various machine learning (ML) algorithms, including Individual Node Evaluation, Statistical Inference, Regression Modelling, Support Vector Machines, Nearest Neighbour Classification, Decision Tree Structures, Random Forest Ensembles, and Multilayered Neural Networks. Thorough testing is conducted to assess the performance of each model in accurately identifying individuals based on their unique gait characteristics. The approach emphasizes extensive preprocessing to maintain data quality and relevance. Additionally, Sequential Backward Selection (SBS) is employed for feature selection, along with dimensionality reduction techniques such as Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA), which improve the model’s focus on key features. The research also investigates deep learning models, analysing different architectures to assess their effect on gait recognition accuracy. A detailed comparative analysis evaluates the advantages and limitations of each method, providing valuable insights for the field. By exploring a variety of ML and DL approaches, this study sets a benchmark for future developments in biometric security. It highlights the potential of gait recognition as a reliable, non-invasive identification method, paving the way for the creation of more advanced and precise biometric systems that are crucial for the evolving needs of security and personal identification.

DOI: 10.61137/ijsret.vol.11.issue2.233

IntelliMaint: AI-Driven Predictive Maintenance and Performance Optimization for Mechanical Systems
Authors:-V. Suvarna, Thalisetty Anusri, Kolli Satya Surya Teja, J Jyothisai, Gayatri Chakrani Palla, Malladi Venkatesh

Abstract-To enhance the accuracy of predictions and enable real-time monitoring of mechanical parts’ operational status, a deep learning model was initially developed using a convolutional neural network (CNN) structure to extract features from the mechanical components. Subsequently, another deep learning model was designed to process these extracted features through a fully connected layer for data fusion and classification, facilitating the prediction of lifespan and monitoring of health status. This trained model was then integrated with a monitoring system, creating a comprehensive solution for predicting the lifespan and tracking the health of mechanical parts. Finally, the system underwent continuous optimization and updates to improve both its prediction accuracy and real-time responsiveness, while also adapting to various operating conditions and environmental factors. The results demonstrated that the deep learning model achieved a mean absolute error (MAE) of 2.1, a root mean square error (RMSE) of 2.5, and a mean absolute percentage error (MAPE) of 10%, reflecting strong performance. This approach holds significant potential for practical application in the engineering field.

DOI: 10.61137/ijsret.vol.11.issue2.234

AutoRCuff: CNN-Autoencoder-Based Intelligent Detection of Rotator Cuff Tendon Tears from Ultrasound Imaging
Authors:-Y. Suma Chamundeswari, Vella Anusha, Yaramati Lakshmi Satya Sri, Akula Deepika, Lokesh Kumar Boora, Yamana Sri Sai Raghunandan

Abstract-Rotator cuff muscle tears are among the most prevalent musculoskeletal injuries, and ultrasound imaging serves as an effective diagnostic tool. However, the interpretation of these scans requires specialized expertise, often leading to significant delays in diagnosis. This study introduces an AI-driven approach to accelerate the detection of full-thickness rotator cuff tears, reducing assessment time from months to mere minutes. The proposed method consists of two key steps: first, segmentation of the humeral cortex and subacromial bursa, followed by classification of tears based on these identified regions. Automated segmentation in ultrasound imaging poses challenges due to speckle noise, low contrast, and image artifacts. To overcome these, we employ a CNN-based autoencoder that directly predicts the boundary contour points of relevant anatomical structures instead of traditional pixel-wise semantic segmentation. This approach enhances interpretability by focusing on clinically significant landmarks rather than relying on a black-box classifier. The study utilized a dataset of 206 patients, comprising 10,080 training images and 2,520 evaluation images. The proposed segmentation model outperformed the conventional UNet, achieving a Dice coefficient of 94.2% and a Hausdorff Distance of 2.8 mm, compared to UNet’s 90.5% DC and 6.8 mm HD. Following segmentation, a VGG-16-based classification model achieved an accuracy of 81.0%, with a sensitivity of 78.5% and specificity of 76.2%. The implementation of AI-powered ultrasound for rotator cuff tear detection has the potential to facilitate early and precise diagnosis, significantly improving patient outcomes. This automated system can be deployed in primary care settings such as general practitioner clinics and emergency departments, empowering lightly trained personnel to perform initial assessments efficiently.

DOI: 10.61137/ijsret.vol.11.issue2.235

Overview of Cloud-Based Custom Objects in ERP Cloud Implementation
Authors:-Uma Maheswara Rao Ulisi

Abstract-Enterprise Resource Planning systems are critical for streamlining business processes, but the increasing complexity of modern enterprises demands greater flexibility and customization. Cloud-based custom objects have emerged as a transformative solution in ERP implementation, offering enhanced scalability, adaptability, and integration capabilities. This paper explores the role of cloud-based custom objects in ERP systems, examining how they enable organizations to tailor ERP solutions to specific business needs without compromising system integrity or performance. By leveraging cloud infrastructure, companies can efficiently create, modify, and manage custom objects, ensuring better alignment with dynamic business environments. Through a case study analysis and a review of current best practices, this paper highlights the benefits, challenges, and potential impacts of adopting cloud-based custom objects within ERP frameworks. The findings demonstrate that, when implemented strategically, cloud-based custom objects can significantly improve the agility and effectiveness of ERP systems, ultimately contributing to enhanced operational efficiency and business success.

DOI: 10.61137/ijsret.vol.11.issue2.236

Embracing Predictive Analytics and Statistical Methods for Optimizing Financial Decision-Making in Business Intelligence
Authors:-Harinee R V, Sathya P, Subiksha T, Karthika Devi M M, Sanjana D, Monish P, Professor Dr.R.Suganthi

Abstract-Financial decision-making demands a strategic strategy backed by data-driven insights in the quickly changing company environment. Statistical techniques and predictive analytics have become strong business intelligence tools that help firms improve resource allocation, reduce risks, and improve forecasting accuracy. This study examines how statistical methods and predictive analytics can be combined to improve financial decision-making, with a focus on how they can increase strategic planning and decision accuracy. We illustrate their influence on financial performance optimization by thoroughly examining machine learning models, time series forecasting, regression analysis, and other statistical techniques. In order to demonstrate the usefulness of these approaches in business intelligence, we also go over case studies and real-world applications. This paper explores how businesses can embrace these advanced methodologies to optimize financial decision-making within the broader scope of business intelligence, highlighting both the potential benefits and challenges of implementing these techniques.

Recycling War-Damaged Structures: Sustainable Use of Waste Aggregates in Concrete Mix Design
Authors:-Arnold D. Velasquez, Maria Fe Y. Lacsado

Abstract-Waste from construction and demolition—especially in post-conflict reconstruction—had severe implications for resources and the environment. This research used Waste Demolished Aggregate (WDA) as a replacement for natural aggregates to examine its sustainability in concrete mixtures, assessing workability and compressive strength with varying replacement percentages. The study correlated experimental results from three concrete mixing batches to provide a comprehensive overview of the impact of WDA on concrete functionality. Overall, it demonstrated how such a strategy can maximize environmental protection by minimizing landfill waste and the need for virgin aggregates, which brings economic benefits through such reconstruction. Minimal differences in workability were observed across the three batches based on concrete mixing slump test results. The first batch slump ranged from 75mm to 80mm, the second batch from 79mm to 80mm, and the third batch from 79mm to 82mm. However, at higher WDA percentages, there was a slight difference in workability and slump. The trend observed in compressive strength tests for the three batches indicated a declining pattern of strength with higher WDA content, consistent with the literature, which attributed this observation to the porous structure and irregular shape of WDA particles. The statistical testing demonstrated a significant reduction in strength at both the 25% and 50% WDA replacement levels. The findings indicated that 25% WDA and 50% WDA resulted in a reduction of compressive strength of approximately 23% and 31%, respectively, compared to natural aggregates. These results had significant implications for the use of WDA in structural applications. Although non-structural applications for WDA such as drainage systems, pathways or non-load-bearing walls suggest potential, WDA may well have limited application at best in structural concrete without further adjustment of the mix to overcome strength losses.

DOI: 10.61137/ijsret.vol.11.issue2.237

Survey Paper on Air Quality Monitoring Systems
Authors:-Jagruti Vinod Patil, Khushi Anchanesh Kharche, R.V.Patil-Kalambe

Abstract-Air Quality Monitoring (AQM) systems play a crucial role in assessing environmental conditions, protecting public health, and aiding government policies. This paper presents a comprehensive survey of AQM systems, including their evolution, the latest sensor technologies, and the integration of the Internet of Things (IoT). It also covers the significance of the Air Quality Index (AQI), real-world applications, global case studies, challenges, and future trends like Artificial Intelligence (AI) and low-cost sensors. Continuous innovation in AQM systems is necessary to ensure cleaner air and a healthier environment.

The Future of Quantum Computing in Cybersecurity: Opportunities and Threats
Authors:-Dr. Sonam Arvind Singh, Dhriti Jain

Abstract-Quantum computing is a revolutionary technology that has the potential to transform multiple industries, including cybersecurity. While it offers promising advancements in computing power, it also threatens conventional encryption methods that safeguard sensitive data. Cryptographic algorithms such as RSA and ECC, which form the backbone of modern digital security, may become obsolete as quantum computers develop the ability to crack them. This paper explores the risks associated with quantum computing in cybersecurity, discusses quantum-resistant cryptographic solutions, and examines strategies for transitioning toward a post-quantum security framework. The study also evaluates the role of government, industries, and researchers in mitigating potential cybersecurity threats.

Role of Assistive Technology to Enhance Learning and Participation in Inclusive Education
Authors:-Sujash Kumar Mandal, Indrani Ruidas, Assistant Professor Dr. Laxmiram Gope

Abstract-Assistive technology plays a crucial role in enhancing the learning experiences and outcomes for physically challenged and disabled pupils, thereby leveraging educational opportunities tailored to their specific levels of disability. This paper emphasizes the importance of assistive technological solutions that facilitate participation in inclusive education, highlighting how innovative technologies can contribute to mainstreaming education and fostering societal integration for special-category learners. By providing tools such as software, adaptive devices, and personalized learning applications, assistive technology supports academic achievement and promotes independence and agency among students with disabilities. Integrating these technologies into educational settings is increasingly essential for creating an equitable learning environment where all students can thrive optimally, ensuring that barriers to education are minimized and that every learner can succeed.

DOI: 10.61137/ijsret.vol.11.issue2.238

The Power of Business Analytics: Definition, Techniques, and Challenges
Authors:-Greeshma Muraly

Abstract-In recent decades, business analytics has become widely utilized across various industries, significantly contributing to the enhancement of enterprise value. With the rapid progress in science and technology during the Big Data era, business analytics methods have been evolving quickly. Consequently, this paper summarizes the definition, techniques and challenges of business analytics based on current research paper.This paper also highlights the existing challenges in the field and identifies open research areas that warrant further attention. All research papers were sourced from the Web of Science and Google Scholar databases and selected according to specific criteria. This paper aims to provide valuable insights for researchers in business analytics by presenting the most recent techniques, diverse applications, and future research directions.

DOI: 10.61137/ijsret.vol.11.issue2.239

Asynchronous Javascript Programming
Authors:-Ravi Gosai, Professor Kashyap A. Dave

Abstract-JavaScript, with its rich feature set of being dynamic, interpreted, object-oriented, and first-class functions, has gained immense fame in the last few years. JavaScript adopts an event-driven/custom I/O non-blocking model which technically translates to higher performance for application work through Node.js. In order to use these behaviors, various design patterns implementing asynchronous programming for JavaScript have emerged. Unfortunately, it is terribly difficult to choose a right pattern and implement a good asynchronous source code, which leads to the application being strongly robustless and source code of poor quality. Building from our previous work with exception handling code smells for JavaScript, the current study is aimed at exploring the impact of three asynchronous programming patterns in JavaScript on the quality of source code and application.

DOI: 10.61137/ijsret.vol.11.issue2.240

Optimizing Cloud Workloads with Azure AI and Machine Learning for Cost and Performance Efficiency
Authors:-Waseem Mansoor

Abstract-Cloud computing has revolutionized enterprise operations by offering scalability and flexibility. However, optimizing cloud workloads for cost efficiency and performance remains a challenge. This paper explores how Microsoft Azure’s AI and machine learning (ML) services can enhance workload optimization. We discuss the integration of AI-powered tools like Azure Machine Learning, Cost Management + Billing, and Auto scale to reduce operational expenses and improve efficiency. This research presents case studies demonstrating AI-driven cost savings and performance gains. A comparative analysis of traditional vs. AI-driven cloud optimization methods is also included.

Survey Paper on Smart Wardrobe System Using Artificial Intelligence
Authors:-Assistant Professor Dipali Mane, Nikita Nalawade, Anupama Yadav, Sanket Tawari

Abstract-The Smart Wardrobe aims to revolutionize the way users manage their clothing collections and make outfit decisions. In today’s fast-paced fashion environment, individuals often struggle with organizing their wardrobes effectively and selecting appropriate outfits for various occasions. This web application leverages modern web technologies and the Internet of Things (IoT) to provide users with a seamless, interactive platform for managing their clothing items and creating personalized outfit combinations. The application features a user-friendly interface that allows users to upload details of their clothing items, including categories, sizes, colors, and images. By utilizing advanced filtering and sorting options, users can quickly access their wardrobe inventory and discover new outfit combinations based on their preferences and upcoming events. Additionally, the Smart Wardrobe Web App incorporates a recommendation system that suggests outfits tailored to users’ tastes, weather conditions, and social occasions. This project not only promotes efficient wardrobe management but also encourages sustainable fashion practices by helping users make the most of their existing clothing items.

PDF Malware Detection: Toward Machine Learning Modeling With Explainability Analysis
Authors:-P. Ahalya Sri Chandana, I.H.N.V.P. Manikanta, V. Venkat Mahesh, G. Naveena, P. Anusha, Ms.A. Harini

Abstract-The Portable Document Format (PDF) is a widely used file type that has become a target for fraudsters who embed harmful code to compromise users’ systems. Traditional detection techniques often fall short in effectively identifying PDF malware due to its versatile nature and reliance on a limited set of features. This work aims to enhance PDF malware detection through the development of a comprehensive dataset consisting of 15,958 PDF samples, encompassing benign, malicious, and evasive behaviors. We utilize three established PDF analysis tools—PDFiD, PDFINFO, and PDF-PARSER—to extract significant characteristics from these samples. Additionally, we derive various features proven effective in classifying PDF malware. An efficient and interpretable feature set is constructed through rigorous empirical analysis of the extracted and derived features. We evaluate several baseline machine learning classifiers, achieving a notable accuracy improvement of approximately 2% with the Random Forest classifier using the selected feature set. Furthermore, we enhance model explainability by generating a decision tree that provides rules for human interpretation, showcasing the effectiveness of Support Vector Classifier, K-Nearest Neighbors, Logistic Regression, and SVM with Optimal Hyperparameters in the context of PDF malware detection.

A Comprehensive Study on Tourism Management Systems: Trends, Challenges, and Future Opportunities
Authors:-Manish Kailas Sangale, Assistant Proffesor Minal Patil

Abstract-The tourism industry has witnessed tremendous boom in current years, driven through globalization, technological improvements, and increasing consumer demand for seamless journey reports. This paper offers a complete have a look at at the improvement and implementation of a Tourism Management System (TMS), a web-based totally utility designed to streamline journey-associated operations such as bundle reserving, resort reservations, and patron control. The examine explores the technological framework, which includes the usage of HTML, CSS, JavaScript, PHP, and MySQL, and evaluates the gadget’s effectiveness in addressing the challenges faced by way of conventional tour corporations. The paper also highlights the system’s potential to offer a person-friendly interface, enhance operational performance, and improve customer pleasure. Furthermore, the take a look at discusses future opportunities for integrating superior technology which include AI, IoT, and blockchain to further enhance the gadget’s competencies.

Efficient File Compression and Data Representation Using Video Pixels:RGB and Binary Modes
Authors:-Rogith K K, Assistant Professor Mrs. V. Latha Sivasankarı

Abstract-File storage and transfer have become increasingly important in a data-driven world where efficiency and reliability are critical. Traditional file compression techniques often fail when subjected to lossy compression algorithms used in video formats, leading to data corruption. This research introduces a novel approach to encoding file data into video frames using two distinct modes: RGB and binary. RGB encoding maps data bytes to the colour channels of pixels, offering high efficiency, while binary encoding represents each bit as black-and-white pixels, ensuring resilience to compression artifacts. To further enhance user-friendliness, the system embeds encoding settings in the first video frame, automating the decoding process and reducing manual intervention. This hybrid system provides a practical balance between efficiency and robustness, making it suitable for real-world applications such as secure data transfer, archival storage, and multimedia-based information systems. This paper evaluates both encoding modes and proposes solutions to minimize data corruption caused by video compression. The research concludes with potential future enhancements, including hybrid systems that combine RGB and binary encoding, integration with AI-based algorithms for adaptive encoding, and scalability for 4K and 8K video resolutions. These advancements aim to optimize both storage efficiency and data integrity, addressing the growing demand for reliable file storage solutions.

DOI: 10.61137/ijsret.vol.11.issue2.241

Theory of Optical Emission Spectroscopy
Authors:-Sumit Kumar, Professor Dr. Mohit Kumar

Abstract-Characterization of material is a challenging task because of its diversity and the type of material. To know the chemical properties of the material some instrumental techniques could be used. The OES is the basic technique to measure the attenuation of light as it passes through a material. As light travels through a material, the energy of the incident photons can transfer electrons into higher energy states. In other words, electrons in the material absorb this light. In most optically active materials, UV and visible photons will promote electrons to higher energy electronic orbitals, while IR photons will increase the vibrational energy of the electrons.

The Role of ERP Cloud in Data Transformation and Implementation Challenges
Authors:-Uma Maheswara Rao Ulisi

Abstract-Oracle Cloud is well-suited for large corporations in industries such as finance, healthcare, telecommunications, retail, and manufacturing. These organizations require robust, secure, and scalable cloud solutions to manage complex workloads, global operations, and sensitive data

DOI: 10.61137/ijsret.vol.11.issue2.242

Fruit Quality Classification Using AI: A Machine Learning-Based Approach
Authors:-Rishav Raj, Dinesh Sapkal, Assistant Professor Bhumi Shah

Abstract-This research explores the application of machine learning techniques, particularly Convolutional Neural Networks (CNNs), to automate the classification of fruit quality using the Kaggle fruit dataset. Traditional methods of fruit grading, which rely on human inspection, are labor-intensive and prone to errors, leading to inefficiencies in the agricultural supply chain. To address this issue, we employ a deep learning approach to develop a model capable of accurately classifying fruit quality based on visual attributes such as color, texture, and shape. The dataset, consisting of images of various fruit types labeled with quality classifications (ripe, unripe, overripe, defective), was preprocessed to standardize the data and augmented to prevent overfitting. A CNN model was trained using this dataset, and its performance was evaluated using standard metrics, including accuracy, precision, recall, and F1 score. The results demonstrate that the CNN model achieved an accuracy of over 90%, outperforming traditional machine learning algorithms like Support Vector Machines (SVMs) and Random Forests. The findings suggest that machine learning models, especially CNNs, can significantly enhance the speed, accuracy, and consistency of fruit quality classification, making them viable for real-time, automated grading systems in the agricultural industry. This approach has important implications for reducing labor costs, improving efficiency, and minimizing food waste by ensuring that only the highest-quality produce reaches consumers. Future work can extend these results by incorporating multi-sensory data and integrating real-time fruit sorting systems for large- scale agricultural applications.

A Comparative Study to Forecast Bitcoin Price Using Machine Learning & Time Series Models
Authors:-Pasumarthy Manasa Komali, Ruma Dutta

Abstract-Block chain is an emerging technology and cryptocurrency is one of the backbone of blockchain technology in the financial sector. Even though other cryptocurrencies have been around for a few years, Bitcoin has kept its position as the most valuable cryptocurrency. On the other hand, Bitcoin’s price has been very unpredictable, making it almost impossible to guess where it might go in the future. The goal of this research is to find out which model is the most accurate and best at making predictions. Several different machine learning and time series approaches are used to determine Bitcoin prices. The goal of this article is to see how well it is possible to predict where the price of Bitcoin in US Dollars will go in the future. US Dollars are used to figure out how much Bitcoin costs. The price information came from a website called Coin market cap. We used machine learning techniques like Random Forest, XG Boost, kNN and time series models like AR, MA, ARIMA, Prophet. It has been found in our experiments that time series models give better results than machine learning approaches.

DOI: 10.61137/ijsret.vol.11.issue2.243

New Global Parking System
Authors:-Samik Choudhury, Shivam Gupta, Rohit Yadav, Dr Shraddha Oza

Abstract-In this current era of modernization, we are all tied under the constraints of time, and it’s the highest priority of all values. Traffic nowadays is a major problem in major cities, and a bigger problem than that is the lack of a proper parking system. People who park their vehicles in no-parking zones often annex someone else’s spot, or park vehicles on roads and create bizarre traffic situations. In rush hours, things even worsen more, and, at last, we people are the ones who suffer. Shopping malls, hospitals, airports, and railway stations are the worst hit areas due to improper parking management. All these upper hurdles demand one thing, and that is a smart and efficient parking system. This project will enhance the experience of parking using Internet of Things (ESP8266 ) which will give the parking spots to be appear on a map near to the desired location. The parking spots will be detected using IR Sensors at each location , connected with a common server to ensure end-to-end services for the user.

AI for Climate Change Prediction
Authors:-Anant Kajrolkar

Abstract-Climate change poses a significant threat to global ecosystems, human health, and economic stability are all seriously threatened by climate change. Reducing its effects and directing policy decisions require timely and accurate climate projections. Even though they work well, traditional climate models have trouble managing large datasets, guaranteeing real-time adaptation, and producing accurate long-term projections. Through the integration of cutting-edge machine learning techniques, this study investigates how artificial intelligence (AI) can revolutionize climate prediction. Large-scale environmental datasets from sensors, satellites, and historical climate records are used by AI-driven climate models to find intricate patterns and improve prediction accuracy. AI also enhances real-time climate monitoring, enabling adaptive strategies and quick detection of environmental changes. This research examines the effectiveness of AI in climate prediction by comparing its performance with traditional models in terms of accuracy, computational efficiency, and real-time capabilities. The study also highlights the application of AI in critical areas such as predicting extreme weather events, monitoring greenhouse gas emissions, and supporting data-driven policy decisions. Key methodologies include using deep learning algorithms such as convolutional neural networks (CNNs) and recurrent neural networks (RNNs) for processing complex climate datasets. Additionally, AI’s role in optimizing computational resources and enhancing energy efficiency is investigated, making it a sustainable solution for large-scale climate modelling. The findings demonstrate that AI-driven models offer significant improvements in prediction accuracy, faster processing times, and greater adaptability to changing environmental conditions. These advancements provide valuable insights for policymakers, enabling data-backed decisions that can effectively address climate-related challenges. The study concludes that integrating AI with climate science will play a pivotal role in developing sustainable, scalable, and efficient solutions for future climate predictions and mitigation efforts.

Comparative Analysis of Zero-Shot, Few-Shot, and One-Shot Learning in Machine Learning
Authors:-Shreya Parmar, Yash Ganar, Lee Henriques, Professor Poonam Thakre

Abstract-Few-shot, one-shot, and zero-shot learning are ma- chine learning paradigms that aim to enhance model performance in scenarios with limited labeled data. Few-shot learning (FSL) enables models to generalize from a small number of examples per class, leveraging techniques such as meta-learning and transfer learning. One-shot learning is an extreme case of FSL, where the model learns to classify new instances based on a single example, often using metric-based learning approaches like Siamese networks. Zero-shot learning (ZSL) takes this further by enabling models to recognize new classes without any labeled examples, relying on semantic attributes or embeddings to bridge the gap between seen and unseen classes. These approaches are particularly valuable in real-world applications such as natural language processing, computer vision, and robotics, where ob- taining large labeled datasets is challenging.

Analysis of Fibre Reinforced Metal Matrix Composite Leaf Spring for off Road Vehicle
Authors:-Mr. V.V.N. Sarath, Kurada Praveen Srikanth, Peyyala Manikanta, Sanku Jaswanth Charan, Seelam Bhaskar Sai Ram

Abstract-The Automobile Industry has shown keen interest for replacement of steel leaf spring with that of glass fiber composite leaf spring, since the composite material has high strength to weight ratio, good corrosion resistance properties. The present study searches the new material for leaf spring. In present study the material selected was glass fiber reinforced plastic (GFRP) and the epoxy resin is used against conventional steel. A spring with constant width and thickness was fabricated by hand lay-up technique which was very simple and economical. The numerical analysis is carried via finite element analysis using ANSYS software. Stresses, deflection and strain energy results for both steel and composite leaf spring material were obtained. Result shows that, the composite spring has maximum strain energy than steel leaf spring and weight of composite spring was nearly reduced up to 85% compared with steel material. This paper describes design and FEA analysis of composite leaf spring made of glass fiber reinforced polymer. The dimensions of an existing conventional steel leaf spring of a light commercial vehicle are taken for evaluation of results.

DOI: 10.61137/ijsret.vol.11.issue2.244

Review on Enhancement of BLDC Parameters Using ANN Controller across Electric Vehicle
Authors:-Akash Baghel, Professor Amit kumar Asthana

Abstract-In this paper, a review of the advances in brushless synchronous motors is presented because there has been an increasing interest in advanced motor control and to address the weaknesses of conventional motor control. The traditional motor control strategies, for example, proportional plus integral controllers (PIs), are simple and easy to maintain. On the contrary, they require accurate tuning and are affected by motor parameter variations. To address these challenges and many others (power factors, torque ripple, current limit, voltage limit, speed limit), advanced control methods are required to enhance the performance of the motor drive control. The advanced control techniques include model predictive control, slide mode control, reinforcement learning, and fuzzy logic control. This paper provides a comprehensive review of advances in control methods and addresses the challenges and limitations associated with their practical application.

Review on Modeling and Analysis of Load Flow Analysis across Solar Power Generator
Authors:-Rahul Chikane, Professor Amit kumar Asthana

Abstract-Distribution system advancing is very important for many Researchers and power engineers. Fast load flow techniques are highly desired as conventional techniques are consuming very long time. Power flow in the distribution system is one of the most critical point in the grid for analysis study. The integration of variety of renewable energy for the sake of sustainability from consumers and utility to the existing grid requires extra modification to obtain the stability and costsaving for consumer and utility. This paper presents a review of distribution network load flow analysis after the renewable energy resources penetrated the grid. It also reviews the main old techniques that are with us until today and some of their introduced modification.

Medi Sync: The Next Gen AI Renaissance Elevating Allied HealthCare by Leveraging Neural Networks and Machine Learning Techniques Pioneering a New Era in Global Allied Healthcare
Authors:-N.V. Vijaya Lakshmi

Abstract-The integration of neural networks and machine learning technologies in allied healthcare has the potential to revolutionize diagnostic accuracy, treatment personalization, and patient care. This study focuses on practical applications and strategies for implementing these advanced technologies to optimize healthcare processes in real-world scenarios. By leveraging artificial intelligence, this study seeks to enhance diagnostic imaging, predictive analytics, personalized treatment plans, and remote patient monitoring. A key innovation explored is the Geo Health Sync ID, a centralized health record system designed to improve diagnosis accuracy, streamline medical histories, and enhance treatment outcomes by enabling global access to healthcare data. Additionally, this is a proposal of the development of an AI-powered chatbot and wearable device that utilizes neural networks to monitor patient vitals in real-time, detect anomalies, and provide early alerts to healthcare providers. Addressing challenges such as data privacy, AI model fairness, and seamless clinical integration, this study aims to bridge existing gaps and establish a more efficient, patient-centric healthcare ecosystem. This initiative holds the potential to transform allied healthcare by improving patient outcomes, reducing healthcare costs, and driving innovation through AI-driven decision-making and automation. With the rapid advancements in artificial intelligence (AI), neural networks and machine learning have become integral to allied healthcare. These technologies offer predictive analytics, disease diagnosis, treatment recommendations, and administrative efficiency. Machine learning algorithms, particularly deep learning models, process vast amounts of healthcare data, enhancing accuracy in medical imaging, patient monitoring, and personalized medicine. This paper explores the applications, benefits, challenges, and future scope of neural networks in allied healthcare, including real-world case studies and implementation strategies.

DOI: 10.61137/ijsret.vol.11.issue2.245

Enhancement of Process Parameters for Mex Process Using Cura 5.9.0 and Minitab Softwares
Authors:-Mr. G.V.N. Santhosh, Pedagadi Santhosh Kumar, Sai Naresh Masakapalli, Dupalli Dharmaraju, Yaraka Sai Venkata Vasu

Abstract-The Material Extrusion (MEX) process, commonly known as Fused Deposition Modeling (FDM), is widely used for manufacturing complex geometries with minimal material wastage. However, optimizing key printing parameters is crucial for improving efficiency while maintaining print quality. This study focuses on enhancing the MEX process using Cura 5.9.0 and the B to optimize layer height, line width, and wall count, aiming to reduce print time and material consumption. The Taguchi DOE method was employed to systematically analyze the effects of these parameters on printing performance. A set of experiments was conducted by varying layer height, line width, and wall count within practical limits. The primary objectives were to minimize printing time and optimize material usage while maintaining structural integrity. Print time and material consumption were recorded for each experiment, and statistical analysis was performed using Minitab to determine the optimal parameter combination. The results show that layer height significantly influences printing time, as higher layer heights reduce the number of layers but may impact surface quality. Line width affects material flow and print strength, while wall count directly impacts material consumption. The optimized parameter settings achieved a significant reduction in print time and material usage, ensuring an efficient balance between speed, material economy, and part durability. This study demonstrates that using Cura 5.9.0 in combination with DOE techniques provides a structured methodology for enhancing the efficiency of the MEX process. The findings are beneficial for industries and researchers seeking to optimize print settings, reduce operational costs, and improve sustainability in additive manufacturing.

DOI: 10.61137/ijsret.vol.11.issue2.246

Generative Design Optimization for Advance Manufacturing Process
Authors:-Mrs. K. Aravinda, Komali Naga Ramakrishna, Robba Rithwik, Sahukari Vijay Kumar, Komarthi Gagan Venkat Jayanth

Abstract-Brake pedals are critical components in automotive applications, requiring a balance between high stiffness, low weight, and manufacturability. Traditional design approaches often result in suboptimal structures with excessive material usage. This study explores the generative design optimization of a brake pedal using Fusion 360, targeting maximum stiffness and minimum mass while considering different manufacturing constraints for milling and additive manufacturing (AM). Generative design algorithms were employed to generate multiple optimized pedal designs by defining material properties, boundary conditions, and load cases. The milling-based design focused on constraints like tool access, machining orientations, and material removal feasibility, whereas the AM-based design leveraged organic lattice structures and topology optimization to achieve minimal material usage while maintaining structural integrity. The optimized models were analyzed using finite element analysis (FEA) to compare stress distribution, deformation, and weight reduction for both manufacturing methods. Results indicate that additive manufacturing allows for a more complex, lightweight design with internal lattice structures, resulting in a higher stiffness-to-weight ratio compared to the milling approach. However, the milled design exhibits superior fatigue resistance and is better suited for high-load conditions due to the absence of microstructural porosity. A comparative evaluation of material usage, manufacturing feasibility, and mechanical performance highlights the trade-offs between AM and milling-based designs. This research demonstrates how generative design tools can optimize brake pedal geometry for different manufacturing processes, leading to weight savings and enhanced performance while ensuring manufacturability. The findings provide valuable insights into process-dependent design optimizations and serve as a reference for future lightweight automotive component development.

DOI: 10.61137/ijsret.vol.11.issue2.247

A Role of AI in Traffic Management: A Study on Emergency Ambulance Services
Authors:-Dr. Shruti Bekal, Palak Vikas Gadiya, Kashish Jain, Sanjana Kankliya, Rashi Jain, Rabee Ahmed, Rajratna Karande

Abstract-This research delves into an innovative app that seamlessly integrates AI-driven traffic management with emergency ambulance services, presenting users with a holistic solution to address both transportation efficiency and urgent medical needs. By harnessing advanced algorithms and real-time data analysis, the app optimizes traffic flow, reduces congestion, and delivers personalized travel routes tailored to the prevailing conditions. Moreover, it offers a dedicated emergency ambulance service equipped with priority response times and specialized care for its subscribers. The subscription-based model of the app affords users a plethora of benefits, including access to enhanced features, exclusive discounts on additional healthcare services, and a flexible payment structure catering to diverse user preferences. In .essence, the app epitomizes the convergence of technology and human-centric design, empowering users to navigate urban landscapes safely and efficiently while ensuring immediate access to critical medical assistance when circumstances demand. Through its innovative approach and commitment to user-centricity, the app stands as a beacon of progress in shaping the future of mobility and healthcare accessibility in the communities.

DOI: 10.61137/ijsret.vol.11.issue2.248

Orientation Optimization of Material Extrusion Process Using Minitab Software
Authors:-Mr. M. Sunil Raj, Undurthi Bharath Kalyan, Nagabathula Manohar, Yannana Chaitanya Krishna Chowdary, Tatapudi Anil

Abstract-Optimizing the orientation of a part in the Material Extrusion (MEX) process is crucial for reducing print time, energy consumption, and material waste while maintaining part quality. This study focuses on optimizing the printing orientation and layer height using the Taguchi method in Minitab to achieve an efficient and sustainable additive manufacturing process. The research employs the Taguchi Design of Experiments (DOE) approach to systematically evaluate the effects of different orientation angles and layer heights on print time and energy consumption. Experiments were conducted by printing samples at various orientations and layer thicknesses, and the response variables—total printing time and energy usage—were recorded. Signal-to-noise (S/N) ratios were analyzed in Minitab to determine the optimal parameter settings that minimize both print time and energy usage. The results indicate that the print orientation significantly affects deposition path efficiency, while layer height plays a key role in determining the number of layers and total energy required. The optimized orientation and layer height configuration led to a substantial reduction in energy consumption without compromising part accuracy and mechanical integrity. This study demonstrates that using the Taguchi method in Minitab for orientation optimization provides a structured and statistical approach to improving additive manufacturing efficiency. The findings can be applied to enhance the sustainability of FDM-based 3D printing, reducing material wastage and operational costs while improving process efficiency.

DOI: 10.61137/ijsret.vol.11.issue2.249

Design and Dynamic Analysis of Formula Car
Authors:-Mr. D. J. Johnson, Nambu Sri Venkata Siva Sai Lakshman Royal, kakaraparthi Venkata Subrahmanyam, Sabbavarapu Nooka Subrahmanyam, Manepalli Bhavannarayana, Perapu Anand Rao

Abstract-The wheel hub and spindle are critical components in the suspension and steering system of a Formula Student car, directly influencing its vehicle dynamics, handling, and safety. This project focuses on the design, analysis, and optimization of the wheel hub and spindle assembly, aiming to ensure structural integrity, reduce weight, and improve overall performance under dynamic loading conditions. Using SolidWorks, the wheel hub and spindle were meticulously designed to meet the requirements of a Formula Student car, emphasizing lightweight construction while maintaining sufficient strength. The design process involved careful consideration of materials, geometry, and manufacturing feasibility to create a durable and efficient assembly. The geometry was optimized to reduce unsprung mass, which is crucial for enhancing vehicle stability and handling. The designed components were analyzed using ANSYS Workbench to simulate real-world conditions and assess their structural performance. Static and dynamic load analyses were performed to evaluate stress distribution, deformation, and factor of safety under various scenarios, such as cornering, braking, and acceleration. The results of the analysis demonstrate that the design meets the functional and safety criteria for a Formula Student car, ensuring reliability during competitive racing conditions. This study provides valuable insights into the integration of design and analysis tools for optimizing vehicle dynamics, contributing to the advancement of motorsport engineering.

DOI: 10.61137/ijsret.vol.11.issue2.250

Condition Design and Material Optimization of Axial Gas Turbine Under Static Loading
Authors:-Dr. G. Avinash, Markanda Raghaveandra, Matta Sri Ammayya, Tirukkovalluri Sri Jaiyanth Kowshik, Yedidha Chaitanya, Challa Sai Durga Kishore

Abstract-Micro turbines are becoming widely used for combined power generation and heat applications. Their size varies from small scale units like models crafts to heavy supply like power supply to hundreds of households. Micro turbines have many advantages over piston generators such as low emissions less moving parts, accepts commercial fuels. Gas turbine cycle and operation of micro turbine was studied and reported. Brief description on CAD software and CATIA studied and reported. Different parts (Inlet. Storage, Nozzle, Rotor, coupling, outlet, clip, housing) of turbine are designed with the help of CATIA (Computer Aided Three Dimensional Interactive Analysis) software. Then they were assembled to a single unit and coupled to a generator to produce power. The turbine is of Axial input and axial output type.

DOI: 10.61137/ijsret.vol.11.issue2.251

Neural Nap Guard: CNN-Driven Drowsiness Detection Using OpenCV
Authors:-FMrs.T.Satya Aruna, Sri Sai Akshitha Manepalli, Penugula Navya Nalini, Mayukha Vundavilli, Shaik Moula Ali, Ulamparthi Sateesh

Abstract-Driver drowsiness detection is crucial for road safety, as drowsy driving is a leading cause of accidents. This research presents a machine learning-based approach for detecting driver drowsiness using OpenCV and Keras frameworks. The system employs a camera to capture real-time video footage of the driver’s face. Key features such as eye closure and mouth movements are extracted through preprocessing techniques using OpenCV. These features are then used to train a Convolutional Neural Network (CNN) model with a large labeled dataset of video frames depicting both alert and drowsy drivers.Once trained, the CNN model predicts the driver’s drowsiness level in real-time, helping to identify signs of fatigue early. In addition to real-time alerts, the system provides a graphical representation of the drowsiness score over time, enabling continuous monitoring of the driver’s fatigue levels. This feature allows for proactive intervention, ensuring safer driving conditions.The proposed system utilizes deep learning techniques, particularly CNNs, which have proven effective in recognizing facial features and behaviors associated with drowsiness. The integration of real-time monitoring and visual feedback enhances the system’s accuracy and response time. By leveraging such advanced technology, this approach has the potential to significantly reduce traffic accidents caused by drowsy driving, offering a valuable tool for improving road safety and preventing accidents related to driver fatigue.

Design and Implementation of a Secure Bootloader Using Public Key Cryptography Research
Authors:-Manav Vaghela, Abhaysinh Parmar, Professor Lata Butiya

Abstract-A secure bootloader plays a critical role in ensuring the integrity and authenticity of firmware during system startup. Traditional bootloaders lack robust security mechanisms, making them vulnerable to tampering and malware injections. Public Key Cryptography (PKC) provides a strong foundation for secure bootloaders by enabling digital signatures and authentication mechanisms to verify firmware integrity before execution. This research explores the design and implementation of a secure bootloader using Public Key Cryptography to prevent unauthorized modifications and ensure a trusted execution environment. The proposed bootloader employs asymmetric encryption to verify signed firmware images using RSA or ECC (Elliptic Curve Cryptography). Additionally, hash-based verification techniques such as SHA-256 are used to ensure firmware integrity. Experimental evaluations demonstrate that the proposed bootloader effectively prevents unauthorized code execution, ensuring a secure boot process with minimal performance overhead. This paper discusses the system architecture, cryptographic implementation, evaluation metrics, and future research directions for enhancing bootloader security.

DOI: 10.61137/ijsret.vol.11.issue2.252

Design and Simulation of Steady State Thermal Analysis of Exhaust Engine Valve
Authors:-Mr. N. Raghuveer, Puli Hari Shankar, Kadiyala Rupananda Ganesh Kumar, Ramavath Arun Kumar Naik, Sai Durga Nishith Medisetti

Abstract-Internal combustion engines produce exhaust gases at high temperature and pressures. As these hot gases passes through the exhaust valve ,temperatures of the valve ,valve seat, and the stem increase .To avoid any damage to the exhaust valve assembly , heat is transferred from the exhaust valve from different parts ,Especially the valve seat insert during the opening and closing cycle as they come into contact each other . In this article, A Finite-Element method is used for modeling the transient thermal anaiysis of an exhaust valve .The temperature distribution and resultant thermal stresses at each opening and closing time are obtained. Detailed analyses are performed to estimate the boundary conditions of an internal combustion engine. The modeling includes exhaust valve, seat, guide, and spring. The analysis continues until a steady state condition is obtained. In this study ANSYS is employed for modeling and analysis of the exhaust valve. A Methodology is developed for transient thermal analysis of the exhaust valve.

DOI: 10.61137/ijsret.vol.11.issue2.253

Car Damage Discovery Using Machine Literacy
Authors:-Gangireddy Naveena

Abstract-Ultramodern auto insurance diligence faces significant resource destruction due to claim leakages, which affects their payouts. presently, visual examinations and attestations are performed manually, causing detainments in claim processing. former studies have demonstrated that image bracket is attainable with a small dataset by transferring and repurposing knowledge from models trained for different tasks. Our ideal is to develop an auto damage classifier using a deep literacy model to directly descry colorful damage types from auto images. still, the limited dataset can be a determining factor. Training a Convolutional Neural Network from scrape is challenging due to the failure of large datasets. In this design, we explore classifying images of damaged buses to assess the financial value of the damage. This bracket task is delicate due to the lack of standardized datasets and potentially non-discriminative clauses. We employed a pretrained YOLOv8 model to train a classifier for grading the dataset, testing three different cases damaged or not, damage position (front, reverse, or side), and damage inflexibility (minor, moderate, or severe).

Edge Computing and 5G Networks: Enabling the Future of Connectivity
Authors:-Mihir Dhruv, Professor Kashyap Dave

Abstract-The integration of edge computing and 5G networks is revolutionizing modern digital infrastructure by enabling faster data processing, reduced latency, and enhanced network efficiency. As 5G technology promises ultra-fast connectivity and higher bandwidth, edge computing complements it by decentralizing computation, bringing data processing closer to the source. This synergy addresses critical challenges such as network congestion, real-time data handling, and improved security. The combination enhances applications across industries like autonomous vehicles, smart cities, healthcare, and industrial automation. This paper explores the architecture, benefits, challenges, and future potential of edge computing in 5G environments, providing a comparative analysis of traditional cloud-based approaches and edge-driven solutions. The findings highlight the importance of this convergence in driving innovation and shaping the next generation of digital services.

Promptify: The Prompt Marketplace
Authors:-Yassir Farooqui, Ansh Rawal, Krushna Soni, Pooja Maurya, Trupti Devakar

Abstract-Promptify represents a novel approach to AI-driven content creation by offering a centralized online mar- ketplace for buying and selling creative and technical prompts. The platform bridges the gap between prompt creators and consumers, streamlining the process of ac- cessing high-quality prompts across diverse categories such as creative writing, technical tasks, and artistic projects. Existing platforms lack centralized resources, quality moderation, and secure payment mechanisms, leaving users with fragmented solutions. Promptify addresses these challenges by providing secure trans- actions via Stripe, user shop management systems, and community engagement features. The platform uses modern technologies like Next.js, MongoDB, and Prisma ORM to ensure scalability, security, and perfor- mance optimization. The paper details Promptify’s ar- chitecture, implementation, and testing methodologies, emphasizing its potential to democratize access to qual- ity prompt resources. Future work explores AI-based prompt recommendations, blockchain-based ownership verification, and multilingual support.

DOI: 10.61137/ijsret.vol.11.issue2.254

Evolving Wireless Technologies: Innovations Shaping Next-Generation Communication Networks
Authors:-Assistant Professor Mrs.P.Nirmala Priyadharshini, Assistant Professor Mr.G.Jayaseelan

Abstract-Wireless communication has undergone a remarkable transformation over the past decades, driven by rapid technological advancements. This paper explores the evolution of wireless technologies, from early mobile networks to emerging innovations such as 6G, edge computing, AI-driven communication, and quantum networks. Key challenges, including spectrum management, security, and energy efficiency, are analyzed alongside the potential of new wireless paradigms. The study highlights how next-generation communication networks will redefine connectivity, enabling seamless, ultra-reliable, and high-speed data exchange for future applications such as smart cities, autonomous systems, and the metaverse.

Revitalizing Traditional Methods for Early Keratoconus Detection: A Primary Care Approach
Authors:-Nisha Talukdar

Abstract-Keratoconus (KC) is a progressive disorder of the cornea, marked by its thinning and protrusion, which results in a conical shape that can lead to vision impairment if not identified promptly. The precise etiology of KC is not well understood, and most individuals affected do not have a familial history of the disorder. It commonly manifests during adolescence, presenting as unilateral visual impairment due to increasing myopia and irregular astigmatism that deteriorates over time. The eye that is not affected typically retains normal vision and exhibits minimal astigmatism at the initial stages. Despite improvements in diagnostic technologies, early identification of KC remains difficult, especially in areas with limited resources. This review emphasizes economical yet often overlooked techniques for identifying keratoconus (KC), such as detection of the oil droplet sign using a direct ophthalmoscope and null-screen testing. These methods, when integrated with contemporary artificial intelligence technology, can significantly improve accuracy, efficiency, and accessibility. These techniques also prioritize portability and affordability. When integrated with artificial intelligence and mobile technology, they present promising opportunities for early detection, which can help mitigate disease progression. Such screening tools could significantly improve access to screening in remote locations and prove essential for evaluating patients who are uncooperative.

Zero-Trust Architecture for E-Commerce: Implementing Decentralized Identity on A MERN Platform
Authors:-Ayush Kumar, Divya Patel, Assistant Professor Rashmi Pandey, Assistant Professor Shivangi Patel

Abstract-The rapid growth of e-commerce has brought convenience to consumers but has also led to increasing cyber threats and data breaches. Traditional security measures, primarily reliant on centralized identity management, pose critical vulnerabilities that can be exploited by malicious actors. To address these concerns, this research proposes an advanced security model utilizing Zero-Trust Architecture (ZTA) combined with Decentralized Identity (DID) within a MERN stack-based e-commerce platform. This approach ensures that every access request is verified, significantly reducing unauthorized access risks. Furthermore, blockchain-backed DID solutions offer a tamper-proof identity verification system, empowering users with greater control over their credentials while eliminating the dependency on third-party identity providers. This paper explores the implementation, benefits, and real-world applicability of this security model, highlighting its ability to enhance trust and improve cybersecurity in modern e-commerce platforms.

DOI: 10.61137/ijsret.vol.11.issue2.255

Image Inpainting Based on Patch-GANs
Authors:-Harsh Mandaliya, Jaimin Vasani, Professor Reena Desai

Abstract-Image inpainting is a crucial task in computer vision that focuses on reconstructing missing or corrupted parts of an image while maintaining structural consistency and visual realism. Traditional inpainting methods, such as diffusion-based and exemplar-based techniques, often struggle to restore fine textures and complex structures, leading to blurry and unrealistic results. The advent of Generative Adversarial Networks (GANs) has significantly enhanced image inpainting by learning to generate plausible image content. However, conventional GAN-based models emphasize global image coherence while neglecting finer local details, causing inconsistencies in high-texture regions. To overcome these limitations, PatchGAN-based inpainting evaluates image realism at the patch level rather than analyzing the entire image as a whole. This technique employs multi-scale discriminators that ensure improved texture synthesis and structural continuity at different spatial resolutions. Experimental studies reveal that PatchGAN-based models outperform conventional GAN-based methods in terms of perceptual quality, Peak Signal-to-Noise Ratio (PSNR), and Structural Similarity Index (SSIM), producing sharper and more realistic image restorations. This review explores the advancements in PatchGAN-based inpainting, highlighting its benefits, architectural components, and future research directions to further enhance image reconstruction quality.

DOI: 10.61137/ijsret.vol.11.issue2.256

Pneumatic Sheet Bending Machine
Authors:-Dr.N.S.Aher, Autade Kadambari Vilas, Chavan Vaishnavi Sambhaji, Pawar Rutuja Machhindra, Naikwade Sanskruti Mahendra

Abstract-We have Developed a Pneumatic Sheet Bending Machine, it is a cost-effective, efficient, and automated solution for bending thin metal sheets using pneumatic power, addressing the challenges of laborintensive manual methods and expensive hydraulic systems. It utilizes a pneumatic cylinder that applies controlled pressure to bend metal sheets with precision, speed, and consistency, reducing manual effort and the need for multiple operators. The machine is designed to be compact, portable, and easy to operate, making it ideal for small to medium-scale workshops, metal fabrication units, and the automotive industry. Its high-speed operation enhances productivity while maintaining accuracy, making it a valuable tool for producing brackets, enclosures, and sheet metal components. However, the machine is limited to bending thin sheets and requires an air compressor, which may not always be available in smaller setups. Future advancements could improve its capacity for thicker sheets, integrate automated controls for enhanced precision, and utilize advanced pneumatic technologies for greater efficiency. Overall, this innovation provides a practical and scalable alternative to traditional bending methods, significantly improving productivity, reducing labor costs, and making metal fabrication more accessible to small industries.

DOI: 10.61137/ijsret.vol.11.issue2.257

Transport Management & Supply Chain
Authors:-Tejas Rohit, Prince Kumar, Assistance Professor Harshita Gaikwad

Abstract-Transport management is a critical component of supply chain logistics, influencing cost efficiency, operational effectiveness, and overall business performance. This study explores the role of transport management in optimizing supply chains by examining the key challenges, technological advancements, and sustainability initiatives Key findings indicate that the integration of digital tools, such as transport management systems (TMS) and artificial intelligence (AI), enhances route planning, cost optimization, and supply chain visibility. Additionally, sustainable transport practices, including alternative fuel sources and electric vehicles, contribute to cost savings and environmental benefits. The study concludes that businesses must adopt modern transport strategies to remain competitive and resilient in a rapidly evolving logistics landscape.

DOI: 10.61137/ijsret.vol.11.issue2.258

Employee Attitudes towards the Organization: A Study on Job Satisfaction and Organizational Commitment
Authors:-Amit Jaywant Dalvi, Assitant Professor Amol Baviskar

Abstract-Employee attitudes significantly influence organizational success. This study examines employee attitudes, job satisfaction, and commitment within an organization. Based on a comprehensive literature review and primary data, the research identifies key factors affecting employee engagement and recommends strategies for improving workplace morale and performance.

Time Management Strategies for Increased Productivity in Startups
Authors:-Viraj Vijay Darekar, Professor Amol Baviskar

Abstract-Time management is a critical factor in the success of any business, especially startups. Unlike large corporations with established workflows, startups operate in a highly dynamic and resource-constrained environment, making productivity a key determinant of their success. Efficient time management enables startups to prioritize tasks, allocate resources wisely, and achieve business objectives with minimal waste of time and effort. This paper explores various time management strategies used in startups and their impact on productivity. The study also examines tools and techniques that can help startup teams improve their efficiency and meet business goals.

Strategic Planning in Engineering Design: A Focus on Cost and Schedule
Authors:-Tushar Sudhakar Loharkar, Professor Amol Baviskar

Abstract-This paper gives the strategic planning process within the engineering design phase of onshore oil well projects, with a specific emphasis on cost and schedule management. Highlighting the critical role of Front-End Engineering Design (FEED) and detailed design, this study examines methodologies and techniques vital for achieving project success within budgetary and temporal constraints. Through a detailed analysis incorporating both quantitative and qualitative methods, the paper offers a comprehensive understanding of the inherent complexities and challenges in managing project cost and schedule. It elaborates on quantitative approaches such as Monte Carlo Simulation and advanced Cost Estimation Models, alongside schedule-oriented techniques like the Critical Path Method (CPM). The objective is to equip project managers and stakeholders with actionable insights for optimizing resource allocation, mitigating financial and timeline risks, and employing industry best practices to enhance project predictability and efficiency, ultimately ensuring project sustainability and profitability in the oil and gas sector.

A Review Hybrid Intrusion Detection System Using SVM for Anomaly and Misuse Detection in Networks
Authors:- Seema Narware, Prof. Rahul Patidar, Professor Jayshree Boaddh

Abstract-Intrusion Detection Systems (IDS) are essential for protecting networks from cyber threats. Traditional IDS methods, including anomaly-based and misuse-based detection, have limitations such as high false positive rates and inability to detect novel attacks. A hybrid IDS combines both techniques to enhance accuracy and efficiency. Support Vector Machines (SVM) have proven to be effective in classifying network traffic for intrusion detection. This paper reviews the application of SVM in hybrid IDS, its advantages, challenges, and potential improvements for network security.

Customer Churn Prediction: Leveraging Machine Learning for Enhanced Retention Strategies
Authors:-Anshul Dave

Abstract-Customer churn prediction has become a critical focus area for businesses seeking to maintain customer relationships and protect revenue streams. This research paper provides a comprehensive examination of current methodologies, models, and implementation strategies for effective customer churn analysis. Modern approaches to churn prediction demonstrate significant improvements in accuracy and interpretability, enabling businesses to proactively address customer attrition before it occurs. By leveraging advanced analytics and machine learning techniques, organizations can identify at-risk customers, implement targeted retention strategies, and gain valuable insights into factors driving customer decisions.

Intelligent Career Guidance System for College Students to Sustain in the Emerging Job Sector
Authors:-Danish Homavazir, Dr Meenakshi Thalor

Abstract-An advanced career guidance recommendation sys- tem is an innovative algorithm that differentiates itself from traditional recommendation algorithms, which work through a link to provide relevant recommendations and are heavily dependent on user behavior. These algorithms are trained to understand various aspects relating to an applicant—their skills, qualifications, work experience, and preferences—and utilize these data points to create customized recommendations based on their profile and career aspirations. Additionally, these intelligent talent recommendation systems continuously evolve, refining their suggestions by analyzing user feedback and performance insights. This study introduces an innovative approach to talent rec- ommendation specifically designed for college students who are preparing to enter the emerging job sector based on a Rank- Based Sequential Deep Learning (RBS-DL) Model. By studying students’ skills, qualifications, interests, and career aspirations, the algorithm intends to offer personalized recommendations. The effectiveness of the recommendation algorithm enhanced by RBS-DL is assessed through both simulated experiments and empirical verifications. Results show significant improvement in recommendation accuracy and relevance over traditional approaches. For the RBS- DL algorithm, students showed a higher job offer acceptance rate by 40% and around 30% increment in job satisfaction levels. This algorithm also learns from user interactions, adjusting its recommendations over time based on real-time user feedback.

DOI: 10.61137/ijsret.vol.11.issue2.259

Automated Brain Tumour Detection from MRI Using Fine Tuned Efficientnet-B0
Authors:-Assistant Professor T.Vineela, R.Nagamani, V.Sammilita, V.V.Komalatha, N.Sravanthi

Abstract-Brain tumour disease arises from the uncontrolled growth of cells. Detecting brain tumours early is crucial for successful treatment. Many current diagnostic methods are cumbersome, demand significant manual input, and yield less-than-ideal results. The EfficientNet-B0 architecture was utilized to diagnose brain tumours through magnetic resonance imaging (MRI). This refined architecture was applied to classify four distinct stages of brain tumours from MRI images. The fine-tuned model achieved 99% accuracy in identifying four different brain tumour classes: glioma, no tumour, meningioma, and pituitary. The proposed model excelled in detecting the pituitary class, with a precision of 0.95, recall of 0.98, and an F1 score of 0.96. It also performed exceptionally well in identifying the no-tumour class, with precision, recall, and F1 score values of 0.99, 0.90, and 0.94, respectively. The precision, recall, and F1 scores for the Glioma and Meningioma classes were also notably high. This proposed solution holds significant potential for improving clinical assessments of brain tumours.

DOI: 10.61137/ijsret.vol.11.issue2.260

Securing IoT Data in Cloud: Techniques and Best Practices
Authors:-Harshal Ganesh Chavan

Abstract-The rapid adoption of the Internet of Things (IoT) has led to a massive increase in data generation, often stored and processed in the cloud. This presents significant security challenges due to the inherent vulnerabilities of IoT devices and cloud infrastructures. This paper explores the techniques and best practices for securing IoT data in the cloud, including encryption, access control, data integrity mechanisms, and advanced security protocols. By reviewing current research and technological advancements, the paper outlines strategies that can mitigate risks such as unauthorized access, data breaches, and cyber-attacks. The paper aims to provide insights into safeguarding the integrity, confidentiality, and availability of IoT data within cloud ecosystems. Securing IoT data in the cloud is crucial due to the sensitive nature of the data and the growing number of connected devices. Key techniques include encryption to protect data in transit and at rest, strong authentication and authorization measures to control access, and edge computing to process data closer to the source for better security. Best practices involve regular software updates, minimizing the amount of collected data, using multi-layer security approaches, ensuring compliance with regulations, and continuous monitoring for potential threats. By following these strategies, organizations can protect IoT data in the cloud from unauthorized access and cyberattacks.

WebVision – A Multi-Model AI Approach to Privacy-Preserving Web Accessibility
Authors:-Mrs.Punashri Patil, Vinay Basargekar, Shraddha Thorbole, Yashraj Dhamale, Saurabh Rai

Abstract-This paper adheres to web accessibility through a privacy-centric, AI-powered approach via an extension in Chrome. The extension implements a multi-model architecture that combines Google Chrome’s built-in AI capabilities using Gemini Nano with a JavaScript library transformer.js to process machine learning (ML) models directly in the browser that is web content run locally on users’ devices. Unlike existing solutions that rely on cloud processing or limited built-in browser features which might hinder the user’s privacy, our extension prioritizes user privacy by performing the computational/processing tasks on-device while providing comprehensive accessibility features. System also has voice commands for hands free navigation, generates summaries based on prompts and utilizes moondream(AI model) to provide detailed descriptions of images present in the web-content. Performance metrics indicate that the local processing approach maintains robust functionality while preserving user privacy.Our user testing shows remarkable improvements in web browsing for people with diverse accessibility needs. Users reported faster navigation, better understanding of content, and greater independence compared to traditional screen readers and similar tools. Our approach of processing information locally on users’ devices maintains strong performance while protecting privacy. This research advances accessible technology by showing how AI models can be integrated into browser extensions to make the web more inclusive without compromising privacy or requiring powerful computers.

DOI: 10.61137/ijsret.vol.11.issue2.261

Harnessing AI and ML for Enhanced Cyber Defense in Electric Vehicle Security
Authors:-Rohit Jadhav, Dr.Meenakshi Thalor

Abstract-Electric vehicle information security improves through the implementation of AI & ML in automotive sector. A targeted study about data-driven implementations of AI and ML within electric vehicles represents a necessary research need. This paper describes the present situation regarding AI and ML implementations in EVs. Comprehensive analysis of pertinent studies and articles enabled our team to find important content after analyzing how different subjects tie together within these documents. This recent research has shown that AI along with ML technologies increasing appear as critical tools in protecting EV information security through improved authentication sys- tems and better attack detection methods. Table I shows different implementation applications of Machine learning techniques, encompassing deep learning and neural network models while blockchain technology shows increasing applications. The Study data shows the man in middle intrusion detection receives the highest attention at 75% while authentication covers 20% of the literature and prevention takes up only 5%. Deep learning consti- tutes 70% of analyzed works with neural networks representing 15% and remaining studies employing alternative methods..

DOI: 10.61137/ijsret.vol.11.issue2.262

Donation System or Food and Clothes Based on AIML
Authors:-Shraddha Laxman Hiwrale

Abstract-Donate Management System Food and Clothes using AI In India, traditional donation systems lack transparency and often mismatch resources and poor allocation. India has millions of people who struggle to make ends meet with food and cloth donations to help feed them. Rural areas and people who are affected by natural disasters are also, in documents, in need of food and clothes. Using artificial intelligence, this system improves decision-making as it analyzes donation patterns and demand and uses real-time data to link donors and recipients. We are also leveraging AI algorithms to prioritize critical needs, reduce waste, and ensure equitable distribution to communities in need. The system has features such as registering the donor and recipient, automatic allocation. One cannot ignore the extreme disparity in wealth distribution in India where we have so many NGOs, government schemes and volunteer organizations and they are selflessly working to provide food and clothing to the needy when they need it, but still the effort is getting lost due to logistical inefficiencies, resource wastage and lack of real-time data.

DOI: 10.61137/ijsret.vol.11.issue2.263

Heart Disease Risk Assessment Using Machine Learning Algorithms
Authors:-Sneha Gonjari, Dr. Meenakshi Thalor

Abstract-Modern technology is changing the healthcare land- scape,and perhaps no greater impact is being made in the diagno- sis and prediction of heart disease. Inthis research work, machine learning (ML) models are applied to predict the probability of heart disease for the individual patient based on personal- related features such as age, blood pressure, cholesterol levels, and life experience information. Although several studies have implemented ML techniques, there are still challenges in limited datasets, accuracy, andinterpretability of the models used. The proposed system is intuitive as compared to otherswhere health information from the users is entered and risk is returned. If the model predicts a high risk, it recommends that the individ- ual seea health care provider. Night trip focuses on accessibility with this tool available to the generalpublic as well as medical doctors, uniting personal health with professional diagnostics. The system enhances prediction reliability responsively toheart disease prevention by harnessing the combined strengths of multiple models.

DOI: 10.61137/ijsret.vol.11.issue2.264

AI-Powered Image Processing for Plant Disease Detection in Viticulture
Authors:-Yash Bhalekar, Dr Meenakshi Thalor

Abstract-Agriculture is on the brink of a revolutionary change during the era of advanced technology meets age-old industries. This article give a Advanced tools for plant disease detection at an early stage is in demand for sustainable agriculture. Traditional methods, which rely on visual inspection, are slow and error- prone. This paper talks about the use of artificial intelligence and image processing for the accurate and effective diagnosis of plant diseases. Although quite promising, recent attempts suffer from small datasets as well as lack of generalization. As we are working with deep models, we have also significantly emphasized the diversity between the views in the dataset which not only makes our work more accurate but also can scale better than previous work. Hence, this research aids sustainability in agriculture with strong, automated solution for disease detection.

DOI: 10.61137/ijsret.vol.11.issue2.265

Smart Location Recommendation for Group Meetups: A Machine Learning Perspective
Authors:-Mrs. Anuja S. Phapale, Niranjana Patil, Janhavi Parihar, Shraddha Joshi

Abstract-With the increasing reliance on technology for location-based services, finding an optimal and fair meetup spot for a group remains a challenge. This research proposes a machine learning-based approach to recommend the most suitable meetup location based on the geographic inputs of multiple users. The system utilizes clustering algorithms to identify equidistant locations while incorporating user preferences such as venue type (e.g., cafes, parks, malls). Google Maps API is leveraged for real-time location data and distance calculations, while various machine learning models, including K-Means and DBSCAN, are compared for efficiency and accuracy. The system enhances decision-making by offering optimized suggestions, ensuring fairness and accessibility for all participants. Future improvements include incorporating real-time traffic data and personalized recommendations based on user behavior.

DOI: 10.61137/ijsret.vol.11.issue2.266

Using an Adaptive Learning Tool to Improve Student Performance and Engagement in a University Course
Authors:- Nikhil Bhamare, Dr Meenakshi Thalor

Abstract-College courses are haunted by participation and grade problems, particularly in large or online classes. This experiment investigates the impact of an adaptive learning (AL) system, CogBooks®, on student achievement in a blended statistics course. We employed a quasi-experimental experiment with two groups: an AL system (N=100) group and a group of students instructed using traditional techniques (N=100). Partic- ipation was measured with validated surveys, and performance was measured with standardized grades. Results indicated a statistically significant difference in the AL group, a 15 percent boost in average grades (p < 0.05) and a 20 percent boost in reported participation measures compared to the control group. The system’s real-time feedback and individually tailored learning paths efficiently addressed individual students’ needs. Surprisingly, our solution is offline-capable, offering accessibility in low-bandwidth settings—a major benefit compared to cloud- capable solutions. These findings present AL as a cost-effective, scalable solution to higher education, with potential applications to STEM and humanities courses. Long-term retention effects and compatibility with generative AI tools might be topics for future research.

DOI: 10.61137/ijsret.vol.11.issue2.267

Railway Train Accident Prevention System
Authors:- Harsh Malik, Mohd.Zubair

Abstract-Railway accidents remain one of the most critical concerns in transportation safety, causing severe casualties, infrastructure damage, and economic losses. With the increasing reliance on rail networks for both passenger and freight transportation, the need for an efficient and proactive accident prevention system is more crucial than ever. The conventional railway safety mechanisms primarily depend on human intervention, which is prone to errors and delays. This paper presents an Arduino-based Railway Train Accident Prevention System designed to detect potential hazards in real time and prevent accidents before they occur. The system integrates ultrasonic sensors, IR sensors, and GSM modules to detect obstacles, track fractures, and mechanical faults, allowing for immediate corrective action. The automated emergency braking system ensures that the train comes to a halt upon detecting an obstacle, significantly reducing collision risks. Additionally, the GSM module enables remote communication with railway authorities, alerting them to potential hazards and allowing swift intervention. This system is cost-effective, easy to implement, and scalable for various railway environments, from urban transit systems to remote tracks in rural regions. The integration of real-time monitoring, automated responses, and remote alert mechanisms ensures enhanced safety and efficiency in railway operations. Furthermore, the study explores potential improvements such as integrating AI-driven predictive analytics and GPS tracking, which could further optimize railway safety and accident prevention. Railway transportation is one of the most widely used modes of travel and freight movement across the world. However, despite its efficiency, railway accidents continue to pose serious challenges, resulting in loss of human lives, damage to infrastructure, and significant financial losses. The primary causes of railway accidents include track obstructions, derailments, signal failures, and mechanical malfunctions, which are often exacerbated by human error, adverse weather conditions, and inadequate track maintenance. Traditional railway safety measures depend largely on human supervision, making them prone to inefficiencies and delays. Hence, there is an urgent need for an intelligent, automated system that can effectively detect hazards in real time and take immediate corrective actions to prevent accidents before they occur. This paper proposes an Arduino-based Railway Train Accident Prevention System that utilizes multiple sensors, automation, and wireless communication to enhance railway safety. The system is designed to detect obstacles, track fractures, and other mechanical faults through the integration of ultrasonic sensors, infrared (IR) sensors, and GSM modules. The ultrasonic sensors are responsible for identifying any obstructions on the railway tracks, while IR sensors help in detecting cracks or faults in the railway tracks. Additionally, the GSM module plays a crucial role in remote communication by sending immediate alerts to railway authorities in case of detected hazards, enabling swift action to mitigate risks. One of the most crucial features of this system is the automated emergency braking mechanism, which is activated as soon as an obstacle is detected in the train’s path. By automatically stopping the train before a collision can occur, this feature significantly reduces accident risks and enhances passenger safety. Unlike conventional safety systems, which require constant human monitoring and intervention, this smart, automated solution operates independently, ensuring continuous surveillance and real-time response to potential threats. This minimizes human dependency and reduces the chances of delayed accident prevention measures. The proposed system is designed to be cost-effective, scalable, and adaptable, making it suitable for implementation in various railway infrastructures, including high-speed rail networks, freight transport, and suburban train systems. Additionally, the research explores potential enhancements such as AI-driven predictive analytics, GPS tracking, and machine learning algorithms that could further optimize railway safety by predicting potential risks before they arise. Future advancements could also enable data-driven predictive maintenance, ensuring that railway authorities can proactively address track faults before they escalate into major safety hazards. By leveraging modern technological advancements, this research presents a comprehensive and intelligent approach to railway accident prevention. The integration of real-time monitoring, automated braking, wireless alerts, and data-driven analytics ensures that railway operations are not only safer but also more efficient and reliable. This system provides a promising solution to the global challenge of railway safety and aims to revolutionize railway transportation by significantly reducing accident rates and improving overall operational efficiency.

Advanced Machine Learning Approaches for Detecting Phishing Websites
Authors:- Ms.Gauri Shamkant Dighe

Abstract-The development of new methodologies for identifying phishing attacks in the context of an increasing digital world is compromised due to lacking research and execution. This paper focuses on versatile approaches in Artificial Intelligence (AI) and Machine Learning (ML) to almost single-handedly eliminate phishing attempts. The work takes a holistic approach to problems of URL structure, content, and behaviors by XGBoost, LightGBM, Naïve Bayes, and CatBoost, as well as Graph Neural Network GNN. Multiple features are captured; for example, URL length, number of dots, slashes, numeric characters, and special characters will all be used for model training. Monitoring the system in real time and adapting it to new phishing paradigms makes it possible to tactically protect users and organizations from the continuous, unpredictable changes of cyber threats. This study covers the approach of employing diverse machine learning methods to combat phishing in a more direct and secure manner.

DOI: 10.61137/ijsret.vol.11.issue2.268

Detection of Human in Flames Using HOG & SVM
Authors:- kajal Hake

Abstract-This project is designed to assist in locating individuals trapped in fire emergencies by integrating two interconnected components: fire detection and human identification. The system employs the YCbCr color space standard to detect fire and flames within the environment. To identify individuals amidst the fire, it leverages the HOG combined with a SVM classifier. Motion-based feature selection techniques are utilized for human activity recognition in video sequences. To ensure seamless operation of both modules, they are systematically integrated. Fire detection is carried out using a trained model that incorporates a diverse range of human feature sets. Additionally, moving objects are identified using a combination of a color median filter and background differencing, following four distinct rules. A critical aspect of this approach is the dependency between fire detection and human identification—ensuring that if a fire is detected, the system actively searches for trapped individuals. The primary objective of this methodology is to enhance the efficiency of locating individuals in hazardous fire conditions, enabling rapid rescue operations. This system can support firefighters in strategic decision-making and identifying high-risk zones.

DOI: 10.61137/ijsret.vol.11.issue2.269

Sentiment Analysis with Deep Learning for Social Media Texts: A Comprehensive Study
Authors:- Satwik Sanjay Garje

Abstract-This research document shows how deep learning helps detect emotional content in social media data. Natural language processing (NLP) department Sentiment analysis discovers text sentiment orientation within documents. Thanks to social media’s fast growth companies and researchers depend on understanding verbal reactions from content producers. Because social media texts follow informal writing styles with slang words and emojis plus frequent hashtag usage they require special handling methods. Deep learning models including CNNs RNNs and Transformers now better recognize linguistic details from text datasets than ever before. The research examines every aspect of using deep learning methods to analyse social media text sentiment including the tools, data sets used, present problems and future prospects. This study proposes new methods to create better sentiment analysis systems for social media platforms.

DOI: 10.61137/ijsret.vol.11.issue2.270

A Framework for Non-Invasive Wearable Health Monitoring Using Flexible Biosensor Tattoos
Authors:- Assistant Professor Mrs. Anuja S. Phapale, Shreyas Patil, Saurabh Patil

Abstract-The increasing demand for continuous, non-invasive health monitoring has spurred innovations in wearable technology. This paper presents a conceptual framework for a flexible, skin-adhering biosensor tattoo designed to monitor vital physiological parameters-heart rate, hydration levels, and glucose concentration-in real time. Leveraging photoplethysmography (PPG), bioimpedance analysis (BIA), and sweat-based electrochemical sensing, the proposed system integrates ultra-thin sensors, a low-power microcontroller, and Bluetooth Low Energy (BLE) for wireless data transmission to a mobile application. The framework emphasizes energy efficiency through a hybrid power system combining flexible micro-batteries with thermoelectric and piezoelectric energy harvesting. A user-friendly mobile interface provides live health metrics, AI-driven anomaly detection, and historical trend analysis, enhancing proactive healthcare. Unlike conventional wearables, such as smartwatches and continuous glucose monitors, this tattoo-based system offers superior comfort, non-invasiveness, and customization potential, addressing limitations like bulkiness and frequent charging. The design incorporates waterproofing via hydrophobic nano-coatings and biocompatible materials, ensuring durability and skin safety. While currently a research-based concept, the framework builds on established technologies, demonstrating feasibility through existing sensor methodologies and flexible electronics research. This paper outlines the system architecture, technical workflows, and potential applications, targeting athletes, diabetic patients, and health-conscious individuals. Future directions include prototype development, clinical validation, and expanded health metric integration. The proposed system promises to redefine wearable health technology by merging advanced biosensing with seamless, everyday wearability.

DOI: 10.61137/ijsret.vol.11.issue2.271

AI-Powered Smart Agricultural Ecosystem: Enhancing Weather Prediction, IoT-Based Soil Health Monitoring, Direct Market Access, and Financial Services for Farmers
Authors:- Ms. Anusshka Prakash Teli

Abstract-As we know the ongoing challenges of agriculture sector necessitate the integration of advanced technology to ensure sustainable farming. Agriculture plays a crucial role in our life as food is the important part of human survival, it is necessary to look out for the ongoing problems in agriculture sector. With increasing challenges to the agricultural sector, the integration of advanced technologies into sustainable farming practices is essential to enhance productivity. Being the backbone of the global economy, agriculture faces threats from climate change, resource inefficiencies, and market access limitations. This paper introduces an AI- Powered Smart Agricultural Ecosystem that combines advanced technologies to provide holistic solutions to these issues. The system is supposed to enhance the prediction of weather through AI and allows farmers to take the right decisions in planting and harvesting. IoT-based soil health monitoring helps to assess soil in real-time to save efficient usage of resources, ensuring that crop yield is improved. Blockchain technology gives farmers direct access to the market, thereby reducing intermediaries between buyers and sellers and ensuring transactions are transparent. AI-powered financial services will give personalized credit scores and microloans to facilitate the farmers. By harnessing the most recent advances in technologies, such as machine learning, IoT, and blockchain, this system bridges existing gaps in agricultural research and practices. Unlike the typical approaches, this proposed framework combines predictive analytics, real-time monitoring, and financial inclusion into one integrated ecosystem. While it increases productivity, this will also promote environmental sustainability by improving resource use efficiency. This research is novel because it fully integrates technology to tackle the critical challenges that farmers face. This ecosystem is expected to increase profitability, reduce resource wastage, and ensure better market access, thus significantly contributing to the transformation of the agricultural sector into a more resilient and sustainable domain.

DOI: 10.61137/ijsret.vol.11.issue2.272

Satellite Image Analysis for Agricultural Field Forecasting Using Machine Learning
Authors:- Sarthak Harshad Belvalkar, Dr Meenakshi Thalor

Abstract-With the progression of machine learning methods recently, a branch of artificial intelligence was revealed for forecasting and prediction in agriculture field. That is a benefit to works that have to do with agriculture. Recent developments in agricultural practices and methods have highlighted the importance of accurate monitoring, particularly with regards to field monitoring such as paddy areas, in order to take timely control measures for food security and other supportive actions. Moreover, regular monitoring of an area, a landscape, and the entire earth is beneficial by using one of the important sources, that is satellite images, providing information through multi-temporal images. Best source of images complexity because they are indifferent of atmospheric conditions like wind, sun light etc. It combines deep learning specifically convolutional neural networks (CNNs)–and satellite imaging to model crop yield. We suggest a hybrid model that uses data from various sources and real-time integration to provide scalability, accuracy, and reliability to solve practical challenges, such as dataset diversity as well as computational efficiency.

DOI: 10.61137/ijsret.vol.11.issue2.273

AI/ML-Driven Phishing Defence: Crafting a Robust Email Security Framework
Authors:- Sahil Milind Gedam

Abstract-Phishing attacks, which use people’s vulnerability to trick them into disclosing personal information, continue to be the most widespread threat type, at least for the time being. These types of attacks typically involve phony emails purporting to be from reputable sources, such as banks, companies, or government buildings. Even though standard email filtering methods are somewhat helpful in the fight against phishing, they are very unlikely to detect sophisticated phishing channels like spear phishing and zero-day phishing that are used today. As a result, using machine learning (ML) and artificial intelligence (AI) to address email security is becoming more popular. They can learn from sampled volumes of emails and use that knowledge to better identify phishing and non-phishing emails. Here, we suggest developing a phishing detection system with AI/ML, which will be instrumentally essential to ensuring dependable and flexible email security. To categorize emails according to features taken from the subject, body, and links of the emails, the system uses Random Forest, Support Vec- tor Machines (SVM), and Neural Networks. We trained and evaluated these models to determine the feasibility of phishing identification using both phishing and benign email corpora. The study’s accomplishments included a higher detection accuracy in comparison to traditional methods and a further decrease in misrecognition, both of which enhance security overall. Notably, the suggested system is robust and adaptable to sophisticated phishing attacks by combining a multi-model approach with learning mechanisms.

DOI: 10.61137/ijsret.vol.11.issue2.274

Dynamic Profits: Leveraging Reinforcement Learning in Evolving Financial Markets
Authors:- Dr Meenakshi Thalor, Kamlesh Nanasaheb Bari

Abstract-Electronic trading or algorithmic trading has changed the landscape of financial markets as data is processed and analyzed, which enables instant decision making. The application of reinforcement learning (RL) in algorithmic trading has the ability of constant improvement and optimization in ever- changing environments. Autonomous, intelligent systems that can operate in the unpredictable financial market conditions are required at an ever-growing rate. Trading agents can learn market optimal decision-making strategies through reinforcement learning, which makes it a good fit for real-time usage. The primary aim of this study is to overcome the challenge posed by the traditional algorithmic trading approaches that target high market volatility and non-stationary data using pre- programmed strategies. Most of the published studies are concentrated on the theoretical aspects of the models while very little attention is given to their application, transaction cost, slippage, and market impact. In RL based trading systems, learning needs to be stable or the trader risks overfitting, setting risk parameters for exploration and exploitation can also Markov Decision Process be very difficult. We develop a custom RL framework that compensates for transaction costs at the breakeven point, where other methods fail. Rather than focusing on other reward functions, our method can actually be implemented in real-time trading situations.

DOI: 10.61137/ijsret.vol.11.issue2.275

AI-Enhanced Symptom Checker Using BioBERT for Disease Prediction
Authors:- Assistant Professor Mrs.Punashri Patil, Siddhi Uttekar, Pooja Shingade

Abstract-Precise disease diagnosis using symptoms is of paramount importance in efficient healthcare but is frequently incomplete in conventional symptom-checking frameworks that depend upon rule-based techniques or sparse data. Pre-trained in biomedical text for transfer learning tasks, the NLP model literature, for predicting diseases through patient-reported symptoms. Through Bio BERT fine-tuning on open-source symptom-disease datasets, the system accurately maps symptoms to potential diseases, overcoming limitations like symptom variability and overlapping disease presentations. The proposed approach is compared with Naive Bayes (NB), as well as other conventional machine learning models, This includes Bayes, Random Forest, and Support Vector Machines(SVM).Experimental outcomes illustrate that the fine-tuned Bio BERT model has an accuracy rate of 89%, surpassing conventional methods by far. The system is also equipped with capabilities to improve and learn over time by incorporating user feedback to enhance its predictions. This study identifies the possibility of AI-driven symptom checkers to transform healthcare by offering real-time, accurate, and individualized disease prediction, alleviating the pressure on healthcare systems, and enhancing patient outcomes.

DOI: 10.61137/ijsret.vol.11.issue2.276

Smart Agriculture using Machine Learning
Authors:- Dipika Medankar, Dariyan Naagar, Aakanksha Nimbalkar, Prajwal Naukarkar, Assistant Professor Mrs. Anuja S. Phapale

Abstract-Crop productivity is paramount to world food security, and precise crop yield forecasting is critical to maximizing farm operations. Classic forecasting techniques hardly consider the intricacies of interaction between climatic factors, soil properties, and crop growth stages. The rapid progress in Machine Learning (ML) and Deep Learning (DL)in recent years has transformed crop prediction by utilizing extensive data from meteorological archives, soil sensors, and remote sensing technologies. This research examines different ML methods, such as Random Forest (RF), Support Vector Machines (SVM), Artificial Neural Networks (ANN), Long Short-Term Memory (LSTM), and Hybrid AI models, to improve crop yield prediction. By incorporating major agrarian parameters like temperature, rainfall, humidity, soil moisture, and nutrient levels, AI-based models can offer more accurate and dynamic predictions, supporting farmers and policymakers in decision-making.The paper also addresses issues like data quality, model interpretability, and climate change adaptation, and possible solutions like IoT-based real-time monitoring and Explainable AI (XAI).

DOI: 10.61137/ijsret.vol.11.issue2.277

Project Management of Metallurgy Microscopes: From Design to Manufacturing
Authors:- Viraj Vijay Dare, Professor Amol Baviskar

Abstract-Metallurgy microscopes are critical tools in material analysis, quality control, and industrial research. The manufacturing of these microscopes involves intricate processes, including design, prototyping, testing, and final production. Efficient project management is essential to ensure cost-effectiveness, risk mitigation, and product quality. This study examines the project management methodologies used in the development of metallurgy microscopes, highlights key challenges, and provides recommendations for enhancing efficiency in the production lifecycle.

Symbiotic UX Design Interfaces
Authors:- Aashish Manchanda

Abstract-The integration of Artificial Intelligence (AI) into human-environment interactions offers transformative potential for promoting sustainability and enhancing ecological understanding. This paper explores the concept of symbiotic interfaces—platforms facilitating seamless collaboration between AI and humans—to foster informed decision-making and sustainable practices. Through user interviews and survey analyses, we examine public perceptions, challenges, and future directions in developing AI-driven systems that augment human capabilities while promoting environmental stewardship. Additionally, this study highlights real-world applications of AI in areas such as wildlife conservation, urban planning, and resource management, demonstrating how these technologies can create measurable environmental impact. By leveraging AI’s analytical power and human intuition, we propose actionable strategies for designing systems that empower users to adopt sustainable behaviours and make ecologically responsible choices.

Review of Evaluation of the water quality index in Gujarat Region
Authors:- Girish R. Lauhar, Bhagyesh C. Contractor, Girish D. Jagad

Abstract-The Water Quality Index (WQI) is a numerical indicator that summarizes the complex information about water quality into a single value. It is based on three types of parameters in water quality index (WQI) is physical, chemical, and biological parameter is that are combined into a single value that ranges from 0 to 100 and involves 4 processes: (1) selection of parameter (2) assignment of weighted (3) calculation of water quality index parameter (4) overall rating each water quality parameter on world health organization (WHO) or (bureau of Indian standard (BIS). Water quality rating and status (0-25)-Excellent water quality, (26-50)-Good water quality, (51-75) -Poor water quality, (76-100) -Very poor water quality, (>100) -Unsuitable for drinking. After giving water quality rating, we will check whether the water is dirty or not. If it is dirty, then do not use it. For usefulness, treat it and then use it for drinking.

A Study on Role of Technological Innovation in e-Entrepreneurship
Authors:- Assistant Professor P. Siva Kumar, Assistant Professor Garima Agrawal

Abstract-The industry 4.0 characterized by the integration of digital technologies, automation and data into business operations Entrepreneur is an innovative thinker committed to the company he puts innovations and inventions into Connecting Q-commerce with together. The most prestigious firm Infosys established Quantum Living labs(QLL) using quantum computing in various business sectors like Finance, logistics, healthcare, demonstration and many more. Nowadays many reputed companies are using Quantum technology for Big data analytics. The purpose of the present study is to identify the various factors that will affect global market entrepreneurship the issues and challenges. The data for the purpose of the study has been collected through Secondary sources, which mainly includes books, articles, magazines newspapers and websites.

Consumer Behavior Analysis
Authors:- Chirayu. R. Jain

Abstract-Consumer behavior has seen a remarkable change over the years, especially in the retailing industry where Kirana shops and street markets, which had been the consumers’ preferred destinations for shopping for a very long time are now fading away and the trend and preference has moved towards supermarkets. Through an analysis of consumer opinion on shopping behaviors, and major influencing factors, this study hopes to shed light on the forces driving this change. Objective of the research pertains to finding out consumer’s opinion on shopping grocery from traditional markets and modern huge supermarket complexes, and the reasons for shifting or adopting traditional means. Random sample of not more than 55 consumers of different age groups questioned through a questionnaire provided, various questions related to their opinion about purchasing patterns about shopping grocery & household items. Based on the data received, it is concluded that regardless of age group, supermarkets and Kirana stores are almost equally popular and preferred and hence, evolution of supermarkets has partially replaced Kirana stores, but it could not completely eradicate its presence in the market as supermarkets and Kirana stores have their own advantages and disadvantages.

Work –Life Balance of Women Employees: Challenges and Strategies
Authors:-Greeshma Muraly

Abstract-Women across the world encounter difficulties in managing what their professional work and personal life. These research paper exams the difficulties of workload and life balancing in women particularly among working women and entrepreneurs. It analysis the key factors affecting work life balance, the impact of overload on mental and Physical health and Strategies for achieving stability. This paper also highlights policies and support systems that can help woman in managing the responsibilities effectively.

DOI: 10.61137/ijsret.vol.11.issue2.278

A Study on Financial Planning of an Individual
Authors:-Mr. Siddhesh Somnath Wavhal, Professor A. V. Gupta

Abstract-The level of income and the proportion of savings reflect an individual’s standard of living within society. It is not sufficient to merely accumulate savings; it is equally important to invest them in profitable opportunities to ensure capital growth over time rather than letting it remain idle. Such investments circulate across various sectors, including households, the private sector, and government bodies. This flow of capital enables the economically weaker sections to access diverse financial assets, fostering both wealth creation and the expansion of financial services within the economy. Additionally, effective financial planning is crucial for every individual when making investment decisions. It involves setting clear investment objectives, understanding the expected rate of return, and assessing the risks involved. Financial planning is a strategic process where an individual evaluates their financial goals, identifies outstanding debts, and outlines the necessary steps to achieve these goals within a specific timeframe. It quantifies financial needs and helps in making informed decisions.

Data Breach Monitoring System
Authors:-Ms.Dhivya K, Abinaya M, Janaki R, Kavya S, Sowbarnika P N

Abstract-Current data breach monitoring systems provide continuous oversight of network activity and data access points, leveraging analytics and machine learning to detect unauthorized access to sensitive information. These systems generate real-time alerts for rapid response actions, such as isolating compromised devices and blocking suspicious IPs, while also supporting regulatory compliance through detailed activity logs. This project proposes enhancements in anomaly detection precision using adaptive machine learning algorithms that update behavior baselines dynamically and reduce false positives, improving threat identification accuracy. Additionally, it integrates seamlessly with automated incident response platforms for efficient containment and remediation. Future developments aim to incorporate predictive analytics to anticipate breaches by analyzing evolving behavioral trends, enhancing proactive defense capabilities and the system’s adaptability to emerging cyber threats.

DOI: 10.61137/ijsret.vol.11.issue2.279

Molten Salt Reactors: A Revolutionary Approach to Sustainable Nuclear Energy
Authors:-Mr. Vishwanath G Barve, Miss. Kshitija V Joshi

Abstract-Molten Salt Reactors (MSRs) represent a paradigm shift in nuclear energy technology, offering inherent safety features, high efficiency, and reduced waste production. Unlike conventional solid-fuel reactors, MSRs operate using liquid fuel mixed with molten salts, allowing for greater thermal stability and fuel utilization. This paper explores the history, design principles, technological advancements, and future potential of MSRs in the global energy landscape. Additionally, we address the challenges associated with their implementation, including material compatibility, regulatory concerns, and economic feasibility.

Challenges Faced by Turmeric Exporters with Special Reference to Erode District
Authors:-Assistant Professor Dr. M. Kowsalya, Ms. V. Ashvitha

Abstract-Turmeric, a key agricultural product, holds significant economic importance for India, with Erode District in Tamil Nadu being one of the largest turmeric production hubs. However, turmeric exporters from Erode face a series of challenges that impede their competitiveness in the global market. These challenges include inadequate infrastructure, fluctuating market prices, lack of quality standardization, and the complexities of international trade regulations. Additionally, issues such as inconsistent supply due to climatic variations, pest attacks, and post-harvest losses further exacerbate the situation. This study explores these challenges in detail, focusing on their impact on the growth and sustainability of turmeric exports from Erode District, and provides recommendations for overcoming these hurdles through policy interventions, technological upgrades, and market diversification.

DOI: 10.61137/ijsret.vol.11.issue2.281

Heart-Disease System: A Rule-Based Prediction Model for Heart Disease Symptoms and Causes
Authors:-Chaudhari Khushikumari

Abstract-Heart disease remains one of the leading causes of mortality worldwide. Early detection and prevention are crucial to reducing the risks associated with cardiovascular diseases. This paper presents a rule-based predictive system for heart disease diagnosis. The system leverages patient data, including medical history, lifestyle factors, and clinical symptoms, to provide an accurate assessment of potential heart disease risks. Implemented in Python, the system follows a structured decision-making approach based on medical guidelines and expert knowledge. The proposed system aids in decision-making for healthcare professionals and individuals by evaluating multiple health indicators to predict heart disease risk. This research paper discusses the dataset used, feature selection, rule formulation, system architecture, and evaluation criteria. The study demonstrates that expert-driven approaches can enhance early detection and contribute to improved patient outcomes.

DOI: 10.61137/ijsret.vol.11.issue2.282

Development of an E-commerce Website for Inventory Management and Efficient Online Shopping Delivery
Authors:-Fenil Mehta

Abstract-This paper details the development and implemen- tation of a robust e-commerce website designed to seamlessly integrate inventory management and efficient online shopping delivery. The platform leverages the power of PHP for dynamic website functionality and MySQL for reliable and scalable database management. The primary objective of this project is to create a user-friendly system that simplifies inventory tracking for administrators while simultaneously providing a seamless and satisfying shopping experience for end-users. The website achieves this by dynamically updating stock levels in real- time, automating order processing from placement to fulfillment, and integrating a comprehensive delivery system to ensure smooth and timely delivery of purchased goods. This integrated approach aims to minimize manual intervention, reduce errors, and improve overall operational efficiency for businesses. The system’s features include a user-friendly interface for browsing and purchasing products, a secure payment gateway integration for safe transactions, and a detailed order tracking system that keeps customers informed about their purchases. Furthermore, the administrative backend provides tools for managing product catalogs, tracking inventory levels, generating reports, and over- seeing the delivery process. The solution is designed to be scalable and adaptable to the evolving needs of businesses, ultimately supporting them in streamlining their operations, optimizing resource allocation, and improving customer satisfaction through a more efficient and reliable e-commerce platform. The paper will further discuss the system architecture, implementation details, testing procedures, and potential future enhancements.

Memory-Augmented Large Language Models: Overcoming Catastrophic Forgetting in Continual Learning
Authors:-Pavan Kumar Adepu

Abstract-This paper proposes a novel strategy for mitigating catastrophic forgetting of lifelong learning via memory-augmented large language models. Coupling external memory modules with standard deep learning frameworks, our methodology enables the model to retain context information over long periods of time and retrieve such information, preventing previously learned facts from being overwritten by new input data. We demonstrate our approach on the real WikiText-103 dataset, with the results of our experiments showing an extensive improvement in the retention of long-term dependencies and overall model performance. Our findings suggest that memory augmentation is a promising means to enhance the resilience of language models in ever-changing, dynamic settings and laying the groundwork for more robust and adaptable continual learning systems.

DOI: 10.61137/ijsret.vol.11.issue2.283

Industrialization of Data Science Process Transitioning From Artisanal to Scalable Workflows
Authors:-Swati Kashinath Pawar

Abstract-The growing reliance on data science for business intelligence, automation, and decision-making necessitates a shift from artisanal, manually driven approaches to industrialized, automated, and scalable workflows. This paper explores methodologies, platforms, and MLOps (Machine Learning Operations) systems that facilitate the transition, increasing productivity, reducing errors, and improving deployment rates. By analyzing best practices and case studies, this research highlights the importance of standardization, automation, and integration in modern data science workflows. By industrializing data science, businesses can reduce human intervention, minimize errors, accelerate model deployment, and ensure regulatory compliance. This shift enables organizations to extract greater value from data, optimize operational processes, and foster innovation. However, challenges such as data governance, ethical AI considerations, and maintaining model interpretability must be addressed for successful implementation. As data science matures, organizations are shifting from artisanal, manually intensive workflows to scalable, automated processes that enhance efficiency, reproducibility, and deployment speed. Traditional data science workflows often rely on custom, one-off scripts and ad-hoc methodologies, which hinder scalability and collaboration. This transition involves adopting standardized frameworks, automation tools, and cloud-based infrastructures that streamline data preprocessing, model training, deployment, and monitoring.

Deep ThyroidScan: Multilayer Recursive Neural Network (ML-RNN) for Accurate Detection and Classification
Authors:-Dr.RadhaKrishna, L.Durga Sarath Kumar, D.Sai Karthikeya, L.V.M.Rajeswari, K.Sai Durga, Y.Sambasiva Rao

Abstract-Thyroid disease is one of the most prevalent illnesses worldwide, affecting over 42 million individuals in India alone. The thyroid gland, a small organ located in the neck, plays a crucial role in regulating metabolic processes by secreting essential hormones. Any dysfunction in the thyroid gland can significantly impact overall health. Accurate testing for thyroid disorders is vital for effective treatment, as early diagnosis can help balance hormone secretion and mitigate related complications.However, the increasing number of thyroid patients and the shortage of medical professionals pose challenges to traditional diagnostic methods. To address these issues, a deep learning-based Multi-Layer Recursive Neural Network (ML-RNN) is employed to enhance diagnosis. This approach focuses on preprocessing the input data, selecting relevant features from standard datasets, extracting key attributes, and classifying thyroid conditions into normal, hyperthyroid, and hypothyroid categories.The first stage of this process involves preprocessing, which includes data cleaning, splitting, and handling missing values to enhance data quality. Next, feature selection is performed using the Fisher score method to identify an optimal subset of features. Data analysis is then conducted based on Region-of-Interest (ROI) volumes. Finally, classification is carried out using ML-RNN, which improves accuracy in detecting thyroid disorders and assessing the risk of developing the disease. The model demonstrates high performance in terms of accuracy, recall, positive predictive value, and negative predictive value, making it a reliable tool for thyroid disease prediction.

DOI: 10.61137/ijsret.vol.11.issue2.284

Hybrid Physics-Guided Deep Transfer Learning for Accurate Traffic State Estimation
Authors:-Mrs.V.Anantha Lakshmi, Geetha Usha Sri, M.Sri Harshitha Meghana, N.Dhathri, M.Chaitanya, P.SrujanaSai.

Abstract-Accurately estimating traffic states is a crucial aspect of transportation engineering, enabling effective traffic control and operations. In recent years, Physics-Regulated Deep Learning (PRDL) has gained significant attention due to its ability to achieve higher accuracy while requiring less training data compared to conventional deep learning (DL) approaches. However, a key challenge of PRDL is the lengthy training time required for closely related but distinct tasks.To address this limitation, this paper introduces a hybrid physics-regulated deep transfer learning approach that leverages the strengths of transfer learning, PRDL, and DL to enhance estimation accuracy and reduce computational costs, particularly in scenarios with limited observation data. The proposed framework includes two transfer learning variants designed to extract and transfer essential features from pre-trained models to new but similar traffic environments. This hybrid approach integrates deep learning training, minimizing computational overhead by eliminating physics-based loss calculations during training.Simulation results demonstrate that, compared to traditional PRDL methods, the proposed transfer learning approaches improve estimation accuracy by over 12% on average while reducing training time by more than 50% on average. These findings highlight the potential of hybrid transfer learning techniques in accelerating the adoption of PRDL for traffic state estimation, making it a valuable tool for transportation systems with limited computational resources.

DOI: 10.61137/ijsret.vol.11.issue2.285

AI-Driven Business Intelligence: Machine Learning-Powered Dynamic Pricing Strategies for E-Commerce Optimization
Authors:-Mr.A.Janardana Rao, S.Sri Gowri Sai Priya, I.Rupa Kamalini, D.Keerthi Sri, B.Mohan Kalyan, M.D.N.Chaitanya Lahari

Abstract-The rapidly evolving e-commerce landscape demands dynamic pricing strategies to maximize revenue and maintain a competitive edge. This study examines the integration of machine learning (ML) and business intelligence (BI) to enhance pricing strategies, addressing the shortcomings of outdated models in adapting to digital market shifts. While ML has proven valuable in various business applications, its potential for dynamic pricing in e-commerce remains underexplored, particularly when combined with BI. Existing research lacks a comprehensive analysis of how these technologies can work together for pricing optimization. To bridge this gap, the study employs the Support Vector Machine (SVM) algorithm, known for handling complex and nonlinear relationships in large datasets. By leveraging BI tools to collect, process, and analyze crucial data, the approach establishes a real-time pricing framework. The findings reveal that ML-powered BI systems significantly enhance a company’s ability to set accurate prices and swiftly respond to market fluctuations. The adaptability of the SVM model ensures pricing decisions are both precise and responsive to dynamic market conditions, leading to a more effective and competitive pricing strategy.

DOI: 10.61137/ijsret.vol.11.issue2.286

A Unified HAPS-LEO NTN Architecture for 6G: Enabling Hybrid RF-FSO Backhaul and Distributed Federated Learning
Authors:-Aakash Jain, Prakhar Vats, Priyanshu Singh, Shreya Tiwari. Mohammed Alim

Abstract-As communication systems evolve towards beyond-5G and 6G, the demand for high data rates, minimized latency, global connectivity, and distributed intelligence intensifies. Traditional terrestrial and backhaul networks face limitations in scalability, bandwidth, and coverage, particularly in challenging environments. This paper proposes a unified, multi-tier Non-Terrestrial Network (NTN) architecture integrating Low Earth Orbit (LEO) satellites and High Altitude Platform Stations (HAPS) to address these challenges. We explore a hybrid RF-Free-Space Optical (FSO) communication model to leverage the strengths of both technologies, enhancing backhaul efficiency and resilience against atmospheric disruptions. The architecture incorporates Contact Graph Routing (CGR) for optimized data routing in dynamic backhaul scenarios and a distributed Hierarchical Federated Learning (HFL) framework, utilizing HAPS as intermediate servers, to enable privacy-preserving, scalable machine learning across the network. This unified approach offers a versatile platform for future communication systems, supporting both high-performance backhaul and distributed intelligence. Simulated performance results, adapted from component studies, demonstrate the potential advantages of this integrated architecture in terms of latency, throughput, scalability, and learning accuracy.

DOI: 10.61137/ijsret.vol.11.issue2.287

AI-Powered Fraud Detection: Secure Online Transaction Monitoring Using Machine Learning
Authors:-Mrs.G.Tejasri Devi, T.Sai Srinath, G.Naga Kastusi, V.Anshitha, G.Janitha Sree, G.Jashwitha

Abstract-Fraud detection remains one of the most critical challenges in financial transactions, driving on going research and the adoption of advanced technologies such as machine learning. Financial transaction fraud detection aims to explore and compare various machine learning approaches to assess their effectiveness, challenges, and potential future developments comprehensively.This paper begins by highlighting the importance of fraud detection in financial transactions, emphasizing the widespread impact of fraudulent activities on individuals, businesses, and the overall economy. While traditional fraud detection methods have been valuable, they often struggle to counter increasingly sophisticated and evolving fraudulent schemes. As a result, more advanced techniques are required to enhance detection accuracy.Machine learning-based approaches have emerged as a promising solution, enabling algorithms to analyse vast amounts of transactional data and identify patterns indicative of potential fraud. In particular, supervised learning techniques—such as logistic regression, decision trees, and support vector machines—have gained significant popularity in fraud detection due to their ability to classify transactions as legitimate or fraudulent based on historical data.

DOI: 10.61137/ijsret.vol.11.issue2.288

Rapid Depression Detection Using Extreme Learning Machine: An AI-Driven Approach
Authors:-Assistant Professor Mrs.G.V.Rajeswari, Ch.Harikiran, K.L.Rishitha, K.H.Venkat Ganesh, B.Raj Kumar, V.L.Apoorva.

Abstract-Depression is one of the most prevalent psychological and mental health disorders, affecting a significant number of people worldwide. In recent years, Extreme Learning Machine (ELM) techniques have gained preference for addressing various health-related disease detection and prediction challenges. ELM is a single hidden layer feed-forward neural network (SLFN) that offers significantly faster convergence compared to traditional machine learning (ML) methods while delivering promising results. Although numerous studies have explored the application of ML models for depression detection, limited research has focused on utilizing ELM for this purpose. This study implements Extreme Learning Machine (ELM) alongside other ML techniques for depression detection, comparing their performance. The results demonstrate that ELM outperforms other methods, achieving the highest accuracy of 91.73%.

DOI: 10.61137/ijsret.vol.11.issue2.289

AI-Powered Ransomware Defence: Cutting-Edge Machine Learning Techniques for Threat Detection
Authors:-Assistant Professor Mrs.P.Satyavathi, M.Naga Sai Ganesh, N.V.Gowtham Kumar, V.S.V.Satya Yaswanth, G.Satya Nandini, V.Giri Sathvika.

Abstract-The increasing frequency and sophistication of ransomware attacks, there is a growing need for dynamic and effective detection and mitigation strategies. Traditional signature-based approaches often fall short in identifying new and evolving ransomware variants. This paper explores the application of machine learning techniques for ransomware detection, aiming to enhance the accuracy and adaptability of detection mechanisms. It provides a comprehensive analysis of various machine learning methods and algorithms, evaluating their effectiveness in identifying ransomware patterns. The findings offer valuable insights into the advancement of cybersecurity solutions, emphasizing resilience and proactive defense against the ever-evolving ransomware threat landscape.

DOI: 10.61137/ijsret.vol.11.issue2.290

DeepSpineNet: Advanced Deep Learning for Multi-Class Spine X-Ray Condition Classification
Authors:-Assistant Professor Mrs.L.Yamuna, D.Sahithi, S.Sri Divya, A.Chakri, S.Asritha, J.Sree Varenya.

Abstract-Addressing the complexchallenges of automated spine X-rayanalysis, our research introduces Deep Spine, a deep learning model designed for the multi-class classification of diverse spine conditions. Utilizing Convolutional Neural Networks (CNNs), Deep Spine demonstrates exceptional proficiency in identifying a range of spinal abnormalities, including Scoliosis, Osteochondrosis, Osteoporosis, Spondylolisthesis, Vertebral Compression Fractures (VCFs),Disability, Other, and Healthy cases. Trained on a Kaggle dataset, Deep Spine achieves high accuracy and robustness, ensuring reliable performance in classifying spinal conditions. The incorporation of transfer learning techniques further enhances its generalization capability, enabling the model to adapt effectively across different datasets. This approach not only strengthens its diagnostic accuracy but also highlights its potential for automated diagnosis and decision support in musculoskeletal radiology. This research contributes to the evolving intersection of artificial intelligence and medical imaging, demonstrating the transformative potential of deep learning in spine X-ray analysis. By leveraging AI-driven advancements, Deep Spine offers a promising step toward enhancing clinical outcomes, improving diagnostic precision, and revolutionizing spinal healthcare.

DOI: 10.61137/ijsret.vol.11.issue2.291

Interpretable AI for Intelligent Event Detection and Anomaly Classification in Healthcare Monitoring Systems
Authors:-Assistant Professor Mrs.K.S.R.Manjusha, D.Ashok Kumar, M.Harish, M.Hari Sathvik, M.Vinsy, A.Sri Sai Keerthi.

Abstract-Artificial intelligence (AI) is transforming healthcare by automating the detection and classification of events and anomalies, enhancing patient monitoring and intervention. In this context, events refer to abnormalities caused by medical conditions such as seizures or falls, while anomalies are erroneous data resulting from sensor faults or malicious attacks. AI-based event and anomaly detection (EAD) enables early identification of critical issues, reducing false alarms and improving patient outcomes. The advancement of Medical Internet of Things (MIoT) devices has further facilitated real-time data collection, AI-driven processing, and transmission, enabling remote monitoring and personalized healthcare. However, ensuring the transparency and explainability of AI systems is crucial in medical applications to foster trust and understanding among healthcare professionals. This work presents an online EAD approach utilizing a lightweight autoencoder (AE) on MIoT devices to detect abnormalities in real time. The detected abnormalities are then explained using Kernel SHAP, a technique from explainable AI (XAI), and subsequently classified as either events or anomalies using an artificial neural network (ANN). Extensive simulations conducted on the Medical Information Mart for Intensive Care (MIMIC) dataset demonstrate the robustness of the proposed approach in accurately detecting and classifying events, regardless of the proportion of anomalies present.

DOI: 10.61137/ijsret.vol.11.issue2.292

Enhancing Cloud Security Using Blockchain-Based Authentication
Authors:-Assistant Professor Mrs. Punashri Patil, Yash Chavhan, Savi Dhoble, Tejas Patil

Abstract-Cloud computing is essential for modern enterprises, providing scalable and cost-efficient solutions for data storage and processing. However, security challenges such as unauthorized access, data breaches, and insider threats persist. Traditional authentication methods like passwords and two-factor authentication (2FA) have inherent vulnerabilities, including phishing attacks, credential theft, and centralized failures [1][2]. Blockchain-based authentication offers a decentralized, tamper-proof security mechanism that eliminates single points of failure and enhances trust. Existing research has explored blockchain’s role in cloud security, but challenges such as scalability, computational overhead, and latency remain [3]. This paper presents an optimized blockchain-based authentication model that enhances access control while addressing these limitations. Our approach leverages decentralized identity management, smart contract-based access control, and an efficient consensus mechanism to improve security, reduce computational overhead, and ensure seamless authentication. This model enhances security, scalability, and performance in cloud environments, making it a viable alternative to traditional authentication systems.

DOI: 10.61137/ijsret.vol.11.issue2.293

Skin Disease Detection Using Image Processing and Machine Learning
Authors:-Assistant Professor Punashri Patil, Prathvish Shetty, Nikhil Shinde, Ashirwad Swami, Sahil Hanwate

Abstract-Skin diseases affect millions worldwide, making early and accurate diagnosis essential for effective treatment. Traditional diagnostic methods rely on manual visual inspection, which can be subjective and prone to errors due to variations in expertise and environmental factors. Misdiagnosis or delayed treatment can lead to severe complications, especially in conditions like melanoma. This paper presents an automated approach to skin disease detection using image processing and machine learning. The proposed system enhances image quality through preprocessing, extracts crucial features, and classifies skin conditions using algorithms like Support Vector Machine (SVM) and Convolutional Neural Networks (CNN). Experimental results demonstrate high classification accuracy, highlighting AI’s potential in dermatology for faster and more consistent diagnoses. By integrating artificial intelligence into dermatological assessments, this research aims to bridge the gap between conventional diagnosis and AI-assisted solutions, making skin disease detection more accessible, precise, and efficient.

DOI: 10.61137/ijsret.vol.11.issue2.294

Artificial Intelligence in Cyber Security
Authors:-Karmvirsinh Jadeja, Chirag Chauhan, Prof. Mansi Gosai

Abstract-The development of Artificial Intelligence (AI) has found some uncommon inertia from technological advancement. The world of AI appears everywhere and raises questions of admiration and censure. Its increasing usage has both pros and cons in the domain of cyber security, and it is a regular item in the development and operational processes of advanced technologies. This paper is a deep dive into the use of AI in cyber security, focusing on its advantages, challenges, and discriminating negative impacts. It also studies AI-based models that can enhance or compromise safety concerning different infrastructures and cyber networks. The paper critiques the participation of AI in postulating cyber security applications, suggests ways to chalk out the birth of new technologies against the threats and weaknesses generated from AI, and comments on the socio-economic implications of AI interfering with cyber security.

DOI: 10.61137/ijsret.vol.11.issue2.295

Miscellaneous Trends in it
Authors:- Yuvraj Lolage, Sara Lonare, Aditi Londhe, Mrs. Anuja S. Phapale

Abstract-The vast, ever-shifting landscape of human innovation information technology (IT) stands as both a mirror and a catalyst of our collective aspirations. Information technology repeatedly shapes our modern world, exerting influence upon government, industries and daily life. Beyond the headline-grabbing revolutions of artificial intelligence, cloud computing, and blockchain lie quieter, yet equally transformative, currents of change. As humanity ventures further into the digital age, it becomes clear that technology is not merely a tool; it is a partner in shaping the narrative of progress and a testament to the boundless curiosity that drives us to explore the unknown. This paper seeks to delve into these emerging trends, exploring their technical gradation and their broader implications for society. By analyzing their significance, potential applications, and implications for the future, the study aims to provide a comprehensive understanding of how these emerging trends are influencing the broader IT domain.

DOI: 10.61137/ijsret.vol.11.issue2.296

Redesigning Metal Motor Control Panel into Plastic
Authors:- Mayuresh Dhananjay Shedge

Abstract-This project encompasses many aspects and has several parts. We are working on an industrial project which will be implemented by the company- “TechArch Pvt. Ltd.” located in Chakan. Primarily, the project focuses on introducing a new product into the market as a replacement to an already existing product (panel which holds the controller, electrical parts and switches which operate a motor remotely). This existing product has a few shortcomings which have been overcome in our new product. Also, a lot of emphasis is given to reduce the cost of the product by implementing several methods like easing the manufacturing flow, choosing proper material and design, integrating two product designs so as to have a common mould for both, reducing child parts and removing extra steps in manufacturing. Our motive to pursue this project was to utilise prior knowledge in plastic injection moulding gained from internships in the field and recognizing and fulfilling a scope for a successful product which will prove profitable. The result will be a safe, affordable, lighter and aesthetic product which will fulfil all needs of the customers.

Mobile Controlled Water Garbage Collector Using Arduino
Authors:- Professor Kadar.S.Tamboli, Suraj.S.Ghaytidak, Makrand.V.Navale, Pratik.H.Patil

Abstract-This project focuses on designing a river waste collection system. Trillions of pieces of plastic currently pollute our seas, rivers, lakes, and oceans, harming marine life, contaminating ecosystems, and creating messes on beaches. Cleaning up plastic from the water is crucial, but the most effective methods to do so are still unknown. Today, much of the manufacturing process is automated to deliver products more efficiently. Automation plays a significant role in mass production. In this project, we have developed a remote-controlled water cleaning machine. The primary objective is to collect all the waste floating on water bodies while minimizing manual labor. We achieved this by creating a hardware prototype and using a microcontroller to control the machine’s components through a smartphone, utilizing Wi-Fi or Bluetooth connectivity. We have aimed to meet all the objectives for this product successfully so that it can be launched in the market.

EKLAVYA: 1-to-1 Online Tutoring Platform
Authors:- Ms Nimisha Amrutkar, Ms Mansi Gawade, Ms Manasi Patil, Professor Mohan Bonde

Abstract-In today’s world of technology, education has undergone a revolutionary shift towards online and personalized learning. Traditional classroom environments often fail to serve individual student needs, leading to a growing demand for one- to-one learning. The COVID-19 pandemic led to a rapid growth of online education, focusing on the need for effective virtual learning solutions. The main problem with virtual learning is the lack of personal interactions and individual support. As learning goes beyond traditional education, Eklavya platform encourages one-to-one learning and provides curated content with different connect tools for help. In addition to this, this platform provides an integrated solution where users can access essential features like resource sharing, parental control, video conferencing and progress tracking on a single platform. This makes Eklavya, more inclusive and user-friendly solution.

The Impact of Artificial Intelligence on Labor Markets: A Comprehensive Analysis
Authors:- Vanshika, Ishaan, Tanisha, Rashmi Ranjan, Aman Daga

Abstract-Artificial intelligence AI) is revolutionizing industries globally, significantly impacting labor markets. This paper explores AI’s dual role in job displacement and creation, skill evolution, and economic implications. Using secondary data from extensive literature, it identifies trends, challenges, and opportunities associated with AI-driven transformations in employment. The findings emphasize the importance of reskilling initiatives, ethical considerations, and policy interventions for sustainable workforce development. This research contributes to understanding AIʼs role in shaping the future of work while addressing gaps in existing studies.

Smart Parking Management Assessment Using Machine Learning Algorithms and IOT
Authors:-Assistant Professor Meenakshi Thalor, Ishwari Abuj

Abstract-With the growing number of vehicles and limited parking infrastructure, parking space man emerged as a major challenge in urban areas. In this paper, an extensive study of machine l models in an IoT-supported space is given, focusing on proposing an ML-based model that available parking space. The study compares the performance of several models Typed as (KNNs), support vector machines (SVMs), random forest (RF), decision tree (DT), logistic and Naive Bayes (NB) regarding to “precision, recall, accuracy, and F1-score performance results obtained after running ML models on the data with 65% and 85% threshold are com meaningful insights about their efficiency of prediction in parking vacancy. Random Forest (RF) model shows the best performance based on those metrics in all evalu high precision, recall, accuracy and F1-score values. The IoT-enabled environment shows t showing its effectiveness in falsely predicting parking space availability. In contrast, K- ne (KNNs), decision tree (DT), logistic regression (LR), predicting Naive Bayes (NB) with co exhibit relatively lower performance in crowded parking GLES scenarios. The paper ends deployment of intelligent predictive models, especially random forest, improves substantial and performance of smart parking system as well as it frees waiting time for cars, and henc parking resource utility as well as it decreases real-time travel congestion and increases use environments.

DOI: 10.61137/ijsret.vol.11.issue2.297

Smart Stroke Detection: Cutting-Edge Machine Learning and Optimized Algorithms for Early Diagnosis
Authors:-Mr. N.V.S Gopalam, K.Tanoosh, Ch.Sowjanya, Y.Navatej, K.Banny, B.Lakshmi Jahnavi

Abstract-Stroke, which ranks as the second leading cause of death worldwide, requires prompt and precise prediction for effective intervention. This research investigates the use of advanced machine learning techniques to improve stroke prediction models. Initially, classifiers such as Decision Tree (DT), Random Forest (RF), and Support Vector Machine (SVM) were applied, followed by the incorporation of advanced algorithms like Extreme Gradient Boosting (XGBoost) and Light Gradient Boosting Machine (LGBM) to enhance predictive accuracy. Various evaluation metrics, including accuracy, sensitivity, error rates, and log loss, were employed to assess the performance of the models. The findings demonstrate the effectiveness of machine learning algorithms, with XGBoost achieving an impressive accuracy rate of 98%. Additionally, LGBM played a significant role in boosting overall accuracy. These results highlight the critical contribution of advanced machine learning techniques to enhancing stroke prediction. By leveraging these state-of-the-art predictive models, the study advocates for their integration into clinical settings, aiming to expedite accurate diagnoses, improve patient care, and advance stroke detection capabilities. Keywords: Brain Stroke, Machine Learning, Light Gradient Boosting Machine (LGBM), Extreme Gradient Boosting (XGBoost).

DOI: 10.61137/ijsret.vol.11.issue2.298

Next-Gen Gait Recognition: Advanced Machine Learning for Precision Biometric Analysis
Authors:-Mr.Y.Ravi Bhushan, K.Charan Praveen Kumar, M.Sushma, T.Lasya Srivallika, Ch.Geetha Sri, K.D.V.Chaitanya

Abstract-Stroke, which ranks as the second leading cause of death worldwide, requires prompt and precise prediction for effective intervention. This study conducts a comprehensive exploration of gait recognition in biometric analysis, addressing the unique challenges of using gait as an identifier. It systematically evaluates various machine learning algorithms, including Individual Node Evaluation, Statistical Inference, Regression Modelling, Support Vector Machines, k-Nearest Neighbours, Decision Trees, Random Forests, and Neural Networks. Each model undergoes rigorous testing to assess its effectiveness in accurately identifying individuals based on their gait patterns. The methodology emphasizes thorough preprocessing to maintain data integrity and relevance, incorporating Sequential Backward Selection (SBS) for feature selection and dimensionality reduction techniques like Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA) to enhance model efficiency. Additionally, the study explores deep learning architectures, analysing their impact on recognition accuracy. A detailed comparative analysis highlights the strengths and weaknesses of each approach, offering valuable insights into the field. By evaluating a range of ML and DL techniques, this research sets a benchmark for future advancements in biometric security, reinforcing gait recognition as a reliable, non-invasive identification method and paving the way for advanced biometric systems in security and personal identification.

DOI: 10.61137/ijsret.vol.11.issue2.299

Intelligent Railway Track Fault Detection Using Image Processing and Fuzzy Logic for Enhanced Safety
Authors:-Mrs. G.Tejasri Devi, P.H. Naga Datta Sanjeev, A.Kasi Viswanadh, A.Sankar, P.Veera Mahesh, Y.Lakshmi Chakradhar

Abstract-The advancement of railway transportation vehicles significantly affects the transportation network. Various errors occur due to the utilization of train lines, arising from both manufacturing defects and improper rail usage. Early detection and correction of these faults are crucial, and several techniques have been developed to address this issue. One effective method involves the use of camera-based systems. By employing cameras mounted on railway vehicles, images of rail components are captured and analysed to identify potential defects. This paper proposes a method for detecting and classifying defects on rail track surfaces using image processing techniques. The system relies on high-resolution images obtained from specialized cameras installed on railway inspection vehicles. These images are analysed to identify and assess various track anomalies, including cracks, welding defects, track misalignment, and ballast deterioration. The image processing workflow involves pre-processing, feature extraction, and segmentation to isolate the rail area and detect potential faults. To prioritize maintenance activities, fuzzy logic is applied after identifying and evaluating the severity of defects. This approach is particularly effective in handling the uncertainty and imprecision associated with track condition assessments. Fuzzy rules and membership functions are designed to assign severity levels to the extracted features of each defect category. This method offers a comprehensive and adaptable solution for improving railway track maintenance and ensuring operational safety.

DOI: 10.61137/ijsret.vol.11.issue2.300

Android Flight Price Prediction Web-Based Platform: Leveraging Generating AI for Real-Time Airfare Forecasting
Authors:-Mrs. M. Mani Deepika, P. Nasivi Ramya Anjani, V. Sai Jyothika Chowdary, Y. Anitha Chowdary, M. Swarna, K.Vamsika

Abstract-The aviation industry faces significant challenges in accurately and swiftly predicting flight fares due to the sector’s dynamic nature. Factors such as fluctuating demand, fuel prices, and route complexities contribute to this unpredictability. To address these issues, this research introduces a novel approach leveraging generative artificial intelligence (GAI) to forecast airfares in real time with high precision. The proposed framework integrates generative models, deep learning architectures, and historical pricing data to enhance predictive accuracy. Utilizing GAI within an advanced web engineering framework, this method effectively captures intricate patterns and relationships within historical airline data. By employing deep neural networks, the model efficiently processes diverse scenarios, extracting critical insights to improve the understanding of key factors influencing flight costs. Furthermore, the approach prioritizes real-time forecasting, enabling rapid adaptation to market fluctuations and providing valuable insights for dynamic pricing strategies.

DOI: 10.61137/ijsret.vol.11.issue2.301

AI-Driven Global Solar Radiation Prediction: Harnessing Machine Learning and Satellite Imagery for Accurate Forecasting
Authors:-Mrs.A.Srujana Jyothi, M.Siri Sathvika, M.Madhur, I.Chathurya, G.Ram Subhash, K.V.K.Varma

Abstract-Accurate prediction of Daily Global Solar Radiation (DGSR) is crucial for applications in renewable energy, agriculture, and climate studies. This paper explores the effectiveness of Machine Learning (ML) algorithms and satellite imagery in enhancing DGSR prediction accuracy. Traditional ML models typically rely on various meteorological parameters (e.g., temperature, wind speed, atmospheric pressure, and sunshine duration) and radiometric parameters (e.g., aerosol optical thickness, water vapour). In this study, we investigate the impact of incorporating normalized reflectance from satellite images across different spectral channels to improve prediction accuracy. We employ two ML-based regression models: Artificial Neural Networks (ANN) and Support Vector Machines (SVM). The results indicate that the selection of input parameters significantly affects the accuracy of daily solar radiation forecasts. Moreover, the ANN model outperforms SVM, demonstrating superior predictive capability.

DOI: 10.61137/ijsret.vol.11.issue2.302

AI-Powered Mental Health Insights: A Comprehensive Review of Machine Learning & Deep Learning Approaches for Social Media Analysis
Authors:-Mrs.R.Veera Meenakshi, B.Vanitha Sri, V.N.V.Karthikeya, P.G.Pranava, K.Uday Meher, A.Sreeja

Abstract-Artificial intelligence is revolutionizing healthcare, particularly in the prediction and diagnosis of various diseases through machine learning (ML) and deep learning (DL) algorithms. With the widespread use of social media platforms like Twitter, Facebook, and Reddit, individuals frequently express their thoughts and emotions online. Mental health has emerged as a significant concern, especially following the COVID-19 pandemic, prompting researchers to leverage ML and DL techniques to analyse social media data for mental health prediction. This study offers a comprehensive review of ML and DL algorithms applied to the prediction of mental disorders, based on an analysis of 37 selected research papers. It presents a comparative accuracy table of ML and DL models for four key mental disorders: Depression, Anxiety, Bipolar Disorder, and ADHD. The findings aim to provide a foundational reference for researchers and practitioners, assisting in future advancements in this field. Additionally, this study compiles a list of publicly available datasets, serving as a valuable resource for further research in mental health analysis using artificial intelligence.

DOI: 10.61137/ijsret.vol.11.issue2.303

Urban Flood Hazard Assessment: Harnessing Ensemble Machine Learning for Next-Generation Risk Analytics
Authors:-Mrs.T.Sankaramma, Ch.Mahesh, M.Venkata Sai Harshith, Shaik Saad, V.Venkata Sai Sanjay, Shaik Mohammad Ashiq Ilahi

Abstract-Urban flood hazard assessment through an ensemble machine learning approach minimizes the bias of individual models and offers a more detailed insight into the evolution of flood risks over time. By integrating diverse models, this approach increases the precision of flood event predictions. In this research, we utilized an ensemble machine learning framework to analyse flood hazards. The results reveal that the ensemble model outperforms conventional methods, such as the classification and regression tree (CART) and random forest (RF). The generated hazard maps confirm the accuracy of the data, facilitating public awareness and pinpointing regions vulnerable to flooding.

DOI: 10.61137/ijsret.vol.11.issue2.304

Big Data Analytics for Real-Time Fraud Detection in Insurance Claims
Authors:-Shaba Khatoon , Asst.Prof. Ankita Srivastava, Prof.Shish Ahmad

Abstract-The integration of Artificial Intelligence (AI) and Big Data Analytics is revolutionizing industries by optimizing efficiency, accuracy, and security. In healthcare and insurance, AIdriven Intelligent Document Processing (IDP) automates workflows such as claims automation, medical data extraction, and regulatory compliance management. By utilizing Machine Learning (ML), Natural Language Processing (NLP), and Optical Character Recognition (OCR), IDP accelerates document classification, data validation, and anomaly detection, reducing errors by 90% and cutting processing time by 80%. In the financial sector, AI enhances fraud analytics, risk modeling, and compliance monitoring. Advanced deep learning architectures, pattern recognition, and predictive analytics improve credit risk assessment and real-time fraud mitigation. AI-powered anomaly detection techniques identify suspicious transactions, reducing cybersecurity threats and financial fraud losses.

DOI: 10.61137/ijsret.vol.11.issue2.305

Air Pollution Detection Using MQ135 and ESP3266
Authors:-Assistant Professor Mrs. Anuja S. Phapale, Om Mahajan, Vedant Mahanavar, Kiran Mangde, Pranav Patil

Abstract-Air pollution is a serious environmental and health problem worsened by an increase in industrialization and urban sprawl. Real-time air quality monitoring is critical for understanding access to pollution and minimizing risks. This paper presents a low-priced portable air quality monitoring and measuring system based on MQ135 gas sensor and ESP8266 microcontroller. The system is made to detect key pollutants, such as carbon monoxide, carbon monoxide (CO), carbon dioxide (CO2), ammonia (NH3), benzene, and other volatile organic compounds (VOCs). The readings, which will ensure accurate readings from the developed system at any point in time in the future The proposed developed system has many features, including low power consumption, wireless communication, and real- time data acquisition, which make it suitable for mobile and remote applications.. MQ135 ensures accurate detection of pollutants and the sensor is linked with the ESP8266-12E module, which transfers data to the cloud for further processing. A specialized software component parses the collected data to interpret air quality trends for the users and estimate their health impact. This low-cost and easy- to-use system individual and community- level air quality monitoring. Its portability and real-time data provide another useful tool for researchers, environmental agencies, and policymakers. The experimental results demonstrate that the system successfully covers the fluctuations in pollution. Future improvements could include the incorporation of artificial intelligence methods for enhanced prediction and a wider air quality analysis spectrum.

DOI: 10.61137/ijsret.vol.11.issue2.306

Rainfall Prediction Using Machine Learning Techniques: A Comprehensive Study
Authors:-Savita Prabha, Ayush Kashyap, Mohit Kumar Pandit, Muskan kumari, Rishi kumar Mishra

Abstract-Thus, dynamic rainfall prediction is an important activity across different fields like meteorology, agriculture, and disaster management, etc. Efficient forecasting helps in damage control against severe weather and thereby helps in water resource management optimization as well as agricultural productivity enhancement. Recent advancements in machine learning have brought a drastic enhancement in the reliability of rainfall predictions using huge datasets of weather information [1]. This study examines multiple machine learning algorithms to analyze rainfall prediction based on key meteorological parameters. Statistical techniques were employed to filter significant climate variables influencing rainfall patterns. These correlations were visualized using heat maps and other graphical tools, demonstrating the impact of factors such as temperature, humidity, atmospheric pressure, and wind speed on rainfall trends [2]. To enhance forecast accuracy, this research integrates machine learning models that improve weather-dependent system predictability. The findings could assist in better decision-making for weather risk management, providing valuable insights for meteorologists, farmers, policymakers, and disaster management authorities [3].

Seismic Analysis and Design of Multi-Storey Building With and Without Shear Wall G+15 Using Staad.Pro
Authors:-B Sri Kalyan, A Ganga Nagini, M Leela Archana, P Prathyusha, K V V Harsha Vardhan, M Durga Prasad, P T V S Varma

Abstract-A multi storey building is a building that consists has multiple floors above ground in the building. Multi-storey buildings aim to increase the floor area of the building without increasing the area of the land and saving money. Analysis of multi-storey building frames involves lot of complications and edacious calculations by conventional methods. To carry out such analysis is a time-consuming task. Substitute frame method for analysis can be handy in approximate and quick analysis instead of bidding process. Till date, this method has been applied by designers for vertical loading conditions. The represented plan given to office purposes can accommodate with minimum facilities. Generally, buildings may be failed by bending moments, shear forces acting on members of the building. By keeping these failures in mind, we designed beams, columns, footings by considering maximum loads on members. For loads calculation, substitute frame method is used for reducing the complexity of calculations and saving time. We know R.C structural system is most common nowadays in urban regions with multi-bay and multi-storey’s, keeping its importance in urban regions especially, A building frame consists of number of bays and storey. A multi-storey, multi- paneled frame is a complicated statically intermediate structure. A design of R.C building With and without shear wall of G+15 storey frame work is taken up. The building in plan (30m x 20m) consists of columns built monolithically forming a network. The design is made using software on structural analysis design (STAAD-PRO). The building subjected to both the vertical loads as well as horizontal loads. The vertical load consists of dead load of structural components such as beams, columns, slabs etc and live loads. The horizontal load consists of the wind forces thus building is designed for dead load, live load and wind load and seismic loads as per IS 875. The building is designed as two-dimensional vertical frame and analyzed for the maximum and minimum bending moments and shear forces by trial-and-error methods as per IS 456-2000. The help is taken by software available in institute and the computations of loads, moments and shear forces and obtained from this software.

DOI: 10.61137/ijsret.vol.11.issue2.307

Earthquake Performance of Multistorey Building by Using Sap2000
Authors:-B. Sri Datta Subramanayam, P. Jagadeeswar Reddy, D. Vinay, K. Shameela Keerthi, G. John Mukesh, N. Mani Kumar, V. Durga Vinod Kumar

Abstract-Earthquake in the simplest terms can be defined as Shaking and vibration at the surface of the earth resulting from underground movement along a fault plane. The vibrations produced by the earthquakes are due to seismic waves. Among different types of dampers, viscoelastic [VE] dampers are used for this numerical study. Viscoelastic dampers are considered to be better than most of the passive energy dissipation devices. Researches done on the improvement of its performance for analyzing structures have always been in vogue. The significant change in the response of the structures to make it resistant to earthquake and wind forces is the main idea behind using such devices. In this numerical study, seismic response of G+4 structures will analyze having with and without damper. The damper will be considered in the place of critical sections. Modeling and analysis of the structures and installation of the dampers are done by using finite element modeling software [SAP2000]. Time history analysis was used to simulate the response of the structures. The structure is design in accordance with seismic code is 1893: 2000 under seismic zone III with the help of SAP 2000. Damper systems are designed to prevent injuries to the residents by absorbing the input seismic energy and reduce the deformations in the structure.

DOI: 10.61137/ijsret.vol.11.issue2.308

Design and Structural Behaviour of Modern Structure by Using ETABS
Authors:-B. Sri Datta Subramanyam1, S.S.S.Narendra2, N. Lakshman3, D.V. Venkata Sai4, G. Gnana Das5

Abstract-ETABS stands for extended three-dimensional analysis of building systems. The main purpose of this software is to design multi-storeyed building in a systematic process. The effective design and construction of an earthquake resistant structure have great importance all over the world. This project presents multi-storied residential building analysed and designed with lateral loading effect of earthquake using ETABS. This project is designed as per IS 1893-PART 2:2002, IS 456-2000. Every structural engineer should design a building with most efficient planning and also be economical. They should ensure that is serviceable, habitable in healthy environmental for its occupants and have longer design period. Structurally robust and aesthetically pleasing building are beginning constructed by combining the best properties of any construction material and at the same time meeting a specific requirement like type of building and its loads, soil condition, time, flexibility and economy. The high-rise buildings are best suited solution. This Project discusses the analysis of a multistoried building depending up on the area prepare a plan based on the requirements. The plan area is 3500sqft of 15m height i,e G+4. And each floor consisting of 2 flats. Each flat with 3bhk software used to draw the plan is AutoCAD 2019.We have analysis and design of multistoried building using ETABS we have applied all the loads and its combination to the structure and it is safe.

DOI: 10.61137/ijsret.vol.11.issue2.309

Performance of Seismic Analysis of Rc Structure High Rise G+13 Multi-Storied Building by ETABS
Authors:-B. Sri Kalyan, B. Harish, M. S. Prasanth, K. S. S. A. N. Kishore Kumar, B. Sridhar, J. Teja

Abstract-Earthquake is a natural calamity that has taken toll of millions of lives throughout the ages. The earthquake ranks as one of the destructive events recorded so far in India in terms of death and damage to infrastructure. Due to the present environmental condition and behavior of tectonic plates, it has become utmost necessary for civil engineers to consider the effects of the earthquake during the designing of the building. Also, most parts of India are under the earthquake-prone zone, so it has become necessary to consider earthquake load while designing a structure to minimize the effects of the earthquake. In this project work, a (G+13) storey high rise building is analysed in seismic zone-V by both equivalent lateral force method and response spectrum method. After analysis, various response parameters like storey shear, storey displacement, storey drift, etc. are studied and the results are also compared. The analysis of building under construction is also done and the results of base shear at different storey level of construction phase are also compared.

DOI: 10.61137/ijsret.vol.11.issue2.310

Seismic Analysis and Design of Multistorey Residential Building by Using ETABS

Authors:-V Tanuja, D Anusha, Y Devi Pravallika, P Mohan Vinay, B John Bhaskar

Abstract-One of the most frightening and destructive phenomena of a nature is a severe earth quake and it’s terrible after effects. Earthquake strike suddenly, violently and without warning at any time of the day or night. If an earthquake occurs in a populated area, it may cause many deaths and injuries and extensive property damage. Although there are no guarantees of safety during an earthquake, identifying potential hazards ahead of time and advance planning to save lives and significantly reduce injuries and property damage. Hence it is mandatory to do the seismic analysis and design to structural against collapse. It is highly impossible to prevent an earthquake from occurring, but the damage to the buildings can be controlled through proper design and detailing. Designing a structure in such a way that reducing damage during an earthquake makes the structure quite uneconomical, as the earth quake might or might not occur in its life time and is a rare phenomenon. In order to compete in the ever-growing competent market it is very important for a structural engineer to save time. As a sequel to this an attempt is made to analyze and design a multistoried building by using a software package E-Tabs. For analyzing a multi storied building one has to consider all the possible loadings and see that the structure is safe against all possible loading conditions. There are several methods for analysis of different frames like kani’s method, cantilever method, portal method, and Matrix method. The present project deals with the seismic analysis and design of a multi storyed residential building of G+10 RCC Residential Building. The dead load &live loads are applied and the design for beams, columns, footing is obtained-Tabs with its new features surpassed its predecessors, and compotators with its data sharing capabilities with other major software like AutoCAD, and MS Excel. We conclude that E- Tabs is a very powerful tool which can save much time and is very accurate in Designs. Thus it is concluded that E-Tabs package is suitable for the design of a multistoried building.

DOI: 10.61137/ijsret.vol.11.issue2.311

Design and Analysis of Dormitory Building Structure by Using Structural Analysis Programme Software
Authors:-L. Praveen kumar, R. Sai, N. Preethi, A. J. Siva Prakesh, L. Lokesh

Abstract-In general, the building is designed as per codal provisions, which has various constraints while analyzing with dynamic loads. This analysis procedure takes a lot of time and is complex. Therefore, most of the Civil Engineering structures are designed taking the assumption of applied loading to be static. The process of neglecting the dynamic forces may lead to the collapse of the structure as a whole in case of a catastrophe such as an earthquake. Some recent earthquakes have shown the need for dynamic analysis. Nowadays, a lot of research is going on the field of performance-based design such that the structure can withstand earthquake-induced loads. This study confers the need to shift the design practice from force based to performance based for getting actual response. Three different analysis have been performed using empirical formulae and numerical modelling software to estimate the natural period of oscillation of building and the parameters are discussed on which it depends. Research and development in the field of earthquake resistant design has put emphasis on non-linear analysis methods to estimate seismic demands. Nonlinear time history and nonlinear static pushover analysis are the main methods. In this study, pushover analysis is carried out on multi-story reinforced residential concrete building in India.

DOI: 10.61137/ijsret.vol.11.issue2.312

Seismic Evaluation of Irregular Buildings Using E-TABS Software
Authors:-B Sri Kalyan, J. Mahalakshmi, G. Anjali, P. Durga prasad, M. Ashish

Abstract-Since the existence of lace in horizontal space has encouraged people to soar higher, there has been a consistent trend towards the creation of taller structures. However, pushing the vertical limit further increases the hazard factor. We must assess the building for a range of loads to ensure safety. An examination of a building is required to ascertain its seismic resistance because the behavior of a structure is critical during an earthquake. An earthquake may bring a high-rise structure to the ground, a risk that is difficult to predict. Therefore, it is necessary to do a seismic force assessment on different types of buildings. The seismic officious can use the seismic coefficient technique to analyses small and medium-sized buildings up to a height of forty meters. d of analysis that requires less manual computation. The overall shape, size, and geometry of a structure all have a significant role in defining its behavior. since asymmetry is because asymmetrical structures are more likely to exhibit critical behavior during an earthquake than symmetrical ones. of the characteristics of symmetrical, L-shaped, and T-shaped and build RC structures during earthquakes to better understand the variations in seismic loading and behavior that may arise due to form variances. The seismic ETABS software aids in the seismic coefficient study of a ten-story building with three-meter-tall levels and a varied plan shape, including symmetrical, L-shaped, and T-shaped configurations. al inspection of a ten-story structure takes a long time and increases the chance of errors. ETABS can simplify, improve efficiency, and increase the accuracy of a structure’s analysis. The analysis is conducting the analysis by adhering to IS 1893:2002 (Part 1). shaped RC structures have their own response, which includes, among other things, lateral pressures, base shear, storey drift, and storey shear. We use the reaction of the variously shaped buildings to compare the findings.

DOI: 10.61137/ijsret.vol.11.issue2.313

Classical Physics, Quantum Mechanics, and More
Authors:-Abhinav Tr

Abstract-To sum up current theories to come up with a universal understanding of the universe.

DOI: 10.61137/ijsret.vol.11.issue2.314

Implement YOLO(You Only Look Once)to Detect Objects in Image
Authors:-Dr. M.V. Subba Reddy, Yendluri.Suchitra, Shaike. Humera Bhanu, Thati. Ganga Maheswari, Pasam.Venkatesh

Abstract-Object recognition plays a crucial role in various real-world applications, including surveillance, autonomous vehicles, and robotics. This paper presents an efficient object detection and recognition system using the You Only Look Once (YOLO) deep learning model. YOLO is a state-of-the-art, real-time object detection framework that processes an entire image in a single forward pass, making it significantly faster than traditional region-based approaches. The proposed system is implemented using YOLOv5, leveraging a Convolutional Neural Network (CNN) for feature extraction and classification. The model is trained on large-scale datasets, such as COCO, to recognize multiple objects with high accuracy. We evaluate the system’s performance based on mean Average Precision (mAP), inference speed, and real-time detection capabilities. Experimental results demonstrate that YOLO achieves robust object recognition with minimal latency, making it suitable for real-time applications.

DOI: 10.61137/ijsret.vol.11.issue2.315

A Hybrid AI Framework for Climate Change Prediction and Mitigation Using Deep Learning and Reinforcement Learning

Authors:-Yashraj Misal, Omkar Ovhal, Aqdas Mirza, Mayuresh More4, Mrs. Anuja S. Phapale

Abstract-This paper proposes a hybrid artificial intelligence (AI) modular system with reinforcement learning and deep learning to update climate change forecasting and mitigation planning. The system learns from multimodal data in satellite imagery, IoT sensors, and historical data to make accurate, real- time forecasts of key climate variables. Convolutional neural networks (CNN) and long-short-term memory (LSTM) models are employed to learn spatial and temporal patterns, and a Re- inforcement Learning (RL) module provides adaptive mitigation recommendations. Prediction accuracy and emission reduction are enhanced compared to traditional models, as shown in our experimental results. This paper contributes significantly to scalable and intelligent solutions to climate change issues.

DOI: 10.61137/ijsret.vol.11.issue2.316

A Comprehensive Review of Large Language Models for Code Generation: Challenges and Future Directions

Authors:-Madhav Vyas, Dhruvi Dave, Khushaliba Gohil, Professor Mansi Gosai

Abstract-Large Language Models (LLMs) have significantly transformed the field of code generation by automating programming tasks, improving developer productivity, and enabling rapid prototyping. This review explores recent advancements in LLM-based code generation, examining both proprietary (closed-source) and open-source models. Proprietary models, such as GitHub Copilot, OpenAI Codex, and Amazon CodeWhisperer, offer high accuracy and seamless integration with development environments but limit user control. In contrast, open-source models like Code Llama, StarCoder, and PolyCoder provide transparency, customization, and self-hosting capabilities. Despite their progress, LLM-generated code faces challenges, including incorrect outputs, inefficiency, security risks, and difficulty in real-world software development. Benchmark datasets like HumanEval, MBPP, APPS, and CodeXGLUE have been developed to evaluate model performance based on correctness, efficiency, and robustness. Recent studies propose new methodologies, such as reinforcement learning and self-checking systems, to enhance accuracy and usability. Future research should focus on improving evaluation methods, contextual understanding, and security measures to ensure reliable and efficient LLM-generated code.

DOI: 10.61137/ijsret.vol.11.issue2.317

Prediction of Heart Disease Using Data Mining
Authors:- Kale Vivek Raju, Guide Prof. Shripad Bhide

Abstract- Heart disease has emerged as the foremost cause of mortality worldwide, impacting individuals of all ages and genders. Timely prediction of heart disease is imperative for initiating interventions and enhancing patient outcomes. This paper delves into the realm of data mining techniques, particularly focusing on supervised learning methods, to construct prediction models for heart disease survivability. By conducting a thorough examination of existing research and technological advancements in this domain, the study aims to furnish a comprehensive review and comparison of diverse supervised learning models. The comparison entails an assessment of the accuracy levels of these models as documented by various researchers. Furthermore, the paper extends its analysis to explore additional factors influencing the performance of supervised learning techniques in heart disease prediction, such as feature selection methods, model evaluation metrics, and data preprocessing techniques. The insights gleaned from this study not only shed light on the efficacy of supervised learning methods in forecasting heart disease but also pinpoint avenues for further research and development, including the exploration of ensemble methods, deep learning architectures, and the integration of multimodal data sources for enhanced predictive accuracy.

A Comprehensive Review of Large Language Models for Code Generation: Challenges and Future Directions
Authors:-Madhav Vyas, Dhruvi Dave, Khushaliba Gohil, Professor Mansi Gosai

Abstract-Large Language Models (LLMs) have significantly transformed the field of code generation by automating programming tasks, improving developer productivity, and enabling rapid prototyping. This review explores recent advancements in LLM-based code generation, examining both proprietary (closed-source) and open-source models. Proprietary models, such as GitHub Copilot, OpenAI Codex, and Amazon CodeWhisperer, offer high accuracy and seamless integration with development environments but limit user control. In contrast, open-source models like Code Llama, StarCoder, and PolyCoder provide transparency, customization, and self-hosting capabilities. Despite their progress, LLM-generated code faces challenges, including incorrect outputs, inefficiency, security risks, and difficulty in real-world software development. Benchmark datasets like HumanEval, MBPP, APPS, and CodeXGLUE have been developed to evaluate model performance based on correctness, efficiency, and robustness. Recent studies propose new methodologies, such as reinforcement learning and self-checking systems, to enhance accuracy and usability. Future research should focus on improving evaluation methods, contextual understanding, and security measures to ensure reliable and efficient LLM-generated code.

DOI: 10.61137/ijsret.vol.11.issue2.318

Malware Detection Using Machine Learning
Authors:-Abhishek Dadhich, Viraj Shinde, Rashmit Pawar, Umesh Mohite

Abstract-The increasing sophistication of malware threats necessitates advanced detection techniques beyond traditional signature-based methods. This paper presents a machine learning–based approach for malware detection using the Random Forest classifier. Static analysis features are extracted from executable files, and feature selection is performed using the Extra Trees Classifier. The proposed system achieves high accuracy in distinguishing between legitimate and malicious files, demonstrating the potential of machine learning in cybersecurity. Furthermore, we discuss the advantages of using machine learning for malware detection, the limitations of static analysis, and the potential of hybrid approaches that incorporate dynamic analysis. Additionally, we evaluate the computational cost, scalability, and efficiency of the proposed method to ensure real-world applicability. The increasing sophistication of malware threats necessitates advanced detection techniques beyond traditional signature-based methods. Machine learning- based detection offers a promising approach by leveraging data-driven classification techniques. This paper explores the implementation of a Random Forest classifier for static analysis-based malware detection. We discuss feature extraction techniques, dataset preprocessing, and the benefits of automated detection systems. Additionally, we highlight the importance of hybrid approaches that integrate dynamic analysis to enhance accuracy and resilience against obfuscation techniques. Our results demonstrate significant improvements over traditional heuristic-based detection methods, emphasizing the potential of intelligent cybersecurity solutions.

Real-Time Imaging and Rapid Response System Using Autonomous Drones for Enhanced Military Operations
Authors:-Mahaan N Bhat, Zeeshaan, Sidharth S Shaikh, Aishwarya M Bhat

Abstract-The development of autonomous systems has revolutionized military operations, enabling enhanced battlefield support. This paper presents an autonomous Unmanned Aerial Vehicle (UAV) system designed to provide real-time imaging, rapid response, and intruder detection for military applications. The UAV performs critical functions such as delivering first aid to injured soldiers, conducting reconnaissance missions, and autonomously detecting intruders. Key technologies utilized include AI-driven decision-making, autonomous navigation, advanced imaging systems, and Remote Desktop Protocol (RDP) for remote control. This innovative approach aims to improve situational awareness, increase operational efficiency, and strengthen the overall effectiveness of military operations. The results showcase significant improvements in reconnaissance speed, response accuracy, and security measures [1], [2].

Automated Student Attendance Using Computer Vision
Authors:-Reshi, Merinkanth, Yogeswari, Gayathri, Dr.P.Sachidhanandam

Abstract-The implementation of an Automated Student Attendance System utilizing Computer Vision optimizes attendance management by leveraging facial recognition technology to automate the marking process. This approach minimizes manual intervention while enhancing accuracy and efficiency. A web-based interface facilitates seamless attendance tracking, record maintenance, and real-time monitoring. Furthermore, the system incorporates email notifications to provide timely updates and allows direct downloads of attendance logs for administrative convenience. Security measures are reinforced through the identification and image capture of unauthorized individuals, with automated email alerts dispatched to administrators for enhanced surveillance. By integrating artificial intelligence, this system ensures a robust, reliable, and autonomous attendance tracking solution, significantly improving record-keeping efficiency within educational institutions and organizations.

DOI: 10.61137/ijsret.vol.11.issue2.350

Prep Gate: Advanced GATE Exam Preparation Platform using android studio & Java
Authors:-Aman Patre, Abhishek Bawankar, Mohit Selokar, Pallavi Pandey, Professor Saroj A. Shambharkar

Abstract-Prep Gate is a comprehensive mobile application designed to aid students in preparing for the Graduate Aptitude Test in Engineering (GATE), an essential examination for aspiring engineers in India. This Android-based platform offers a wide array of tools and resources that cater to the diverse needs of GATE aspirants, providing them with easy access to study materials, practice tests, progress tracking, and more, all in a user-friendly environment. Developed using Android Studio, Prep Gate incorporates interactive features such as quizzes, mock tests, and time-based assessments, allowing users to simulate real-time exam scenarios and evaluate their performance. The app also provides essential study resources, including subject-wise notes, video tutorials, and reference materials, which can be accessed at any time, facilitating flexible learning. To enhance user engagement, Prep Gate leverages Firebase Authentication for secure user login and personalized experience, allowing users to track their progress over time, set study goals, and receive timely reminders and notifications. The platform also includes a leaderboard feature, fostering a sense of competition and motivation among users.

DOI: 10.61137/ijsret.vol.11.issue2.319

Optimization of Print Speed for FDM Process Using Minitab
Authors:-Mrs. B. Siva Naga Ramya, Kommukuri Praveen, Bandarlanka Satya Sai, Peddapati Sai Naredra, Boddapati Madhusudhan

Abstract-The Fused Deposition Modeling (FDM) process is widely used in additive manufacturing due to its cost-effectiveness and design flexibility. However, optimizing the print speed without compromising material consumption and surface quality remains a critical challenge. This study focuses on optimizing print speed, infill pattern, and wall count using the Design of Experiments (DOE) methodology in Minitab to achieve an optimal balance between printing time, material usage, and surface finish. The research evaluates the impact of these parameters on printing efficiency through a structured Taguchi experimental design approach, allowing for the identification of parameter settings that minimize print time while ensuring adequate part strength and surface smoothness. Various infill patterns (rectilinear, honeycomb, gyroid, and concentric), wall counts (single, double, and multiple shells), and print speeds were tested to determine their influence on material deposition rate, layer bonding, and overall print quality.

DOI: 10.61137/ijsret.vol.11.issue2.320

Multi Objective Optimization of Print Settings For Nominal Print Time Using Frontier Analyse Method
Authors:-Mrs. S. Hemani, Vasamsetti Mallika, Ayithireddy Bhavani Raja, Annamdevula Naga Venkata Ramana, Pujari Rupesh

Abstract-In Fused Deposition Modeling (FDM), optimizing print settings is crucial to balance print time, material consumption, and part quality. Achieving an optimal combination of parameters ensures efficient production without compromising mechanical integrity. This study employs the Frontier Analysis Method for multi-objective optimization of infill pattern, wall count, and print speed to achieve a nominal print time while minimizing material consumption and maintaining print quality .The study investigates how different infill patterns (grid, gyroid, honeycomb, and line), wall counts (single, double, and multiple), and print speeds affect the total print time, material usage, and surface finish. The Frontier Analysis Method, a data-driven optimization approach, is implemented to determine the most efficient print settings that provide the best trade-off among speed, strength, and material efficiency. The results indicate that higher print speeds reduce print time but may lead to defects such as layer misalignment and poor adhesion. Increasing wall count improves strength but leads to higher material consumption and longer print times. Similarly, infill pattern selection significantly impacts part strength and material usage, with honeycomb and gyroid infills showing better strength-to-material ratios compared to grid-based structures. Through multi-objective optimization, the study identifies optimal print settings that reduce excess material use and printing time while maintaining dimensional accuracy and mechanical properties. The findings help improve FDM printing efficiency, providing a systematic approach for selecting ideal print parameters based on specific manufacturing needs.

DOI: 10.61137/ijsret.vol.11.issue2.321

Implementation of Text Encryption and Decryption Using Caesar Cipher in Python
Authors:-Veerkant Bhaskar

Abstract-This essay investigates the use of Python’s Caesar Cipher algorithm for text encryption and decryption. One of the oldest and most basic encryption methods is the Caesar Cipher, which involves moving characters in the textto a predetermined number of places. It functions as an introduction cryptographic technique for instructional purposes even though it is unsuitable for contemporary secure communication. The theoretical underpinnings, Python implementation, and efficacy assessment for simple encryption tasks are described in this article.

Osteoarthritis Severity Level Detection Using X-ray Images
Authors:-Mukesh G, Mohit Chandran, Karthick P, Shreeman MM

Abstract-Osteoarthritis (OA) is a chronic degenerative joint disease affecting millions worldwide, leading to joint pain, stiffness, and limited mobility. Early diagnosis is critical for effective treatment and disease management. Traditional OA diagnosis relies on radiologists interpreting X-ray images, which is a time-consuming and subjective process. The integration of artificial intelligence (AI) in medical imaging offers a promising solution to automate and enhance the diagnostic process. In this study, we propose an AI-driven approach for osteoarthritis severity level detection using X-ray images. We utilize a fine-tuned Efficient Net model, trained on the Kaggle Osteoarthritis dataset. The model employs convolutional neural networks (CNNs) with dropout layers to improve generalization and prevent overfitting. Preprocessing techniques such as normalization, augmentation, and resizing enhance the robustness of the model. The AI model is optimized using the Adam optimizer and evaluated using binary cross-entropy loss. Experimental results demonstrate that our approach achieves high classification accuracy, outperforming traditional methods. Performance metrics such as precision, recall, and F1-score validate the effectiveness of the model. By automating osteoarthritis severity detection, this research aims to provide healthcare professionals with an objective, efficient, and scalable diagnostic tool.

Design and Fluent Simulation of Draft Tube to Increase Exist Pressure
Authors:-Mr. Ch. Sai Mohan Reddy, Punnam Yesu, Yedla Tejaswi, Adabala Srirama Surya Prakash, Mangam Ajay Kumar

Abstract-The draft tube is a critical component of hydropower plants, especially for reaction and mixed-flow turbines, as it plays a vital role in ensuring efficient energy conversion and system stability. Its design significantly impacts the overall performance of the turbine by reducing velocity at the outlet, converting kinetic energy into pressure energy, and minimizing energy losses. However, the design of an efficient draft tube comes with numerous challenges, including addressing problems such as cavitation, backflow, surging, swirl flow, and erosion of metal components due to high-velocity water flow. A well-designed draft tube should effectively mitigate these issues while maintaining optimal performance. The primary objective of this project was to design a draft tube and analyze its performance under real working conditions using advanced computational tools. The draft tube design was created using a CAD software tool, providing an accurate and detailed 3D model for further analysis. Simulation of the design was then performed using ANSYS software, with Computational Fluid Dynamics (CFD) analysis carried out in ANSYS Fluent. The CFD analysis included defining key parameters such as inlet velocity, flow patterns, outlet pressure, velocity distribution, and turbulence behaviour to replicate realistic operating conditions.

DOI: 10.61137/ijsret.vol.11.issue2.322

Optimization of Support Patterns to Reduce Material Wastage Using Doe Method
Authors:-Mr. K. Simon Rupas1, Dondapati Vijaya Sukruthi, Chevvakula Sai Vamsi, Appana Mahesh Aditya, Bondapalli Abhiram

Abstract-In Fused Deposition Modeling (FDM), support structures are essential for printing overhanging and complex geometries. However, excessive support material increases printing costs, material wastage, and post-processing time. This study focuses on optimizing support patterns and part orientation using Design of Experiments (DOE) methods to minimize material usage while maintaining structural stability during printing. The study evaluates two commonly used support structures: normal (grid-based) and tree-like supports, along with different part orientations to determine their impact on material consumption and overhang stability. The Taguchi DOE method is implemented to systematically analyze the influence of orientation and support type on key parameters such as printing time, support volume, and ease of removal.

DOI: 10.61137/ijsret.vol.11.issue2.323

Orientation Optimization for Reducing The Support Material Wastage in Material Extrusion Process
Authors:-Mr. M. Rambabu, Akula Hemanth Raja, Bobboli Vijay Durga Rao, Namu Karthik, Bandi Ajay Shankar

Abstract-Additive Manufacturing (AM) using material extrusion processes, such as Fused Deposition Modeling (FDM), often requires support structures to ensure the stability of overhanging or complex geometries during fabrication. However, the use of support material increases material consumption, printing time, and post-processing effort, ultimately raising production costs. This project focuses on optimizing the orientation of parts during the manufacturing process to minimize the use of support material while maintaining the structural integrity and quality of the final product .Fusion 360 was used to simulate the manufacturing process by evaluating various part orientations. By analyzing the overhang angles, build directions, and contact areas requiring supports, optimal orientations were identified. The optimization process considered parameters such as material usage, print time, and surface finish quality. Additionally, simulations were conducted to evaluate the impact of orientation changes on part strength and dimensional accuracy. The study revealed that strategic orientation adjustments could significantly reduce support material wastage by minimizing the number and size of overhangs. For instance, aligning the part’s geometry with the build platform or leveraging self-supporting angles helped achieve material efficiency. The outcomes demonstrated that reducing support material by optimizing orientation not only improves material utilization but also enhances sustainability in AM processes. This research highlights the importance of orientation optimization in material extrusion processes and showcases the potential of simulation tools like Fusion 360 to refine the manufacturing process, enabling cost-effective and resource-efficient production.

DOI: 10.61137/ijsret.vol.11.issue2.324

Enhancing The Discretization Method by Implementing The DOE Method to Optimize The Discretization Value Using Workbench and Ansys
Authors:-Mr. M. Vinil, Meddisetti Ramesh, Polisetti Chaitanya Anil, Bharthala Subrhamanyaswamy, Kantareddy Siva Sai

Abstract-Discretization, commonly known as meshing, plays a pivotal role in finite element analysis (FEA) as it divides a component into smaller elements for numerical simulations. The quality and size of the mesh significantly influence the accuracy, convergence, and computational cost of the simulation. This project focuses on enhancing the discretization process by implementing the Design of Experiments (DOE) method to optimize the mesh size for achieving an optimal balance between computational efficiency and result accuracy. ANSYS was utilized to perform FEA simulations on a selected component with varying mesh sizes to observe their influence on key output parameters such as stress, strain, deformation, and factor of safety. Coarser meshes lead to faster computation but may compromise accuracy, while finer meshes provide more precise results but at a higher computational expense. The DOE method was applied using Minitab software to design a set of systematic experiments, enabling the identification of the most influential factors and their interactions affecting the output.

DOI: 10.61137/ijsret.vol.11.issue2.325

AI-Powered Fraud Detection: Secure Online Transaction Monitoring Using Machine Learning
Authors:-G.Jashwitha, T.Sai Srinath, G.Naga Kastusi, V.Anshitha, G.Janitha Sree, Mrs.G.Tejasri Devi

Abstract-Fraud detection remains one of the most critical challenges in financial transactions, driving on going research and the adoption of advanced technologies such as machine learning. Financial transaction fraud detection aims to explore and compare various machine learning approaches to assess their effectiveness, challenges, and potential future developments comprehensively. This paper begins by highlighting the importance of fraud detection in financial transactions, emphasizing the widespread impact of fraudulent activities on individuals, businesses, and the overall economy. While traditional fraud detection methods have been valuable, they often struggle to counter increasingly sophisticated and evolving fraudulent schemes. As a result, more advanced techniques are required to enhance detection accuracy. Machine learning-based approaches have emerged as a promising solution, enabling algorithms to analyse vast amounts of transactional data and identify patterns indicative of potential fraud. In particular, supervised learning techniques—such as logistic regression, decision trees, and support vector machines—have gained significant popularity in fraud detection due to their ability to classify transactions as legitimate or fraudulent based on historical data.

DOI: 10.61137/ijsret.vol.11.issue2.326

Explainable AI for Event and Anomaly Detection and Classification in Healthcare Monitoring Systems
Authors:-J.Sree Varenya, D.Sahithi, S.Sri Divya, A.Chakri, S.Asritha, Mrs.L.Yamuna

Abstract-Artificial intelligence (AI) is transforming healthcare by automating the detection and classification of events and anomalies, enhancing patient monitoring and intervention. In this context, events refer to abnormalities caused by medical conditions such as seizures or falls, while anomalies are erroneous data resulting from sensor faults or malicious attacks. AI-based event and anomaly detection (EAD) enables early identification of critical issues, reducing false alarms and improving patient outcomes. The advancement of Medical Internet of Things (MIoT) devices has further facilitated real-time data collection, AI-driven processing, and transmission, enabling remote monitoring and personalized healthcare. However, ensuring the transparency and explainability of AI systems is crucial in medical applications to foster trust and understanding among healthcare professionals. This work presents an online EAD approach utilizing a lightweight autoencoder (AE) on MIoT devices to detect abnormalities in real time. The detected abnormalities are then explained using Kernel SHAP, a technique from explainable AI (XAI), and subsequently classified as either events or anomalies using an artificial neural network (ANN). Extensive simulations conducted on the Medical Information Mart for Intensive Care (MIMIC) dataset demonstrate the robustness of the proposed approach in accurately detecting and classifying events, regardless of the proportion of anomalies present.

DOI: 10.61137/ijsret.vol.11.issue2.327

Evaluating Machine Learning Efficiency: Simpler Models Outperform Deep Learning in Motor Fault Detection
Authors:-Mrs. L. Yamuna., G. Abhisekhar., K. Prasanna Lahari., K. Vivek., S. Hemanth.

Abstract- In motor condition monitoring, deep learning techniques have been explored by utilizing two-dimensional plots as datasets instead of traditional time-series signals. For instance, Convolutional Neural Networks (CNNs) have been trained using recurrence and frequency-occurrence plots. While previous studies have shown promising results with CNNs, the indistinct differences in these plots often make the model’s decision-making process appear as a black box. This study evaluates and compares ten traditional machine learning (ML) techniques with recent deep learning (DL) approaches for motor fault diagnosis using the same dataset. The dataset consists of 3,750 synthetically generated motor current signal samples, categorized into five classes—one representing healthy conditions and four representing faulty motor conditions—each tested under five loading levels (0%, 25%, 50%, 75%, and 100%). Following similar training and testing phases, the Light Gradient Boosting Machine (LightGBM) achieved the highest classification accuracy of 93.20%, outperforming three CNN-based models by at least 10.4%, whose accuracy ranged between 74.80% and 82.80%. LightGBM also demonstrated superior performance in other key evaluation metrics, including F1 score, precision, and recall. Notably, five out of ten traditional ML models surpassed the CNN-based models. These findings emphasize the importance of carefully selecting deep learning architectures, as they are computationally expensive and memory-intensive, yet do not always guarantee improved performance over traditional ML models, especially for relatively straightforward tasks like motor fault classification using current signals.

DOI: 10.61137/ijsret.vol.11.issue2.328

AI-Driven Time Series Forecasting for Financial Markets: Leveraging Machine Learning for Smarter Predictions
Authors:-S.Likhita, S.Venkata Basavayya, Y.S.Santosh Kumar, P.Bhanu Divyasri, V.Sandeep, Mrs.V.Anantha Lakshmi

Abstract- Financial markets, including stock prices, exchange rates, and commodity prices, are inherently volatile and influenced by numerous factors, making their prediction a challenging yet essential task. Accurate forecasting of market trends is crucial for investors, financial analysts, and policymakers, as it helps in making informed decisions and mitigating risks. In this study, we explore the use of Support Vector Machine (SVM), a powerful machine learning algorithm, for time series forecasting of financial market trends. Traditional forecasting methods often struggle with financial data due to its non-linear and dynamic nature. However, SVM is well-known for its ability to handle high-dimensional data and capture complex patterns, making it a suitable choice for financial market prediction. Our approach leverages historical price and volume data to train the SVM model, enabling it to recognize patterns and predict future market movements. The study evaluates how effectively SVM adapts to changing market conditions, demonstrating its ability to model non-linear relationships within financial time series. Additionally, we consider external economic factors that may influence market behavior, further validating the robustness of the model. The findings highlight the potential of SVM in financial forecasting, offering a reliable alternative to traditional methods. Future work may involve integrating hybrid models combining SVM with deep learning techniques or incorporating macro-economic indicators to further enhance prediction accuracy. This research contributes to the growing field of AI-driven financial analysis, paving the way for more sophisticated and data-driven investment strategies.

DOI: 10.61137/ijsret.vol.11.issue2.329

Knowledge, Attitude and Practices towards Antimicrobial Stewardship among Master of Public Health (Mph) Students in Ahmadu Bello University, Zaria
Authors:-Olalekan Adekunle Muideen, Ejiohuo Precious Tombari, Amodu David Adejo, Kwande Bilikisu, Angara Amina Aliyu, Professor Umar Ibrahim

Abstract- Antimicrobial resistance (AMR) remains a significant global health challenge, with antimicrobial stewardship (AMS) critical to controlling its spread. However, research on AMS practices, particularly within specific regional contexts such as Zaria, Nigeria, is limited. This study assessed the knowledge, attitudes, and practices (KAP) towards AMS among Master of Public Health (MPH) students at Ahmadu Bello University, Zaria, aiming to address these gaps. A cross-sectional, mixed-methods research design was employed, involving a sample of 200 MPH students selected through stratified random sampling. Data collection was conducted using structured questionnaires, with quantitative data analyzed using SPSS version 26 and qualitative data examined through thematic analysis. The results revealed that while 86.5% of respondents were aware of AMS, only 58.0% rated their AMS knowledge as “Good.” In terms of attitudes, a majority (94.0%) supported the restriction of antibiotic prescriptions to necessary cases, though significant gaps persisted in practical adherence to AMS guidelines. For instance, 47.0% reported following national/WHO guidelines “Always” or “Often,” while 45.5% followed them “Sometimes.” Furthermore, 42.0% of respondents acknowledged prescribing antibiotics without laboratory confirmation, highlighting critical gaps between knowledge and practice. The study also identified key barriers, including “Lack of Training” (51.5%) and “Lack of Awareness” (46.0%), which hinder effective AMS implementation. In conclusion, addressing these identified gaps is essential to enhance AMS practices among MPH students and ensure the responsible use of antibiotics. The study recommends targeted training programs, increased resource availability, and strengthened multidisciplinary collaboration to support AMS efforts.

Material Optimization of Bracket For Maximum Stiffness Conditon to Withstand Higher Loading Conditions
Authors:-Mrs. K. Tulasi, Gundu Jaswanth Narayana, Karumanchi Karthik, Anusuri Taraka Sai Surya Venkata Siva, Maddi Chandra Sekhar

Abstract- Topology optimisation has been essential for the design of lightweight mechanical components since their inception in the aerospace industry. Its potential and thorough research yielded computationally viable methods, resulting in its incorporation into numerous computer-aided design applications. Concurrent with the advancement of topology optimisation, additive manufacturing technologies have significantly improved, leading to dependable additive manufacturing processes. The integration of these two technologies enables the fabrication of optimised components more efficiently than conventional production methods. This study offers a concise comparison between topology optimization and other forms of structural optimization. Furthermore, it succinctly contrasts additive production with other production techniques. Solidworks uses the SIMP approach to address topology optimisation issues, and this article presents an overview of this approach, along with additional theoretical considerations of the subject. e primary objective of the research is to illustrate the topology optimization of a jet engine bracket via a SolidWorks simulation. We achieved this by following a structured methodology and meticulously documenting each phase of the optimisation process. We then exported the generated topology in a graphical body format and used it to reconstruct the bracket. The rebuilt bracket is 50% lighter than the original, and it worked well enough in finite element analysis simulations under all the different loading conditions that were given. This article also discusses the collected data, focusing on identifying the sources of mistakes in the research and evaluating their impact on the performance of the optimized bracket. Finally, the research gives a full assessment of possible production methods based on how they affect the finished bracket’s mechanical properties.

DOI: 10.61137/ijsret.vol.11.issue2.330

Addressing IOT Security Challenges through AI Solutions
Authors:-Gopi Parmar, Hasti Makwana, Professor Mansi Gosai

Abstract- The Internet of Things (IoT) is a transformative technology that significantly impacts various sectors, including connectivity, healthcare, work, and the economy. By enabling automation, enhancing efficiency, and reducing operational stress, IoT has the potential to improve daily life in diverse environments, from smart cities to educational institutions. However, the growing prevalence of cyberattacks presents considerable challenges to the security of intelligent IoT applications. Traditional security measures are increasingly insufficient due to evolving threats and vulnerabilities. To address these challenges, future IoT systems must integrate AI-powered machine learning and deep learning techniques, which offer dynamic and adaptive security mechanisms. This review paper explores IoT security intelligence from multiple perspectives, proposing innovative approaches that leverage machine learning and deep learning to analyze raw data, detect attack patterns in unstructured data, and safeguard IoT devices against a broad spectrum of cyber threats.

Bianchi Type-III Cosmological Model with f(R, T) Gravity Based on Lyra Geometry
Authors:-L. S. Ladke, B.V.Bansole, V. P. Tripade

Abstract- This paper is devoted to the study of Bianchi type-III cosmological model with gravity in the presence of perfect fluid based on Lyra geometry. We formalize the gravity equations based on Lyra geometry. To solve the field equations, obtained by considering Bianchi type-III space-time, we used physical condition that the shear scalar σ2 is proportional to scalar expansion . The behavior of the model has been discussed by studying the physical and kinematical properties of the model.

DOI: 10.61137/ijsret.vol.11.issue2.331

Artificial Intelligence in Healthcare
Authors:-Kushal Shah, Jainam Shah, Riya Doshi Prof Mansi Gosai

Abstract- Artificial Intelligence (AI) is transforming healthcare by improving diagnostics, treatment planning, and patient care. Yet, the implementation of AI-based solutions in clinical environments is hindered by a major challenge: the absence of transparency and interpretability. Explainable AI (XAI) has become an essential area focused on making AI decisions more comprehensible, reliable, and accountable. This paper provides an extensive review of XAI in healthcare, emphasizing its significance, methodologies, and applications. XAI methods such as rule-based models, feature importance methods, and interpretable deep learning architecture allow clinicians to understand AI-predicted diagnoses. Such approaches also mitigate fears surrounding bias, fairness, and ethical decision-making in medical AI systems. Involving XAI in the healthcare sector enables us to achieve trust among clinicians, better regulate, and optimize patient safety.

AI-Powered Smart Traffic Management System for Urban Congestion Reduction
Authors:- Aditya Wairagade, Krushna Ugale, Rohit Waghmare

Abstract- Urban traffic congestion causes delays, increased fuel consumption, and environmental pollution. This research proposes an AI-powered smart traffic management system that dynamically adjusts traffic signals based on real-time data, reducing congestion and optimizing vehicle flow. AI techniques, including machine learning and computer vision, analyze live traffic data to predict congestion patterns. IoT sensors and cameras collect real-time traffic data, while machine learning algorithms process this data to dynamically adjust signal dura- tions. This system significantly reduces congestion, improves fuel efficiency, and lowers emissions, while also enhancing road safety and ensuring smoother movement for emergency vehicles. Unlike fixed-timer systems, this AI-driven approach continuously adapts in real-time, making traffic control more efficient.

The Role of Plasma Gasification in Achieving Zero Waste and Circular Economy Goals
Authors:- Sarthak Pandit, Sumit Panda, Shivam Patil

Abstract-Plasma gasification can correct the inefficiencies of the conventional waste management systems such as landfilling and incineration. Greater pollution, greenhouse gas emissions, and depletion of resources will aggravate the global waste crisis further and further. The present study examines the prospects of plasma gasification for converting municipal solid waste into syngas and vitrified slag without or with minimal significant environmental damage. The performance of the process, syngas quality, and utilization of byproducts have been investigated by thermodynamic simulation and pilot-scale tests through opti- mization of certain operational parameters. Plasma gasification achieved a syngas yield of up to 72%, while it significantly reduced toxic emission and thus high operational sustainability, producing inert vitrified slag which can be used for construction. The technology has the potential to foster decentralized waste-to- energy projects and decrease reliance on fossil fuel and landfilling. In this study, the scale-up, economic viability, and environmen- tal benefits of plasma gasification are evaluated, presenting a vision of how plasma gasification can be integrated into current landfilling practice.

A Comprehensive Analysis of Emerging Cyber Threats and Mitigation Strategies in the Digital Era
Authors:- Dr.Vikas Mahandule, Dr. Priti bharambe, Tejas Watekar , Shubham Wadekar, Sanket Roundhal

Abstract- The proliferation of digital technologies has led to a corresponding rise in sophisticated cyber threats, impacting individuals, businesses, and national infrastructure. This study presents a comprehensive review of prominent emerging cyber threats, including ransomware, phishing, IoT vulnerabilities, and advanced persistent threats (APTs). It also proposes mitigation techniques and discusses future implications. By analyzing real-world cases and examining current prevention mechanisms, this research contributes to the understanding of evolving cybersecurity landscapes. The findings emphasize the need for adaptive defense systems, cybersecurity awareness, and global cooperation.

A Hybrid AI Framework for Climate Change Prediction and Mitigation Using Deep Learning and Reinforcement Learning
Authors:- Yashraj Misal, Omkar Ovhal, Aqdas Mirza, Mayuresh More, Mrs. Anuja S. Phaphale

Abstract- This paper proposes a hybrid artificial intelligence (AI) modular system with reinforcement learning and deep learning to update climate change forecasting and mitigation planning. The system learns from multimodal data in satellite imagery, IoT sensors, and historical data to make accurate, real- time forecasts of key climate variables. Convolutional neural networks (CNN) and long-short-term memory (LSTM) models are employed to learn spatial and temporal patterns, and a Re- inforcement Learning (RL) module provides adaptive mitigation recommendations. Prediction accuracy and emission reduction are enhanced compared to traditional models, as shown in our experimental results. This paper contributes significantly to scalable and intelligent solutions to climate change issues.

Application of First Order Linear Ordinary Differential Equations in Mechanics and Thermodynamics
Authors:- Jyotika Sa, Tejaswini Pradhan

Abstract- This comprehensive study explores the profound applications of first-order linear ordinary differential equations (ODEs) in the domains of classical mechanics and thermodynamics. These mathematical tools serve as vital instruments in modeling and analyzing real-world physical phenomena. In particular, this research focuses on Newton’s Second Law of Motion and Newton’s Law of Cooling, both of which are quintessential examples of how first-order linear ODEs can effectively describe dynamic systems. The paper provides an in-depth explanation of the formulation, derivation, and solution of these equations, supported by descriptive illustrations and analytical interpretations. Emphasis is placed on demonstrating the solution techniques such as the integrating factor method, and the separation of variables method, while linking their mathematical elegance to practical engineering, environmental, and forensic applications. The ultimate objective is to illuminate how first-order linear ODEs not only simplify complex physical laws but also enable predictions that are essential in technological and scientific advancements.

DOI: 10.61137/ijsret.vol.11.issue2.332

Beyond Screens: Impact of Artificial Intelligence on Cybersecurity: Opportunities and Challenges
Authors:- Hussain Shaikh

Abstract- In the digital era, Artificial Intelligence (AI) has emerged as a transformative force across various sectors, including cybersecurity. As cyber threats grow in complexity and scale, traditional defense mechanisms are proving insufficient. AI offers a proactive approach to detecting, preventing, and responding to cyber threats in real-time. However, the integration of AI into cybersecurity introduces new challenges, such as adversariattacks, data privacy concerns, and ethical dilemmas. This paper explores the dual role of AI in cybersecurity – its potential to strengthen defenses and the risks it poses. Through a comprehensive literature review, analysis of current applications, and examination of real-world case studies, this research identifies key opportunities, challenges, and future directions. The paper aims to provide a balanced perspective on leveraging AI responsibly and effectively to secure digital infrastructures.

Engineering Scalable Microservices: A Comparative Study of Serverless Vs. Kubernetes-Based Architectures
Authors:- Sreenivasulu Navulipuri

Abstract- This study compares serverless architectures and Kubernetes-based orchestration systems in the context of cloud-native microservices. It examines key factors such as latency, scalability, cost efficiency, and operational complexity. AWS Lambda and other serverless platforms scale automatically but experience delays during cold starts while Kubernetes provides detailed control at the cost of increased operational expenses. The paper also examines AI-driven resource optimization and hybrid models, such as Knative and OpenFaaS, which combine the advantages of both paradigms. Performance benchmarks and case studies guide architects in selecting the most suitable deployment model. A hybrid solution appears to provide the optimal combination of scalability, cost management and operational efficiency.

DOI: 10.61137/ijsret.vol.11.issue2.333

Smart Railway Safety and Track Monitoring System Using ESP32
Authors:- Assistant Professor Ambika Annavarapu, Vanja Chaitanya Aswith, Tadiboina Baji, Sattu Naga Likhith, Purushothapatanam Bhanu Sai Ram

Abstract- Railway transportation is one of the most widely used and efficient means of transport worldwide. However, railway accidents due to track failures pose a significant threat to human lives and infrastructure. Cracks and irregularities in railway tracks can cause derailments, leading to catastrophic accidents. To address this problem, we propose a Smart Railway Safety and Track Monitoring System that detects track anomalies using ultrasonic sensors. And ultrasonic sensors are connected to 180° servo motor. The system is designed to continuously monitor the track condition, and if the distance between the track and the ultrasonic sensor exceeds 5 cm, it Indicates a crack or damage. Upon detection of an anomaly, the system triggers a series of safety measures: it sends an alert to the nearest railway station via the Blynk IoT app, transmits a text message with GPS coordinates using a GSM module, and initiates an automated phone call to the concerned authority. Additionally, signal lights positioned beside the track serve as a visual warning, turning from green to red upon detection of a crack. The entire process is controlled by an ESP32 microcontroller, ensuring real-time monitoring and efficient safety measures.

DOI: 10.61137/ijsret.vol.11.issue2.334

Precision Agriculture with IoT: A Review
Authors:- Ms. Arpita Newaskar, Ms. Anuja Gadade

Abstract- Nowadays, IoT is increasingly found in various sectors and domains, agricultural production is one of these. In agriculture, the internet of things (IoT) is transforming traditional farming practices by improving productivity, efficiency, and sustainability. Precision farming uses smart technology called the Internet of Things (IoT) to make farming better and more eco-friendly. IoT is a global network of things that is physical and virtual devices that have an independent identity each one, which can be connected via a vast network to share information and process. IoT allows farmers to get connected to their farm from anywhere at any time In the agriculture sector, there is a growing demand for the use of technology to improve production, reduce labor, efficiently utilize resources, and decrease the environmental impacts on crops. Several technology solutions have been deployed to address the agriculture-specific technical problems.

A Study on Impact of Digital Marketing in Customer Purchase Behavior Special Reference to Ramanathapuram District
Authors:-R. Asraf Sithika

Abstract- Digital marketing platforms have grown in popularity in recent years as a means for companies to advertise their goods and services. This study intends to investigate the elements—such as perceived value, brand trust, and ad credibility—that affect consumers’ purchase intentions with regard to digital marketing. The sample size is limited to 100 and will be chosen using the convenience sample technique. Both primary and secondary data served as the foundation for this investigation. Primary data will be gathered using the questionnaire method. The secondary data was gathered from a variety of offline and online sources. Marketers can gain a better understanding of how to develop social media campaigns that connect with consumers and eventually influence their purchasing decisions by examining these elements.

Development and Modification of Waste Paper Recycling Machinese
Authors:-Mo Mohseen

Abstract- Paper is used daily with learning institutions such as universities and schools being the main consumers. Due to its single usage it ends up being disposed hence most of the paper waste remains idle and unutilized although it is a valuable resource. Therefore, this paper explores the design of a cheap and efficient manually operated paper recycling machine. The design used integration of acquired knowledge on the recycling technology, existing manually operated and available paper recycling machines to form a cheap but efficient paper recycling machine. The benefits of the machine are not only centered on the merits of recycling paper but by the in-cooperation of the manually driving system which will also curb the high unemployment rates in developing countries. Due to the design being not 100% efficient due to the gear box, belt and chain transmission, the estimated efficiency is equal to 90% but using the 90% for design, the design power input is 450 watts and since an average person can produce 100 Watts constantly therefore 2 people are necessary to drive the machine.

DOI: 10.61137/ijsret.vol.11.issue2.336

Performance Evaluation of a Solar PV–Hydrogen Fuel Cell Hybrid System under Summer Load Conditions
Authors:-Research Scholar Amol Barve, Professor Anurag S D Rai

Abstract- This paper presents a comprehensive performance analysis of a hybrid energy system integrating Solar Photovoltaic (PV) panels and Hydrogen Fuel Cells (HFC) under a summer session load profile. The study aims to evaluate the feasibility, reliability, and efficiency of such a system in meeting varying energy demands during high-temperature conditions, which typically cause fluctuations in solar irradiance and load requirements. The system configuration includes a solar PV array for primary energy generation, an electrolyzer for hydrogen production during excess generation, a hydrogen storage unit, and a fuel cell for supplementary power during periods of low solar availability. Simulation and modeling are carried out using MATLAB/Simulink to assess key performance parameters, including energy efficiency, hydrogen consumption, system autonomy, and environmental impact. Results demonstrate that the hybrid system can effectively balance energy supply and demand, maintain stable output, and reduce dependency on conventional grid power. The integration of hydrogen fuel cells significantly enhances energy storage capabilities, making the system more resilient during extended cloudy periods or nighttime usage. This analysis underscores the potential of solar-hydrogen hybrid systems in supporting sustainable and uninterrupted power supply during summer seasons, particularly in regions with high solar insolation and variable load demands.

Designing Explainable Large Language Models for Critical Decision-Making in Healthcare: A Review-Based XAI Perspective
Authors:-Roshan Nikam, Parv Shah, Anish Shinde, Chaitanyaa Kashid/strong

Abstract- Large Language Models (LLMs) are changing the world of healthcare by simplifying clinical documentation, diagnosing, and making medical decisions. Despite their promise, the black-box-like behavior of LLMs poses severe challenges in a healthcare scenario where trust, interpretability, and accountability are of utmost importance. This paper investigates the LLM interpretability techniques in the medical domain based on the salient insights obtained from an extensive survey of Explainable AI (XAI) literature. It looks into post-hoc explanation techniques (SHAP, LIME), collaborative human-AI decision-making frameworks, and interpretable approaches such as neurosymbolic systems. Highlighted are the main issues: algorithmic bias, hallucinations, healthcare compliance, and algorithmic inefficiencies. It is posited that structured prompting, especially Chain-of-Thought (CoT) reasoning enhanced by diagnostic logic, would ensure that LLM actions, in terms of outputs and explanations, are much more in sync with clinical reasoning, thus enhancing transparency while preserving performance. It is concluded that, drawing on the insights gained from XAI, the more interpretable LLMs promote clinicians’ trust in AI systems’ conduct and consequently promote ethical and effective integration into the healthcare setting. The way forward is to focus on some direction to maintain the balance between model accuracy and interpretability and cater to evolving regulatory requirements.

DOI: 10.61137/ijsret.vol.11.issue2.337

Hand Gesture Recognition in Low-Light Environments Using Deep Learning
Authors:-Sujal Suraywanshi, Ganesh Waje, Diya Jain, Prajyot Jagtap/strong>

Abstract- Hand gesture recognition has attracted enormous interest because of its extensive application in human-computer interaction, sign language understanding, and augmented reality. Recognizing hand gestures in low light conditions is a difficult task to achieve because the visibility is low, there are noises, and feature details get lost. Here, we propose a detailed survey of recent techniques in hand gesture recognition for low-light conditions by employing deep learning methods. We present the difficulties involved with low-light environments, such as illumination changes and background noise. In addition, we discuss different deep learning-based methods for hand detection and gesture classification and present their effectiveness in improving recognition accuracy under difficult lighting conditions. We conclude by offering a comparative assessment of these methods based on primary performance indicators like accuracy, processing time, and resistance to low-light conditions.

DOI: 10.61137/ijsret.vol.11.issue2.338

AI-Driven Business Intelligence and Decision Making: Turning Data into Actionable Insights
Authors:-Aditya Kokate

Abstract- The integration of Artificial Intelligence (AI) into Business Intelligence (BI) is revolutionizing how organizations make decisions by automating data analysis and enhancing predictive capabilities. Traditional BI systems rely on static reporting and retrospective data interpretation, limiting their responsiveness in dynamic environments. In contrast, AI-powered BI systems leverage Machine Learning (ML), Natural Language Processing (NLP), and cognitive computing to transform raw data into actionable insights. This paper explores the architecture, implementation, and impact of AI-driven BI systems, emphasizing real-time analytics, predictive modeling, and explainable AI. The study demonstrates how AI enhances operational efficiency, data accuracy, and strategic foresight, offering a competitive advantage to modern enterprises.

DOI: 10.61137/ijsret.vol.11.issue2.339

AI-Powered Ransomware Defence: Cutting-Edge Machine Learning Techniques for Threat Detection
Authors:-Mrs.P.Satyavathi, M.Naga Sai Ganesh, N.V.Gowtham Kumar,V.S.V.Satya Yaswanth, G.Satya Nandini, V.Giri Sathvika

Abstract- The increasing frequency and sophistication of ransomware attacks, there is a growing need for dynamic and effective detection and mitigation strategies. Traditional signature-based approaches often fall short in identifying new and evolving ransomware variants. This paper explores the application of machine learning techniques for ransomware detection, aiming to enhance the accuracy and adaptability of detection mechanisms. It provides a comprehensive analysis of various machine learning methods and algorithms, evaluating their effectiveness in identifying ransomware patterns. The findings offer valuable insights into the advancement of cybersecurity solutions, emphasizing resilience and proactive defense against the ever-evolving ransomware threat landscape.

DOI: 10.61137/ijsret.vol.11.issue2.339

IoT-Based Smart temperature controlled Fan for Energy-Efficient Cooling
Authors:-Megha Narwade, Diksha Patil, Akanksha Patil, Chetan Aher

Abstract- This paper gives a new and creative IoT-based smart fan system for cooling with energy efficiency in various applications – residential, commercial as well as industrial surroundings. Traditional cooling systems usually depend on static control mechanisms. These cannot adjust to actual environmental conditions and result in extra energy consumption and reduced efficiency too. In order to tackle these challenges, our proposed system integrates an advanced temperature-controlled fan that makes use of a dynamic Pulse Width Modulation (PWM) algorithm that lets us adjust fan speed based on real-time temperature variations around the fan. The system consists of – an NTC thermistor for precise temperature measurement, an Arduino Uno microcontroller for data processing, and an IoT-enabled mobile interface that automates user interactions, and reducing manual adjustments. Strict testing results show that the system successfully achieves a temperature stability of ±0.2°C and reduces power consumption by 27.1% as compared to traditional methods. Also, the modular design supports both DC as well as AC fans, increasing scalability and adaptability. This work bridges the gap between academic research and practical applications and sets a new standard for smart, future focused, thermal management solutions.

DOI: 10.61137/ijsret.vol.11.issue2.340

Click to View MORE PAPERS: Volume 11 Issue 2 March-April 2025

Artificial Intelligence in Everyday Life: Opportunities and Challenges
Authors:-Research Scholar Dhaamunuuri Mahesh, Associate Professor Dr.V.Harsha Shastri

Abstract- Artificial Intelligence (AI) has Power-full integrated into our daily life’s ,influencing industries, homes, and personal experiences. This paper explores the opportunities and challenges associated with AI’s pervasive presence.It examines AI’s impact on various sectors, including healthcare, education, business, and transportation. Additionally, it addresses ethical concerns,privacy issues, and potential risks posed by AI-driven systems. The study aims to provide a balanced perspective on AI’s benefits and limitations.While AI enhances efficiency and decision-making, challenges remain in its responsible implementation. This paper highlights solutions for sustainable AI development, ensuring ethical and secure AI applications.

Multimodal Emotion Classification Using Machine Learning and Deep Learning
Authors:-Professor Mr. V. K. Sabari Rajan, B. Mukesh, C. Narendra, M. Shivanand, B. Ajay Kumar

Abstract- In the rapidly evolving field of artificial intelligence, emotion recognition has emerged as a pivotal area of research, with significant applications in human-computer interaction, mental health analysis, and social robotics. This project focuses on the development of a multimodal emotion recognition system capable of classifying emotions from text, audio, images, and live video. The system employs advanced machine learning algorithms tailored to each modality: BERT for text, CNN and LSTM for audio, and CNN for both images and live video frames. Each modality is designed to recognize a set of core emotions, with slight variations to account for the unique characteristics of each data type. The text module identifies emotions such as anger, fear, joy, love, surprise, and sadness, while the audio, image, and live video modules detect emotions including angry, disgust, fear, happy, neutral, and surprise. The system architecture encompasses dataset creation and preprocessing, model training, and emotion classification. User interaction is facilitated through a web interface, allowing users to input text, audio, images, or live video and receive real-time emotion classification results. This multimodal approach enhances the accuracy and robustness of emotion detection, providing a comprehensive tool for analyzing human emotions across different communication mediums.

DOI: 10.61137/ijsret.vol.11.issue2.341

Mall Customer Segmentation System for Retail Analytics and Personalized Marketing
Authors:-Dr.Prabakaran, S.M.Rafi Saddam, T.Narendra, B.Venkateswarlu, T.Venkatesu

Abstract- This paper presents a comprehensive customer seg- mentation system for retail businesses, specifically designed for shopping mall environments. Using advanced clustering tech- niques and RFM (Recency, Frequency, Monetary) analysis, we develop a robust framework for identifying distinct customer segments with similar purchasing behaviors. The system pro- cesses transactional data to create meaningful customer profiles, enabling businesses to implement targeted marketing strategies and improve customer relationship management. Our approach integrates data preprocessing, feature engineering, clustering algorithms, and interactive visualization to provide actionable insights. The implemented dashboard facilitates segment com- parison, geographical distribution analysis, and automated per- sonalized email campaigns tailored to each segment’s prefer- ences. Experimental results demonstrate the effectiveness of this approach in identifying five key customer segments with distinct behavioral patterns. The system’s practical application is validated through its ability to generate segment-specific market- ing recommendations and predict customer preferences, leading to more efficient resource allocation and potentially increased customer engagement. This research contributes to both the theoretical understanding of customer behavior modeling and provides a practical tool for retail analytics in real-world business environments.

DOI: 10.61137/ijsret.vol.11.issue2.342

AI-Powered Early Disease Prediction Using Machine Learning and Deep Learning Models
Authors:-Aryan Gampawar

Abstract- In today’s world, many people suffer from serious health problems like diabetes, heart disease, cancer, and COVID-
19. Detecting these diseases early is very important because it can help save lives and make treatment more effective. However, traditional diagnosis methods can be slow and may not always catch the early signs. To solve this problem, Artificial Intelligence (AI) is being used in healthcare. This paper discusses how AI techniques like Machine Learning (ML) and Deep Learning (DL) can help detect diseases at an early stage. These models learn from existing medical data, such as patient reports and X-ray images, and then use that knowledge to predict whether a person might have a disease. For example, a Random Forest model was able to predict diabetes with 85 We used real-world datasets and applied models like Logistic Regression, CNN, and LSTM. The models were tested and evaluated using measures like accuracy, precision, recall, and F1-score. We also used tools like SHAP and LIME to explain how the models make their predictions. In conclusion, AI can support doctors in making faster and more accurate decisions. Although there are challenges such as data privacy and understanding how the models work, AI has a bright future in healthcare and can play a big role in saving lives.

Student Council Election Portal
Authors:-Professor Bharati Bisane, Vaishnavi Rajendra Borse, Resham Sanjay Umale, Sharddha Bhagwan Borate

Abstract- Traditional paper-based voting has been used for many years, but it comes with several challenges, such as security risks, lack of transparency, human errors, and privacy concerns. To solve these issues, we propose a blockchain-based voting system for college elections. Blockchain technology is in high demand because it offers security, transparency, and decentralization. Our goal is to use blockchain to create a secure and tamper-proof election system at the college level. This system will also help developers build and deploy smart contracts, which ensure accuracy and provide quick voting results.
Smart contracts automate the voting process, making vote counting secure and preventing fraud. Blockchain stores all transactions in blocks within a decentralized network, ensuring that no single person can manipulate the results. Overall, th is system will make the voting process faster, more secure, and more reliable. It will also reduce costs since there is no need to print ballots.

DOI: 10.61137/ijsret.vol.11.issue2.343

Complaint Management System for Migrant Workers in Tamil Nadu
Authors:-MS.B.Manjubashini, Ranjithkumar S, Sevvelkaran Palani Vetrivel, Srikanth S, Jahan V

Abstract- The proposed Complaint Management System for Migrant Workers in Tamil Nadu is a digital platform designed to empower migrant laborers by providing a streamlined, accessible, and multilingual interface for registering and tracking workplace grievances. Recognizing the diverse linguistic backgrounds and socio- economic challenges faced by migrant workers, the system incorporates features such as real- time complaint tracking and automatic translation of the app interface and complaint content into the worker’s native language (e.g., Hindi, Bengali, Odia, Telugu) This user-centric platform allows workers to easily lodge complaints related to: wage disputes, unsafe working conditions, harassment, poor living standards, and other labor rights violations. Each complaint is assigned a unique tracking ID, enabling real-time status updates through a simple dashboard. The translation feature ensures inclusivity, bridging the communication gap between workers, government authorities, and employers.

DOI: 10.61137/ijsret.vol.11.issue2.362

The Impact of Personalization on E-commerce Conversion Rates: An Empirical Analysis of 100 Respondents
Authors:-Hitesh Ramdasani

Abstract- This study investigates the impact of personalization strategies on e-commerce conversion rates, examining the perceptions of 100 online shoppers. Through a simulated survey approach, the research explores the relationship between the level of perceived personalization experienced by consumers and their likelihood of making a purchase. The findings from the simulated data analysis suggest a positive correlation between higher levels of perceived personalization and increased conversion likelihood. These results underscore the importance of implementing effective personalization techniques for e-commerce businesses seeking to enhance customer engagement and drive sales.

DOI: 10.61137/ijsret.vol.11.issue2.344

Nebula Cloud: Revolutionizing Cloud Computing with AI-Driven Solutions
Authors:-Abhiraj Bondre

Abstract- That is why NebulaCloud is the new state of the art within cloud computing performance, utility and new frontiers in AI- centric workflows. optimized for AI-enabled cloud services, and scalable, intelligent, and elastic for the cloud. As the world becomes more and more AI-driven, NebulaCloud is identifying as the key to the future by offering the high-performant infrastructure serving service tailored for AI workloads that allow organizations to embrace AI, machine learning (ML), and deep learning (DL) to improve their operations, enhance decision-making and accelerate innovation This paper discusses NebulaCloud’s technology architecture, core features, competitive advantage, and transformative use cases in fields like healthcare, finance, and manufacturing. This research also emphasizes NebulaCloud’s significant contributions to the evolution of AI in cloud computing, its role in accelerating AI adoption across enterprises, and future prospects through the analysis of its architecture and market impact.

Waste-to-Energy: Innovations and Approaches in Sustainable Waste Management
Authors:-Nandini Kalange, Vaishnavi Patil, Rucha Wandhekar

Abstract- The increase in global waste generation has resulted to severe environmental and economic challenges,including land pollution, diminishing landfill space and greenhouse gas emissions. Waste-to-energy (WTE) technologies convert waste into useful energy, addressing both waste disposal and energy demand challenges. Various WTE methods, which includes incineration, anaerobic digestion, gasification, pyrolysis, and hydrothermal carbonization, offer unique advantages and drawbacks. This paper reviews existing WtE technologies in terms of economic feasibility, efficiency and environmental impact. By integrating WtE into a circular economy framework, these systems contribute to sustainable waste management, energy security, and decreases environmental degradation. However, many challenges such as high initial investment, emissions control, and public perception need to be addressed. The results demonstrate how WtE may play a significant role in waste management and sustainable urban development plans with the correct technology and legislative support . The paper highlights the importance of improved waste segregation, legal motivations, and technological improvements to promote Waste to Energy adoption globally.

AI-Inegrated Wearable Device for Mental Health Monitoring and Early Illness Detection
Authors:-Pranav Pawar, Parth Shinde

Abstract- Mental health disorders are often underdiagnosed due to lack of continuous monitoring and real-time assessments tools. Develop a wearable device integrated with AI to monitor mental health by analyzing physiological and behavioral data. This device will help to detect early signs of stress, anxiety, and depression. Our findings demonstrate that continuous monitoring using AI-driven analytics can identify subtle patterns associ- ated with mental health conditions. By detecting deviations in physiological parameters, the system effectively predicts early symptoms of stress and anxiety.The wearable device will collect real-time data using embedded sensors. AI algorithms will analyze these data points and compare them with ideal mental health indicators. A web-based interface will display results. The proposed system can diagnose mental health problems providing continuous monitoring. Reduce the burden on mental health professionals and improve patient outcomes by timely mental health assessments that rely on subjective reporting , this wearable device introduces on AI based data driven approach.

Security Challenges in Quantum Communication
Authors:-Sanyog Swami

Abstract- Rapidly evolving technology continues to reap new increases even in the world’s most remote areas. Classical physics has been at the forefront of advances in medical, energy, wireless communications, computing, and artificial intelligence technology. Traditional communication systems using classical bits are reaching their limits. Quantum technology, especially quantum bits (qubits), is a game-changing alternative with advantages in security and efficiency. This study examines the basics of quantum communication on the underlying principles, purposes, and ways to process information. It introduces a model for quantum communication systems for which examples of applications are given and challenges encountered for implementation into practical use is indicated. The future of enhanced security and efficiency of digital networks and communications will derive from quantum advances.

Embedded Intelligence: Power-up the Future of Robotics
Authors:-Saurabh Pawar, Tanvi Sonawane, Shriya Malode

Abstract-Embedded system is an important aspect of robotic development through the capabilities to facilitate AI machine learning and real-time control in robotics. The aim is to identify how embedded systems enhance robotics performance and autonomy. From the review of the existing research, it is observed that technology such as microcontrollers allows seamless sensor incorporation, low latency control, and AI decision-making. The strategy centers on how the embedded system enables robots to operate independently and effectively. An Embedded system is committed to computing systems that manage different robot parts such as sensors, actuators, and processors. Real-world applications involve autonomous robots in sectors such as healthcare, agriculture, and manufacturing where embedded systems improve accuracy and efficiency. This research emphasizes the role of embedded systems in defining the future of robotics, providing cost-effective and scalable solutions for real-world issues.

Empowering the Capability of Solar Panels using Nanotechnology
Authors:-Manasi Nitin Owhal

Abstract-Solar energy is among all the renewable energy sources, the most promising one, but due to conventional silicon- based solar panels, its Capability is limited. Reflectance, Ab- sorption,and Recombination losses are the 3 main factors that highly affect the Capability of solar panels. Therefore, there is a requirement to enhance the Capability of solar panels by exploring new technologies. Develop improved light absorption and charge carrier collection nanostructured solar cells, also investigate and evaluate the effects and potential of nanostruc- turing on the properties of solar panels, such as optical and elec- trical. Nanostructuring techniques include nanolithography and nanoimprint lithography. Software packages such as COMSOL and Sentauru can be utilized to simulate nanostructured solar cell properties like optical and electrical. Results in higher quantum efficiencies, optical properties like reflectance and transmittance, were significantly improved. By enhancing the Capability of commercial solar panels, nanostructuring of solar cells can be utilized. This can lead to a reduction in the cost, making it more competitive with fossil fuels. Effects of nanostructuring on the optical and electrical properties of solar cells, which outcomes in new insights of the mechanisms, focusing on the enhanced Capability of nanostructured solar cells.

Dynamic Wireless Charging Using Inductive Power Transfer System for Electric Vehicle
Authors:-Yash Sonawane, Hrishikesh Saindane, Rudrakash Chaudhari

Abstract-The rapid global transition towards sustainable transportation has intensified the demand for efficient and convenient charging solutions for electric vehicles (EVs). Wireless charging, particularly through Inductive Power Transfer (IPT), has emerged as a revolutionary alternative to conventional plug-in systems, eliminating physical connectors and enhancing user convenience. IPT operates on the principle of electromagnetic induction, enabling seamless energy transfer between a stationary charging pad and a vehicle-mounted receiver coil. This technology not only mitigates range anxiety by enabling dynamic and stationary charging but also enhances system longevity by reducing mechanical wear and tear. This paper explores the fundamental principles, system architecture, and advancements in high-efficiency resonant inductive coupling for EV wireless charging. It further examines the challenges associated with misalignment, energy transfer efficiency, electromagnetic interference, and standardization. Additionally, integration with smart grids, renewable energy sources, and bidirectional power flow for vehicle-to-grid (V2G) applications is discussed to highlight the future potential of IPT in creating a sustainable EV ecosystem. Through a comprehensive analysis of recent advancements and real-world implementations, this study aims to provide valuable insights into the feasibility, performance optimization, and scalability of wireless charging for the next generation of electric mobility.

Scheduling the Complexities in Semiconductor Manufacturing with Solution Techniques and Challenges in Future
Authors:-Onkar Sapkal, Bhavesh Pokale, Samrudhi Samarth

Abstract-In semiconductor manufacturing, errors in schedul- ing can cause delayed productions, extra costs, and low through- put. In semiconductor manufacturing, scheduling operations is very complex, dynamic, and needs to meet a variety of quality requirements. The present paper is aimed at discussing the problems, investigating advanced solution techniques, as well as highlighting the challenges in the scheduling manufacturing oper- ations of semiconductor in the future. The main focus contains the delays in production stages, impact of downtime for equipment, as well as the need for real-time adaptability. Promising options contains AI-based algorithms, predictive analytics, and hybrid scheduling frameworks. A comprehensive review of literature as well as case studies is conducted, highlighting the existed methodologies, their effectiveness, and gaps in current research. Such insights from this work would guide manufacturing compa- nies in optimizing the scheduling process to increase operational efficiency and maintain quality. By systematic review of the scheduling arena in semiconductor manufacturing, this study opens doors for futuristic solutions and research.

Real-Time Health Monitoring using Wearable IoT Devices
Authors:-Prathamesh Thakre, Mayur Dhumal, Krishna Thakre

Abstract-The rising prevalence of chronic conditions such as cardiovascular disorders and respiratory diseases has under- scored the need for continuous health monitoring. This research aims to develop and evaluate a real-time health monitoring system using a wearable IoT device. The proposed system integrates biomedical sensors, a microcontroller ESP32 ,MAX30100 Pulse Sensor,DS18B20 Temperature Sensor and a wireless communica- tion module to transmit real-time health data to a cloud-based platform. The system can provide early alerts in emergencies, as- sist healthcare professionals, and support further advancements in wearable technology. By ensuring accurate health tracking and efficient data handling, this approach represents a step forward in next-generation digital healthcare solutions.

IOT Based Baby Cradle Monitoring System
Authors:-Mrunal Pawar, Aman Pawar

Abstract-Traditional baby cradles require constant supervision making it difficulty for parents to balance child care daily task existing monetary solution provide limited automation and real time feedback this research propose on IOT based cradle system that integrate sensor to monitor babies movement crying temperature and humidity the purpose of the story is to development creditor that monitor keep parameter such as temperature humidity motion and crying better than using IO tea sensor this system automatically at least parents we are mobile application and provides real time monitoring and data analysis the methodology in in hall designing of prototype integrate with sensor a microcontroller and wireless communications like balancing or Atlas notification and transmits information to a cloud base platform for remote monitoring experiment finding demonstrate the systems effectiveness in detecting impact district regulating cradle motion and maintaining optimal environmental condition practical implementation shows that the system can significantly reduce parental workload while improving in fact safety and comfort this research contribute original value by proposing and IOT enable solution for intelligent cradle monitoring integrated automation and remote accessibility.

Autonomous Weed Cutter Using Raspberry PI and Image Processing
Authors:-Rajesh Sonavane, Praneet Parbhane, Swanand Sarvadnya

Abstract-Traditional method of weed removal requires a lot of human efforts or sometimes requires a lot of chemical pesticides which may decrease the fertility of soil and this reduces crop productivity. The purpose of this method is to use advanced technologies like machine learning, image processing and cutting mechanism to remove weed or unused plants without damaging the main crop. By suing process like Raspberry Pi over other controllers, we can reduce time delay for image processing and this removing weed in less time. The Raspberry pi camera captures the images of field and then by using image processing we can distinguish a crop and a weed/unused plant. this provides precise and exact coordinates of the weed thus by using navigation or GPS module we can navigate our robot to the precise location of weed and we can execute further cutting process of weed. This method will be used to reduce manual labor, increasing crop yield and health also it prevents accidental crop damage, unlike mechanical weeders. This technology offers precise weed removal without using human efforts and without impacting the soil fertility.

Performance Analysis of STATCOM with Fuzzy-PI Controller in Power System Network
Authors:-Indrajeet kumar, Professor Ashish Kumar Rai

Abstract-This paper presents the design and implementation of a hybrid fuzzy logic and Proportional-Integral (PI) control scheme for a Static Synchronous Compensator (STATCOM) aimed at enhancing power system stability. A power frequency model of the STATCOM is proposed, and Fuzzy-PI controllers are developed for both the main and supplementary control loops. The primary Fuzzy-PI controller ensures constant voltage regulation, while the supplementary controller effectively damps inter-area oscillations. The integrated STATCOM model, including the hybrid controllers, is implemented within a conventional transient stability simulation framework. Simulation studies on a four-generator power system demonstrate that the Fuzzy-PI-controlled STATCOM delivers performance comparable to a well-designed conventional controller, confirming its effectiveness and robustness in stabilizing the system

A Machine Learning Approach to Heart Disease Prediction: 5-Fold Cross Validation and Hyperparameter Optimization
Authors:-Dr.N.Chandrasekhar

Abstract-The primary objective of this research is to develop an effective predictive model for heart disease using various Machine Learning (ML) algorithms. In this study, four different ML models—Gradient Boosting (GB), Random Forest (RF), LightGBM (LGBM), and AdaBoost (AB)—were implemented and evaluated for their prediction accuracy. To ensure the reliability and generalization of the models, 5-fold cross-validation was applied along with Grid Search Cross Validation (Grid Search CV) for hyperparameter tuning. This technique helped in identifying the optimal parameters for each algorithm, thereby improving their performance. Among all the models, Gradient Boosting achieved the highest accuracy of 95.08%, followed by Random Forest and LightGBM, both with 91.80%, and AdaBoost with 90.16%. These results highlight the effectiveness of ensemble-based ML models, particularly Gradient Boosting, in accurately predicting the risk of heart disease.

DOI: 10.61137/ijsret.vol.11.issue2.345

Evaluating the Impact of ABS on Road Safety with a Data-Driven Approach to Reducing Accidents
Authors:-Abhijit Mohite, Ganesh Matole, Ketan Patil

Abstract-Road accidents are a major global concern, often resulting from the loss of control during emergency braking. While ABS (Anti-lock Braking System) enhances control, some studies suggest it may not significantly reduce overall crash rates. This research aims to evaluate the impact of ABS on accident reduction by statistically analyzing crash data. The objective is to determine whether ABS-equipped vehicles experience fewer accidents, particularly under adverse conditions, and to assess its role in enhancing road safety.

AI in Finance: Challenges, Techniques, and Opportunities
Authors:-Piyush Takalkar, Sujit Sherkhar, Chirag Shrigod, Umar Shaikh, Punashri Patil

Abstract-The use of Artificial Intelligence (AI) in banking has significantly grown in the recent past, transforming some of the most important processes in banking, investment, insurance, and regulation. As financial information becomes more complex and gigantic, AI methods provide solutions to issues like fraud detec- tion, credit scoring, algorithmic trading, and risk management. This blending, nonetheless, comes with emerging issues of trans- parency, equity, interpretability, data privacy, and regulatory harmonization. This book provides an extensive overview of AI in finance, considering traditional and contemporary strategies, and identifies new research areas and trends with a focus on domain-specific, ethics-oriented, and explainable AI models of top concern.

Next-Gen Health Solutions
Authors:-Assistant Professor Priti Bharambe, Vikas Mahandule, Shraddha Phulsundar, Priti Aivale, Shivanjali Shinde

Abstract-The integration of Information Technology (IT) in healthcare has transformed patient care, data management, and operational efficiency. This paper explores the role of IT solutions in enhancing healthcare delivery, focusing on electronic health records (EHRs), telemedicine, artificial intelligence (AI), and blockchain technology. IT innovations facilitate real-time data sharing, improve diagnostic accuracy, and enable remote patient monitoring, thereby increasing accessibility and reducing costs. Despite significant advancements, challenges such as data safety, compatibility, and ethical concerns persist. This study examines both the advantages and limitations of IT-driven healthcare, proposing strategies to optimize its implementation. By leveraging technology effectively, healthcare systems can enhance patient results and overall efficiency, clearing the path for a more connected and intelligent healthcare ecosystem.

DOI: 10.61137/ijsret.vol.11.issue2.346

Ai-Driven Facial Health Analysis Using Deep Learning and Gemini Llm
Authors:-Shivansh Rajbhar, ManuKumar Yadav, Raj Padval, Professor Manisha Hatkar

Abstract-A promising non-invasive method for evaluating dermatological disorders and determining general wellness is facial health analysis. This study introduces a new AI- powered facial health analysis system that combines the Gemini large language model (LLM) for individualized health interpretation with deep convolutional neural networks (CNNs) for image-based categorization. Real-time or uploaded face picture capturing is done by the system, which then uses OpenCV and dlib to identify landmarks before feeding the data into a transfer learning pipeline that uses the ResNet and VGG architectures. Classification results are converted into natural language health reports using the Gemini API. Real-time health insights are made possible by the solution’s deployment using Flask and Streamlit. Tests conducted on a carefully selected dataset showed that the system could detect common facial health issues with up to 92.1% accuracy, such as acne, dryness, redness, or pigmentation. This multidisciplinary approach has promise for tracking personal wellness, telemedicine, and preventative healthcare.

Disease Prediction Model Using Multi-Modal Data Fusion
Authors:-Shruti Deokule, Dipti Kause, Suhani Korde, Suhani Korde

Abstract- With recent developments in machine learning and healthcare informatics Strong disease prediction models have been made possible . In order to improve the accuracy and dependability of early disease diagnosis, we present a multi-modal data fusion system in this paper. Advanced fusion techniques that can lessen the drawbacks of single-modality models are used to integrate heterogeneous data sources, such as wearable sensor readings, genomic data, medical images, and electronic health records (EHR). Our method integrates crucial information from multiple datasets by combining feature selection, preprocessing, and ensemble learning. In comparison to the traditional models, we find that the experimental results produce 15% higher prediction accuracy and lower error rates—down to 2.3% for cases of chronic disease.

href=”https://doi.org/10.61137/ijsret.vol.11.issue2.351″>10.61137/ijsret.vol.11.issue2.351

Company Inventory Management System Using Appian
Authors:-Balaji S, Dr. Krithika. D. R

Abstract- The product in every company decides the availability of resources according to the user needs. Each product must be useful to the user in certain ways to decide as per the demands. This paper speaks about how the products are handled by different departments from storage team to user by choosing the control of each product for the supply and flow in a company. This paper also conveys that this will tell all the activities happens in a single company for deciding how the storage team is very important in storing the products, each team decides the product supply to make it useful for users. When a product gets requested by user it must be decided by the team to inform the availability. The communication mechanism in this application is very useful in understanding the entire system by each team very easily. So, every activity in this application completely named as Inventory to explain about the management of this application.

DOI: 10.61137/ijsret.vol.11.issue2.352

The Comparative Analysis on Old Lanour Laws with New Labour Codes
Authors:-Majitha. A

Abstract-The Labour regulations in India has experienced a vital transformation with the introduction of New labour codes which aimed at simplifying the complexity and inadequate to function in this digital India. Empowering the worker’s life is essential for building a autonomy, thriving, and empowered India. It has been over 73 years since we got independence, approximately 90% of the workers working under the unorganised sector, they all are lacked access to basic social security benefits. The Government of India has done extraordinary job by enacting the four labour codes by consolidating the existing labour laws in central level. This research paper focuses on the significant changes which have been initiatives by the new codes this can be analyied by doing comparative analysis on old labour laws with new labour codes. This paper focus on impacted party such as unorganised sector, gig workers, platform workers. This paper uses the doctrinal methodology to analyse and collect data. And this paper overview the background of labour laws in India and need for labour reforms and transformation of four labour codes and short summary of four new codes and suggestion.

AI in Cloud Computing: Enhancing Efficiency, Scalability, and Intelligence in Modern Infrastructure
Authors:-Tushar Gajbhiye, Dr. Meenakshi Thalor

Abstract-This study delves into the incorporation of Artificial Intelligence (AI) in cloud computing infrastructure, investigat- ing its revolutionary effect on scalability, performance tuning, cost savings, and security. A comparative quasi-experimental approach was adopted, comparing two groups of users—AI- optimized cloud systems and conventional cloud systems—on parameters like processing latency, cost savings, and user ex- perience. Findings show a 30% boost in processing efficiency and outstanding improvements in dynamic resource management using AI-based orchestration. These findings emphasize AI’s role in transforming static cloud infrastructures into intelligent, self- optimizing ecosystems suitable for diverse application domains.

AI in Finance: Challenges, Techniques, and Opportunities
Authors:-Piyush Takalkar, Sujit Sherkhar, Chirag Shrigod, Umar Shaikh, Punashri Patil

Abstract-The use of Artificial Intelligence (AI) in banking has significantly grown in the recent past, transforming some of the most important processes in banking, investment, insurance, and regulation. As financial information becomes more complex and gigantic, AI methods provide solutions to issues like fraud detec- tion, credit scoring, algorithmic trading, and risk management. This blending, nonetheless, comes with emerging issues of trans- parency, equity, interpretability, data privacy, and regulatory harmonization. This book provides an extensive overview of AI in finance, considering traditional and contemporary strategies, and identifies new research areas and trends with a focus on domain-specific, ethics-oriented, and explainable AI models of top concern.

An Artificial Intelligence-Focused Smart Infrastructure Management Framework for Urban Cities with the Integration of Computer Vision and Predictive Analytics
Authors:-Shriya Naphade, Piyush Panchmukhe, Assistant Professor Mrs. Anuja Phapale

Abstract-With the rapid growth of cities, there is a growing need for smart and effective infrastructure management systems. This paper presents an all-encompassing AI-based solution for solving the complex issues of urban infrastructure management in smart cities. Relying on the strengths of computer vision, predictive analytics, and the Internet of Things (IoT), the system offers real-time monitoring and proactive decision-making. Through the examination of live video feeds and real-time streams of sensor data, the system can effectively determine the structural health of main urban infrastructure like roads, bridges, and public utilities. It automatically identifies visual anomalies in the form of potholes, surface cracks, traffic con- gestion, and material degradation through Convolutional Neural Networks (CNNs). Concurrently, Long Short-Term Memory (LSTM) models examine temporal patterns in sensor readings to predict future wear and calculate maintenance needs with high accuracy.

Image Fusion of MRI and CT Scan for Brain Tumor Detection Using VGG-19
Authors:-Professor Kirti Digholkar, Shreyas Depura, Adwait Mali, Vedant Latthe, Rohan Patil

Abstract-For a patient’s prognosis, the careful examination of image bio-analytics, including Magnetic Resonance Imaging (MRI) and Computed Tomography (CT) imaging, is crucial for the patient’s tumor detection. Moreover, interpreting these images manually remains challenging owing to the required expertise and time needed to properly analyze the images. To address this issue, we propose an image improvement model that enhances the accuracy of MRI and CT scans using Wavelet- based fusion and the VGG-19 architecture. Image fusion, or the merging of medical images, synergistically uses and adapts the various modalities’ strengths and weaknesses. In our research, we apply the Wavelet approach to MRI and CT images by splitting them into frequency sub-bands. Structural details are important for the image’s low-frequency LL band. The VGG- 19 network which consists of several convolutional layers and pooling layers is then used to merge the LL bands and form the fused images. Our method undergoes a series of preprocessing, feature extraction, and fusion stages on brain MRI and CT scans. This method saves time for medical practitioners and enables efficient tumor identification through automation, improving the overall quality of patient care.

DOI: 10.61137/ijsret.vol.11.issue2.347

System to Check the Healthiness of the Earthing System and Alert Staff in Case of Malfunction
Authors:-Deepak Pal, Arun Kumar Singh, Md. Tahir, Mohd. Zaid, Assistant Professor Kishan Kumar

Abstract-This paper presents an IoT-based system for detecting faults in underground cable earthing using an ESP32 microcontroller unit and a soil moisture sensor. The system monitors soil moisture levels around the earthing rod to ensure proper conductivity. Variations in soil moisture can lead to earthing inefficiency, posing safety risks. Earth faults are not only by far the most frequent of all faults, but the fault currents may be limited in magnitude by the neutral earthing impedance, or by the earth contact resistance which makes detection challenging for conventional protection schemes. Currently, normal earth fault protection together with sensitive earth fault protection has been employed in both distribution networks to detect and clear earth faults. There have been incidences where earth fault detection has been extremely challenging as fault values drop significantly and the protective device does not have sensitivity to detect and isolate the faulty equipment. The earth resistance is detect by moisture of earth using moisture sensor Real-time data acquisition, wireless transmission, and alerts help in preventive maintenance of earthing systems, particularly in rural or inaccessible areas. Experimental results show that this system is reliable, low- cost, and scalable for smart grid applications.

Harnessing Computer Vision for Precision Agriculture: Advancements in Crop Monitoring, Yield Prediction, and Disease Identification
Authors:-Swaraj Kawade, Anurag Kawade, Rohit Kashid, Aditya Jedhe, Rajdeep Jagtap

Abstract-The use of modern technologies such as computer vision and artificial intelligence individually or in tandem are modifying farming methods. These technologies are assisting in agricultural practices as the world population is expected to peak at 9.7 billion by 2050. The objective of this paper is to analyze major advancements within the years 2020 to 2024 regarding the role of computer vision in agriculture, specifically in crop health monitoring, yield prediction, and early detection of plant diseases. Some impressive progress includes: Autonomous weed management systems with 96% accuracy (Praveenraj et al., 2024). Near 99% accuracy in crop yield predictions from machine learning models (Sharma et al., 2023). Deep learning algorithms correctly identifying plant diseases at a rate of 99.35% (Li et al., 2021). Additionally, the development of autonomous vehicles has contributed to safety within agricultural fields, while AI image generation contributes to predicting potential yield imagery, along with real-time field monitoring robotic systems. These developments are positive strides towards sustainable agriculture. On the other hand, these systems always carry limitations like dealing with dynamic field conditions, insufficient amounts of data, and the need for high-end processing units. This paper evaluates the advancement to date, what it means in terms of practical agriculture, and how we can further progress:

DOI: 10.61137/ijsret.vol.11.issue2.348

AI-Powered SQL Assistant: Transforming Natural Language into Optimized SQL Queries
Authors:-Atharv Deshmukh, Manali Gawade, Ronit Fulari

Abstract-Databases have a steep learning curve, littered with schema design, SQL di- alects, and performance optimizations. Formulating efficient SQL queries is a chal- lenging process to tinker with, and this is one of the reasons many developers and analysts are blocked. Here we present an AI-based SQL Assistant that utilizes cutting-edge AI models to transform natural language requests into fast SQL code. It lives on top of a variety of SQL dialects, including Spark SQL, PostgreSQL, and MySQL, and provides schema suggestions and smart executor queries. It can use a feedback loop with machine learning methods to improve performance after the sys- tem is deployed based on users adapting the system to query patterns. We provide experimental evidence to show that the proposed solution not only improves query performance and execution time but also accuracy so that the database interactions are smooth for non-experts.

DOI: 10.61137/ijsret.vol.11.issue2.349

Optical Mark Recognition (OMR) MCQ Automated Grading
Authors:-Rushikesh Patil, Parwez Nadaf, Assistant Professor Dr. Zalte S.S.

Abstract-This paper presents the development and implementation of an Optical Mark Recognition (OMR) system designed to automate the grading of Multiple-Choice Questions (MCQs) using a laptop’s built-in webcam. The purpose of this research is to address the inefficiencies and inaccuracies associated with traditional manual grading methods by using advanced image processing techniques when conducting physical examinations. The system utilizes the powerful OpenCV and NumPy libraries for image processing and mathematical operations, ensuring precise and efficient analysis of MCQ answer sheets. The methodology involves capturing images of MCQ sheets through either a live webcam feed or static image files, which are then resized to a standard resolution. Key pre-processing steps include grayscale conversion, Gaussian blurring, and Canny edge detection to identify and analyse the marked answers. Advanced contour analysis is employed to detect the boundaries of the MCQ and answer boxes, followed by perspective transformation to flatten the image for detailed examination. The extracted answers are then compared against a predefined answer key to calculate scores, which are visually represented on the marked image. The findings demonstrate the system’s accuracy and efficiency in grading MCQs, significantly reducing the time and effort required for manual grading. The system provides immediate feedback, highlighting correct answers in green and incorrect answers in red, along with the total score. The results are documented and saved, facilitating performance tracking and feedback. In conclusion, this OMR system offers a cost-effective and accessible solution for educational institutions, enhancing the grading process by providing immediate and reliable results. This research contributes to modernizing educational assessments, promoting a more interactive and engaging learning environment.

Wind Turbine Technology for Environmental Sustainability
Authors:-Mohit Patil, Mohit Patil, Sujal Makote

Abstract-The increasing request for renewable power has brought focus on the efficiency and sustainability of wind turbine technology. One of the biggest problems in the acceptance of wind power is grid, integration and variation of power which causes voltage instability, frequency variations and challenges in synchronizing wind energy with current Electrical grids further, the study purpose regarding grid integration to enhance efficiency, stabilize power output and decrease ecological footprint of wind energy systems. AI predicted a power conditioning system as major progress in enhancing grid integration and mitigating power fluctuations. The course of action of the studies includes an exam grid, integration and power fluctuations using data analysis, case studies and simulations, accessing smart grades, energy storage, and power control for announce stability for policy Makers and engineers or energy firms. There is a challenge for investment in intelligent grades, enhance power regulation, methods of wind forms for maximum stability and efficiency. The outcomes are secure Wind energy, stable and efficient, enhanced synchronization, storage and forecasting, improves grid resilience and speed up renewable uptake.

Enhancing User Comfort in Virtual Reality: A Biofeedback-Driven Adaptive Rendering Framework
Authors:-Raunak Khandare, Aniket Satpute, Arsh Shaikh

Abstract-Virtual Reality (VR) systems have shown immense potential across various fields, including healthcare and educa- tion. However, user discomfort caused by latency and motion sickness remains a significant barrier to widespread adoption in prolonged use. This study introduces a novel framework that dynamically adapts to user physiological responses, thereby minimizing discomfort and improving the overall VR experience. A user study involving 50 participants was conducted to evaluate the effectiveness of the proposed system compared to traditional systems. Findings indicate a significant reduction in user-reported discomfort and a 40% improvement in latency performance, demonstrating the effectiveness of biofeedback-driven adaptive rendering. The methodology involves the design and imple- mentation of a biofeedback-enabled VR system that monitors user physiological signals, such as heart rate and galvanic skin response, in real time. These signals are used to adjust rendering parameters, such as frame rate and field of view, to mitigate motion sickness and latency. The practical implementation of this research is far-reaching, as it enables more user-friendly VR systems suitable for prolonged use in therapy and training. The originality of this work lies in its unique combination of biofeedback and adaptive rendering, offering a novel solution to a long-standing problem in VR technology and enhancing the user’s experience.

Smart Dustbin Using Machine Learning
Authors:-Awej Fardin, Yusuf Amravatiwala, Faiz Mallick, Hamza Bartanwala, Assistant Professor Qudsiya Naaz

Abstract-Smart Dustbin Using Machine Learning for Waste Segregation and effective waste management. The Smart Dustbin uses machine learning (ML) to automatically classify and segregate waste into three categories: recyclable, biodegradable, and non- biodegradable. The system integrates sensors and image recognition technology to analyze waste materials in real-time, ensuring accurate categorization. The smart dustbin employs a trained ML model that processes data from sensors and cameras to identify the type of waste.

The Comparative Analysis on Old Lanour Laws with New Labour Codes
Authors:-Majitha. A

Abstract-The Labour regulations in India has experienced a vital transformation with the introduction of New labour codes which aimed at simplifying the complexity and inadequate to function in this digital India. Empowering the worker’s life is essential for building a autonomy, thriving, and empowered India. It has been over 73 years since we got independence, approximately 90% of the workers working under the unorganised sector, they all are lacked access to basic social security benefits. The Government of India has done extraordinary job by enacting the four labour codes by consolidating the existing labour laws in central level. This research paper focuses on the significant changes which have been initiatives by the new codes this can be analyied by doing comparative analysis on old labour laws with new labour codes. This paper focus on impacted party such as unorganised sector, gig workers, platform workers. This paper uses the doctrinal methodology to analyse and collect data. And this paper overview the background of labour laws in India and need for labour reforms and transformation of four labour codes and short summary of four new codes and suggestion.

Thermal Analysis of Engine Fins with Different Geometries and Materials
Authors:-Rajat Yadav, Assistant Professor S.N. Dubey

Abstract- In order to make the engine cylinder fins design simpler, CFD (Computational Fluid Dynamics) is used to analyze the thermal and mechanical behavior of the engine cylinder fins. In CFD, the heat transfer and pressure drop characteristics of the engine cylinder fins can be accurately predicted. This helps in understanding the performance of the engine cylinder fins and helps in making necessary modifications to improve the heat dissipation rate. Additionally, CFD can also be used to analyze the airflow characteristics and pressure distribution inside the engine cylinder. This helps in designing the fins properly to reduce the aerodynamic drag and improve the efficiency of the engine. The purpose of this article is to analyze the thermal properties of cylinder fins with different geometries using Ansys Workbench. The geometries were 3D modeled using SOLIDWORKS 2016 and their thermal properties were evaluated using Ansys Workbench R 2016. The change in temperature over time is an important factor in many applications, such as refrigeration, and accurate thermal modeling can help. You determine the key design parameters to improve performance. , The cylinder fin body material is AA 6061 aluminum alloy with a thermal conductivity of 160-170 W/mK. This material is used for current analysis of cylinder ribs.

Genetic Algorithm for Optimum Result Using Chromosom in Data Mining
Authors:-Dr. Divya Sakhuja

Abstract-Information or data are considered as elementary variable facts. Knowledge is considered as a set of instructions, which describes how these facts can be interpreted and use[1]. The proposed algorithm provides the result in quick period and only adds the data in result which are important data set. The proposed algorithm reduces that data set those have very less support and confidence. They produce the result graph in very attractive way. The algorithm has two parts, the first part perform the data mining algorithm and reduces the unwanted data sets and then perform the genetic operation from obtained results and then finally conclude the common properties of attributes. The genetic algorithm takes attributes 10th overall percentage, Distinction of two subjects on 10th results, area, income and parents’ occupations. They execute the genetic operation and find out the common features from them and conclude the results. An advanced learning method using a combination of perception and motion has been introduced. Emergent, self-organizing, reflective, and interactive (among human beings, environment, and artificial intelligence) knowledge processing is considered by using soft computing and by borrowing ideas from bio-information processing [2].

AI-Based Crime Scene Simulation through 3D Image Processing and Semantic Segmentation
Authors:-Om Hajare, Dr Meenakshi Thalor

Abstract-Crime scene simulation (CSS) technology has reached efficiency to need more innovation and great breakthroughs, but also the need for precision. AI-based approaches provide promise by coupling 3D image processing with semantic segmentation in order to support forensic analysis. Existing research has challenges such as, poor generalization computational inefficiency, and dataset diversity. We suggest a new framework using state-of-the-art AI algorithms to bridge these gaps. Our method integrates semantic segmentation for object classification and 3D imaging to produce high-resolution spatial Simulations. In contrast to previous research, our approach emphasizes real-time processing and flexibility across various crime scenes. This paper describes the methodology, compares existing works, and identifies future potential.

Startup Valuation Methods in the Gig Economy Era: Effectiveness and Challenges
Authors:-Om Hajare, Dr Meenakshi Thalor

Abstract-The gig economy has transformed traditional business models, introducing complexities in startup valuation. Unlike conventional businesses, gig startups rely on digital platforms, network effects, and scalable yet volatile revenue streams. This study critically examines traditional valuation methods—Discounted Cash Flow (DCF), Comparable Company Analysis (CCA), and the Venture Capital (VC) method—and their effectiveness in assessing gig startups. Challenges such as regulatory uncertainties, high user acquisition costs, and fluctuating profitability are analyzed. The paper proposes adjustments to valuation frameworks, incorporating factors like platform dependency, user engagement, and AI-driven predictive analytics. Understanding these challenges is crucial for investors and policymakers to enhance financial decision-making in this evolving landscape.

Sentiment Analysis on Social Media
Authors:-Mr.Shahbaz Ahmad, Assistant Professor Ms.Noorishta Hashmi, Assistant Professor Mr.Ehteshaam Hussain

Abstract-The rise of social media platforms has revolutionized communication, enabling individuals to share opinions, emotions, and experiences in real-time. With billions of users generating vast amounts of unstructured data daily, social media has become a rich resource for understanding public sentiment and social behavior. Sentiment analysis, a subfield of natural language processing (NLP), offers a computational approach to identifying and categorizing sentiments expressed in text data. This research focuses on the development and application of sentiment analysis techniques to analyze user-generated content on platforms such as Twitter, Facebook, and Reddit. By utilizing machine learning, lexicon-based methods, and deep learning approaches, this study aims to assess the effectiveness of various sentiment classification models. Techniques including Support Vector Machines (SVM), Naïve Bayes, Long Short- Term Memory (LSTM) networks, and BERT are evaluated using benchmark datasets. The paper also addresses the challenges inherent in sentiment analysis, such as sarcasm, slang, multilingual content, and data imbalance. The results demonstrate that context-aware models like BERT significantly outperform traditional approaches in detecting nuanced sentiments. The findings of this research have applications in fields such as brand monitoring, political analysis, customer feedback evaluation, and disaster response. Furthermore, the study emphasizes the ethical implications of mining and analyzing social media data, advocating for transparency, consent, and responsible data handling. Sentiment analysis, also known as opinion mining, has emerged as a critical tool in natural language processing (NLP) for extracting subjective information from social media platforms. The exponential growth of user-generated content on platforms such as Twitter, Facebook, and Instagram has made sentiment analysis indispensable for businesses, governments, and researchers seeking to understand public opinion, brand perception, and emerging trends. This paper provides a comprehensive review of sentiment analysis techniques, challenges, and applications in the context of social media, while also discussing future research directions to enhance accuracy and scalability.

DOI: 10.61137/ijsret.vol.11.issue2.353

Predictive Modelling of Stock Market Prices Using Machine Learning Web App
Authors:-Akanksha Bhagwan Bangar, Dr. Santosh Jagtap

Abstract-The stock market is a dynamic environment influenced by numerous factors, making the prediction of stock prices a challenging yet critical task. Traditional methods often fall short due to the complex and volatile nature of financial markets. This project focuses on developing a machine learning-based web application for predicting stock prices, leveraging advanced algorithms to identify hidden patterns within historical data. The core of the application is built on the Long Short-Term Memory (LSTM) network, a specialized form of Recurrent Neural Network (RNN) designed for time series forecasting. LSTM networks excel in capturing long-term dependencies in sequential data, making them highly effective for financial predictions where past trends influence future movements. The model processes historical stock price data, analyzing trends, fluctuations, and patterns to predict future prices with a higher degree of accuracy. By maintaining an internal state, the LSTM can retain valuable information over time, providing robust forecasting capabilities. The web application offers an interactive interface where users can input stock symbols and view predicted price trends alongside real-time data. This feature enhances user engagement and decision-making processes, aiding investors in strategic planning. The project not only demonstrates the potential of machine learning in finance but also highlights the integration of predictive models into practical applications. The successful implementation of this system could contribute to more informed investment decisions, potentially yielding significant profits.

DOI: 10.61137/ijsret.vol.11.issue2.354

Consumer Behavior Analysis on Sales Process Model Using Process Discovery Algorithm for the Omnichannel Distribution System
Authors:-Professor Mr. S.Naresh Kumar Reddy, K.Karthik, K.Namratha Daisy, S.Divya Sree, S.Anshu

Abstract-Currently, OMNI channel distribution services are experiencing very rapid development around the world. In the OMNI channel distribution services, each existing sales channel will be connected to each other through integration capabilities.This is able to provide the best experience for consumers when shopping both online through mobile devices, laptops, and in physical stores. On the one hand, it facilitates the marketing process, but on the other hand, business people have difficulty reading the behavior of consumers who use OMNI channel distribution services.In this project, an experiment was carried out using the sales event log dataset generated from the OMNI channel distribution service system. Service channels used are Marketplace, Web Store, Social Media, and Social Media Shop. Sales process modelling is generated using the Inductive Miner Algorithm, Heuristic Algorithm, Alpha Miner Algorithm and Fuzzy Miner AlgorithmThen the next step is to measure the process model obtained by Conformance Checking. The purpose of process modeling and measurement is to obtain a sales process model that can predict consumer behavior patterns well.

DOI: 10.61137/ijsret.vol.11.issue2.355

AI Based Chatbot for Collating and Dissemination of Information on Groundwater
Authors:-Salandhri Shivani Yadav, Pantham Tharun Kumar

Abstract-This project’s objective is to develop an AI-based chatbot that can collect and deliver comprehensive groundwater information to users, including government officials, researchers, farmers, and the general public. In addition to being necessary for domestic, commercial, and agricultural operations, groundwater is also necessary for sustaining life. Despite its importance, obtaining groundwater-related data remains challenging and scattered, especially for non-technical users. This work presents the development of an AI-based chatbot system that simplifies the dissemination of groundwater information using an interactive, natural language interface. Users may get location-specific information about hydrogeological conditions, water quality indicators, water level scenarios, and available technical reports through the chatbot, which was created with a Flask-based backend and a React frontend. By utilizing fuzzy string matching and structured JSON data to handle imprecise searches, the system enhances accessibility and usability. It also makes it easier to create comprehensive groundwater extraction regulations, report downloads, and summaries. By offering a faster and more convenient method of obtaining data than is currently feasible, the chatbot aims to bridge the knowledge gap between users and publicly available groundwater data. Preliminary testing shows that the system is accurate, responsive, and reliable, indicating that it has a lot of potential for usage in administrative and instructional settings pertaining to water resource management.

DOI: 10.61137/ijsret.vol.11.issue2.356

Home Loan Prediction Using AI and Machine Learning
Authors:-Professor Mrunali Jadhav, Professor Shubhkirti Bodkhe, Mohit Niwant

Abstract-The home loan industry is crucial for the economy as it enables people to buy homes and invest in property. However, lenders often find it challenging to assess the trustworthiness of loan applicants, which can lead to financial losses if borrowers default. This research paper explores how artificial intelligence (AI) and machine learning (ML) can improve the prediction of home loan approvals. We analyze a dataset containing applicant information, such as income, credit score, and employment status. We evaluate several machine learning models, including Logistic Regression, Decision Trees, and Random Forest, to determine which is most effective for predicting loan approval.

AI-Driven Disaster Response
Authors:-Shrija Salian, Ayush Jha, Ramesh Kumawat, Manisha Phulpagare, Ms. Shradha Chaudhari, Dr. Nandini C. Nag

Abstract-Natural disasters such as floods, earthquakes, and wildfires cause significant loss of life and property. Timely detection and response are crucial for effective disaster management. This paper explores the use of artificial intelligence AI) and machine learning ML) techniques, specifically the VGG16 convolutional neural network CNN, for disaster detection and classification. By leveraging image classification capabilities, the proposed system aims to enhance disaster management workflows. Experimental results demonstrate that VGG16 achieves high accuracy in classifying disaster-related images, outperforming other models such as ResNet50 and InceptionV3. This study highlights the potential of AI-driven solutions in improving disaster preparedness and response strategies.

IoT-Based Electricity Theft Detection System
Authors:-Mohammad Gulrez Zaidi, Deepanshu Punj, Moseen Khan, Ms. Jyoshita Narang

Abstract-Innovative solutions for various industries have been developed as a result of the proliferation of Internet of Things (IoT) devices. IoT has the potential to completely change how electricity is produced, transmitted, and used in the electricity sector. The use of IoT for detecting and preventing electricity theft is one such application. Meter tampering, also known as electricity theft, is a significant problem that affects the revenue and profitability of electricity boards. It entails circumventing meters in an unlawful manner in order to use electricity without paying for it. This not only costs government’s money, but also puts consumers and the electricity grid in danger of injury or damages. In this project, we propose creating an IoT-based system to track down and stop electricity theft. Smart meters with sensors and communication capabilities make up the system, along with a central server for data processing and analysis. Electricity consumption patterns are continuously monitored by smart meters, which also send data to a central cloud-based database. The database values are utilized by the authorities when it discovers anomalies or suspicious activity upon close monitoring of the data stored in real-time. The proposed system could significantly lower the number of instances of electricity theft, increasing revenue and profitability for the electricity providers while enhancing consumer safety. By offering real-time information on electricity consumption and billing, it can also assist utilities in streamlining their operations and enhancing customer service.

DOI: 10.61137/ijsret.vol.11.issue2.357

A Decentralized Social Media Platform with Sentiment Analysis Using Blockchain
Authors:-Nitish Jha, Abhishek Chaudhari, Piyush Pandey

Abstract-This research proposes a decentralized social media platform built on blockchain technology with integrated sentiment analysis using Natural Language Processing (NLP). Traditional social media platforms face issues such as data privacy breaches, central control, and lack of transparency. The proposed system utilizes Ethereum smart contracts and a decentralized architecture to enhance trust, ownership, and user privacy. Sentiment analysis is applied to user-generated content to gain insights and improve user interaction. The system is implemented using the Remix IDE, MetaMask wallet, Sanity database, and ReactJS frontend. This approach provides a transparent, secure, and scalable solution for the next generation of social networking applications.

Welfare Services in Emergency Scenario Management
Authors:-Darshini.S, Dr. Poongodi.A

Abstract-This Application helps the user to gain the services that are needed for the daily emergency situations. This application provides the services like Petrol, Tow, Hospital, Ambulance and Pharmacy in a Single Module. This application is free for everyone. My goal is to reduce the cost, by providing the maximum service even in any emergency situations to the people needs in a friendly approaching interface. We added braille support so blindly and visually impaired people can also use this application. We added more reliable support system to guide you anytime at anywhere. This application is all in one friendly daily emergency services for people’s welfare.

DOI: 10.61137/ijsret.vol.11.issue2.358

CIFAKE: Image Classification and Explainable Identification of AI-Generated Synthetic Images
Authors:-Assistant Professor Mrs .Shandhini, Roopashree.M, S.Fasiha

Abstract-CIFAKE is a computer program that can detect fake images created by artificial intelligence. It to identifies fake images and provide explanations for its decisions. CIFAKE can help prevent the spread of misinformation and fake news by identifying fake images. This tool can be useful for individuals, organizations, and social media platforms to ensure the authenticity of online images. We introduce the CIFAKE dataset, which consists of 120,000 images (60,000 real images from the CIFAR-10 dataset and 60,000 synthetic images generated using latent diffusion models). Convolutional Neural Networks (CNNs) for binary classification (real vs. fake) and it utilizes Gradient Class Activation Mapping (Grad-CAM) for explainable AI (XAI) to interpret the model’s decisions. The results demonstrate that the given approach achieves a classification accuracy of 92.98%, for detecting AI-generated images.

Solar and Wind Power Electric Vehicle
Authors:-Assistant Professor N. E. K. Chandra., Assistant Professor P.T. Krishna Sai., J. Prudhvi Ganesh.3, Y. Venkata Sai Mohan Krishna., B. Rohit Chandra Sekhar., Md. Saleha.

Abstract-Energy crisis and pollution caused by vehicle emissions are one of the most important issues in the present society. Due to the charging time of battery of electric vehicle, requirement of charging on board is explored as option. This paper deals with the design of a hybrid model of a solar and wind, which uses the battery as its storage system. This system allows the two sources to supply the load separately or simultaneously depending on the availability of the energy sources. The power generated from the wind and solar is fluctuating in nature. The system obtains maximum solar energy during day time and maximum wind energy during the night because the wind blows more at night compared to day time. Therefore, battery of the vehicle can be charged by using hybrid energy system.

A Study on the Challenges in Income Tax Compliance among the Salaried Employees
Authors:-Lavanya S, Assistant Professor Praveen S V

Abstract-This study aims to explore the challenges faced by salaried employees in complying with income tax regulations. Income tax compliance is a significant aspect of the tax system, ensuring the effective functioning of a nation’s economy. However, salaried employees often face various barriers that hinder full adherence to tax laws. These challenges include insufficient knowledge of tax rules, the complexity of tax filing processes, lack of awareness about available exemptions and deductions, and limited access to professional tax advisory services. Additionally, the study examines the impact of digital platforms, such as online filing systems, in facilitating or complicating the compliance process. Data was collected through surveys and interviews with salaried employees from different sectors to identify common issues and concerns. The findings suggest that while digital platforms have made tax filing more accessible, many employees still struggle with understanding tax calculations, deadlines, and documentation. The study also highlights the role of employer assistance in simplifying the compliance process. Recommendations are provided to improve tax literacy, streamline filing procedures, and offer better support systems to enhance overall compliance among salaried employees. This research contributes to understanding the existing barriers in tax compliance and proposes potential solutions to foster greater tax adherence in the salaried workforce.

DOI: 10.61137/ijsret.vol.11.issue2.359

E-Commerce Price Comparison System
Authors:-Prof.Vimmi Malhotra, Kanchan Panwar,Jaya

Abstract-In recent years, mobile apps have become increasingly useful for everyday use. The objective of this project is to provide users with a convenient method to compare product availability and prices across different e-commerce platforms. By inputting the product details into the program, users can effortlessly compare prices from various sources. To compare the product details discovered on multiple websites simultaneously, the application’s databases are searched. To guarantee that they never overlook a fantastic deal, customers can also receive push notifications when items become available or go on sale.

DOI: 10.61137/ijsret.vol.11.issue2.360

Smart Monitoring of Water Absorption in Roads Using Sensor Technology – A Review
Authors:- Mr. Jeshurun Wakdey, MS Amarja Pawar, Mr. Sahil Dolas

Abstract-Roads are lifeline of our country as it is the best suitable method for all type of vehicles and most used by common people. The development of any country largely depends on the efficiency of its transportation system, because the transportation of a chain of activities related to economic development Human wants are satisfied by the production of good and its distribution. The road is ordinary type i.e. concrete road, WBM road or bituminous road. If we replace these roads by water absorbing road (WAR) we can save large quantity of water. Ordinary road constructed in cities majorly face the problem of flooding of road and because its top layer is impervious. In urban areas larger amount of rainwater ends up falling on impervious surfaces such as parking lots, driveways, sidewalks, and streets rather than soaking into the soil and becomes storm water.

DOI: 10.61137/ijsret.vol.11.issue2.361

Air Quality Prediction Using Regression Techniques
Authors:- Arpit Kumar, Aishwarya Prasoon, Asst.Prof. Dr. Madhumitha K

Abstract-Air pollution has become a critical environmental concern, necessitating accurate and reliable predictive models for monitoring air quality. This study presents a machine learning-based approach to predict the Air Quality Index (AQI) using various pollutants and meteorological parameters. The dataset underwent preprocessing and exploratory data analysis to identify key contributors to air pollution. Correlation analysis revealed strong dependencies between particulate matter (PM2.5, PM10) and gaseous pollutants (CO, NO2, SO2) in influencing AQI levels. Multiple machine learning models, including Decision Tree, Random Forest, and Linear Regression, were implemented to forecast AQI values. Performance evaluation indicated that ensemble learning models, particularly Random Forest, outperformed others in capturing complex relationships within the data. Additionally, wind speed and direction showed weak correlations with pollutant concentrations, highlighting the need for incorporating additional meteorological variables for enhanced predictive accuracy. This paper provides a data-driven framework for AQI forecasting, which can assist policymakers and environmental agencies in taking proactive measures to mitigate air pollution. Future improvements can focus on deep learning integration and real-time data streams to enhance prediction reliability and responsiveness.

Global Warming from Fossil Fuels: Causes, Impacts, and Pathways to Sustainability
Authors:- Addhish Kumar, Dr. Reshma Umair

Abstract-Global warming, the persistent rise in Earth’s average surface temperature, is primarily driven by human activities, with the burning of fossil fuels—coal, oil, and natural gas—serving as the leading cause. These fuels release significant quantities of greenhouse gases, such as carbon dioxide (CO₂) and methane (CH₄), which trap heat in the atmosphere, intensifying the greenhouse effect and triggering widespread climate disruptions. This paper explores the mechanisms through which fossil fuels contribute to global warming, detailing the chemical and physical processes behind greenhouse gas emissions. It examines the profound environmental, economic, and social consequences of these changes and proposes practical, forward-thinking solutions to address the crisis. By advocating for a swift transition to renewable energy, improved energy efficiency, robust climate policies, and global cooperation, this study highlights the urgent need for collective action to mitigate this pressing challenge and secure a sustainable future. The combustion of fossil fuels involves extracting and processing coal, oil, and natural gas, which, when burned, release CO₂ as a primary byproduct. Coal, rich in carbon, generates substantial CO₂ emissions per unit of energy. Oil, widely used in transportation and industry, emits CO₂ alongside pollutants like sulfur dioxide, which further harm the environment. Natural gas, often considered a cleaner option, emits less CO₂ but releases methane during extraction and transport—a gas with a warming potential roughly 25 times greater than CO₂ over a century. These emissions accumulate, absorbing and re-emitting infrared radiation, which warms the planet and disrupts its delicate balance.

Multiplayer Shooting Game (3D Game for PC using Unreal Engine 5)
Authors:- Anay Tripathy, Sanskar Agrawal, Rishabh Mukherjee, Chirayu.S.Zope, Professor Monika Vishwakarma

Abstract-This project documents the collaborative endeavor of four individuals in the development of a third-person shooter (TPS) game, utilizing Unreal Engine, C++, and Visual Studio Code. Through a synthesis of technical prowess and creative vision, the team embarks on a journey to conceptualize, design, and execute a captivating gaming experience. The project unfolds as a testament to the intricacies of game development, exploring the synergy between programming, artistry, and design. By leveraging modern game development tools and technologies, the team navigates the complexities of game mechanics, level design, multiplayer integration, and post-launch support. The culmination of their efforts is a polished TPS game that exemplifies their collective dedication, innovation, and expertise. Through this project, the team presents a comprehensive narrative of their collaborative journey, offering insights into the challenges, triumphs, and lessons learned in the pursuit of gaming excellence.

Breathewell: Design and Implementation of a Low- Cost Smart Ventilator with IoT-Based Monitoring
Authors:- Sanika Vagal, Abhijeet Gudekar, Sahil Jadhav, Professor Jyoti Gurav

Abstract-The COVID-19 pandemic exposed critical shortages in respiratory support systems, especially in under-resourced areas. In response, this study introduces “Breathewell” — an economical, Arduino-powered ventilator with integrated IoT functionality for real-time patient monitoring. The system automates AMBU bag compression using a servo-based mechanical actuator and offers customizable settings for tidal volume and pressure. It tracks essential health parameters like blood oxygen levels and body temperature using onboard sensors and wirelessly transmits the data via an ESP8266 module. The paper details the design, hardware setup, software integration, and performance evaluation of the prototype, highlighting its potential as an emergency-use ventilator for low-resource settings.

Approach to Design for Smart Rides
Authors:- Anjali Dhunde, Srushti Anturkar, Vaishnavi Bhelkar, Vaishnavi Gudadhe, Assistant Professor Dr. Jayant Hande

Abstract-Smart rides, an emerging innovation in the automotive industry, integrate advanced technologies to enhance driving safety, convenience, and overall user experience. Key features include obstacle avoidance systems, voice control interfaces, automatic rain wipers, and Bluetooth connectivity. Obstacle avoidance technology uses sensors, and cameras, to detect and prevent collisions, ensuring safer navigation through various environments. Voice control allows drivers to interact with the vehicle without taking their hands off the wheel, enabling seamless control of functions such as navigation, entertainment, and climate settings. The automatic rain wiper system detects rainfall and adjusts the wiper speed accordingly, enhancing visibility and safety during adverse weather conditions. Bluetooth control provides the driver with wireless access to connect devices, manage calls, and play media, all while maintaining focus on the road. These intelligent systems work together to create a more efficient, safer, and more enjoyable driving experience, marking a significant leap toward the future of autonomous and connected vehicles.

Evaluating the Impact of Low-Code and No-Code Platforms on Modern Software Engineering Practices
Authors:- Nandini Manvar, Gayatri Zagade, Shreyash Trimale

Abstract-Low-code and no-code (LCNC) development platforms are altering software architecture. These systems let users design applications with either very little or no coding. They employ ready-made components, drag-and-drop tools, and visual interfaces. This facilitates fast and simple application development. LCNC tools are usable by non-developers as well as developers. This cuts the demand for big development teams, boosts productivity, and saves time. LCNC systems are also helping to solve the worldwide shortfall of qualified software programmers. These days, several sectors make use of these platforms. They are applied in healthcare to create systems of patient tracking. In the classroom, they advocate e-learning environments. In finance, they enable automated procedures and reports. These instruments have certain restrictions even if they are quite helpful in many spheres. Apps needing to expand or manage more users raise issues regarding scalability. Another problem is security, particularly in apps handling private or delicate information. Customizing can be challenging since consumers might not have complete influence over the backend or code of the app. Notwithstanding these problems, LCNC platforms keep getting better. The situation of LCNC tools now is investigated in this work. It looks over their benefits and drawbacks. It also looks at currently used popular platforms and their practical applications. The paper addresses how conventional coding might be used alongside LCNC tools. One can get speed and adaptability from a hybrid development method. LCNC tools for basic parts and conventional code for challenging projects let developers handle both. Better performance and simpler maintenance are thus possible. Recommendations for applying LCNC tools in several environments round out the paper. These cover companies, software teams, and the educational fields. LCNC systems might become increasingly important component of contemporary software engineering as technology develops. They provide a fresh approach with less technical obstacles to create apps quicker and more effectively.

Yoga and Ayurveda: Importance in Present Era
Authors:-Assistant Professor Dr. Praveen Kumar

Abstract-Yoga and Ayurveda is the most ancient medical sciences. are the knowledge of life gifted by sages of ancient time. Yoga supports the first aim of Ayurveda. Yoga and Ayurveda plays a potential role in improving host immunity and reduces the severity of the infection but also helps in rehabilitation after getting treated. During the pandemic, COVID 19 Yoga and Ayurveda played a major role in healing of patients physically, mentally and spiritually. Yoga and Ayurveda both act as preventive measures with lifestyle modifications.

Leveraging NLP for Real-Time Multilingual Translation and Content Moderation: The UniVox Framework
Authors:-Aditya Ajagekar, Balachandran Thandan, Devansh Ashar, Srinjan Chatterjee, Professor Omkar Ghag

Abstract-UniVox is a cutting-edge platform that enables communication across diverse languages, ensuring user safety and respectful interactions. It uses advanced natural language processing (NLP) technology to analyze and understand human language, providing real-time translation across multiple languages. The platform also employs sophisticated algorithms for profanity detection and content moderation, scanning conversations for harmful words and phrases before they reach the user. This proactive approach maintains a positive and respectful communication environment, making it an ideal choice for personal chats, professional meetings, and travel situations. UniVox breaks down language barriers and fosters understanding and respect among users. Its user-friendly interface makes it accessible to casual users and professionals. With its innovative features and commitment to safe communication, UniVox is paving the way for a more inclusive global community where everyone can share ideas and experiences without fear of misunderstanding or disrespect.

Cloud-Native Security: A Review of Modern Approaches
Authors:-Avantika Satish Pawar

Abstract-Cloud-native technologies like containers, micro services, and Kubernetes have transformed how applications are built and run. While they offer great speed, flexibility, and scalability, they also introduce new security challenges that traditional tools can’t fully address. This review paper explores the latest approaches in cloud-native security, including container security, service mesh, runtime protection, and DevSecOps practices. It highlights how modern security tools are being designed to work within dynamic and fast-changing cloud environments. The paper also discusses common threats, real-world examples, and current best practices used by organizations to secure their cloud-native applications. Overall, this review aims to provide a clear and updated understanding of how cloud-native systems are protected today and where future improvements are needed. More and more companies are moving to cloud-native systems, which means they use modern technologies like containers and microservices to build and manage their applications. While this makes things faster and more flexible, it also introduces new security challenges. This paper looks at the latest ways to keep cloud-native environments safe, including strategies like verifying identities (zero-trust security), controlling access, protecting running applications, securing containers, detecting threats automatically, and following security rules. It also examines the unique risks that come with cloud-native setups and highlights the newest security techniques and best practices to deal with them. The goal is to show how security is adapting to fight cyber threats while still allowing businesses to take advantage of cloud-native technology’s speed and efficiency.

Rural Road Pavement Design Using Construction Brick Waste
Authors:-Sainath Harish Mahale, Keshraj Shankar Bhadane, Assistant Professor Surekha S Thorat, Vishakha Yuvraj Pagare, Vijay Dnyaneshwar Ranpise

Abstract-As India’s population continues to rise, the need for reliable road infrastructure, particularly in rural regions, becomes increasingly important for the country’s development. Subgrade layers of roads are usually built using locally sourced soils, which may not possess adequate strength. To address this, mechanical stabilization is often employed as an economical and eco-friendly solution. This study explores the improvement of local soil strength by incorporating crushed brick waste in varying proportions (10%, 20%, 30%, and 40%). A series of laboratory tests—such as liquid limit, plastic limit, grain size distribution, compaction, and California Bearing Ratio (CBR)—were conducted to assess the impact of brick waste on the soil’s performance. The findings reveal that brick waste serves effectively as a filler material, enhancing the soil’s strength properties. This suggests its viability as a sustainable option for road construction. Moreover, when used in rural road subgrade design, this material contributes to a reduction in the total pavement thickness compared to traditional methods.

A Comprehensive Study on Extensions and Comparative Aspects of Fixed Point Theorems in Metric Space
Authors:-Abhinav Agrawal, Prince Kumar Namdev

Abstract-Fixed point theory is a central component of nonlinear analysis, with profound implications across numerous mathematical and applied fields, including differential equations, optimization, and computational modeling. Classical results, such as Banach’s and Kannan’s contraction principles, provide powerful tools for establishing the existence and uniqueness of fixed points. However, their restrictive assumptions, particularly regarding contractiveness and continuity, often limit their applicability in complex or real-world systems. This paper introduces a new fixed point theorem that unifies and generalizes the Banach and Kannan contraction conditions through a hybrid contraction framework. By relaxing traditional constraints, the proposed theorem significantly broadens the scope of mappings for which fixed point results can be obtained in complete metric spaces. The theoretical advancement is accompanied by a detailed comparative analysis with classical theorems, highlighting the improved generality and flexibility of our approach. To validate its practical relevance, the theorem is applied to a series of illustrative examples, along with discussions on its utility in areas such as economic modeling, machine learning algorithms, control theory, and numerical simulation. The study concludes by outlining directions for future research, including potential extensions to multivalued and generalized metric spaces. Overall, this work contributes to the expanding landscape of fixed point theory and its applications in modern mathematics.

A Novel IDS Framework Combining PCA and Random Forest
Authors:-Roshan Kumar S, Mageshwaran S D, Krithik S R, Dr. U. Surendar

Abstract-The aim of this project is to develop an application capable of identifying the type of attack on a system and detecting intruders using an intrusion detection system. [1] [6] Various machine learning techniques have been previously applied to IDS to enhance intrusion detection accuracy. This research introduces a novel approach by integrating principal component analysis and the random forest classification algorithm to build a more efficient IDS. PCA helps refine the dataset by reducing its dimensionality, simplifying data processing, while the random forest algorithm ensures precise classification of network activities. Experimental results indicate that this method outperforms traditional techniques such as support vector machine, naïve bayes and decision tree, delivering high accuracy. IDS functions as a network security measure, identifying threats, malicious activities, and attack types. A key limitation in conventional IDS is that if the primary detector fails, intrusions remain undetected. To address this, the proposed system implements multiple detection mechanisms, ensuring that if one detector fails, other continue monitoring and identifying threats, thereby, strengthening system security.

DOI: 10.61137/ijsret.vol.11.issue2.363

Fitness Club
Authors:-Nirjala Nandekar, Manasi Patil, Vinayak Patil, Chirag Patil, Professor Dr. Prachi Gadhire

Abstract-Being fit physically and mentally is every human being’s ultimate desire. People are always seeking to have a healthy body fitness and they are somehow engaged in day-to-day life. So, we believe that our application can solve this problem in android device users, the apps can be great relief to people who do not have time to visit fitness centre, through help users can manage the healthy life system. Many people who have realized the importance of these apps in their daily life have started making use of such apps. The Current Landscape of the Fitness Apps Market In 2023, the worldwide market for fitness apps clocked in at a solid 1.54 billion USD. Looking ahead, expect this sector to flex its muscles with an impressive compound annual growth rate of 17.7% from 2024 all the way through to 2030. It counts 87.4 million users in the US only. The fitness apps market has evolved dramatically, influenced by changing user preferences and technological advancements. It’s a domain where app users seek personalized experiences, driving the growth of both workout apps and nutrition and diet apps. User Engagement in Mobile Fitness Apps Understanding user engagement in mobile fitness app is crucial. This includes analysing patterns in the Google Play Store and Apple App Store, and how app features cater to diverse user needs. Monetization Strategies: From Paid Apps to In- App Purchases Monetization in the fitness app market varies from paid apps to dynamic in-app purchases, shaping the way developers create revenue streams.

E-Commerce Price Comparison System
Authors:-Assistant Professor Vimmi Malhotra, Kanchan Panwar, Jaya

Abstract-In recent years, mobile apps have become increasingly useful for everyday use. The objective of this project is to provide users with a convenient method to compare product availability and prices across different e-commerce platforms. By inputting the product details into the program, users can effortlessly compare prices from various sources. To compare the product details discovered on multiple websites simultaneously, the application’s databases are searched. To guarantee that they never overlook a fantastic deal, customers can also receive push notifications when items become available or go on sale.

DOI: 10.61137/ijsret.vol.11.issue2.364

AI Chatbot
Authors:-Vipashyna Arun Sable, Professor Suresh Mestry

Abstract-AI chatbots can assist right away by answering questions, providing explanations, and pointing to more resources. Software applications like chatbots can aid teachers in many assignments and become excellent digital teaching assistants.Chatbots are software applications that respond to inputs in natural language. We can see that chatbots are now a part of our daily life. We use them every day to book a movie, reach the closest restaurant, or find an open ATMThese are chatbot software applications that have made life easy. But their uses are not restricted to this. They also entertain users who are bored, play a massive role in home automation projects, give business strategy suggestions, and aid in many other ways.The system was tested on various user inputs and usage scenarios and satisfactory results were observed for usability, accuracy, and responsiveness. The project brings highly evolved chatbot framework technologies like Rasa and chit-chat bots of the likes of facebook and wit.ai to beginner level with a responsive conversational chatbot which could be deployed with minimal coding efforts.The project shows how advanced AI could be used effectively with simple web technologies, and opens up the possibility of further development of using voice, multilingual support, and AI-powered customization.

DOI: 10.61137/ijsret.vol.11.issue2.365

AI Chatbot
Authors:-Vipashyna Arun Sable, Professor Suresh Mestry

Abstract-AI chatbots can assist right away by answering questions, providing explanations, and pointing to more resources. Software applications like chatbots can aid teachers in many assignments and become excellent digital teaching assistants.Chatbots are software applications that respond to inputs in natural language. We can see that chatbots are now a part of our daily life. We use them every day to book a movie, reach the closest restaurant, or find an open ATMThese are chatbot software applications that have made life easy. But their uses are not restricted to this. They also entertain users who are bored, play a massive role in home automation projects, give business strategy suggestions, and aid in many other ways.The system was tested on various user inputs and usage scenarios and satisfactory results were observed for usability, accuracy, and responsiveness. The project brings highly evolved chatbot framework technologies like Rasa and chit-chat bots of the likes of facebook and wit.ai to beginner level with a responsive conversational chatbot which could be deployed with minimal coding efforts.The project shows how advanced AI could be used effectively with simple web technologies, and opens up the possibility of further development of using voice, multilingual support, and AI-powered customization.

Lip-Interpretation Using Deep Learning and Cnn
Authors:-Asmita Chorge, Siddhi Dalvi, Sharvani Mahadik, Ashwini Pawar, Professor Manisha Hatkar

Abstract-Lip interpretation, also known as visual speech recognition, is a challenging task in the field of artificial intelligence (AI) and computer vision. This research explores how deep learning techniques, particularly Convolutional Neural Networks (CNNs), can enhance lip-reading accuracy. By analyzing different architectures, datasets, and methodologies, we present a comprehensive study on various models used for lip interpretation. The findings suggest that deep learning-based approaches significantly improve the accuracy of speech recognition without relying on audio data, thereby opening doors for applications in security, healthcare, and human-computer interaction.

AI-Driven Real-Time Threat Detection System for Women’s Safety Using Deep Learning and Gesture Analytics
Authors:-Associate Professor Dr.S. Mohana, Preethi S, Sujay Charan P, Parthiban S, Sanjai Krishnan A, Pradiksha R J

Abstract-This paper presents a comprehensive AI-driven real-time threat detection framework designed to enhance women’s safety in urban environments. The system integrates advanced computer vision techniques including YOLOv8- based person detection, ResNet-50 gender classification, and LSTM-based gesture recognition to analyze live surveillance feeds. Through the execution of a multi-modal threat analysis algorithm, the system can recognize vital scenarios including SOS gestures (with 92.3% accuracy), isolated female detection in night hours (with 89.7% accuracy), and probable mob scenario situations. The system is integrated with a distributed architecture supporting low- connectivity location-based edge computing, real-time alert generation based on Twilio/Vonage APIs, and compatibility with police systems through an exclusive web dashboard. Experimental outcomes prove 86.4% threat detection accuracy at an average latency of 1.2 seconds on NVIDIA Jetson devices.

DOI: 10.61137/ijsret.vol.11.issue2.366

Neuroplasticity in the Reels Era: Cognitive Consequences of Ultra-Short Form Video Consumption
Authors:-Era Mane, Aryan Patel

Abstract-Rapidly evolving technology continues to reap new increases even in the world’s most remote areas. Classical physics has been at the forefront of advances in medical, energy, wireless communications, computing, and artificial intelligence technol- ogy. Traditional communication systems using classical bits are reaching their limits. Quantum technology, especially quantum bits (qubits), is a game-changing alternative with advantages in security and efficiency. This study examines the basics of quantum communication on the underlying principles, purposes, and ways to process information. It introduces a model for quan- tum communication systems for which examples of applications are given and challenges encountered for implementation into practical use is indicated. The future of enhanced security and efficiency of digital networks and communications will derive from quantum advances.

Blood Cell Cancer Detection Using CNN Algorithm
Authors:-Ghanshyam Sharma, Harsh Mishra, Poovammal E.

Abstract-Blood cell cancer, particularly Acute Lymphoblastic Leukemia (ALL), requires timely diagnosis to improve patient outcomes. This study proposes a deep learning framework leveraging Convolutional Neural Networks (CNNs) to classify blood cell images into malignant and benign categories. Utilizing a dataset of 3,312 labeled blood cell images, we preprocess the data using augmentation techniques and train a CNN model with optimized hyperparameters. In this model achieves robust performance in distinguishing cancer subtypes, demonstrating the potential of AI-driven tools in hematological diagnostics. The methodology emphasizes reproducibility, with code structured in a Jupyter Notebook, and addresses challenges in medical image analysis.

An Analysis of the Relationship between Service Quality and Customer Satisfaction: Evidence from DUWASA in Bahi District, Tanzania
Authors:-Renalda M. Kapulula, Dr Castor Mfugale

Abstract-Reliable water service delivery is a cornerstone of customer satisfaction, particularly in developing regions where inconsistencies remain a persistent challenge. This study investigates the impact of water service reliability on customer satisfaction among beneficiaries of the Dodoma Urban Water Supply and Sanitation Authority (DUWASA) in Bahi District, Tanzania. Adopting a quantitative research design, data were collected from 129 respondents using a structured survey instrument. The study focused on key dimensions of service reliability, dependability, accuracy, consistency, and timeliness—and their influence on customer expectations, service experiences, and perceived value for money. Data analysis, conducted through simple linear regression, revealed a strong and statistically significant positive relationship between service reliability and customer satisfaction, with a correlation coefficient of 0.68. The coefficient of determination (R²) of 0.59 suggests that 59% of the variation in customer satisfaction is explained by the reliability of water services.

Preparation of Tradescantia Pallida Mediated Calcium Carbonate Nanoparticles and Their Activity against Hela Cell Lines
Authors:-Akshita Verma

Abstract-Purpose: To make calcium carbonate nanoparticles (CaCO₃NPs) and test their fluorescent and cytotoxic properties utilising Tradescantia pallida (Commelinaceae). Method: T. pallida aqueous leaf extract is used to make CaCO₃ NPs according to a straightforward technique (TPALE). Determine their crystalline nature and functional groups, Fourier transform infrared spectroscopy (FTIR) investigations are used. Photoluminescence characteristics of CaCO₃ Nanoparticles are evaluated using fluorescence spectroscopy. Following confirmation of CaCO₃ NP synthesis, the 3-(4,5-dimethylthiazol-2-yl)-2,5- diphenyltetrazolium bromide (MTT) assay is used to assess cytotoxicity against HeLa cell line. Conclusion: On the basis of TPALE, a simple method for synthesising CaCO₃ NPs has been successfully established. The generated CaCO₃ NPs have good luminescent characteristics and are cytotoxic to a cancer cell line.

Copyright in the Digital Age: Addressing Issues on Online Piracy and Streaming Services
Authors:-Soumya Mishra, Dr. Taru Mishra

Abstract-Copyright laws are being developed along with technology. Today, digital advances such as the Internet and PC offer both opportunities and challenges for creative work stakeholders. The balance of these interests is complicated but reflects the continued adaptation of copyright to new developments. The advent of the Internet and the widespread adoption of HR computers have begun an era of unprecedented connectivity and accessibility for creative work. However, in addition to these transformative developments, there are various challenges faced by stakeholders in the production, distribution, and consumption of copyrighted content. This analysis examines various digital copyrights in the Internet age and uses literature review methods that address the complex interactions of technological advancements and legal frameworks. The rise of digital copyright infringement, the spread of user-generated content platforms, and the development of new distribution models provide traditional ideas for copyright tracking and intellectual property protection. Furthermore, the global features of the digital economy complicate regulatory efforts as the terms of the legal framework make it difficult to meet the infinite characteristics of online transactions and consumption of digital content. This review examines development strategies used by political decision-makers, industrial interest groups, and law to control these challenges, from legislative reforms to innovation in content management and digital rights management (DRM) systems. Through a comprehensive analysis of existing literature, this overview uncovers ongoing dialogue related to digital copyrights on the Internet, providing insight into the complexity of copyright in the digital age, debate, and future trajectories.

DOI: 10.61137/ijsret.vol.11.issue2.367

AI-Driven Fraud Detection in Banking: A Comprehensive Approach Using Machine Learning and Data Science
Authors:-Mrs. Punashri Patil, Nidhi Warishe, Neha Sonar, Shantanu Wagh

Abstract-This paper presents a comprehensive exploration of artificial intelligence (AI)-driven methods for detecting fraud in the banking sector. As financial fraud grows in complexity and volume due to the rise in digital transactions, traditional rule-based systems have become inadequate. The study investigates various machine learning (ML) and deep learning (DL) algorithms for fraud detection, including supervised, unsupervised, and hybrid models. A hybrid system combining multiple models is proposed to enhance detection accuracy and adaptability. Our experiments demonstrate that neural networks achieve up to 96.1% accuracy, significantly outperforming traditional models. We also explore deployment strategies such as real-time analytics and explainable AI, offering actionable recommendations for banking institutions.

Intelligent Fault Management in Electric Power Transmission Lines Using Artificial Neural Networks
Authors:-Vikramsingh R. Parihar, Pearl H. Wardani, Aakansha P. Tiwari, Shreya R. Gangane, Soni N. Wasrani, Sushmita A. Meshram

Abstract-This paper focuses on detecting, classifying and locating faults on electric power transmission lines. Fault detection, fault classification and fault location have been achieved by using artificial neural networks. Feedforward networks have been employed along with backpropagation algorithm for each of the three phases in the Fault location process. Analysis on neural networks with varying number of hidden layers and neurons per hidden layer has been provided to validate the choice of the neural networks in each step. Simulation results have been provided to demonstrate that artificial neural network based methods are efficient in locating faults on transmission lines and achieve satisfactory performances.

Bail Reckoner
Authors:-Kutala Pravalika, Korimi Praveen

Abstract-The subjectivity and complexity of bail determinations in criminal justice systems have for a long time presented difficulties to fairness and consistency. In this paper, we suggest a software solution named Bail Reckoner that helps assess bail eligibility with the use of machine learning methodologies. Through processing of historical court data and determining useful features such as offense category, previous offenses, and socio-economic factors, the system produces a probabilistic bail outcome suggestion. Our method is designed to assist judges and legal practitioners by increasing transparency and minimizing bias. The system is tested using simulated legal datasets and shows encouraging accuracy in matching with real judicial decisions.

DOI: 10.61137/ijsret.vol.11.issue2.368

Greenhouse Monitoring and Controlling Using Iot and Machine Learning
Authors:-Shreya Patwadkar, Harshada Shete, Nirmala Shelke, Snehal Sabale

Abstract-This study presents an ESP8266-based greenhouse monitoring and controlling system that effectively regulates environmental parameters essential for plant growth. The system utilizes sensors such as the DHT11 for temperature and humidity, YL69 for soil moisture, and an LDR for light intensity. These sensors provide real-time data to the ESP8266 microcontroller, which not only processes the inputs but also enables wireless connectivity for remote monitoring and control. Through relay modules, the system controls devices such as water pumps, artificial lighting, and ventilation fans to maintain optimal growing conditions. A display panel can be included for on-site visualization, while data transmission via Wi-Fi facilitates integration with cloud platforms for data logging and analytics. This IoT-enabled approach supports automation, enhances sustainability, and minimizes manual intervention, making it a robust solution for modern greenhouse management.

DOI: 10.61137/ijsret.vol.11.issue2.369

Face Emotion Detection Using AI and Machine Learning
Authors:-Professor Komal Naxine, Professor Ashwini Mahajan, Naitik Sharnagat

Abstract-Understanding human emotions is a key part of improving how machines interact with people. One of the most effective ways to detect emotions is through facial expressions. With advancements in Artificial Intelligence (AI) and Machine Learning (ML), especially deep learning techniques, it’s now possible to automatically recognize emotions by analyzing facial features from images or video. In this paper, we present a model that uses Convolutional Neural Networks (CNNs) to identify and classify emotions like happiness, sadness, anger, surprise, and others. We trained and tested our model using standard datasets and achieved promising results in recognizing different emotional states. This system can be useful in many areas such as healthcare, education, security, and customer service, where understanding human emotions can lead to better outcomes.

AI-as-a-Service (AIaaS): Making AI Accessible Through the Cloud
Authors:-Om Dhananjay Jadhav, Dr Meenakshi Thalor

Abstract-AI as a service (AIaaS) is an important shift in how businesses deploy artificial intelligence capabilities. However, by leveraging cloud infrastructure, AIaaS overcomes traditional bar- riers to AI adoption such as high infrastructure ownership costs and specialized expertise requirements. The proposed method builds a new cloud-based approach by providing AI functionality such as machine learning, natural language processing, and computer vision. We present AIaaS architecture, implementation strategies, and performance metrics of deployed systems in this study. Results show that AIaaS implementation costs are around 50.

An Evaluation of Key Factors Influencing the Productivity of Plywood Shuttering in Construction Projects
Authors:-Sachin, Dr. Amit Moza

Abstract-This research paper examines the critical factors that influence the productivity of plywood shuttering in construction projects—a fundamental element in modern formwork systems. Although plywood shuttering is favored for its cost-effectiveness, reusability, and ease of handling, practical productivity often falls short of theoretical benchmarks due to issues related to material quality, labor proficiency, adverse site conditions, and management practices. By integrating a detailed literature review, rigorous field observations, in-depth case studies, and quantitative productivity measurements (including time–motion studies and benchmark comparisons with IS 7272 and CPWD DAR 2021), this study establishes realistic productivity standards and proposes actionable strategies to enhance on-site efficiency. The findings provide valuable insights for optimizing resource allocation, reducing material wastage, and ultimately improving construction performance.

DOI: 10.61137/ijsret.vol.11.issue2.370/a>

Beyond Wifi: The Rise of Lifi Tech
Authors:-Yoshita Bardhe, Toshita Bhagwate, Kishor Wagh

Abstract-Li-Fi (Light Fidelity) is a new wireless communication technology based on light, i.e., LED bulbs, to transfer data at speeds similar to that of Wi-Fi. Li-Fi does not use radio waves like Wi-Fi; it works in conditions where radio frequencies are unsafe or inappropriate, for example, in hospitals and airplanes. Li-Fi has many more benefits compared to Wi-Fi, such as increased bandwidth, efficiency, availability, and security, and does away with radio interference issues. It achieves this by modulating the intensity of light more quickly than the human eye can perceive, allowing for high-speed data transfer. Li-Fi is regarded as a greener, safer, and cheaper alternative to Wi-Fi, offering faster and more secure data transfer in small spaces. The technology is likely to be extensively used in many industries in the future.

AI Powered Personal Financial Assistant
Authors:-Deepesh Dalvi, Jay Pardeshi, Ganesh Gupta, Venkat Patil

Abstract-This project focuses on developing an AI Powered Personal Financial Assistant that helps users manage their finances through intelligent automation. The system tracks income and expenses, generates budgets, provides personalized financial advice, and predicts future spending trends. Using machine learning, natural language processing, and secure data handling, it empowers users to make smarter financial decisions. The project aims to enhance financial literacy and promote better financial planning through a user-friendly platform.

Intelligent Healthcare: AI for Disease Diagnosis & Drug Discovery
Authors:-Aman, Lalit Kumar, Er. Disha Sharma

Abstract-Artificial Intelligence (AI) has become a revolutionary medical force, especially in disease diagnosis and drug development. In medical imaging, AI-driven deep learning algorithms greatly improve diagnostic accuracy and efficiency by reading X-rays, MRIs, and CT scans with accuracy beyond human capacity. These developments minimise diagnostic errors, enhance early detection of diseases, and maximize patient management. Moreover, AI-assisted drug discovery speeds up the discovery of promising therapeutic compounds while decreasing the cost and time required through conventional drug development. These advances notwithstanding, issues including data privacy, model interpretability, and regulatory, and ethical considerations remain essential. This essay discusses the use of AI in medical imaging and drug discovery, including its advantages, limitations, and possibilities for shaping the future of healthcare.

Inventory Management System Using Cloud Computing
Authors:-N. Naresh Kumar, R. Pragamathilan, P. Purushothaman, Assistant Professor K. Karpagavalli

Abstract-This paper presents a cloud-based Inventory Management System built with Angular, Django, and MySQL to streamline stock tracking, sales, and supplier management. Key features include role-based access, real-time updates, category-wise item handling, stock alerts, and sales logging. REST APIs enable smooth frontend-backend communication, and cloud storage ensures scalability. The system aims to reduce inventory errors, support better decision-making, and improve business efficiency.

GasGuard: An IoT-Based Gas Leakage Detection and Alert System
Authors:-Krishna Bihari Dubey, Aryan Chauhan, Ayush Shrivastava, and Harsh Chaudhary

Abstract-GasGuard operates as an IoT solution which provides instantaneous notifications about active gas leakages. The hardware system unites MQ-2, MQ-4, MQ-9 gas sensors with a detection process managed by the ESP32 microcontroller to track gas levels in the environment. The device employs buzzer alerts together with LEDs and GSM-based SMS notification when it detects threshold exceedances. ThingSpeak functions as a data logging platform for the system where an SVM-based machine learning model operates for false alarm reduction and accuracy enhancement. GasGuard operates at high energy efficiency and demonstrates scalability across different market zones starting from homes to industries thereby delivering reliable safety protection.

Mitigating Evolving Social Engineering Attacks through Enhanced Human and Technical Counter Measures
Authors:-Shivesh Singh, Harshal Gupta, Dr. Jasbir Kaur, Assistant Professor Ms. Sandhya Thakkar, Assistant Professor Mr. Suraj Kanal

Abstract-Social engineering continues to exploit human vulnerabilities, targeting individuals to bypass even the most sophisticated cybersecurity defenses. As attackers grow more adept at manipulating human behavior, organizations are finding it increasingly challenging to prevent such non-technical attacks. This paper proposes an integrated defense model that combines advanced technical solutions, continuous employee training, and adaptive security measures. By focusing on evolving attack vectors and addressing human and technical vulnerabilities in tandem, this research outlines a comprehensive framework that mitigates the risks posed by social engineering attacks.

Developing an AI Based Interactive Chatbot for the Department of Justice’s Website
Authors:-Sulake Bhavya Sri Bai, Kamboja Akshith Swamy

Abstract-addition to the Department of Justice website to enhance the virtual experience. The new website upgrade is centered around an artificial intelligence-enabled chatbot that uses Natural Language Processing (NLP) to become more conversational and easier for visitors to interact with when they just speak to it. The DOJ website enhancement also offers a multilingual capability for all citizens, irrespective of their ability. It is powered by a scalable cloud-based infrastructure that ensures high availability and round-the-clock access. Long legal procedures that, regrettably, impede the ability of many regular people to obtain simple information or services are the main goals of this efficiency improvement. Key words: Natural Language Process (NLP), AI chatbot, voice assistant, legal technology, accessibility, public service automation, department of justice, and legal query resolution.

DOI: 10.61137/ijsret.vol.11.issue2.371/a>

Cipla Limited: Company Research Report
Authors:-Navaratn Ambikaprasad Morya

Abstract-This report explores the strategic methodologies utilized by Cipla, one of the leading pharmaceutical companies, to maintain its competitive advantage in the global market. It examines Cipla’s approach to strategic planning, data analysis, and implementation, highlighting how the company adapts to changing market dynamics and regulatory environments. The study uses a mixed-method research design, integrating both qualitative and quantitative data to provide a comprehensive understanding of Cipla’s strategic framework. The findings contribute valuable insights into the pharmaceutical industry’s strategic management practices.

Silent Voice -The Sign Language Recognition Android Application Using Machine Learning Algorithm
Authors:-Ms Mitali Pawar, Dr. Jasbir Kaur, Assistant Professor Ms.Sandhya Thakkar

Abstract-Sign language is an essential communication tool for people with speech and hearing impairments.”[4] The creation of an Android application for sign language recognition using machine learning methods is presented in this study. The program facilitates communication between sign language users and non-sign language users by using OpenCV and a machine learning model to process images and transform hand gestures into text. Real-time alphabetic sign recognition from live video input is possible with the suggested approach. The application guarantees effective gesture detection with low resource consumption by using TensorFlow Lite for model inference on mobile devices, which makes it appropriate for Android devices with low processing power. The system’s user-friendly interface facilitates quick and precise translations between sign language and other languages, encouraging inclusion and assisting in the removal of barriers to communication.

DOI: 10.61137/ijsret.vol.11.issue2.372/a>

Speech Emotion Recognition Using CNN
Authors:-Pratiksha Sathe, Dr. Jasbir Kaur, Assistant Professor Suraj Kanal

Abstract-Speech Emotion Recognition (SER) is an evolving and critical field in human-computer interaction, aimed at identifying and interpreting human emotions through speech signals. The ability to recognize emotions accurately from speech has applications in various domains, including mental health diagnostics, customer service, and adaptive learning systems. This paper focuses on leveraging Convolutional Neural Networks (CNN) for SER, emphasizing their capability to perform robust feature extraction and accurate classification. CNNs excel in capturing both spatial and temporal characteristics of audio signals, making them particularly well-suited for processing speech data. By converting speech signals into Log-Mel spectrograms, which effectively represent the spectral and temporal properties of audio, the proposed model achieves high accuracy in recognizing a diverse range of emotions. The study demonstrates the practical application of CNNs for SER, highlights their advantages over traditional machine learning models, and evaluates their performance on benchmark datasets such as RAVDESS and IEMOCAP. The results underscore the potential of CNN-based approaches to advance the field of speech emotion recognition, paving the way for more sophisticated and empathetic human-computer interaction systems.

DOI: 10.61137/ijsret.vol.11.issue2.373/a>

Blockchain-Based E-Voting Systems: A Comprehensive Review
Authors:-Dhruv Roshani V., Rathod Neha V., Professor Kashyap Dave

Abstract-Electronic voting (E-voting) systems provide the benefit of faster and more inclusive elections but remain susceptible to frauds, lack transparency & violation voter’s privacy. Decentralized Architecture of blockchain makes it the best defense against traditional e-voting mechanisms, providing an alternative. In the following review paper, I first discuss the various blockchain-based e-voting systems frameworks such as Chirotonia different with respect to their application of cryptography reaching to protect vote integrity and then identify what type of utility they enjoy. Other concerns covered here are privacy preserving protocol, legal and scalability issues; along with real life use cases such as Voatz or LiquidFeedback. Finally, it delineates some directions for future work that include cross-platform interoperability, quantum-secure encryption and high-throughput consensus algorithms required for large scale deployment.

Ethical Implications of AI in Business Decision-Making
Authors:-Krupa Vaghela, Professor Lata Butiya

Abstract-This paper explores the ethical implications of artificial intelligence (AI) in business decision making. As AI technologies become increasingly integrated into various business processes, ethical concerns regarding transparency, accountability, and bias have emerged. This study employs a qualitative approach, analyzing existing literature and case studies to identify key ethical challenges and propose recommendations for businesses. The findings indicate that while AI can enhance decision-making efficiency, it also poses significant ethical risks that must be addressed to ensure responsible use. The paper concludes with a call for the development of robust ethical frameworks to guide AI implementation in business contexts.

Learning through Smart Tools – Integrating Artificial Intelligence in Language
Authors:-Associate Professor Dr. R. Kavitha

Abstract-The integration of Artificial Intelligence (AI) in language learning has revolutionized the way languages are taught and learned. This paper explores the various AI-based teaching tools that facilitate personalized language learning experiences, highlighting their effectiveness, applications, and potential challenges. AI-powered applications such as Natural Language Processing (NLP), Machine Learning (ML), chatbots, and automated speech recognition systems, which have transformed traditional methods of language instruction. The paper explores the future possibilities of these technologies in language pedagogy.

Work –Life Balance of Women Employees: Challenges and Strategies
Authors:-Greeshma Muraly

Abstract-Women across the world encounter difficulties in managing what their professional work and personal life. These research paper exams the difficulties of workload and life balancing in women particularly among working women and entrepreneurs. It analysis the key factors affecting work life balance, the impact of overload on mental and Physical health and Strategies for achieving stability. This paper also highlights policies and support systems that can help woman in managing the responsibilities effectively.

DOI: 10.61137/ijsret.vol.11.issue2.374/a>

CloudSpeak: A Scalable, Personalized, Cloud-Native Speech-to-Text Framework
Authors:- Kushal Rajput, Dr. Siddharth Choubey

Abstract-CloudSpeak is an intelligent, cloud-native speech-to-text (STT) system designed to deliver high-accuracy, personalized audio transcription at scale. Unlike traditional STT solutions that rely on generic, pre-trained models, CloudSpeak introduces a user-specific training approach, leveraging just one hour of real user speech and expanding it to ten hours via advanced data augmentation techniques. This enables the system to capture individual speaking patterns, accent variations, and vocal nuances with significantly improved precision. Hosted entirely in the cloud, CloudSpeak supports real-time inference and parallel audio processing through a secure, API-driven architecture, allowing seamless integration into diverse applications ranging from accessibility tools to smart assistants. Additionally, CloudSpeak incorporates noise reduction preprocessing based on Mozilla’s Common Voice noise dataset, effectively filtering out common background sounds to enhance transcription accuracy. By combining personalization, cloud scalability, and intelligent noise filtering, CloudSpeak represents a forward-looking paradigm in speech recognition technology—where models are both context-aware and tailored to individual users.

The Use of Facebook and Its Implications towards Voting Perception during Elections in India
Authors:- Shayak Sanyal

Abstract-The research paper titled ‘The use of Facebook and its implications towards voting perception during elections in India aims to delve into the various factors that made Facebook as a potent tool towards dictating the power of Indian democracy by influencing the voter perceptions during elections since 2014. The paper shall take into account the widespread use of Facebook by the political parties who are relying this as a convenient tool to reach out to a large number of people with their message to spread their beliefs and ideologies from any corner of the country that has the potentiality to shape the future of Indian politics at large. The research question that this paper aims to answer is how Facebook is influencing the traditional democratic practices and how the same can turn out to be problematic in the society if used with a malicious intent to divide votes from a particular segment of the society that favours the ideology of the dominant regime. Also, the paper seeks to know that whether Facebook is influencing people belonging from all strata of the society or is confined to only the rich and upper middle segments of the society who are relying on Facebook & other social media platforms to gain information and news about the political events happening in their respective constituencies and across the Nation. To prove our stance, a mixed methodology has been adopted to analyse and answer our question from a holistic perspective that can help in gathering and arriving at a useful conclusion with data obtained from the outside world.

The Strategic Role of Marketing Analytics in Business Consulting: A Case-Based Approach
Authors:- Mr. Parth Prashant Lagade

Abstract-In today’s data-driven business environment, marketing analytics has become an essential tool for consultants seeking to deliver strategic value. This paper explores the growing intersection between marketing analytics and business consulting, focusing on how data-driven insights enable better decision-making, targeted customer engagement, and improved ROI. Through selected case studies across industries such as FMCG and e-commerce, the paper examines how consultants apply analytics frameworks to solve real client challenges—from segmentation and positioning to campaign optimization. The findings highlight that marketing analytics not only enhances the effectiveness of marketing strategies but also strengthens a consultant’s ability to drive measurable business impact. The paper aims to offer a practical perspective for future marketing professionals and consultants navigating the evolving landscape of strategy and data.

Startup Valuation Methods in the Gig Economy Era: Effectiveness and Challenges
Authors:- Dharmik B. Joshi

Abstract-The gig economy has transformed traditional business models, introducing complexities in startup valuation. Unlike conventional businesses, gig startups rely on digital platforms, network effects, and scalable yet volatile revenue streams. This study critically examines traditional valuation methods—Discounted Cash Flow (DCF), Comparable Company Analysis (CCA), and the Venture Capital (VC) method—and their effectiveness in assessing gig startups. Challenges such as regulatory uncertainties, high user acquisition costs, and fluctuating profitability are analyzed. The paper proposes adjustments to valuation frameworks, incorporating factors like platform dependency, user engagement, and AI-driven predictive analytics. Understanding these challenges is crucial for investors and policymakers to enhance financial decision-making in this evolving landscape.

Centralized Monitoring System for Faulty Street Light Detection and Location Tracking
Authors:-Ankush S. Bokade, Pratik R. Gabhane, Sanchit P. Samudre, Shreya V. Himane

Abstract-The main objective of this project is to create an intelligent and automated street light fault monitoring system. The system proposed here has been conceptualized to counter the traditional methods of monitoring street lights, which are largely dependent on human visits or citizen complaints. With the use of contemporary technologies like sensors, microcontrollers, and IoT platforms like Blynk, the system can monitor continuously the working condition of street lights and detect at once any fault. This real-time street light fault detection system will issue automatic notifications to a centralized platform whenever a street light goes dark. This helps in quicker response times, optimizes maintenance schedules, and guarantees that faulty street lights can be repaired promptly. The system not only increases road safety and nighttime visibility for citizens but also contributes to lowering maintenance costs overall as well as unwarranted inspections. Aside from that, the project is also designed to help shape the idea of smart cities by incorporating automation into public infrastructure. Data logging and remote monitoring also enable the authorities to study patterns of failure and streamline the maintenance strategy in the long run.

Deep Learning for Liver Segmentation
Authors:-Amarnath Chigurupati. Madhuri Sirasanagandla. Ankit Kommalapati. Siddique Ibrahim Peer Mohammed, Madhuri Sirasanagandla

Abstract-Liver cancer is becoming a huge threat to global health health, where early detection and accurate diagnosis are crucial for effective treatment [1]. Our research on deep learning- A based learning system for automatic segmentation of the liver and The tumor from computed tomography (CT) images is highlighted, using a U-Net model integrated with ResNet-34, which acts as a backbone [2]. This model is trained on the Liver Tumor Segmentation Challenge (LiTS) dataset, which is a standard for This type of problem [2]. Training a high-performance model, The project itself differentiates with the development of a user- friendly GUI with the help of the Python package PyQt5, making It is possible to achieve real- time visualization and user-friendly interaction for the end users like radiologists, students, and researchers [10] . This interface helps in taking input as an image in the form of a JPG, predicts segmentation tasks, and compares the results With the grayscale liver anatomy structures. Our model delivers high accuracy in segmentation, obtaining a high accuracy Dice coefficient of 98.20% with an extraordinary precision, recall, and f-score up to 99.89%, making it usable for real-time scenarios like clinical and research purposes Index Terms—Liver Segmentation, Deep Learning, U-Net, ResNet-34, FastAI, PyQt5.

DOI: 10.61137/ijsret.vol.11.issue2.375/a>

AI Driven Crop Disease Prediction and Management System
Authors:-Akshay Rege, Atharva Joshi, Samruddhi Dhumal, Sakshi Marne, Shraddha Khairnar

Abstract-Crop diseases have a major bearing on agricultural productivity, and their impact can be severe in terms of economic losses and food security. The traditional approaches to disease management rely on periodic monitoring and therefore respond too late. An AI-based crop disease prediction and management system uses advanced machine learning algorithms, remote sensing data, and real-time environmental monitoring to predict the occurrence of diseases in crops very quickly. This system uses high-resolution satellite and drone imagery, along with multispectral and hyperspectral data, to detect the early onset of disease patterns in crops. The AI model gives accurate predictions about disease outbreaks through climatic, soil, and plant health data, thereby delivering actionable insights for focused interventions. These proactive measures enable an exact application of pesticides, reduce the chemicals required, and save crop loss. The integration of mobile and web platforms has improved access for the farmers because they are likely to get alerts on time regarding the treatment and best-practice guidelines. This system aims at supporting sustainable agriculture because it improves the management of the diseases within fields, reduction of the adverse impacts on the environment, and consequently improvement of crop yield.

Military Drone (Uav) Bhairav
Authors:-Vivek Kumar, Shivam Rajput, Rajneesh Kumar Rao, Avinash Prajapati, Professor Dr. Suresh Chand

Abstract-A quad copter, also known as a quad rotor or UAV, is a rotorcraft characterized by four rotors arranged to ensure stable vertical lift and manoeuvrability. Initially developed for military applications, quad copters have found widespread use in civilian sectors such as agriculture, aerial photography, surveillance, and infrastructure inspection due to their mechanical simplicity, cost-effectiveness, and versatility. This paper explores the historical evolution, technical aspects, and societal impacts of quad copters. It presents a comprehensive methodology for constructing a quad copter drone, detailing frame design, motor and propeller installation, undercarriage integration, flight controller setup (APM 2.8), and transmitter configuration (Flysky 16). An H-shaped aluminium frame and A2212/13T-1000KV brushless motors were employed for optimal stability, durability, and performance. Experimental testing, including battery, motor, thrust, and range evaluations, demonstrated that the prototype achieved a flight time of approximately 20 minutes, a thrust capacity exceeding 3.2 kg, and a communication range of around 2.8 kilometres. The study highlights the immense potential of quad copters in modern industries while also addressing the challenges related to control responsiveness, ethical concerns, and regulatory frameworks. The findings underscore the significance of quad copters as innovative aerial platforms with transformative capabilities across multiple sectors.

Adapting Deep Learning for Low-Resource Languages: Challenges and Solutions
Authors:- Dr. Meenakshi Thalor, Alok Bhuyan

Abstract- This research paper brings out the ways in which deep learning could be modified to aid in sentiment analysis and language comprehension in low-resource languages. Natural Language Processing (NLP) has made tremendous strides for high-resource languages like English and Mandarin. Yet, most of the world’s languages are not annotated, lack linguistic resources, and pre-trained models. The scarcity of this data constrains the performance of typical deep learning models. Extending current approaches to function well with low-resource languages is an increasing demand. The research surveys prominent deep learning methods and the modifications needed to facilitate language comprehension in underrepresented languages. We analyze existing tools, datasets, cross-lingual approaches, existing challenges, and directions for the future. The research introduces novel approaches to managing multilingual NLP tasks and enhancing language fairness in artificial intelligence systems.

Next Generation Solution for Property Management and Sales
Authors:-Atharva Kingaonkar, Samruddhi Bhad, Shraddha Deshmukh, Nandakishor Niture

Abstract-ePropertyClinic dot com is an online real estate website that aims to bring clarity and efficiency to the real estate sector in India. The platform is managed by Yashom Properties Dot Com Private Limited in compliance with the Real Estate Regulatory Authority (RERA) Act, 2016, which aims to maintain compliance and trust in the real estate sector. Targeting buyers, RERA certified brokers and developers, ePropertyClinic provides a secure environment to register, purchase and get information about RERA approved properties. The management, the key is to simplify, follow the real estate business. Initially, ePropertyClinic will offer free listings and plans to use a listing fee and revenue model in the future. These payment features will support premium brands, expert advice and ensure compliance with RERA norms. This compliance is at the core of the platform, which is designed to reduce legal risks and increase user trust by connecting users with professionals. The market has huge potential. With its focus on RERA-compliant listings and legal support, ePropertyClinic stands out in the competitive market and attracts the attention of investors and real estate professionals. Future opportunities include expanding the platform to more regions, expanding services, and building a reputation as a trusted provider in the Indian real estate sector.

AI-Powered Patient Flow Optimization in Emergency Rooms
Authors:-Kumar S

Abstract-Emergency Rooms (ERs) are high-pressure environments characterized by unpredictability, time-sensitive decisions, and often overcrowding. These conditions, when not optimally managed, can lead to prolonged wait times, increased medical errors, clinician burnout, and compromised patient outcomes. As healthcare systems strive to deliver efficient, equitable, and timely emergency care, Artificial Intelligence (AI) has emerged as a transformative force. AI-powered patient flow optimization employs machine learning, predictive analytics, and intelligent decision support systems to streamline triage, resource allocation, and care coordination. This paper explores how AI is revolutionizing emergency room operations by enhancing real-time decision-making, reducing bottlenecks, forecasting demand, and personalizing patient care pathways. It also examines the integration of AI tools into clinical workflows, the ethical and infrastructural challenges of implementation, and the future of AI-driven operational excellence in emergency healthcare settings.

DOI: 10.61137/ijsret.vol.11.issue2.378

AI in Continuous Blood Glucose Monitoring Systems
Authors:-Nagesh M S

Abstract-Continuous Blood Glucose Monitoring (CGM) systems have revolutionized diabetes management by providing real-time insights into glucose fluctuations, enabling patients and healthcare providers to take proactive measures. The integration of Artificial Intelligence (AI) into CGM systems has significantly enhanced their efficiency, accuracy, and predictive capabilities. AI algorithms analyze complex and voluminous glucose data to identify patterns, predict future trends, and offer personalized recommendations. This paper explores the applications of AI in CGM, examining how machine learning and deep learning models are being used for improved glycemic control, early detection of glucose anomalies, behavior prediction, and adaptive insulin therapy. It also discusses the impact of AI-driven CGMs on patient engagement, remote monitoring, and clinical decision-making. Ethical concerns, data privacy, and technological limitations are also addressed. This comprehensive analysis underscores AI’s transformative role in reshaping diabetes care, making it more precise, predictive, and patient-centric.

DOI: 10.61137/ijsret.vol.11.issue2.379

Augmented Reality and AI for Medical Training Simulators

Authors:-Mamatha U

Abstract-The evolution of medical education has witnessed significant transformations with the integration of emerging technologies. Among the most transformative are Augmented Reality (AR) and Artificial Intelligence (AI), which together are redefining the landscape of medical training. AR creates immersive learning environments by overlaying digital information onto the physical world, while AI adds an intelligent layer that adapts to learner needs, assesses performance, and offers personalized feedback. This paper explores the convergence of AR and AI in medical training simulators, detailing how this synergy is reshaping anatomical learning, surgical skill acquisition, patient interaction scenarios, and emergency response training. It discusses the pedagogical advantages, the technological architectures underpinning these systems, challenges in implementation, and the future trajectory of intelligent simulation platforms. Through predictive analytics, adaptive interfaces, and real-time feedback, AR and AI are equipping medical students and professionals with the experiential knowledge and confidence required in high-stakes clinical environments.

DOI: 10.61137/ijsret.vol.11.issue2.380

AI-Driven Optimization of Supply Chain Processes: Enhancing Efficiency and Reducing Costs

Authors:-Chandana P

Abstract-In today’s fast-paced global economy, supply chain optimization is crucial for enhancing operational efficiency, reducing costs, and ensuring seamless service delivery. Artificial Intelligence (AI) has emerged as a transformative tool, providing innovative solutions to traditional supply chain challenges. This paper explores the role of AI in optimizing supply chain processes, focusing on key areas such as demand forecasting, inventory management, logistics, and supplier relationship management. By leveraging machine learning, predictive analytics, and real-time data processing, AI can enhance decision-making, minimize inefficiencies, and support proactive problem-solving. Through case studies and industry applications, the paper illustrates the practical benefits of AI in supply chains and examines potential challenges, such as data quality, implementation costs, and ethical concerns. The paper concludes by discussing future trends and opportunities for AI in supply chain management, emphasizing its potential to reshape the future of global commerce.

DOI: 10.61137/ijsret.vol.11.issue2.382

AI in Legal Tech: Revolutionizing Legal Research and Case Prediction Models

Authors:-Anand.P

Abstract-The legal industry is experiencing a transformative shift with the integration of Artificial Intelligence (AI), particularly in the fields of legal research and case prediction. Traditional legal processes, often characterized by time-consuming document reviews and complex case analyses, are being redefined by intelligent algorithms capable of processing massive volumes of legal data in seconds. This paper explores the role of AI in legal tech, emphasizing its impact on enhancing legal research efficiency, improving case prediction accuracy, and supporting data-driven decision-making. It analyzes how natural language processing, machine learning, and predictive analytics are revolutionizing the legal landscape, making legal services more accessible, efficient, and equitable. The paper also addresses the challenges associated with AI implementation in law, including ethical concerns, data bias, and regulatory hurdles. By examining current applications and future possibilities, the paper illustrates how AI is reshaping legal practice and offering unprecedented opportunities for innovation and reform in the justice system.

DOI: 10.61137/ijsret.vol.11.issue2.386

Machine Learning for Sustainable Agriculture: Enhancing Crop Yield Predictions and Resource Management

Authors:-Ashok.P

Abstract-The global population is expected to surpass 9 billion by 2050, placing unprecedented demand on agricultural systems to produce more food while minimizing environmental impact. Sustainable agriculture, which focuses on producing food while preserving environmental health, is vital for ensuring future food security. Machine learning (ML), a powerful subset of artificial intelligence (AI), holds significant potential for enhancing agricultural practices by improving crop yield predictions, optimizing resource management, and enabling precision farming techniques. This paper explores how ML algorithms are being applied to sustainable agriculture, from predictive analytics for crop yield forecasting to real-time monitoring of soil conditions and pest management. It examines key ML techniques such as supervised learning, unsupervised learning, and reinforcement learning and their role in enhancing agricultural sustainability. Furthermore, the paper highlights the challenges and ethical considerations involved in implementing ML in agriculture and discusses the future outlook for AI-driven innovations in the sector.

DOI: 10.61137/ijsret.vol.11.issue2.387

AI for Predictive Analytics in Retail: Enhancing Inventory Management and Customer Engagement

Authors:-Krishna. M

Abstract- Artificial Intelligence (AI) is rapidly transforming various industries, and retail is no exception. Predictive analytics powered by AI is becoming a game-changer in the retail sector, especially when it comes to inventory management and customer engagement. By leveraging machine learning algorithms and big data, retailers can predict customer demand, optimize stock levels, reduce waste, and improve overall operational efficiency. This paper explores the role of AI-driven predictive analytics in retail, focusing on its impact on inventory management and customer engagement. It discusses the underlying technologies, such as machine learning and natural language processing, and highlights real-world applications where AI is revolutionizing retail operations. Additionally, the paper examines the challenges retailers face in implementing AI technologies and provides insights into the future potential of AI in shaping the retail landscape.

DOI: 10.61137/ijsret.vol.11.issue2.388

AI-Enhanced Public Health Strategies for Infectious Disease Prediction and Control

Authors:-Dr. Madhusudan B.G

Abstract- Artificial Intelligence (AI) has revolutionized many domains, and its integration into public health has proven particularly crucial in the prediction and control of infectious diseases. With the increasing frequency of disease outbreaks and the global interconnectedness of societies, traditional public health approaches often fall short in providing timely and effective responses. AI offers robust solutions through predictive analytics, real-time data processing, and pattern recognition to forecast disease trends, identify hotspots, and optimize intervention strategies. This paper explores the role of AI in enhancing public health systems to combat infectious diseases by leveraging machine learning algorithms, natural language processing, and data-driven models. It highlights successful case studies, discusses the integration of AI with epidemiological tools, and addresses the ethical and infrastructural challenges involved. The discussion aims to demonstrate how AI can transform public health strategies into proactive, scalable, and efficient systems capable of mitigating the spread of infectious diseases.

DOI: 10.61137/ijsret.vol.11.issue2.389

The Future of Autonomous Drones in Environmental Monitoring and Disaster Management

Authors:-

Abstract- Autonomous drones are becoming increasingly crucial in a variety of applications, with a particular focus on environmental monitoring and disaster management. These unmanned aerial vehicles (UAVs) are revolutionizing the way we approach environmental challenges by providing real-time data collection, efficient mapping, and analysis of ecosystems that are difficult or hazardous to access. This paper explores the potential of autonomous drones in enhancing environmental monitoring efforts, addressing environmental issues such as climate change, deforestation, and wildlife tracking. Additionally, the paper investigates the role of drones in disaster management, particularly in emergency response, damage assessment, and recovery efforts after natural disasters. With their ability to cover large areas quickly and collect high-resolution data, autonomous drones are positioned to play a key role in shaping future strategies for disaster preparedness and environmental sustainability. The paper also examines the technological advancements driving this transformation, the challenges associated with drone deployment, and the future potential of drones in these critical fields.

DOI: 10.61137/ijsret.vol.11.issue2.390

AI-Driven Approaches to Enhancing Employee Productivity in Smart Workplaces

Authors:-Nandan Kumar

Abstract- In today’s fast-paced and competitive business environment, organizations are increasingly looking for ways to enhance employee productivity and optimize workplace efficiency. The emergence of Artificial Intelligence (AI) has opened new avenues for improving employee performance through the automation of routine tasks, data-driven decision-making, and personalized work environments. AI-driven solutions such as machine learning, natural language processing, and intelligent virtual assistants are revolutionizing how employees interact with workplace tools and systems. This paper explores the role of AI in enhancing employee productivity in smart workplaces, examining the various applications of AI in task automation, collaboration, employee engagement, and decision-making. By analyzing the benefits and challenges associated with AI integration, the paper highlights the potential for AI to create a more efficient, dynamic, and collaborative workplace that drives both individual and organizational success.

DOI: 10.61137/ijsret.vol.11.issue2.391

Advancements in AI-Based Voice Assistants: Enhancing Accessibility and User Interaction

Authors:-Sunitha.M

Abstract- Artificial Intelligence (AI)-based voice assistants have become a transformative force in human-computer interaction, significantly reshaping how individuals engage with digital devices and services. These intelligent systems, including popular examples like Siri, Alexa, and Google Assistant, leverage natural language processing (NLP), machine learning (ML), and speech recognition technologies to understand, interpret, and respond to voice commands. This paper explores the recent advancements in AI-based voice assistants, focusing on their contributions to enhancing accessibility for individuals with disabilities, facilitating inclusive communication, and improving overall user interaction across various sectors. By examining the technological foundations, real-world applications, and challenges of voice assistants, the paper highlights their potential to create more intuitive, personalized, and universally accessible digital experiences. It also delves into ethical concerns such as data privacy, bias in voice recognition, and the need for equitable access to these technologies. Through an in-depth analysis, this study emphasizes the growing role of AI voice assistants in shaping a more connected and accessible digital future.

DOI: 10.61137/ijsret.vol.11.issue2.395

Using Machine Learning for Personalized Marketing Strategies in Digital Platforms

Authors:-Bhaskar Kumar

Abstract-The rise of digital platforms has dramatically transformed the way businesses engage with consumers, leading to an increasing demand for personalized marketing strategies. Traditional marketing methods, which often relied on broad, generalized campaigns, are no longer as effective in the digital age, where consumers expect tailored experiences. Machine learning (ML), a powerful subset of artificial intelligence, has emerged as a game-changer in the field of marketing. By leveraging vast amounts of consumer data, ML allows businesses to predict customer behavior, segment audiences more accurately, and deliver personalized content and advertisements. This paper explores how machine learning is revolutionizing personalized marketing strategies on digital platforms, highlighting its applications in customer segmentation, recommendation systems, predictive analytics, and customer journey optimization. Furthermore, it examines the challenges associated with implementing machine learning in marketing, such as data privacy concerns and the need for high-quality data. The paper concludes by discussing the future potential of machine learning in shaping the evolution of personalized marketing.

DOI: 10.61137/ijsret.vol.11.issue2.396

AI-Powered Smart Water Management Systems: Ensuring Sustainability in Urban Areas

Authors:-Chandan.M

Abstract-Water scarcity is becoming an increasingly critical issue for urban areas worldwide, exacerbated by rapid population growth, climate change, and inefficient water management practices. In response, smart water management systems powered by Artificial Intelligence (AI) are emerging as a key solution to ensure sustainable water usage. AI technologies, including machine learning, data analytics, and predictive modeling, can optimize water distribution, reduce wastage, monitor water quality, and improve decision-making processes in water management. This paper explores the application of AI in smart water management systems, highlighting its potential to address urban water challenges. It discusses how AI-powered tools can enhance water resource allocation, leak detection, and real-time monitoring, ultimately leading to more efficient and sustainable water usage in cities. Furthermore, the paper examines the integration of IoT devices with AI systems to provide continuous data collection, analysis, and response mechanisms. The paper concludes with an outlook on the future of AI in water management, addressing the challenges of implementation and data privacy concerns.

DOI: 10.61137/ijsret.vol.11.issue2.397

Blockchain and AI Integration for Secure Data Management in Healthcare

Authors:-Chethan Swamy

Abstract-The healthcare industry generates massive amounts of sensitive data daily, including medical records, patient information, diagnostic results, and treatment histories. Ensuring the security, privacy, and integrity of this data is a critical concern. Both Blockchain technology and Artificial Intelligence (AI) offer potential solutions to address these challenges, each excelling in different aspects of data management. This paper explores the integration of Blockchain and AI in the healthcare sector, focusing on how the combination of these technologies can enhance data security, improve healthcare delivery, and streamline administrative tasks. By utilizing Blockchain’s decentralized and immutable ledger system alongside AI’s capabilities in data analysis and decision-making, healthcare systems can ensure secure data management, improve patient outcomes, and reduce operational inefficiencies. The paper examines real-world applications of Blockchain and AI in healthcare, addresses the challenges in their integration, and discusses the future potential of these technologies in transforming healthcare data management.

DOI: 10.61137/ijsret.vol.11.issue2.398

Deep Learning in Video Surveillance: Enhancing Security and Threat Detection

Authors:-Deepthi. P

Abstract-The increasing demand for public safety and the growing concerns around security threats have driven the adoption of advanced surveillance technologies. Among these, deep learning has emerged as a transformative approach in video surveillance systems, enabling real-time and intelligent analysis of visual data. By leveraging neural networks, particularly convolutional neural networks (CNNs) and recurrent neural networks (RNNs), deep learning enables accurate detection, recognition, and classification of human behaviors, faces, vehicles, and other objects of interest. This paper explores how deep learning enhances video surveillance systems for threat detection, anomaly identification, and predictive analytics. It delves into the technical aspects of integrating deep learning with video surveillance, the advantages over traditional systems, the challenges in implementation, and its application in various sectors such as law enforcement, transportation, and smart cities. The study concludes by addressing the ethical and privacy concerns and discusses the future direction of deep learning in surveillance.

DOI: 10.61137/ijsret.vol.11.issue2.399

The Role of AI in Optimizing Renewable Energy Systems for Sustainable Development

Authors:-Hemanth Kumar

Abstract-As the world faces the growing challenges of climate change and energy insecurity, the transition to renewable energy has become a global imperative. Artificial Intelligence (AI) is playing a crucial role in optimizing renewable energy systems by improving efficiency, reducing costs, and enhancing the integration of renewable energy sources into existing power grids. AI-driven technologies, such as machine learning algorithms, predictive analytics, and optimization models, are being used to forecast energy demand, optimize energy production, manage energy storage, and improve grid stability. This paper explores the role of AI in optimizing renewable energy systems, focusing on its applications in wind, solar, and energy storage. It also examines the challenges and opportunities that AI presents in the context of sustainable development, highlighting the potential for AI to contribute to a cleaner, more sustainable energy future.

DOI: 10.61137/ijsret.vol.11.issue2.400

Machine Learning in Financial Risk Management: Enhancing Decision-Making in Uncertain Markets

Authors:-Manoj Kumar

Abstract-The dynamic nature of financial markets, marked by volatility, uncertainty, and the influence of diverse global factors, necessitates robust and adaptive risk management strategies. Machine learning (ML), as a subset of artificial intelligence (AI), is increasingly being adopted in financial risk management to analyze large volumes of data, detect patterns, and make informed predictions. This paper explores the integration of ML techniques in financial risk assessment and management, emphasizing their role in improving decision-making, identifying potential threats, and optimizing portfolio strategies in uncertain environments. The study examines various machine learning models, such as supervised learning, unsupervised learning, and reinforcement learning, and their applications in credit scoring, fraud detection, market risk forecasting, and stress testing. Furthermore, the paper addresses challenges related to data quality, model interpretability, regulatory compliance, and ethical concerns, highlighting the need for transparent and responsible AI implementation. Through a comprehensive analysis, this paper underscores the transformative potential of machine learning in advancing financial resilience and decision-making efficiency in complex and fluctuating markets.

DOI: 10.61137/ijsret.vol.11.issue2.401

The Impact of AI in Reducing Environmental Pollution: A Data-Driven Approach

Authors:-Raghav. B

Abstract-Artificial Intelligence (AI) has emerged as a powerful tool for tackling complex global challenges, and one of its most promising applications lies in addressing environmental pollution. As pollution continues to pose significant threats to ecosystems, human health, and climate stability, innovative and intelligent approaches are needed to monitor, predict, and mitigate its impacts. AI technologies, including machine learning, deep learning, and data analytics, offer data-driven solutions for real-time monitoring, pollution source detection, emissions forecasting, and sustainable policy development. This paper explores the role of AI in reducing environmental pollution through advanced data analysis, predictive modeling, and automation. It examines case studies, practical implementations, and the challenges associated with integrating AI into environmental management. The discussion concludes by highlighting future prospects and ethical considerations for responsible AI usage in creating cleaner, more sustainable environments.

DOI: 10.61137/ijsret.vol.11.issue2.402

Improving Energy Consumption in Q-Learning based Routing Protocol for Flying Ad-hoc Networks (FANETs)

Authors:-Devashri Anwekar,Vikas Sakalle

Abstract-The aviation technology known as Flying Ad-hoc Networks (FANETs) demonstrates potential for disaster response scenarios and border safety operations and agricultural observation tasks. Unmanned Aerial Vehicles (UAVs) encounter major obstacles in their routing protocols because of their fluctuating topology design along with their continually moving position and their constrained energy capacity. A new Q-Learning routing protocol enhances FANET energy efficiency by applying an advanced reward system which maintains packet delivery ratio and end-to-end delay alongside network operational duration. The proposed framework adopts an energy-conscious reward structure in Q-Learning combined with state variables for tracking UAV energy reservoirs and connection range together with connection stability indicators. The simulation results prove that our proposed routing protocol offers reduced energy usage by 27% against present Q-Learning mechanisms alongside increased network operation span to 32%. The protocol maintains high performance in both packet delivery ratio and end-to-end delay measurements which makes it ready for energy-efficient FANET implementations.

DOI: 10.61137/ijsret.vol.11.issue2.403

Design and Development of a Semi-Automatic Toilet Cleaning Robot
Authors:-Srijayiesh V, Ulagaratzagan P, Vignesh D

Abstract-Maintaining hygiene in public restrooms is crucial, yet manual cleaning poses health risks and inefficiencies. This paper presents the design and development of a semi-automatic toilet cleaning robot aimed at improving sanitation while reducing human intervention. The system integrates a mobile chassis with two tanks – one for soap solution and one for clean water – a rotating brush mechanism, and a water jet for effective cleaning. Controlled via Bluetooth and powered by an Arduino microcontroller, the robot uses DC motors, a relay-controlled water pump, and a mobile interface for operation. The proposed design offers a cost-effective, user-friendly solution to address sanitation challenges in public facilities.

Design and Development of Iot Prototype for Real-Time Theft Detection and Optimization of Electricity Using Machine Learning Techniques/strong>
Authors:-Assistant Professor Lakshmi G, Associate Professor Dr. M Charles Arockiaraj

Abstract-The pervasive issue of electricity theft poses a substantial challenge to power utilities globally, resulting in significant financial losses and operational inefficiencies. This paper presents the plan and growth of an IoT-based prototype for real-time electricity theft detection and optimization of electricity distribution using advanced machine-learning practices. By integrating smart meters and IoT sensors, the system continuously monitors electricity consumption, providing accurate, real-time data. Utilizing Deep Neural Networks (DNNs), the prototype identifies anomalous usage patterns indicative of theft, ensuring swift and precise detection. Additionally, the structure influences machine-learning procedures to optimize electricity distribution, enhancing overall efficiency and reducing waste. This complete method not only mitigates the risk of theft but also improves the dependability and sustainability of electricity supply. The proposed solution demonstrates important possibilities for enhancing the operational effectiveness of power utilities, offering a scalable, robust, and efficient framework for modern energy management.

DOI: 10.61137/ijsret.vol.11.issue2.404

Gamified Roadmap/strong>
Authors:-Shreyas Deogade, Ashique Mohammad F, Prashant Diwakar

Abstract-In order to solve the difficulties of navigating a career in computer science (CS), this paper introduces the CS Career Roadmap Platform, an interactive system that offers structured, data-driven learning pathways. The platform helps users advance their careers in specialized sectors (e.g., frontend, DevOps, and cybersecurity) by integrating dynamic visualization tools, cross-field talent recognition, and Kubernetes resource management

Application of Artificial Intelligence Tools for Estimation of Appropriate Machining Parameters/strong>
Authors:-Om A. Kokate, Jay S. Thakare, Kunal G. Pawar,Rahul D. Awasthi, Amol K. Kula

Abstract-The advent of Industry 4.0 has transformed traditional manufacturing paradigms by introducing digital and smart technologies into the core of industrial operations. One of the most impacted areas is Computer Numerical Control (CNC) machining, a widely adopted technique for precision manufacturing. Determining the optimal machining parameters such as cutting speed, feed rate, and depth of cut is vital to enhance productivity and ensure high-quality output. Conventionally, parameter selection relied heavily on expert knowledge and empirical methods. However, these approaches are time-consuming and prone to human error. This study investigates the application of Artificial Intelligence (AI) tools, specifically machine learning algorithms, to estimate and optimize machining parameters. Utilizing a structured CNC machining dataset, the paper demonstrates the development, training, and evaluation of predictive models including Linear Regression and Random Forest algorithms. The results reveal the potential of AI in improving parameter estimation accuracy, ultimately contributing to the objectives of intelligent manufacturing. In addition to performance enhancement, this research also explores future directions such as real-time deployment, integration with CNC systems, and AI-driven decision-making frameworks for adaptive machining environments.

House Price Prediction Using Machine Learning

Authors:-Pavithira R, Mrs.S. Sabitha

Abstract-Artificial Intelligence (AI) has emerged as a powerful tool for tackling complex global challenges, and one of its most promising applications lies in addressing environmental pollution. As pollution continues to pose significant threats to ecosystems, human health, and climate stability, innovative and intelligent approaches are needed to monitor, predict, and mitigate its impacts. AI technologies, including machine learning, deep learning, and data analytics, offer data-driven solutions for real-time monitoring, pollution source detection, emissions forecasting, and sustainable policy development. This paper explores the role of AI in reducing environmental pollution through advanced data analysis, predictive modeling, and automation. It examines case studies, practical implementations, and the challenges associated with integrating AI into environmental management. The discussion concludes by highlighting future prospects and ethical considerations for responsible AI usage in creating cleaner, more sustainable environments.

Training and Placement Management System
Authors:-Huma Naz, Prof. Piyush Vishwakarma

Abstract-This project The Training and Placement Management System is a web-based platform developed to simplify and streamline the placement process in educational institutions. The system is designed using HTML, CSS, JavaScript for the frontend and PHP for the backend, with MySQL as the database and phpMyAdmin for management. This project aims to provide a user-friendly interface for administrators, companies, and students to manage placement-related tasks efficiently. It allows students to register, update personal and academic details, and view placement and training status. Administrators can manage student records, update job postings, and track the status of training and placement activities. The system ensures easy access, real-time updates, and effective communication between all parties involved.

Data Visualization for Billionaires Statistics

Authors:-P. Surya Visahal, G. Humsika, Dr Diana Moses

Abstract-This study explores the statistical landscape of billionaires worldwide, examining trends in wealth accumulation, geographic distribution, industry dominance, and demographic patterns. Drawing from global wealth reports and billionaire indexes, the analysis highlights the exponential growth in billionaire wealth over the past decade, with significant concentration in sectors such as technology, finance, and real estate. The report also delves into disparities by region, revealing the dominance of the United States and China in billionaire count, alongside the emergence of billionaires in developing economies. Additionally, demographic insights underscore a persistent gender gap and a gradual generational shift as younger entrepreneurs enter the billionaire ranks. The findings underscore the growing influence of billionaires on global economics, politics, and philanthropy, prompting further inquiry into wealth inequality and regulatory frameworks.

DOI: 10.61137/ijsret.vol.11.issue2.404

AI-Integrated Blockchain Systems for Transparent Supply Chain Management
Authors:-Rajkumar

Abstract-The integration of Artificial Intelligence (AI) and Blockchain technology has opened up transformative possibilities across various sectors, particularly in supply chain management. This paper explores the synergistic combination of AI and Blockchain in the context of enhancing transparency, security, and efficiency within supply chains. With the increasing complexity and globalization of supply chains, maintaining transparency, reducing fraud, and improving operational efficiency have become crucial challenges. AI offers data-driven insights, predictive capabilities, and automation, while Blockchain provides a decentralized, immutable ledger that ensures the integrity and security of transactions. The paper discusses the architecture of AI-integrated Blockchain systems and their application in streamlining processes such as traceability, smart contracts, and decision-making. Additionally, the study examines real-world case studies where AI and Blockchain integration has proven successful, highlighting the benefits and challenges. By delving into the technical, operational, and economic aspects of AI-Blockchain systems, this paper aims to demonstrate how this convergence can revolutionize supply chain management, providing actionable recommendations for businesses seeking to leverage these technologies for a more transparent, efficient, and resilient supply chain.

DOI: 10.61137/ijsret.vol.11.issue2.408

AI for Chronic Disease Management: A Remote Monitoring and Predictive Analytics Approach

Authors:-Nagendra Kumar

Abstract-: In the evolving landscape of modern management, the integration of Remote Monitoring and Predictive Analytics (RMPA) has revolutionized how organizations operate, strategize, and make decisions. With the growing reliance on digital technologies, data-driven tools are becoming vital in managing operations, workforce, equipment, and customer interactions. Remote Monitoring (RM) enables real-time oversight of various assets and processes from a distance, minimizing the need for physical intervention. Simultaneously, Predictive Analytics (PA) harnesses historical and real-time data using machine learning and statistical models to forecast future events and inform strategic actions. This review explores the convergence of RM and PA as a comprehensive management approach, applicable across diverse sectors including healthcare, manufacturing, IT, and infrastructure. It discusses how these technologies enhance efficiency, reduce costs, ensure safety, and drive proactive decision-making. By analyzing current applications, benefits, limitations, and future directions, this article provides a detailed understanding of the role of RMPA in modern management practices. The sections delve into the architecture of remote monitoring systems, data analytics frameworks, sector-specific implementations, challenges, ethical implications, and innovations shaping this domain. The review concludes with reflections on the transformative potential of RMPA and recommendations for sustainable and scalable integration into business ecosystems.

DOI: 10.61137/ijsret.vol.11.issue2.409

Self-Healing Networks with AI-Based Fault Prediction in IoT Ecosystems

Authors:-Manohar Jain

Abstract-: The exponential growth of Internet of Things (IoT) ecosystems has significantly enhanced automation, efficiency, and connectivity across various industries. However, this complexity has also increased vulnerability to faults and failures, impacting performance and reliability. Traditional fault management mechanisms are reactive and often inadequate for managing dynamic and large-scale IoT environments. To address these challenges, this paper explores the concept of self-healing networks integrated with Artificial Intelligence (AI)-based fault prediction models, forming a resilient and proactive solution. The proposed framework leverages machine learning techniques to predict potential failures in real time and autonomously initiate recovery protocols without human intervention. By analyzing data streams from diverse IoT devices, AI models identify anomalies, predict faults, and dynamically reconfigure network components to ensure seamless operations. This self-healing approach minimizes downtime, optimizes resource utilization, and improves overall network efficiency. The paper discusses the design architecture, fault prediction algorithms, and healing strategies used in developing AI-driven self-healing IoT networks. Experimental evaluations demonstrate the effectiveness of this methodology in real-world scenarios, showcasing reduced recovery time and increased reliability. Moreover, the integration of edge and cloud computing further enhances the scalability and responsiveness of the system. The findings suggest that AI-enabled self-healing networks offer a transformative advancement for sustainable and intelligent IoT infrastructures. The paper concludes with insights into current limitations, potential applications across critical sectors, and directions for future research. This research paves the way for next-generation fault-tolerant systems that can autonomously learn, adapt, and recover from disruptions in highly interconnected environments.

DOI: 10.61137/ijsret.vol.11.issue2.410

Adaptive AI Systems for Personalized Learning in Virtual Classrooms

Authors:-Manmohan

Abstract-: The exponential growth of Internet of Things (IoT) ecosystems has significantly enhanced automation, efficiency, and connectivity across various industries. However, this complexity has also increased vulnerability to faults and failures, impacting performance and reliability. Traditional fault management mechanisms are reactive and often inadequate for managing dynamic and large-scale IoT environments. To address these challenges, this paper explores the concept of self-healing networks integrated with Artificial Intelligence (AI)-based fault prediction models, forming a resilient and proactive solution. The proposed framework leverages machine learning techniques to predict potential failures in real time and autonomously initiate recovery protocols without human intervention. By analyzing data streams from diverse IoT devices, AI models identify anomalies, predict faults, and dynamically reconfigure network components to ensure seamless operations. This self-healing approach minimizes downtime, optimizes resource utilization, and improves overall network efficiency. The paper discusses the design architecture, fault prediction algorithms, and healing strategies used in developing AI-driven self-healing IoT networks. Experimental evaluations demonstrate the effectiveness of this methodology in real-world scenarios, showcasing reduced recovery time and increased reliability. Moreover, the integration of edge and cloud computing further enhances the scalability and responsiveness of the system. The findings suggest that AI-enabled self-healing networks offer a transformative advancement for sustainable and intelligent IoT infrastructures. The paper concludes with insights into current limitations, potential applications across critical sectors, and directions for future research. This research paves the way for next-generation fault-tolerant systems that can autonomously learn, adapt, and recover from disruptions in highly interconnected environments.

DOI: 10.61137/ijsret.vol.11.issue2.411

Optimizing Urban Noise Control Using AI-Driven Acoustic Mapping

Authors:-Krishnaraj. S

Abstract-:Urban noise pollution has emerged as a pressing public health concern, affecting millions of city dwellers globally. Traditional methods of noise assessment and control have often fallen short due to limitations in spatial coverage, temporal resolution, and adaptability to dynamic urban environments. This paper presents a comprehensive exploration of AI-driven acoustic mapping as a transformative approach to optimize urban noise control. By integrating machine learning algorithms, real-time sensor data, and geospatial analytics, AI can generate high-resolution acoustic maps that capture the complex soundscape of urban environments. These maps not only provide detailed spatial distribution of noise levels but also reveal patterns, predict future noise trends, and guide mitigation strategies more efficiently than conventional models.
The objective of this study is to evaluate how artificial intelligence can revolutionize noise monitoring by enabling more accurate, scalable, and cost-effective solutions. Key components such as neural networks, edge computing, Internet of Things (IoT) sensor networks, and predictive analytics are examined for their role in data collection, processing, and interpretation. Case studies from leading smart cities illustrate successful implementations and potential pitfalls. In addition, we propose a conceptual framework for urban policymakers to adopt AI-driven acoustic mapping as part of sustainable urban planning. The paper concludes with a critical discussion of ethical, privacy, and technological challenges, alongside recommendations for future research and deployment strategies. Through this study, we aim to contribute to the growing discourse on leveraging AI for environmental sustainability and public health in urban ecosystems.

DOI: 10.61137/ijsret.vol.11.issue2.412

Emotional AI in Customer Experience: Adaptive Interfaces for Real-Time Sentiment Response

Authors:-Ganesh.M

Abstract-:This paper explores the integration of Emotional AI in customer experience management, particularly focusing on adaptive interfaces that can respond in real-time to customer sentiment. Emotional AI, a subset of artificial intelligence, uses machine learning models to detect and interpret human emotions through various data sources such as facial expressions, voice tone, and text. By leveraging this technology, businesses can create more personalized and engaging interactions with customers, improving satisfaction and fostering loyalty. Real-time sentiment response allows interfaces to adjust dynamically, offering tailored solutions and responses based on the emotional state of the customer. This paper delves into the applications, challenges, and future prospects of Emotional AI in transforming customer service and user interfaces. Furthermore, the study examines the ethical considerations, potential privacy concerns, and the effectiveness of adaptive interfaces in enhancing user engagement.
The research is presented in a structured manner, providing an overview of the evolution of Emotional AI, its technical foundations, and how it is reshaping customer experience strategies. Case studies and real-world examples are used to highlight the practical implications and the tangible benefits that businesses can gain by adopting such technology. Additionally, the paper outlines key methodologies for implementing adaptive emotional interfaces, with a focus on human-computer interaction and user-centered design principles.

DOI: 10.61137/ijsret.vol.11.issue2.413

Red Chili Defect Detection and Removal System using Raspberry Pi and Pi camera

Authors:-Shanmukha Priya Kurre, Bapanapalli Naga Bhargavi, Guntur Pushpa, Dabbugottu Thirupathi Vani, Chinthabttina Meghamala, Dhulipudi Chinmayi Sai Sri.

Abstract-:The Red Chilli Defect Detection and Removal System is a robust and automated solution designed to identify and remove defective red chillies on a conveyor belt. Utilizing a Raspberry Pi 3 B V1.2 and a Pi Camera module, the system captures real-time images of chillies as they move along the belt. Advanced image processing algorithms analyze these images to detect defects based on predefined parameters such as color, shape, and texture. Upon detection of a defective chilli, a control signal is sent to a DC motor-controlled ejection mechanism powered by an L293D motor driver to remove the defective chilli from the conveyor. This automated approach enhances the efficiency and precision of the quality control process in industries handling red chilli sorting, ensuring higher throughput and consistent product quality.

DOI: 10.61137/ijsret.vol.11.issue2.414

Research Paper on Working of Advanced Gas Leakage Detection System with Auto Cutoff Regulator and Exhaust Fan

Authors:-Dr. Vijay R. Tripathi, Mr. Shobhit B. Khandare, Mr. Akshay G. Khillare, Mr Ronit S. Rathod, Mr. Mohammed Musaddique Ahmad

Abstract-:Gas leakages in domestic, industrial, and commercial environments pose significant safety threats, including the risk of fire, explosion, and suffocation. An advanced gas detection system integrated with an automatic cutoff regulator and exhaust fan can significantly mitigate these risks by immediately detecting gas leaks, cutting off the gas supply, and ventilating the affected area. This paper presents a comprehensive study on the working principles, system architecture, components, technologies involved, and implementation challenges of such a system.

DOI: 10.61137/ijsret.vol.11.issue2.415

Adventure of Artemis (2D Game for PC using Unity Engine)

Authors:-Vaibhav Singh, Lucky Yadav, Shivam Dewangan, Shubham Singh

Abstract-:This project documents the collaborative work of four individuals in the creation of a 2D game, using the Unity Engine, C# and Visual Studios. Merging tech skills with natural creative talent, the team is on a mission to build an unforgettable and enjoyable gaming adventure. The project unfolds as a testament to the quality of game development, exploring the combined contributions of programming, artistry, and design. By leveraging modern game development tools and technologies, the team moves through all the complexities of game mechanics, level design, background score integration and wonderful sound effects. The culmination of their efforts is a polished arcade styled game that exemplifies their collective dedication, innovation, and expertise. Through this project, the team presents a comprehensive narrative of their collaborative journey, offering insights into the challenges, triumphs, and lessons learned in the pursuit of gaming excellence.

DDoS Attack Detection”- Using AIML Techniques

Authors:-Manoranjan Baral, Shriya Rane, Dr. Jasbir Kaur, Prof. Ifrah Kampoo, Prof. Sandhya Thakkar

Abstract-:Distributed Denial of Service (DDoS) attacks have emerged as a major threat to network security, causing significant disruptions to online services and substantial financial losses for organizations. This research investigates the applications of various machine learning techniques for DDoS attacks detection, utilizing the CICDDoS2019 dataset, which involves a wide spectrum of attack types and standard traffic patterns. We evaluate three prominent machine learning algorithms: Random Forest, XGBoost, and LightGBM. Our findings indicate that these models can effectively classify DDoS traffic with high accuracy, although performance varies across different attack types. The study emphasizes the significance of feature selection, data preprocessing, and model evaluation in enhancing detection capabilities. This research contributes to ongoing efforts to improve cyber security measures against evolving DDoS threats.

Crime Analysis and Prediction Using Machine Learning

Authors:-Narmatha.N, R.Sri Subramanian, Assistant Professor Mrs. Kohila.N

Abstract-:Wrongdoing is a genuine concern in numerous parts of the world, and understanding its designs is key to making more secure communities. In this inquiry, we investigate how machine learning can be utilized to analyze wrongdoing information and anticipate future criminal movements. By leveraging chronicled wrongdoing records and different related variables like area, time, and sort of wrongdoing, we prepare models that can offer assistance in recognizing designs and potential hotspots. Our objective isn’t just to crunch numbers but to offer knowledge that may bolster law requirements and approach creators in making more brilliant, data-driven choices. All through this ponder, we compare distinctive machine learning calculations to discover which ones perform best in exactness and unwavering quality. To discover which ones with the proper information and approach, machine learning can play a profitable part in wrongdoing anticipation and key arranging.

AI-Based Stroke Disease Prediction System Using Machine Learning

Authors:-Ms. P. Selvi, M.Pavithra

Abstract-:People today are affected by a wide range of diseases due to the current state of the environment and human lifestyle choices. Early detection and prediction of such diseases are necessary to prevent them from progressing to their final stages. Stroke, a cerebrovascular illness, is one of the leading causes of death and a significant financial burden on patients. Stroke risk has been estimated using various machine learning algorithms that incorporate predictors such as lifestyle factors to enable automated stroke diagnosis. Five supervised machine learning classifiers, including decision tree, random forest, support vector machine, Naïve Bayes, and K-Nearest Neighbor Algorithm, are utilized in this study to predict strokes. The dataset contains 5,110 items, each with 10 attributes. It is preprocessed to prepare it for prediction. Subsequently, the classifiers are trained on this data, and the performance of the classifiers is evaluated using a confusion matrix. With an accuracy of 95.8%, the RF algorithm outperformed all others in the used dataset for predicting strokes based on several physiological parameters. Clinical estimation of stroke using machine learning algorithms can be more effective when compared to a patient’s medical history and physical activity levels.

Traffic Sign Classification Using Deep Learning

Authors:-Pavithra. B, Assistant Professor Mrs. S. Bhuvaneswari

Abstract-:The “Traffic Sign Classification using Deep Learning” project presents a cutting-edge approach to enhancing computer vision capabilities by recognizing and classifying traffic signs accurately. The project harnesses the potential of Python and employs two advanced deep learning models, MobileNet Architecture and YOLOv5, to address the intricacies of traffic sign classification. MobileNet demonstrated remarkable performance, achieving a training accuracy of 97.00% and a validation accuracy of 98.00%. This success was driven by a meticulously curated dataset comprising 4,170 images spanning 58 diverse traffic sign classes, including speed limits, directional indicators, prohibitory signs, and hazard warnings. These classes provide exhaustive coverage of traffic regulations, ensuring robust model training and evaluation. This project underscores the significance of deep learning in automating traffic sign recognition, with potential applications in autonomous vehicles, intelligent transportation systems, and road safety enhancement.

A Review Paper on E-Commerce

Authors:-Shradhdha Solanki, Professor Kashyap. A. Dave

Abstract-:E-commerce is a boom in the modern business. E-commerce means electronic commerce. E-commerce (Electronic commerce) involves buying and selling of goods and services, or the transmitting of funds or data, over an electronic network, predominantly the Internet. E-commerce (Electronic commerce) is a paradigm shift influencing both marketers and the customers In this paper, we present an overview of e-commerce. We compare on the traditional commerce and e-commerce. We also focus on the unique features and types of e-commerce. We mainly discuss technologies of e-commerce. At the end of this paper, we summarize the advantages and disadvantages of e-commerce.

Stock Predator: ML-driven Stock Prediction

Authors:-Anushka Sakure, Shrishti Mishra, Riya Das, Reetika Roy

Abstract-:Stock price prediction remains a challenging task due to the inherent volatility and non-linear nature of financial markets. This study proposes a deep learning approach using Long Short-Term Memory (LSTM) networks to forecast stock prices, leveraging their ability to model temporal dependencies. Historical data from the S&P 500 index (2010–2023) was pre-processed, normalized, and used to train an LSTM model. The model’s performance was evaluated against ARIMA and SVM using RMSE, MAE, and directional accuracy. Results indicate that the LSTM model outperforms traditional methods, achieving an RMSE of 1.82 and 87% directional accuracy. This work highlights the potential of LSTM in financial forecasting
and algorithmic trading strategies.

AI Therapist: Artificial Intelligence for Mental Health Support
Authors:-Abinesh M, Prof. Ganapathiram N

Abstract-:The emergence of Artificial Intelligence in the field of mental health is transforming traditional approaches to therapy and emotional support. AI Therapist explores the integration of natural language processing, emotion detection, and conversational AI to provide accessible, scalable, and empathetic mental health support. The paper examines current technologies, discusses potential benefits and limitations, and proposes an AI-based mental wellness companion system capable of understanding and responding to emotional states in real-time. As mental health becomes a global concern, AI has the potential to bridge the gap between need and availability while complementing traditional therapy.

Cloud-Based ETL Pipelines for Social Media Analytics
Authors:-Parth Yangandul, Sakshi Soni

Abstract-:The rapid expansion of social media has resulted in massive volumes of user-generated content, offering valuable insights for businesses, researchers, and policymakers. However, extracting, processing, and analysing this data presents challenges in scalability, efficiency, and cost. This research proposes a cloud-based ETL (Extract, Transform, Load) pipeline designed for handling large-scale social media data, ensuring efficient extraction, transformation, and structured storage for further analysis. The study will explore data extraction techniques using the Reddit API, optimizing for rate limits and scalability. The transformation process will involve text cleaning, metadata structuring, and sentiment classification to enhance data quality. For storage, AWS S3, Redshift, and NoSQL databases will be evaluated based on performance, query speed, and cost efficiency. To handle real-time and batch processing, the research will implement Apache Spark, comparing their effectiveness in different analytics scenarios. Orchestration tools like Apache Airflow and Docker will automate ETL workflows, while Terraform will enable infrastructure provisioning. Performance will be assessed through processing speed, cost, scalability, and accuracy. Additionally, Power BI and Google Data Studio will be used for visualization and reporting. This research aims to provide a scalable, cloud-native ETL solution that enhances social media data analytics, benefiting data engineers, businesses, and researchers. Index Terms—ETL, Cloud Infrastructure, Social Media Analytics, Data Pipelines, Automation.

DOI: 10.61137/ijsret.vol.11.issue2.416

Jarvis AI: Personal Voice Assistant Using Python
Authors:-Onkar S. Barahate, Shriram S. Kulkarni, Chaitanya D. Wagh, Samarth D. Kamble, Ranjit S. Gund, Professor Mrs Ramgude.R.P

Abstract-:Jarvis AI Voice Assistant is an advanced system that utilizes artificial intelligence and speech recognition to execute voice commands and automate tasks. It is designed to enhance user experience by providing hands-free control over various computer functions. Jarvis can open applications such as Notepad, launch web browsers to access Google, and perform system operations like file management, playing media, and retrieving information from the internet. The assistant works by processing natural language inputs, understanding the user’s intent, and responding accordingly. Using AI-driven algorithms, it interprets commands and executes them efficiently. Jarvis can be integrated with smart home devices, enabling users to control lights, appliances, and security systems with voice commands. One of its key features is real-time interaction, allowing users to communicate naturally without the need for complex programming. The system continuously improves through machine learning, adapting to user preferences and optimizing responses. By automating routine tasks, Jarvis enhances productivity and simplifies digital interactions. With its potential applications in personal assistance, business automation, and smart environments, Jarvis AI represents the future of human-computer interaction, making technology more accessible and intuitive for everyday users.

Datamining Versus Artificial Intelligence
Authors:-Assistant Professor Mrs. Ratcha Jamuna

Abstract-:Data mining on the base of the artificial intelligence is using to create solutions; help regular databases to perform faster and extract hidden, useful part and information from data. Using data mining based on artificial intelligence in nowadays technology helps businesses to predict future trends and analysis behaviors, allowing them to make proactive, knowledge driven decisions and contain huge amount of data. Due to the requirements of the modern world data mining on the base of artificial intelligence can automate the most of manual processes, increase sales and boost business. Intelligent data risk analysis organizational decision making through deep data analysis. The data mining techniques underlying this analysis can be divided into two main objectives, they can either describe a data set or predict results using machine learning algorithms. These methods are used to identify and filter data, revealing the most interesting information, from fraud detection to user usage and even individual security incidents. My research has moved from the old point of view of manual data processing to an automated data management approach using the Big Data Analysis (BDA) paradigm [1]. BDA merges Big Data, Data Analytics, Data mining, and Artificial Intelligence in order to achieve data.

AI-Powered Zero Trust Architectures for Secure Government Cloud Systems
Authors:-Arun Kumar

Abstract-:AI-powered Zero Trust architectures are emerging as a pivotal approach for securing government cloud systems, addressing the increasing complexity and sophistication of cybersecurity threats. This paper explores the concept of Zero Trust Architecture (ZTA), its integration with Artificial Intelligence (AI), and how these combined technologies can bolster the security of cloud environments within government sectors. Zero Trust is grounded in the principle that trust should never be implicit, even within trusted networks, and demands continuous authentication, authorization, and monitoring to ensure secure access to resources. When AI is embedded within Zero Trust models, it enhances threat detection, risk assessment, and response capabilities by enabling automated, data-driven security decisions. The dynamic nature of cloud environments necessitates robust, adaptive security frameworks. Traditional perimeter-based defenses, such as firewalls and intrusion detection systems, no longer provide sufficient protection against modern cyber threats, including insider attacks, data breaches, and advanced persistent threats. As government organizations increasingly adopt cloud services to store and manage sensitive data, ensuring the security of these systems becomes paramount. AI offers the ability to analyze vast amounts of data in real time, predict potential vulnerabilities, and respond to incidents faster and more accurately than manual methods. This paper discusses the principles behind Zero Trust, the role of AI in its implementation, and examines several use cases within the government sector. It also highlights the challenges faced when adopting AI-powered Zero Trust frameworks and offers solutions to mitigate these challenges.

DOI: 10.61137/ijsret.vol.11.issue2.417

Predicting Migration Trends Using AI Models on Geopolitical and Climate Data
Authors:-Ashwini.M

Abstract-:Migration trends have always been influenced by a variety of factors, including political, economic, and environmental conditions. In recent years, the role of artificial intelligence (AI) in predicting migration patterns has garnered increasing attention. This paper explores the application of AI models in predicting migration trends by incorporating geopolitical and climate data. With the rapid advancements in machine learning and data analytics, AI models have proven to be powerful tools in analyzing complex, multidimensional datasets, providing insights into the potential movements of populations under various scenarios. This research aims to combine geopolitical factors such as conflict, political instability, and governance with climate-related data, including temperature changes, natural disasters, and resource scarcity, to generate more accurate migration forecasts. By applying machine learning algorithms, especially supervised and unsupervised techniques, the study integrates a wide range of datasets, including real-time geopolitical shifts and projected climate patterns, to create predictive models. The paper discusses the methodology of integrating AI algorithms with spatial and temporal data, while also evaluating the reliability and robustness of these models in forecasting migration flows across different regions. Furthermore, it addresses the challenges and limitations of using AI in this context, including the availability of high-quality data, ethical considerations, and the uncertainties inherent in predicting human behavior. The findings of this study will offer valuable insights for policymakers, international organizations, and humanitarian agencies in planning for future migration scenarios and managing related risks. By leveraging AI’s potential, migration forecasting can be more nuanced, timely, and context-aware, ultimately enabling better-informed decision-making in the face of global challenges.

DOI: 10.61137/ijsret.vol.11.issue2.418

Multilingual Voice AI Assistants for Bridging Language Gaps in Rural Healthcare
Authors:-Nagesh Algondi. A

Abstract-:The integration of multilingual voice AI assistants in rural healthcare has the potential to address significant language barriers that hinder effective communication between healthcare providers and patients in underserved regions. In many rural areas, healthcare professionals often face challenges in delivering quality care due to language differences, which may result in miscommunication, improper diagnosis, and inefficient treatment plans. The lack of effective communication in healthcare settings has been a persistent issue, and the multilingualism gap exacerbates this problem, leading to distrust and dissatisfaction among patients. By employing multilingual voice-based AI assistants, these gaps can be bridged, enabling seamless interactions between patients and healthcare providers who may not share a common language. This paper explores the development and implementation of AI-driven systems capable of translating medical information across multiple languages, with a focus on voice recognition and natural language processing technologies. These AI assistants can process spoken language and convert it into actionable healthcare data, providing accurate translations in real-time, which can significantly improve healthcare outcomes in rural regions. Additionally, the paper discusses the challenges, benefits, and future prospects of multilingual AI assistants in rural healthcare settings. The effectiveness of these tools in enhancing patient care, improving diagnosis accuracy, and promoting inclusivity in healthcare delivery are examined. This paper also explores the potential for such systems to improve healthcare access, reduce linguistic barriers, and empower rural communities with better health outcomes. This advancement in healthcare accessibility could foster increased community trust and make healthcare systems more inclusive, ensuring a more equitable healthcare environment across regions and languages. The analysis includes a look at ethical considerations, technological advancements, and the scalability of such solutions in different global contexts, highlighting how multilingual AI assistants can become a cornerstone of rural healthcare improvement worldwide.

DOI: 10.61137/ijsret.vol.11.issue2.421

AI and IoT Synergy for Intelligent Cold Chain Logistics
Authors:-Natraja

Abstract-:The integration of Artificial Intelligence (AI) and the Internet of Things (IoT) in logistics has significantly transformed the operational dynamics of various industries, especially in the context of cold chain logistics. The cold chain is a vital component in sectors such as food, pharmaceuticals, and biotechnology, where maintaining precise temperature conditions is critical for the preservation of goods. This paper explores the synergy between AI and IoT technologies to enhance the efficiency and reliability of intelligent cold chain logistics. IoT provides real-time monitoring through sensors that track the temperature, humidity, and location of goods during transit. Meanwhile, AI processes this vast amount of data to predict anomalies, optimize routes, and automate decision-making processes, ensuring that goods are stored and transported under optimal conditions. The combination of these technologies can improve supply chain transparency, reduce wastage, lower operational costs, and enhance customer satisfaction. Furthermore, the paper addresses the challenges and potential risks involved in integrating AI and IoT into cold chain logistics, offering solutions to mitigate these issues. By delving into the practical applications, benefits, and future prospects of this technological convergence, this paper provides a comprehensive overview of how AI and IoT can revolutionize cold chain logistics, making it more intelligent, efficient, and sustainable. Furthermore, the paper investigates the scalability of these technologies and their ability to meet the growing demands of global cold chain logistics, particularly in response to market dynamics, regulatory changes, and consumer expectations. It also considers the long-term impact of AI and IoT on sustainability and how these technologies contribute to reducing carbon footprints, improving energy efficiency, and ensuring compliance with global environmental standards.

DOI: 10.61137/ijsret.vol.11.issue2.422

A Comprehensive Anti-Theft Vehicle Protection Framework Using Embedded Electronics and Python
Authors:-Assistant Professor Kandimalla Mallikarjuna Rao, Pinapala Sai Pavan, Loya Ravi Teja, Vennapusa Chinna Lingareddy, Tatanaboina Johny

Abstract-:Vehicle theft remains a significant concern, necessitating the development of advanced security systems that provide real- time monitoring and effective deterrence. This project, “A Comprehensive Anti-Theft Vehicle Protection Framework Using Embedded Electronics and Python,” presents a robust solution integrating biometric authentication, sensor-based detection, image capture, and remote communication to ensure comprehensive vehicle safety. The system is built around an ESP32 microcontroller that coordinates with various components, including a fingerprint sensor for authorized access, a vibration sensor for detecting unauthorized tampering, and a camera module to capture images of potential intruders, which are stored and emailed using Wi-Fi. A display module (OLED or LCD) provides real-time feedback on system status, while a mosquito module emits ultrasonic waves to deter intruders. Upon verified access, a DC motor enables vehicle operation, and in the event of a breach, GSM and GPS modules send SMS alerts with the vehicle’s live location. The GSM module also supports remote control, allowing the user to activate or deactivate the motor via SMS. Additionally, a buzzer and display work in tandem to notify nearby individuals and the owner of a security threat. This integrated system leverages embedded electronics and IoT technologies to deliver an intelligent, multi-layered defense against vehicle theft.

DOI: 10.61137/ijsret.vol.11.issue2.427

Decentralized Voting System
Authors:-Tanisha Gaikwad, Aditya Jangam, Alish Firasta, Professor Vivek More, Assistant Professor Ajeenkya D Y Patil

Abstract-:This research paper explores the development and implementation of a decentralized voting system using blockchain technology. Traditional electoral systems face challenges such as voter fraud, lack of transparency, and centralized control. Blockchain offers a potential solution by providing a secure, transparent, and immutable platform for voting. In this paper, we propose a decentralized voting system built on Ethereum smart contracts, where votes are recorded securely, and election results are tamper-proof. We focus on key functionalities, including voter registration, vote casting, result tallying, and ensuring voter anonymity. The system was designed and tested using Ethereum’s test networks, with MetaMask integration for voter authentication. While the prototype demonstrated a functional and secure system for small-scale elections, challenges such as scalability, voter privacy, and legal compliance remain. Future work includes investigating layer-2 solutions, zero- knowledge proofs, and decentralized identity systems to address these limitations and scale the system for larger elections.

DOI: 10.61137/ijsret.vol.11.issue2.428

Advanced Collision Prevention and Iot- Based Vehicle Safety System
Authors:-Assistant Professor Rajani Veluvolu, Shaik Shareef, Nidamanuri Prasad, Upputuri Phanindra Kumar, Uppala Hemanth, Shaik Jony Basha

Abstract-:This project introduces an Accident-Avoidance System based on Arduino Uno, utilizing Ultrasonic Sensors and Long-Range Distance Measurement Sensors for collision prevention. When the long-range sensor identifies an obstacle within a set distance, the system reduces the engine speed via PWM control using an L298N motor driver and triggers a buzzer alert. If an obstacle is detected within a critical range by the ultrasonic sensor, the system halts the engine completely and activates a continuous buzzer warning. Moreover, real-time system status updates, including obstacle detection and motor control actions, are displayed on a 16×2 LCD module and transmitted to the ThingSpeak IoT cloud through a NodeMCU ESP8266 for remote monitoring. This system can be effectively implemented in autonomous vehicles, industrial automation, and safety-critical transportation applications.

DOI: 10.61137/ijsret.vol.11.issue2.429

Advanced Collision Prevention and Iot- Based Vehicle Safety System
Authors:-Mrs. Shaik. Vaheedha(Assistant Professor), Kalava Reshma, Battula Maha Lakshmi Thanuja, Chevula Geetha Manogna, Jetti Sathwika

Abstract-:Railway accidents involving humans and animals are a serious safety concern. To address this, we propose a Railway Track Guardian System using an ESP32 microcontroller and a LiDAR sensor to continuously monitor railway tracks for any obstruction caused by living beings. A LiDAR sensor mounted along the track scans for the presence of humans, animals, or other living beings. Simultaneously, a sensor installed on the train detects its motion and activates the monitoring system. When an obstruction is detected, the ESP32 processes the sensor data and immediately sends an alert to the train driver via the Blynk IoT app. Additionally, an onboard alarm is triggered to draw the driver’s attention quickly, enabling them to take timely action to prevent accidents. This system ensures real-time monitoring, fast communication, and enhances safety by providing early warnings to the train driver, thus significantly reducing the risk of collisions with living beings on the tracks.

DOI: 10.61137/ijsret.vol.11.issue2.430

Next Generation Solution for Property Management and Sales
Authors:-Atharva Kingaonkar, Samruddhi Bhad, Shraddha Deshmukh, Nandakishor Niture

Abstract-:PropertyClinic.com is an online real estate website that aims to bring clarity and efficiency to the real estate sector in India. The platform is managed by Yashom Properties Dot Com Private Limited in compliance with the Real Estate Regulatory Authority (RERA) Act, 2016, which aims to maintain compliance and trust in the real estate sector. Targeting buyers, RERA certified brokers and developers, ePropertyClinic provides a secure environment to register, purchase and get information about RERA approved properties. The management, the key is to simplify, follow the real estate business. Initially, ePropertyClinic will offer free listings and plans to use a listing fee and revenue model in the future. These payment features will support premium brands, expert advice and ensure compliance with RERA norms. This compliance is at the core of the platform, which is designed to reduce legal risks and increase user trust by connecting users with professionals. The market has huge potential. With its focus on RERA-compliant listings and legal support, ePropertyClinic stands out in the competitive market and attracts the attention of investors and real estate professionals. Future opportunities include expanding the platform to more regions, expanding services, and building a reputation as a trusted provider in the Indian real estate sector.

AI in Edge Computing and IoT
Authors:-Payal Sambhaji Nikam

Abstract-:The integration of Artificial Intelligence (AI) with Edge Computing and the Internet of Things (IoT) is revolutionizing real-time data processing by reducing latency, optimizing resource utilization, and enhancing security. Traditional cloud-based AI systems often suffer from high bandwidth consumption, increased latency, and potential privacy risks. By shifting AI-driven computations to edge devices, data is processed locally, enabling faster decision-making and reducing the need for continuous cloud connectivity. This paradigm is critical for applications requiring immediate responses, such as smart surveillance, autonomous vehicles, industrial automation, healthcare monitoring, and smart cities. AI at the edge enhances predictive analytics, anomaly detection, and adaptive learning, making IoT systems more autonomous and efficient. Additionally, edge AI reduces network congestion and operational costs while ensuring data privacy and security. As AI models become more optimized for low-power devices, the synergy between AI, edge computing, and IoT will drive the development of intelligent, scalable, and responsive systems across various industries. Moreover, the integration of AI with edge computing and IoT fosters a decentralized intelligence framework, where devices can collaboratively learn and adapt to changing environments without relying on constant cloud updates. This enables federated learning techniques, where AI models are trained locally on multiple edge devices, ensuring improved personalization while maintaining data privacy. Furthermore, advancements in hardware acceleration, such as AI-specific edge processors and neuromorphic computing, are enhancing the efficiency of on-device machine learning. These innovations pave the way for new possibilities in real-time automation, self-healing networks, and energy-efficient smart systems, making AI-driven edge computing a cornerstone of future technological ecosystems.

Skin Cancer Detection Using Deep Learning
Authors:-Shubhangi Bagul, Rakshata Barga, Prathamesh Mhatre, Dr.Rohini Palve, Bhuvan Mhatre

Abstract-:The Skin Cancer Detection Toolkit is designed to assist in the early detection and diagnosis of skin cancer, improving accuracy and reducing the need for invasive procedures. This deep learning-based system combines segmentation and classification to analyze skin lesions. The U-Net model detects lesion boundaries and estimates cancer depth, while the ResNet50 model classifies lesions as benign or malignant, aiding in timely diagnosis.The toolkit is built on the ISIC 2019 dataset for segmentation and a Kaggle’s HAM10000 dataset for classification. To enhance model performance, preprocessing techniques such as image resizing, normalization, and augmentation are applied. This two- step approach first identifies the lesion and its depth, then determines whether it is cancerous.Designed for dermatologists, researchers, and healthcare institutions, this toolkit simplifies the diagnostic process, enabling faster and more reliable clinical decisions. By integrating segmentation and classification, it enhances medical accuracy, early detection, and patient care, showcasing the power of deep learning in healthcare.

Crafting Worlds: 3d Animation
Authors:-Agarwal Sneha, Anampaka Sneha, Repalle Deepika Persis, Assistant Professor Mrs. Nandita Manvar

Abstract-:The process of rebuilding 3D high-resolution (HR) [1]models from 2D photographs has grown very important in multiple applications, such as augmented reality (AR), virtual reality (VR) [22], games[6] , medical imaging [12], and digital content creation. Conventional methods of 3D scanning may need costly equipment, making access difficult. The current study demonstrates an AI-based system that fully automates 3D model generation from 2D photographs based on computer vision and deep learning methods. The system utilizes Neural Radiance Fields (NeRF) [11], Open3D[8], OpenCV [18], and Blender API to generate high-quality 3D reconstructions. Images are uploaded through a web interface by the users, which are then processed through a pipeline of sparse structure generation, structured latent generation, and multi-image optimization. Exporting the resulting models in different formats like Gaussian Splats and GLB is supported by the system, which allows them to be used in different applications. Furthermore, a 10-second animated visualization is created based on OpenCV[18] and FFmpeg[16] to increase user interaction with the model. The suggested method presents an improved multi-image processing algorithm that enhances depth reconstruction and estimation accuracy. In contrast to conventional photogrammetry techniques that are plagued by perspective changes and uneven lighting, this technique corrects 3D models through structured latent learning. Future developments are real-time rendering via WebGL or Three.js [14], cloud processing for scalability, greater file format compatibility, and AI-based texture augmentation. Further functionalities like AR/VR integration, automatic animation synthesis, and a marketplace with community support will make the platform even more usable. By offering a scalable and user-friendly solution, this work closes the gap between sophisticated 3D modelling technologies and practical applications, enabling wider use in fields that need precise 3D reconstructions.

DOI: 10.61137/ijsret.vol.11.issue2.431

Symmetric Key Cryptography
Authors:-Henil Patel , Shravan Panchal , Himanshu Kotval , Jarmil patel Asst. Prof. Ms. Twinkle Patel

Abstract-:Symmetric key cryptography is a method used to keep information safe. It uses one secret key to both lock and unlock data. This paper explains how symmetric key cryptography works, talks about popular algorithms like DES and AES, and shows where it is used in real life. It also discusses the problems of sharing secret keys and looks at what the future might hold for this kind of encryption .This paper explains the basic idea behind symmetric key cryptography and how it works. It also gives an overview of some of the most well-known symmetric algorithms like Data Encryption Standard (DES) , Triple DES (3DES) , Advanced Encryption Standard (AES), and Blowfish. Each of these methods has different features, strengths, and weaknesses, which are discussed in the paper.

Adventure of Artemis (2D Game for PC using Unity Engine)
Authors:-Vaibhav Singh, Lucky Yadav, Shivam Dewangan, Shubham Singh, Professor Ravikant Soni

Abstract-:This project documents the collaborative work of four individuals in the creation of a 2D game, using the Unity Engine, C# and Visual Studios. Merging tech skills with natural creative talent, the team is on a mission to build an unforgettable and enjoyable gaming adventure. The project unfolds as a testament to the quality of game development, exploring the combined contributions of programming, artistry, and design. By leveraging modern game development tools and technologies, the team moves through all the complexities of game mechanics, level design, background score integration and wonderful sound effects. The culmination of their efforts is a polished arcade styled game that exemplifies their collective dedication, innovation, and expertise. Through this project, the team presents a comprehensive narrative of their collaborative journey, offering insights into the challenges, triumphs, and lessons learned in the pursuit of gaming excellence.

DOI: 10.61137/ijsret.vol.11.issue2.432

A Review Paper on E-Commerce
Authors:-Shradhdha Solanki, Professor Kashyap . A. Dave

Abstract-:E-commerce is a boom in the modern business. E-commerce means electronic commerce. E-commerce (Electronic commerce) involves buying and selling of goods and services, or the transmitting of funds or data, over an electronic network, predominantly the Internet. E-commerce (Electronic commerce) is a paradigm shift influencing both marketers and the customers In this paper, we present an overview of e-commerce. We compare on the traditional commerce and e-commerce. We also focus on the unique features and types of e-commerce. We mainly discuss technologies of e-commerce. At the end of this paper, we summarize the advantages and disadvantages of e-commerce.

Automated Segmentation of Retinal Blood Vessels from Fundus Images Using Transfer Learning in U-Net Model
Authors:-Aditya Tambe, Vedant Gadekar, Ruchita Kenjale, Professor Ravindra Murumkar

Abstract-:The improper circulation of flow of blood inside the retinal vessel in the body is the primary source of most of the optical disorders including partial vision loss and blindness. Accurate blood vessel segmentation of the retinal image is used for biometric identification, computer-assisted laser surgical procedure, automatic screening, and diagnosis of eye diseases like diabetic retinopathy, age-related macular degeneration, hypertensive retinopathy, and so on. Proper identification of retinal blood vessels at its early stage helps medical experts to take convenient treatment procedures which could reduce vision loss. Automatic and proper retinal blood vessel segmentation helps to solve various optic diseases. As the number of patients and the necessity of the vessel segmentation is increasing day by day, an automated system is an alternative to the manual system. Retinal blood vessels have an important role in the diagnosis and treatment of various retinal diseases. For this reason, vasculature extraction is important in order to help specialists for the diagnosis and treatment of systemic diseases. For segmentation various machine learning methods are available such as Support Vector Machines (SVM). But deep learning models perform better than traditional machine learning algorithms like SVM at segmentation tasks. Currently various deep learning models are available such as fully convolutional networks, encoder- decoder based models. U-Net and V-Net are two popular image segmentation architectures used in biomedical image segmentation. In an attempt to provide a highly accurate retinal blood vessel segmentation method, this project includes experiment with transfer learning approach. VGG- 19 is used as a pre-trained encoder for the U-Net model. The objective of the project is to study the impact of transfer learning on retinal blood vessel segmentation. The layers from the encoder section are frozen selectively in layer-by-layer manner. After each layer is frozen the model is trained and statistics are recorded. Using the recorded statistics, the impact of transfer learning is measured.

Supply Chain Management Using Blockchain
Authors:-Ansif A, Sindhu Daniel

Abstract-:Blockchain technology is emerging as a transformative solution in supply chain management (SCM), offering enhanced transparency, security, and operational efficiency. This study proposes the development of a decentralized blockchain-based system to trace and authenticate the movement of goods from production to delivery. By leveraging blockchain’s inherent properties such as data immutability, smart contract automation, and decentralized ledgers, the system ensures secure, tamper-proof, and real-time tracking across all stakeholders, including suppliers, transporters, retailers, and consumers. Smart contracts enable automatic enforcement of predefined conditions, reducing human intervention and administrative delays. The proposed solution minimizes fraud, increases accountability, and optimizes inventory and logistics workflows. This paper demonstrates that blockchain technology can serve as a foundation for a more resilient, transparent, and efficient supply chain ecosystem across diverse industries.

Stock Predator: ML-driven Stock Prediction
Authors:-Anushka Sakure, Shrishti Mishra, Riya Das, Reetika Roy

Abstract-:Stock price prediction remains a challenging task due to the inherent volatility and non-linear nature of financial markets. This study proposes a deep learning approach using Long Short-Term Memory (LSTM) networks to forecast stock prices, leveraging their ability to model temporal dependencies. Historical data from the S&P 500 index (2010–2023) was pre-processed, normalized, and used to train an LSTM model. The model’s performance was evaluated against ARIMA and SVM using RMSE, MAE, and directional accuracy. Results indicate that the LSTM model outperforms traditional methods, achieving an RMSE of 1.82 and 87% directional accuracy. This work highlights the potential of LSTM in financial forecasting and algorithmic trading strategies.

DOI: 10.61137/ijsret.vol.11.issue2.433

Investigating the Growth Trends of LGBTQ Travelers in Thailand’s Tourism Industry
Authors:-Associate Professor Dr. Aphisavadh Sirivadhanawaravachara

Abstract-:This research investigates the growth trends of LGBTQ travelers within Thailand’s tourism industry, aiming to fill the gap in empirical knowledge regarding this demographics’ impact and preferences. Utilizing a qualitative interpretive field study approach, the research employs interviews and participant observation to explore the motivations, behaviors, and experiences of LGBTQ tourists in Thailand. The study addresses key questions surrounding the scope of LGBTQ travel, growth patterns, organizational responses to inclusivity, and strategies for attracting this market segment. By analyzing travel behaviors, preferences, and emerging tourism trends, the research seeks to provide valuable insights for stakeholders in the tourism sector. The findings will not only contribute to academic discussions on inclusive tourism but will also have practical implications for enhancing marketing strategies, destination management, and fostering a more accepting society. Ultimately, this research aims to highlight the significant potential of LGBTQ tourism in Thailand, emphasizing the need for tailored, inclusive travel experiences that resonate with the diverse desires and aspirations of LGBTQ travelers. The exploration of this topic is crucial in understanding the economic, social, and cultural dimensions of LGBTQ tourism within Thailand’s vibrant tourism landscape. By investigating the motivations behind LGBTQ travel, this research will shed light on the unique experiences and perspectives of LGBTQ tourists, contributing to a more comprehensive understanding of this growing market segment. Additionally, the research will explore the challenges and barriers faced by LGBTQ travelers in Thailand, providing insights into strategies for creating an inclusive and welcoming environment. Through a thorough analysis of tourism trends and the preferences of LGBTQ travelers, this research will offer practical recommendations for industry stakeholders to effectively target and cater to this vibrant market. The impact of LGBTQ tourism within Thailand cannot be underestimated, as it has the potential to drive economic growth, promote cultural exchange, and foster a more tolerant society. As Thailand continues to establish itself as a popular LGBTQ-friendly destination, it becomes increasingly important to understand the unique needs and desires of LGBTQ travelers in order to provide them with fulfilling and inclusive travel experiences. Through in-depth interviews and participant observation, this research aims to capture the nuances and complexities of LGBTQ tourism in Thailand, shedding light on previously unexplored aspects. By expanding our knowledge on this demographics’ impact and preferences, the research will contribute to a more informed and inclusive tourism industry, benefitting both LGBTQ tourists and the broader society.

AI-Powered Control Systems for Nanobots in Microbial Infection Zones
Authors:-Amruth P

Abstract-:The use of nanobots in treating microbial infections has emerged as a promising strategy, particularly given the growing concerns about antibiotic resistance. These nanobots are small-scale machines capable of performing highly specific tasks within the human body, including pathogen detection, drug delivery, and biofilm disruption. However, to be truly effective in microbial infection zones, where conditions are often dynamic and unpredictable, nanobots require advanced control systems. Artificial intelligence (AI) has the potential to provide these control systems with the necessary intelligence to navigate these challenging environments autonomously. This article explores the integration of AI-powered control systems in nanobots for microbial infection zones, focusing on their ability to enhance precision, adaptability, and efficiency in medical applications.

DOI: 10.61137/ijsret.vol.11.issue2.434

Reinforcement Learning Applications in Autonomous Systems: From Traffic Optimization to Robotics
Authors:-Asha Devi

Abstract-:Reinforcement Learning (RL), a dynamic branch of machine learning, has emerged as a powerful tool for enabling autonomous decision-making in complex and uncertain environments. By learning through interaction, trial, and reward-based feedback, RL equips agents to optimize their actions without requiring explicit programming. This review explores the expanding role of RL across diverse autonomous systems, including traffic management, autonomous vehicles, industrial robotics, unmanned aerial vehicles (UAVs), and healthcare robotics. In traffic optimization, RL adapts to real-time flow patterns, significantly reducing congestion. For autonomous vehicles, RL facilitates safe and efficient navigation, leveraging deep learning for real-time perception and control. Industrial robotics benefit from RL by enhancing adaptability in tasks such as assembly and material handling, while UAVs gain from RL’s ability to support complex aerial maneuvers and cooperative missions. In healthcare, RL contributes to the development of intelligent surgical and rehabilitation robots that learn from both simulation and human interaction. The integration of RL with technologies like deep learning, computer vision, and sensor fusion continues to enhance autonomy across domains. While challenges such as safety, sample efficiency, and sim-to-real transfer remain, ongoing research promises scalable, robust RL solutions. This article presents a comprehensive analysis of current applications and the future trajectory of reinforcement learning in autonomous systems.

DOI: 10.61137/ijsret.vol.11.issue2.435

Machine Learning Approaches to Engineer Nanoantibiotics for Treating Infections in Immunocompromised Patients
Authors:-Bhagya S

Abstract-:Microorganisms interact with their environment across multiple scales, ranging from molecular interactions to population dynamics. In the presence of nanostructures, the complexity of these interactions increases, as nanomaterials possess the unique ability to alter microbial behavior at both the cellular and molecular levels. Their applications are vast, spanning antimicrobial coatings, medical devices, biosensors, and bioremediation technologies. Despite these advancements, the exact mechanisms by which nanostructures influence microbial behavior, including biofilm formation, antibiotic resistance, and metabolic activity, are not fully understood. The integration of multiscale modeling, which combines molecular dynamics simulations with population-level models, holds significant promise in unraveling these complexities. This paper explores the interaction of microorganisms with nanomaterials, the role of multiscale modeling, and the potential applications in healthcare, biotechnology, and environmental science.

DOI: 10.61137/ijsret.vol.11.issue2.436

Multiscale Modeling of Microbial Interactions in Nanostructured Environments
Authors:-Harish L

Abstract-:Microbial interactions with nanostructured materials are a topic of great significance in various scientific and industrial fields, particularly in medicine, biotechnology, and environmental science. Nanostructures, due to their unique properties such as small size, high surface area, and reactivity, can significantly influence microbial behavior. Understanding the complex interactions between microorganisms and nanostructured environments is essential for advancing the use of nanomaterials in drug delivery, biofilm control, and microbial bioremediation. This article explores the role of multiscale modeling in studying microbial interactions with nanostructures, emphasizing how the integration of various models at different spatial and temporal scales offers a more comprehensive understanding of these interactions and their implications for future applications.

DOI: 10.61137/ijsret.vol.11.issue2.438

AI-Driven Discovery of Nanostructures That Disrupt Antibiotic-Resistant Biofilms
Authors:-Sahana M

Abstract-:Antibiotic-resistant biofilms pose a significant challenge to modern healthcare, complicating the treatment of infections associated with chronic diseases and medical devices. These biofilms provide bacteria with a protective barrier that shields them from antibiotics and immune responses, making infections difficult to treat. The development of novel therapeutic strategies to disrupt these biofilms is crucial in overcoming antibiotic resistance. Nanotechnology, particularly engineered nanostructures, holds great promise for addressing this challenge. Recent advancements in artificial intelligence (AI) have enabled the acceleration of the discovery and optimization of nanomaterials for biofilm disruption. This article explores how AI can be applied to the design, synthesis, and testing of nanostructures that target antibiotic-resistant biofilms, offering new insights into the development of more effective treatments.

DOI: 10.61137/ijsret.vol.11.issue2.442

Blockchain-Based Voting Systems: Ensuring Transparent, Secure, and Trustworthy Elections in the Digital Era
Authors:-Ibrahim Khalil Ahmad, Mohamed Abas Ali, Syed Arshad Ali, Sharik Ahmad

Abstract-:Blockchain technology provides a decentralized, transparent, and immutable infrastructure capable of revolutionizing electoral systems. This paper investigates the application of blockchain in voting systems, focusing on its potential to enhance election security, voter privacy, and trust. Key features such as smart contracts, cryptographic anonymity, and tamper-proof ledgers offer promising solutions to electoral fraud, vote tampering, and voter suppression. However, adoption is hindered by scalability limitations, legal barriers, and accessibility concerns. The study concludes that integrating blockchain with biometric authentication and regulatory oversight can pave the way for secure and verifiable electronic voting systems.

DOI: 10.61137/ijsret.vol.11.issue2.444

Intelligent Video Surveillance System Using AI
Authors:-P.Manogna, K.Manasa, M.Sri Haeshitha

Abstract-:The AI based smart surveillance system is gaining huge attention because of the rise in demand for safety and security Surveillance system is designed to analyse video, image, and audio or any kind of data automatically without any human involvement . Developments that happened in recent times in the computer vision , sensor devices and Auto ML is playing a keen role in accrediting such Intelligent system . There are many kinds of surveillance and security systems present in the market but they are lack in real time decision making.This intelligent survelliance system is self-decision making system which helps the different public departments like health, fire, police, many more to track and reach the particular location where the incident was happened . Here we provide the AI based intelligence sur -veillance and the security which analyse and takes the decision immediately by itself.

AlCon: A Lightweight Alumni Connect Portal Using Flask and MySQL
Authors:-Assistant Professor Suraj Kumar B P, Mehul Chandak, Nancy Oinam, Abhishek Thakur, Atharv Agrawal

Abstract-:AlCon is a minimalist alumni portal designed to facilitate efficient and secure interaction between academic in- stitutions and their alumni communities. The platform aims to bridge the gap between alumni and their alma mater through a centralized digital interface that supports scalable and responsive engagement. The system is built using a lightweight technology stack, featuring a responsive frontend developed with HTML5 and TailwindCSS, a Flask-based backend architecture, and a MySQL relational database for structured data persistence. One of the core components of the system is the imple- mentation of JWT (JSON Web Token) authentication, which provides a stateless and secure mechanism for managing user sessions and access control. The frontend incorporates responsive alumni profile cards and dynamic interface elements to ensure a consistent user experience across different screen sizes and devices. Backend functionality includes optimized CRUD (Create, Read, Update, Delete) operations that interact with the database through modular APIs, enhancing maintainability and perfor- mance. The system was subjected to a series of functional and non-functional tests to assess its performance, usability, and robustness. These evaluations demonstrated reliable responsive- ness under various simulated usage conditions, validating the efficiency of both the data flow and the UI rendering mechanisms. Error handling and input validation were also incorporated throughout the application to ensure data integrity and system stability. AlCon stands as a practical and extensible solution for institutions seeking a streamlined approach to alumni data management and engagement. Its modular design allows for future enhancements, such as integration with external services, analytics dashboards, or communication modules. The project’s focus on minimalism, responsiveness, and security highlights its potential as a foundation for more complex alumni management systems in educational ecosystems.

DOI: 10.61137/ijsret.vol.11.issue2.445

Examining the Impact of Data Imbalance on the Effectiveness of the Proposed Algorithm for Real-Time Prediction of Heart Disease and Suggesting Solutions
Authors:-Pragathi, Sneha Ghode, Nisha Hebbar, Bhoomika Surendra Naik, Professor Dr. Lokesh M R

Abstract-:The main goal of this review paper is to describe the impact that data imbalance has on the Prophet algorithm’s ability to accurately predict heart disease in real time and offer solutions for these effects. This case study of a mobile health illness management software includes three modules: User, Admin, and Doctor. ECG data is available to registered users, but they must also upload it in csv format so that the Prophet program, which generates educational reports, can further analyze it. The credibility of the predictions may be impacted by this biased data or noise, which could impair the model’s performance and lead to biases in its output. This review highlights some issues with the problem of imbalanced data, makes an effort to gather data and knowledge from the literature that is currently available, and offers some tactics that could be helpful in resolving such problems, including algorithm modification, data resampling, and synthetic data. The article concludes by discussing the application’s potential to improve heart disease early detection and streamline interactions between medical professionals and patients. Because it deals with healthcare quality, this review first offers a framework for future research on mobile health technologies and emphasizes the idea of addressing data imbalance in data-driven models.

DOI: 10.61137/ijsret.vol.11.issue2.446

Online Auction System Using Blockchain Technology
Authors:-Dipali Phad, Shruti Jadhav, Harshada Rane, Saish Shinde, Professor P V Nagare, Professor P. V. Nagare

Abstract-:Online auction platforms have revolutionized the way digital assets and products are bought and sold. However, traditional auction systems are typically hosted on centralized servers, exposing them to several vulnerabilities such as data tampering, single points of failure, and manipulation of bid values. This research paper proposes an Android-based decentralized online auction system that integrates a custombuilt blockchain ledger using the SHA-256 hashing algorithm to store all bid records securely. Unlike existing blockchain auction platforms that use smart contracts our system excludes smart contracts entirely and instead uses a simulated recharge wallet for handling virtual bid payments. Firebase is utilized as the backend database to handle authentication and real-time data sync. The system architecture promotes trustless interactions while remaining lightweight and mobile-accessible. This paper discusses the detailed architecture, blockchain logic, wallet mechanism, and the system’s realtime capability, showing its potential as a practical and secure auction platform without needing smart contracts.

An Overview on Benefits of “Regenerative Braking System in Bicycles
Authors:-Sanjay Kumar

Abstract-:We are rapidly approaching to the era of electric vehicles. The growth of the automotive sector has numerous benefits. Regenerative braking systems (RBS) are now a days used in electric bicycles to improve efficiency and sustainability. Regenerative braking System is an emphatic method of recovering energy released, by capturing kinetic energy during braking and converting it into electric energy. This paper examines the benefits of regenerative braking in bicycles and discuss its challenges, and potential future developments.

Smart Gate Automation Using License Plate Recognition
Authors:-Assistant Professor Malempati Srinivas, Shaik Nagur Sharief, Nelapati Venkatesh, Tandra Naga Siva Sai, Shaik Ashik Taharuk

Abstract-:This paper presents a License Plate Recognition-Based Automatic Gate Opening System designed to automate vehicle access control and enhance security. The system captures vehicle license plates using a high-resolution camera, processes the images with optical character recognition (OCR), and verifies the extracted data against a database of authorized vehicles. Upon verification, the gate opens automatically; unauthorized vehicles are denied access and may trigger alerts. Machine learning and deep learning models ensure high accuracy under varying environmental conditions. Integrated with IoT for real-time communication and optionally with cloud computing for scalability, the system is ideal for residential, commercial, and smart city applications.

DOI: 10.61137/ijsret.vol.11.issue2.447

Customer Relationship Management: Digital Transformation and Sustainable Business Model Innovation
Authors:-Budankayala Dharani, Enti Harshni Rao, Chanchal Agrawal, Dr. Siddharth Choubey

Abstract-:This paper proposes a research model to analyze how Customer Relationship Management (CRM) enhances small and medium enterprises (SMEs) through customer knowledge management (CKM) and innovation. CRM is explored as both a technological tool and strategic philosophy, contributing to sustainable business model innovation across economic, environmental, and social dimensions. By integrating CRM’s sales, marketing, and service components, the study identifies CRM as a dual driver of exploitation and exploration strategies. The proposed model addresses gaps in linking CRM with sustainability, offering hypotheses to evaluate CRM’s role as a green IT solution promoting digital transformation and long-term business sustainability.

DOI: 10.61137/ijsret.vol.11.issue2.448

Sign Language to Voice Translator
Authors:-B. Sai Praneetha, Dyanesh R, M. Praniksha, Sanjai R J, Professor Dr. Ajay Kumar Singh

Abstract-:One area of assistive technology that is gaining popularity is its capacity to facilitate communication between people with hearing impairments and the general public. This research introduces a real-time sign language detection system that uses a single webcam to recognize the alphabet in American Sign Language (ASL) and interpret numerical gestures. Based on hand landmarks recorded by MediaPipe, the system recognizes ASL alphabets with high accuracy and recognizes digits from 1 to 10 using deep learning, computer vision, and language processing algorithms. The suggested solution combines OpenCV and MediaPipe for landmark tracking, pyttsx3 for speech feedback, and a user-friendly graphical user interface created using Tkinter. TensorFlow is used to train the alphabet identification model, while landmark distance computations and geometric logic is used to distinguish numerical movements. Because this hybrid approach guarantees real-time speed and usability, the solution is feasible for applications that are focused on accessibility, education, and assistive technology.

DOI: 10.61137/ijsret.vol.11.issue2.449

A Smart Reverse Vending Machine for Plastic Bottles
Authors:-Assistant Professor V. Srinivas Rao, Narla Sai Kiran, Rajarapu Pavan Jagadeesh, Sanagapalli Madhav, Sarikonda Mahendra Sai, Sariki Appalanaidu

Abstract-:The exponential rise in plastic waste, particularly from single-use PET bottles, presents a critical challenge to environmental sustainability. Conventional recycling approaches are often hindered by inconvenient manual processes, limiting public engagement. To counter this, the proposed Smart Reverse Vending Machine (RVM) offers an automated, user-friendly solution for the collection and preliminary sorting of plastic bottles. The system employs an Arduino Uno microcontroller, an IR sensor, and a load cell with HX711 amplifier to detect, validate, and weigh deposited bottles. In exchange, users receive immediate incentives such as coins, fostering responsible waste disposal habits. Designed with affordability and scalability in mind, this compact system is ideal for installation in high-traffic areas like malls, transport hubs, and educational campuses. The initiative aims to enhance recycling participation through real-time rewards and minimal operational complexity. Potential future enhancements include IoT connectivity, AI-based recognition, and digital rewards, positioning the system as a smart and sustainable waste management solution.

DOI: 10.61137/ijsret.vol.11.issue2.450

Computational Analysis of 2d and 3d Design for Supersonic Inlet Model Waverider
Authors:-Professor Dr. Prasanta Kumar Mohantha, Deshpande Siddhi Sadashiv, G.Surya Teja Reddy, B.S.S Chaitanya

Abstract-:Fundamentals feature of aerodynamic interference and air-breathing jet engines for high-speed flight vehicles are studied within the framework of supersonic small perturbation theory. Influence of intake on air intake performance are consider. Also Analytical analysis for waverider significantly performed by using the compression of flow in front of intakes at flight Mach numbers greater than 3. 2d and 3d geometry of waverider model are studied and the comp in The theoretical properties of airframe and integration propulsion are effect significantly on the thrust performance and external aerodynamics of vehicle. The effect of interference of air intake of jet engines significant is considered for high speed aircrafts. Aerodynamic interference and integration of air intake are major parameters for the study of external aerodynamic of airframe for thrust performance and overall vehicle performance. Also the air intake area is consider for thrust performance. Variation in Mach number at high supersonic speed is consider for numerical and analytical analysis the The numerical and analytical analysis is to be performed to obtain the effective performance for high speed aircraft.

Detecting Malicious Url’s Using Machine Learning
Authors:-D. Charan Kumar, H. Ateeq Ahmed, B. Deekshith, J. Lepakshi, K. Mahesh

Abstract-:The exponential growth of internet usage has led to an increase in cyber threats, with malicious URLs being a primary vector for phishing, malware distribution, and other online attacks. Traditional blacklisting techniques fail to detect newly generated or obfuscated malicious links, necessitating the use of intelligent systems for proactive protection. This project proposes a machine learning-based approach to accurately detect malicious URLs by analyzing their lexical and host-based features. The system collects a dataset of labeled URLs (malicious and benign) and extracts various features such as domain length, presence of suspicious characters, URL structure, and hosting details. These features are then used to train classification algorithms such as Random Forest, Support Vector Machine (SVM), and XGBoost. The models are evaluated based on accuracy, precision, recall, and F1-score to determine the most effective classifier. The proposed system enhances cybersecurity by providing real-time classification of URLs, allowing users and organizations to prevent access to potentially harmful websites. By continuously learning from new data, the system can adapt to evolving attack strategies, making it a scalable and robust solution against malicious web threats.

Detection of Cyber Bullying on Social Media Using Machine Learining
Authors:-Sri Ranga Lakshmi, Bushra Tahseen, A. Priya Varshini, K. Padma, J. Lavanya

Abstract-:With the rapid growth of social media platforms, cyberbullying has emerged as a serious threat affecting millions of users worldwide, particularly teenagers and young adults. Traditional methods of detecting cyberbullying rely heavily on user reports or manual moderation, which are often delayed and inefficient. This project proposes an automated and intelligent system to detect cyberbullying behavior on social media using machine learning techniques. The proposed system collects user-generated content such as comments, posts, and messages from social platforms and processes it through various Natural Language Processing (NLP) techniques including tokenization, stemming, and stop-word removal. Key linguistic features and sentiment analysis are then extracted to train supervised machine learning models like Support Vector Machines (SVM), Logistic Regression, and Random Forest. The system is designed to classify text as bullying or non-bullying content with high accuracy. By implementing this model, social media platforms can proactively monitor and flag harmful content, providing a safer online environment. The effectiveness of the system is evaluated using metrics such as accuracy, precision, recall, and F1-score. This project contributes significantly to the field of online safety by demonstrating the power of machine learning in identifying and preventing cyberbullying in real time.

Advanced Image Captioning With Deep Learning
Authors:-B.Rajendra, M Veeresh, G.Sai Kiran, B.Mallikarjuna

Abstract-:Recommender systems have become an integral part of various commercial applications, aiming to predict user preferences and provide personalized recommendations. These systems employ collaborative filtering, a popular approach that assumes users who have agreed in the past will agree in the future and have similar preferences. Collaborative filtering generates recommendations by identifying peer users or items with similar rating profiles, effectively creating a neighborhood of similarity. This approach is advantageous as it does not require an in-depth understanding of the items themselves, making it suitable for recommending complex items such as movies. Explicit and implicit data collection methods are utilized to build user behavior models in recommender systems. Explicit data collection involves asking users to rate, rank, or create lists of items, while implicit data collection involves observing user interactions, such as item views, purchase records, or analyzing their social network. These data collection methods enable the system to gather information about user preferences and generate accurate recommendations. However, collaborative filtering approaches face challenges related to the cold start problem, scalability, and sparsity. The cold start problem arises when there is insufficient data available for new users or items, making it difficult to provide accurate recommendations. Scalability becomes an issue in systems with millions of users and products, requiring significant computational power to calculate recommendations. Additionally, sparsity arises due to the vast number of items available, leading to a scarcity of ratings, even for popular items. One of the most well-known examples of collaborative filtering is item-to-item collaborative filtering, popularized by Amazon. com’s recommender system. It suggests items based on the purchasing patterns of other users, indicating that people who bought item X also bought item Y.

Advanced Image Captioning With Deep K Learning
Authors:-K. Siva Kumar, B. Harish Kumar Reddy, B. Uma Mahesh, G. Shashi Kiran, G. Sanjay Rohan

Abstract-:processing by automatically generating textual descriptions of images. With the rapid advancement of deep learning, modern image captioning systems have achieved significant improvements in accuracy, fluency, and contextual understanding. This project proposes an advanced image captioning framework that combines Abstract convolutional neural networks (CNNs) for image feature extraction and recurrent neural networks (RNNs), particularly Long Short-Term Memory (LSTM) networks, for sequential caption generation. To further enhance the quality and context-awareness of captions, attention mechanisms are incorporated, allowing the model to focus on relevant parts of the image while This work has practical applications in accessibility, digital asset management, content generation, and human- geating each word in the sentence. Additionally, we explore transformer-based architectures and pre-trained language models such as BERT and GPT for improved linguistic coherence and diversity in caption generation. Experimental results on standard datasets like MS COCO demonstrate that the proposed system achieves high BLEU and METEOR scores, generating accurate and descriptive captions. computer interaction.

Rainfall Prediction Using Machine Learning
Authors:-B. Priyanka, Ch. Srilakshmi Prasanna, G. Jhansi, C. Pavani, K. Lakshmi

Abstract-:India Meteorological Department has implemented state level medium range rainfall forecast system applying multi model ensemble technique, making use of model outputs of state-of-the-art global models from the five leading global NWP centers. The pre-assigned grid point weights on the basis of anomaly correlation coefficients (CC) between the observed values and forecast values are determined for each constituent model utilizing two season datasets and the multi model ensemble forecasts are generated at the same resolution on a real-time basis. The ensemble forecast fields are then used to prepare forecasts for each state, taking the average value of all grid points falling in a particular district. In this paper, we describe the development strategy of the technique and performance skill of the system during 15 years of rain fall at different states in india. The study demonstrates the potential of the system for predicting future rainfall forecasts for upcoming years and scale over Indian region. District wise performance of the ensemble rainfall forecast reveals that the technique, in general, is capable of providing reasonably good forecast skill over most states of the country, particularly over the states where the monsoon systems are more dominant.

Analyzing and Estimating IPL Winner Prediction Using Machine Learning
Authors:-A.Vishwanath, C Mohammed Gulzar, J.Saiprasad Reddy, E.Manjunath, M.S.Sukumar

Abstract-:The Indian Premier League (IPL) is one of the most popular and competitive T20 cricket tournaments globally, drawing massive fan engagement and generating vast amounts of data each season. Predicting the winner of an IPL match or the tournament itself is a complex task due to the dynamic nature of the game, the involvement of multiple influencing factors, and the unpredictability inherent in sports. This project presents a machine learning-based approach to analyze and estimate the winning team in IPL matches by leveraging historical data and various performance metrics. The proposed system uses key features such as team composition, player performance statistics, match venues, toss outcomes, recent form, and head-to-head records. Multiple machine learning algorithms—including Logistic Regression, Random Forest, Support Vector Machines (SVM), and Gradient Boosting—are evaluated to determine the most accurate predictive model. Data preprocessing, feature selection, and model tuning techniques are applied to enhance the prediction accuracy. The model not only predicts match outcomes but also provides insights into the factors that most influence winning probabilities. Results from this study demonstrate that machine learning can be effectively used to forecast IPL outcomes with a high degree of accuracy, offering valuable predictions for analysts, franchises, and fans alike.

Online Course Recommendation System Using Machine Learning
Authors:-C. Saroja, Shaik Haseena , B. Keerthana, P. Sukanya, P. HemaMalini

Abstract-:In the digital era, the demand for online courses has surged, necessitating intelligent systems to assist learners in selecting the most relevant courses from a plethora of options. This paper introduces an innovative Online Course Recommendation System that combines Natural Language Processing (NLP) and Machine Learning, particularly utilizing the TF-IDF (Term Frequency-Inverse Document Frequency) vectorizer. The proposed system harnesses the power of NLP and machine learning to analyze course descriptions, user behavior, and preferences, thus delivering highly personalized and context-aware course recommendations, thus enhancing the quality of online learning experiences.

Characterizing and Predicting Early Revies for Effective Product Marketing on E-Commerces Website
Authors:-C. Pratyusha, Dhanraj Cheelu , D. Harika, I.Nandini, K. Guru Lalitha

Abstract-:In the dynamic landscape of e-commerce, early product reviews significantly influence customer purchasing decisions and product visibility. This study aims to characterize and predict early reviewers—users who provide initial feedback shortly after a product launch—to enhance product marketing strategies. By analyzing user behavior, review content, purchase patterns, and social influence, we identify the traits and motivations that distinguish early reviewers from general consumers. Leveraging machine learning models, including classification and clustering techniques, we develop a predictive framework to identify potential early reviewers based on historical data. The proposed system integrates user features such as activity levels, review frequency, past review timeliness, and topic affinity to forecast early engagement. Experimental results on real-world e-commerce datasets demonstrate high accuracy and scalability of the model, enabling marketers to proactively target influential users during product rollouts. This research not only facilitates more effective marketing and recommendation strategies but also improves the overall trustworthiness and coverage of product reviews in online marketplaces.

Detection of Fake Job Recruitmentusing Ml Techniques
Authors:-B. Masthan Reddy, G. Emmanuel Raju, C. Gnanesh, M. Adarsh, E. Sathish Kumar

Abstract-:In our society, especially the freshers are coming out of their education level to job experience level. In such a process of finding their suitable jobs they are giving preference to some fake jobs spending time for that recruitment process. So, in order to find the fake recruitment, our project has come into existence, we are using machine learning approaches using classification techniques able to detect such fake recruitment detection processes. Different classifiers are used for checking fraudulent posts on the web and the results of those classifiers are compared for identifying the best employment scam detection model. It helps in finding the fake posts from an enormous number of posts .We can use both the single classifier and ensemble classifier .However in experimental analysis, ensemble classifiers may be showing good results over single classifiers in fake job detection.

A Security Framework for Detecting Zero Day Malware Detection Via .LNK Files
Authors:-Shruti K. Chauhan, Vidhi P. Wankhade, Prof.Mohan Bonde

Abstract-:Malicious Windows shortcut files (.LNK) have emerged as a sophisticated attack vector, often leveraged by ad- vanced persistent threats (APTs) and cybercriminals to infiltrate systems, execute malware stealthily, and bypass conventional security mechanisms. Unlike traditional executable-based attacks, LNK-based malware can exploit legitimate Windows functional- ities, making detection increasingly challenging for static and signature-based antivirus solutions. This paper introduces a novel security framework designed to detect zero-day malware delivered via .LNK files by leveraging VMware-based virtualization for controlled execution and in- depth behavioral analysis. The proposed system isolates and ex- ecutes suspicious .LNK files within a secure virtual environment, capturing real-time telemetry data, including command execution sequences, file system modifications, registry manipulations, and network interactions. By applying dynamic behavioral analysis and anomaly detection techniques, the framework effectively identifies malicious activities that deviate from normal system behavior. To evaluate its effectiveness, we conducted extensive real-world attack simulations involving known and previously unseen LNK- based exploits. Our results demonstrate a significant improve- ment in detection accuracy, with a high true positive rate and minimal false alarms. Furthermore, our approach introduces a low performance overhead, making it a scalable and practical solution for enterprise security. The findings highlight the po- tential of virtualization assisted malware detection in proactively mitigating emerging LNK-based threats, offering a more robust alternative to conventional endpoint security solutions.

Real-time Stock Monitoring: Leveraging IoT for Enhanced Inventory Management
Authors:-Saran S, Sukumar P

Abstract-:This paper explores how real-time stock monitoring, powered by IoT (Internet of Things), is transforming inventory management. By integrating smart devices, cloud systems, and predictive analytics, businesses can track, analyze, and forecast inventory movements with unprecedented accuracy and speed. This system reduces stockouts, overstocking, and human errors while boosting overall supply chain efficiency.

Smart Vehicle Accident Detection and Anti-Theft System
Authors:-Shaikh Mubashshir, Mohammad Zafir, Hrutuja Ingole, Professor A. P. Jaware

Abstract-:The rapid advancement of technology has transformed transportation but has also escalated challenges like road accidents and vehicle theft. This paper presents a smart system integrating accident detection and anti-theft mechanisms using piezoelectric sensors, GPS, GSM, and fingerprint verification technologies. The accident detection module employs a piezoelectric sensor to identify crashes or rollovers, instantly transmitting the vehicle’s location to emergency contacts via GSM and GPS modules. The anti-theft system uses fingerprint authentication to ensure only authorized users can operate the vehicle, with real-time tracking and remote immobilization capabilities. This dual-purpose system enhances road safety by reducing emergency response times and strengthens vehicle security against theft. Designed for scalability, the system leverages Arduino as the central microcontroller, offering a cost effective and reliable solution for modern vehicles. This paper details the system’s design, implementation, and potential impact on automotive safety and security.

Enhancing Deepfake Video Detection Using Multimodal Learning Techniques
Authors:-Assistant Professor Dr. R. Manimegalai, S. Saranya

Abstract-:Deepfake videos pose a significant threat to the integrity of digital media, leading to societal, political, and security concerns. Traditional detection approaches rely on single modalities, such as visual or audio features, which are often insufficient against rapidly evolving deepfake techniques. This paper proposes a multimodal learning framework that leverages visual, audio, and textual information to enhance deepfake video detection accuracy and robustness. The fusion of multiple modalities allows the system to identify subtle inconsistencies that may be missed when analysing a single source of information. Experimental results demonstrate the superiority of the proposed approach in terms of detection performance, generalization across datasets, and resilience to adversarial manipulations.

Smart Vehicle Accident Detection and Anti-Theft System
Authors:-Shaikh Mubashshir, Mohammad Zafir, Hrutuja Ingole, Professor A. P. Jaware

Abstract-:The rapid advancement of technology has transformed transportation but has also escalated challenges like road accidents and vehicle theft. This paper presents a smart system integrating accident detection and anti-theft mechanisms using piezoelectric sensors, GPS, GSM, and fingerprint verification technologies. The accident detection module employs a piezoelectric sensor to identify crashes or rollovers, instantly transmitting the vehicle’s location to emergency contacts via GSM and GPS modules. The anti-theft system uses fingerprint authentication to ensure only authorized users can operate the vehicle, with real-time tracking and remote immobilization capabilities. This dual-purpose system enhances road safety by reducing emergency response times and strengthens vehicle security against theft. Designed for scalability, the system leverages Arduino as the central microcontroller, offering a cost effective and reliable solution for modern vehicles. This paper details the system’s design, implementation, and potential impact on automotive safety and security.

DOI: 10.61137/ijsret.vol.11.issue2.451

Fraud Detection in Smart Grids Using Hybrid Machine Learning Models
Authors:-Narukula Charan Sai, R.Sri Subramanian, Assistant Professor Dr.B.Abirami

Abstract-:The widespread deployment of smart meters in energy grids has led to increased automation, real-time monitoring, and efficient energy management. However, it has also introduced vulnerabilities such as electricity theft, meter tampering, and unauthorized access, resulting in significant revenue losses for energy providers. Traditional fraud detection techniques, including rule-based and statistical methods, often fail to identify evolving fraudulent behaviors. This study proposes a hybrid machine learning framework that integrates Convolutional Neural Networks (CNNs), Artificial Neural Networks (ANNs), and Support Vector Machines (SVMs) for improved fraud detection in smart grids. The ensemble approach effectively analyzes energy consumption patterns, identifies anomalies, and minimizes false positives. Experimental results indicate that the hybrid model outperforms individual classifiers, achieving a detection accuracy of 96%. The system ensures real-time fraud monitoring and offers a scalable, efficient solution for securing modern energy infrastructures.

A Supervised Learning Framework for Predicting GSC Antibody Seropositivity in Guillain–Barré Syndrome Using Multivariate Clinical and Demographic Indicators
Authors:-Ms. Sangeetha Raj S, Ayushi Negi, Ekta Kumari, Christina S

Abstract-:This paper proposes a robust supervised learning framework for predicting ganglioside complex (GSC) antibody seropositivity in patients with Guillain–Barré Syndrome (GBS) using multivariate clinical and demographic features. Drawing from a comprehensive dataset encompassing 129 GBS patients, we employed advanced machine learning methods support vector machines, random forests, decision trees, and k-nearest neighbours to predict seropositivity for six key anti-ganglioside antibodies (GM1, GM2, GD1a, GD1b, GT1b, GQ1b). Rigorous feature selection, cross-validation, and class imbalance handling were implemented to ensure robustness. Results show that routine clinical data can deliver accurate antibody seropositivity predictions, supporting GBS management where serological assays are delayed or unavailable.

DOI: 10.61137/ijsret.vol.11.issue2.452

Application of Carbon Nanomaterials in Energy Production and Storage
Authors:-Aryan Kuhar

Abstract-:In this modern world the demand for more sustainable energy production and storage solutions has elevated the interest in nanotechnology, in which carbon-based nanomaterials are particularly interesting in improving energy production systems. This review paper explores the application of carbon nanomaterials, including nanomaterials like carbon nanotubes (CNTs), graphene, fullerene etc., in many energy production methods. Their unique properties such as large surface area, high electrical conductivity and high mechanical strength, make these carbon nanomaterials optimal candidates for improving energy storage and generation processes. In energy devices such as lithium-ion batteries, solar cells and fuel cells, these carbon nanomaterials have demonstrated improvement in better charge transport, energy density, catalytic performance and charge/discharge efficiency. These nanomaterials are also developed so there are more cost-effective alternatives to current technology.

DOI: 10.61137/ijsret.vol.11.issue2.453

Design and Development of Iot Prototype for Real-Time Theft Detection and Optimization of Electricity Using Machine Learning Techniques
Authors:-Assistant Professor Lakshmi G, Associate Professor Dr. M Charles Arockiarajr

Abstract-:The pervasive issue of electricity theft poses a substantial challenge to power utilities globally, resulting in significant financial losses and operational inefficiencies. This paper presents the plan and growth of an IoT-based prototype for real-time electricity theft detection and optimization of electricity distribution using advanced machine-learning practices. By integrating smart meters and IoT sensors, the system continuously monitors electricity consumption, providing accurate, real-time data. Utilizing Deep Neural Networks (DNNs), the prototype identifies anomalous usage patterns indicative of theft, ensuring swift and precise detection. Additionally, the structure influences machine-learning procedures to optimize electricity distribution, enhancing overall efficiency and reducing waste. This complete method not only mitigates the risk of theft but also improves the dependability and sustainability of electricity supply. The proposed solution demonstrates important possibilities for enhancing the operational effectiveness of power utilities, offering a scalable, robust, and efficient framework for modern energy management.

CFD Analysis on Car Rear Spoiler
Authors:-Turlapati Siva Krishna, M. Hari Sai, K. Naresh

Abstract-:The stability of a car refers to its ability to maintain its trajectory and resist external disturbances, such as wind, road irregularities, or sudden maneuvers. Several key factors affect a car’s stability, including its center of gravity, weight distribution, suspension system, tire characteristics, and aerodynamics. A spoiler is an aerodynamic device attached to a vehicle, typically on the rear deck lid or trunk, designed to improve its stability and reduce drag at high speeds. By altering airflow around the vehicle, a spoiler can enhance its overall performance and handling. There are various types of spoilers, including rear spoilers, front spoilers, and side skirts, each serving a specific purpose. The benefits of spoilers include improved stability, reduced drag, and enhanced performance, making them a popular choice for racing cars, high-performance vehicles, and aftermarket accessories.

DOI: 10.61137/ijsret.vol.11.issue2.454

J.A.R.V.I.S: AI ASSISTANT
Authors:-Bhuneshwar Singh Chauhan, Swati Kumari, D Sai Divya Reddy, Dhananjay Sahu, Professor Neha Soni

Abstract-:This paper examines the rapidly evolving field of modern technology, with a particular focus on virtual assistants developed through Python. It shows how it changes these assistants are having on human-computer interactions by using advanced technologies such as Natural Language Processing (NLP) and Artificial Intelligence (AI). The literature review consolidates key research findings on the functions, capabilities, and design strategies of virtual assistants. In the system architecture section, a clear structure is presented for desktop virtual assistants, detailing key components like the user interface, speech recognition modules, dialogue management, and more. The methodology section outlines a structured approach to designing and building such systems. The conclusion emphasizes the significant advancements in virtual assistant technology while also addressing ongoing challenges such as ensuring system stability and safeguarding data security. Ultimately, the paper underscores the importance of continued innovation in this field to fully unlock the potential of virtual assistants in various industries.

DOI: 10.61137/ijsret.vol.11.issue2.455

Cryptanalysis with Machine Learning
Authors:-Meet Parmar, Ajay Panchal, Dhruvil Manani, Bhavy Panchal, Arya Patel, Krishil Soni, Twinkle Patel

Abstract-:Cryptanalysis strategy based on the utilization of machine learning algorithms. Using deep neural networks, he managed to build a neural based distinguisher that surprisingly surpassed state-of-the-art cryptanalysis efforts on one of the versions of the well studied NSA block cipher SPECK (this distinguisher could in turn be placed in a larger key recovery attack). While this work opens new possibilities for machine learning-aided cryptanalysis, it remains unclear how this distinguisher actually works and what information is the machine learning algorithm deducing. The attacker is left with a black-box that does not tell much about the nature of the possible weaknesses of the algorithm tested, while hope is thin as interpretability of deep neural networks is a well-known difficult task. In this article, we propose a detailed analysis and thorough explanations of the inherent workings of this new neural distinguisher. First, we studied the classified sets and tried to find some patterns that could guide us to better understand Gohr’s results. We show with experiments that the neural distinguisher generally relies on the differential distribution on the cipher text pairs, but also on the differential distribution in penultimate and antepenultimate rounds. In order to validate our findings, we construct a distinguisher for SPECK cipher based on pure cryptanalysis, without using any neural network that achieves basically the same accuracy as Gohr’s neural distinguisher and with the same efficiency (therefore improving over previous non-neural based distinguishers). Moreover, as another approach, we provide a machine learning-based distinguisher that strips down Gohr’s deep neural network to a bare minimum. We are able to remain very close to Gohr’sdistinguishers’ accuracy using simple standard machine learning tools. In particular, we show that Gohr’s neural distinguisher is in fact inherently building a very good approximation of the Differential Distribution Table (DDT) of the cipher during the learning phase, and using that information to directly classify cipher text pairs. This result allows a full interpretability of the distinguisher and represents on its own an interesting contribution towards interpretability of deep neural networks. Finally, we propose some method to improve over Gohr’s work and possible new neural distinguishers settings. All our results are confirmed with Experiments we have been conducted on SPECK block cipher (source code available online).

Fake News Detection Using Natural Language Processing
Authors:-Professor Kirti Randhe, Nameet Vyavahare, Rajkumar Vishwakarma, Sai Kudale

Abstract-:In the digital age, the rapid dispersal of information through social media and online platforms has increased the spread of fake and exaggerated news, posing serious challenges and threats to public trust, societal stability, democratic processes and national security and peace. This research explores the application of Natural Language Processing (NLP) techniques for the automatic detection of fake news, aiming to enhance the reliability of information consumed by the public. By leveraging and applying machine learning and deep learning models in conjunction with NLP methods such as text preprocessing, tokenization, feature extraction, and sentiment analysis, this study investigates effective strategies for distinguishing between factual, genuine and misleading content. Various algorithms, including Support Vector Machines, Random Forest, Naïve Bayes and deep learning approaches like LSTM and BERT, are evaluated using benchmark datasets. The results demonstrate the potential of NLP-driven solutions to accurately classify news articles, highlighting their significance in combating misinformation. This paper contributes to the growing field of automated fake news detection and offers insights into building more trustworthy digital information ecosystems.

DOI: 10.61137/ijsret.vol.11.issue2.456

Automatic Pathway for Emergency Vehicles by Using RFID Technology
Authors:-Assistant Professor Paladugu Thriveni, Tammisetty Subba Rao, Papasani Anil, Shaik Shafi, Rajavarapu Harish

Abstract-:Traffic congestion in densely populated urban areas poses a significant challenge, particularly for emergency response vehicles such as ambulances, fire trucks, and police units. Delays caused by traffic jams can result in the loss of critical time, impacting the effectiveness of emergency services and potentially costing lives. To address this issue, this paper proposes an intelligent traffic control system that leverages Radio Frequency Identification (RFID) technology to provide an automatic, uninterrupted pathway for emergency vehicles. The system involves equipping emergency vehicles with RFID tags and installing RFID readers at traffic intersections. When an emergency vehicle approaches a junction, the RFID reader detects its presence and communicates with the traffic signal controller to automatically switch the traffic lights—granting a green signal to the emergency vehicle’s direction and red to others. This real-time signal manipulation ensures the swift passage of emergency vehicles while minimizing disruption to overall traffic flow. The proposed system is cost-effective, scalable, and can be integrated into existing traffic infrastructures, offering a reliable solution to enhance emergency response efficiency and public safety.

Object Detection in Low Light Environment Using Deep Learning
Authors:-Tanaya Patil

Abstract-:Object detection in low light environment is a challenge due to various reasons such as poor illumination, low contrast which affect the performance of traditional computer vision system. This work explores the application of deep learning techniques to enhance object detection accuracy under such conditions . by using advanced convolutional neural networks (CNNS) and image enhancement modules, the proposed system is capable of learning various features representation that compenstate for low visibility. Many techniques such as low -light image preprocessing, data augmentation and transfer learning are used to improve model generalization. Experimental results on benchmark low-light dataset demonstrate that the proposed deep learning method approach significantly outperforms conventional methods in terms of detection accuracy and making it suitable for real world applications in surveillance , autonomus driving and night time monitoring.

Automotive Mechatronic Integration to Optimal Energy Management
Authors:-Nihal Soni

Abstract-:This paper presents a comprehensive study of design methodologies for Hybrid Electric Vehicles (HEVs), focusing on the integration of mechatronic systems and advanced energy management strategies. It explores recent advancements in fuzzy logic controllers, electro-hydraulic power coupling, multivariable control, and robust optimization techniques applied to HEVs. The review highlights the significance of the simultaneous design of mechanical, electrical, and control subsystems to enhance fuel efficiency, reduce emissions, and ensure dynamic performance. Case studies include the application of singular perturbation theory, vehicle dynamics modeling, and MATLAB/Simulink-based system validation. Key challenges such as nonlinear system behavior, real-time control, and integration with grid infrastructure are addressed. This study serves as a valuable reference for researchers and engineers aiming to develop intelligent, adaptive HEV architectures suitable for both urban and highway scenarios. Future directions emphasize scalable control algorithms, mission-adaptive architectures, and embedded systems for predictive and autonomous operations.

A Review of Machine Learning Models and Deep Learning Models for Gender Classification
Authors:-Ishika kapoor, Assistant Professor Sharad Morolia

Abstract-:Gender classification has become a critical component in various intelligent systems, ranging from biometric authentication and security surveillance to personalized marketing and healthcare analytics. This review explores the progression of machine learning (ML) and deep learning (DL) models applied to gender classification across multiple data modalities, including facial images, speech signals, fingerprints, text, and wearable sensors. Traditional ML methods such as Support Vector Machines, Random Forests, and Gradient Boosting have delivered reliable performance, particularly in structured environments with engineered features. In contrast, deep learning architectures, including CNNs, BiLSTMs, and hybrid CNN-IoT frameworks, have enabled more accurate and automated gender classification with minimal manual intervention. However, the review highlights significant limitations in fairness and model generalization, with performance disparities observed across different ethnic and demographic groups. It also underscores the need for bias-aware training strategies, multimodal fusion techniques, and real-time deployment capabilities. By examining recent advancements, this review identifies current gaps and proposes directions for developing inclusive, robust, and scalable gender classification models.

Development of an AI-Based Voice Assistant Using Python for Intelligent Human-Computer Interaction
Authors:-Harsh Patel, Induprakash Deo Pandey, Harsh Kumar Dewangan, Dr. Sonu Agrawal

Abstract-:VIDA (Voice-Integrated Digital Assistant) is a chatbot based on Artificial Intelligence that assists in making computer operations easier through voice control. Built with the help of Python, with an interface made in HTML, CSS, and JavaScript, VIDA performs automated activities such as turning off, restart, and launching programs, further increasing user experience and accessibility. It is a hands-free mode, especially helping users with disabilities and those requiring quicker execution of tasks. Coupled with natural language processing and speech recognition, VIDA provides users with a comfortable experience while it sets the platform for future enlargements like home automation integration, multi-language voice support, and AI-based personalization. In VIDA, human-computer interaction is smoother, more convenient, and open to everyone.

Enhancing Network Security: A Lightweight SIEM Framework with Wazuh and Rsyslog Integration for Real-Time Threat Detection
Authors:-Sajath N

Abstract-:This project presents a novel Network threat detection System designed for resource constrained environments, integrating a signature-based threat detection pipeline with Security Information Event management System (SIEM) capabilities. Deployed on a single system leverages Suricata to Monitor The Network Traffic and Detect threat and alert using predefined rules and custom rules. To detect the common real world attacks like ICMP floods, Dos Attack, Port scanning etc, The suricata which stores the logs on eve.json file which are forward by Fluent-Bit to Loki for storage and visualized in real-time Grafana Dashboards displaying metrics such as alert, attack sources. And the suricata sends the alerts via agentless remote syslog to wazuh manager enabling the SIEM level analysis without additional overhead on the system which make it optimize and lightweight. The project distinguishes itself through its dual-path architecture, combining Grafana visualization with (wazuh) centralized log management, a feature not extensively explored in recent literature. Unlike previous studies focusing on single log paths or agent based SIEM integration, This works employs an agentless syslog approach, reducing resource use while maintaining robust monitoring. Deployed in a constrained VirtualBox environment, the system demonstrates adaptability for small-scale applications, addressing a gap in enterprise-focused research. Empirical results, including consistent log forwarding and optimized performance, validate its effectiveness.

Internet of Things (IoT) in Healthcare: Challenges, Opportunities, and Future Directions
Authors:-Paramar Hetal, Paramar Niral, Gorasiya Devanshi, Kashyap Dave

Abstract-:One of the most revolutionary healthcare forces The Internet of Things (IoT) is an enabler for long-term patient monitoring and augment diagnosis/rehabilitation capability. Although having higher potential to be utilized in healthcare systems, IoT is replete with various challenges such as data privacy, interoperability, security and infrastructural limitations. In this paper, we perform an extensive literature review to determine such challenges, count them and expound on them in detail. We hereby conclude this paper by sketching its horizon and future boundary in order to innovate these boundaries with real-time Healthcare using IoT.{IoT}.

A Domain-Specific Automated Essay Evaluation System Using Transformer-Based Semantic Analysis and Linguistic Features
Authors:-Sameer Shaik, Harshavardhan Pasupuleti, Yashaswi Vejandla

Abstract-:This paper presents an automated essay evaluation framework tailored for domain-specific contexts by integrating machine learning with advanced natural language processing (NLP) techniques. The proposed system employs sentence-level embeddings generated by a pre-trained MiniLM Transformer model to classify essays into predefined quality categories: Poor, Average, and Good. To enhance the robustness of evaluation, additional linguistic features—such as grammar correctness, sen- tence coherence, and argumentation strength—are incorporated. The entire pipeline is deployed via a Streamlit-based interface, enabling real-time assessment and feedback. Experimental results on the ASAP-AES dataset validate the system’s effectiveness, offering reliable scoring performance and interpretable linguistic insights.

Facial Expressions Detection and Virtual Chatbot
Authors:-A. Chandu, A. Moulik, Md. Kaif, Sai Teja,Associate Professor Dr. Krishna Jyothi

Abstract-:Facial expression recognition (FER) is a crucial component in the domain of human-computer interaction and emotional AI. This research focuses on building a robust and scalable deep learning pipeline for the classification of facial emotions using the FER2013 dataset. A comprehensive preprocessing function was developed to handle data inconsistencies, malformed CSV entries, and compressed archive formats. The final dataset was prepared into normalized grayscale facial images, and emotions were one-hot encoded for model training. Our approach emphasizes robust data extraction, error handling, and image normalization to ensure clean input to a Convolutional Neural Network (CNN) model. Preliminary experiments indicate reliable recognition across seven primary emotions with balanced accuracy. This work contributes toward developing intelligent emotion-aware systems and can be integrated into applications like surveillance, sentiment analysis, and assistive technology.

Smart EV Charging Systems: Advancements and Future Integration Paradigms
Authors:-Bhadouriya Khushi Mukeshsingh, Ashish P. Patel, Nirav D. Mehta, Anwarul M. Haque, Indrajeet N. Trivedi

Abstract-:The accelerating global shift toward electric mobility necessitates the development of smart, scalable, and interoperable electric vehicle charging systems. While legacy charging architectures have laid the foundation for adoption, they lack the real-time intelligence, communication flexibility, and remote operability required for next-generation infrastructure. This paper presents a comprehensive analysis of the advancements in smart EV charging systems, focusing on architectural, control, and communication innovations that enable higher efficiency and system responsiveness. The evolution of EV charging is briefly revisited to highlight the limitations of traditional Level 1, 2, and 3 chargers. Technological advancements are explored through the integration of Human-Machine Interfaces and Programmable Logic Controllers for local control, along with the implementation of Central Management Systems for remote diagnostics, monitoring, and firmware management. The importance of standardized communication protocols such as Open Charge Point Protocol, CP/PP Control Pilot/Proximity Pilot, and Controller Area Network is emphasized for ensuring secure and interoperable data flow between system layers. The paper also discusses future integration paradigms, including AI-enabled load forecasting, edge-based decision-making within HMI/CPU frameworks, and blockchain-driven cybersecurity mechanisms. In addition, key research challenges are identified, such as fragmented protocol adherence, the complexity of real-time control, and the lack of globally harmonized standards. This study aims to provide a systems-level perspective for researchers, developers, and policymakers working on intelligent EV infrastructure, with a view toward scalable, secure, and adaptive charging networks for the coming decade.

Artificial Intelligence in Energy Management: A Comprehensive Literature Review on Methods, Applications, and Challenges
Authors:-Jayendra Jadhav, Aashirwad Mehare, Aditya Wandhekar, Sanyukta Pawar, Pranjal Chavan, Vedant Nigade

Abstract-:The mounting pressure for efficient and sustainable energy solutions has driven the adoption of Artificial Intelligence (AI) in contemporary energy systems. This literature review consolidates evidence from more than 20 recent studies on AI-based approaches for renewable energy and smart grid management. It discusses AI methods like machine learning, deep learning, reinforcement learning, and optimization techniques applied in energy forecasting, load management, fault detection, and demand response. The review emphasizes AI’s application in improving energy efficiency, lowering costs, and facilitating decentralized energy systems. It also touches on the most important hardware devices involved, e.g., photovoltaic panels, smart meters, IoT devices, and battery storage systems. Although it has the potential to transform, the use of AI in energy systems is confronted with various challenges such as high infrastructure expenditure, data needs, system integration problems, and regulatory issues. This paper concludes by establishing research gaps and outlining future directions for the complete utilization of AI to achieve a sustainable and intelligent energy ecosystem.

DOI: 10.61137/ijsret.vol.11.issue2.457

Development of AI/ML-Based Solution for Detection of Face-Swap Deep Fake Videos
Authors:-KV Achyuth Reddy, Lochan S, Shrusthi, Ediga Purushotham Goud, Associate Professor Dr. M Swapna

Abstract-:Deep fake technology has drawn a lot of attention as it can manipulate videos and audios synthetically, usually for ill intent. With the rapid evolution of deep learning-based generative models, separating real media from fake media has become even harder. This paper presents a detailed survey of state-of-the-art deep fake detection techniques and outlines a new AI/ML-based technique to identify face-swap deep fake videos with greater precision. It explains different approaches such as Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), Generative Adversarial Networks (GANs), and hybrid approaches to evaluate and compare their detection efficiency based on manipulated content. The new technique utilizes varied detection layers spatial, temporal, frequency-based, and biometric to withstand an attacker’s manipulations and evolving deep fake technologies at a fast pace. The paper also contrasts popular benchmark datasets for deep fake work and identifies limitations of current detection techniques. Real-time detection, data imbalance, and the ability of AI models to generalize across situations are explained in detail. It concludes with research directions to build more robust, more transparent AI models that can combat deep fake technology more effectively. These developments are recommended to be implemented in applications such as law enforcement, digital forensics, and media authenticity verification.

Integrated Approaches to Computer System Validation Within GxP-Compliant Pharmaceutical Quality Management Systems
Authors:-Aditi Akundi, Dr. Pavithra G, Dr. Swapnil SN

Abstract-:The pharmaceutical industry is heavily regulated due to the direct impact of its products on human health and safety. To ensure compliance and maintain data integrity, regulatory authorities such as the U.S. Food and Drug Administration (FDA), European Medicines Agency (EMA), and others require that computerized systems used in Good Practice (GxP) environments undergo rigorous validation. Computer System Validation (CSV) plays a pivotal role in ensuring that such systems consistently perform according to their intended use and comply with applicable regulations. This paper provides an in-depth conceptual overview of CSV within the framework of pharmaceutical Quality Management Systems (QMS). It explores its regulatory basis, the validation lifecycle, risk-based approaches, common challenges, and industry best practices, while highlighting the significance of CSV in maintaining quality, compliance, and patient safety.

DOI: 10.61137/ijsret.vol.11.issue2.458

Analysing the Impact of Key Market Factors on Consumer Brand Preference: A Comparative Study of Mcdonald’s and Burger King in Indian Market
Authors:-Associate Dean Dr. Sunny Oswal, Saanya Gupta Kashish Shishodiya, Shanaya Birdy, Kriti Agarwal, Krisha Pandit

Abstract-:The fast-food industry is a highly competitive market, with McDonald’s and Burger King standing as two of its most recognizable giants. This research paper explores the marketing strategies, supply chain efficiency, and brand positioning that contribute to McDonald’s market dominance over Burger King. Through a combination of consumer surveys and secondary data analysis, the study examines customer preferences regarding taste, pricing, service quality, and brand perception. The findings reveal that McDonald’s consistently outperforms Burger King due to its superior supply chain management, strategic real estate selection, and stronger brand equity. McDonald’s also benefits from more effective marketing campaigns, creating a lasting emotional connection with consumers. In contrast, while Burger King is recognized for its bold and creative advertising, it struggles with inconsistent service quality and a less optimized real estate strategy. This study highlights how McDonald’s operational efficiency and customer-centric branding contribute to its leadership in the fast-food market. The paper concludes by offering insights into key factors driving consumer preferences, providing valuable takeaways for businesses aiming to strengthen their market position.

Enhancing Healthcare Accessibility, Risk Prediction, and Digital Record Management – Maternal and Child Health Monitoring System
Authors:-Shapna Rani E, Associate Nandhini S, Shwetha B, Sree Suvetha G, Thanzia Z

Abstract-:The Maternal and Child Health Monitoring System is an AI-driven solution designed to improve maternal and newborn healthcare by tracking essential health data, predicting risks, and streamlining administrative processes. Its mission is to “Empower mothers and ensure child well-being through personalized health tracking and AI-powered risk assessments.” The digital health monitoring application is designed to improve maternal and child health outcomes by tracking essential health data, predicting risks, and streamlining administrative processes. For pregnant women, the allows users to input health metrics such as blood pressure, weight, and glucose levels, using machine learning to predict potential health risks like gestational diabetes and preeclampsia. Post-birth, the records essential child details (e.g., birth time, date, gender) and assigns a unique ID to track developmental milestones, vaccinations, and growth metrics. This ID also facilitates the issuance of digital birth certificates, integrating seamlessly with government systems for legal registration. The sends reminders for checkups and vaccinations to ensure timely healthcare for both mothers and children. Data is securely stored in a database, providing authorized users such as parents and healthcare providers with accessible, real-time information. The system also offers recommendations for personalized health, guidance, and mental health support. By combining health monitoring, predictive analytics, and administrative automation, the application offers a comprehensive solution that improves maternal and child health, simplifies birth registration, and ensures efficient healthcare management. Key Features include AI-powered risk prediction, real-time health tracking, Unique ID-based record management, vaccination reminders, digital birth certification, and multi-language support for broader accessibility.

DOI: 10.61137/ijsret.vol.11.issue2.459

From Manual Input to Intelligent Execution: RPA-Driven Data Management in Camstar MES Environments
Authors:-Satish Kumar Nalluri, Varun Teja Bathini

Abstract-:RPA is being utilized in the manufacturing industry for data management and increased operational efficiency. The authors discuss the potential of Robotics Process Automation, or RPA, to revolutionize the automation of data entry and processing in Camstar Manufacturing Execution Systems (MES) systems. Many manufacturing systems, such as Camstar MES, are very manually input dependent – a factor that causes inefficiencies and errors and raises operational costs. Plus, RPA leads to automation of repetitive tasks, like data entry and data validation, thus minimizing errors and improving accuracy of data. By analyzing a semiconductor manufacturing firm, this paper assesses the concrete advantages of RPA such as more efficient production cycles, increased accuracy of data, and lower overall costs. It also looks into the quality and quantity of results obtained with RPA before and after its implementation. Any disadvantages, such as issues with system integration, employee buy-in, and upfront costs are discussed. Towards the end of the study recommendations are made for successful implementation of RPA, such as gradual or staged implementation of RPA, adequate training of staff using RPA, and ongoing monitoring and refining of RPA. The results show how RPA-based data management can inform smart advancements in manufacturing and improve manufacturing operations.

DOI: 10.61137/ijsret.vol.11.issue2.460

The Adoption and Use of Distributed System Architecture on Cross-Multiple Platforms
Authors:-Mr. Victor Otieno Mony, Mr. Geoffrey Mwamba Nyabuto, Prof. Samuel Mbugua

Abstract-:Modern times have transformed user system requirements. System users today have complex, unique, and dynamic system needs. Traditionally used applications are considered by modern system users as slow in performance and thus seen as unable to meet their unique needs. Users are quickly deserting autonomous systems and embracing distributed computing technology and this has enhanced the ubiquity of distributed systems across technical and socio-technical platforms. Distributed system architectures have also gained popularity because they increase scalability. They can migrate systems from autonomy to an extremely dynamic environment. Distributed systems architecture also offers conveniences to their user bases alongside lower infrastructural costs. This paper introduces the basic foundations of distributed systems and delves into the fundamentals of distributed systems architecture, The paper highlights the structural design of distributed systems before discussing the reasons why organizations need to adopt the use of distributed systems architecture. If a researcher reading this paper can obtain meaningful insights into the foundations of distributed systems architecture, their general design, and use case scenarios. Then, this paper would have fulfilled its objectives.

Bridging The Digital Divide: How Camstar MES Is Revolutionizing Modern Manufacturing
Authors:-Satish Kumar Nalluri, Varun Teja Bathini

Abstract-:In today’s factories, machines and software don’t always talk to each other smoothly. Workers still juggle spreadsheets, punch in data by hand, and chase down errors—tasks that eat up time and open the door for mistakes. But what if the factory could almost run itself? This research explores how two powerful technologies—Camstar MES (a brain for manufacturing operations) and RPA (software “robots” that mimic human clicks and keystrokes)—team up to close those gaps. Imagine Camstar as the vigilant supervisor, tracking every widget on the assembly line in real time, while RPA bots quietly handle the tedious paperwork: updating inventory, logging defects, or even pinging a manager when a machine acts up. Together, they turn clunky, error-prone workflows into a seamless dance of data.

Coffee Shop: Caffeine Dreams and Coffee Bar
Authors:-Priyadharshini S, Assistant Professor Dr. Uthiramoorthy

Abstract-:Coffee shops have long been cultural symbols of community, conversation, and connection. Yet in an era dominated by digital devices, the question arises: are we truly connected in these spaces, or has technology redefined our social interactions? This paper explores the paradox of modern-day coffee shop culture, where face-to-face communication is often replaced by virtual engagement. Through observational studies and psychological analysis, we investigate how coffee shops function as both hubs of social gathering and islands of digital isolation. Ultimately, we seek to understand whether the traditional essence of communal bonding still thrives or has quietly evolved.

CropCare – An AI-Integrated System for Smart Crop Protection and Disease Detection
Authors:-Professor Dr. Sudha P, Yarragudi Akshath Kumar Reddy, Pasaluru Abhinay

Abstract-:Agriculture is the core of human existence since it supplies food to an increasing population. Yet, farmers encounter plant diseases, fertilizer abuse, and inappropriate crop choice, which result in low yields and economic losses. To address these issues, we suggest a web application that is AI-based and provides plant disease diagnosis, crop suggestion, and fertilizer suggestion. Our platform uses sophisticated machine learning to scan data and provide farmers and researchers with accurate, actionable data. It has an easy-to-use interface for easy navigation, allowing users to make farm decisions with ease. The plant disease detection module uses image processing to detect infections in their early stages, avoiding extensive crop damage and loss. There is an in-built camera function, which enables farmers to take and post crop images for immediate disease diagnosis. The crop advisory module makes recommendations on appropriate crops as per environmental factors and soil type to enhance yield and sustainability. At the same time, the fertilizer advisory system offers evidence-based guidance on optimal use of fertilizer to prevent wastage and damage to the environment. The platform also offers a Google Search integration in which farmers can directly access related resources, best practices, and market trends. By improving decision-making and supporting sustainable agriculture, this web application based on AI enables farmers to achieve maximum productivity, minimize risks, and have sustainable long-term agricultural success.

Real Time Event Regestration with Email Conformation
Authors:-Deepika.P, Assistant Professor Mrs. J.Gokulapriya

Abstract-:In an age of digital transformation, managing events has become more dynamic and system-driven. This paper presents a real-time event registration system using PHP and MySQL integrated with automated email confirmation functionality. The aim is to streamline the registration process for participants, reduce administrative overhead, and enhance user experience by delivering instant confirmation emails containing event details and digital tickets. This system is particularly useful for academic events, workshops, seminars, and inter-college competitions where swift and secure registration is essential. The implementation leverages PHP for server-side logic, MySQL for database management, and PHPMailer for handling mail delivery. The paper also explores scalability, data validation, and security in the registration workflow.

Footstep Power Generation System
Authors:-Dipti Tembhare, Gunjan Rane, Sakshi Gour, Komal Bisane, Prof. Amit Tripathi

Abstract-:Electricity remains a critical resource, yet the world faces a looming crisis with the rapid depletion of traditional energy sources. This project introduces a groundbreaking method for generating electricity by harnessing the kinetic energy produced by Humans passing over Foot Steps. These Foot Steps, equipped with rack and pinion mechanisms, capture the wasted mechanical energy from vehicle pressure and convert it into electrical energy. This system capitalizes on the constant flow of traffic in high-traffic areas such as highways and roads, effectively transforming an everyday activity into a sustainable energy solution. By integrating rack and pinion gears into the Foot Step structure, which are designed to endure the heavy load of Humans, the system ensures a consistent and reliable generation of electricity. This approach offers a promising alternative to conventional energy sources, aligning with the growing need for renewable energy solutions. The operation of this system hinges on a series of components working in unison to convert and store electrical energy. When a vehicle passes over the Foot Step, the rack and pinion mechanism converts the vertical pressure into rotational motion. This motion drives a generator, producing electrical power, which is then processed by a rectifier and filter circuit to convert it from AC to a smooth DC output. The generated DC power is subsequently stored in a lead-acid battery, ensuring that the energy can be utilized when needed. The system also incorporates voltage sensors and regulators to maintain a stable and consistent power output, mitigating fluctuations and ensuring reliable performance. This innovative approach not only harnesses wasted energy but also offers a low-cost, efficient solution for energy generation, particularly beneficial for powering low-consumption appliances and providing electricity in rural areas. The implications of this project extend beyond mere energy generation; it represents a shift towards more sustainable and environmentally friendly power sources. By promoting non-conventional energy solutions, this system contributes to the conservation of traditional energy resources and reduces the overall environmental impact. The deployment of these energy-generating Foot Steps in strategic locations can significantly augment the electricity supply, especially in regions with limited access to power. Furthermore, the low implementation cost and the potential for widespread application make this system an attractive option for addressing the global energy crisis. In summary, the Vehicle Foot Step Power Generator offers a viable, sustainable, and innovative approach to energy production, leveraging everyday vehicular movement to create a greener future.

Artificial Intelligence Data Centers Efficiency and Performance Enhancements through Liquid Cooling
Authors:-Girish Kishor Ingavale

Abstract-:The rapid expansion of artificial intelligence (AI) applications, such as machine learning, deep learning, and neural networks, has led to an unprecedented surge in the computational demands placed on data centers. Traditional air-cooling methods, which have served well in the past, are becoming increasingly inadequate for the high-density computing environments necessitated by AI workloads. This inadequacy is primarily due to the significant heat generation associated with AI computations, which can lead to reduced system performance and increased energy consumption. Liquid cooling emerges as a promising alternative, leveraging the superior thermal conductivity of liquids to more effectively dissipate heat. This article presents a comprehensive analysis of the implementation of liquid cooling systems in AI data centers, with a specific focus on their impact on energy efficiency, Power Usage Effectiveness (PUE), and overall system performance. Through a detailed comparative analysis of air and liquid cooling systems, this study demonstrates the substantial benefits of adopting liquid cooling technologies in AI data centers. Key findings indicate that liquid cooling can reduce energy consumption by up to 40% compared to traditional air-cooling methods. Additionally, PUE improvements ranging from 15% to 30% were observed, highlighting the enhanced energy efficiency achieved through liquid cooling. Furthermore, the study reveals a 20% decrease in server failure rates and a 10-15% improvement in computational performance due to the superior thermal management provided by liquid cooling. These enhancements are critical for maintaining the high availability and performance required by AI applications. The initial investment in liquid cooling infrastructure is justified by the long-term savings in energy costs and reduced maintenance requirements. This article contributes to the growing body of literature advocating for the adoption of liquid cooling in modern data centers, particularly those focused on AI workloads. The findings underscore the importance of liquid cooling in ensuring the sustainable growth and operational efficiency of AI data centers.

DOI: 10.61137/ijsret.vol.11.issue2.461

The Growing Reliance on Artificial Intelligence in Everyday Human Activities: An Analytical Perspective
Authors:-Assistant Professor Nitin S Bheemalli

Abstract-:In recent years, the swift incorporation of Artificial Intelligence (AI) into various aspects of everyday life has profoundly transformed the ways in which individuals work, communicate, and manage their daily activities. This paper delves into the intricate relationships that have emerged between humans and AI across multiple domains, including healthcare, education, transportation, communication, domestic life, and decision- making processes. Through a comprehensive literature review and detailed analysis of case studies, this research aims to elucidate the degree of AI integration in these fields and assess its benefits as well as potential risks. The paper concludes by identifying key areas where policy intervention is necessary and addressing ethical considerations that must be taken into account during the development and deployment of AI systems intended for routine use.

DOI: 10.61137/ijsret.vol.11.issue2.462

A Future Oriented Framework for Blood Donation: Building a User-Centric Web Portal for Donor-Recipient Interaction
Authors:-Dr. R.Manimegalai, K.Jayalakshmi

Abstract-:The demand for efficient and reliable blood donation systems has grown exponentially, driven by increased population mobility, chronic health conditions, and emergency needs. Traditional systems suffer from fragmented communication, limited accessibility, and delays in response time. This paper presents a future-oriented framework for a user-centric web portal that fosters seamless interaction between blood donors and recipients. Leveraging modern technologies such as artificial intelligence, real-time communication tools, and health data integration, the proposed system enhances the blood donation process through intelligent matchmaking, transparency, and user engagement.

A Comparative Study on Additive Cross-Modal Attention Network (ACMA) for Depression Detection Based on Audio and Textual Features
Authors:-Asif S Majeed, Evelyn Treasa Jaison, Fathima S, Arunlal M L, Dr. Jyothi R L, Swathi S

Abstract-:This study introduces an approach for depression detection through an Additive Cross-Modal Attention Network (ACMA) that integrates audio and textual data to improve diagnostic accuracy without relying on self-report questionnaires. Traditional depression assessments often depend on patient- disclosed information, which may not always be accurate due to stigma or personal reluctance, leading to potential underdiagno- sis. The ACMA model addresses these limitations by leveraging cross-modal attention mechanisms within a Bidirectional Long Short-Term Memory (BiLSTM) and Transformer model to cap- ture and assign optimal weights to relevant features across audio and text modalities. This enables the model to effectively detect depressive symptoms by analyzing both linguistic and acoustic cues. The model is designed for both binary classification (depressed vs. non-depressed) and regression tasks to estimate depression severity, utilizing the DAIC-WOZ dataset for evaluation. ACMA demonstrates significant improvements over baseline models, achieving high accuracy, recall, and F1 scores. Additionally, the model’s adaptability across different datasets underscores its potential as a robust, non-intrusive tool for clinical applications in mental health diagnostics. This work advances the field of au- tomated depression detection, providing a foundation for further research in cross-modal mental health assessment systems.

DOI: 10.61137/ijsret.vol.11.issue2.463

A Proposed Model for Improving the Realibilty in Online Exam Resuts Using Blockchain Technology
Authors:-AV Mahesh Reddy, D Deva Charan, R Darshini, Dr.Shiny DuelaM.E

Abstract-:The research develops an online exam security system based on blockchain technology for Learning Management System (LMS) applications. When combining blockchain with Moodle it establishes tamper-resistant local storage systems that protect examination results. The framework achieves Information integrity through cryptographic hashing and evidence-of-stake mechanism which ensures transparent data storage compared to moodle’s square unit blockchain for enhanced reliable Check result delivery in pedagogical assessment. The adopted approach demonstrates a comprehensive solution to protect online exams which prevents both unauthorized access and it ensures their tamper-resistance.

2D Combat Fighting Game
Authors:-Surendhar S, Dr.K Nandhini

Abstract-:The rapid advancement of gaming technologies has significantly transformed the interactive entertainment industry, with developers seeking innovative ways to engage players through immersive and dynamic experiences. This paper presents the development of a 2D Combat Fighting Game using C# and the Unity game engine, aimed at delivering an engaging, interactive gameplay experience. The game leverages Unity’s powerful features, such as physics-based character movements, animation, and real-time combat mechanics, to create an interactive and responsive environment. The core gameplay revolves around two fighters engaging in a series of combat moves, where players control the characters and utilize various offensive and defensive techniques to defeat their opponent. The game incorporates player-controlled inputs such as punch, kick, block, and dodge actions, all of which are designed to be intuitive and responsive, ensuring a seamless and enjoyable user experience. The design of the game also emphasizes interactive elements, including environmental obstacles, power-ups, and dynamic backgrounds, which further enhance the immersive nature of the game. The game’s architecture is developed using C# scripting within the Unity engine, with an emphasis on efficient game mechanics and real-time input processing. Key elements include collision detection for hit and damage calculations, AI-controlled enemy behaviours, and level progression. The physics engine integrated with Unity adds realism to the character animations, including smooth movement, impact detection, and dynamic interactions with the game environment. Experimental results indicate that the game’s design allows for smooth gameplay, responsive controls, and an interactive combat experience, offering players an engaging platform to test their skills. This project also explores the use of Unity and C# in developing highly interactive games that provide immersive environments, offering potential applications in both entertainment and training simulations. The development of this 2D Combat Fighting Game demonstrates how game development platforms like Unity and C# can be leveraged to create fun and interactive gaming experiences, setting the foundation for more complex, scalable, and engaging interactive entertainment projects.

DOI: 10.61137/ijsret.vol.11.issue2.476

Artificial Intelligence in Game Theory: Learning Strategy in Competitive and Cooperative Systems
Authors:-Ashish Kumar

Abstract-:Artificial Intelligence (AI) and game theory have converged into a powerful interdisciplinary domain that focuses on strategic interaction among intelligent agents. This paper explores how AI systems, particularly through reinforcement learning and multi-agent environments, are transforming the way game-theoretic strategies are learned, adapted, and executed. It begins by outlining the foundational principles of game theory—especially concepts like Nash equilibrium, zero-sum games, and cooperation models—and explores how AI extends these concepts by learning optimal strategies from experience. Through detailed case studies, including applications in autonomous vehicle coordination, online auctions, and cybersecurity defense mechanisms, the paper shows how AI-driven agents can dynamically adapt to competitive and cooperative scenarios. Ethical and regulatory considerations surrounding fairness, transparency, and accountability in automated decision-making are critically examined. Challenges such as scalability, interpretability, and emergent behavior in complex multi-agent systems are discussed, along with prospective solutions. Finally, the paper considers the future landscape, highlighting trends like quantum game theory, hybrid learning models, and self-organizing AI systems that promise to expand the role of game theory in intelligent decision-making.

DOI: 10.61137/ijsret.vol.11.issue2.464

AI in Marine Conservation: Monitoring Oceans with Machine Learning and Remote Sensing
Authors:-Bhumika. M

Abstract-:Marine ecosystems are among the most biologically diverse yet vulnerable environments on the planet, facing significant threats from climate change, pollution, and overexploitation. Artificial Intelligence (AI) is increasingly being leveraged to monitor and protect these fragile ecosystems through innovations in machine learning and remote sensing. This paper explores the integration of AI technologies in marine conservation, detailing their applications in species identification, coral reef monitoring, illegal fishing detection, and marine habitat mapping. Drawing from recent advancements, the study highlights how satellite imagery, autonomous underwater vehicles (AUVs), and acoustic sensors, coupled with AI algorithms, are enabling more precise and timely environmental assessments. Ethical and regulatory considerations, including data privacy in territorial waters, fairness in conservation resource allocation, and inclusivity in global biodiversity goals, are discussed. Challenges such as limited annotated data, sensor constraints, and interpretability of AI models are examined. The paper concludes with a forward-looking view on emerging technologies, collaborative platforms, and policy developments that aim to scale and democratize AI-based marine conservation globally.

DOI: 10.61137/ijsret.vol.11.issue2.465

Machine Learning in Nutritional Science: Personalizing Diets with Precision Algorithms
Authors:-Lubna Tabasum

Abstract-:Machine learning (ML) is revolutionizing nutritional science by enabling the personalization of diets based on individual health conditions, genetic profiles, and lifestyle factors. This paper explores the role of machine learning in enhancing dietary recommendations and improving health outcomes. It discusses how ML algorithms can analyze large datasets of nutritional information, medical histories, and genomic data to create tailored dietary plans that optimize nutrition for individuals. The paper highlights the integration of AI technologies in the development of precision nutrition models, the benefits of personalized diets in managing chronic diseases, and the emerging trends in nutrition prediction. The challenges of data privacy, model interpretability, and the need for interdisciplinary collaboration between nutritionists, data scientists, and clinicians are also examined. The paper concludes by discussing the future of machine learning in nutritional science, emphasizing the potential of combining AI with wearable technologies to continuously monitor and adjust diets for long-term health optimization.

DOI: 10.61137/ijsret.vol.11.issue2.466

Emotionally Intelligent Robots: Advances in Social AI for Elderly and Companion Care
Authors:-Sindhu.K

Abstract-:The integration of emotion recognition capabilities into robots has opened new possibilities for enhancing social interactions in various fields, including elderly and companion care. Emotionally intelligent robots (EIRs) are designed to recognize and respond to human emotions, creating a more empathetic and supportive interaction. These robots, empowered by advancements in artificial intelligence (AI) and machine learning, can offer personalized support, alleviate feelings of loneliness, and assist with daily tasks for individuals who may experience emotional or physical challenges. This paper explores the development of emotionally intelligent robots, their applications in elderly care, the ethical considerations surrounding their use, and the potential societal impacts of their adoption. Through case studies and examples, it highlights how these robots can be used to enhance the quality of life for the elderly, particularly in terms of social interaction and emotional well-being.

DOI: 10.61137/ijsret.vol.11.issue2.469

Online Auction System Using Blockchain Technology
Authors:-Dipali Phad, Shruti Jadhav, Harshada Rane, Saish Shinde, Prof. P V Nagare, Professor P. V. Nagare

Abstract-:Online auction platforms have revolutionized the way digital assets and products are bought and sold. However, traditional auction systems are typically hosted on centralized servers, exposing them to several vulnerabilities such as data tampering, single points of failure, and manipulation of bid values. This research paper proposes an Android-based decentralized online auction system that integrates a custombuilt blockchain ledger using the SHA-256 hashing algorithm to store all bid records securely. Unlike existing blockchain auction platforms that use smart contracts our system excludes smart contracts entirely and instead uses a simulated recharge wallet for handling virtual bid payments. Firebase is utilized as the backend database to handle authentication and real-time data sync. The system architecture promotes trustless interactions while remaining lightweight and mobile-accessible. This paper discusses the detailed architecture, blockchain logic, wallet mechanism, and the system’s realtime capability, showing its potential as a practical and secure auction platform without needing smart contracts.

DOI: 10.61137/ijsret.vol.11.issue2.470

Vision-Based Intelligent Attendance System Using Real-Time Facial Recognition and Liveness Detection
Authors:-Kanishkar K, Nandhini K

Abstract-:The suggested system automates and improves the accuracy of attendance management in business and academic settings by presenting an intelligent vision-based attendance tracking solution that makes use of biometric facial recognition. The system securely records attendance, captures real-time facial data, and verifies identities against a pre-registered database by utilizing real-time face detection and recognition technologies. The system, which was created with Python, OpenCV, Tainter, SQLite, and a face recognition module, provides administrators with an easy-to-use interface for managing student profiles and creating attendance records. A backend database and graphical user dashboard are integrated to guarantee real-time processing, reduce human error, and successfully block proxy attendance. This solution supports the development of intelligent institutional infrastructure by offering a scalable, safe, and effective substitute for conventional attendance techniques.

DOI: 10.61137/ijsret.vol.11.issue2.471

AI-Powered Virtual Mouse Controlled by Hand Gestures
Authors:-Dhinesh Kumar B, Priya Anand R

Abstract-:The present paper proposes a novel way of cursor control using hand movements that a standard webcam can easily capture instead of the traditional mouse. It offers a hands-free experience with ease by eliminating the need for a hardware device. The technology utilizes the ability of the webcam to record hands perfectly. The hand gestures are not just imitated, however. Some hand gestures will be developed to serve various operations, such as dragging and right and left click. This permits users to take advantage of the cursor and the functionalities of it in a smooth and intuitive fashion. For one to implement this system as aforementioned, Python and OpenCV come in handy. These models imitating the undulating movement of human hand movements have the capabilities to significantly increase the usability of such computer vision applications. The technological world today is constantly evolving because of the plenty of technologies. One of such fascinating concepts is the human-machine interface. The concept fundamental this is known as signal acknowledgment, which is a method for duplicating mouse functions on a screen without any need for equipment.

DOI: 10.61137/ijsret.vol.11.issue2.477

Block Chain Based Secured Privacy Preserved Frame Work for Smart Cities
Authors:-E.Ezhilprasath, R.Priya Anand

Abstract-:Smart cities are changing fast with the addition of IoT, cloud computing, and AI. Yet, the higher connectivity also translates into important security and privacy issues. This paper suggests a blockchain-based architecture to provide safe, decentralized data management and privacy protection in the context of smart cities. The architecture leverages distributed ledger technology, smart contracts, and encryption schemes to implement transparency, immutability, and selective privacy for city-scale applications like smart grids, healthcare, and traffic. We illustrate the effectiveness of the architecture using a prototype deployment and compare its performance in terms of latency, throughput, and security.

DOI: 10.61137/ijsret.vol.11.issue2.472

StudyBay: Smart Education Platform
Authors:-Mr. Naveen, Ashmit Jaiswal, Ashwani Kumar Singh, Ayush Goswami, Arpit Chaudhary

Abstract-:StudyBay serves as a pioneering digital educational platform which helps different learner populations develop skills while accessing knowledge. The platform combines specific resource recommendation along with customizable educational pathways and selected materials from experts while supporting learners to work together through shared tools. This system incorporates four major components: a User Dashboard that allows users to view progress and handle course administration while also featuring a Resource Hub for educational material retrieval and Collaboration Spaces for peer engagement alongside a forthcoming AI-powered Recommendation Engine that suggests personalized content. The system implements basic accessibility functions attached to user-friendly features alongside forthcoming development efforts that aim to embed AI functionality for advanced personalization of learning content. The user interface runs on React web technologies while Node.js manages the backend operations through PostgreSQL and MongoDB databases for maintaining solid data management. StudyBay wants to spread education opportunities to every student so learning gaps between communities can disappear while providing perpetual skill growth opportunities.

DOI: 10.61137/ijsret.vol.11.issue2.473

AI in Microbiome Research: Decoding the Human Gut-Brain Axis with Deep Learning
Authors:-Vandana Gowda C.D

Abstract-:The human microbiome, a complex community of microorganisms residing in the gut, plays a critical role in human health and disease. Recent studies suggest that the gut microbiota influences not only digestive health but also brain function and behavior, contributing to the emergence of the gut-brain axis concept. Advances in artificial intelligence (AI), particularly deep learning, have enabled the analysis of vast amounts of microbiome data, providing deeper insights into the microbiota’s composition and its connection to various neurological conditions. This paper explores the applications of AI in microbiome research, focusing on its role in decoding the human gut-brain axis. AI-driven approaches are being used to identify microbial patterns linked to diseases such as autism, depression, and Parkinson’s, revolutionizing our understanding of the brain’s biochemical environment. The paper discusses case studies where AI has been applied to microbiome data, along with the challenges, ethical considerations, and future prospects of using AI in this field.

DOI: 10.61137/ijsret.vol.11.issue2.474

CRISIS Management with AI: Modelling Human Behavior and Systemic Risk during Pandemics
Authors:-Vinayak. K

Abstract-:The role of artificial intelligence (AI) in crisis management has grown exponentially, particularly in the context of global health crises such as pandemics. AI can offer predictive capabilities that help mitigate the effects of widespread disasters by modeling human behavior, forecasting systemic risks, and optimizing resource distribution. This paper explores how AI is used in crisis management during pandemics, focusing on human behavior modeling, risk assessment, and response strategies. It investigates case studies from the COVID-19 pandemic, analyzing AI’s role in tracking virus spread, understanding human interactions, and improving decision-making processes. Ethical considerations, data privacy concerns, and the challenges of integrating AI in crisis response systems are also discussed. The paper concludes by highlighting future prospects, including the potential for more advanced AI tools to manage future global crise.

DOI: 10.61137/ijsret.vol.11.issue2.475

Rewheelz – A Complete Web-Based Platform for Pre-Owned Vehicles and Services
Authors:-Nishanth S, Assistant Professor Mr. N. Ganapathiram

Abstract-:This paper presents Rewheelz, a comprehensive web application designed to simplify and centralize the process of purchasing, servicing, and maintaining pre-owned vehicles. The platform integrates car and bike sales, spare part ordering, service scheduling, online billing, and real-time monitoring into a unified digital ecosystem. Developed using HTML, CSS, JavaScript, PHP, and MySQL, Rewheelz addresses key gaps in current fragmented systems. It offers users a secure, efficient, and transparent experience. The system aims to improve customer trust and convenience while offering value-added features like service history tracking and an admin dashboard.

Separation of Heavy Metal Ions from Industrial Effluents: A Technological Approach to Sustainable Economic Development
Authors:-Rohit Kumar, Jaishiv Chauhan, Jitendra Pal Singh

Abstract-:This report critically evaluates five key strategies for treating heavy-metal-contaminated wastewaters—chemical precipitation, ion exchange, membrane filtration, adsorption, and electrochemical methods. It emphasizes the environmental risks posed by toxic metals like Pb²⁺, Cd²⁺, Cu²⁺, Ni²⁺, and Cr³⁺, and outlines the strengths and limitations of each technique in terms of removal efficiency, cost, energy consumption, and recovery potential. The study highlights recent advancements, including biopolymer flocculants, high-selectivity resins, advanced membranes, nanomaterial-based adsorbents, and electrochemical recovery systems. It concludes that integrated hybrid approaches offer the most promising solutions for meeting regulatory requirements and supporting circular economy principles.

Development of AI/ML-Based Solution for Detection of Face-Swap Deep Fake Videos
Authors:-KV Achyuth Reddy, Lochan S, Shrusthi, Ediga Purushotham Goud, Associate Professor Dr. M Swapna

Abstract-:Deep fake technology has drawn a lot of attention as it can manipulate videos and audios synthetically, usually for ill intent. With the rapid evolution of deep learning-based generative models, separating real media from fake media has become even harder. This paper presents a detailed survey of state-of-the-art deep fake detection techniques and outlines a new AI/ML-based technique to identify face-swap deep fake videos with greater precision. It explains different approaches such as Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), Generative Adversarial Networks (GANs), and hybrid approaches to evaluate and compare their detection efficiency based on manipulated content. The new technique utilizes varied detection layers spatial, temporal, frequency-based, and biometric to withstand an attacker’s manipulations and evolving deep fake technologies at a fast pace. The paper also contrasts popular benchmark datasets for deep fake work and identifies limitations of current detection techniques. Real-time detection, data imbalance, and the ability of AI models to generalize across situations are explained in detail. It concludes with research directions to build more robust, more transparent AI models that can combat deep fake technology more effectively. These developments are recommended to be implemented in applications such as law enforcement, digital forensics, and media authenticity verification.

Fiber-Reinforced High Modulus Asphalt Concrete for Extreme Weather Conditions: A Comprehensive Review

Authors: Research Scholar Mr. Satyaveer Dhakad, Assistant Professor Mr. Hariram Sahu

Abstract: High Modulus Asphalt Concrete (HMAC) has gained increasing attention as a durable pavement solution for roads exposed to heavy traffic and extreme weather conditions. However, despite its high stiffness and load-bearing capacity, HMAC remains vulnerable to thermal cracking at low temperatures and rutting at high temperatures. This review paper comprehensively examines the use of synthetic fibers—specifically Glass Fiber (GF) and Polyethylene Terephthalate (PET) Fiber—to address these limitations. It explores the mechanisms by which fibers improve mechanical properties, such as tensile strength, rutting resistance, fatigue life, and moisture durability. Drawing upon a wide range of global and Indian studies, this review highlights key findings on fiber-reinforced HMAC performance under temperature and moisture extremes, discusses the environmental and structural advantages of PET fiber derived from plastic waste, and identifies knowledge gaps in current research. Special emphasis is placed on the relevance of these findings to India’s diverse climatic zones. The paper concludes by proposing future directions for research and practical implementation, particularly regarding the hybrid use of binders and fibers for sustainable and climate-resilient pavement infrastructure.

DOI: https://doi.org/10.5281/zenodo.15906029

Folding Algorithms Of Life: Mathematical Insights Into Protein Misfolding, Disorders, And Therapies

Authors: Er. Rajdeep Saharawat,, Muskan,, Dr. Vinit Kumar Sharma,, Ms. Meenal Maan

Abstract: Proteins must fold into specific three-dimensional structures to function correctly. Errors in protein folding—misfolding—can lead to aggregation and are associated with several degenerative diseases, including Alzheimer’s, Parkinson’s, and Huntington’s. This review explores the molecular mechanisms of protein folding and misfolding, the cellular quality control systems managing these processes, and the pathogenesis of misfolding-related disorders. We also discuss therapeutic approaches aimed at correcting misfolding or enhancing proteostasis

A Comparative Study on Application of Various Methods in Game Theory

Authors: Dr Vinit Kumar Sharma,, Anjali Goyal, 3Kushagra Sharma, Kushagra Sharma

Abstract: In this paper, we have discussed application of various methods ([9],[10]) for solving the problem of a game as Dominance method, Graphical method, Algebraic method, Simplex method etc. Each method has its limitations and benefits, which depends upon the nature of problem. Students may learn about the uses of various methods by study this paper.

Launching AI-First Ventures Designed To Solve Complex, Data-Driven Market Problems

Authors: Lakshmi Annamalai

Abstract: As industries face increasingly complex and data-driven challenges, a new generation of startups—AI-first ventures—is emerging to provide scalable, intelligent solutions from day one. These businesses are not just using AI as an add-on feature; they are fundamentally designed around AI capabilities, with machine learning, automation, and data infrastructure embedded at the core. This article explores the key components of launching an AI-first startup, from identifying suitable, high-impact market problems to building scalable data pipelines, designing user-centric AI products, and navigating the challenges of growth and regulation. It also highlights case studies of successful AI-first companies that exemplify how early integration of AI can create defensible competitive advantages. With a clear roadmap and a strategic foundation, founders can leverage AI to solve real-world problems in ways that are both innovative and sustainable. The article emphasizes that in today’s digital economy, building AI-first is not just an option—it’s a strategic imperative

DOI: https://doi.org/10.5281/zenodo.16742085

 

Launching Scalable Startups With AI-Driven Automation, Analytics, And Optimization Built Into Operations From The Very Beginning

Authors: Nandakumar Perumal

Abstract: Startups today operate in fast-moving, competitive environments where agility, efficiency, and scalability are critical to success. Artificial Intelligence (AI) offers early-stage companies a powerful advantage by enabling them to automate operations, analyze user behavior, and optimize performance from the very beginning. This article explores how startups can strategically integrate AI across core business functions—product development, marketing, operations, and financial planning—to build scalable foundations. It highlights the benefits of an AI-first mindset, including faster time-to-market, smarter resource allocation, and real-time decision-making. The discussion includes practical advice on selecting an AI tech stack, navigating early-stage challenges like data limitations and talent gaps, and avoiding common pitfalls such as over-automation. Through case studies and future-forward insights, the article demonstrates that startups which embed AI into their DNA are better positioned to innovate, scale, and lead. AI is no longer optional it’s essential for building lean, resilient, and intelligent businesses from day one

DOI: https://doi.org/10.5281/zenodo.16741966

 

Bridging Gaps In Global Healthcare Access With Scalable AI Solutions

Authors: Rameshwaran Kuppusamy

 

Abstract: Global disparities in healthcare access remain one of the most pressing challenges in public health. In many regions, particularly low-income and remote areas, people face obstacles such as limited clinical infrastructure, lack of trained professionals, and economic or cultural barriers. Artificial Intelligence (AI) presents a powerful opportunity to bridge these gaps by delivering scalable, adaptive, and cost-effective healthcare solutions. This article explores how AI-powered diagnostics, virtual care platforms, multilingual communication tools, and public health analytics can significantly improve access to quality care. By automating triage, supporting remote monitoring, and tailoring services to local languages and cultural contexts, AI enhances both reach and relevance. The piece also addresses critical deployment challenges, including data privacy, algorithmic bias, and infrastructure constraints. Through global case studies and best practices, the article makes the case for ethically designed, locally embedded AI systems that amplify healthcare impact and equity. AI, when responsibly implemented, can serve as a transformative force in achieving universal healthcare access.

DOI: https://doi.org/10.5281/zenodo.16741996

 

An Adaptive Cloud–Edge Security Framework For Smart Manufacturing

Authors: Vanaja Kumari Degala

Abstract: The rapid evolution of smart manufacturing systems has intensified the adoption of cloud–edge computing architectures to support real-time data processing, resource sharing, and intelligent decision-making. However, the convergence of heterogeneous devices, distributed services, and cross-domain interactions introduces complex security challenges that traditional perimeter-based protection models fail to address effectively. This paper presents an adaptive security framework for cloud edge enabled smart manufacturing environments based on zero-trust principles. The proposed framework integrates identity-centric access control, continuous trust evaluation, intelligent anomaly detection, and distributed data protection mechanisms to ensure secure interactions across cloud, edge, and terminal layers. Unlike static security architectures, the proposed approach dynamically adjusts access privileges and protection policies based on contextual risk assessment. The framework enhances system resilience against unauthorized access, data leakage, and lateral movement attacks while supporting scalability and cross-domain collaboration. Conceptual analysis demonstrates that the proposed framework provides proactive and fine-grained security protection suitable for next-generation manufacturing ecosystems.

Machine Learning Driven Optimization Of SAP Business Processes Using Real-Time Cloud Analytics Pipelines

Authors: Zarina Iskandarova

 

Abstract: The modern industrial landscape is witnessing a fundamental shift in Enterprise Resource Planning (ERP) as organizations transition from static data collection to dynamic, self-optimizing business processes. This review article investigates the integration of Machine Learning (ML) within SAP ecosystems, specifically focusing on the deployment of real-time cloud analytics pipelines. By leveraging the SAP Business Technology Platform (BTP) as a connective tissue between the SAP S/4HANA digital core and hyperscaler cloud services, enterprises can now process transactional data with sub-second latency to drive proactive decision-making. The article evaluates key ML methodologies, including regression-based demand forecasting, unsupervised anomaly detection for financial fraud, and reinforcement learning for autonomous supply chain tuning. Central to this transformation is the architecture of the real-time pipeline, which utilizes technologies such as Change Data Capture (CDC) and streaming frameworks like Apache Kafka to eliminate the "latency gap" inherent in traditional batch processing. We analyze how these pipelines create a closed-loop system, where analytical insights are automatically translated back into operational actions within the SAP environment. Furthermore, the review addresses the technical hurdles of data gravity, the necessity for Explainable AI (XAI) in corporate governance, and the emerging role of generative agents in 2026. Ultimately, we conclude that the convergence of ML and real-time cloud analytics is no longer an optional enhancement but a strategic imperative for the "Intelligent Enterprise" seeking resilience and efficiency in a volatile global economy.

DOI: https://doi.org/10.5281/zenodo.19427984

 

Integrating SAP Systems With Artificial Intelligence For Autonomous Enterprise Decision-Making In Cloud Environments

Authors: Bekzod Tursunov

Abstract: The evolution of Enterprise Resource Planning (ERP) systems has reached a pivotal stage where the integration of Artificial Intelligence (AI) and cloud computing is enabling the transition toward the autonomous enterprise. This review article analyzes the technical and strategic frameworks required to integrate SAP systems with AI for automated decision-making. We explore the role of the SAP Business Technology Platform as the orchestration layer for agentic AI, moving beyond traditional predictive models to autonomous digital agents that plan and execute cross-functional workflows. The article examines the transition from Joule-powered generative support to multi-agent systems capable of self-healing supply chains and autonomous financial operations. We further discuss the technical imperatives of a clean core strategy and the mitigation of risks such as AI hallucinations and data sovereignty. By grounding AI in business semantics through retrieval augmented generation, these systems ensure that autonomous actions remain compliant with corporate logic and global regulations. The review highlights how the synergy between SAP AI Core and hyperscaler infrastructure facilitates the scaling of these models across global enterprises. Furthermore, we evaluate the shift in the human role from manual data processing to the strategic governance of intelligent agents. This transition promises to redefine operational agility, allowing businesses to react to market fluctuations with unprecedented speed and precision. By synthesizing current architectural trends, this review provides a comprehensive roadmap for organizations to leverage AI-integrated SAP ecosystems to achieve proactive business resilience in a volatile digital economy.

DOI: https://doi.org/10.5281/zenodo.19437889

Published by:

IJSET Editorial Board Member Suyog Bidkar

Uncategorized

 

Suyog Bidkar

Affilation:

Portfolio Manager, Infosys Limited for CVS Health

Hartford, CT, United States

Email-Id: Suyogbidkar82@gmail.com
ACADEMIC QUALIFICATION

  • Advanced Program Management From Cornell University – USA, 2023.
  • Post Graduate Diploma In Advanced Computing From C-DAC– Pune, India, 2006.
  • Bachelor Of Engineering From Govt. College Of Engineering –Pune University, India, 2006.
Project:

  • Healthcare Interoperability Using FHIR, Infosys Limited for CVS Health – Hartford, CT.
  • Next Generation Clinical Platform, Agile Release Train Engineer (RTE) Infosys Limited for CVS Health – Hartford, CT .
  • Multimillion programs, Program Manger Infosys Limited for multiple clients in USA, UK & INDIA

 

Published by:

IJSRET Volume 11 Issue 1, Jan-Feb-2025

Uncategorized

IoT Enabled Solutions for Women Safety and Health Monitring
Authors:-Sudeshna P, Vivekanandan K

Abstract-Women and children today deal with a number of problems, including sexual attacks. The victims’ life will undoubtedly be greatly impacted by such atrocities. It also has an impact on their psychological equilibrium and general wellbeing. The frequency of these acts of violence keeps rising daily. Even schoolchildren are victims of sexual abuse and abduction. In our society, a nine-month-old girl child is not protected; she was abducted, sexually assaulted, and ultimately killed. Seeing the abuses of women makes us want to take action to ensure the protection of women and children. Therefore, we intend to present a device in this project that will serve as a tool for security and guarantee the safety of women and children. GSM microcontroller.

DOI: 10.61137/ijsret.vol.10.issue5.224

A 19-Level Variable Frequency Switched DC-AC Converter fed Induction Motor Drive for Bench Grinding Applications
Authors:-MTech Scholar Umang Soni, Assistant Professor Shyam Kumar Barode, Assistant Professor Hari Mohan Soni, Assistant Professor Sachin Jain

Abstract-The development of inverters with more than two layers to reduce distortion from the fundamental sinusoidal waveform gave rise to the concept of a multilayer inverter. For bench grinder applications, the induction motor drive has to be powered by AC. Therefore, a multilayer inverter is used to boost the sine wave nature of the inverter output, and an asymmetrical H-bridge type inverter is used to decrease the bulkiness and cost of the system. The MATLAB platform is used to construct the concept, and analysis is then conducted to ascertain the end product’s value.

DOI: 10.61137/ijsret.vol.11.issue1.101

Review on PAPR Reduction and Improvement of OFDM System Performance Using Artificial Intelligence
Machine Learning Algorithm

Authors:-M.Tech Scholars Rahul Mishra, Assistant Professor Vijay Bisen

Abstract-The advancement of technology necessitates the development of more sophisticated modulation strategies for wideband digital communication systems. The requirements for high-speed data transmissions can be effectively met by utilizing orthogonal frequency division multiplexing, which is an effective technique. However, a high peak-to-average power ratio (PAPR) is one of the key limits that OFDM systems face, both in terms of their performance and their power efficiency. The evaluation of the PAPR reduction has become a topic of widespread interest in this present decade due to the relevance it holds in the industrial and scientific communities. The purpose of this study is to Review show the combination of the bat algorithm with the partial transmit sequence scheme as an effective way for reducing PAPR that also eases the burden of computing work. For the purpose of providing a comparative evaluation of the PAPR reduction performance, a number of simulations using various partial transmit sequence schemes have been carried out.

DOI: 10.61137/ijsret.vol.11.issue1.102

A Review on Nano Fluid Particles through a Rectangular Corrugated Channel
Authors:-Mayank Dwivedi, Dr. Sanjay Kumar Singh

Abstract-This review examines the thermal and hydraulic performance of nanofluids flowing through rectangular corrugated channels, focusing on their potential for enhancing heat transfer efficiency. Various nanofluids, including ZnO, CuO, Fe₂O₃, Al₂O₃, SiO₂, and TiO₂, are evaluated based on parameters such as heat transfer coefficient, pressure drop, and Nusselt number. The unique properties of nanofluids, coupled with the enhanced turbulence induced by corrugated geometries, result in significant improvements in thermal performance compared to conventional fluids. However, factors like pressure drop and flow resistance also vary widely depending on the type of nanoparticles used. This review highlights the critical role of nanoparticle selection and channel design in optimizing heat transfer while minimizing pressure losses, providing valuable insights for advanced thermal management systems.

An Algorithmic Implemetation on Big Data Approach Using Mapping Techniques
Authors:-Research Scholar Ms. Shilpa Sharma, Professor R. K. Bathla

Abstract-Research is an art of scientific examination. The advance learner’s vocabulary of current English lays down the meaning of research as “A careful exploration and enquiry especially through search for new facts in any branch of knowledge. Bradman and Morry define research as “A standardize efforts to increase new knowledge”. Research is, thus an original contribution to existing stock of knowledge making for its advancement. It is detection of truth with the help of study, observation, comparison, and experiments. The technologies that give support to the entire process of cost-effectively storing and processing data, and utilize internet technologies in a scattered way have arisen in the past few years. NoSQL and Cloud computing are the renowned ones that improve the potential offered by Big Data Technologies. Map Reduce is a software manufacture introduced by Google to act upon parallel processing on large datasets supercilious that large dataset storage is distributed over a large number of machines. Each machine computes data stored locally, which in turn contributes to distribute and parallel processing. This paper focuses on the Big data and Cloud services using impact of Map Reduce Algorithm and very advantageous for the researchers and corporate sectors who are using Map Reducing System technology.

DOI: 10.61137/ijsret.vol.11.issue1.103

The Impact of Digital Transformation on Warehouse Efficiency
Authors:-Tariq Ibrahim Al Barwani, Dr.Masengu Reason

Abstract-Digital transformation has emerged as a pivotal force reshaping the logistics and supply chain sectors, particularly in warehouse operations. This study explores the multifaceted impact of digital technologies on warehouse efficiency, highlighting key innovations such as automation, data analytics, and the Internet of Things (IoT). By integrating these technologies, warehouses can enhance operational performance, reduce costs, and improve inventory management. The research identifies how automation tools, such as robotics and automated guided vehicles (AGVs), streamline processes, reduce labour costs, and minimize human error. Furthermore, advanced data analytics enable real-time decision-making and predictive analytics, allowing for optimized inventory levels and enhanced demand forecasting. The IoT facilitates seamless communication between devices, improving visibility and traceability throughout the supply chain. Through case studies and empirical data, this paper demonstrates that warehouses adopting digital transformation strategies experience significant improvements in productivity, accuracy, and customer satisfaction. However, it also addresses the challenges faced during implementation, including workforce adaptation and cybersecurity concerns. Ultimately, this study emphasizes that embracing digital transformation is not merely a trend but necessary for warehouses aiming to thrive in an increasingly competitive market. The findings underscore the importance of strategic planning and investment in technology to achieve sustainable efficiency gains.

The Impact of Digital Transformation on Warehouse Efficiency
Authors:-Tariq Ibrahim Al Barwani, Dr.Masengu Reason

Abstract-Digital transformation has emerged as a pivotal force reshaping the logistics and supply chain sectors, particularly in warehouse operations. This study explores the multifaceted impact of digital technologies on warehouse efficiency, highlighting key innovations such as automation, data analytics, and the Internet of Things (IoT). By integrating these technologies, warehouses can enhance operational performance, reduce costs, and improve inventory management. The research identifies how automation tools, such as robotics and automated guided vehicles (AGVs), streamline processes, reduce labour costs, and minimize human error. Furthermore, advanced data analytics enable real-time decision-making and predictive analytics, allowing for optimized inventory levels and enhanced demand forecasting. The IoT facilitates seamless communication between devices, improving visibility and traceability throughout the supply chain. Through case studies and empirical data, this paper demonstrates that warehouses adopting digital transformation strategies experience significant improvements in productivity, accuracy, and customer satisfaction. However, it also addresses the challenges faced during implementation, including workforce adaptation and cybersecurity concerns. Ultimately, this study emphasizes that embracing digital transformation is not merely a trend but necessary for warehouses aiming to thrive in an increasingly competitive market. The findings underscore the importance of strategic planning and investment in technology to achieve sustainable efficiency gains.

Optimizing Deep Learning Models For Edge Devices: A Framework for Efficient Ai Deployment
Authors:-Preethi V, Associate Professor Dr S R Raja

Abstract-The proliferation of edge devices such as smartphones, IoT sensors, and embedded systems has driven the demand for deploying artificial intelligence (AI) models directly on these devices. However, the limited computational and energy resources of edge devices present significant challenges for deep learning (DL) models, which are typically resource-intensive. This paper proposes a novel framework for optimizing deep learning models for edge devices, focusing on techniques such as model compression, quantization, and knowledge distillation. By applying these techniques, the proposed framework ensures minimal loss of accuracy while significantly reducing model size and inference time. The effectiveness of the framework is demonstrated through experiments on image recognition and natural language processing tasks. The results highlight the potential for scalable AI solutions on edge devices without compromising user experience.

Automatic Pathole Detection System
Authors:-K .Kirti, W.Yash, C.Nihal, W. Nikhil, Professor Vairalkar, Professor T.Vivekanand

Abstract-Automatic Pothole Detection While Driving the main theme of the design is Smart Vehicles Electric vehicle/ Electric vehicle motor and battery technology. The arising need to help road accidents has ultimately came important aspect of moment’s developing world, the graph has taken a high rise in once 5 times. And numerous families being victims of this situation have suffered a lot. 60 of road accidents are passed due to uneven roads and interferers in the line. we came up with a an idea to descry potholes and humps in an automatic manner. and the person driving will be conceded about the pothole. An automatic pothole sensor using ultrasonic detector, which detects the potholes with the help of ultrasonic detector including longitude, latitude and depth of pothole and road humps. After seeing it sends the signal to GPS receiver through Arduino WiFi module which also displays the details in the TV and a android operation. This design can be used in the transport department as the importing and exporting is substantially done in night times and this sensor helps to warn the motorists. As this product has low manufacturing bring the price might not differ important and is surely affordable for a common man, due to its range of price the deals will rise to peaks and the manufacturer also has reasonable profit.

DOI: 10.61137/ijsret.vol.11.issue1.104

Review on Improvement of Shunt Active Filter Performance Using Artificial Intelligence Methods
Authors:-Manish Tomar, Raghunandan Singh Baghel

Abstract-In this review study, we looked at a variety of power filter approaches for high-power applications that frequently involve complicated digital control circuits and expensive batteries. An analog-based hysteresis current controller and capacitive energy storage are used to create a simple and low-cost active power filter circuit in this study. The filter is designed to be a low-power add-on item that reduces AC harmonic currents generated by existing electronic equipment (such as personal computers), which cause nonlinear loads on the AC mains. The suggested filter is addressed in terms of its operating concept, design requirements, and control method.

Kissan Buddy-An Android Application for Estimating The Nearest Mandi and Transaction Costs for Farmers
Authors:-KV Achyuth Reddy, Lochan S, Associate Professor Dr. M Swapna, Shrusthi, Ediga Purushotham Goud

Abstract-Kissan Buddy is an Android application developed to assist farmers in accessing real-time information about nearby mandis (agricultural markets) where they can sell their produce at optimal prices. The app utilizes Google Maps for accurate location services and Firebase for backend support, enabling farmers to input essential details such as their location, types of crops, and expected production costs. Based on this input, the application identifies the nearest mandis and estimates the transaction costs involved in selling the produce. This empowers The application uses advanced technologies such as Firebase, Google Maps, and cloud computing to offer farmers an intuitive platform where they can track their location, manage crops, and estimate nearby mandis (markets) where they can sell their produce, ensuring better price transparency and reducing reliance on middlemen. Key features of the app include location-based mandi search, real-time price estimation, and detailed transaction cost analysis. By improving market access, optimizing pricing transparency, and minimizing costs, Kissan Buddy aims to enhance profit margins for farmers and contribute to a more efficient and sustainable agricultural economy.

DOI: 10.61137/ijsret.vol.11.issue1.105

Teaching Identification of Fractions in Context Using the Three-tier Teaching Model’s Pedagogy
Authors:-Daniel Gbormittah, Christopher Yarkwah

Abstract-This paper aims to expand our understanding of culturally relevant pedagogy by utilizing the three-tier model for teaching mathematics in a context. The three-tier model is culturally relevant pedagogy (CRP). It is an innovative teaching approach that draws on learners’ sociocultural contexts to scaffold mathematics learning. The study investigated the effects of a culturally relevant pedagogy through the use of the three-tier model on pupils’ performance in fractions in Mfantsiman Municipality (MM). The study drew on ethnomathematics and the three-tier model as its main conceptual perspective. We administered a performance test to 426 participants in 12 primary schools in the MM. We analysed the quantitative data using frequency counts, mean, standard deviation, independent samples t-test, and paired samples t-test. We employed content analysis and narrative discussion to scrutinize the qualitative data. The results demonstrated that the culturally relevant pedagogy, specifically the three-tier model for teaching mathematics in a context approach, outperformed the conventional approach, reflecting the regular practices of primary school teachers in MM. The findings have implications for policy and the ongoing professional development of mathematics teachers.

DOI: 10.61137/ijsret.vol.11.issue1.106

Art without Borders: Exploring Transcultural Adaptations in Visual Creativity
Authors:-Sarika Tyagi

Abstract-This article delves into the concept of transcultural adaptations in visual arts, a practice that involves blending diverse cultural traditions, aesthetics, and ideas to create innovative and boundary-defying works. From historical exchanges along trade routes to the digital innovations of the contemporary era, transcultural art reflects the dynamic interplay of cultures across time. While celebrating creativity and hybridity, it also navigates critical ethical questions surrounding cultural sensitivity, power dynamics, and authenticity. By examining its historical roots, modern practices, and societal impact, this piece highlights the role of transcultural art in fostering dialogue, empathy, and inclusivity, ultimately enriching the global artistic landscape.

DOI: 10.61137/ijsret.vol.11.issue1.107

The Role of TiO2 Nanoparticles in Enhancing the Structural Properties and Thermal Stability of PVA Nanocomposites
Authors:-Assistant Professor R.Venugopal, Associate Professor Chandana.N, Assistant Professor S.Kiran, Assistant Professor B.Srinivas

Abstract-Polyvinyl alcohol (PVA) nanocomposites reinforced with titanium dioxide (TiO2) nanoparticles have garnered significant attention due to their unique properties and potential applications. In this study, we investigated the impact of TiO2 incorporation on the structural characteristics and thermal stability of PVA-matrix-based nanocomposites. The PVA polymer nanocomposite films were prepared using a solution casting method. The structural studies of the prepared films were characterized via X-ray diffraction (XRD), transmission electron microscopy (TEM). Moreover, the thermal properties of the prepared films were characterized by DSC, TGA and DTA. The addition of TiO2 nanoparticles induces structural changes in the PVA matrix. TEM studies showed that a PVA polymer surrounds TiO2 in its entirety. The PVA-TiO2 nanostructure is the same as the structure of a core-shell nanostructure. TiO2-doped PVA nanocomposites exhibited improved thermal stability. Thermogravimetric analysis of the nanocomposite films demonstrated enhanced resistance to thermal degradation. DSC analysis of the PVA-TiO2 nanocomposite films revealed that the glass transition temperature (Tg) and melting temperature (Tm) were 141°C and 265°C, respectively, for the 8 wt.% TiO2-incorporated PVA-TiO2 nanocomposites. The TGA and DTA studies of these nanocomposites revealed that their degradation behavior follows a four-step process. In comparison to those of pure PVA, these composites exhibit a sluggish decomposition rate, suggesting that the better thermal stability of these composites can be attributed to the better interaction among the -OH functional groups of PVA and TiO2 nanoparticles. These nanocomposites hold promise for various applications, including coatings, sensors, and optoelectronic devices. The combined effects of structural reinforcement and thermal stability make these materials attractive for engineering applications.

DOI: 10.61137/ijsret.vol.11.issue1.108

The Potential of Durian Husk, Durian Leaf-Litter and Banana Pseudo Stem as Bio-Leather
Authors:-Erika Grace Y. Sartagoda, Claire Joy Alicarte, Cyra Fathmah Cotin, Ruben Jr. Loren, Shecainah Lagaran, Cheerwina D. Puyales

Abstract-This study aimed to investigate the potential of durian husk, durian leaf litter, and banana pseudo stem as bio-leather. The bio leather was made from durian husk, durian leaf litter and banana pseudo stem. The bio leather made from these materials were tested in terms of its thickness, elongation and tensile strength. Also, as comparison the synthetic leather was tested according to its thickness, elongation and compression strength. The tests were performed at TERMS Concrete and Materials Testing Laboratory, Inc. Data were analyzed using mean and Mann Whitney U test. Results showed that, bio leather can be used to make light weight wallets since it only requires less thickness, low percentage of elongation and low tensile strength. For synthetic leather, can be used to make bags since the values of the indicators are high. The bio leather and synthetic leather do not significantly differ in terms of thickness, elongation and tensile strength; therefore, bio leather can be a good substitute for synthetic leather in making valuable items with high economic value.

DOI: 10.61137/ijsret.vol.11.issue1.109

The Reception Theory and the Value of Adaptation in Literature and Visual Arts
Authors:-Sarika Tyagi

Abstract-This article explores the intersection of reception theory and the value of adaptation in literature, visual arts, music, and theater. Reception theory, pioneered by Hans Robert Jauss, shifts the focus from the creator to the audience, emphasizing the evolving cultural and personal contexts that shape how stories are interpreted. Adaptations serve as transformative dialogues between the original work, its reimagining, and contemporary audiences, ensuring stories remain relevant across time and space. Examples such as Jean Rhys’s Wide Sargasso Sea, Alfred Hitchcock’s Rebecca, and Lin-Manuel Miranda’s Hamilton illustrate how adaptations reframe narratives to address new perspectives, cultural dynamics, and societal values. This article highlights how the reinterpretation of familiar tales enriches their meaning, engages diverse audiences, and underscores the timeless power of storytelling. By applying reception theory, the article demonstrates that the true value of adaptations lies in their ability to connect, challenge, and inspire audiences across generations.

DOI: 10.61137/ijsret.vol.11.issue1.110

Project Naiad: An Automated Smart Irrigation Revolution for Urban Home Gardens Using Arduino UNO R4 Wi-Fi
Authors:-Bernard Felipe B. Capalit, Client Teejay N. Jimenez, Anna Fatima P. Padao, Cairoden L. Usman Jr.

Abstract-This study aimed to develop a prototype of an automated smart plant watering system for urban home gardening, focusing on the reliability and functionality of its monitoring, notification, and water dispensing features. The system incorporated components such as the Arduino Uno R4 WiFi, DHT22 sensor, soil moisture and water level sensors, a raindrop sensor, and a submersible pump to address urban gardening challenges. The study evaluated the accuracy of the system’s sensors, the real- time data display, and SMS notifications, as well as the precision of water dispensing based on soil moisture levels. Results indicated high reliability, with most sensors achieving accuracy rates between 90% and 100%. The soil moisture sensor provided consistent readings, while the raindrop and water level sensors performed with near- perfect accuracy, enabling precise environmental monitoring. Notification features, including the LCD display and SMS alerts, were effective, with minimal delays in SMS reception. The water dispensing system demonstrated precision, adjusting water volume according to soil moisture levels, achieving an average water conservation effectiveness of 85% or higher. Additionally, a weak negative correlation between soil moisture and water dispensed highlighted the system’s responsiveness to environmental conditions. In conclusion, the prototype proved effective in monitoring and responding to soil conditions while minimizing water usage, making it a viable solution for urban home gardening. Future work could explore IoT-based enhancements for improved real-time monitoring, remote control, and data logging to further optimize system functionality.

DOI: 10.61137/ijsret.vol.11.issue1.111

Spammer Detection and Fake User Identification
Authors:-Assistant Professor Devi .S, Nived P J, Abhijith M, Boya Pavan Kumar, Spandau Gowda B C

Abstract-Social networking platforms attract millions of users globally. The interactions of these users with sites like Twitter and Facebook have a significant effect, often bringing about negative consequences in everyday life. Major social networking sites have become prime targets for spammers who disseminate vast amounts of irrelevant and harmful information. For instance, Twitter has emerged as one of the most extensively used platforms, leading to an overwhelming influx of spam. Fake accounts distribute unwanted tweets to promote services or websites, impacting genuine users and causing disruption in resource utilization. Additionally, the likelihood of spreading misinformation through counterfeit identities has grown, resulting in the circulation of harmful content. Lately, research has increasingly focused on detecting spammers and identifying fake accounts on Twitter within the realm of modern online social networks (OSNs). This paper examines various methods employed to identify spammers on Twitter.

Integrated Approach to Emotion Recognition Across Multiple Modalities
Authors:-Dr. Kavitha C, Jananisri K, Monisha B T, Prathibha G, Shanmitha P, Niranjani T

Abstract-Multimodal emotion recognition is essential for advancing human-computer interactions and enabling applications like mental health monitoring and social robotics. This study focuses on utilizing text, audio, and motion data from the IEMOCAP dataset to develop independent models that capture unique emotional cues from each modality. The audio model employs a hybrid architecture combining Convolutional Neural Networks (CNN), Multi-Head Attention, and Gated Recurrent Units (GRU), achieving an accuracy of 81%. The text model leverages a CNN-based approach inspired by Temporal Convolutional Networks (TCN), achieving 94% accuracy. For motion data, a Spatio-Temporal Graph Convolutional Network (ST-GCN) was implemented, achieving 63% accuracy. A score-level fusion strategy integrates these models, improving the overall recognition performance. Evaluations using metrics like accuracy, precision, and recall demonstrate how multimodal approaches can provide a more accurate and reliable emotion recognition system by combining complementary information from diverse data types.

DOI: 10.61137/ijsret.vol.11.issue1.112

Exploring How Globalization and Migration Have Impacted the Transformation of Religious Practices among the Youth in Singapore
Authors:-Margaret Pereira, Dr. Md Rosli Bin Ismail

Abstract-Youth expect religion to create meaning in life. These expectations play a significant role in practised religion and significant changes in the religious landscape. Participation in places of worship continues to decline. Organised religion might be facing a shifting landscape but this does not mean people are shunning religion. The interactions between religious institutions and an individuals’ perspectives of religion are investigated to reveal the transformation of religious practices in Singapore, from the lens of globalization and migration. Kierkegaard’s Theory of Existentialism is used along with non-probability purposive sampling with an objective to explore how globalisation has affected religious practices of Christian youth in Singapore and to investigate how migration has affected religious practices among Christian youth in Singapore. The key informants are six young Singaporean Christian adults between 25 and 30. Qualitative approach, semi-structured interviews, open-ended questions, in-depth interviews and thematic analysis is used.

DOI: 10.61137/ijsret.vol.11.issue1.113

Adaptive Reuse and Customization
Authors:-Harishanthana US

Abstract-Adaptive reuse is the best eco-friendly design strategy to repurpose existing building forms, stepping towards sustainability and a better environment. This type of revitalization is not restricted to buildings of historic significance but is also a smart strategy adopted in the case of archaic buildings. Customizing and reusing the existing built form not only saves money and profit but also a large amount of reduction in energy consumption and environmental impacts. Preservation, Rehabilitation, Restoration, and Reconstruction are major methods in bringing Adaptive reuse and Customization efficiently. Reusing the older vacant buildings for other purposes forms a very important outlook of any urban regeneration scheme and the adaptation process suggests opting for new technologies and design concepts that will support the older built to acclimate successfully to contemporary requirements without destroying the existing urban form. Adopting the adaptive reuse approach for the redevelopment of older vacant buildings provides added benefits to the regeneration of an urban area in a sustainable way, by transforming these buildings into usable and accessible units and providing a new sense of access to the public. While a large amount of historically built structures are being demolished and reconstructed. Adaptive reuse and customization could retain the built environment to the functions and needs and also maintain the historical facts and cultural factors.”

DOI: 10.61137/ijsret.vol.11.issue1.114

Fault Identification of Vibration-Based Condition Monitoring of Motor Using Minitab and Matlab: A Case Study on Francis Turbine
Authors:-Vishwas I, Bhagyaraj KS, Samiullah R, Ashok C, Professor Dr. Yadavalli Basavaraj, Professor Dr. V. Venkata Ramana, Assistant Professor Dr. Pavan Kumar.B. K

Abstract-This paper discusses the identification of faults in a Francis turbine using vibration-based condition monitoring with Minitab and MATLAB. The vibration signals are analyzed to detect faults in the motor components of the turbine. Statistical analysis uses Minitab to identify trends, while MATLAB carries out advanced signal processing, including Fast Fourier Transform (FFT) and wavelet analysis, to extract fault features. The combined approach effectively diagnoses issues like misalignment and bearing defects, showing its value in predictive maintenance for improved turbine performance.

DOI: 10.61137/ijsret.vol.11.issue1.115

Innovative Seed Sowing Machine for Improved Agricultural Productivity and Efficiency
Authors:-Mudgal Dipak Dinesh, V.D Dhanke

Abstract-This research focuses on the design and development of an innovative seed sowing machine aimed at improving agricultural productivity through precision and efficiency. Traditional sowing methods, which are either manual or use basic machinery, face challenges like inconsistent seed spacing, high labor requirements, and frequent blockages in seed dispensing tubes. These issues lead to reduced crop yields, increased operational costs, and significant seed wastage.The proposed seed sowing machine addresses these limitations by integrating automated seed dispensing, consistent depth control, and a blockage detection system using sensors. This machine is designed to place seeds uniformly at a specific depth and spacing, enhancing germination rates and ensuring even crop growth. Testing results demonstrate improved accuracy in seed placement and reduced downtime, showing a potential to save up to 40% of labor compared to traditional methods.Overall, this seed sowing machine offers a cost-effective and efficient solution for small to medium-scale farmers, enabling more sustainable and productive farming. This research lays the groundwork for future advancements in automated agricultural machinery, contributing to the broader goal of technological innovation in agriculture.

DOI: 10.61137/ijsret.vol.11.issue1.116

Flow Investigation over Oblique Wing Configuration
Authors:-Professor Dr. Prasanta Kumar Mohanta, Mysa Koushik, Borlakunta Praneeth, Y. Shanmukha Shambhavi

Abstract-This paper discusses the aerodynamic performance of oblique wing configuration in transonic and supersonic flight regimes. By using CFD tools within the ANSYS, the research has explored the function of oblique wing towards wave drag reduction and efficiency enhancement. Pivot angle variations of 0°, 30°, 45°, and 60° were used in asymmetrically designed wing and analysed at Mach 0.9 and 1.2. Some critical parameters include CL, CD, and pressure distribution, through which the design attains optimum operating characteristics. Some results reveal wave drag at specific pivot angles with the oblique wing. As the wave drags show least values for specific pivot angles (30°: Mach 0.9; 45°: Mach 1.2), these result in great applicability in improved aerodynamic efficiency and adaptability in varied conditions of flight towards the further developments of high-speed aircraft technology.

DOI: 10.61137/ijsret.vol.11.issue1.118

Performance and features of Amazon S3
Authors:-Fawaz Ali Syed, Mugdha Dharmadhikari

Abstract-This research paper investigates the multifaceted landscape of Amazon Simple Storage Service (Amazon S3), a pivotal component of cloud infrastructure provided by Amazon Web Services (AWS). By synthesizing findings from academic papers, industry reports, and case studies, it explores the fundamental features, security considerations, best practices, and real-world applications of Amazon S3. The analysis underscores the imperative of configuring S3 buckets meticulously to mitigate security risks, citing numerous instances of misconfigurations leading to data breaches. Through an in-depth examination of security best practices advocated by experts, including access control policies (ACPs), encryption mechanisms, and monitoring protocols. Additionally, it evaluates the scalability, reliability, and versatility of Amazon S3, positioning it as an indispensable asset for enterprises across various sectors. By leveraging insights from diverse sources, this research paper offers a comprehensive understanding of Amazon S3’s capabilities and advantages, providing actionable recommendations for optimizing its usage while safeguarding data integrity and confidentiality.

DOI: 10.61137/ijsret.vol.11.issue1.119

A Promising Breakthrough for Prostate Cancer Screening
Authors:-Jalene Jacob

Abstract-Prostate cancer is a major cause of morbidity and mortality among men worldwide. While traditional screening methods, such as Prostate Specific Antigen (PSA) testing and Digital Rectal Examiniations (DRE), have facilitated early detection, they face limitations, including false results and difficulty distinguishing aggressive from non-aggressive cancers. Recent advancements in urine-based testing offer a non-invasive, accurate alternative that improves diagnostic precision and reduces unnecessary biopsies. These tests analyze genetic and RNA biomarkers, providing personalized risk scores to guide biopsy decisions without requiring a DRE. They also address cultural barriers to screening and promote higher participation rates, particularly in underserved populations. Urine-based tests have the potential to optimize healthcare resources, reduce costs, and improve public health outcomes through early detection and intervention. However, equitable access, patient education, and data privacy protections remain critical considerations. As these tests become more widely available, they may transform prostate cancer screening and care.

From Irrelevant Utilisation to Excessive Dependence
Authors:-U. Sandhya Rani, S. Hemalatha, S. Mercy, T. Sushma Raj, Paila Bhanujirao

Abstract-The information relates to the use of substances that are harmful to one’s social, physical, mental, and emotional well-being, such as alcohol, opioids, tobacco, and some addictive medications like baclofen. This will have a complete impact on health. If used recreationally and developed into a habit of reliance. Substance misuse should be managed in its early stages since it cannot be stopped once it has developed into a habit. It can be challenging to stop using drugs if one has become habituated to doing so, and occasionally it can result in potentially fatal situations. When prescribed, some medications, such as opioids and non-opioid medications should be taken. However, longer periods of time should not be spent consuming them. And shouldn’t be stopped abruptly. Tapering the doses will help to progressively discontinue the consumption. In the event that consumption is abruptly stopped, coma or death may result. Substance abuse may influence vital organs over time, changing typical vital values over time. Because of reliance, each organ in the body will sustain harm through a variety of means.

DOI: 10.61137/ijsret.vol.11.issue1.120

Why a Flexible Workplace is Essential in a Modern Organization
Authors:-Anushka Gaikwad, Vaani Sharma, Anmol Rai

Abstract-The evolving dynamics of modern workplaces underscore the growing importance of flexible work arrangements in addressing the diverse needs of today’s workforce. This research delves into the necessity and impact of flexible workplaces, aiming to understand their prevalence, motivational drivers, and implications across various demographics, including students, professionals, and part-time employees. The study adopts a multi-faceted approach to examine patterns of flexibility, encompassing remote work, hybrid models, and flexible working hours, while evaluating their role in enhancing productivity and promoting a better work-life balance. A key focus is placed on identifying the motivational factors that lead individuals to prefer flexible arrangements, such as improved productivity, reduced commuting time, educational commitments, and family responsibilities. The study also assesses the challenges encountered, including time management difficulties, communication barriers, technical issues, and social isolation. By exploring these dimensions, it seeks to illuminate how flexible work environments can both empower individuals and pose unique obstacles that require organizational attention. In addition to individual experiences, the research evaluates organizational support systems and infrastructure, such as the provision of digital tools, internet allowances, structured guidelines, mental health initiatives, and workspace accommodations. These mechanisms are analyzed to understand their effectiveness in creating a conducive environment for flexible working. The study further examines how flexible work arrangements influence productivity across different contexts and demographic groups, offering valuable insights into their broader organizational and societal implications. The findings provide actionable recommendations for organizations aiming to implement or improve flexible work policies. These include fostering a culture of inclusivity, investing in digital infrastructure, offering targeted training programs, and creating clear guidelines to support employees effectively. Ultimately, the research highlights the transformative potential of flexible work arrangements in building resilient, adaptive, and employee-centric organizations capable of thriving in a rapidly changing work environment.

DOI: 10.61137/ijsret.vol.11.issue1.121

Telugu Voice Based Farmer Friendly Equipment Booking System
Authors:-Assistant Professor Durgunala Ranjith, Muskaan Thabassum, Kanraj Dhanush, B Bharath Kumar

Abstract-Agricultural equipment booking can be a challenging task for rural farmers due to language barriers and the complexity of existing digital platforms. This study is based on the concept of equipment rental. The E-commerce website has been improved as part of this project to bridge the gap between the farmer and the vendor on a lease basis. Only the user has access to the main programme after going through the login procedure; only the user may pick and book resources. This paper is jam-packed with information about the products. Farmers will benefit from this paper. The main goal of this website is to manage a variety of agricultural machinery, including Harvester, JCB, Tractor, Pickup, Rotor, and other agricultural machinery. End users will find the proposed system simple to use. As a result, we created a single website. We are attempting to provide the farmer or user with a solution that allows them to rent the goods by the hour.

DOI: 10.61137/ijsret.vol.11.issue1.122

Quantum Computing and its Effect on Sustainability
Authors:-Ravi Teja G, Associate Professor Dr. S. R. Raja

Abstract-Quantum computing is a new technology capable of solving problems that traditional/normal computers cannot handle. It is based on principles like superposition, entanglement, and interference to process information in ways that are not possible in classical computing. Unlike traditional computers that rely on bits as units of information, quantum computers use qubits, which can exist in multiple states simultaneously. This unique ability of qubits enables the quantum machines to perform computations at speeds that cannot be attainable by classical/normal systems. This new technology has the potential to transform all industries by addressing challenges in optimization, simulation, and data processing. For instance, quantum algorithms can simulate complex molecular interactions, leading to faster drug discovery in the pharmaceutical industry. Similarly, in logistics, quantum computers can optimize supply chains and reduce energy consumption, supporting more sustainable practices. Despite its promise, quantum computing also faces hurdles such as high costs, limited accessibility, and the need for stable operating environments.

The Role of Trolling in Mental Health and Creativity of Online Content Creators
Authors:-Tanisha Das, Assistant Professor Ms. Megha D. Prasad

Abstract-Trolling, defined as repeated and intentional online harassment, has become a significant issue for online content creators, affecting their mental health and creativity. This study aims to explore the role of trolling on psychological well-being and creative processes of content creators, addressing the gap in existing literature. Utilizing a qualitative exploratory design, semi-structured interviews were conducted with online content creators aged 18-45 who have experienced trolling. Participants were recruited through social media platforms using purposive and snowball sampling techniques. Data were analyzed thematically to identify patterns related to coping strategies, emotional impact, influence on content, long-term effects, and the role of platform support. The findings revealed that trolling contributes to heightened anxiety, self- censorship, and decreased motivation to produce creative content. Creators also reported dissatisfaction with the current support systems on social media platforms, highlighting a need for better moderation policies. This research underscores the importance of developing more effective support systems and mental health resources for content creators, along with stronger platform policies to combat trolling. The study contributes to a deeper understanding of the dual impact of trolling on mental health and creativity, paving the way for further research on supportive interventions in digital spaces.

Optimizing AI-Driven Decision Support Systems: Balancing Efficiency, Accuracy, and Ethical Considerations
Authors:-Yoga Srinivas B, Dr S R Raja

Abstract-Optimizing AI-driven decision support systems necessitates a careful balance between efficiency, accuracy, and ethical considerations. Efficiency involves ensuring that the system processes data swiftly and provides timely insights. Accuracy emphasizes the need for reliable and precise outputs to inform decision-making. Ethical considerations are paramount, addressing potential biases in data and algorithms to ensure fair and just outcomes. Transparency in the decision-making process fosters trust and accountability. By integrating these factors, AI-driven decision support systems can enhance decision-making processes while upholding ethical standards and maintaining user trust.

DOI: 10.61137/ijsret.vol.11.issue1.123

Green Revolution in Vector Management
Authors:-Stelson F. Quadros

Abstract-The primary vectors for the spread of diseases of concern like malaria, dengue, are mosquito species, particularly Aedes and Culex. There has been an exponential use and increased reliance by smaller groups, not specific to municipal and govt health bodies, but by housing societies and private pest control companies who rely on the acceptability of Thermal Fogging, as one of the key control or management factors of mosquito in urban setup. The professional pest control agencies are forced to adopt the use of Thermal Fogging even if there are ULV based options as there is fairly low awareness and poor visible changes at municipal level where adoption of ULV is not seen for more immediate adoption at social self help groups and with housing societies or with professional pest management companies. The urgent need to induct for a more less pollutant carrier, like BIODIESEL in thermal fogging and use of Plant Extract based Larvicides in water sources having significantly low toxicity will help build a more sustainable and low toxic mosquito management program, helping the human society at large to be truly living healthy through the means of Integrated Mosquito Management. In stark contrast where the use of polluting carriers like diesel leaves more lasting environmental damage affecting many more lives, than saving a few.

DOI: 10.61137/ijsret.vol.11.issue1.124

Implementing a Gamified Learning System for Enhancing Student Engagement and Motivation Using Reward-Based Mechanisms and Machine Learning
Authors:-Anand Sharma, Kunal Borage, Sujal Trivedi, Nikhil Neware, Professor Radhika Adki

Abstract-Student engagement would be one of the core elements that improve educational outcomes in the classroom. A gamification framework with machine learning would increase participation and personalize the experience of learning. The framework, through mechanics such as points, badges, leader boards, and challenges, encourages the participants to engage in the learning experience and enjoy it. However, machine learning facilitates adaptive learning by adapting the content based on the individual’s performance metrics. Student sentiment analysis helps to identify which students are in need of support, and predictive analytics would be used for identifying the students that may require more support. Real-time analytics allows teachers to keep track of student progression as well as classroom trends in real time. The system was designed to improve engagement and increase efficiency in the learning process. It considers the fact that competition can get unhealthy at times as well.

DOI: 10.61137/ijsret.vol.11.issue1.125

EMO Diary: Daily Diary with Sentiment Analysis
Authors:-Dr.Kavitha Soppari, Sk Hussain, Gvn Surya, M Pulla Rao

Abstract-The “Daily Diary Writer with Sentiment Analysis” project is a full-stack web application focused on enhancing personal well-being through sentiment analysis. Users can write daily diaries journals, and the system uses natural language processing to analyze the emotions expressed in their entries. This helps users reflect on their emotional patterns over time. Voice input allows for hands-free journaling, making the process more convenient and accessible. The project promotes self-reflection and emotional well-being through detailed sentiment insights.

DOI: 10.61137/ijsret.vol.11.issue1.126

Automation Bot for Data Extraction and Processing
Authors:-Assistant Professor Ms. Shristy Goswami, Aditya Singh, Anant Shukla, Anurag, Divanshu

Abstract-This paper presents the development and implementation of an automation bot designed for efficient data extraction and processing tasks. The bot automates the process of accessing a website, downloading an input Excel file, and extracting account numbers from the file. It then compares the last four digits of each account number with the digits in the names of zip files available on the website. Upon finding a match, the bot downloads the corresponding zip file, extracts its contents, and processes the required data from the unzipped text file, subsequently loading this data into the specific account number’s field. This automation bot significantly enhances data handling efficiency, reduces manual errors, and streamlines the data management process.

DOI: 10.61137/ijsret.vol.11.issue1.127

Thermal Insulating and Sound-Insulating Fiberboards Using Durian (Durio Zibethinus Murray) and Cogon Grass (Imperata Cylindrica)
Authors:-Denaga, Allona Devy P., Mamac, Leah O., Suguitan, Janine S., Sherwin S. Fortugaliza

Abstract-Global warming is impacting our communities, health, and wildlife, while noise pollution negatively affects both physical and mental well-being. This study examined durian husk and cogon grass fibers as sustainable materials for fiberboard production, focusing on their moisture resistance, thermal insulation, and soundproofing properties. These natural fibers outperformed traditional fiberboards. In sound absorption tests, durian fibers achieved 64.017 Hz, cogon fibers measured 67.600 Hz, and combined fibers recorded 62.617 Hz, compared to 83.033 Hz for the control group. Regarding thermal performance, durian fiberboards exhibited temperatures of 36.25°C and 36.95°C, while cogon fiberboards measured 37.90°C and 39.00°C. The commercial insulator consistently registered temperatures of 45.05°C and 46.05°C. Both durian and cogon fiberboards demonstrated 0% water absorption after 24 hours, in stark contrast to traditional fiberboard, which absorbed 200% more. This research underscores the potential of durian husk and cogon grass fibers as superior, eco-friendly alternatives for construction, effectively addressing noise and heat challenges in tropical regions.

Wireless Charging Platform for Drones Using WPT Technology
Authors:-Assistant Professor Ms. G. V. Swathi, S. Ronak Jain, S. Pushpa, K. Naga Sai

Abstract-Drones are becoming indispensable tools in various critical sectors of India, such as agriculture, disaster management, land surveys, mining, and infrastructure mapping. Their ability to access remote, hazardous, or hard-to-reach areas makes them invaluable for tasks, such as crop monitoring, search and rescue, and real-time data collection. However, the effectiveness of drones in these mission-critical applications is often limited by their battery life and the need for frequent recharging, particularly in environments where human access is difficult or impossible. This project addresses this challenge by developing a wireless power transfer (WPT) system for drone charging. The system converted a standard 230V supply into a low-voltage DC output, which was then wirelessly transferred via a high-frequency (100kHz) inverter and coil setup. This WPT system is particularly suited for use in remote or inaccessible locations, where minimizing downtime is critical.

DOI: 10.61137/ijsret.vol.11.issue1.128

Advancing Human-Centered Artificial Intelligence: Enhancing Explainability Real-World Applications
Authors:-Sriram R, Dr S R Raja

Abstract-Human-centered artificial intelligence (HCAI) emphasizes designing AI systems that prioritize human values, ethics, and usability, fostering trust and responsible adoption. This research explores the advancement of HCAI by addressing key challenges such as improving explainability, integrating ethical considerations, and optimizing real-world applications across diverse sectors. By investigating state-of- the-art methods for interpretable machine learning, the study aims to enhance user understanding and transparency in AI decision-making. It further examines frameworks for embedding ethical principles, including fairness, accountability, and privacy, into AI system design. Additionally, the research evaluates case studies from healthcare, education, and autonomous systems to illustrate the transformative potential of HCAI. This study underscores the need for interdisciplinary collaboration and innovation to ensure AI technologies align with human values and societal goals, paving the way for more inclusive and sustainable AI solutions.

DOI: 10.61137/ijsret.vol.11.issue1.129

Crop Disease Detection System
Authors:-Rupesh Gaikwad, Sarvesh Dharme, Vedant Zawar, Nachiket Kulkarni, Professor Prachi Tamhan

Abstract-One of the important and tedious tasks in agricultural practices is the detection of disease on crops. It requires time as well as skilled labor. This paper proposes a smart and efficient technique for the detection of crop disease which uses computer vision and machine learning techniques. Every year India loses a significant amount of annual crop yield due to unidentified plant diseases. The traditional method of disease detection is manual examination by either farmers or experts, which may be time-consuming and inaccurate. It is proving infeasible for many small and medium-sized farms around the world. To mitigate this issue, a computer-aided disease recognition model is proposed. It uses leaf image classification with the help of deep convolutional networks. In this paper, CNN was proposed to detect plant disease. It has three processing steps namely feature extraction, downsizing image, and classification. In CNN, the convolutional layer extracts the feature from the plant image. It helps to give personalized recommendations to farmers based on soil features, temperature, and humidity.

DOI: 10.61137/ijsret.vol.11.issue1.130

Design and Implementation of a Cost-Effective, Low-Latency IoT-Enabled Dental Chair: A Global Remote-Control Solution for Enhancing Clinical Efficiency and Pre-Operative Preparations
Authors:-Hiren Uthaiah M S, Khyati Priyesh, Manjunath K V, Samichi S Mathad, Siddhart Dhargi, Suhas S Rao

Abstract-This research introduces two innovative methods to convert a standard 16-control dental chair into an IoT-enabled dental chair at a minimal cost of under 2,000 INR. The first method involves directly interfacing the chair’s control wires with a 16-channel relay and an ESP32 microcontroller, enabling remote operation through the Blynk IoT platform. The second method leverages signal analysis by identifying the dental chair PCB’s communication lines, capturing control signals with a logic analyzer, and replicating them via the ESP32 for seamless functionality. Both approaches offer global control with minimal delay (<10ms) and enhance operational efficiency by enabling preemptive actions, such as heating water or cleaning the spit bowl remotely. This study provides a scalable, low-cost solution for modernizing dental chairs, ensuring ease of use and adaptability for dental clinics worldwide.

DOI: 10.61137/ijsret.vol.11.issue1.131

Facial Expression Detection Using Machine Learning Techniques
Authors:-Associate Professor Dr Sudhamani, Assistant Professor Kavya S N, Galal Ahmed Ghaleb Abdo Almaghrebi M, Mohammad Reza Sharifi, Research Scholar Jagadeesh M

Abstract-Facial expression detection has emerged as a transformative technology with applications in numerous fields such as healthcare, security, and entertainment. The proposed system aims to enhance user engagement by dynamically tailoring playlists based on the user’s emotional state. The proposed Emotion Recognition provides a foundation for further exploration and development of intelligent systems that adapt to users’ emotional states, fostering more immersive and personalized interactions in the realm of digital entertainment.

DOI: 10.61137/ijsret.vol.11.issue1.132

Understanding A.I.
Authors:-Kajal Nanda

Abstract-This paper aims to provide an in-depth understanding of A.I., its historical development, and its transformative influence on modern civilisation. We will discuss significant concepts, evolving technologies under influence, technological advancements, and ethical and unethical A.I..

DOI: 10.61137/ijsret.vol.11.issue1.133

Latest Trends and Techniques Developed in Mechanical Engineering
Authors:-Nimgaonkar S.S., Gadade R.A., Gaikwad Niti N Bhagwat, Tambe Laxman Tukaram

Abstract-Mechanical engineers dream up and design amazing machines and technologies that improve people’s lives in all kinds of ways. From airplanes and cars to robots and renewable energy systems, mechanical engineers have shaped our modern world. New technologies are opening up incredible opportunities for innovation. Read on to learn about the exciting changes & future trends in mechanical engineering and how you can prepare for it!

DOI: 10.61137/ijsret.vol.11.issue1.134

Detecting Unauthenticated Access Using Honeypot Sentinel
Authors:-Varshini J, Asvica J, Bharathi A K, Deepika P, Dharshana S, Yazhini K

Abstract-Unauthorized access remains a critical threat to network security, as attackers can exploit vulnerable systems to obtain sensitive data or disrupt services. This paper introduces Honeypot Sentinel, a proactive intrusion detection tool designed to flag unauthorized access attempts by monitoring and verifying usernames and IP addresses. Honeypot Sentinel uses a MongoDB database for logging, enabling the system to record details of unauthorized access attempts efficiently. Upon detecting any access attempts outside the predetermined criteria, Honeypot Sentinel triggers alerts, allowing system administrators to promptly address potential threats. This approach provides network security teams with real-time data, helping them respond effectively to unauthorized access incidents.

Exploring the Role of Microglia Activation in Alzheimer’s Disease and Parkinson’s Disease
Authors:-Tamaradoubrah Favour Melex, Akuroseokike G Babbo

Abstract-Microglia, the principal immune cells within the central nervous system (CNS), are essential for maintaining neuronal homeostasis. Nonetheless, the chronic activation of microglia has been associated with the development of neurodegenerative diseases, notably Alzheimer’s Disease (AD) and Parkinson’s Disease (PD). This review investigates the mechanisms underlying microglial activation, the dual functions of microglia in neuroprotection and neurotoxicity, and the implications for therapeutic strategies. By examining contemporary research, we aim to clarify the molecular pathways that link microglial activation to the progression of these diseases and identify potential approaches for modulating microglial responses to alleviate neurodegeneration.

Medicine Remiander Device Using ESP8266
Authors:-K. Likitha, M. Usha

Abstract-This journal discuss in detail on a suggested medication reminder device that will be made for senior citizens based on their problems. This study’s background is explained in the report, and its primary goal is to guarantee that the medication reminder device will be resolving issues that older people have. The problems that have been discovered are mostly focused at the elderly and are meant to address the problems that they encounter on a daily basis, particularly with regard to medication use. In order to design a better device, the study will also examine similar implemented devices and systems to determine the advantages and disadvantages of other pertinent devices and systems. This portable and economical system would be helpful to every age group also.

DOI: 10.61137/ijsret.vol.11.issue1.135

Assessment of Sustainable Building Material and the Benefits of Green-blue- grey Infrastructure for Feasible Urban Flood Risk Management
Authors:-Hambal Ahmad Khan

Abstract-The green infrastructure has some other benefits besides flood risk reduction. Those benefits mainly covers conservation of water, energy, and improvement in air quality and much more. The materials used are the essential components of the green infrastructure. The proper design accompanied by the material properties provides the accountability of the mechanical strength of the infrastructure. Hence, the eco-friendly materials are given more priority for green infrastructure. The price is considered primarily when either selected or r4elated material is compared for the similar purpose. Except the social and environmental costs, the cost of the building element conveys only the cost of transportation and manufacturing. Therefore, the sustainable development of the nation relies on the proper choice of the construction materials having least burden on the environment. Moreover, the result of mixture of blue, green and grey infrastructure is likely the best adaptation strategy as these comply with each other. The grey infrastructure reduces the flooding risk while the green infrastructure has its own multiple benefits which is not offered by the grey infrastructure. The paper focusses on the contribution of the sustainable building material in order to reduce the impact of environmental degradation which could help in identification of the strategies that are highly effective in improving the urban flood risk management.

Heart Attack Risk Assessment Using Deep Learning with Feature Optimization
Authors:-Ch. Rishitha, G. Poojitha, B. Sahith, Profeesor Shashank Tiwari

Abstract-Heart attacks remain a critical global health issue, necessitating accurate predictive models to identify at- risk individuals and support preventive care. This project, titled “Heart Attack Risk Assessment Using Deep Learning with Feature Optimization,” applies deep learning techniques to assess the likelihood of a heart attack. The study utilizes a Fully Connected Neural Network (FCNN) model enhanced by feature optimization methods, ensuring that the most relevant predictors are prioritized. Additionally, the project incorporates risk visualization, enabling clear and actionable insights for early detection and management of heart attack risks.

DOI: 10.61137/ijsret.vol.11.issue1.136

What Role Do Artificial Intelligence and Machine Learning Play in Enhancing Human Resource Decision-Making Processes by Method from 2015 to 2025 Using Bibliometric Method
Authors:-Muhammed Bah

Abstract-This research examines the impact of artificial intelligence (AI) and machine learning (ML) on improving human resource (HR) decision-making procedures, with an emphasis on the years from 2015 to 2025. Employing a bibliometric approach, the study uncovers trends, obstacles, and prospects related to artificial intelligence and machine learning usage in human resource management. The results depicted in Figure 1 (“Document by Year”) indicate a marked rise in research activity after 2020, emphasizing an increasing interest in the incorporation of AI and ML in HR practices. Figure 2 (“Document by Area”) illustrates that computer science (45%) and business studies (30%) lead in research contributions, highlighting the technical and strategic aspects of these technologies. The geographic analysis shown in Figure 5 (“Document by Country”) reveals that 40% of the studies come from the United States, while European and Asian nations account for 30% and 20%, respectively. Institutional contributions, shown in Figure 7 (“Document by Affiliation”), indicate that 60% of research originates from academic institutions, while corporate research centers account for 25%. Figures 3 and 4 underscore the variety of sources and funding, showing a balance between academic integrity and practical uses, with government funding representing 50%. The research highlights the revolutionary impact of Artificial intelligence and Machine learning in human resource management, especially concerning talent acquisition, employee engagement, and workforce management. Nevertheless, ethical issues, biases in algorithms, and privacy threats present significant challenges. By combining technological advancements with ethical guidance, as illustrated by the trends shown in the figures, organizations can develop adaptable, inclusive, and effective HR systems that meet the changing needs of the workforce.

DOI: 10.61137/ijsret.vol.11.issue1.137

Development of Robotic Arm Using Arduino
Authors:-Lingam Lakshmi Vagdevi, Edupuganti Harshitha

Abstract-Innovation in robotic arm control has been sparked by the development of Arduino-based technology, which provides both experts and enthusiasts with an affordable and user-friendly platform. The creation of robot arm control with an Arduino controller is presented in this work. The project entails integrating sensors and Arduino microcontrollers to provide dynamic and accurate control over a robotic arm. Four servo motors—which rotate left, right, front, and back—control the suggested robot. The study lays the groundwork for future developments in this emerging topic by discussing the difficulties faced during the development process and offering solutions. The demonstrated robotic arm control system has the potential to increase access to robotics education and promote automation innovation due to Arduino’s broad availability and low cost.

DOI: 10.61137/ijsret.vol.11.issue1.138

Object Detection Using Ultra Sonic Sensor
Authors:-Assistant Professor. D .Veeraswamy, Yagnasri Madhav, Lakkakula Lohith, Balla Kanth Naga Ayyappa

Abstract-Ultrasound is simply sound whose frequencies are too high to be heard by the mortal observance, that’s to say the frequencies are above c 20 kHz. At the top end of the scale, ultrasound is used at frequentness up to several GHz. The main end of this system is to descry object that will be ahead of ultrasonic transducer. Utmost ultrasonic detectors are grounded on the principle of measuring the propagation time of sound between send and admit (propinquity switch). The hedge principle determines the distance from the detector to the glass (retro-reflective detector) or to an object (through- ray detector) in the measuring range. Ultrasonic detectors are grounded on the measured propagation time of the ultrasonic signal. They emit high- frequency sound swells which reflect on an object. The objects to be detected may be solid, liquid, grainy or in greasepaint form. It sends an ultrasonic palpitation out at 40 kHz which travels through the air and if there is a handicap or object, it will bounce back to the detector. By calculating the trip time and the speed of sound, the distance can be calculated. Ultrasonic detectors are a great result for the discovery of clear objects.

DOI: 10.61137/ijsret.vol.11.issue1.139

Strategizing Digital Transformation with LangGen Cloud Computing
Authors:-Nikhil A Rawool, Dr. Tatiana Walsh, Professor John Lewis

Abstract-Cloud Computing with field of emergence with frameworks with intelligent platform based on cloud which is designed with “reliability , availability “ with key deliverables with a specific and specialized platforms which are designed on methods for computing technology and service streamlined with pattern – self based analysis for Multimedia Management with Enterprise on Digital Platforms for reviewing Data Agents for digital Background for computing level of architecture format with a self-developing ecosystem for pattern recognition and texture delivering format.

DOI: 10.61137/ijsret.vol.11.issue1.140

Data Transmission Using Li-Fi Technique
Authors:-A.Jeevan, P.N.Koushik, K.Murali

Abstract-Light fidelity (Li-Fi) technology is a wireless communication system that utilizes visible light spectrum to transmit data with high speed and secure manner compared to the traditional Wireless Fidelity (Wi-Fi) architecture. In this paper a smartphone is used in Li-Fi communication system. The aim of this proposed approach is to maximize the bit rate with high accuracy by using the flashlight of built-in smartphone camera as a source to send data and detect the effect of using a built-in smartphone ambient light sensor and external light detector sensors that is connected to Arduino UNO circuit to receive data. Four practical experiments were conducted to discover which light sensor accomplish higher data bit rate and tested the system performance under changing the distance between transmitter and receiver. The evaluation results demonstrated that the data bit rate is better with the proposed research than the others, where it reached more than 100 bps with accuracy 100%.

DOI: 10.61137/ijsret.vol.11.issue1.141

Cotton Detector and Collector Robot
Authors:-Professor Meenakshi Annamalai, Ashwini Rode, Archana Sonawane, Parigha Patil

Abstract-Robots that harvest cotton have become a viable way to alleviate labor shortages and boost production efficiency. In order to detect, navigate, and gather cotton bolls in the field, these robots use cutting-edge technologies. Cotton boll detection relies heavily on deep learning and machine vision methods. An innovative weed identification model that distinguished weeds from cotton seedlings with a map of 98.43% was developed using the CBAM module, the BiFPN structure, and the bilinear interpolation technique (Fan et al., 2023). The chromatic aberration approach showed great sensitivity and specificity with a 91.05% identification rate for cotton boll detection in natural lighting (Singh et al., 2021). GNSS and optical detection techniques are combined in cotton harvesting robot navigation systems. While boll position estimation demonstrated great precision with an R2 value of 99% when stationary and 95% when moving, a pixel-based method for cotton row detection obtained 92.3% accuracy (Fue, Li, et al., 2020). These developments in navigation and identification aid in the creation of accurate and productive cotton harvesting robots. In conclusion, there is a lot of promise for automating cotton harvesting through the combination of sophisticated detection algorithms, navigation systems, and robotic manipulation techniques. But there are also issues with adapting these technologies to different crop kinds and field conditions, which calls for more study and advancement in this subject.

Beta Blocker Management Post MI: Navigating Continuation and Interruption Strategies
Authors:-Bhupathi Sravani, Sirasani Tapaswi

Abstract-This study examines the effects of interrupting versus continuing beta-blocker therapy in post-myocardial infarction patients. The ABYSS trial, a multicenter noninferiority study, found that interrupting beta-blocker therapy did not offer any advantages over continuation in reducing major cardiovascular events or improving quality of life. The interruption group experienced a slight increase in hospitalizations for coronary-related conditions. These findings challenge existing guidelines recommending beta-blocker discontinuation after one year for certain patients. The trial highlights the necessity for additional research to clarify the role of beta-blockers in modern post-MI care, especially for patients with preserved left ventricular function.

DOI: 10.61137/ijsret.vol.11.issue1.142

School Management Committees’ Roles and Academic Performance of Pupils in Selected Government-Aided Primary Schools In Bulambuli Town Council, Bulambuli District
Authors:-Nambuya Mary, Dr. Ssendagi Muhamad, Wolukawu Ambrose

Abstract-This study investigated School Management Committee roles and the academic performance of pupils in selected government aided primary schools in Bulambuli Town Council, Bulambuli District. The study sought to; examine the relationship between the supervisory role of School Management Committees (SMCs) and academic Performance of pupils; examine the relationship between the supervisory role of School Management Committees (SMCs) and academic Performance of pupils; and examine the effect of the consultative role of School Management Committees (SMCs) on academic Performance of pupils. The study adopted a cross-sectional research design. Both simple random sampling and purposive sampling techniques were used to select the sample of respondents. The researcher studied a sample of 82 participants who included teachers, SMC members from selected government-aided primary schools, officials from DEO’s office and CCTs of selected schools in Bulambuli TC. Questionnaires and key informant interviews were used for data collection. Quantitative data from questionnaire was analyzed for both descriptive and inferential statistics using SPSS and Excel while qualitative data was analyzed thematically. The findings of this study were that; SMCs have significant influence on academic performance of pupils. The Pearson correlation coefficient shows that there is a significant positive relationship between the administrative role of SMCs and academic performance of pupils, r = 0.729, p = 0.000; supervisory role of SMCs influences the academic performance of pupils, r = 0.689, p = 0.000; and consultative role of SMCs has a significant positive relationship with academic performance of pupils, r = 0.648, p = 0.000. From the findings of this study, the researcher recommended that the SMCs should work with school administration to provide support such as academic intervention programs to struggling pupils so as to improve the academic performance of pupils; tighten regular monitoring and assessment of pupils’ progress to identify areas of improvement; and work closely with parents and other stake holders to support pupils’ learning. By involving the broader school community in academic initiatives, school will create a network of support that might help pupils thrive academically.

DOI: 10.61137/ijsret.vol.11.issue1.143

Simulation of Harmonics in Electric Locomotive Power Supply Device
Authors:-Assistant Professor Mr.J.Munichandra Sekhar, R .Prasad, P.Ganesh, K.Vijay Kumar, A. Tharun

Abstract-An electric locomotive power supply device is responsible for providing electrical power to the traction motors that drive the locomotive. These systems often use alternating current (AC) or direct current (DC) to power the motors, and they can operate using either overhead catenary systems or third-rail power supplies. Simulation of a locomotive power supply device involves analyzing its electrical and mechanical performance, power quality and efficiency. The power electric device which works under condition of high power and heavy load, suffer from faults frequently. The main circuit of the device is a kind of single-phase full bridge half controlled rectifier circuit. Harmonics are higher-frequency components that distort the waveform of current or voltage. In locomotive power supply systems, harmonics are typically introduced by non- linear loads, such as the power electronic devices (inverters, converters) used in these systems. Harmonics can cause several issues, including increased losses, power quality .

Blockchain Based Student Council Election Portal
Authors:-Professor Kusumlata Pawar, Asmi Santosh Wayare, Pooja Krishnakant Chavan

Abstract-The focus of this project is to make a secure and transparent voting system at college level. Even though paper based voting was a traditional approach and is being used for centuries, but still as we are facing the challenges during the overall voting process which includes, security risk, lack of transparency, human errors and privacy concerns. So, to overcome this limitations and vulnerabilities we came up with the idea of a blockchain based voting system. It is in high demand due to the immutability, transparency and decentralized solutions. The objective of this paper is to incorporate blockchain technology to construct a secure, tamper-proof elections at college level. It will also help developers to build and deploy smart contracts. The use of smart contracts guarantees the accuracy and provides fast voting result and makes counting procedures protected against fraudulent actions. This technology supports peer-to-peer decentralized network in which all the transactions are stored in blocks. To sum up, the proposed system will shorter the time for voting process while offering security and authentication and it also dwindles the expenses as there is no need to print ballots.

HSS and HCS Cutting Tool Material Influencing Surface Roughness in Machining of GFRP
Authors:-Dr. K N Lingaraju, Dhanushree M R, Prashanth Kumar N, Prashanth N, Vinayak Basavaraj Ganiger

Abstract-This work is concerned with the machining of Glass Fiber Reinforced Plastics (GFRP), with a primary interest in how surface roughness is affected by cutting tool materials. GFRP has found a niche in aerospace, automotive, and marine applications, and has obtained recognition for its ratio of strength to weight, resistance to corrosion, and thermal stability. Because of the peculiar structure of E-glass fibers in epoxy resin matrix systems, specific problems concerning the use of this material arise, such as delamination, fiber pull out, and wear of tools, thus requiring tailored machining techniques. The experiment compared performance between cut rods using high-speed steel (HSS) and high-carbon steel (HCS) while machining a GFRP rod (30 mm diameter, 240 mm length) using a lathe. Surface roughness parameters are Ra, Rz, Rt, Rpk, all measured by a Talysurf device. The results showed that HSS tools led to smoother surfaces and greater accuracy but that HCS tools were more economically viable for less rigorous jobs. These results touch upon the need for tool selection based on application and give some insight into further pros in terms of coatings, monitoring systems, and further sustainable machining approaches.

DOI: 10.61137/ijsret.vol.11.issue1.144

Design and Simulation of Fuzzy Logic-Based Maximum Power Point Tracking for Solar Pv Arrays
Authors:-Mr.D.Ramesh, M. Bharath Kumar, Sunkara Gyan Harsh, Shaik Sadik

Abstract-This paper presents a Fuzzy Logic-based Maximum Power Point Tracking (MPPT) algorithm for Solar Photovoltaic (PV) systems to enhance energy efficiency. The proposed approach adapts to fluctuating solar irradiance and temperature by utilizing rule-based logic, eliminating the need for precise mathematical models. Unlike traditional methods, the fuzzy logic controller provides fast and accurate responses, minimizing power loss and improving performance. It continuously adjusts the duty cycle of a DC-DC converter to maintain operation at the peak power point. MATLAB/Simulink simulations show faster tracking, reduced oscillations, and higher energy harvest compared to Perturb and Observe (P&O) and Incremental Conductance (IncCond) methods. This robust solution maximizes PV output, advancing the feasibility of solar energy as a renewable source.

Simulation and Performance Analysis of Solar PV System Using MATLAB
Authors:-Dr. M. Prasad, Ch.Srinitha, S.Srujan, N.Deva Raj

Abstract-Photovoltaic power generation system implements an effective utilization of solar energy, but has very low conversion efficiency. The major problem in solar photovoltaic system is to maintain the DC output power from the panel as constant. Irradiation and temperature are the two factors, which will change the output power of the panel. A boost converter is utilized as a DC-DC converter.The simulation includes the modeling of a solar panel, and a power conversion unit such as a DC-AC inverter. Key parameters such as irradiance, temperature, and shading effects are considered in the analysis to assess their impact on the power output and overall system efficiency. The results highlight the dynamic behavior of the system under different operating conditions. The MATLAB/Simulink environment is utilized to evaluate the system’s performance, and a comparison is made between the theoretical and simulated values. It is obtained by using MATLAB Simulink Model.The aim is to effectively track the maximum power points considering the fluctuations in solar irradiation and temperature.

Efficacy and Safety of an Oral Nutritional Supplement in Treating Nutritional Deficiencies and Related Conditions: A Phase 3 Randomized Controlled Trial
Authors:-Reedhika Puliani, Deepika Sharma, Priyanka Shetty

Abstract-Nutritional deficiencies are common worldwide and can also lead to weak immunity, weak stamina, metabolism and decreased bone health. To address these challenges, relying solely on diet may be insufficient, as most individuals do not consume nutritionally balanced diets. Nutritional supplements can help in achieving optimal, balanced nutrition while preventing nutritional deficiencies. This multicentre, double-blind, randomized, parallel-group phase 3 clinical trial evaluated the efficacy and safety of a nutritional supplement from British Life Sciences, Pvt. Ltd, BSURE Sugar-Free (Dutch Chocolate Flavour) against a multivitamin powder (Zooversandhaus Jung, Germany) in patients with nutritional deficiencies, weak immunity, low stamina, compromised bone health, and weak metabolism. Over three months, 231 participants were recruited, with 200 completing the study. Results demonstrated that BSURE achieved 97% and 98% efficacy in improving weak immunity and stamina, respectively, and showed comparable safety and tolerability to the control product. These findings support the use of the product for nutritional support in adults.

Magma- Estate Agility
Authors:-Ritesh Kumar, Professor Bhumi Shah

Abstract-This is a presentation of the development of “Magma Estate Agility” web application. The application is designed with the use of HTML, CSS, and JavaScript for improving on estate management and aims at processes like property listing, tenant management, and sending in requests for maintenance. This paper describes the methodologies used, the technologies employed, and the results realized from the implementation of the project. From the findings, it shows that incorporating these technologies into the estate management process raises efficiency and user-friendliness in the processes.

Simulation of Harmonics in Electric Locomotive Power Supply Device
Authors:-Assistant Professor Mr.J.MunichandraSekhar, R .Prasad, P.Ganesh, K.Vijay Kumar, A. Tharun

Abstract-An electric locomotive power supply device is responsible for providing electrical power to the traction motors that drive the locomotive. These systems often use alternating current (AC) or direct current (DC) to power the motors, and they can operate using either overhead catenary systems or third-rail power supplies. Simulation of a locomotive power supply device involves analyzing its electrical and mechanical performance, power quality and efficiency. The power electric device which works under condition of high power and heavy load, suffer from faults frequently. The main circuit of the device is a kind of single-phase full bridge half controlled rectifier circuit. Harmonics are higher-frequency components that distort the waveform of current or voltage. In locomotive power supply systems, harmonics are typically introduced by non- linear loads, such as the power electronic devices (inverters, converters) used in these systems. Harmonics can cause several issues, including increased losses, power quality.

Simulation of Harmonics in Electric Locomotive Power Supply Device
Authors:-Assistant Professor Mr.J.MunichandraSekhar, R .Prasad, P.Ganesh, K.Vijay Kumar, A. Tharun

Abstract-An electric locomotive power supply device is responsible for providing electrical power to the traction motors that drive the locomotive. These systems often use alternating current (AC) or direct current (DC) to power the motors, and they can operate using either overhead catenary systems or third-rail power supplies. Simulation of a locomotive power supply device involves analyzing its electrical and mechanical performance, power quality and efficiency. The power electric device which works under condition of high power and heavy load, suffer from faults frequently. The main circuit of the device is a kind of single-phase full bridge half controlled rectifier circuit. Harmonics are higher-frequency components that distort the waveform of current or voltage. In locomotive power supply systems, harmonics are typically introduced by non- linear loads, such as the power electronic devices (inverters, converters) used in these systems. Harmonics can cause several issues, including increased losses, power quality.

MATLAB Implementation of Sine and Cosine Generator Using CORDIC Algorithm
Authors:-Assistant Professor Mr. Goutam Barma,K. Chakradhar,J. Appa Rao,S. Abhishek

Abstract-The CORDIC (Coordinate Rotation Digital Computer) algorithm is a versatile and efficient iterative method for computing a wide range of mathematical functions, including trigonometric, hyperbolic, exponential, logarithmic, and square root functions. Central to the CORDIC approach is its ability to perform vector rotations in a polar coordinate system, effectively transforming coordinates through a series of predefined angles. These methods eliminates the need for complex multiplications by utilizing simple shift and add operations, making it particularly well-suited for hardware implementations in resource-constrained environments, such as digital signal processors (DSPs) and field-programmable gate arrays (FPGAs).The algorithm operates in several modes, including rotation mode and vectoring mode, allowing it to adapt to various computational requirements. Each iteration reduces the angle by a fixed amount, using pre-computed arctangent values to guide the rotations. The convergence of the algorithm depends on the number of iterations, with higher iterations yielding greater accuracy. CORDIC’s unique architecture supports parallel processing, enabling simultaneous calculations of multiple functions, further enhancing its efficiency. Evaluation of trigonometric functions such as sine, cosine and tan has been obtained using MATLAB. This abstract encapsulates the fundamental principles, operational modes, computational advantages, and diverse applications of the CORDIC algorithm, underscoring its significance in modern digital computation and system design.

OpenCV- Based Intelligent Vehicle Surveillance and Time Stamping System
Authors:-Professor Dr.J.Preetha, Assisstant Professor Mr.R.Viswanathan, A Rasidha Begum, S Pooja, R Jona

Abstract-Automated traffic monitoring solutions have become necessary due to the difficulties of manual monitoring systems and the exponential growth in vehicular traffic. The new Advanced Vehicle Detection System described in this work uses sophisticated computer vision algorithms to identify, recognize, and log vehicle data in real time. Utilizing OpenCV, CNN (Convolutional Neural Network), YOLO (You Only Look Once), and OCR (Optical Character Recognition) technologies, the suggested system detects automobiles and records license plate information. In addition, the system gives law enforcement, traffic management, and institutional surveillance a reliable and scalable approach by automating the entry and exit timestamp logging process. Mostly we are developed for the college buses which has been include arrival and Departure time with an owner details and also the vehicle claim the insurance or not, These also updated the count of vehicle that are recognized by the entry and the exit time. Experimental results demonstrate the system’s high precision and efficiency, ensuring its practical applicability in real- world scenarios. This practical and efficient system is an excellent example of how technology can address real- world challenges in monitoring and managing vehicles.

DOI: 10.61137/ijsret.vol.11.issue1.145

PV Panel Drive 3-Phase Induction Motor Using Matlab Simulink
Authors:-Assistant Professor Mr.J.Munichandra Sekhar, K.Sudhakar, K.Pavan Kumar, K. Dheekshith

Abstract-This project presents a simulation-based study of a Photovoltaic (PV) panel driving a 3-phase induction motor using MATLAB Simulink. The model is developed to explore the feasibility of utilizing solar energy to power electric motors, which are essential in various industrial and agricultural applications. The PV panel generates DC power from sunlight, which is then converted into 3-phase AC power using a 3-phase inverter. The AC power is used to drive the induction motor, which converts electrical energy into mechanical energy to operate loads such as pumps and machinery. The MATLAB/Simulink environment is used to model and simulate the behavior of the entire system, including the PV panel, inverter, and induction motor. The simulation allows for real-time monitoring of key parameters such as power output, rotor speed, electromagnetic torque, and current in the motor’s stator and rotor. This enables performance optimization and ensures the system operates efficiently under varying irradiance and temperature conditions.

Impacts of Climate Change on the Himalayan Cryosphere: A Comprehensive Study of Snow Cover, Glacier Lakes, and Associated Geo-Hazards in Uttarakhand, India
Authors:-Samreen Azhar, Alishba, Anum Bibi, Meerab karamat, Maria, Hafiza Zoha Noor, Muhammad Arslan Aslam, Mazhar Ali, Talha, Dr Sumaira Abbas

Abstract-The Himalayas are referred to as the “Third Pole” and contain the largest concentration of glaciers outside of the Arctic and Antarctic. The glaciers are, therefore, an important source of water for these river systems including the Indus, Ganga, and Brahmaputra that support nearly 15% of India’s population. It has been observed during recent decades that the glaciers have retreated, and snow cover reduced significantly because of climate change, and this has resulted in the formation of lakes. In this study, the focus is on Uttarakhand in the Central Himalayas, assessing the relationship between climate change, snow cover, glacial lakes, and associated geo-hazards. There is a focus on key climate trends, snow cover dynamics, glacial lake expansion, and geo-hazards such as Glacier Lake Outburst Floods (GLOFs) using long-term satellite imagery, numerical models, and ground-based observations. The findings show that high-altitude areas are warming at 0.6 °C/decade, with declining rainfall trends, widespread reductions in the extent of snow cover, and deposition of potentially hazardous glacial lakes. Effective mitigation, long-term monitoring, and community-based approaches are necessary to minimize the risks to the environment and socio-economic sectors.

Unravelling the Dark Side: The Negative Impact of Social Media on Mental Health and Society
Authors:-Ishwarya B

Abstract-The Social media’s ubiquitous impact on contemporary life has unquestionably changed communication, connection, and information sharing, but underlying its glitzy exterior is a more sinister reality with significant ramifications for both societal well-being and personal mental well- being. This abstract examines how social media negatively impacts mental health, emphasizing problems like body dysmorphia, loneliness, anxiety, and depression that have become more prevalent as virtual platforms have grown in popularity. Feelings of inadequacy and loneliness are made worse by the continual push to produce idealized versions of oneself and the addictive nature of social media. Emotional well-being is further undermined by the culture of comparison, cyberbullying, and reality distortion promoted by algorithm- driven material. At the societal level, an over dependence on social media has led to a disintegration of interpersonal relationships, promoting divisiveness, echo chambers, and the dissemination of false information. Two of the main signs of this digital age are the decline in in-person interactions and people’s shortening attention spans. This abstract examines how social media is eroding the basis of genuine relationships and shared societal ideals while also enabling virtual interactions.

A Literature Survey on High Energy Physics
Authors:-Sanskriti Chanda, Dr. Subhash Chanda

Abstract-Research in modern science based on primordial particles those constitute the observable world. It is highly interesting to cover the vast field of materialistic world which lead to the scientists to investigate the building stone of the object that occurs naturally. Without proper knowledge of constituents of observable objects research on high energy physics will never yield satisfactory result. The aim of this paper is to intricate the right direction of investigation.

Implementation of NN Based MPPT Technic for Solar PV Module
Authors:-Associate Professor Mr. M. Raja Shekar, P. Narendar Reddy, K. Pramodh, Ch. Manoj Kumar

Abstract-Efficient power extraction from photovoltaic (PV) systems is critical in optimizing energy utilization for renewable applications. This project explores a Neural Network (NN)-based MPPT technique implemented in MATLAB/Simulink, designed to dynamically predict and track the maximum power point (MPP) of a solar PV system with battery storage. The NN-based MPPT is trained on a dataset encompassing various environmental conditions (irradiance, temperature, PV voltage, and current) to accurately predict the optimal duty cycle for the DC- DC converter, thereby maximizing power transfer from the PV system to the battery. A Simulink model incorporating a PV array, DC-DC converter, and the NN-based MPPT controller was developed, allowing for simulation and performance assessment under diverse scenarios. This work underscores the viability of intelligent MPPT solutions for advancing solar energy efficiency and sustainability.

Impact of Plastic on Environment
Authors:-Assistance Professor Naseem Husain, Assistance Professor Aqsa Almas Sheikh

Abstract-A serious environmental issue that has an impact on ecosystems, wildlife, and human health is plastic pollution. Since plastic production has increased to almost 368 million tons per year, plastics are found in both terrestrial and marine habitats. Although plastic materials are useful for many purposes, their durability also adds to their persistence in nature, which frequently harms the environment. Millions of marine species consume or become entangled in plastic waste, which can cause harm or even death, making marine life especially vulnerable. Microplastics, which are tiny plastic particles smaller than five millimeters, have also gotten into food chains, affected biodiversity, and endangered human health by contaminating water and shellfish. Plastic pollution has major socioeconomic repercussions since it impacts public health, tourism, and fisheries. Animal health and biodiversity are severely harmed by plastic pollution, which also poses a serious threat to ecosystems and animals. Ingestion, entanglement, or accumulation in food chains are all possible outcomes of the millions of tons of plastic waste that enter rivers, oceans, and terrestrial habitats every year. Fish, marine mammals, seabirds, and other marine species are especially at risk. Malnutrition, internal damage, and obstructions can result from consuming plastic waste, which significantly lowers survival rates. Several governmental efforts are being implemented to reduce plastic production and consumption, encourage recycling and biodegradable alternatives, and increase public knowledge of sustainable practices to reduce plastic pollution. To properly solve this complex issue, however, a comprehensive strategy including individuals, businesses, and governments is required.

DOI: 10.61137/ijsret.vol.11.issue1.146

Leveraging Data Science for Predictive Insights in Healthcare
Authors:-Maheshwar Pratap Roy, Associate Professor Dr S R Raja

Abstract-AThe rapid advancements in data science have revolutionized the healthcare industry, offering tools to enhance decision-making and optimize patient care. This paper focuses on the application of predictive analytics and machine learning models in healthcare, demonstrating how these technologies can forecast outcomes, identify patterns in patient data, and improve operational efficiency. By leveraging large-scale patient datasets, this research aligns with ethical practices and sustainability goals, ensuring equitable and impactful healthcare solutions. The results underscore the potential of data science in transforming healthcare delivery and promoting evidence-based decision-making.

Performance Analysis of Hybrid Solar Module and Wind Turbine Using Matlab
Authors:-Assistant Professor Ms. J. Malavika, Racharla Sri Harshini, Pinninti Sai Charan Reddy, Kandukuri Nithin

Abstract-The most popular renewable energy technology is Hybrid Power System consisting of wind and solar energy sources because the system is reliable and complimentary in nature. Wind / PV Hybrid system is commonly used in Distributed Generation (DG). This project proposes a new solution for improved voltage stability with quality power output. In this system voltage output from Wind Energy Conversion System(WECS) and Photo Voltaic Panels are given to separate DC-DC converters are independently controlled and connected to a common DC bus and from there it is inverted. In the proposed controller the voltage stability is obtained with a PI controller. The implementation of the proposed method is done by using MATLAB Simulink platform. The performance of the suggested coordinate control system is analyzed by comparing the computer simulation results with and with out using controllers and it shows that the proposed system is more efficient.

Simulation of Propulsion and Performance Analysis of Wap-7
Authors:-Assistant Professor Mr. D.Ramesh, D.Sai Kiran, T.S.Dinesh Karthik, E.Niharika

Abstract-This paper presents a comprehensive simulation and performance analysis of the WAP-7 electric locomotive, a cornerstone of Indian Railways’ passenger traffic. The WAP-7, with its robust design and advanced propulsion system, has been operational since its introduction in 2000, demonstrating remarkable versatility and efficiency in hauling heavy passenger trains. The WAP-7 electric locomotive has been the workhorse of Indian Railways’ passenger fleet for over two decades, with its robust design and propulsion system Utilizing MATLAB for simulation, we modeled the locomotive’s propulsion dynamics by incorporating critical parameters such as thrust, weight, drag coefficient, and braking forces.This also examines the evolution of the WAP-7’s propulsion system, the simulation provides insights into the impact of track conditions on WAP-7 performance.

Identification and Elimination of Hazards in Steel Industries by Hierarchy Control Method
Authors:-A. Tharanya, B. Balan

Abstract-The aim of this study is to Identification of hazards in various machineries in the steel industry and solution based on the hierarchy of controls. This will minimize the occupational health hazards of the workers. Hazard Identification and Risk Assessment (HIRA) is a process that involves examining what could cause harm to people in black bar to bright bar process workplace and evaluating whether the necessary precautions are in place. The goal is to ensure that no one becomes ill or gets hurt. Based on the risk assessment tool will Identify hazards, assess exposure, evaluate potential risks, and take precautions and to ensure that your workplace is safe and then decide what type of control measures shall be taken to control the employees are protected from harm by using the risk matrix to assist with the process.

DOI: 10.61137/ijsret.vol.11.issue1.147

A Study on the Effectiveness of Teaching Methods During Covid 19 in Secondary Schools of Lucknow
Authors:-Ravi Srivastava

Abstract-The COVID-19 pandemic dramatically accelerated the adoption of online learning methods in education. This abstract explores the various teaching methods employed during this period, including synchronous and asynchronous learning, flipped classrooms, and project-based learning. It also discusses the challenges and opportunities presented by these methods, such as the digital divide, student engagement, and assessment strategies. The abstract concludes by emphasizing the need for ongoing research and innovation in online teaching methods to ensure effective and equitable education for all students.

Conversational AI Chat Bot
Authors:-Mohamed Riyaz, Associate Professor Dr S R Raja

Abstract-This project aims to design and develop a conversational AI chat bot that can engage in basic conversations with users, providing helpful responses to frequently asked questions. Leveraging natural language processing (NLP) and machine learning algorithms, the chat bot will be integrated with a messaging platform to demonstrate its capabilities. The project’s objective is to create a functional chat bot that can understand user inputs, recognize intents, and generate appropriate responses.

Automated Canal Waste Collection System (ACWaCoS) for Canal Maintenance
Authors:-Nurina A. Lakian, Judy Norraine Banzon, John Arvin M. Bodlong, Gaezyll Lei C. Quong, George I. Salvador

Abstract-The study aimed to develop a prototype of an automated canal waste collection system. Specifically, it sought to determine the ultrasonic sensor’s capability to detect waste, servo motor’s spin to collect waste, system’s ability to update the serial monitor when the bin is full, average amount of time taken to complete a waste collection cycle, and average amount of waste detected and collected by the system for a certain period. The prototype used Arduino Uno R3, HC-SR04 ultrasonic sensors, MG995 servo motor, SG90 servo motor, jumper wires, breadboard, and a powerbank. The data were analyzed using frequency distribution, percentage, mean and Mann Whitney U-test. The results showed that the automated canal waste collection system prototype was 100% successful across three indicators; the prototype takes an average time of 14.6 seconds to complete a waste collection cycle; it detects an average amount of 7.50 wastes and collects an average amount of 7.20 wastes.  The amount of waste detected and collected does not significantly differ. This means that the prototype can collect a significant amount’ of detected wastes in the canal without human intervention. With these, the automated canal waste collection system has the potential in its functionality and consistency. Additionally, the device needs an IoT-based notification system for real-time monitoring.

Advancements in Plasma Physics for Space Propulsion [Core Reserach in Plasma Physics]
Authors:-Vishwanath. Barve, Pranav.D. Awate, Divyanshu.S. Yadav

Abstract-Plasma Physics, the study of charged particles and fluids interacting with electromagnetic fields, is increasingly gaining interest in the field of space propulsion. Traditional chemical rockets have limitations that restrict long-distance space travel, whereas plasma-based propulsion system promise higher efficiency and greater fuel academy. This paper explores the principles behind the plasma propulsion and examines the most recent advancement that bring this futuristic technology closer to practical applications. Additionally, it investigates the ongoing challenges, such as power requirements, fuel sources, and magnetic confinement, and how overcoming these challenges could open new frontiers for deep-space explorations.

DOI: 10.61137/ijsret.vol.11.issue1.148

Design of Battery Charging from Solar Using Buck Converters with MPPT Algorithm
Authors:-Professor Dr. S. Mani Kuchibhatla, K. Priyanka, V. Kavitha, M. Adithya

Abstract-Photovoltaic power generation system implements an effective utilization of solar energy, but has very low conversion efficiency. The major problem in solar photovoltaic system is to maintain the DC output power from the panel as constant. Irradiation and temperature are the two factors, which will change the output power of the panel. In this article it is shown that for charging lead acid batteries from solar panel, MPPT can be achieved by perturb and observe algorithm. MPPT is used in photovoltaic systems to regulate the photovoltaic array output. A buck converter is utilized as a DC-DC converter for the charge controller. It is used to match the impedance of solar panel and battery to deliver maximum power. Voltage and current from the solar panel is sensed and duty cycle of gating signal is varied accordingly by the algorithm to attain maximum power transfer. It is obtained by using MATLAB Simulink Model.

Smart Rides
Authors:-Anjali Dhunde, Srushti Anturkar, Vaishnavi Bhelkar, Vaishnavi Gudadhe

Abstract-The Smart rides is robotic car. The rise of smart transportation solutions is revolutionizing urban mobility, and the concept of “Smart Rides” is at the forefront of this transformation. Smart Rides integrate emerging technologies such as the Internet of Things (IoT), artificial intelligence (AI), and machine learning (ML) with transportation systems to provide efficient, safe, and sustainable travel experiences. This review paper explores the development, implementation, and challenges of Smart Rides, focusing on key components like real-time data processing, autonomous vehicles, ride-sharing services, and predictive analytics. We analyse various smart transportation initiatives across global cities, highlighting their impact on reducing congestion, enhancing energy efficiency, and improving accessibility for diverse populations. The paper also examines the role of smart infrastructure, including sensors and communication networks, in enabling seamless mobility. Additionally, the environmental and social implications of Smart Rides are discussed, with an emphasis on sustainability and equity. Challenges related to data privacy, cybersecurity, and regulatory frameworks are also addressed, proposing solutions for overcoming these barriers. By providing a comprehensive overview of the current state of Smart Rides and future trends, this review aims to guide policymakers, engineers, and researchers in shaping the next generation of intelligent transportation systems.

DOI: 10.61137/ijsret.vol.11.issue1.149

Implementation of AC to DC Converter in Wind Power Generation Using Matlab
Authors:-Professor Dr.S Mani.Kuchibhatla, A.Sony, B. Nishith, B. Ruthwik

Abstract-Wind power generation has emerged as a crucial component of renewable energy systems, offering a sustainable and environmentally friendly alternative to fossil fuels. However, the integration of wind energy into the grid requires efficient power conversion mechanisms due to the variable nature of wind speed and the need for compatibility with existing infrastructure. A typical wind power system involves the conversion of mechanical energy into alternating current (AC) power using a generator, which is driven by wind turbines. This project focuses on the design and implementation of an AC to DC converter in wind power generation systems. The AC to DC converter plays a vital role in transforming the variable frequency AC output of wind turbines into a stable DC voltage. In this process, the generated AC power is first converted into direct current (DC) using power electronics, which enables efficient integration with batteries or facilitates smooth conversion. This conversion process is essential for stabilizing power output, minimizing losses, and ensuring the efficient transmission of energy over long distances. Advanced AC to DC converters and control systems enhance the reliability, efficiency, and scalability of wind power systems, making them a vital component in modern renewable energy infrastructures. This is implemented in the MATLAB/SIMULINLK.

Development of Center Pivot Irrigation Systems to Revolutionized Modern Agriculture Irrigation
Authors:-M.Tech. Scholar Suchita Gangele, Associate Professor Dr. Vivek Soni

Abstract-A well-designed main line is the backbone of any center pivot irrigation system. Ensuring it’s optimally sized and configured helps in achieving uniform water distribution, preventing pressure variations that could affect sprinkler performance. By using analytical methods such as hydraulic modeling, and optimization techniques, one can fine-tune pipe sizes, pump capacities, and valve configurations to ensure maximum efficiency. As you mentioned, AI-driven modeling could play a crucial role in real-time monitoring, helping predict system behavior under varying conditions. With real-time data, adjustments could be made on-the-fly to optimize water usage and reduce waste, even accounting for changing weather patterns or soil moisture levels.

Mathematical Modeling of Population Growth: A Comparative Study of Exponential Model
Authors:-Sharif Shabir

Abstract-Population growth is a multifaceted and evolving issue that has captivated the attention of demographers, ecologists, and policymakers for many years. The swift increase in the global population carries significant consequences for resource management, environmental sustainability, and socioeconomic development. This study seeks to enhance the current body of knowledge on population growth by creating and comparing mathematical models that reflect the fundamental dynamics of this phenomenon. In particular, this research examines the exponential and logistic models of population growth, which are commonly utilized in the fields of demography and ecology. The exponential model posits that population growth is influenced by a constant birth rate and death rate, whereas the logistic model considers the environmental carrying capacity and the effects of resource constraints on population growth. Employing a mix of analytical and numerical techniques, this study evaluates the advantages and drawbacks of each model in forecasting population growth across various scenarios. The findings underscore the necessity of accounting for environmental carrying capacity and resource limitations when modeling population growth, and illustrate how mathematical models can guide policy and decision making in areas such as demography, ecology, and resource management. The implications of this study are significant for our comprehension of population growth and its effects on both the environment and society. The outcomes can be leveraged to create more precise and realistic population models, which can aid in policy and decision-making at local, national, and global scales. Additionally, this research showcases the potential of mathematical modeling to deepen our understanding of intricate social and environmental issues, emphasizing the need for further exploration in this area.

DOI: 10.61137/ijsret.vol.11.issue1.150

Design of Single Phase Grid Connected Solar PV Inverter Using MATLAB
Authors:-Assistant Professor Ms. A. Sunantha, M. Ashwini, K. Geetha, B. Ajay

Abstract-This project presents the design, simulation, and performance analysis of a single-phase grid-connected solar photovoltaic (PV) inverter using MATLAB /SIMULINK. The primary objective is to develop an efficient and reliable inverter system that ensures maximum power extraction from the solar PV array and seamless integration with the grid. The main elements of the PV control structure are: a maximum power point tracker (MPPT) algorithm using the incremental conductance method: a synchronization method using the phase-locked-loop (PLL), based on delay: the input power control using the DC voltage controller and power feed-forward and the grid current controller implemented in two different ways, using the classical proportional integral (PI) and the novel proportional resonant (PR) controllers. The control strategy was tested experimentally on 2kW PV inverter.

An Investigation of Cloud Computing Security Concerns
Authors:-Research Scholar Ms. Anshul, Professor & HOD Dr.Mukesh Singla

Abstract-Distributed computing is a flexible, savvy, and proven conveyance stage for conveying corporate or purchaser IT administrations by means of the Internet. Distributed computing, then again, represents an extra danger on the grounds that basic administrations are regularly moved to an outsider, making information security and protection more hard to ensure, help with information and administration accessibility, just as show consistence. Distributed computing utilizes an assortment of advancements (SOA, virtualization, Web 2.0), and it acquires their security concerns, which we inspect here by distinguishing the most widely recognized shortcomings in these frameworks and among the most regularly referred to risks in the Cloud Computing writing and its environmental factors, just as to identify and associate shortcomings and dangers to possible cures.

Automated Dog Feeder System Using Arduino Uno for Efficient and Timely Feeding
Authors:-James Dalisay Baranggan, Haire Ato, Isaiah Smile B. Halik, Jennie Jorimocha, John Renwel Mauro, Rexel Gold D. Emuy, Judie L. Velasco

Abstract-This project aims to develop a prototype that could potentially assist dog owners in managing feeding schedules more efficiently and inclusively. The functionality of the prototype was assessed based on the aptness of the object detection using an ultrasonic sensor, the accuracy of its real-time clock, the precision of its servo motor for kibble dispensing, the audibility of its voice recorder, the visibility of the neon signage for aging dogs, the braille integration for visually impaired owners, and its overall system reliability. The automated dog feeder was built using an Arduino Uno R3, an HC-SR04 ultrasonic sensor, RTC Module DS3231, PCB matrix, jumper wires, SG90 servo motor, LCD I2C screen, 12V AC adapter, MP3 player, speaker, acrylic, PVC elbow, and some recycled materials such as wood and PVC pipe. The data analysis was based on user feedback and system performance parameters. The results indicated that the prototype accurately dispensed kibble upon detection of the dog’s presence, tracked and scheduled feeding times, and got favorable feedback on its overall functionality, usability, and inclusivity. The given results imply that the automated dog feeder has strong potential to assist diverse dog owners in maintaining regular feeding schedules, making it a more practical solution for busy homes.

DOI: 10.61137/ijsret.vol.11.issue1.151

Online Payment Fraud Detection Using Python
Authors:-Manya Rajvaidya, Hresth Narayan Mishra, Professor Shilpa Tripathi

Abstract-Online payment fraud detection is a critical area of research and development in the realm of financial security. With the rise of e-commerce and digital transactions, ensuring the integrity and safety of online payments has become paramount, This abstract explores various methodologies and techniques employed in the detection and prevention of fraud in online payment systems. The detection of online payment fraud involves the use of advanced machine learning algorithms, anomaly detection techniques, and behavioral analytics. These methods analyze transactional data in real-time to identify suspicious patterns or anomalies that deviate from normal user behavior or transaction patterns. Additionally, the integration of artificial intelligence (Al) and deep learning models has enhanced the accuracy and efficiency of fraud detection systems by enabling them to adapt and learn from new fraud patterns continuously. Moreover, the abstract discusses the challenges associated with online payment fraud detection, including the balance between security and user experience, the need for real-time decision-making, and the evolving nature of fraudulent tactics employed by cybercriminals. Furthermore, it highlights the importance of collaboration between financial institutions, payment service providers, and cybersecurity experts in combating fraud effectively. In conclusion, effective online payment fraud detection is crucial for maintaining consumer trust, safeguarding financial transactions, and mitigating potential financial losses for businesses. Continued advancements in technology and methodologies will play a pivotal role in strengthening fraud prevention strategies and adapting to emerging threats in the digital payment landscape.

DOI: 10.61137/ijsret.vol.11.issue1.152

The Biomatrix Beat Sensor: Advancement in Mr Cardiac Imaging
Authors:-Assistant Professor Mr. Bibin Joseph

Abstract-The Biomatrix Beat Sensor, developed by Siemens Healthineers, represents a significant leap forward in cardiac and respiratory MRI. By eliminating the need for traditional electrocardiogram (ECG) electrodes and respiratory belts, this contactless technology leverages electromagnetic navigation (EMN) and the Pilot Tone (PT) concept to provide real-time, artifact-free synchronization of cardiac and respiratory motion. This review explores the limitations of conventional methods, the working principles of the Biomatrix Beat Sensor, its clinical applications, and its potential to transform patient care in MRI.

DOI: 10.61137/ijsret.vol.11.issue1.153

Vivaldi Antenna Design for Cognitive Radio Communication
Authors:-Assistant Professor Dr.K.Jayanthi, B.Loganayaki

Abstract-This project presents a versatile antenna design suitable for various wireless communication platforms, including cognitive radio (CR) communication, 5G, and Wireless Local Area Network (WLAN) applications. A two-port Vivaldi antenna is designed using an FR4 substrate material with a dielectric constant of 4.4 and dimensions of 45.12 mm × 57.94 mm × 1.6 mm. This design is suitable for communication within a cognitive radio architecture. The antenna operates across multiple frequency bands, including the n79 band (4.4 GHz to 5 GHz) for 5G networks via port 1, and the 2.4 GHz band for Wi-Fi and Bluetooth communication via port 2. It achieves a return loss below -10 dB and a VSWR below 1.5 across the n79 band for 5G communication, and the 2.4 GHz band for WLAN applications.

DOI: 10.61137/ijsret.vol.11.issue1.154

Strengthening Cybersecurity in Uganda’s Electoral Commission through Multi-Factor Authentication and Single Sign-on Solutions across Organizational Applications
Authors:-Carolyn Nasimolo, Associate Professor Dr.S.R.Raja

Abstract-The increasing reliance on digital platforms for electoral processes in Uganda has brought to light significant cybersecurity issues that the Uganda Electoral Commission faces and this has made it imperative for the UEC to prioritize the strengthening of its cybersecurity. The Uganda Electoral Commission relies solely on traditional password-based authentication but hacking technologies have become more advanced and diversified. As a result, for security and authentication organizations are unable to rely on user ID and password-based authentication. (Hong, 2011). This single- factor authentication has been found to be vulnerable to attacks like malware, brute force, dictionary attacks, shoulder surfing, replay and phishing attacks etc. Much as passwords can easily be memorized and users at no cost are able to use them in their daily lives, these can be forgotten especially if the users have to log into multiple systems. (Mohammadreza Hazhirpasand Barkadehi, 2018). The UEC users log in to each of the systems independently which could lead to password fatigue. Cyberattacks can lead to unauthorized access to sensitive data, and data breaches and can therefore undermine the entire electoral process if the integrity of electoral data is compromised. This can lead to public distrust which could pose a threat to national stability. Therefore, by integrating MFA the UEC protects its sensitive electoral data and ensure secure access to its applications. Single sign-on is the ability for a user to authenticate once and access other protected resources where he has permissionwithout logging re- authentication. This system not only secures sensitive data but streamlines user experience through Single Sign-on (SSO) enabling users to log on once and gain access to multiple applications seamlessly.

The Role of AI in Enhancing Safety Standards in Autonomous Shipping: A Review of Collision Avoidance Systems
Authors:-Mohammad Anas Ahmed Rizwan, Ayaan Ali Ahmed Siddiqui

Abstract-The rise of autonomous ships allows for great opportunities in the search for greater efficiency, cost-effectiveness, and environmental sustainability in maritime operations. Safety, though, has always been a major concern, particularly with the risks of collision within increasingly congested lanes. This paper reviews the literature on how artificial intelligence is being used to transform safety standards, including, in particular, autonomous shipping, for a collision avoidance system. We examined how AI-driven methodologies such as machine learning, path-planning algorithms, predictive analytics, and decision-support systems should be integrated to advance minimal human intervention in the development of navigational decision-making processes. Sensor technologies such as radar, LiDAR, sonar, and satellite imagery are analysed for situational awareness, real-time risk assessment, and dynamic adaptation to the maritime environment. The paper discusses the use of sensor technologies, for example, radar, LiDAR, sonar, and satellite imagery, in support of situational awareness, real-time risk assessment, and dynamic adaptation to the maritime environment. Further, it shows a number of regulatory challenges, ethical considerations, and urgent international standardization issues that the development and integration of AI technologies may have for maritime industries.

DOI: 10.61137/ijsret.vol.11.issue1.155

Fuzzy Logsic Controlled System for Utilization of Renewable Energy Sources of Industry and Home Appliances
Authors:-Dr. A. R. Wadekar, Miss. Rutuja Bharat Lomate

Abstract-The per capita of power in India is insufficient compared to other developed countries in the world. Hence, the only way is the optimal utilization of available energy sources but the difference between production and consumption of electrical energy, during summer is very high, due to large utilization of cooling machines like Air conditioner, Air coolers in such case a software industry, like BPO call center or any office with large server and many systems need to have a 24 hours working Air conditioner. This leads to huge power consumption. Conservative measures need to be initiated and implement to decrease this gap to restrain this situation the concert of DSM has begun in power system planning and management. Therefore this paper included Fuzzy logic applied to Ac which results to calculate the actual hourly turn off period and reduction in energy consumption. By the optimal consumption of electrical power results increase saving by reducing the electricity bill and reduce the over load on live grid during peak hours and also calculate the cost of savings and playback period for the return of investment. In this paper, solar energy is used to run air conditioner. The cost of saving and playback period is calculated by considering only photo voltaic (PV) and photo voltaic with fuzzy controller, Results proved that usage of PV with fuzzy controller has better annual savings and lower pay back period compared with only considering PV.

DOI: 10.61137/ijsret.vol.11.issue1.156

Preparation and Characterization of Al-Cu Composite by Using Stir Casting Technique
Authors:-Assistant Professor K. K. Kishore

Abstract-Composite materials have emerged as a critical area of research and development, rapidly gaining importance as structural materials. Among polymer applications, composite materials are poised for significant advancements. Aluminum matrix composites (AMCs) are particularly favored in automotive and aerospace industries due to their exceptional mechanical properties, such as a high strength-to-weight ratio, superior wear resistance, increased stiffness, enhanced fatigue resistance, controlled thermal expansion, and stability at elevated temperatures. Stir casting is widely recognized as an efficient and cost-effective method for AMC fabrication. This study investigates the mechanical behavior of composites made from pure aluminum reinforced with copper, fabricated using the stir casting method. The composites were produced with reinforcement levels of 0%, 2%, 4%, and 6%. Results indicate that the inclusion of copper particles significantly enhanced the hardness, tensile strength, and wear resistance of the composites, though an increase in copper content resulted in decreased density. These findings highlight the potential of copper as a reinforcement material for aluminum-based metal matrix composites, offering valuable insights for diverse engineering applications.

DOI: 10.61137/ijsret.vol.11.issue1.157

Arduino-Based Rainfall and Flood Monitoring System With Real-Time Alert Notification
Authors:-Janreign G. Zamarro, Kris Martin C. Paquibot, Cristian John L. Espares, John Rey Maltizo, Judie L. Velasco

Abstract-The objective of this research is to develop an Arduino-based rainfall and flood monitoring system with real-time alert notification to address the challenges faced by the affected residents of the outlying areas of the Davao region. It focuses on using Arduino technology for the areas affected by floods that can be easily monitored with an SMS alert notification and a buzzer system. This research employed an experimental approach, starting with the design and assembly of the prototype, followed by sensor accuracy testing and data collection over multiple trials. The findings revealed that the prototype accurately measured water level according to three categories: caution, warning, and danger; this category also achieves a 100% success rate in sending SMS alerts and providing timely warnings to the buzzer during moderate and critical rainfall events. The data logged on a microSD card confirmed the system’s consistent performance in tracking environmental conditions. In conclusion, the prototype reliably shows a rainfall and flood monitoring solution that ensures real-time alerts to the affected communities, significantly contributing to disaster preparedness and response of the local communities. Some of the suggestions for future upgrades are further testing under a variety of conditions, integrating the system with IoT platforms to manage data better, programs across the community to understand and develop the most effective response mechanisms, and system expansion for a greater spatial coverage by having multiple sensors along with a monitoring station network.

“Aum: The Primordial Sound and its Resonance in Science, Spirituality, and Artificial Intelligence and Data Science”
Authors:-Associate Professor Dr. Suneel Pappala, Professor Dr K Venkata Naganjaneyulu

Abstract-The sacred syllable “Aum” (or “Om”) holds profound significance in Hinduism, Buddhism, Jainism, and other spiritual traditions. It is revered as the primordial sound of the universe, symbolizing the essence of ultimate reality, consciousness, and the interconnectedness of all existence. Explores the multifaceted dimensions of Aum, bridging its spiritual symbolism with modern scientific and technological paradigms, particularly in the realm of Artificial Intelligence (AI). By examining Aum’s representation of creation, preservation, and destruction, as well as its vibrational resonance with Earth’s natural frequencies and cosmic phenomena, Highlights the potential for harmonizing AI development with ethical principles, sustainability, and human well-being. Furthermore, it delves into the applications of Aum-inspired concepts in data science, neural networks, quantum computing, and AI-driven meditation tools, offering a holistic perspective on the convergence of ancient wisdom and cutting-edge technology.

DOI: 10.61137/ijsret.vol.11.issue1.158

Optimizing Recycling Stream Sorting Systems Using Machine Learning to Minimize Contamination
Authors:-Assistant Professor Dr. Pankaj Malik, Yashee Verma, Yashi Harne, Yuvraj Bhatnagar, Shreya Joshi

Abstract-The efficiency of recycling systems is crucial for promoting sustainability and reducing environmental impact. However, contamination in recycling streams remains a significant challenge, often leading to decreased recycling effectiveness and increased operational costs. This paper investigates the potential of machine learning (ML) to optimize sorting systems in recycling plants, aiming to minimize contamination and improve material recovery rates. We explore the application of various ML algorithms, including Convolutional Neural Networks (CNNs), Support Vector Machines (SVM), and Random Forests, for automating the detection and classification of contaminants in waste streams. By leveraging sensor data, image recognition, and real-time decision-making, our approach enhances sorting accuracy, reduces human error, and supports the efficient separation of recyclable materials. Experimental results from simulations and real-world case studies demonstrate that ML-driven sorting systems can achieve higher contamination reduction and sorting efficiency compared to traditional methods. This study highlights the promising role of machine learning in transforming recycling processes and proposes future directions for integrating AI technologies in waste management to create more sustainable and effective recycling solutions.

DOI: 10.61137/ijsret.vol.11.issue1.159

Hypergraph Neural Networks for Robust Fingerprint Matching in Forensic Applications
Authors:-Assistant Professor Dr. Pankaj Malik, Lakshita Singh, Yashi Sethi, Dixika Verma, Dev Soni

Abstract-Fingerprint matching is a crucial task in forensic science, where the accurate and reliable identification of individuals is essential for criminal investigations. Traditional fingerprint matching algorithms often struggle with challenges such as occlusion, distortion, and partial prints. In this study, we propose a novel approach that leverages Hypergraph Neural Networks (HGNNs) to enhance the robustness and accuracy of fingerprint matching in forensic applications. By modeling fingerprint features as hypergraphs, we capture higher-order relationships between minutiae points and their spatial configurations, enabling more effective matching despite partial or degraded fingerprints. The HGNN framework integrates both local and global feature information, improving the system’s ability to recognize subtle and complex patterns in fingerprint data. Extensive experiments on benchmark fingerprint datasets demonstrate that our approach outperforms conventional methods in terms of matching accuracy and robustness to noise. The proposed HGNN-based model provides a promising solution for advancing forensic fingerprint identification systems, offering improved performance under challenging real-world conditions.

DOI: 10.61137/ijsret.vol.11.issue1.160

IoT and Computer Vision for Efficient Parking Management in Urban Areas: A Comprehensive Review
Authors:-Assistant Professor Mrs. Shikha Pachouly, Karan Solanki, Eeshaan Sawant, Aarya Rokade

Abstract-Urbanization and population growth have led to an exponential increase in vehicles, exacerbating parking-related challenges. Efficient parking management systems have become imperative to mitigate congestion, reduce fuel consumption, and minimize environmental impact. This paper reviews the integration of Internet of Things (IoT) technologies, computer vision, and Bluetooth Low Energy (BLE)-based indoor positioning systems for developing an efficient parking management system in urban areas. The proposed system is divided into three core modules: prediction of parking availability, real-time parking detection, and indoor navigation to guide users. This review evaluates existing approaches, highlights technological advancements, and discusses potential challenges in developing a proof of concept for the Indian context, emphasizing the cost- efficiency of the system.

DOI: 10.61137/ijsret.vol.11.issue1.161

Cyclooxygenases in Inflammatory Bowel Disease
Authors:-K. Anil Kumar

Abstract-Inflammatory Bowel Disease (IBD) is a long-term condition that presents as Ulcerative Colitis (UC), or Crohn’s Disease (CD) based on its manifestations. It is characterized by inflammation in the small intestine and colon, impacting millions of individuals globally. The development of IBD is influenced by genetic, environmental, and immunological factors. Various pro-inflammatory agents such as TNF-α, IL-1β, IL-6, IL-12, TGF-β, INF-γ, COX-2, and increased reactive oxygen species contribute to significant intestinal damage. Typical symptoms of IBD include fever, abdominal pain, vomiting, diarrhea, weight loss, blood in the stool, and an elevated risk of colon cancer. Changes in colonic motility linked to IBD can worsen discomfort and diarrhea. Prostaglandins, particularly elevated in IBD patients, may modulate these alterations. The enzyme Cyclooxygenase-2, responsible for producing prostaglandins, is targeted in IBD treatment. The role of PGE2 in the pathogenesis of IBD is intricate; while it can have anti-inflammatory effects by inhibiting pro-inflammatory cytokines, it can also act pro-inflammatory in IBD. Dysregulation of PGE2 production in IBD can lead to excess levels in inflamed gut tissue, perpetuating chronic inflammation by attracting immune cells, increasing blood vessel permeability, and causing tissue damage. The context-dependent role of PGE2 in IBD warrants further research for a comprehensive understanding. Modulating PGE2 levels or its signaling pathways may provide potential therapeutic options for managing IBD. This review specifically examines the involvement of Cyclooxygenases and coxibs in treating IBD.

DOI: 10.61137/ijsret.vol.11.issue1.162

Review on Accuracy Enhancement of Flower Classification Using Machine Learning
Authors:-Anshul Payasi, Assistant Professor Srashti Thakur

Abstract-The rapid evolution of Artificial Intelligence (AI) and Machine Learning (ML) technologies has led to the development of increasingly sophisticated algorithms and models. In particular, these advancements have been pivotal in the domain of flower classification and recognition, aiming to identify and categorize the vast array of species of flowers present on our planet. This review delves into the convergence of AI and ML within the realm of flower classification, a domain that greatly benefits from the advancements in computer vision. As a sub-field of AI, computer vision plays a crucial role in extracting intricate features from floral specimens and subsequently utilizing classification algorithms to accurately label and categorize them. This literature review offers a meticulous and comprehensive exploration of the existing body of knowledge, aiming to elucidate the various methodologies and approaches employed in the taxonomic categorization of floral specimens. It encompasses an extensive survey of scholarly works, research papers, and innovative techniques that contribute to the advancement of flower identification systems. The review addresses diverse strategies, including but not limited to deep learning architectures, neural networks, feature extraction methodologies, and optimization techniques used in the classification of flowers. By synthesizing and critically analyzing the existing literature, this review aims to provide insights into the state-of-the-art techniques and emerging trends in the field of flower classification and recognition using AI and ML. This paper holds several benefits to the society such as: agriculture, environment conservation, education and tourism.

Parental Involvement and Academic Performance of Bachelor of Technology and Livelihood Education Students of the University of Science and Technology of Southern Philippines
Authors:-Ruby Pearl A. Maghanoy, Abegail B. Gaid, Mhea A. Galera, Jomar P. Flores, Jorie May Elevado

Abstract-Parental involvement is crucial in the cognitive and socioemotional development of student, and during the pandemic, parents played a vital role in shaping their student’s educational success. This study examines the relationship between parental involvement and the academic performance of Bachelor of Technology and Livelihood Education (BTLED) students at the University of Science and Technology of Southern Philippines. The study aims to determine the level of parental involvement and its correlation with the academic performance (GPA) of the students, specifically exploring the relationship between these two variables. A quantitative correlational research design was employed to assess how parental involvement correlates with academic performance. The study was conducted at the University of Science and Technology of Southern Philippines, Cagayan de Oro City, with a sample of 133 third year BTLED students. A two-part questionnaire was used to gather demographic data, parental involvement levels, and students’ GPA. Data were analyzed using descriptive statistics (mean, frequency, percentage) and Spearman’s rank correlation to determine the relationship between parental involvement and academic performance. The findings revealed that while parental involvement was generally high, the relationship with academic performance was weak and negative. Despite a high level of parental engagement, there was no significant correlation between involvement and GPA. The conclusion of the study indicates that while parental involvement positively influences student motivation, it did not significantly impact academic performance. Other factors, such as student self-motivation and program structure, likely play a more influential role. The study recommends that parents maintain active communication and structure in their student’s academic progress and that teachers and policymakers focus on strategies to enhance student self-motivation and independent learning.

Electronic Devices and Circuits: The Foundation of Modern Technology and Innovation
Authors:-Jayakarthi S R

Abstract-Electronic devices and circuits form the backbone of modern technological advancements, driving innovation across a multitude of industries. From consumer electronics such as smartphones and wearables to complex systems in aerospace, telecommunications, and healthcare, the applications of electronic circuits are vast and diverse. These circuits enable functionality, automation, and communication, making them an integral part of everyday life. This article explores the fundamentals of electronic devices, including key components like semiconductors, diodes, transistors, and capacitors, and delves into the operation and application of essential circuits such as rectifiers, amplifiers, and oscillators. It also covers digital electronics, providing insights into logic gates, flip-flops, microprocessors, and the interface between analog and digital systems. Furthermore, the paper examines the role of power electronics in energy management, renewable energy solutions, and industrial automation. Communication circuits, including RF systems, modulation techniques, and wireless communication, are also discussed, along with their crucial role in enabling modern-day connectivity. Advanced topics such as integrated circuits, VLSI, embedded systems, and emerging trends like IoT, AI, and quantum electronics are presented to highlight the trajectory of innovation in the field. Finally, this article concludes with a reflection on the impact of electronic devices and circuits on contemporary life and their future potential in shaping technological progress.

A Deep Learning Approach to Tomato Disease Classification Using a CNN-LSTM Hybrid Network
Authors:-Youssef Laatiri, Mohamed Ali Mahjoub

Abstract-Our work proposes a classification architecture based on deep learning techniques, particularly convolutional and recurrent neural networks, for the classification of tomato diseases from digital images. More specifically, the objective is to classify leaves infected by a disease using supervised learning on a pre-labeled image dataset from PlantVillage. One of the main challenges of using deep learning, however, is the need for a very large amount of annotated data, which is not always available. Therefore, the objective of our study is to develop a specific hybrid architecture, CNN-LSTM (Convolutional Neural Networks – Long Short-Term Memory), capable of leveraging small (frugal) and relatively imbalanced datasets. To assess the relevance of this approach, we propose to compare it with deep learning algorithms frequently described in the literature. The proposed model achieved better classification performance in terms of validation Accuracy of 94,16%,

DOI: 10.61137/ijsret.vol.11.issue1.163

Slope Stability Analysis of Landslide at Fudale, Gamo Zone, Ethiopia
Authors:-Amanuel Abera, Bisrat Gissila, Democracy Dila, Vasudeva Rao

Abstract-Landslides are significant natural disasters that pose threats to human life and the environment, particularly in hilly regions. This study contributes to the understanding of landslide dynamics by providing localized geotechnical data and stability analyses. After the landslide in 2023, this study looks into the geotechnical conditions and stability factors that led to landslides in the Fudale, Gamo Zone, Southern Ethiopia. The research paper aims to analyze the soil characteristics contributing to landslide occurrences and to assess slope stability using the Finite Element Method (FEM) through Plaxis 2D software. Ten soil samples were collected from various depths, and laboratory tests were conducted to determine their index and engineering properties. Test results indicate that the predominant soil types are fine-grained, comprising significant percentages of clay and silt, which are particularly susceptible to saturation and subsequent landslides. The analysis identified rainfall, slope geometry, soil permeability, and groundwater conditions as critical factors influencing slope stability. The computed factor of safety (FOS) for natural conditions was found to be 0.972, indicating an unstable slope.

Reviewing Mental Health in Perinatology, a FOGSI “Manyata” Initiative
Authors:-Kranti Kulkarni, Amit Phadnis

Abstract-Mental illnesses are a serious concern in India where every seventh person suffers from mental health problems[1,5]—with women more affected than men. While the burden of perinatal mental illnesses grows, India lacks exclusive policies to address it. Although postpartum depression or blues are restricted to the period of six weeks post-delivery, the roots of this condition are traced right from pre-pregnancy through the antenatal period to the period of one year post-delivery. We took up a study amongst postpartum mothers about their self-assessment of this condition, their awareness and their strategies to combat postpartum anxiety and reinforce the importance of psychological well-being as a part of routine assessment during antenatal period, fortified in the postpartum phase.

DOI: 10.61137/ijsret.vol.11.issue1.164

Design and Development of Tablet Making Machine Using IoT
Authors:-Associate Professor Dr.T.Sengolrajan, V.Dharshini, M.Swathi, A.Thabuna

Abstract-The pharmaceutical industry, precision and efficiency of tablet manufacturing are required to meet quality standards. In this project, the production process is being modernized by incorporating information and communication technology (IoT) into the production line. The machine performs auto-loading of all important steps including material feeding, compression and ejection and also IoT-powered sensors track parameters such as compression force, tablet weight, and humidity. In real-time, data is data is sent to a cloud-based server, enabling remote monitoring and predictive maintenance. This system guarantees of quality tablet, reduces downtime, and improves efficiency. The resulting machine is scalable and intuitive to use, making it suitable for both small- and large-scale production and brings Smart Manufacturing into the pharmaceutical industry.

DOI: 10.61137/ijsret.vol.11.issue1.165

Application for Agriculture Management
Authors:-Jasmine Saranya. P, Sabareeshwaran. S, Priya. A, Sairam. K, Dhivakar. M

Abstract-The worldwide economy relies vigorously upon horticulture, yet ordinary cultivating rehearses remember disadvantages like flightiness for the climate, ineffectual asset the board, and an absence of ongoing independent direction. The information driven brilliant cultivating application introduced in this examination advances farming administration by joining Enormous Information, Computerized reasoning (man-made intelligence), and Web of Things (IoT) sensors. The framework involves OpenCV for plant illness finding, TensorFlow and K-Closest Neighbors (KNN) for crop observing, and Choice Tree calculations for crop suggestion. Besides, LLaMA-fueled “Vigro Bot,” a chatbot, offers ranchers constant exhortation. The proposed procedure supports practical cultivating techniques, increments efficiency, and lessens asset squander.

DOI: 10.61137/ijsret.vol.11.issue1.166

Maintenance of High-Rise Buildings: Challenges, Strategies, and Future Directions
Authors:-Anuj Gautam, Assistant Professor Deepak Aggarwal, Assistant Professor Rahul Kumar

Abstract-High-rise buildings are a hallmark of modern urban development, offering solutions to space constraints and population density. However, the maintenance of these structures presents unique challenges due to their complexity, height, and the diverse systems they encompass. This paper explores the critical aspects of maintaining high-rise buildings, including structural integrity, mechanical and electrical systems, façade maintenance, and safety protocols. It also discusses the role of technology, such as Building Information Modeling (BIM) and Internet of Things (IoT), in enhancing maintenance practices. The paper concludes with recommendations for best practices and future research directions to ensure the longevity and safety of high-rise buildings.

Y2K TO IOT – Paradigm Shift in IT Industry in Last 25 Years and its Application
Authors:-Research Scholar Bhaskar Banerjee

Abstract-There was much hype and importance of the Year 2000 as known as Y2K Problem and all the legacy application Software needs to changed and incorporated with This and now we talk about IOT – Internet of Things that is Network of Physical Objects that can be connected and share data within themselves. So these changes are like Paradigm changes and it impacted a lot in our daily life, this article will talk about more About on this in details.

DOI: 10.61137/ijsret.vol.11.issue1.167

Optimization of Loading and Storage Mechanisms for Enhanced Material Handling in the Motorized Cart
Authors:-C. Gowrishankar, S.Girieshwaran, M.Keerthivarman, C.Naveen

Abstract-This project focuses on improving the cart’s utility by integrating advanced loading and storage features. A cylindrical roller mechanism is introduced to simplify the process of loading and unloading items, reducing the need for manual effort and improving efficiency. The inclusion of two spacious and organized compartments provides ample storage space, ensuring the safe and secure transportation of stationary items. Attention is given to the ergonomic design of these compartments to facilitate easy access and optimal space utilization. Additionally, this stage involves analysing the structural stability of the cart to ensure it can handle varying weights without compromising performance. By enhancing its functional capabilities, this phase ensures the cart is tailored to meet the material handling needs of a busy campus environment.

DOI: 10.61137/ijsret.vol.11.issue1.168

Development and Fabrication of Automatic Chakali Making Machine using PLC
Authors:-K. Karthik, R.Dhanush, V.Thirumalai, P.Dhayanithi

Abstract-This paper will design an Automatic Chakali Making Machine based on Programmable Logic Controller (PLC) technology to automate the traditional chakali making process. Automation is a major concern in contemporary food industries to overcome the limitations of quality control, production rate, shortage of manpower and profitability. The suggested system combines mechanical, electrical and control elements to execute primary operations such as dough extrusion, shaping, cutting and frying with high accuracy and efficiency. The process starts with a dough feeder, which transports the dough to an extruder, where PLC controls the extrusion process to deliver regular shape and size. Uniformity is achieved by a synchronized cutting system and the shaped chakalis are transported to a frying unit by a conveyor system, where PLC automation controls temperature and oil levels to deliver uniform cooking. The system also features real-time monitoring to deliver safety and efficiency. With increasing demand for food industry automation, manufacturers are continuously upgrading equipment to meet consumer demands, deliver hygiene standards and boost profitability. By minimizing manual intervention, delivering optimal utilization of ingredients and product uniformity, this automated system not only increases productivity and food safety but also enables small to medium-scale businesses to boost production on a large scale in an efficient manner. This project is intended to revolutionize chakali manufacturing by introducing automation, enhancing raw material traceability and delivering consistency in mass production.

DOI: 10.61137/ijsret.vol.11.issue1.169

Automated Hostel Management System
Authors:-Aravinth M, Nithin K

Abstract-The Hostel Management System (HMS) is an automated solution designed to streamline hostel operations, including student registration, room allocation, mess management, and attendance tracking. This system enhances efficiency, reduces manual workload, and ensures data security and accessibility. This paper presents an overview of the proposed system, its architecture, implementation, advantages, and future scope.For room allocation, Genetic Algorithm is used which allocates room to the students as per their preferences. Also, the web application consists of a generation of barcodes which can be used by the students to scan it while leaving/entering hostel premises. And the same can be used in mess also. Students will get endorsement notices in their mails which informs guardians about their ward’s presence in the hostel and their curricula using this model just in one touch. The student can raise leave requests as well as raise cleaning issues to the warden. The warden can monitor the student records and daily roll call list. The fee details and the due of the student can also be verified using this QR database management and inquiry method.

DOI: 10.61137/ijsret.vol.11.issue1.170

Innovative Drip Irrigation Techniques for Sustainable Agriculture
Authors:-Assistant Professor P. Sudheer Kumar, T. Chandrika, D. Sivanjaneyalu, M.Sumanth Reddy, Y.Venkata Suchithra, M.Deepak

Abstract-Drip irrigation is an advanced water delivery system designed to provide efficient irrigation by delivering water directly to the root zone of plants. 1This method involves a network of pipes, tubing, and emitters, ensuring that water is distributed evenly and precisely, minimizing water wastage. Compared to traditional irrigation methods, drip irrigation significantly reduces water consumption by preventing evaporation and runoff. Additionally, it promotes healthier plant growth by providing consistent moisture levels and reducing the risk of overwatering. This system is particularly beneficial for water-scarce regions and sustainable agriculture, offering advantages such as improved crop yields, reduced weed growth, and the efficient use of fertilizers. With its ability to optimize water usage and promote environmental sustainability, drip irrigation is a highly effective and cost-efficient solution for modern farming and gardening practices.

DOI: 10.61137/ijsret.vol.11.issue1.195

A Regression Model to Analyze the Impact of Macroeconomic Indicators on Bitcoin, Gold and the S&P500 Index
Authors:-Mayukh Ghosh

Abstract-This study examines the impact of key macroeconomic indicators—Consumer Price Index for All Urban Consumers (CPI-U) and Federal Reserve Rate (Fed Rate)—on the performance of Bitcoin (BTC), Gold (XAUUSD), and the S&P500. Through regression analysis, the research provides a comparative perspective on traditional and emerging asset classes (Wu, 2022). The findings indicate that inflation plays a dominant role in influencing asset prices, with the strongest effects observed in equities and Gold. Bitcoin, despite its perception as a digital hedge, exhibits moderate sensitivity to inflation alongside high volatility driven by speculative and external factors. The Fed Rate has a weaker influence on all three assets, particularly Bitcoin, suggesting that monetary policy alone does not dictate cryptocurrency price movements (Pinchuk, 2021). The study underscores the importance of inflation in shaping investment strategies, especially for traditional assets, while highlighting Bitcoin’s speculative nature. The research also introduces a model framework that can be adapted to assess various asset classes against different macroeconomic indicators. Future work should explore advanced analytical techniques and a broader set of variables to enhance market insights.

DOI: 10.61137/ijsret.vol.11.issue1.171

Green Solutions for Waste Water Management
Authors:-Assistant Professor P. Venkata Nagaraju, N Pavankumar Reddy, M Sathish, S Haseena Begum Munni , T Harinath

Abstract-Wastewater treatment is a crucial process for managing and purifying water contaminated by domestic, industrial, and commercial activities before it is safely discharged or reused. The treatment process involves multiple stages, including preliminary, primary, secondary, and tertiary treatment, each designed to remove solids, organic matter, harmful microorganisms, and chemical pollutants. 1Advanced techniques such as biological treatment, filtration, and disinfection further enhance water quality. Proper sludge management ensures the safe disposal or reuse of byproducts. Wastewater treatment plays a vital role in protecting public health, preserving ecosystems, and promoting sustainable water use. With growing concerns about water scarcity and pollution, innovative and efficient wastewater treatment technologies are increasingly essential for environmental sustainability and resource conservation.

DOI: 10.61137/ijsret.vol.11.issue1.192

Carbon Dioxide Utilization in Organic Synthesis
Authors:-Associate Professor Mr A Rajasekar Reddy

Abstract-Carbon dioxide (CO₂) is a sustainable, abundant, and non-toxic carbon feedstock, offering immense potential in organic synthesis. However, its thermodynamic stability and low reactivity necessitate innovative activation strategies. Recent advances have demonstrated CO₂’s utility in various transformations, including carboxylation, cycloaddition, hydrogenation, and carbonylation reactions. These processes enable the production of valuable compounds such as carboxylic acids, carbonates, carbamates, and heterocycles, often using transition metal catalysts, organocatalysts, or electrochemical methods. 1Catalytic systems such as metal complexes, N-heterocyclic carbenes, and metal-organic frameworks have been instrumental in overcoming the inherent challenges of CO₂ activation. Additionally, emerging approaches like electrocatalysis and photocatalysis provide sustainable pathways for CO₂ reduction and incorporation into organic frameworks. By converting a greenhouse gas into valuable products, CO₂ utilization not only addresses environmental concerns but also advances green chemistry. Ongoing efforts focus on improving reaction efficiency, selectivity, and scalability, paving the way for industrial applications and contributing to a circular carbon economy.

DOI: 10.61137/ijsret.vol.11.issue1.193

Calculating Rain Water Harvesting for a Building
Authors:-Research Scholar C.Chinna Suresh Babu, Professor C Rama Chandrudu, C.Shashidar B. Vasantha, K.Nagendra, T.Venkata Suresh, A.Gurappa

Abstract-Rainwater harvesting (RWH) is a sustainable method of collecting and storing rainwater for various uses, reducing dependence on conventional water sources. This paper discusses the potential for rainwater harvesting in buildings by calculating the amount of water that can be collected based on rooftop area, annual rainfall, and runoff efficiency. 1 The standard formula for estimating rainwater harvesting potential is outlined, considering key factors such as surface type and climatic conditions. Additionally, the benefits of RWH—including groundwater recharge, flood prevention, and cost savings—are highlighted. The study emphasizes the importance of designing efficient storage and filtration systems to maximize usability. Implementing RWH in urban and rural settings can contribute to water conservation and sustainability, making it a crucial component of modern water management strategies.

DOI: 10.61137/ijsret.vol.11.issue1.194

Empowering Marginalized Voices: The Influence of Muslim-Run Media Outlets in Shaping India’s Digital Public Sphere
Authors:-Anam Mobin, Professor Mohammad Shahid

Abstract-Muslim-run media outlets influence India’s online conversation by highlighting underrepresented voices, fighting false information, and encouraging open discussions. In India, the mainstream media is often accused of misleading or ignoring Muslim viewpoints. As a result, independent digital platforms created by and for Muslims have become important for sharing their stories, supporting their rights, and shaping their narratives. Independent internet platforms like TwoCircles.net and Maktoob Media are crucial spaces for representation, advocacy, and grassroots storytelling in India, while mainstream media have been condemned for reinforcing negative stereotypes and marginalizing Muslim voices. This study emphasizes the importance of editorial independence in unbiased reporting and helps us understand how independent Muslim media work in India’s changing digital ecosystem and how they democratize media representation and promote public equity.

DOI: 10.61137/ijsret.vol.11.issue1.172

Enhancing Collaborative Deep Learning with Swarm Intelligence and Federated Optimization
Authors:-Assistant Professor Dr. G. Babu, Sunil Kumar Nagar

Abstract-In the era of advanced artificial intelligence and machine learning, collaborative deep learning has emerged as a powerful approach to leverage distributed data and computational resources. However, a significant challenge that persists is ensuring the generalizability of models developed in collaborative environments. This project addresses the generalizability challenge in collaborative deep learning by proposing a novel framework that integrates advanced techniques in model training and validation. Deep learning models typically require data to be collected at a centralized location to learn effective representations, which introduces several issues such as communication costs and risks to data privacy. These issues are particularly critical in the case of clinical data, where patient privacy is paramount. In such contexts, distributed machine learning offers a viable solution where various data-holding sites can locally train a mutually agreed-upon model and share their knowledge. Federated learning (FL) facilitates this process using a client-server framework. Clients in the FL environment are independent small edge devices that retain their data locally, while the server acts as a central site that aggregates and distributes the knowledge learned by each client to others. The server receives locally trained weights from all participating clients, aggregates them, and then transfers the aggregated weights back to all clients before the next training round begins. This iterative process continues until the server achieves the desired accuracy. FL thus enables multiple clients to collaboratively train a shared global model without sharing their local data, preserving data privacy and addressing issues of limited data availability. However, FL faces challenges such as high communication costs for transferring weights, statistical data heterogeneity among clients, and the single point of failure of the server. Client heterogeneity arises mainly due to differences in data distribution among clients and their respective computational power. This project targets statistical data heterogeneity in the FL environment and proposes a simple yet effective attention-based approach to address this issue. Specifically, in the proposed setting, each client sends a mean representation to the centralized server along with the trained model’s weights. A similarity matrix is computed based on the similarity score of each client’s mean representation from every other participating client. This similarity matrix determines the weightage of each client’s model in the aggregated model. The centralized server computes the attention vector for each client using this similarity matrix and then broadcasts this attention vector to all clients. This attention mechanism is implemented both on the centralized server and the participating clients. We consider FedAvg, FedProx, and FedMomentum as baselines for comparison, and our proposed approach outperforms all of them. For statistical heterogeneity, we perform extensive experiments on FOOD101 and CIFAR10, demonstrating that our approachperforms well even with highly skewed data. To address the single point of failure issue in FL, we propose an efficient version of swarm learning. We demonstrate the effectiveness of context- aware swarm learning through experiments on the HAM10000 and ISIC Skin Lesion 2019 datasets. Additionally, to mitigate the high communication costs in FL, we propose BAFL (Federated Learning for Base Ablation), which introduces a fine-tuning approach to leverage the feature extraction ability of layers at different depths of deep neural networks. We evaluate the proposed approach using VGG-16 and ResNet-50 models on datasets including WBC, FOOD-101, and CIFAR-10, achieving up to two orders of magnitude reduction in total communication cost compared to conventional federated learning.

DOI: 10.61137/ijsret.vol.11.issue1.173

Detection of Ransomware Using Hardware-Based Honeypot Files with SMB Traps
Authors:-Abhirup Guha

Abstract-Ransomware attacks have escalated, posing significant threats to organizations by encrypting critical data and demanding ransoms. Traditional security measures often fall short against sophisticated ransomware variants. This paper explores the deployment of hardware-based honeypot files utilizing Server Message Block (SMB) traps as a proactive defense mechanism. By integrating deceptive SMB shares at the hardware level, organizations can detect, analyze, and mitigate ransomware activities more effectively.

DOI: 10.61137/ijsret.vol.11.issue1.174

Design and Development of Drone for Spraying Pesticides in Agricultural Lands
Authors:-Assistant Professor Siva Jothi S, Richard Lloid P, Suvarnalakshmi V, Ganesamoorthy S

Abstract-The design and development of a drone for spraying pesticides on agricultural lands have been described in this paper. The drone developed is a quadcopter integrated with a spraying mechanism. A quadcopter can be described as a mechanical device that can hover using propellers fitted into it is four arms. Hovering is achieved using one set of clockwise spinning propellers and another set of counter- clockwise spinning propellers that generate the thrust required to facilitate the taking off and hovering process. The agricultural industry contributes heavily to India’s GDP, thus making it one of the chief sources of revenue. It is the foundation of India’s economy and contributes to approximately one-fourth of its gross domestic product. It is inevitable that fertilizers and pesticides will be used to increase crop yields. However, few health-related problems can arise due to prolonged exposure to such chemicals during manual spraying. A few examples include mild skin irritation to congenital disabilities, changes in genetics, falling into a coma, or even death in severe cases. Drones have been used extensively in agriculture over the past few years. This paper describes the components required for the successful design and development of a quadcopter that can be utilized for spraying fertilizer on agricultural lands. The quadcopter is equipped with a container carrying a Direct Current water pump fitted with a pipe and nozzle arrangement. The liquid passes and is controlled using the instructions that the user provides the controller.

DOI: 10.61137/ijsret.vol.11.issue1.175

Artificial Intelligence in Business: From Research and Innovation to Market Deployment
Authors:-Associate Professor Dr Akhilesh Saini

Abstract-This paper examines the pivotal role of artificial intelligence (AI) in transforming business practices, tracing its evolution from foundational research and innovation to practical market deployment. As AI technologies rapidly advance, they are reshaping industries by enhancing productivity, enabling data-driven decision-making, and fostering the development of intelligent products and services. The study highlights the dual nature of AI’s impact, addressing both the opportunities it presents for economic growth and innovation, as well as the challenges and ethical considerations it raises for various stakeholders, including businesses, consumers, and policymakers. Through an analysis of key research breakthroughs and their implications for entrepreneurial activities, the paper identifies trends in AI start-ups and their contributions to the market. Ultimately, this research aims to provide a comprehensive understanding of how AI is not only revolutionizing business operations but also influencing the broader economic landscape, thereby offering valuable insights for practitioners and researchers alike. In recent years, the emergence of a multitude of intelligent products and services has sparked widespread interest in artificial intelligence (AI) and its commercial viability, raising critical questions about whether this trend represents genuine transformation or mere hype. This paper investigates the extensive implications of AI, exploring both its positive and negative impacts on governments, communities, companies, and individuals. By examining the journey of AI from research and innovation to market deployment, the study highlights significant academic achievements and innovations in the field, as well as their influence on entrepreneurial activities and the global market landscape. Additionally, the paper identifies key factors driving the advancement of AI technologies. To further explore entrepreneurial engagement with AI, two lists of the top 100 AI start-ups are analyzed. The findings aim to enhance understanding of AI innovations and their broader impact on businesses and society, ultimately providing insights into how AI can transform business operations and contribute to the global economy.

DOI: 10.61137/ijsret.vol.11.issue1.176

Vishwanath’s Law of Dynamic Mass-Energy Redistribution
Authors:-Vishwanath G.Barve

Abstract-This paper introduces Vishwanath’s Law of Dynamic Mass-Energy Redistribution, which proposes a novel framework to understand the adaptive behavior of mass in non-inertial reference frames. Traditional mass-energy equivalence fails to incorporate mass fluctuations due to high internal energy shifts and entropy variations. Using advanced tensor calculus and Lagrangian mechanics, we derive a modified mass-energy relationship. Applications in missile propulsion, quantum mechanics, and astrophysical anomalies are explored, providing new insights into mass-energy interactions.

DOI: 10.61137/ijsret.vol.11.issue1.177

Internship App for College
Authors:-Naman Singh, Tejas Ambekar

Abstract-The growing demand for internships among students has highlighted the need for an effective platform that connects students and teachers in a more organized manner. Currently, many colleges rely on WhatsApp groups to share internship opportunities, which often leads to confusion, missed messages, and a cluttered experience. This research proposes the development of an Internship Portal application designed to address these challenges by providing a dedicated space for students and teachers to manage internship postings and applications efficiently. The proposed Internship Portal aims to create a user-friendly application that allows students to browse available internships, apply directly, and keep track of their applications. Teachers will have the ability to post internship opportunities tailored to their students’ courses, ensuring that all relevant information is shared in an easily accessible format. By consolidating internship postings in one platform, we hope to eliminate the chaos of multiple messages in WhatsApp groups and create a streamlined process for both students and teachers. Another important aspect of this project is the focus on user experience. The application will feature a simple and intuitive interface that is easy to navigate, ensuring that both students and teachers can use the platform without difficulty. This is particularly important for students who may not be technologically savvy and need a straightforward solution to access internship information. By prioritizing user experience, we aim to encourage more students to engage with the platform and take advantage of the internship opportunities available to them.

Piezo Energy Harvesting Footstep Powered Electricity Genartion
Prof. C.K. Bakshi, Mr. Omkar R. Gaikwad, Mr. Atharva S. Alhate, Mrs. Siddhika S. Wagh, Mrs. Ritika R. Tayde
Authors:-Naman Singh, Tejas Ambekar

Abstract-Electricity usage is expanding at an exponential rate. This research recommends making use of human locomotion energy, which, despite being extractable, is largely wasted. This research presents an energy storage concept that employs human movement, skipping, and running as energy. The piezoelectric sensors are used in this innovative footstep power production system. The piezo sensors are positioned below the platform to generate a voltage from footstep. The sensors are arranged in such a way that maximum output voltage is generated, which is then sent to our monitoring circuitry. This energy is then stored in the batteries and can be used whenever it is convenient. A model like this is near suitable for India, which has a large pedestrian people. This method of generating charge and storing it for later use encourages an environmentally responsible approach to energy creation and the development of clean green energy.

Comparative Analysis of New VS Old Tax Regime
Authors:-Dr. Batani Raghavendra Rao, Rupesh M, Samruddhi Pattanashetti, Sanjay M, Shreevalli K M, Saravana Reddy Kunam, Shravana S Khodanpur, Shubham Pain, Simran Sharma

Abstract-This research paper conducts a comparative analysis of the old and new tax regimes for the financial year 2023-2024 in order to evaluate their impact on individual taxpayers, businesses, and government revenue. The study compares the main differences in tax slabs, deductions, and overall tax burden at different income levels. Further, it covers the compliance burden and administrative efficiency of both regimes, analysing how they affect taxpayer behaviour and economic decision making. This research will apply a combination of both qualitative and quantitative methodologies. The financial impact of each regime for different taxpayer groups is analysed by comparing tax liabilities under different income brackets, showing which regime provides more benefits for each group of taxpayers. Interviews and surveys with tax professionals and salaried people reveal information related to preferences, challenges, and practical implications associated with each regime. The study further analyses broader macroeconomic indicators, such as revenue generation, disposable income, and investment trends, in order to find out the broader economic implications of the tax reforms. The research results find that the old tax regime remains beneficial for those with significant investments that result in savings under the deduction sections: 80C, 80D, and HRA. The old regime is likable by high-income earners and those with complicated financial structures because it saves on taxes. On the other hand, middle-income earners and those without substantial investments prefer the new tax regime since it reduces complexity in tax filing and compliance. The new regime may also involve an increase in disposable income, which may fire up consumer spending, although it is less clear what the effect will be on long-term savings and investment patterns. This, therefore, implies that both regimes have their respective advantages and limitations, and the optimal choice would depend on an individual’s financial situation and tax saving strategy. Policymakers must continue to refine tax structures for better revenue generation and taxpayer convenience, ensuring economic stability. This detailed comparative assessment will help taxpayers make informed financial decisions and contribute to the ongoing discourse on tax policy improvements in India.

DOI: 10.61137/ijsret.vol.11.issue1.178

A Scientometric Analysis of Hemophilia Research: Evaluating the Current Status
Authors:-Dr. A. Vellaichamy, E. Amsan

Abstract-In the present study shows that global hemophilia research from 2018 to 2024, examining publication trends, authorship, collaboration, and citation impact. The study analysed that a steadily increase in research output, with 2024 being the most productive year (1,333 publications, 15.61%), followed by 2023 (1,279 publications, 14.98%). Articles (5,537 records) and reviews (1,339 records) are the dominant communication channels, while collaborative research is prevalent, with most papers having more than six authors (3,021). Most productive authors are Hermans, C. (165 papers) and Peyvandi, F. (146 papers), with European institutions leading contributions, alongside notable input from Japan. The United States is the leading contributor (2,414 papers, 28.27%), followed by the United Kingdom (9.72%) and Italy (9.67%), with China, Japan, and India also playing significant roles. Highly cited studies focus on immune checkpoint inhibitors, gene therapy, and RNA-based therapeutics, with the most cited article by Brahmer, Julie R., et al. (2018) having 2,761 citations. The study highlights the increasing global collaboration and evolving research priorities in hemophilia, emphasizing innovations in gene therapy and personalized medicine.

The Role of Authenticity in Consumer Purchase Decisions
Authors:-Vicky Prajapati, Neeraj Kumar Sharma

Abstract-Authenticity plays a crucial role in shaping consumer purchase decisions, influencing brand perception, trust, and overall satisfaction. In an era where consumers have access to vast information and numerous product choices, authenticity has emerged as a key differentiator for brands. This study explores the impact of authenticity on consumer behaviour, examining factors such as brand transparency, product originality, ethical practices, and emotional connection. By analysing consumer preferences and decision-making patterns, the research highlights how perceived authenticity fosters brand loyalty and drives purchasing intent. The findings suggest that businesses that prioritize authenticity in their branding, communication, and product offerings gain a competitive edge in the market. This study provides valuable insights for marketers and brand strategists aiming to build long-term consumer relationships based on trust and credibility.

DOI: 10.61137/ijsret.vol.11.issue1.179

Enhancing High-Performance Computing with Optimized Low-Power VLSI Circuits
Authors:-Arti Sahu, Professor Saima Khan, Professor Sandip Nemade, Dr. Divya jain

Abstract-The increasing demand for energy-efficient computing systems has propelled the research and development of low-power Very Large Scale Integration (VLSI) circuits, particularly in high-performance computing (HPC) applications. This paper explores a variety of design and optimization techniques aimed at minimizing power dissipation while maintaining high performance levels. We analyze key methodologies including Dynamic Voltage and Frequency Scaling (DVFS), multi-threshold voltage design, and power gating strategies that contribute to significant energy savings in VLSI architectures. The integration of these low-power techniques is crucial in responding to the rigorous challenges posed by growing transistor densities and the resultant heat dissipation concerns in modern computing systems. Furthermore, this research addresses the intersection of circuit-level optimizations with architectural design choices, offering insights into effective power management across various operational states. Through a comprehensive review of recent advances and case studies in low-power VLSI design, this paper underscores the critical importance of these innovations in meeting the evolving energy efficiency requirements of high-performance computing platforms, ensuring sustainability and cost-effectiveness in future technological landscapes.

Intelligent Pattern Based Communication Management Networking
Authors:-Nikhil A Rawool

Abstract-Network connection for systems with purpose of exchanging with collection of Mobile communication system with ground operating surface for allowing mobile devices with telecommunication network for transmitting data with use of underground devices While the research paper focuses on Self – evolving method for featuring Time – series analysis with use of magnetic field of lines for self-adaptive signaling recombining and readvancing patterns for distribution and maintaining automated Rekeying Technology for Wireless Communication system . Intelligent Ecosystem Networking with the use of Cloud or Hybrid Cloud environments with the future of wireless communication network involves solutions for users, applications and devices involving identity management with securing adaptive access, identifying governance and user experience with use of self – evolving patterns for allowing mobile communication while transmitting network through all medium. The Main objective of the paper is Readvancing patterns for self-adaptive signaling following approach for distribution patterns.

DOI: 10.61137/ijsret.vol.11.issue1.180

Automated Fish Feeding System for Nursing Ponds
Authors:-Christine Mae P. Niez, Lord Joseph T. Araneta, Ronden A. Donato, Jasson N. Collantes, Jacquelyn R. Mozo, Romel M. Sapitanan

Abstract-Feeding the fish at a very specified schedule has proven to be a really complicated task for the aquaculture farmers. This study aimed to develop an automated fish feeding system for nursing ponds. A functionality test was used in the conduct of the study. The automated fish feeding system used Arduino IDE to code the features such as delivering feeds, time interval, and the servo motors spin. Based on the results of the study, the automated fish feeding system had successfully passed the overall functionality test on its feeding mechanism in terms of delivering feeds, time interval, the servo motors spin and the system programming. Furthermore, the result showed that the actual masses of feeds dispensed on each aquarium had no significant difference compared to masses of feeds set on the device. The automated fish feeding system has the potential to greatly benefit aquaculture farmers by ensuring consistent and precise feeding schedules, reducing human intervention, optimizing feed usage, and promoting healthier fish growth, ultimately improving productivity and profitability.

Facial Emotion Detection Using Machine Leaning
Authors:-Sachin Mhaske, Vighnesh Thigale

Abstract-Facial emotion detection is an emerging field that leverages artificial intelligence (AI), machine learning, and computer vision to recognize and interpret human emotions based on facial expressions. This study explores the effectiveness of deep learning models, such as Convolutional Neural Networks (CNNs), in identifying emotions like happiness, sadness, anger, fear, surprise, and neutrality. The system’s applications span healthcare, marketing, security, and human-computer interaction. However, challenges such as cultural variability in expressions, mixed emotions, and privacy concerns necessitate further improvements. This research aims to enhance facial emotion detection by addressing accuracy, ethical considerations, and real-world implementation. The purpose of this is to make a study on recent work on automatic facial emotion recognition In deep learning. There are many different techniques for recognizing human emotion.

Effect of Variation in Gas Composition on the Growth Density and Size of the Carbon Nanostructures Deposited by RF-PECVD
Authors:-Dr. B. Purna Chandra Rao, R. Hari Babu, Dr.K Subbarao, V.Durga Prasadu, Dr. A. R. K. Murthy

Abstract-A focus on synthesizing different types of two-dimensional Carbon nanostructures using Methane and Argon without catalyst has been conducted in Radio Frequency Plasma Enhanced Chemical Vapor Deposition. This study reports the variation in growth density, size and morphological characteristics of Carbon nanostructures by varying the gas compositions. Field Emission Scanning Electron Microcopy (FE-SEM) and Atomic Force Microscopy (AFM) studies shows the high percentage of Methane gas in the composition is directly proportional to the density and inversely proportional to the size of the nanostructure. We report that the concentration of Methane usually offers more carbon species or driving force for the growth of the two-dimensional carbon nanostructures. This process enables to increase the density and decreases the size of the nanostructures. The results of Raman spectroscopy show the typical carbon features at 1321,1571 and 2639cm-1 respectively. The intensity ratio of these two peaks ID/IG increases with increase in the Methane gas percentage in the composition indicates the nanocrystalline nature of two-dimensional carbon nanostructures with a large number of defects.

DOI: 10.61137/ijsret.vol.11.issue1.181

Development of a Framework for Measurement of Municipal Construction Project Performance in Delta State, Nigeria
Authors:-Nancy Rosemary Amede, Professor Uche Ajator

Abstract-Performance measurement is essential for improving decision-making, aligning project outcomes with stakeholder’s objectives, and driving future improvements. In the context of municipal construction projects, construction sector in Nigeria in general, and Delta State in particular faces persistent challenges, including with delays, cost overruns, and failure in operational performance and stakeholders dissatisfaction these challenges underscore the need for comprehensive system that incorporates Critical Success Factors (CSF), Performance Measures (PMs), and Success Metrics to ensure project efficiency and stakeholder’s satisfaction. Hence, the goal of this research is to develop framework tailored to Delta State municipal construction sector. It identifies challenges; explore best practices from developed countries, and leverages input from key stakeholders. Data collected through surveys and analyzed using statistical tools, including mean analysis and ANOVA, informed the framework’s development. Findings reveal that significant gaps in performance measurement practices in the study area, highlighting the absence of a holistic approach to managing municipal construction projects. The proposed framework will address these gaps by offering a structured, stakeholder-focused approach to project evaluation. This research contributes to improving the effectiveness of municipal projects and offers a foundation for future studies on performance measurements in developing countries.

Mineral Mapping of Moon Using Chandrayaan-2: Review Paper
Authors:-Saurabh S Joshi, Md. Zeeshan R, Ganesh B Dongre, Shashikant R Dikle

Abstract-Lunar mineral mapping is crucial for understanding the Moon’s formation, geological evolution, and resource potential. This review paper examines the significant contributions of the Chandrayaan-2 mission to this field. Prior to Chandrayaan-2, missions like Clementine and Chandrayaan-1 provided foundational mineralogical data, revealing the Moon’s diverse composition dominated by minerals such as plagioclase feldspar, pyroxenes, and olivine, with regional variations reflecting magmatic differentiation and impact processes. Chandrayaan-2, equipped with advanced instruments including the Imaging Infrared Spectrometer (IIRS), significantly enhanced lunar mineral mapping capabilities. This review synthesizes key findings from Chandrayaan-2, highlighting its high-resolution spectral and spatial data that have refined our understanding of mineral distribution across the lunar surface. Methodologies employed encompass sophisticated spectral unmixing and analysis techniques applied to IIRS data, enabling the identification and mapping of subtle mineralogical variations, including hydration features and the composition of lunar geological units. The improved mineral maps generated by Chandrayaan-2 have profound implications for future lunar exploration, resource utilization strategies, and a more nuanced comprehension of planetary formation processes within our solar system. This paper underscores the enduring legacy of Chandrayaan- 2 in advancing lunar science.

DOI: 10.61137/ijsret.vol.11.issue1.182

Steganography
Authors:-Prem Balani, Tanmay Ambekar

Abstract-Steganography is a technique of hiding secret information within an innocuous carrier such as text, image, audio or video. Its purpose is to conceal the existence of the message and to prevent detection by an eavesdropper. Steganography has gained popularity as a means of secure communication due to its ability to hide the message in plain sight. This paper provides an overview of the concept of steganography, its history, and its applications. It also discusses different types of steganographic techniques, such as least significant bit (LSB) embedding and transform domain techniques. The paper then examines the importance and limitations of steganography, such as the security and legal compliance, and the vulnerability to attacks. Finally, the paper explores some of the emerging trends in steganography research, the difference between steganography and cryptography and real-life examples. Overall, this paper provides a comprehensive understanding of steganography, its applications, advantages, and future directions.

The Use Social Media Platforms and Learners’ Classroom Engagement
Authors:-Aberia, Charllote, Beros, Lalaine Cyril Mae

Abstract-communication, collaboration, and the sharing of ideas. It can also help students develop critical thinking and digital literacy skills. The prevalence of social media in modern society has raised questions about its implications for educational contexts. This study aims to investigate whether social media usage contributes positively to classroom engagement or serves as a distraction. The primary objectives are to analyze patterns of usage, identify benefits and drawbacks, and propose methods for effective integration. A quantitative-descriptive research design was utilized to investigate social media engagement levels and academic performance among elementary pupils at Eugenio A. Abunda Sr. Elementary School during the 2024-2025 school year. This research tries to conduct an investigation by paying attention to and considering the Profile of Respondents According to Reading Level which consists of Reading Level which consists of Frustration, Instructional, Independent. In this study, the data was divided into various categories of respondents. This aligns with Sivakumar (2020), who characterized social media engagement as an obsessive fixation with social media and an insatiable desire to access or utilize it. The notion of social media engagement as a condition of reliance leading to excessive use and difficulties in abstaining resonates with the observed moderate cognitive engagement among respondents.

A Study of Anatomy of Breast Cancer Detection and Diagnosis Using a Support Vector Machine and a Convolutional Network
Authors:-Research Scholar Ishu Goel, Associate Professor Dr Ravindra Kumar Vishwakarma

Abstract-This study investigates the effectiveness of integrating Support Vector Machines (SVM) and Convolutional Neural Networks (CNN) for the diagnosis of breast cancer through mammographic image analysis. Recognizing breast cancer as a leading cause of mortality among women, early and accurate detection is crucial for better treatment outcomes. The research focuses on the development of a hybrid model that leverages the strengths of both SVM for classification and CNN for feature extraction. The model is tested on a comprehensive dataset of mammographic images, employing advanced preprocessing techniques to enhance image quality and reduce noise. It meticulously compares the performance metrics, such as accuracy, sensitivity, and specificity, of the proposed hybrid approach against traditional methods. Initial findings indicate the hybrid model outperforms individual classifiers in terms of diagnostic accuracy, showcasing its potential application in clinical settings for effective breast cancer screening. This research not only contributes to understanding the anatomical nuances in imaging but also emphasizes the importance of machine learning in medical diagnostics, paving the way for enhanced early detection strategies.

A Study on the Factors Affecting Quality of Work Life of Women Employees in the Education Sector
Authors:-Assistant Professor Priyanka Tripathi, Assistant Professor Sushma Singh

Abstract-The quality of work life (QWL) is a critical aspect of employee satisfaction, productivity, and overall well-being. In the education sector, where women constitute a significant portion of the workforce, understanding the factors that influence their QWL is essential for fostering a conductive work environment. This research paper aims to explore the various factors affecting the QWL of women employees in the education sector, including work- life balance, job satisfaction, organizational support, career development opportunities, and workplace culture. The study employs a mixed- methods approach, combining quantitative surveys and qualitative interviews to gather comprehensive data. The findings reveal that work-life balance, organizational support, and career development opportunities are the most significant factors influencing QWL. The paper concludes with recommendations for educational institutions to enhance the QWL of women employees, thereby improving their overall job satisfaction and productivity.

Industrial Pollution: A Global Challenge
Authors:-Himanshu Pawar, Sanskriti Singh

Abstract-Industrial pollution is a major global issue affecting human health, the environment, and economic development. This paper explores the pervasive nature of industrial pollution, particularly its impact on developing nations, and presents an analysis of its sources, types, health, and environmental consequences. The paper highlights the significant challenges posed by industrial pollutants, such as heavy metals, particulate matter, and chemical discharges, that affect air, water, and soil quality. It further emphasizes the importance of technological innovations, stringent regulations, and international cooperation in mitigating industrial pollution. Ultimately, a transition toward sustainable production and consumption is crucial to addressing this global crisis and ensuring a more equitable future for all nations.

Student Management System
Authors:-Sairaj Pabale, Aniket Yamgar

Abstract-The Student Management System (SMS) is a revolutionary web-based system aimed at simplifying the management of student-related information with unparalleled ease. As a central repository for schools, SMS makes it easy to manage student records, attendance, grades, and academic progress.With the frontend designed based on HTML, CSS, and JavaScript, the system provides an interactive and responsive user interface that fascinates its users. The strong backend, developed in Java, proficiently handles business logic and handles API requests, while MySQL provides secure and organized data storage.This study explores the system’s architecture, development process, security measures, and performance criteria. Through extensive testing, the system has established its outstanding capability to handle vast student datasets with the utmost level of security and scalability. Amidst an environment where efficiency and reliability are most valued, the SMS is an anchor of contemporary educational management.

Exploring Clustering Techniques: Hierarchical VS. K-Means in Unsupervised Learning
Authors:-Research Scholar G.DIVYA, Associate Professor Dr.V.Maniraj

Abstract-Unsupervised learning algorithms play a crucial role in discovering hidden patterns and structures within the data This paper delves into two prominent clustering approaches K-means and Hierarchical clustering. Evaluating their performance, strengths and weakness and their methodology and their process. The results highlight the strength of Hierarchical clustering in identifying complex clusters and k-means in handling well separated clusters. This study provides the insights for choosing the suitable algorithm for specific clustering tasks.

Clinical Evaluation of Saussurea-costus in the Treatment of Respiratory and Digestive Disorders: A Study on 50 Patients
Authors:-Lecturer Dr. Salim Khan Yunus Khan, Associate Professor Dr Shaikh Mohd Naeem Rafiuddin, Associate Professor Dr. Saba Nazli Md Masood, Associate Professor Dr Parveen Akhtar Shaukat Ali

Abstract-Saussurea costus (قسط, ہندی عود) is a medicinal herb widely used in traditional medicine, including Ayurveda, Unani, and Chinese medicine, for its therapeutic effects on respiratory and digestive ailments. This study aims to evaluate the efficacy and safety of Saussurea costus in a cohort of 50 patients suffering from chronic respiratory or digestive conditions. The study employs a randomized clinical trial (RCT) approach, analyzing symptomatic relief, biochemical markers, and side effects over a 12-week treatment period. The findings suggest significant improvements in patient conditions with minimal side effects, supporting the continued use and potential integration of Saussurea costus in modern therapeutic applications.

Blockchain and E-Voting Systems: A Review of Progress and Research Opportunities
Authors:-Nikhlesh Kumar Badoga, Sumesh Sood

Abstract-In modern society, electronic and online voting systems are emerging as significant advancements in electoral technology, offering the potential to reduce organizational costs and increase voter turnout. Electronic Voting Machines (EVMs) have already revolutionized the electoral process by improving voter participation and enhancing the speed and accuracy of elections compared to traditional methods like paper ballots, punch card voting, and optical scan systems. These conventional approaches often face challenges such as fraud, voter manipulation, inaccuracies, and inefficiencies. Similarly, online voting systems promise to further streamline elections by eliminating the need for physical infrastructure, enabling voters to cast their votes from any location with internet access. However, despite their advantages, online voting solutions are met with caution due to vulnerabilities to cybersecurity threats. Risks such as Man-in-the-Middle (MitM) attacks, Denial-of-Service (DoS) attacks, and malware injection jeopardize the integrity and reliability of elections, highlighting the need for more secure and robust solutions. Blockchain technology offers a transformative approach to modernizing voting systems by providing a decentralized, transparent, and tamper-proof framework. Its decentralized architecture eliminates single points of failure, ensuring higher levels of security and reliability. This paper explores how blockchain technology addresses the limitations of conventional voting systems, including EVMs and online voting systems, by leveraging its inherent characteristics—speed, accuracy, immutability, and transparency. By distributing control across a network of nodes, blockchain-based voting systems enhance the integrity, accessibility, and trustworthiness of elections. Furthermore, the paper examines the potential of blockchain to modernize the existing voting framework, significantly improving the efficiency and trust in electoral processes while safeguarding democratic values in the digital age.

DOI: 10.61137/ijsret.vol.11.issue1.183

Solar Based Seed Sowing Robat
Authors:-Ms.Deepanjali Chitalkar, Mr.Ashutosh Bari, Ms.Tejaswini Chaudhari, Mr.Aniket Tele

Abstract-In India nearly about 70 percentage of people are depending on agriculture. Numerous operations are performed in the agricultural field like seed sowing, grass cutting, ploughing etc. The present methods of seed sowing, pesticide spraying and grass cutting are difficult. The equipment’s used for above actions are expensive and inconvenient to handle. So the agricultural system in India should be encouraged by developing a system which will reduce the man power and time. This work aims to design, develop and design of the robot which can sow the seeds, cut the grass and spray the pesticides, this whole system is powered by solar energy. The designed robot gets energy from solar panel and is operated using Bluetooth/Android App which sends the signals to the robot for required mechanisms and movement of the robot. This increases the efficiency of seed sowing, pesticide spraying and grass cutting and also reduces the problem encountered in manual planting.

NextGen LMS: Empowering Personalized Education Solutions
Authors:-Dr. M. Senthilkumar, PG.Gayathri, S.Rithika, S.Rosini, C.Vinothini

Abstract-In order to provide a structured and interactive learning environment, a Learning Management System (LMS) is essential to modern education and training. This project entails designing and developing a feature-rich LMS using Django for backend development and Tailwind CSS for a responsive and user-friendly interface. The system offers a centralized dashboard for administrators, instructors, and students, integrating essential functionalities like secure user authentication, dynamic course enrollment, and real-time attendance tracking. The platform enhances the learning experience by enabling personalized learning pathways, robust assessment tools, automated certification, and role- based access control for administrators, instructors, and students. The LMS is built with scalability and seamless third- party integrations, including payment gateways and video conferencing solutions, supporting both self-paced and instructor-led learning models. This LMS solution is intended to transform online learning by creating an efficient and captivating digital learning ecosystem. By emphasizing usability, security, and efficiency, this project seeks to improve educational outcomes, automate administrative workflows, and increase learner engagement. Django integration guarantees a stable and scalable backend, while Tailwind CSS offers an aesthetically pleasing and highly responsive design.

DOI: 10.61137/ijsret.vol.11.issue1.184

AR-Tifact-Genai and AR in Cultural Heritage
Authors:-Dr. K. Baskar, Mr. R. Sathyaraj, N. Prashanth, M. Vishwanathan, S. Yogeshkumar

Abstract-Developing a GenAI-enabled AR platform for museums to offer personalized, interactive experiences, enhancing visitor engagement and educational value, thereby preserving and promoting the heritage and culture of the nation. The system proposes the development of a novel GenAI-enabled Augmented Reality (AR) platform tailored for museums, aimed at delivering personalized and interactive experiences to visitors. Leveraging Unity Vuforia Area Target/Image Target technology, C# API, GenAI, langchain, and the OpenAI API, the platform seeks to revolutionize traditional museum visits by offering enhanced engagement and educational value. While existing solutions such as audio guides, mobile apps, and interactive displays have improved visitor experiences, they often lack interactivity and personalization. The proposed platform addresses these limitations by employing Generative AI to power a virtual assistant that delivers detailed information about exhibits and aids in navigation. Accessible via a cross- platform AR application on web, Android, and iOS devices, the solution promises to create a more immersive and enriching museum experience, ultimately contributing to the preservation and promotion of cultural heritage.

DOI: 10.61137/ijsret.vol.11.issue1.185

Enhanced Robust Control of a 3-DOF Helicopter System Utilizing an Unknown Input Observer
Authors:-Ashis De, Barun Mazumdar, Sandip Karmakar, Anjani Kumari Shaw, Bristi Mondal, Debjani Bar

Abstract-In this paper, a generalized matrix inverse-based unknown input observer (UIO) has been developed for a benchmark 3-DOF helicopter system to manage unknown, time-varying nonlinear dynamics and disturbances. The goal is to ensure the helicopter accurately follows the specified elevation and pitch references. To achieve this, we introduce a novel, simplified UIO to estimate the combined unknown dynamics, which are subsequently incorporated into the control design as a compensator. By introducing an auxiliary system, an invariant manifold is derived and utilized in the UIO design. The full-order observer, constructed using the g-inverse, is expanded and implemented to achieve this purpose. This new estimator requires setting only a single scalar and achieves exponential convergence. Consequently, the proposed control design utilizing the estimator can achieve precise output tracking. This control method is implemented on a benchmark 3-DOF helicopter, and its efficacy is validated through simulations and results.

DOI: 10.61137/ijsret.vol.11.issue1.186

Resume Screening Using Natural Language Processing
Authors:-Omkar Singh, Femenca Noroaha, Sravani Nirati, Sweety Rawa, Anjali Rasal

Abstract-The paper presents a solution to the issue of manually filtering out resumes from a large number of applications on the internet. The system uses Natural Language Processing to extract relevant information from unstructured resumes, creating a summarised form of each application. This simplifies the screening process and allows recruiters to analyze each resume in less time better. After the text mining process, the solution employs a vectorization model and uses cosine similarity to match each resume with the job description. The calculated ranking scores can then be used to determine the best-fitting candidates for a specific job opening. This approach addresses the challenges of manual filtering and fairness in resume screening, ensuring that the right candidates are selected for the job.

Advanced Encryption Methods for Enhancement in Safety of Big Data Using Cloud Computing
Authors:-Assistant Professor Ms. Nidhi Ruhil, Assistant Professor Ms. Ankita

Abstract-Big data is a combination of structured, semi structured and unstructured data. Also we discuss about intrusion detection system. The introduction of Big Data into the field of information technology has made the process of managing and analyzing data a great deal more difficult. It is essential to take everything into consideration, including aspects such as volume, diversity, pace, importance, and complexity. The processing of enormous amounts of data is simplified with the use of clustering. When dealing with unstructured data, this is a very useful skill to have. It is possible to offer a wide range of computer services, such as servers, storage, databases, and networking, in addition to analytics and intelligence, at a cheaper cost by using cloud computing, which makes use of the Internet as its delivery route. This makes it feasible to give a variety of cloud services at a reduced cost. The protection of such vast quantities of data is the primary challenge.

Water Level Management System Using GSM Technology
Authors:-Omkar Rajesh Shirsat, Nidhi Piyush Shah

Abstract-In the past few decades urbanization has seen an exponential growth. This gave rise to idea of ‘Smart Cities. The ‘Water level management system using GSM technology’ Model introduces a cutting-edge approach to tackle the escalating challenges of urban water management. In response to the burgeoning urbanization and burgeoning fresh water usage, conventional water management systems have proven insufficient. This model harnesses hardware and software technology to create an intelligent and efficient water management system. The core of the system comprises an array of electronic sensors strategically positioned in water storage tanks, continuously monitoring water level in real-time. These sensors communicate with a centralized server through a network, providing live updates on water level on one or more devices. The proposed model includes deployment of prototype of actual model which helps to reduces the water wastage.

Yatra Saathi – Study of Travel Tourism Planner
Authors:-Pushpendra Verma, Manish Nagar, Nitesh Solanki, Nikhil, Krapali

Abstract-The following research work captures the development of Travel Tourism Planner Application – An integrated system for effective trip planning. It provides an LBS feature which enhances the pace of planning, personalization and creating efficiency in traveling among the users. Form for trip planning. The application integrates location-based services, which empower users to effectively plan, customize, and optimize their travel experiences. The frontend of our application is developed in HTML, CSS, and JavaScript; however, to enable us to develop our application for various platforms and still be compatible, we use a platform called React. The backend uses Node.js and Express.js to facilitate communication with external APIs like Sky Scanner, Booking.com, & Google Maps, to offer live data. Developed with an Agile approach, this application is well optimized for user experience, secure and performance oriented. Measures of user security comprising of Auth 2.0 for user’s authenticate and SSL/TLS for protection of users’ data have been established. In addition to that, there is the use of features like lazy loading and code mini fication for improvement of the performance. In regard to this, this paper shall give an account of the development process of the system alongside the various difficulties faced and measures put in place to contain the. It seeks to focus on tool design and development processes that lead to a credible and effective travel planner for today’s travelers.

Synthesis and Characterization of Poly Vinyl Alcohol (PVA) Based Nano Composites Using Silver (Ag) Nanoparticles, Aimed at Improving the Performance Characteristics of Footwear Insoles
Authors:-Research Scholar Preeti Sahu, Professor Dr. N.P. Rathore

Abstract-The study focuses on the development and analysis of polyvinyl alcohol (PVA) nanocomposites incorporating silver (Ag) nanoparticles, aimed at improving the performance characteristics of footwear insoles. The thesis abstract presents a comprehensive overview of research dedicated to the formulation and evaluation of polyvinyl alcohol (PVA) nanocomposites infused with silver (Ag) nanoparticles, with the primary objective of enhancing the functional properties of insoles used in footwear. The introduction outlines the significance of integrating nanotechnology into material science, particularly in the context of footwear applications, where comfort and durability are paramount. The materials and methods section details the synthesis of PVA nanocomposites, the incorporation of Ag nanoparticles, and the various analytical techniques employed to assess their performance characteristics. The conclusion summarizes the findings, highlighting the potential of these nanocomposites to significantly improve the quality and longevity of footwear insoles, thereby contributing to advancements in the field of wearable technology.

DOI: 10.61137/ijsret.vol.11.issue1.187

Heart Disease Prediction Using Machine Learning
Authors:-Joshua Adewole, Dr. Patrick S. Olayiwola

Abstract-This research focuses on using machine learning and data analysis tools to determine the possibility of a heart disease problem in an individual. A predictive model for Heart diseases using XGBoost was developed using features from blood sample tests and habitual factors. Several other models were used to validate the efficiency of the result from the XGBoost model. The performance of the model was then evaluated and finally a web application with an intuitive user interface was developed to serve the model for public use. XGBoost model is under a family of extreme gradient boosting models – which are known for remarkable results. Hence, it was used in this project as a classification tool. With an accuracy of over 90%, XGBoost was able to successfully classify the result, other models fell short within ranges of -2 to -20%; therefore, even further justifying the use of XGBoost. A web application was then hosted allowing medical practitioners and public users, run their features and get results on the possibility of a heart disease problem. In conclusion, the model was sufficient enough to yield possibilities of a heart disease problem which is in that regard, successful. Albeit, future work would be needed on further making variations on the interface – mobile, desktop e.t.c. making such solutions more accessible, and also including more important fields – especially habitual factors like sleep schedule etc.

Green Synthesis and Characterisation of Iron and Cobalt Oxide Nanoparticles Using Piper Dravidii Leaves Extract
Authors:-Yogita Shinde

Abstract-Manufacturing green nanoparticles is a safe, secure, and promising technique. In the current study, piper dravidii leaves extract was used to prepare iron oxide nanoparticles (Fe2O3-NPs) and cobalt oxide nanoparticles (CoO-NPs). UV-visible spectroscopy, scanning electron microscopy (SEM), dynamic light scattering (DLS), vibrating sample magnetometer (VSM), and differential scanning calorimetry (DSC) were used to evaluate the produced Fe2O3-NPs and CoO-NPs. The surface plasmon resonance effect was used to validate the synthesis of FeONPs. FeONPs have an average particle size of about 163.5 nm, a polydispersity index of 0.091, and a zeta potential of -13.8 mV, according to dynamic light scattering (DLS). At 176.91°C, differential scanning calorimetry (DSC) revealed an endothermic peak. With a magnetization value of 3.483 emu/g at ambient temperature, iron nanoparticles were shown to have superparamagnetic characteristics by the Vibrating Sample Magnetometer (VSM) examination, suggesting that they might be used in a magnetically targeted medication delivery system. It has been shown that this biosynthetic method is economical, environmentally benign, and has a lot of potential for use in biomedical research.

DOI: 10.61137/ijsret.vol.11.issue1.188

Smart GFM Monitoring System Using AI and ML
Authors:-Prachi Navnath Khartode, Sanika Sandeep Sawalkar, Sakshi Jitendra Wakade, Vidya Sandeep Ahire

Abstract-This paper presents a solution to the inefficiencies of traditional manual attendance systems by proposing a face recognition-based attendance system. project aims to enhance the manual attendance process by using a mobile platform and face recognition technology. The design consists of three main modules: inputting attendance information, signing in with facial recognition, and maintaining attendance records. It begins by explaining the principles of face detection and classification, followed by an analysis of how to build a face recognition classifier. The system is then implemented on an Android platform, allowing for practical use in workplaces.

DOI: 10.61137/ijsret.vol.11.issue1.189

Gravity Location Model of Blood Supply Chain Network Design: A Case Analysis
Authors:-Research Scholar Namita Rani Mall

Abstract-The gravity model to the blood supply chain is a conceptual framework that seeks to explain and optimize the distribution of blood products within a healthcare system. It is useful when identifying suitable geographical location within arrange. It is also used to find location that minimizes the cost of transporting raw material from the supplier and finished goods to the markets served. This model also assumes that the transportation cost grows linearly with the quantity shipped. All distances are calculated as the geometric distance between two points on the plane. Using a numerical example, the applicability of the proposed network is analyzed.

DOI: 10.61137/ijsret.vol.11.issue1.190

Integration of Electric Vehicles in Smart Grid: A Comprehensive Analysis
Authors:-Sushil Kumar Panda

Abstract-A rapid shift towards sustainability and clean energy is evident in this decade. The fervent adoption of EVs is acting as a catalyst for the same. Technologies such as smart power grids, communication, V2G, and integration systems render market growth—EVs as mobile power systems can serve as a potential market in the coming years. The paper focuses on the current scenario’s innovative grid technologies, VGI, and the literature on ML algorithms that aid in optimizing the integration configurations. The paper proposes a popular ML model in various bright grid areas that make VGI feasible.

Deep Learning Approaches in Solving Battery Health Problems in Electrical Vehicles
Authors:-Sushil Kumar Panda

Abstract-EVs offer technology and a smooth driving experience while reducing tailpipe emissions. EV adoption has been increasing both by volume and market share. Batteries and Battery technology constitute vital components of smooth functioning. However, battery degeneration and practical management issues remain significant challenges in the EV industry. Evolving Deep learning and machine learning approaches are being applied to solve these challenges. The current study focuses on using deep learning approaches to battery health management and explores the role of neural networks in predicting battery health.

EV Power Train Market Trends and Impact of Battery Management System on Powertrain Performance
Authors:-Sushil Kumar Panda

Abstract-The Market is on the rise now due to the heavy adoption of clean energy and the availability of flexible options for all target consumers. The EV market is gaining a grip in the automotive industry due to new innovations around battery technologies. It reviews the market trends, challenges and strengths of the ICE and EV powertrain in the current global market. The paper focuses on Powertrain performance and its relationship with battery optimization. The Tesla 3 Long Range Model is studied and analysed to find out the impact of battery performance on Power train performance.

A MWB Antenna Design with Tunable Notch Band for 5G Communication
Authors:-Madhuraneni Sai Dinesh, Sare Kulayappa, Thumu Sashidar, Mr.R.Venkatesan

Abstract-A Multiple Input Multiple output (MIMO)-fed circular slot antenna with wide tunable dual band-notched function and frequency reconfigurable characteristic is designed, and its performance is verified experimentally for high-frequency millimeter-waveband (MWB) communication 6G application s. The dual band-notched function is achieved by using an Ring-shapedresonator inserted the circular ring radiation patch and by etching a parallel stub loaded resonator in the MIMO transmission line. There are a wide range of approaches that have been advanced in the literature for adding reconfiguration to metamaterial devices all the way from the RF through the optical regimes, but some techniques are useful only for certain wavelength bands. A tunable range of almost one octave can be achieved if the R-SRR is loaded in its center with a slot. Furthermore, it has been demonstrated that a reconfigurable device can be achieved if a pair of shunt connected slots are introduced across the slots of the host MIMO. This feature, in conjunction with the tunability of a loaded R-SRR, has been used to achieve a reconfigurable and tunable structure. Finally, in order to demonstrate the potential 6G application of the proposed structure, a MWB antenna design with tunable notch band for Future 6G Communications. The design methodology has been validated through electromagnetic simulations.

DOI: 10.61137/ijsret.vol.11.issue1.191

Performance Evaluation and Analysis of Cement Stabilized Fly Ash–GBFS Mixes as A Highway Construction Material
Authors:-Aman Ghagre, Professor Shashikant B. Dhobale

Abstract-Fly ash and granulated blast furnace slag (GBFS) are major by-products of thermal and steel plants, respectively. These materials often cause disposal problems and environmental pollution. Detailed laboratory investigations were carried out on cement stabilized fly ash-(GBFS) mixes in order to find out its suitability for road embankments, and for base and sub-base courses of highway pavements. Proctor compaction test, unconfined compressive strength (UCS) test and California Bearing Ratio (CBR) test were conducted on cement stabilized fly ash-GBFS mixes as per the Indian Standard Code of Practice. Cement content in the mix was varied from 0% to 8% at 2% intervals, whereas the slag content was varied as 0%, 10%, 20%, 30% and 40%. Test results show that an increase of either cement or GBFS content in the mixture, results in increase of maximum dry density (MDD) and decrease of optimum moisture content (OMC) of the compacted mixture. The MDD of the cement stabilized fly ash-GBFS mixture is comparably lower than that of similarly graded natural inorganic soil of sand to silt size. This is advantageous in constructing lightweight embankments over soft, compressible soils. An increase in percentage of cement in the fly ash-GBFS mix increases enormously the CBR value. Also an increase of the amount of GBFS in the fly ash sample with fixed cement content improves the CBR value of the stabilized mix. In the present study, the maximum CBR value of compacted fly ash-GBFS-cement (52:40:8) mixture obtained was 105%, indicating its suitability for use in base and sub-base courses in highway pavements with proper combinations of raw materials.

Road Safety Audit Based Design Issues Mitigation Plan in 4 Laning of Khalghat –MP/ Maharashtra Border Section of NH-52 (Old NH-3)
Authors:-Prince Kumar, Professor Shashikant B. Dhobale

Abstract-Transportation plays a key role in the development of an area, but it happens only when the transportation is safe, rapid, comfortable and economy. A road is considered safe when only a few, or no accidents occur. Road and its surroundings, road users and vehicles are the elements contributing to road accidents. Pedestrians, bicyclists and two-wheeler motorized riders are the vulnerable road users. The loss of human life due to accident is to be avoided. Road safety audit (RSA) is a formal procedure for assessing accident potential and safety performance in the provision of new road schemes and schemes for the improvement and maintenance of existing roads. These Audit studies or analysis give scope for the reduction of accidents and helps us to provide safe, self-explaining and forgiving roads. By this we can save the precious human life as well as the nation’s economy. The selected for this study is part of 4 Laning of Khalghat – MP/ Maharashtra Border Section of NH-52 (Old NH-3). Knowledge of accidents that have occurred on roads helps us to improve the design of the roads or to influence the behavior of road users, so that similar accidents do not occur again. Literature review will be done for the safe movement of the Road safety audit and will check the merits and demerits of the techniques used previously.

Analysis on Adversity Quotient (AQ) and Emotional Intelligence
Authors:-Dr Jakka Pradeep

Abstract-Physical adversities such as illness, obesity, accidents and psychological adversities such as emotional, social and play hazards and family and relationship adversities or personality threats like formation of unfavourable self-concept can lead to low self-esteem and low emotional intelligence. Adversity quotient is a score that measures the ability of a person to deal with setbacks, challenges, and problems. Focus on adversity quotient, as it is positively correlated with emotional intelligence. Focus on self-awareness, self-regulation and empathy. Today’s youths are tomorrow citizens.

DOI: 10.61137/ijsret.vol.11.issue1.196

Analysis of Human Disease Prediction Using Machine Learning Models
Authors:-Pavani sakthima S, Sangamithra Saravanan

Abstract-Disease prediction with machine learning is one of the areas that is very rapidly developing with the help of historical medical data to find the patterns and diagnose early symptoms of diseases, hence predicting the diseases. This study covers a wide range of machine learning algorithms, from traditional methods like Naïve Bayes, K-Nearest Neighbours (KNN), and Support Vector Machine (SVM) to more advanced techniques such as Random Forest and deep learning models, including Convolutional Neural Networks (CNNs) and Recurrent Neural Networks (RNNs). Real-world medical datasets have been applied to train and evaluate these models; those contain medical histories of the patient, life habits, genetic conditions, and findings from diagnostic tests. Accuracy, precision, recall, and F1 score metrics measure the efficiency of each algorithm in predicting diseases. Experimental results show that deep learning algorithms, specifically CNN and RNN and hybrid models perform much more accurately than traditional machine learning techniques. This superiority is especially observed in complex and unstructured data, such as medical images; deep learning models happen to very effectively extract difficult and intricate features and patterns. Traditional algorithms used are best suited for structured data but are incompetent in handling the complexity and variability that characterize most of the medical datasets. The paper further emphasizes gathering heterogenous data sources, like genetic information, lifestyle, and other contributing factors, to enhance predictive accuracy.

Assessing Emotional Intelligence in the Indian Hospital Workplace: A Study of Knowledge and Practice among Employees
Authors:-Dr. Jessy Palal Ithappiri

Abstract-Purpose: The goal of this study is to ascertain how well-informed Indian hospital staff members are regarding emotional intelligence (EI) principles, how well EI skills are implemented in various work environments, and which EI competency areas require staff development. Design/Methodology/Approach: A sample of 715 Indian hospital employees participated in the study, which employed a quantitative research approach. Being under the leadership of the HODL, the sample was kept stratified to ensure job title and division diversity. Using surveys standardized by the EQ-MAP organizations, research participants were assessed on their EI knowledge and practice. Findings: This study was conducted, in which 51.6% of participants answered they understood their emotions and influenced the performance of a professional setting “quite well” or “extremely well.” Similarly, it was 57.1% successful in sensing and deciphering the emotions of his or her colleagues. Furthermore, 59.4% reported being able to properly manage their emotions, whereas 58.7% could effectively communicate their thoughts and feelings. Conclusion: The study explains levels of understanding and application in practical settings of EI among hospital employees. It further highlights the important role of focused interventions for the development of EI competencies that can enhance workplace dynamics and the quality of care for patients. Originality/Value: Hospital employees’ understanding of and use of Emotional Intelligence (EI) underscores the inclusion of a new study in hospitals, greatly expanding the corpus of information on medical care and improving the standard of care that patients receive. The study gives insights for targeted interventions towards improving workplace dynamics and patient care quality, thereby highlighting a vital area of focus in healthcare management.

ERP Post-implementation Challenges and Solutions
Authors:-Sagar Gupta

Abstract-Enterprise Resource Planning (ERP) systems have become essential tools for organizations seeking to integrate and streamline business functions such as finance, human resources, sales, and manufacturing. However, ERP implementation remains a complex, multi-phase process characterized by both technical and organizational challenges. This study systematically reviews the critical success factors (CSFs) that influence successful ERP implementations, drawing insights from extensive literature and case studies. Key factors identified include effective change management, robust data management, strong management commitment, comprehensive project planning, proactive risk assessment, and strategic vendor partnerships. These elements play a pivotal role in addressing challenges such as resistance to change, system integration issues, and process reengineering complexities. By focusing on these CSFs, organizations can enhance operational efficiency, improve decision-making, and ensure a positive return on investment. This review provides valuable guidance for practitioners and scholars, offering a consolidated perspective on achieving successful ERP deployment in today’s competitive business landscape.

DOI: 10.61137/ijsret.vol.11.issue1.197

Design and Fabrication of Hand-Operated Pneumatic Hydraulic Metal Sheet Cutter
Authors:-Joy Sarker

Abstract-In this project, a hand-operated hydraulic Metal Sheet cutter machine has been fabricated. A hydraulic jack is used as the hydraulic component here. The project was started to minimize the effort required in shearing metal sheets of various thicknesses compared to that required when using a simple hand-operated mechanical sheet cutter. The cutting of metal sheets is an essential process in various industries, but conventional cutting machines are often expensive, energy-intensive, and cumbersome to operate. This thesis presents the design and fabrication of a cost-effective, hand-operated hydraulic metal sheet cutter aimed at providing a simple yet efficient solution for small-scale industries and workshops. The device operates using a hydraulic mechanism, eliminating the need for electrical power, and can be manually operated with minimal physical effort. The cutter is designed to handle a range of metal sheet thicknesses, offering versatility while maintaining precision and durability. The design focused on optimizing the cutting force and mechanism to achieve high cutting efficiency with reduced human exertion. The project encompasses the entire development process, including the design calculations, material selection, and fabrication techniques. Performance tests were conducted to assess the functionality and efficiency of the cutter under various conditions. The results demonstrate that the hand-operated hydraulic cutter can effectively cut metal sheets with minimal deformation and high accuracy, making it a practical tool for small workshops or environments with limited resources. This study concludes that the developed system is not only economical and environmentally friendly but also provides an innovative alternative to conventional electrically powered cutting machines. Further optimization could potentially enhance its applications across various industries.

DOI: 10.61137/ijsret.vol.11.issue1.270

Intelligent Infusion Anesthetic Dispenser Using Smart Iot
Authors:-Sai Kumar N, Vishnu Vardhan S, Bharath Chand N, Brahma Reddy B

Abstract-In hospitals, maintaining safe anesthesia levels during long surgeries is vital. Manual administration poses risks, as overdosing may be fatal, and underdoing could cause the patient to wake mid-surgery. This project proposes an automated, microcontroller- based anesthesia injector that precisely delivers doses using a syringe infusion pump. The anesthetist sets the dosage in milliliters per hour based on sensor feedback monitoring patient vitals. The microcontroller adjusts a DC motor to control the infusion pump accurately, ensuring steady anesthesia throughout the procedure. This automation reduces manual dependency and enhances patient safety. The system also incorporates safety mechanisms, including alarms and fail-safe operations. In case of anomalies such as syringe blockages, motor malfunctions, or irregular patient vitals, the system triggers an alert to notify the anesthetist immediately. Additionally, the microcontroller stores real-time data, which can be accessed later for review and analysis, contributing to improved surgical procedures and patient outcomes. By integrating advanced monitoring and control features, this solution ensures precision, reliability, and adaptability in critical medical environments.

DOI: 10.61137/ijsret.vol.11.issue1.198

AI-Enhanced Shunt Active Power Filters for Minimizing Harmonics in Microgrid System
Authors:-Faruk J. Sayyad, Professor Shivaji S. Bhosale

Abstract-The increasing penetration of renewable energy sources and the rise in non-linear loads in microgrids have led to the growing concern of harmonic distortion in power systems. Harmonics can deteriorate power quality, affect system performance, and damage sensitive equipment. Shunt Active Power Filters (SAPFs) are commonly used to mitigate harmonic distortion. However, conventional SAPF methods face challenges in dynamic microgrid environments, especially when dealing with changing loads and renewable energy variations. This paper presents an AI-enhanced SAPF approach for minimizing harmonic distortion in microgrids. By integrating machine learning and optimization algorithms, the proposed approach provides real-time harmonic detection and compensation, adapts to fluctuating conditions, and improves power quality. Simulation results demonstrate the effectiveness of the AI-based method in reducing harmonic distortion, enhancing system performance, and optimizing computational efficiency compared to traditional approaches.

Incorporation of Indigenous Knowledge & Skills within School Curriculum
Authors:-Dr.Laxmiram Gope, Assistant Professor, & Sujit Kuiry, Research Scholar

Abstract-The quality of education reflects the quality of life. This quality is not only confined to a particular dimension, but it also has an expansive connotation. In the words of Bernard (1999), the rights of all the children to survival, protection, development, and participation are at the centre of the discourse, which covers all aspects of the school and its surrounding community. This means that the focus is on learning to strengthen the capacities of children to act progressively on their own through acquiring relevant knowledge, valuable skills and appropriate attitudes; this builds up a safety network permeated by a sense of security and healthy interaction. Primarily, the present paper focuses on the quality enhancement and skill development by incorporating community-centered indigenous knowledge within the school’s curriculum. In this paper, the researchers made a humble attempt to explore the components of indigenous knowledge within the community network space and thereby suggest the inclusion of community-based indigenous knowledge for the objective of an inclusive school curriculum through skill-development techniques and community-participative indigenous knowledge. An attempt has been made to determine why community-based knowledge is crucial for various kinds of risk management, which is situational knowledge, and is highly pertinent for shaping survival strategies within the community. Overall, researchers perceive that it is also helpful for re-constructing and re-orienting our ongoing education system because it has built-in cultural support and cultural value with ancient spiritual essence. With the help of document analysis and analysis of primary and secondary data the researchers sought to reveal that the indigenous knowledge cum community knowledge has many important aspects in respect of educational goals and it also helps to improve the educational instructional strategy. Even such community-centric knowledge is essential for the individual perspective, because it celebrates the diversity of learning. This study is an avenue for policymakers, educators, and activists associated with quality education to advance the vocational system in school education.

DOI: 10.61137/ijsret.vol.11.issue1.199

Artificial Intelligence in Cybersecurity
Authors:-Rushi Bhayani, Darshna Sonani, Professor Bhoomika B. Chauhan

Abstract-Even in the past few decades, cyberattacks have grown tremendously in number as well as quality. Consequently, creating a cyber-resilient mechanism is significant. Traditional security measures cannot prevent data breaches during cyberattacks. Cybercriminals have devised new and sophisticated methods and high-end gadgets in their hacking and data breaching capabilities. As both sides resort to Artificial Intelligence (AI) technologies to bring smart models to prevention systems from attacks in cyberspace, it is now feasible to rely on these emerging technologies, themselves able to rapidly adapt to such situations, as core cornerstones in the field of cybersecurity. The AI-based techniques provide the best cyber defense tool, efficient and powerful enough to discover malware attacks, network intrusion case, spam and phishing emails, breaches of data, and many more, and issue alerts when security incidents happen. In this paper, we evaluate how AI is impacting cybersecurity and summarize relevant research toward understanding the benefits of AI in cybersecurity.

DOI: 10.61137/ijsret.vol.11.issue1.200

Artificial Neural Network
Authors:-Divya Maheta, Dhyanee Kanojiya, Professor Bhoomika B. Chauhan

Abstract-An ANN is an information- processing paradigm inspired by the way natural nervous systems similar as the brain process information. The crucial element of this paradigm is the unique structure of the information- processing system. It consists of multitudinous largely connected processing rudiments( neurons) wanting to work with each other to break particular problems. ANNs learn by exemplifications like humans. It’s through learning that an ANN is set to work on a particular operation sphere, say, for case, pattern recognition or bracket of data. Learning in natural systems refers to change in the synaptic connections being between the neurons. The same holds for ANNs. This paper gives an overview of artificial neural networks, their working, and training. It mentions the operation and advantages of AANN.

Automation in Banking: Simplifying Operations and Enhancing Customer Experience
Authors:-Kinil Doshi

Abstract-The banking industry is undergoing a significant transformation with the integration of automation technologies such as Artificial Intelligence (AI), Robotic Process Automation (RPA), and advanced data analytics. Automation streamlines banking operations by reducing manual intervention, increasing efficiency, and minimizing errors. AI-powered chatbots enhance customer service with instant support, while automated fraud detection systems strengthen security and compliance. Additionally, automation improves regulatory adherence by facilitating real-time monitoring and reporting, ensuring transparency and risk mitigation. The implementation of automation also leads to cost savings, operational scalability, and seamless digital banking experiences. As the industry moves towards fully automated banking ecosystems and blockchain integration, automation is set to redefine the financial landscape, making banking more accessible, secure, and customer-centric.

DOI: 10.61137/ijsret.vol.11.issue1.201

Advancements And Applications Of Machine Vision: A Review Of Computational Paradigms And Future Prospects In Intelligent Systems

Authors: Assistant Professor Benasir Begam.F, Assistant Professor Agalya.A, Assistant Professor Gopalakrishnan T

Abstract: Machine vision, a sub-discipline of computer science and artificial intelligence, has evolved into a robust technological framework that enables machines to interpret and make decisions based on visual data. This review delves into the computational underpinnings of machine vision, tracing its development from classical image processing techniques to state-of-the-art deep learning architectures. Special emphasis is placed on domain-specific applications such as autonomous navigation, medical diagnostics, and smart manufacturing, highlighting how vision-enabled machines are reshaping real-world operations. The paper further explores benchmark datasets, evaluates key performance metrics, and outlines critical challenges. It concludes with a forecast of emerging paradigms—such as transformer-based vision models and neuromorphic computing—that promise to redefine the future of intelligent visual systems.

 

 

Serverless Deployment Strategies For High-Availability Cloud Platforms: Architectural Patterns, Distributed Reliability, And Event-Driven Scalability

Authors: Shekar Vollem

Abstract: Modern digital platforms require infrastructure that can scale dynamically, recover quickly from failures, and operate with minimal operational overhead while supporting rapidly changing workloads. Traditional infrastructure models often require significant manual configuration and capacity planning, which can limit scalability and increase operational complexity. Serverless computing has emerged as a promising cloud computing paradigm that abstracts infrastructure management from developers, allowing applications to run in environments where the cloud provider automatically handles resource provisioning, scaling, monitoring, and fault tolerance. In serverless architectures, developers deploy small, stateless functions or services that are executed in response to events such as API requests, database updates, or messaging events. This event-driven execution model enables systems to scale automatically according to workload demand, ensuring that resources are allocated efficiently without manual intervention. Cloud platforms such as AWS Lambda, Azure Functions, and Google Cloud Functions provide built-in mechanisms for automatic scaling, load balancing, and fault recovery, which contribute to high system availability. This article examines deployment strategies for building high-availability platforms using serverless architectures, focusing on how distributed cloud services can support reliable and scalable application infrastructures. The study analyzes architectural models that combine event-driven processing patterns, stateless computing components, and distributed service orchestration to achieve resilient system designs. It also explores how serverless frameworks integrate capabilities such as auto-scaling, multi-region redundancy, and managed infrastructure services to ensure continuous system availability even under fluctuating workloads or infrastructure failures.

DOI: https://doi.org/10.5281/zenodo.19219568

Optimizing Distributed Energy Resource Hosting Capacity Through Grid Reinforcement And Non-Wires Alternatives In The United States

Authors: Nimaful N Samuel, Hanyabui Augustine

Abstract: Distributed energy resources (DERs)—including distributed photovoltaics, behind-the-meter storage, flexible demand, and electrified end uses—are transforming U.S. distribution systems while exposing a persistent planning and interconnection constraint: hosting capacity. Hosting capacity is commonly defined as the amount of DER that can be accommodated without adversely impacting power quality or reliability under specified control configurations and without requiring infrastructure upgrades. Yet hosting capacity is not an immutable feeder attribute; it is strongly sensitive to analytical methods (snapshot vs. time-series; deterministic vs. probabilistic), modeling assumptions (e.g., inverter settings), data quality, and governance choices regarding what constitutes an acceptable violation or mitigation. This article provides a secondary analysis synthesizing peer-reviewed research, national laboratory reports, interconnection standards resources (IEEE 1547 family implementation guidance), and public regulatory/utility records to develop an integrated technical–economic–regulatory framework for expanding hosting capacity through complementary strategies: targeted grid reinforcement and non-wires alternatives (NWAs). Comparative case evidence from New York’s Brooklyn-Queens Demand Management program, California’s integration capacity analysis ecosystem, and Hawaii’s hosting-capacity mapping and inverter experience is used to extract transferable mechanisms and failure modes. Synthesized findings indicate that hosting capacity should be communicated as a scenario-dependent range; that advanced inverter functionality and flexible demand can expand feasible DER penetration but require validated settings, telemetry, and verification; and that integrated distribution planning linking hosting capacity analytics to locational value and benefit-cost screening improves comparability between wires and non-wires portfolios while strengthening transparency for interconnection stakeholders. (Electric Power Research Institute [EPRI], 2018; Jain et al., 2020; Narang et al., 2021).

DOI: https://doi.org/10.5281/zenodo.19235202

Published by:

IJSRET Volume 10 Issue 6, Nov-Dec-2024

Uncategorized

IoT Enabled Solutions for Women Safety and Health Monitring
Authors:-Sudeshna P, Vivekanandan K

Abstract-Women and children today deal with a number of problems, including sexual attacks. The victims’ life will undoubtedly be greatly impacted by such atrocities. It also has an impact on their psychological equilibrium and general wellbeing. The frequency of these acts of violence keeps rising daily. Even schoolchildren are victims of sexual abuse and abduction. In our society, a nine-month-old girl child is not protected; she was abducted, sexually assaulted, and ultimately killed. Seeing the abuses of women makes us want to take action to ensure the protection of women and children. Therefore, we intend to present a device in this project that will serve as a tool for security and guarantee the safety of women and children. GSM microcontroller.

DOI: 10.61137/ijsret.vol.10.issue5.224

The Generative AI Industry is Flawed!
Authors:-Isha Syed, Aryan Purohit, Yash Malusare

Abstract-Generative Artificial Intelligence (GenAI) has evolved rapidly, creating transformative opportunities across sectors, particularly in healthcare and marketing. Despite the promise of improved patient care, streamlined medical workflows, and enhanced customer engagement, GenAI faces significant challenges. Key obstacles include high computational costs, data-privacy concerns, and ethical accountability in content generation. Moreover, the open-source initiatives by leading firms like Meta have intensified competition, pushing GenAI models toward commoditization, impacting revenue structures and sparking a “race to the bottom” in pricing. The market is further complicated by monopolistic dependencies on critical hardware providers, particularly Nvidia, which dominate GPU supplies essential for AI training. With a rapidly growing market projected to reach trillions by 2030, the industry must navigate these barriers to realize the full potential of GenAI. This study explores GenAI’s current applications, fiscal and ethical challenges, and the strategic imperatives needed to foster sustainable, profitable growth within an increasingly crowded and commoditized industry landscape.

DOI: 10.61137/ijsret.vol.10.issue6.325

Predicting Customer Success in Digital Marketing with Data Mining and Naive Bayes Classifier Using Google Analytics
Authors:-Rohini Sharma, ER. Vanita Rani (HOD)

Abstract-In the era of digital transformation, organizations are increasingly leveraging data analytics to optimize marketing strategies and enhance customer engagement. Predicting customer performance is critical for businesses aiming to tailor marketing efforts, improve customer retention, and maximize revenue. This study presents a comprehensive data mining framework utilizing the Naive Bayes classifier to forecast customer performance based on historical behavior and interaction data. Employing Google Analytics as the primary data collection tool, we evaluate the model’s effectiveness by analyzing metrics such as accuracy, True Positive Rate (TPR), False Positive Rate (FPR), and the area under the Receiver Operating Characteristic (ROC) curve. The results illustrate the framework’s potential to provide actionable insights into customer behavior, thereby facilitating more informed marketing strategies and decision-making processes.

DOI: 10.61137/ijsret.vol.10.issue6.326

Vertical Farming (Hydroponics)
Authors:-Hemlata Karne, Shane D`Costa, Aryan Chaure, Vaibhav Bhuwaniya, Abhinandan Daga, Vaibhavi Chavan

Abstract-IIn the current times, conventional farming which is the most widely used type of farming has been affected by several problems such as decrease in the availability of space due to the increasing population, wastage of water, destruction of crops due to insects, rains, etc. Furthermore, in the future where the population is expected to grow further, these problems in farming can be disastrous as it can decrease the availability of food and can lead to the starvation of a big part of the population. Hydroponics which is another method of farming can be a solution to most of the problems associated with conventional farming. In this type of farming, crops are grown without the requirement of soil, instead it utilizes a growing medium and water is directly supplied to the roots of the plants. Further fertilizers are dissolved in the water itself. This type of farming can save a lot of space as the plants are grown in vertical slots and they can be stacked upon each other and water requirement is also very low for this type of farming as most of the water is recycled. In this paper, we are going to discuss the various factors which affect the growth rate of the plants in vertical farming. The plants we have taken are jalapeno plants. The trail period is of 7 weeks where we have compared different factors affecting the growth rate of the plants.

DOI: 10.61137/ijsret.vol.10.issue6.327

AI Based Smart Chatbot
Authors:-Ansh Jaiswal, Reecha Daharwal, Muskan Dwivedi, Riddhima Mudgal, Srashti Garg

Abstract-Chatbots function as software that allows users to ask questions and receive assistance through appropriate responses. This paper explores an AI-based chatbot designed specifically for students experiencing suicidal thoughts or at risk of suicide. The aim of this chatbot is to help reduce the number of suicides among students by providing them with timely support and guidance. Leveraging the expansive and rapidly evolving field of AI, this technology can contribute positively to addressing societal challenges and promoting well-being.

DOI: 10.61137/ijsret.vol.10.issue6.328

Enhancing Beyond-5G and 6G Network Backhaul through Hybrid RF-FSO Communication: An Examination of HAPS and LEO Satellite Integration
Authors:-Aakash Jain, Prakhar Vats, Priyanshu Singh, Shreya Tiwari, Mohammed Alim

Abstract-As data demands increase with the evolution toward beyond-5G and 6G communication systems, achieving efficient network backhaul is crucial to support high data rates, minimized latency, and broad geographic coverage. Traditional backhaul networks, reliant on radio frequency (RF) communications, face limitations in scalability and bandwidth, particularly in dense urban and rural remote areas. This paper explores a hybrid RF-Free-Space Optical (FSO) communication model, integrating Low Earth Orbit (LEO) satellites with High Altitude Platform Stations (HAPS) to enhance backhaul network efficiency. The proposed HAPS-LEO cooperative model mitigates atmospheric disruptions and offers scalable, high-bandwidth solutions. We further examine Contact Graph Routing (CGR) as a protocol for optimized data routing in variable connectivity conditions, presenting simulated performance results that demonstrate the advantages of this architecture.

DOI: 10.61137/ijsret.vol.10.issue6.329

Heart Disease Detection Using Machine Learning
Authors:-Assistant Professor Ms. Pragati, Mr. Shivam Chawla, Mr. Yash Mittal, Mr. Shivam Mishra

Abstract-Cardiovascular diseases (CVDs) are a leading cause of death worldwide, posing a significant health threat not only in India but across the globe. This highlights the critical need for a dependable, precise, and accessible system to diagnose such conditions promptly, enabling timely treatment. Machine learning algorithms have become invaluable tools in healthcare, automating the analysis of extensive and complex datasets. Recent studies demonstrate that various machine learning techniques can aid healthcare professionals in diagnosing heart-related conditions. The heart, second only to the brain in importance, plays a vital role in circulating blood throughout the body. Predicting heart disease occurrence is thus essential in the medical field. Data analytics enhances the prediction accuracy by analysing large volumes of patient data, often maintained on a monthly basis, which could be utilized to anticipate potential future diseases. Techniques such as Artificial Neural Networks (ANN), Random Forest, and Support Vector Machines (SVM) are widely applied to predict heart conditions. Diagnosing and predicting heart diseases remain a considerable challenge for both doctors and hospitals globally. To mitigate the high mortality rate associated with these diseases, efficient and rapid detection methods are essential. Machine learning and data mining techniques hold a crucial role in this context. Researchers are accelerating efforts to develop machine learning-based software that can assist doctors in both predicting and diagnosing heart diseases. This research project aims to leverage machine learning algorithms to predict the likelihood of heart disease in patients.

DOI: 10.61137/ijsret.vol.10.issue6.366

Traffic Safety Assessment and Design Improvement

Authors:-Dr. G. Tabitha, Korada Lakshman

Abstract-This project focuses on traffic safety analysis, aiming to enhance road user safety through a comprehensive evaluation of various factors that influence accident rates and driving conditions. By assessing parameters such as skid resistance, surface texture, visibility, and roadway geometry, the study identifies critical factors that contribute to traffic incidents and offers insights into effective safety measures. Field data was gathered from selected road sections, and laboratory tests were conducted to analyze surface characteristics. Statistical analysis was applied to understand the correlation between these factors and accident frequency, enabling the development of targeted recommendations to improve safety standards. The project underscores the importance of proactive road maintenance and design improvements in reducing accidents and enhancing the overall safety and efficiency of transportation infrastructure. This project aims to enhance road safety by conducting an in-depth analysis of factors contributing to traffic accidents and assessing the effectiveness of potential interventions. Through examining elements such as pavement skid resistance, surface texture, road geometry, and visibility, the study explores their influence on accident frequency and severity. Field data collected from high-risk road sections, along with laboratory testing of pavement properties, provide a foundation for evaluating existing conditions. Using statistical and spatial analysis, the study identifies patterns in accident data, highlighting critical areas for improvement. Recommendations are developed based on these insights to propose cost-effective strategies that prioritize safety, such as optimized pavement materials, better signage, and improved road design. This research underscores the role of systematic traffic safety analysis in advancing safer, more resilient transportation systems. This project undertakes a comprehensive traffic safety analysis aimed at reducing accidents and improving road safety through a detailed examination of key factors affecting driving conditions. By focusing on parameters such as skid resistance, pavement surface texture, visibility, road geometry, and traffic flow, the study seeks to identify elements that significantly impact accident rates and driving safety.

Traffic Safety Assessment and Design Improvement

Authors:-Dr. G. Tabitha, Korada Lakshman

Abstract-This project focuses on traffic safety analysis, aiming to enhance road user safety through a comprehensive evaluation of various factors that influence accident rates and driving conditions. By assessing parameters such as skid resistance, surface texture, visibility, and roadway geometry, the study identifies critical factors that contribute to traffic incidents and offers insights into effective safety measures. Field data was gathered from selected road sections, and laboratory tests were conducted to analyze surface characteristics. Statistical analysis was applied to understand the correlation between these factors and accident frequency, enabling the development of targeted recommendations to improve safety standards. The project underscores the importance of proactive road maintenance and design improvements in reducing accidents and enhancing the overall safety and efficiency of transportation infrastructure. This project aims to enhance road safety by conducting an in-depth analysis of factors contributing to traffic accidents and assessing the effectiveness of potential interventions. Through examining elements such as pavement skid resistance, surface texture, road geometry, and visibility, the study explores their influence on accident frequency and severity. Field data collected from high-risk road sections, along with laboratory testing of pavement properties, provide a foundation for evaluating existing conditions. Using statistical and spatial analysis, the study identifies patterns in accident data, highlighting critical areas for improvement. Recommendations are developed based on these insights to propose cost-effective strategies that prioritize safety, such as optimized pavement materials, better signage, and improved road design. This research underscores the role of systematic traffic safety analysis in advancing safer, more resilient transportation systems. This project undertakes a comprehensive traffic safety analysis aimed at reducing accidents and improving road safety through a detailed examination of key factors affecting driving conditions. By focusing on parameters such as skid resistance, pavement surface texture, visibility, road geometry, and traffic flow, the study seeks to identify elements that significantly impact accident rates and driving safety.

Study of Evaluation of Kraft Lignin and Wood-Based Modifiers in Mitigating Rutting in Porous Asphalt Concrete
Authors:-Mrs. M. Gowri, Allada Ravindra

Abstract-This study explores the potential of Kraft lignin and wood-based additives to mitigate rutting in porous asphalt concrete (PAC), a material widely used for its water permeability and noise-reducing properties. PAC, however, suffers from rutting, a type of pavement distress that leads to deformations and reduced performance under traffic loads. The research evaluates the impact of incorporating Kraft lignin and wood-based modifiers into PAC to enhance its rutting resistance. Experimental investigations, including wheel-tracking and Marshall stability tests, were conducted on asphalt samples with varying concentrations of these modifiers. Results indicated that both Kraft lignin and wood-based additives significantly improved rutting resistance, with lignin contributing to greater binder stiffness and wood additives enhancing aggregate bonding. These findings suggest that bio-based modifiers could offer a sustainable solution to improving the durability of porous asphalt pavements, reducing maintenance costs and environmental impact.

DOI: 10.61137/ijsret.vol.10.issue6.365

Automation and Control Systems for Lifting Bridges
Authors:-Dr. B. Raghunath Reddy Professor, Avula Gurappa, Tupakula Harinath, Danduboina Sivanjaneyulu, D. Ganga Amrutha

Abstract-Lifting bridges, also known as movable bridges, are crucial for enabling both road and maritime traffic, especially in regions where waterways intersect with busy transportation corridors. These bridges, including types such as bascule, swing, and vertical lift bridges, allow for efficient passage of vessels while maintaining road connectivity. Research into lifting bridges spans a range of disciplines, from structural engineering and materials science to automation and environmental impact studies. One primary focus is on the design and mechanics of movable bridges, with emphasis on the structural integrity, materials, and load-bearing capacities of these complex systems. Innovations in materials science have led to the exploration of corrosion-resistant alloys and high-performance composites, improving the durability and lifespan of lifting bridge components. Additionally, advanced automated control systems are becoming increasingly important, with research on robotic mechanisms and smart sensors aiming to streamline bridge operations and enhance safety. These innovations are complemented by studies into the impact of lifting bridges on traffic flow, which examine the operational challenges and disruptions posed by the periodic lifting and lowering of bridges. Another key area of research involves the environmental impact of lifting bridges. Studies have been conducted on the ecological effects of bridge operations on aquatic ecosystems, particularly in relation to waterway traffic and habitat disruption. Moreover, with the rise of sustainable infrastructure, researchers are exploring ways to reduce energy consumption and carbon footprints associated with the mechanical lifting process. Further, lifting bridges present unique challenges in extreme environments, such as those found in cold and hot climates, where materials and mechanisms face additional stresses due to thermal expansion, corrosion, or ice formation.

Fabrication and Simulation of Multi-Purpose Agriculture Machine
Authors:-Mullu Pavani, Peda Baliyara Simhuni Indhu, Yendamuri Venkataramana, Potnuru Dileep, Thota Tirumala Srinivas Manjunath, Assistant Professor Dr. Gorti Janardhan

Abstract-The machine is a double-purpose unit proposed to chop and crush forage crops in an efficient way, to cut down on waste and inefficiency in agricultural practices. It discusses evaluation related to the performance of the machine, with emphasis on its productivity in trimming different forages. The study discusses the advantages the use of this machine would bring about, such as minimum labor costs and efficient crop management. Testing results show that the machine achieves the basic standards of operation for agricultural purposes. The main objective of the project was to develop a machine that efficiently performs chopping and crushing work simultaneously with the ability to overcome the weaknesses of machines that can only perform the two functions separately. This multi-purpose functionality aims at increased productivity and saving on operational costs. An increased need for environmentally friendly economical machines capable of delivering agricultural needs effectively, therefore, is essential to achieve economic sustainability.

Online Chatbot Based Ticketing System
Authors:-Priya Kumari, Shruti Kumari, Simran Jaiswal, Siddhant Chaturvedi, Sahil Kumar Jha, Pratham Chaturvedi

Abstract-Chatbots function as software that enables users to ask questions and receive assistance through appropriate responses. This paper explores an AI-based chatbot designed to serve as an online ticketing system, streamlining the process of issue reporting, resolution, and user assistance across various domain. It also includes features like customer support, IT helpdesks, and event management. Natural language processing (NLP) is used by this proposed chatbot to understand user queries, categorize tickets, and provide instant responses. The aim of this chatbot is to enhance efficiency, reduce response times, and improve user satisfaction.

DOI: 10.61137/ijsret.vol.10.issue6.330

Hybrid Approaches in AI and Soft Computing: The Future of Intelligent Systems
Authors:-Ramprasath K, Dr. Subitha S

Abstract-Artificial Intelligence (AI) has become a pivotal technology for automating complex processes, while Soft Computing provides innovative ways to manage imprecise and uncertain data. By combining the two, hybrid systems leverage the strengths of AI’s precision and Soft Computing’s adaptability. This paper delves into the principles behind these hybrid models, emphasizing their use in healthcare, autonomous systems, finance, and smart cities. It also highlights the challenges of scalability and interpretability and outlines potential research directions, including integrating quantum computing and promoting explainable models.

DOI: 10.61137/ijsret.vol.10.issue6.331

Industrial Production Productivity Analysis with Respect to Labors
Authors:-Research Scholar Sachin Kachhi, Assistant Professor Ranjeet Singh Thakur

Abstract-Low productivity of workers is the most significant factor behind delivery slippages in manufacturing industries. As manufacturing is a laborer predominant industrial sector, this paper focuses on worker output and their efficiency in the manufacturing sector. It covers the definitions of productivity, efficiency of the workers, its perspectives and the factors influencing the productivity. Proposed ANOVA method optimize performance of productivity and worker production parameters. Also observed more sensible case to increase production productivity.

Intelligent Traffic Management System for Urban Conditions
Authors:-Satyraj Madake, Kopal Naramdeo, Janhavi Patil, Priti Patil

Abstract-The challenges of urban areas with ever-increasing traffic congestion, emergency response, and maintaining road safety are the basis of this paper. The ITMS proposed in this paper treats optimization of timings at the traffic signals based on real-time vehicle counts, along with the detection of emergency vehicles and accidents, as its prime mandate. To achieve these objectives of optimal traffic management, advanced technologies, such as sensor detectors, algorithms for processing data, and communicating networks, were adopted. With simulations and evaluations, the ITMS holds great promise in enhancing traffic flow efficiency as well as reducing congestion while shortening emergency vehicle response times vis-a-vis fixed-time signal control. The research performed here addresses the development of more sustainable and resilient urban transportation systems.

DOI: 10.61137/ijsret.vol.10.issue6.332

Design and Analysis of Shaft for Electric Go-Kart Vehicle
Authors:-Dr. B. Vijaya Kumar, L. Manoj Kumar, G. Ashok, D. Jithendar

Abstract-This study focuses on the design and analysis of a hollow shaft for an EV go-kart, optimizing weight reduction and structural integrity. Using SolidWorks for design and ANSYS for Finite Element Analysis (FEA), the shaft’s performance under mechanical stresses and cyclic loads was evaluated. Results demonstrated significant weight savings while maintaining strength, rigidity, and durability, enhancing the go-kart’s efficiency and reliability. This work highlights the potential of hollow shafts in improving EV performance through lightweight design.

DOI: 10.61137/ijsret.vol.10.issue6.333

Colourization of SAR Image Using Generative Adversarial Network
Authors:-Dr. D. Suresh, P. Rakshitha, V. Manasa Aparna, V. Chaitanya Sai Kumar, S. Vamsi Krishna

Abstract-Employing generative adversarial networks, specifically with regard to cycle consistency loss and mask vectors, mainly concentrates on the colorization of Synthetic Aperture Radar (SAR). Most SAR imagery is devoid of chromatic information. Contemporary deep learning techniques are the predominant approach for SAR colorization. The methodology proposed herein employs a multidomain cycle-consistency generative adversarial network (MC-GAN). It enhances performance through the integration of a mask vector and cycle-consistency loss. The approach does not necessitate the availability of paired SAR-optical imagery. The multidomain classification loss contributes to the precision of the color output. The methodology has been evaluated using the SEN1-2 dataset for urban and terrain areas.

DOI: 10.61137/ijsret.vol.10.issue6.334

FairShare – A MERN Stack Solution for Ride Sharing
Authors:-Atharva Tupe, Aditya Gaikwad, Rohan Soni, Vivek Chhonker

Abstract-The cost of commuting to and from school is a burden for many people, especially in urban areas. While ride-hailing services are popular worldwide, most students face issues with accessibility and convenience. The aim of this work is to create and use fairShare. A web platform that allows students to connect and share rides, thereby reducing transportation costs and reducing the environment around them. Users can register, post trips,and compete with other students using the same route. Early tests of the platform have shown that it reduces student travel costs and provides a good user experience. The platform also promotes sustainable practices for students. fairShare demonstrates the potential of student-friendly carsharing to reduce transportation costs and improve social interaction. The platform has the ability to measure a broader and more effective way for students to take action.

DOI: 10.61137/ijsret.vol.10.issue6.335

Review: Cyber Insight – Illuminating Cyber Security for all
Authors:-Ayush Kore, Kushal Hirudkar, Palak Jaiswal, Shravani Ambulkar, Shaarav Kamdi, Shalini Kumari

Abstract-With the advent of the “e-” revolution starting in 2000, the issue of cyber security, cyber-attacks and cyber threats which included domains, but not e-business, e-government, e-; commerce etc. only occurred because for the issue of cybersecurity in e- learning is under-explored, the aim of this paper is to present methods that focus on monitoring cybersecurity issues related to e- learning processes on. In addition, this article aims to present some good examples of cybersecurity management strategies in e- learning and cybersecurity trends in this area.[2] This paper will present possibilities for increasing information security and cyber- security awareness in education and e-learning that will inspire future cybersecurity professionals to navigate their career path.[3].

DOI: 10.61137/ijsret.vol.10.issue6.336

Elephant Herd Feature Optimization Based Intrusion Detection System
Authors:-Shivani Meena, Assistant Professor Rani Kushwaha, Professor Jayshree Boaddh

Abstract-The growing dependence on technology for a wide range of activities has dramatically increased computational demands, driving significant growth in computer network usage over the past few decades. This surge in demand for processing and storage capabilities has opened up business opportunities for companies but has also drawn the attention of cybercriminals. In response to these threats, researchers have developed various attack detection and prevention models. This paper introduces a new intrusion detection model that operates in two phases. The first phase involves building a feature ontology to train a convolutional neural network (CNN), and the second phase tests the trained model. For feature selection, the model uses an Elephant Herd Optimization-based genetic algorithm, which efficiently identifies a strong feature set for classifying network sessions. Experiments on a real-world dataset show that the proposed model can detect various types of attacks within normal sessions. Results demonstrate improved accuracy and performance metrics compared to existing models.

Random Forest Based Edge Load Balancing of IOT Devices
Authors:-Swati Jat, Assistant Professor Rani Kushwaha, Professor Jayshree Boaddh

Abstract-IoT device-based communication boosts monitoring, business operations, and daily activities but also increases the load on servers and clouds. To handle this, edge computing acts as an intermediary layer. Efficient job management is critical for large-scale IoT networks, but existing models often fail to adapt based on past job sequences. This work introduces a model using a modified wolf Optimization algorithm to dynamically balance loads without prior training. It also incorporates a Random Forest model to generate initial job sequences. Experiments show that the proposed approach reduces job makespan time and enhances edge resource utilization compared to other models.

Summraize: Smart Meeting Assistant for Automated Summaries
Authors:-Assistant Professor Karmbir Khatri, Swastik Goomber, Sushil Verma, Shivam bansal, Piyush

Abstract-Virtual meetings have become an essential mode of communication in contemporary professional environments. However, the fast-paced nature of virtual meetings undermines the ability to remember critical information accurately as even making notes is an imperfect mundane task, manual note-taking is both time- consuming and error-prone, often resulting in overlooked decisions and action items. SummrAIze is an AI-powered meeting assistant designed to address these challenges by automating the transcription, [1]summarization, and extraction of actionable insights during virtual meetings on platforms like Google Meet and Microsoft Teams. Using advanced machine learning algorithms, SummrAIze produces real-time summaries, highlights key points, and identifies action items, enabling participants to engage fully in discussions without sacrificing documentation accuracy. Integrated with productivity tools, SummrAIze not only reduces manual effort but also ensures that all essential information is recorded and accessible, enhancing team collaboration and workflow continuity. This paper presents the design, methodology, and potential impact of SummrAIze, a tool that redefines productivity in the context of virtual meetings.

DOI: 10.61137/ijsret.vol.10.issue6.337

Raman Spectroscopy: Diagnostic Tool for Cancer Cell Identification
Authors:-Rakshit pandey, Deepak Rawat, Professor Himmat singh

Abstract-Non-destructive spectroscopic techniques represent the top-choice for any kind of process monitoring . Among all of the available techniques, Raman spectroscopy is one of the most solid and versatile tools to analyze several materials, both in lab and on-field conditions . Raman analysis has grown, reaching several industrial sectors such the food and textiles sectors .Raman spectroscopy displays several advantageous features over other techniques like infrared spectroscopy. For example, the quality of the signal collected is barely affected by the presence of water, allowing for use in plenty of applications where infrared analyses are not reliable . A representative case study is the in-situ monitoring of a fermentative process where Raman techniques outperformed any other spectroscopic approach .Molecular-level tissue characterization is highly potent for cancer diagnosis. As a tissue starts becoming cancerous, specific biomolecules are overexpressed or aberrantly expressed, which can be used as cancer molecular markers. If we can detect these molecular markers spectroscopically, it would lead to a new molecular-level cancer diagnosis with high objectivity.

From Survival to Thriving: AI-Powered Pathways for Homeless Children’s Adoption and Healing
Authors:-Syeda Aynul Karim, Md. Juniadul Islam, Mir Faris

Abstract-The plight of homeless children remains one of the most urgent global challenges, with millions of vulnerable children deprived of basic human rights such as shelter, healthcare, and education. Despite the rapid advancement of technology, child welfare systems in many developing countries still face significant hurdles, marked by inefficiencies and fragmented services. This paper proposes an innovative AI-driven system for adoption and rehabilitation that aims to address these systemic challenges holistically. By harnessing cutting-edge artificial intelligence (AI) algorithms, the system streamlines the adoption process, delivers personalized healthcare recommendations, and optimizes resource allocation for child welfare organizations. Through the integration of predictive analytics, data-driven decision-making, and a robust ethical framework, the system ensures transparency, fairness, and scalability. Early simulations and case studies highlight the transformative potential of AI in enhancing adoption success rates and improving healthcare outcomes for homeless children. The findings emphasize the system’s ability to drive meaningful improvements in global child welfare efforts, offering a scalable, ethical solution that can have a lasting impact on vulnerable children worldwide.

DOI: 10.61137/ijsret.vol.10.issue6.338

Smart Shields against Cyber Threats: Machine Learning-Driven Phishing URL Detection
Authors:-Syeda Aynul Karim, Md. Juniadul Islam, Ishtiaq Hoque Farabi

Abstract-Phishing attacks remain a prevalent cybersecurity threat, exploiting vulnerabilities in digital platforms to compromise sensitive user data. This paper introduces a novel machine learning-based framework for phishing URL detection, combining advanced feature engineering techniques and classification algorithms. By integrating lexical attributes, WHOIS data, and ranking metrics like PageRank and Alexa Rank, our approach enhances detection accuracy and minimizes false positives. Experimental results demonstrate superior performance across classifiers, achieving an accuracy of 99.8% using Support Vector Machines. The framework’s modular design ensures adaptability to evolving phishing tactics and scalability for enterprise deployment. This research lays the foundation for future advancements in AI-driven cybersecurity solutions.

DOI: 10.61137/ijsret.vol.10.issue6.339

Virtual Security Realized: An In-Depth Analysis of 3D Passwords
Authors:-Md. Juniadul Islam, Syeda Aynul Karim, Ishtiaq Hoque Farabi

Abstract-The demand for robust authentication systems has risen significantly as cyberattacks become increasingly sophisticated. Current authentication mechanisms, such as textual passwords, biometrics, and graphical systems, each have unique vulnerabilities. This research explores the concept of a 3D password system, which integrates various authentication schemes into a virtual 3D environment to enhance security. The system allows users to interact with objects in a 3D space, forming unique and complex passwords based on sequences of interactions. This paper elaborates on the system’s design, implementation, and potential applications in critical and non-critical systems. Detailed analyses reveal that the 3D password provides superior resistance to timing attacks, brute force attempts, and well-studied schemes, while maintaining user-friendliness. Future research avenues include the incorporation of AR/VR and IoT technologies to further expand the utility of the 3D password system.

DOI: 10.61137/ijsret.vol.10.issue6.340

Enhanced Flower Recognition via Transfer Learning with ResNet-50
Authors:-Syeda Aynul Karim, Md. Juniadul Islam

Abstract-This paper proposes a flower recognition system using transfer learning with the ResNet-50 architecture. By utilizing pre-trained weights from ResNet-50, the system classifies ten species of flowers, drawing on an extended dataset with over 8,000 labelled images. The study addresses challenges in deep convolutional neural networks, such as overfitting and local optimality, by fine-tuning the ResNet-50 model. Initially, only the final layers of the model are retrained on the flower dataset, while the pre-trained layers remain frozen. After achieving initial convergence, all layers are unfrozen for full model fine-tuning. The dataset is divided into training, validation, and test sets to evaluate the model’s performance, which is measured using accuracy, and F1-score. The experimental results demonstrate that the transfer learning approach significantly improves classification accuracy and generalization, outperforming traditional methods. This approach proves especially effective in handling visually similar flower species and diverse environmental conditions. The study highlights the potential of transfer learning in enhancing the efficiency and robustness of flower recognition systems, contributing to broader applications in image classification tasks.

DOI: 10.61137/ijsret.vol.10.issue6.341

Shoe Theory: Embracing Individual Differences in Management
Authors:-Arjita Jaiswal, Manish Chaudhary

Abstract-The concept of Shoe Theory emphasizes that everyone is comfortable in their own shoes and should not be forced to wear someone else’s shoes. This theory posits that individual differences, including the effects of various elements such as time and generational perspectives, significantly impact workplace dynamics and organizational effectiveness. The theory highlights the importance of recognizing the unique experiences and backgrounds of team members to foster an inclusive and productive environment. Keeping creative destruction in mind, everything has its loophole to be breached. Although the answer may be yes or no, there always exists a condition of if/situation and but/exception.

DOI: 10.61137/ijsret.vol.10.issue6.342

Optimizing k for k-NN: A Polynomial Regression Approach
Authors:-Pari Gupta, Sparsh Shukla, Dr. Shalini Lamba

Abstract-The k-Nearest Neighbors (k-NN) algorithm is a widely used non-parametric method for classification tasks, where the selection of the optimal value of k (the number of neighbors) plays a critical role in model performance. Traditional methods for selecting k, such as cross-validation or heuristic approaches, can be time-consuming and computationally expensive. This paper proposes an alternative approach to determining the optimal k for k-NN using polynomial regression. By treating the relationship between the value of k and the performance metric (such as classification accuracy) as a continuous function, we use polynomial regression to model this relationship and identify the k that results in the best performance. The polynomial regression model is trained on a set of performance data for different values of k, allowing for a smooth and accurate estimation of the optimal k across various datasets. Our experimental results demonstrate that the polynomial regression-based approach provides an efficient and effective method for selecting k, outperforming traditional techniques and reducing the computational cost associated with hyperparameter tuning. The proposed method also offers several advantages over traditional hyperparameter optimization techniques. By modelling the performance of k-NN as a continuous function of k, polynomial regression avoids the need for exhaustive grid search or cross-validation, making it particularly suitable for scenarios where computational resources are limited or time is constrained. Furthermore, the flexibility of polynomial regression allows for capturing complex, non-linear relationships between k and model performance, which can lead to more accurate predictions of the optimal value. Our approach is demonstrated one dataset, where it not only achieves higher accuracy but also reduces the overall time spent on model selection, making it a practical and scalable solution for hyperparameter tuning in machine learning applications.

A Review Paper on Alumni Portal
Authors:-Ansari Ayaan Najmul Kalam, Shaikh Aliya Ambreen, Khan Abdul Rehman Mohammed Mukhtar

Abstract-This paper reviews current research on Alumni Portal, the connections between alumnus and students, college interaction between alumnus, past records, event updates and records. The review covers 30 research papers, investigating database of Alumnus, students, past and present events held, interaction of alumnus in college events, interaction of alumnus and students. For improving the previous Alumni portals and projects related to Alumni.

DOI: 10.61137/ijsret.vol.10.issue6.343

AR Storytelling Application
Authors:-Sakshi Davkhar, Sreya Kurup, Dipali Sanap

Abstract-This paper explores the transformative potential of an Augmented Reality (AR) storytelling application designed to enhance traditional storytelling methods by integrating interactive digital animations, text, and audio into physical environments. The app offers a dynamic and immersive experience, particularly for children, by enabling real-time interaction with animated characters, voice narration, and engaging, interactive scenes. Unlike static books or conventional digital content, this app allows users to actively participate in the narrative, creating a more engaging and educational experience. By overlaying digital elements onto the real world, the app fosters increased interactivity and encourages deeper emotional and cognitive engagement with the story. Children can interact with animated characters, explore rich 3D environments, and receive instant feedback through audio cues and animations that respond to their actions. The app also supports educational growth by offering interactive learning modules, promoting reading comprehension, and allowing customization of story elements to accommodate multiple learning styles. The application leverages cutting-edge AR technologies to transform traditional narratives into immersive experiences, providing both entertainment and educational value. By integrating AI-driven components for voice recognition and dynamic content generation, the app can offer personalized experiences and adaptable content based on user preferences and interactions. This survey examines the underlying technologies and design choices that contribute to the app’s ability to engage users, as well as the broader implications of AR in storytelling for enhancing educational tools and creative learning platforms.

DOI: 10.61137/ijsret.vol.10.issue6.344

The Impact of Robotics on Modern Manufacturing
Authors:-Rithwik Agarwal

Abstract-This paper dives into how robotics is transforming manufacturing today. It looks at how robots are making processes faster, safer, and more efficient while also tackling some challenges like high costs and technical complexity. By exploring industries like automotive and consumer goods, and through examples from companies like Toyota and Unilever, the paper highlights both the advantages and limitations of using robots. It also touches on important issues like job impacts and cybersecurity risks, suggesting that thoughtful planning is essential for making the most of robotics in manufacturing.

DOI: 10.61137/ijsret.vol.10.issue6.345

Mechanical Engineering Innovations in Transportation
Authors:-Rithwik Agarwal

Abstract-This paper examines the pivotal role of mechanical engineering in advancing transportation through innovations like electric vehicles, lightweight materials, and dual-fuel systems. It highlights their impact on sustainability, efficiency, and safety while addressing challenges such as costs, regulations, and public acceptance. Emerging technologies like Hyperloop and hydrogen propulsion are also explored, emphasizing their potential to redefine global mobility.

DOI: 10.61137/ijsret.vol.10.issue6.346

Diabetes Prediction Using Neural Network
Authors:-Anand Singh, Vedant Urkudkar, Ruchi vairagade, Ketaki Punjabi

Abstract-Diabetes is one of the most frequent diseases worldwide where yet no remedy is discovered for it. Every year a great deal of money has to be spent for caring for patients with diabetes. Therefore, it is crucial that prediction should be very accurate and a very dependable method must be adopted for doing so. One of these methods is the use of artificial intelligence systems, and in particular, the use of Artificial Neural Networks, or ANN. So, in this paper, we used artificial neural networks in order to predict whether or not a person has diabetes. The criterion was to minimize the error function in neural network training with the help of a neural network model. After training the ANN model, the average error function of the neural network was equal to 0.01 and the accuracy of the prediction of whether a person is diabetics or not was 70%

DOI: 10.61137/ijsret.vol.10.issue6.347

Image Manipulation Web Application: A Next JS Implementation
Authors:-Assistant Professor Ms. Priyanka Kapila, Mr. Mayank Kumar Grade, Mr. Shubham, Mr. Himanshu Shahoo

Abstract-The enhancement in web technologies has contributed to the evolution of web applications that are very dynamic and engaging. This research work focuses on the creation of an online image editing application that is based on cloud infrastructure and modern web layouts/development tools such as Next.js, TailwindCSS, and Cloudinary’s APIs, among other resources, to deliver advanced image editing features. The application incorporates Clerk to allow users to create login accounts and easily register, while data is managed using MongoDB to facilitate the security of users and edited pictures across several devices. Necessary and basic features such as object removal, editing backgrounds, recoloring pictures, restoring, and changing the size of images are handled within the cloud and therefore benefit the functionality of the application and users as well. In addition, a contact form utilizing EmailJS has been integrated to enable communication with users. This research work highlights the legitimacy of cloud-based solutions as well as their expanded geographic reach in catering to an advanced user experience within image editing applications, thus supporting the growth of cloud computing and web technology.

DOI: 10.61137/ijsret.vol.10.issue6.348

Automatic Text Summarisation
Authors:-Sahil Damke, Shreya Telang, Nidhi Tadge, Sanskruti Burkule, Professor Manisha Mali

Abstract-Due to the large amount of information generated every day, automatic writing is an important part of knowledge management. The discipline has made great progress, especially with the emergence of abstraction, abstraction and hybrid content models. In the extraction method, the main idea is preserved by selecting the main sentence or phrase from the text, while in the abstraction method, all the information is repeated to create new sentences. As the name suggests, hybrid models include the features of both extraction and abstraction systems to get the best of both approaches. However, issues remain, particularly in how to address the authenticity, coherence, and length of the text. This article examines the current state of writing concepts and topics in practice and future research.

DOI: 10.61137/ijsret.vol.10.issue6.349

Car Surveillance System
Authors:-Kushagra Paliwal, Mohit Verma, Nilesh Panchal

Abstract-This study introduces the Car Surveillance System (Driver Negligence and Dissuader System), integrating advanced lane detection, drowsiness detection, pedestrian detection, and object detection technologies to boost road safety. Much like the luggage storage website, it presents a user-friendly interface and real-time alerts to avert accidents. Intelligent functionalities ensure efficacy and security, simplifying driving experiences and encouraging hassle-free travel. Tailored settings and transparent pricing cater to individual driver requirements, tackling prevalent challenges and nurturing safer roads for all users.

DOI: 10.61137/ijsret.vol.10.issue6.350

Weapon Detection Using Yolo
Authors:-1Assistant Professor Ms. Monika, Nikhil Tiwari

Abstract-In light of the increasing gun violence incidents worldwide, there is a pressing need for automated visual surveillance systems capable of detecting handguns. This paper presents a method for real-time handgun detection in video streams using the YOLO algorithm, comparing its performance in terms of false positives and false negatives against the Faster CNN algorithm. To enhance detection accuracy, we compiled a custom dataset featuring handguns from various angles and merged it with the Roboflow dataset. The YOLO model was trained on this combined dataset and validated using four different videos. The results indicate that YOLO effectively detects handguns across diverse scenes, demonstrating superior speed and comparable accuracy to Faster CNN, making it suitable for real-time applications.

DOI: 10.61137/ijsret.vol.10.issue6.351

Appointify: Doctor Appointment Booking System
Authors:-Assistant Professor M Ayush, Mr. Pawan Bhatt

Abstract-The field of healthcare is turning more towards tools to improve access, to services and make the experience better for patients and providers alike. A specific example is “Appointify,” a web platform for booking doctor appointments that was created using the MERN technology stack— MongoDB, Express.js, React and Node.js—with a goal of simplifying the appointment process and connecting patients, with healthcare professionals seamlessly. This document provides an outline of “Appointify ” a system created to tackle the issues encountered in appointment handling like extended waiting periods and disorganized scheduling well as the absence of efficient communication, between patients and healthcare providers.”Appointify” allows patients to search for doctors based on their expertise area request appointments access their history and update their profiles. It also equips doctors with functions to control their availability, schedule appointments. Engage with patients effectively. The platform includes functions such, as role based access control for security measures and encryption to safeguard data privacy It also features responsive design for user friendly interaction, on various devices

DOI: 10.61137/ijsret.vol.10.issue6.352

AI-Driven Portable Device for Authenticating and Identifying Denominations for the Visually Impaired
Authors:-Assistant Professor Ms. Suman, Ms. Surbhi, Mr. Shishir Gupta

Abstract-In this research paper we have proposed a device that helps visually impaired people recognise currency denomination in order to detect the denomination of Indian currency. The members of this community have challenges particular to them when it comes to dealing with money, and as such there is an ever-growing need for quick and accurate identification tools appropriate for their scenario. We describe the process we have followed to develop the device, offering a blend of image processing and machine learning to allow currency identification in real time. Surveys of potential users revealed important preferences and needs for accessibility and ease of use, guiding the design of a new device system. According to test results, the device achieves high accuracy in denominations recognition and effective user satisfaction, demonstrating a potential device providing financially independent life for visually impaired users. These findings underscore the value of blending cutting-edge technology with user-centered design to create impactful solutions for underserved communities. The paper hence concludes with recommendations for the further enhancements and future research to expand the device’s features and accessibility.

DOI: 10.61137/ijsret.vol.10.issue6.353

Device to Measure Gas Cylinder Level Using Internet of Things (IoT)
Authors:-Anup kumar, Anand Prakash, Anek Singh, Rupesh Anand, Shivam Badkur, Assistant Professor Ambika Varma,

Abstract-This system is designed to solve a common problem: running out of gas without knowing when it’s about to happen. The system keeps track of how much gas is left in the container by continuously checking its weight. If the gas is running low, it can automatically place a new gas order using the Internet of Things (IoT) technology. A device called a load cell is used to measure the weight of the gas container, and this data is sent to an Arduino Uno (a small computer) to compare with a standard weight. If the gas is low, the system sends a message to the user via SMS, using a GSM modem. For safety, the system also has sensors to detect gas leaks (MQ-2 sensor) and monitor the surrounding temperature (LM35 sensor). If any unusual changes are detected by these sensors, such as a gas leak or a sudden change in temperature, a siren will sound to alert the user.

DOI: 10.61137/ijsret.vol.10.issue6.354

Liver Damage Prediction: Using Classification Machine Learning Models
Authors:-Assistant Professor Ms. Rekha Choudhary, Mr. Himanshu Sharma, Mr. Yash Vachhani

Abstract-Liver diseases like cirrhosis and hepatitis are major causes of global morbidity and mortality, highlighting the need for early detection. Traditional diagnostic methods often identify liver damage at later stages, limiting preventive interventions. This study develops a machine learning model to predict liver damage earlier using clinical features and lab results. By analyzing a data-set with patient demographics and biochemical markers, we apply machine learning algorithms, including Random Forest, Decision Tree, and Logistic Regression, and evaluate their performance using metrics like accuracy, precision, recall, F1 score, and ROC-AUC. The Random Forest model outperformed others, showing high accuracy and robustness. Feature importance analysis revealed critical clinical factors, such as serum bilirubin and liver enzymes, in predicting liver damage. These results suggest that machine learning, especially Random Forest, could aid in the early detection of liver disease, improving patient outcomes. Future work will focus on using larger, more diverse data-sets and advanced models to improve predictive accuracy.

DOI: 10.61137/ijsret.vol.10.issue6.355

Reliable Machine Learning and Intelligent Computing for Complex Financial Systems
Authors:-Associate Professor Nagaraj Gadagin, Assistant Professor Anita Kori

Abstract-Financial systems have become more complicated than ever before due to their fast growth, which calls for creative methods of managing, analyzing, and forecasting system behavior. In order to solve problems in intricate financial systems, this study investigates the use of intelligent computing and trustworthy machine learning models. The goal of the project is to improve decision-making, risk assessment, and anomaly detection in dynamic financial contexts by fusing cutting-edge computational techniques with reliable AI frameworks. The dependability and interpretability of machine learning models are given special attention in order to make sure they satisfy the exacting standards of accuracy and transparency that are necessary for financial stakeholders. The implications of these technologies for reducing systemic risks and enhancing operational effectiveness are also covered in the study. This study demonstrates the revolutionary potential of intelligent computing and reliable machine learning in creating robust and flexible financial ecosystems via case studies and experimental validations. The results highlight how important they are in determining how finance and economic stability develop in the future.

Liver Disease Recognition Using Machine Learning
Authors:-Atharva Tupe, Suraj Gandhi, Rajesh Prasad

Abstract-For more effective treatment, early diagnosis of liver disease is crucial. Detecting liver disease in its early stages is challenging due to its subtle symptoms, often becoming apparent only in advanced stages. This research leverages machine learning techniques to address this issue by enhancing liver disease detection. The primary objective is to differentiate between liver patients and healthy individuals using classification algorithms. Liver disease has seen a global increase in prevalence in the 21st century, with nearly 2 million annual deaths attributed to it according to recent surveys. It accounts for 3.5% of global deaths [1]. Early diagnosis and treatment can significantly improve outcomes for patients with chronic liver disease, which is among the most fatal illnesses. The advancement of artificial intelligence, including various machine learning algorithms like Regression, Support vector machine, KNN, and Random Forest, offers the potential to extend the lifespan of individuals with Chronic Liver Disease (CLD).

DOI: 10.61137/ijsret.vol.10.issue6.356

Concurrency and Synchronization: Detection, Reasons, Tools and Applications
Authors:-Govind Khandelwal, Shriram Sonwane, Sachin Ware

Abstract-Concurrency and Synchronization in digital electronics where algorithms are use to comprehend the all the calculations for work. Digital machines ranging from Embedded Systems, IOT, Computers, Smartphones, Servers and Networking systems. Synchronization has became a very crucial part of basic programs running in the background of any operating system, that is the “Kernel”. These algorithms are the basic part of the OS for its smooth working in multi-programming, load balancing, time synchronization, data I/O ops within and out of the system, parallel computing with GPUs, I/O ops with IOT and cloud systems, Network and data security, mathematical calculations, etc. Synchronization programs are used to prevent conditions such as data races, deadlock, network latency, data corruption, manipulation and many more. Conditions created by these bugs can be visible or invisible in the user space. This Research paper is a comprehensive analysis on Concurrency and Synchronization. Source code examples of such conditions are given below from the original source code of some of the common linux distros. Applications of solutions to some of these issues in programs and systems to help progress for development of the performance and results.

DOI: 10.61137/ijsret.vol.10.issue6.357

Dynamic Ride Pricing Model Using Machine Learning
Authors:-Assistant Professor Ms. Preeti Kalra, Mr. Jitesh Pahwa, Mr. Anirudh Sharma, Mr. Dev Malhotra, Mr. Kunal Pandey

Abstract-Dynamic Ride Pricing is a vital feature in the ridesharing industry that allows companies to adjust ride fares based on shifts in supply, demand, weather conditions, and other relevant factors. This study details the development of a machine learning-driven dynamic pricing model designed to optimize fare adjustments in real time. By analyzing key variables such as trip distance, weather, and historical patterns of supply and demand, the algorithm can deliver pricing that is both contextually relevant and responsive. The model aims to achieve a balance between profitability and customer satisfaction by swiftly adapting to fluctuating market conditions. Leveraging advanced machine learning techniques, it ensures pricing that is not only accurate but also fair and responsive. By integrating these factors into a unified pricing strategy, the model provides an optimized solution that enhances operational efficiency and meets consumer needs, ultimately contributing to a more equitable and efficient pricing system in the ridesharing sector.

DOI: 10.61137/ijsret.vol.10.issue6.358

Ship with Windmill
Authors:-Pasinipali Balaji Prasad

Abstract-The use of wind power and conversion into energy, methodology regarding implementation of the idea, Advantages and Disadvantages and the scope for future.

DOI: 10.61137/ijsret.vol.10.issue6.359

Enhancing Real-World Experiences: A Study on Augmented Reality Technology
Authors:-Assistant Professor Mahesh Tiwari, Ayush Kumar Gour, Syed Murtaza Hasan Rizvi

Abstract-Augmented Reality, also known as AR technology, is a tool that employs computer graphics to superimpose a different layer of information onto the real world. Traditionally, virtual reality provided more interactive experiences when compared with other methods. In this paper, we explore the current state and future prospects of AR with a focus on its application in sectors such as medicine, education and retail among others. The functioning mechanisms of AR systems; sensors involved, processing algorithms required, rendering techniques for visual output and user interaction are discussed along with recent innovations like improved AR hardware or mobile applications. A literature review has been done to illustrate how AR enhances engagement in education, assists surgeons enhance precision during operations, changes customer experience in retail shops and provides entertainment through immersiveness. Moreover, AR technologies are also being explored for use in sectors such as tourism, automotive, and manufacturing, where they have the potential to revolutionize customer service, design processes, and workflow management.But there are obstacles that still hinders growth of AR such as technical barriers, privacy issues and expensiveness . Additionally, it discusses ways to overcome these challenges while pointing out things to research on so that maximum utility of AR can achieve. In conclusion, we find out that AR has great potential to alter different industries since it leads to more practical applications and encourages ongoing innovation.

DOI: 10.61137/ijsret.vol.10.issue6.360

Chronic Kidney Disease Prediction Using Federated Learning
Authors:-Assistant Professor Mrs.Suje.S.A, Chinmaya.S, Harini.S

Abstract-Chronic kidney disease (CKD) is a global health challenge, affecting millions of individuals and often leading to kidney failure when not detected early. The application of machine learning (ML) for CKD prediction has gained significant attention, enabling timely diagnosis using clinical data. This paper explores various ML techniques used for CKD prediction, focusing on preprocessing challenges such as missing data, data imbalance, and feature selection. Additionally, the paper discusses the emerging role of Federated Learning (FL), a decentralised approach to ML that allows for privacy-preserving collaborative model training across institutions.

DOI: 10.61137/ijsret.vol.10.issue6.361

Streamlit Powered Multi-Disease Prediction with Machine Learning
Authors:-Minal Dhankar

Abstract-Machine learning techniques are doing wonders in every sphere of life but using predictive analysis in healthcare is a challenging task. However, if implemented properly these techniques help in making timely judgements about the health and treatment of patients. Globally, diseases including diabetes, heart disease, and breast cancer are major causes of death; yet, the majority of these deaths are due to failure to have regular checkups for these conditions. Low doctor-to-population ratios and a lack of medical infrastructure are the root causes of the above-mentioned issue. Thus, early detection and treatment of these diseases can save many lives. Machine Learning, Deep Learning and Streamlit is an effort concentrated on the development of healthcare using in-depth engines to forecast several sicknesses. Streamli Cloud and Streamlit Library facilitate deployment of prediction models like a breeze for developers. This has made accessing and using prediction capabilities of the system easily done by any layman. The paper focuses on forecasting three major diseases namely diabetes, heart failure and Parkinson’s disease by using an advanced ensemble of deep learning models as well as traditional machine learning techniques. Then again, merging Support Vector Machine (SVM) algorithm together with Logistic Regression models will form one such integration scheme.

DOI: 10.61137/ijsret.vol.10.issue6.362

Intelli Search: Dual API-Powered Search Platform
Authors:-Assistant Professor Mr. Ayush, Mr. Amarjeet, Mr. Prakash Rai, Mr. Bhupender

Abstract-The goal of the web-based search engine “Intelli Search” is to give users accurate and pertinent content by combining personalized video recommendations with sophisticated AI-driven response production. The platform imitates Gemini’s capabilities by leveraging the YouTube API to suggest pertinent films arranged by comment engagement and the Gemini API to produce theoretical answers based on user inquiries. By using MongoDB to store and show user search history in a sidebar, the project allows users to view past queries after entering their login information. Auth0 securely manages authentication, guaranteeing a quick and secure user login. Through the integration of these technologies, Intelli Search provides a dynamic and customized user experience, enhancing search relevance by fusing multimedia resources with theoretical knowledge. The architecture is examined in this work.

DOI: 10.61137/ijsret.vol.10.issue6.363

Medical Image Analysis Using Deep Learning: A Comprehensive Review of Techniques and Applications
Authors:-Bramhanand Gaikwad

Abstract-Medical image analysis is a critical component in modern healthcare, enabling more accurate and timely diagnoses. Deep learning techniques, particularly Convolutional Neural Networks (CNNs), have shown impressive capabilities in automating medical image interpretation. This paper reviews the latest advancements in deep learning methods for medical image analysis, covering key applications such as image classification, segmentation, and object detection. We discuss the challenges in applying deep learning models to medical imaging, such as the need for large annotated datasets, generalization to diverse datasets, and model interpretability. Additionally, we provide an overview of state-of-the-art architectures and their performance in different medical imaging tasks. Finally, we address the future directions and potential clinical applications of these techniques.

DOI: 10.61137/ijsret.vol.10.issue6.364

A Review of AI & Robotics in Space Exploration Missions
Authors:-Ayush Santwani, Associate Professor Alka Rani

Abstract-Deep reinforcement learning has emerged as a transformative technology in AI and robotics, finding new answers to challenging problems in space exploration missions. This review details the latest developments within the DRL framework with applications in space robotics, exploring aspects such as autonomous navigation and resource optimization as well as mission planning. In this study, we do some case studies on strategies like AlphaNavNet, AstroPlannerNet, and open-source SpaceRL framework. We review how the DRL-based system addresses some key issues such as unpredictable terrain, delay in communication and exploration versus exploitation. In addition, this paper covers the embedding of simulation-to-reality translation in robotics and astrophysical modeling and the application of deep learning techniques such as Double Deep Q- Networks (DDQN) and Reinforced Deep Markov Models (RDMM) in augmenting the decision- making power of space missions. Although DRL has proved to outperform other approaches in simulaions and prototype testing, the review also emphasizes experimentation for added robustness and reliability within extraterrestrial condition. Through this analysis, we gain insight into the potential and limitations of DRL in advancing space exploration, using new architectures and real-world validation.

A Review of Accountability and Ethics in Artificial Intelligence: A Technical and Legal Synthesis Based on Current Research
Authors:-Anshul Kachhwal, Associate Professor Alka Rani

Abstract-AI has deeply penetrated even the most critical domains, including healthcare, finance, and governance, making it possible with its transformative potential to reach unprecedented efficiency and innovation. Still, this widespread diffusion poses ever more urgent challenges related to ethics and accountability that should not be ignored. Synthesizing insights from five seminal studies on “Ethical Approaches in Designing Autonomous and Intelligent Systems,” “Accountability of AI Under the Law: The Role of Explanation,” “Explainable AI as a Tool for Accountability,” “AI Accountability in Financial Decision-Making,” and “Ethical Implications of Artificial Intelligence (AI) Adoption in Financial Decision-Making,” this paper explores the interplay between accountability frameworks and explainable AI (XAI), regulatory compliance, and societal impacts by combining theoretical and practical perspectives. This paper explores the necessity of explainable models in terms of handling ethical dilemmas, such as bias mitigation, fairness, and transparency, through technical methodologies like sensitivity analysis, counterfactual reasoning, and Shapley values for feature importance. Case studies in health care, finance, and governance -AI-driven diagnostics, credit risk assessments, and algorithmic decision-making in welfare systems- will be explored to illustrate consequences of opacity and betterment facilitated by accountability-driven approaches. In terms of these elements, this paper discusses emerging regulatory landscapes, including the AI Act in the European Union and global data protection laws, as importance factors forming the ethical practices of AI. Public trust erosion due to biased or opaque AI systems is a further societal impact, and inclusive design and multi-stakeholder accountability are put forward as important aspects in this context. A balanced framework of ethical considerations to guide AI innovation should encompass both technical and normative dimensions. Various practical recommendations are laid out, such as standardized practices of XAI, robust accountability mechanisms, and proactive approaches to compliance and regulatory matters. The research brings the technological advancement closer to the imperatives of ethics in AI, toward trust, equity, and justice in its use.

A Review on the Advancements in Plant Disease Detection Using Deep Learning
Authors:-Divya Kanwar, Dy HOD Assistant Professor Uday Pratap Singh

Abstract-The use of DL algorithms revolutionizes the approach towards the detection of plant disease, making this most critical agricultural technology develop towards accuracy and efficiency that were not possible even with earlier methods. Apart from the benefits that an automated system may have over a manual intervention one, such as quicker identification of disease and less manual efforts, DL techniques, and CNNs in particular, allow the diagnosis of the diseases on plants with precision. The potential of AI-powered systems for plant disease detection is the ability to automatically analyze a plant image to recognize the symptoms and classify diseases with high accuracy. These systems also have the potential to provide real-time support by analyzing complex images and suggesting management recommendations for diseases. Thus, with DL algorithms, the system can identify diseases in plants, detect slight changes in texture and color, and recommend the corrective action to optimize crop health. Further, with the recent advancement in optimized models like YOLOv5 and hybrid techniques by integrating CNN with traditional classifiers such as Support Vector Machines (SVMs), the accuracy in detection has increased. Although the approaches present promising outcomes, challenges abound, especially in dealing with complex image backgrounds, low-quality datasets, and computational efficiency. This paper discusses approaches designed to overcome these hurdles, thus indicating the future direction of plant disease detection systems. This work will, therefore contribute towards the advancement of AI-driven agricultural solutions in terms of the accuracy and speed of plant disease detection and enable better crop management practices around the world.

Unified Adaptive Few-Shot Learning in Computer Vision
Authors:-Rahul Jangid, Assistant Professor Mohnish Sachdeva

Abstract-With the increasing prevalence of limited labelled data in many real-world applications, few-shot learning (FSL) has become an essential approach to enable effective learning from minimal examples. However, scalability, domain generalization, and adaptability to new tasks remain significant challenges. This paper introduces “Unified Adaptive Few-Shot Learning”, a novel framework that combines the strengths of metric learning, graph neural networks (GNNs), and meta-learning. By extending Prototypical Networks with GNN- based prototype refinement, our approach improves the quality of class representations and captures complex inter-class relationships. Meta-learning further enhances task-specific adaptation, while self-supervised pretraining boosts feature robustness. Additionally, integrating class metadata facilitates seamless transitions between few-shot and zero-shot tasks. Experimental evaluations on benchmark datasets like Mini-ImageNet and Meta-Dataset demonstrate that our framework outperforms existing methods in accuracy, scalability, and cross-domain generalization, offering a promising solution for real-world FSL applications.

Smart Contracts for Supply Chain Management
Authors:-Abhishek Sharma, Dr. Budesh kanwar

Abstract-The manufacture of raw materials to deliver the product to the consumer in a traditional supply chain system is a manual process with insufficient data and transaction security. It also takes a significant amount of time, making the entire procedure lengthy. Overall, the undivided process is ineffective and untrustworthy for consumers. If blockchain and smart contract technologies are integrated into traditional supply chain management systems, data security, authenticity, time management, and transaction processes will all be significantly improved. Blockchain is a revolutionary, decentralized technology that protects data from unauthorized access. The entire supply chain management (SCM) will be satisfied with the consumer once smart contracts are implemented. The plan becomes more trustworthy when the mediator is contracted, which is doable in these ways. The tags employed in the conventional SCM process are costly and have limited possibilities. As a result, it is difficult to maintain product secrecy and accountability in the SCM scheme. It is also a common target for wireless attacks (reply to attacks, eavesdropping, etc.). In SCM, the phrase “product confidentiality” is very significant. It means that only those who have been validated have acc ess to the information. This paper emphasizes reducing the involvement of third parties in the supply chain system and improving data security. Traditional supply chain management systems have a number of significant flaws. Lack of traceability, difficulty maintaining product safety and quality, failure to monitor and control inventory in warehouses and shops, rising supply chain expenses, and so on, are some of them. The focus of this paper is on minimizing third-party participation in the supply chain system and enhancing data security. This improves accessibility, efficiency, and timeliness throughout the whole process. The primary advantage is that individuals will feel safer throughout the payment process. However, in this study, a peer-to-peer encrypted system was utilized in conjunction with a smart contract. Additionally, there are a few other features. Because this document makes use of an immutable ledger, the hacker will be unable to get access to it. Even if they get access to the system, they will be unable to modify any data. If the goods are defective, the transaction will be halted, and the customer will be reimbursed, with the seller receiving the merchandise. By using cryptographic methods, transaction security will be a feasible alternative for recasting these issues. Finally, this paper will demonstrate how to maintain the method with the maximum level of safety, transparency, and efficiency.

Cross Site Scripting Research: A Review
Authors:-Ankit Jangid, Associate Professor Bhawana Kumari

Abstract-Cross-site scripting is one of the severe problems in Web Applications. With more connected devices which uses different Web Applications for every job, the risk of XSS attacks is increasing. In Web applications, hacker steals victims session details or other important information by exploiting XSS vulnerabilities. We studied 412 research papers on cross-site scripting, which are published in between 2002 to 2019. Most of the existing XSS prevention methods are Dynamic analysis, Static analysis, Proxy based method, Filter based method etc. We categorized existing methods and discussed solutions presented on papers and discussed impact of XSS attacks, different defensive methods and research trends in XSS attacks.

Reducing Digital Distraction through an AI-Driven Anti-Distraction Application
Authors:-Assistant Professor Ms. Rekha Choudhary, Mr. Abhishek Baghel, Mr. Vicky, Ms. Mona

Abstract-The Focus Pro Anti-Distraction Application is a productivity-enhancing tool designed to help users maintain focus by reducing distractions from digital platforms like social media, videos, and other time-wasting activities. With the increasing prevalence of digital distractions, this app provides a structured, customizable solution to improve concentration and task completion for students, professionals, and anyone seeking better focus. The app offers multiple focus modes, each tailored for specific tasks: Learning Mode, Assignment Mode, and Notes Mode. These modes feature task management tools, reminders, progress tracking, and a calendar to organize tasks and goals effectively. Users can customize their experience based on their specific needs, whether they are studying, working on assignments, or taking notes. A standout feature is the app’s blocking functionality, which allows users to create a customized list of websites and apps to block during use. This helps users avoid distractions and stay on task by preventing access to non-productive content on both mobile and desktop devices. In addition, the app integrates an AI-powered Filtering system that intelligently analyzes content on platforms like YouTube and Google. It uses keyword and hashtag analysis to allow access only to study-related content, ensuring users remain focused on educational materials. The app also includes performance analytics, which tracks user productivity and provides insights into task completion. Users earn points for completing tasks on time, and these points contribute to earning badges. This gamification approach encourages users to stay motivated and improve their focus. In addition, the app offers a streamlined profile section that allows users to monitor their achievements, track badges earned. The interface is designed to be user-friendly and visually engaging, making it easy for users to navigate modes.

Real-Time Soil Monitoring in Agriculture
Authors:-Priyanshu Kumawat, Assistant Professor Mohnish Sachdeva

Abstract-Within the face of world populace increase, sustainable and efficient crop production has come to be important. the mixing of emerging technologies consisting of the net of things (IoT), cloud computing, and machine mastering is revolutionizing agriculture through permitting actual-time soil tracking, crop selection, and predictive analytics for more desirable choice- making. This paper offers a comprehensive framework for IoT-enabled precision agriculture, which employs numerous sensors to reveal soil parameters—including moisture, pH, and temperature—and leverages advanced machine learning algorithms for crop advice and soil nutrient management. The proposed structures now not best optimize irrigation and fertilization but additionally provide a low-value, electricity-efficient method to information collection via wi-fi sensor networks. additionally, cloud-primarily based structures and cell programs provide farmers with far flung get entry to real-time data, permitting well timed interventions. by way of combining reinforcement learning fashions, multi-sensor information fusion, and modular hardware setups, this machine supports sustainable farming practices and will increase crop productiveness. The consequences show sizeable upgrades in prediction accuracy, decreased environmental effect, and more advantageous selection-making skills for farmers, contributing to the modernization of agriculture.

From Data to Diagnosis: A Review of Deep Learning’s Technological and Ethical Implications in Medical Innovation
Authors:-Arjunsingh Kuldeepsingh Rana, Assistant Professor Mr. Ebtasam Ahmad Siddiqui

Abstract-The rapid advancements in deep learning (DL) techniques have transformed the healthcare sector, leading to notable improvements in diagnostic accuracy, personalized treatment, and ongoing patient monitoring. One particularly promising application of deep learning in healthcare is Human Activity Recognition (HAR), which uses wearable and mobile sensors to track and categorize individuals’ daily activities. HAR, especially within the framework of the Internet of Healthcare Things (IoHT), has demonstrated significant potential in enhancing elder care, rehabilitation processes, and chronic disease management. However, despite these advancements, several challenges persist in fully leveraging deep learning for healthcare applications. A major challenge is the dependence on large, labeled datasets for training models. In real-world scenarios, obtaining labeled data for HAR tasks can be time-consuming, costly, and often impractical, leading to a reliance on weakly labeled or unlabeled data. To tackle this issue, recent strategies in deep learning, particularly semi-supervised and reinforcement learning techniques, have been introduced to make efficient use of the vast amounts of unlabeled data available. These methods, such as Deep Q-Networks (DQN) and auto-labeling schemes, significantly lessen the manual labeling burden while preserving high model accuracy. Additionally, deep learning’s capability to integrate multi-modal data from various sensors (like accelerometers, gyroscopes, and context sensors) is vital for HAR tasks. This integration of sensor data offers a more thorough understanding of human activity and improves the accuracy of activity classification models. Among the most promising deep learning models for HAR are Long Short-Term Memory (LSTM) networks, which excel at processing sequential data typical in human activity monitoring. LSTMs effectively capture temporal dependencies in sensor data, making them well-suited for identifying complex motion patterns and contextual changes.

Impact of Emotional Intelligence in Managing Stress: A Critical Analysis in Respect to Healthcare Sector through Literature Review
Authors:-Dr. Pramit Das, Assistant Professor Ms. Subhasree Ray

Abstract-The COVID-19 pandemic has had an unprecedented impact on health systems in most countries, and in particular, on the mental health and well-being of health workers on the frontlines of pandemic response efforts. The purpose of this study is to provide an evidence-based overview of the adverse mental health impacts on healthcare workers during times of crisis and other challenging working conditions and to highlight the importance of prioritizing and protecting the mental health and well-being of the healthcare workforce, particularly in the context of the emotional intelligence.

DOI: 10.61137/ijsret.vol.10.issue6.367

Detection of Phishing Websites Using Machine Learning
Authors:-Manish Gujral, Harsh Kumar, Annu Sharma, Dr.Monika

Abstract-Phishing is a category of cyberattack that includes the theft of credit card numbers, passwords, and other private data. We have employed machine learning algorithms to identify phishing websites in order to prevent phishing fraud. The availability of several services, including social networking, software downloads, online banking, entertainment, and education, has sped up the development of the Web in recent years. Consequently, enormous volumes of data are downloaded and uploaded to the Internet on a regular basis. Attackers can now obtain private information, including social security numbers, account numbers, passwords, and usernames, as well as financial information. This is one of the most important problems with web security and is referred to as a “phishing” attack on the internet. To identify these malicious websites, we employ a variety of machine learning methods, including KNN, Naive Bayes, Gradient Boosting, and Decision Trees. The study is broken down into the following sections. The introduction outlines the tools, methods, and concentrated zones that are employed. The process of gathering the data needed to proceed is described in depth in the preliminary section. Subsequently, the paper highlights the thorough examination of the information sources.

DOI: 10.61137/ijsret.vol.10.issue6.368

A Review on Matlab Simulink Modeling of Solar Based EV System with Control of its Utility Parameters
Authors:-Ajay Yadav, Assistant Professor Abhay Awasthi

Abstract-Emerging topics such as environmental protection and energy utilization have pushed research and development of electric vehicles. In the last few decades, numerous technologies have been developed for EV importance. In this article, key research topics in the area of EVs, namely electric machines, electrochemical energy sources, wireless charging infrastructure, and latest EV/HEV models are covered. This Review paper aims to consolidate the key emerging technologies in this field and provide the readers a blueprint to begin their own journeys.

Youtube Video Summary Generator
Authors:-Ms. Sumalata Bandri, Mr. Abhishek Pandey, Mr. Bhushan Mahadule, Mr. Om Satpute, Mr. Vaibhav Jawade

Abstract-This project introduces the YouTube Video Transcribe Summarizer, a tool designed to automatically extract transcripts and generate concise summaries from YouTube videos. By leveraging the YouTube Transcript API, the system retrieves accurate video transcripts and utilizes Google Gemini Pro’s advanced text-based model to create coherent summaries.
Users can input a YouTube video URL, which displays the video thumbnail for context. The application features a customizable prompt template to tailor the summary generation process, ensuring relevance to individual needs. Built on a user-friendly Streamlit interface, this tool aims to enhance content accessibility and engagement. Additionally, the project explores the possibility of executing local models for improved performance and user control. By streamlining the summarization of video content, the YouTube Video Transcribe Summarizer facilitates more efficient information consumption, empowering users to navigate the vast landscape of online video more effectively.

DOI: 10.61137/ijsret.vol.10.issue6.369

Why Do We Need So Many Programming Languages
Authors:-Kajal Nanda

Abstract-If we attempt to measure the need for the proliferation of so many programming languages, we will get an answer but it is a serious question in itself: why do we need so many programming languages?! Albeit there are existing so many dominant programming languages which can perform almost every task specifically, we are developing and depending upon a variety of them. Through this paper, the rationale behind developing diverse programming languages will be explored and the other factors like performance optimization, ease of use, specification and demand of the evolution of the era of technology will be discussed. It will also examine the distinguished categorisation of computer languages.

DOI: 10.61137/ijsret.vol.10.issue6.370

Indian Man Made Islands Idea to Save Wildlife
Authors:-Deepak Singh

Abstract-This research paper explores the concept of man-made islands as a potential solution to address habitat loss and environmental degradation. By creating artificial islands, we can provide new habitats for wildlife, protect existing ecosystems, and mitigate the impacts of human activities on the environment. The paper will delve into the design principles, construction techniques, and ecological considerations involved in creating sustainable man-made islands. It will also examine the potential benefits of these islands, such as increased biodiversity, improved water quality, and coastal protection. Additionally, the research will discuss the challenges and limitations associated with man-made islands, including their environmental impact, economic feasibility, and potential conflicts with other land uses. Ultimately, this paper aims to contribute to the ongoing dialogue on innovative solutions for conservation and environmental sustainability.

DOI: 10.61137/ijsret.vol.10.issue6.371

Nanorobotics: The Future of Medicine
Authors:-Snehal More, Aishwarya Deshmukh, Dipti Gade

Abstract-Nanorobotics is an exciting field that combines nanotechnology and robotics to revolutionize medicine. These tiny robots, smaller than a speck of dust can navigate through our bodies to deliver targeted treatments perform precise surgeries and even repair damaged cells . With their ability to access hard to reach areas and perform tasks at the molecular level nanorobotics hold immense potential in improving outcomes healthcare and transforming the future of medicines.

DOI: 10.61137/ijsret.vol.10.issue6.372

Nano Material Based Optical and Electrochemical Sensors
Authors:-M.Suriya Prasath Murugan, Dr. P.Selvamani Palaniswamy, Dr.S.Latha

Abstract-Nanomaterials display unique features such as Excellent physical and chemical stability, lower density and high surface area. This chapter focus on nanomaterials such as graphene and carbon Nanotubes, how it is electrically and optically sensored with Nanomaterials. Multiple complex biosensors has been focused and even the application of Nanaomaterials also. In past few years a major disease has been affected throughout the world that is COVID-19, how nanomaterials has been used in curing the disease.

DOI: 10.61137/ijsret.vol.10.issue6.373

DNA Computing
Authors:-Yash Malusare, Aditya Deshmukh, Saurabh Kumar Prabhakar

Abstract-DNA data storage is revolutionizing technology to fill up the voids in existing data storage systems with higher density and durability. The paper deals with DNA comput- ing, especially with the concept of using DNA sequences for data storage with emphasis on encoding digital data in DNA sequences and discussion on the latest developments in DNA storage technologies, challenges facing it, such as scalability and cost, and also the problem of error correction. The paper also highlights the advantages of DNA as a storage medium, including high information capacity and stability in the long term but discusses existing challenges. As a conclusion, we enumerate some directions for further research needed to make DNA data storage more practical. Another key challenge explored in the paper is error correction. DNA sequences, while robust, are prone to errors during synthesis, amplification, and sequencing processes. These errors can compromise the integrity of the stored data, necessitating the development of advanced error correction mechanisms. The paper examines current strategies for mitigating these errors, including the use of redundancy, coding theory, and error-tolerant storage architectures, while also identifying gaps that require further exploration.

DOI: 10.61137/ijsret.vol.10.issue6.374

Energy Efficiency by Optimizing Power Sharing with Clustering
Authors:-Ms. Umi Roman, Assistant Professor Mr. Kamaljeet Singh, Assistant Professor Mr. Parwinder Singh

Abstract-Conserving energy of power grid within wireless power grid nodes network (power grid) is crucial in different applications including wearable devices. To this end, proposed work uses sleep and wakeup protocol for conserving energy of power grid nodes. The protocol first of all examines the nodes that are not used for transmission of packets for longer period of times. After that detected node will be put to sleep. The nodes energy will play a crucial role to make it a cluster head. Euclidean distance will be used to elect node as cluster head. The experimental setup involves random node distribution, initial energy allocation, and the formation of clusters based on Euclidean distance. The proposed sleep and wakeup mechanisms strategically put nodes to sleep after periods of inactivity, conserving energy resources. A comprehensive evaluation, comparing the protocol’s performance with the widely used low energy aggregate cluster head (LEACH) selection protocol, stable election protocol (SEP), time based stable election protocol (TSEP) and distributed energy efficient clustering protocol (DEEC), reveals superior results in terms of fewer dead nodes, prolonged network lifetime, and efficient packet transmissions. The proposed method showcases a controlled and sustained pattern in communication to cluster heads and base stations, outperforming LEACH, DEEC, SEP and TSEP. Remaining energy analysis indicates a more gradual and sustainable reduction in energy levels, highlighting the protocol’s effectiveness in maintaining operational nodes over prolonged network. The study concludes with insights into future research directions, emphasizing parameter optimization, scalability considerations, integration of energy harvesting methods, and enhanced security measures.

Advanced Load Flow Analysis Techniques in MATLAB the Swing Equation and Newton-Raphson Method
Authors:-Mr.Barkat Ali Lone, Assistant Professor Mr. Kamaljeet Singh, Assistant Professor Mr. Parwinder Singh

Abstract-This paper presents a brief idea on load flow in power system, bus classification, improving stability of power system, flexible ac system, various controllers of FACTs and advantages of using TCSC in series compensation. It presents the modelling scheme of TCSC and the advantages of using it in power flow network. The plots obtained after simulation of network using MATLAB both with and without TCSC gives fair idea of advantages on use of reactive power compensators. load flow studies are fundamental in power system analysis for ensuring efficient and stable operation of electrical networks. This thesis investigates the application of the swing equation and the Newton-Raphson method in performing load flow analysis, aiming to enhance the accuracy and efficiency of power system evaluations. The swing equation, representing the dynamic response of a generator’s rotor to changes in system conditions, is used to model the transient behaviour of generators in power systems. This dynamic model is crucial for understanding how generators respond to load variations and network disturbances. However, for steady-state analysis, which is essential for system planning and operation, the swing equation’s role is more implicit, focusing on power balance and network equilibrium. In this study, we integrate the swing equation into a comprehensive load flow analysis framework, combining it with the Newton-Raphson method—a robust iterative technique for solving nonlinear algebraic equations. The Newton-Raphson method is employed to solve the power flow equations, which describe the relationship between generator outputs, load demands, and network configurations. The thesis details the formulation of the power flow equations and the application of the Newton-Raphson method to solve these equations efficiently. The integration of the swing equation helps refine the analysis by incorporating generator dynamics into the power flow study. The effectiveness of this approach is demonstrated through various case studies on different network configurations, showing improvements in both accuracy and convergence speed compared to traditional methods.

Automatic Detection of Traffic Violations Using Yolo Model and Challan Generation
Authors:-Kishan Singh, Kunal Lohar, Pratham Bagora

Abstract-As the rate of traffic violations is on the rise, there arises the need for automated enforcement systems. This project is about the implementation of an automated system of e-challan generation based on the license plate detection system. Cameras positioned at the intersections take images of the vehicles violating traffic rules; using computer vision techniques, the number plates are identified and read. The system now fetches the registered mobile number of the violator and sends out an e-challan by itself, thus although removing the manual efforts with more precision [1] and effective enforcement. By using tools like OpenCV and YOLO in major towns, the project can make the roads safer and traffic flow manageable.

DOI: 10.61137/ijsret.vol.10.issue6.375

Robotics Neurosurgery: A Transformative Approach to Precision Medicine
Authors:-Lakshya Jain

Abstract-Robotics in neurosurgery has completely changed the game, and now there is much greater accuracy, higher efficiency levels, and greater safety of the patient. Robotic systems such as ROSA, NeuroMate, and Stealth Autoguide have taken minimally invasive approaches within surgery to an entirely different level, allowing for complex sutures to be performed with great ease. This paper discusses the history of development of robotic systems, the specifics of their application in different neurosurgical procedures, and their advantages related to the lesser invasiveness, better results for the patients, and shorter periods of the recovery. Limitations such as costs, the need for training, and ethical issues are in the analyses, and also expected advances such as autonomous operations driven by AI and tele-robotics. There is great potential with the use of robotics in the development of neurosurgical practice towards more accurate and patient-centered clinical activities.

Impact of Machine Learning on High Frequency Trading: A Comprehensive Review
Authors:-Dipanshu Jain

Abstract-High-Frequency Trading (HFT) is a critical component of modern financial markets, characterized by the execution of large volumes of orders within fractions of a second. The integration of machine learning (ML) techniques has revolutionized HFT by enhancing decision-making, optimizing trading strategies, and mitigating risks. This study explores the transformative impact of ML on HFT, focusing on methodologies such as Support Vector Machines (SVM), Random Forests (RF), Deep Learning architectures like Convolutional Neural Networks (CNNs), and advanced techniques including Reinforcement Learning and hybrid models. The research examines these methods in terms of their effectiveness in predictive modeling, pattern recognition, and real-time analytics. Additionally, a comparative analysis of these ML models highlights their advantages, limitations, and adaptability to the dynamic nature of financial markets. By addressing the challenges and opportunities of integrating ML into HFT, this paper provides insights into the future potential of automated trading systems and their implications for market efficiency and stability.

Review on Simulation Model To Reduce The Fuel Consumption Through Efficient Road Traffic Modelling
Authors:- Md Muneer Alam, Dr. Sunil Sugandhi

Abstract- Traffic control strategy plays a significant role in obtaining sustainable objectives because it not only improves traffic mobility but also enhances traffic management systems. It has been developed and applied by the research community in recent years and still offers various challenges and issues that may require the attention of researchers and engineers. Recent technological developments toward connected and automated vehicles are beneficial for improving traffic safety and achieving sustainable goals. There is a need to develop a survey on traffic control techniques, which could provide the recent developments in the traffic control strategy and could be useful in obtaining sustainable goals. This survey presents a comprehensive investigation of traffic control techniques by carefully reviewing existing methods from a new perspective and reviews various traffic control strategies that play an important role in achieving sustainable objectives. First, we present traffic control modeling techniques that provide a robust solution to obtain reasonable traffic and sustainable mobilities. These techniques could be helpful for enhancing the traffic flow in a freeway traffic environment. Then, we discuss traffic control strategies that could be helpful for researchers and practitioners to design a robust freeway traffic controller. Second, we present a comprehensive review of recent state-of-the-art methods on the vehicle design control strategy, which is followed by the traffic control design strategy. They aim to reduce traffic emissions and energy consumption by a vehicle. Finally, we present the open research challenges and outline some recommendations which could be beneficial for obtaining sustainable goals in traffic systems and help researchers understand various technical aspects in the deployment of traffic control systems.

Budget-Beacon
Authors:- Assistant Professor Princy Shrivastava, Sejal Raghuwanshi, Supraja Krishnan

Abstract- The ‘Budget Beacon’ is an unadorned web application designed to make it easy for people to manage their finances and monitor their expenses. It provides users with the facilities to make financial decisions and strategies. Incorporating advanced features makes it easier for users to maintain their finances with precision and make more financial decision with precision. The web application gives users the ability to keep track of their daily expenses and break down their spending by category [1].It helps users keep their financial information digitally eliminating the traditional book keeping system.

DOI: 10.61137/ijsret.vol.10.issue6.376

Service-Hub: An On-Demand Home Services Platform
Authors:- Ishika Joshi, Ishwar Rajput, Mohit Deshmukh, Professor Garima Joshi

Abstract- Managing data for diverse types of home service providers can be challenging for users due to communication gaps between providers and recipients. This often leads to unexpected inconveniences for service recipients and missed opportunities for providers to showcase their skills effectively. ServiHub, an on-demand home services platform, bridges this gap by facilitating seamless two-way communication between service providers and recipients. The platform simplifies the process of finding the right service provider and ensures efficient job scheduling for providers. Additionally, a feedback-based rating system enhances the skills of service providers and ensures users receive improved and reliable services over time.

Automated Temperature Control System by Using Atmega 328 Micro-Controller and DC Fan
Authors:- Deepavarthini S, Subaranjani B S, Karpagam P

Abstract- The main aim of this project is to design the system by using the micro-controller (ATmega328) and temperature sensor for sensing the room temperature with a small DC fan. The system was designed to maintain the constant and comfortable room temperature by automatically activating the DC fan when the temperature exceeds the normally fixed temperature value and deactivates the DC fan when the temperature value falls below the fixed value. The temperature sensor used here will statically monitors the temperature value of the room. By using the reading data the controller makes the decision either to activate the DC fan or to deactivate the DC fan. This system is the energy saving way that activate the DC fan when only the temperature exceeds the fixed value else the fan will be deactivated. It is one of the best solution for maintaining indoor conditions, minimizing the manual interaction of the user and provide the overall comfort to the user.

DOI: 10.61137/ijsret.vol.10.issue6.377

A Survey of Machine Learning Approaches for High-Quality Image Restoration and Reconstruction
Authors:- M. Tech Scholar Shubhangi Mansore, Professor Kamlesh Patidar

Abstract- The restoration of damaged images has become an essential and highly valuable tool in a wide range of technical applications, including space imaging, medical imaging, and numerous other post-processing techniques. These applications often involve the challenging task of correcting images that have been degraded by factors such as blur and noise. Most image restoration methods begin by simulating the processes that cause image degradation, typically focusing on the effects of blur and noise, and then work to approximate the original image. However, in more realistic real-world scenarios, the challenge is to estimate both the true image and the associated blur based on the characteristics of the degraded image, without relying on any prior knowledge of the blurring mechanism. This situation reflects the complexities encountered when dealing with real-world data. This thesis introduces and develops an innovative approach to digital image restoration, utilizing punctual kriging and various machine learning algorithms. The focus of this research is on restoring images that have been degraded by Gaussian noise, achieving a balance between two competing objectives: maintaining smoothness while preserving edge integrity. This approach aims to enhance the effectiveness of image restoration techniques, particularly in situations where the image has been compromised by environmental and other factors.

Structural Design and Analysis of Wind Turbine
Authors:- Md Fakhor Uddin

Abstract- This thesis presents a comprehensive exploration into the design, modeling, and analysis of a wind turbine, employing a multidisciplinary approach to optimize its performance. The blade geometry was generated using QBlade software, a robust tool for blade design in wind turbine applications. The 3D model was then meticulously crafted using SolidWorks, integrating aerodynamic principles and structural considerations. The heart of this project lies in the utilization of SolidWorks Flow Simulation for a detailed analysis of the aerodynamic characteristics of the designed wind turbine. The simulation facilitated a thorough examination of airflow patterns, turbulence effects, and pressure distributions around the blades, offering valuable insights into the efficiency and energy-capturing potential of the turbine under various wind conditions.

DOI: 10.61137/ijsret.vol.10.issue6.378

Review on Performance Parameter of MOSFET and FinFET Transistor
Authors:- Assistant Professor Madhvi Singh Bhanwar, Associate Professor Dr.Nidhi Tiwari, Professor Dr. Mukesh K Yadav

Abstract- In modern world technologies are grooming very fast day by day along with the world semiconductor industry the world of IC is also grooming and enhancing the technologies day by day as we know according to Moore’s law the number of transistors will be double on a chip in every eighteen months that means the size of components will be reducing day by day in the same way types of transistors were introduced like MOSFET and FinFET. FinFET replaced MOSFET, FinFET resolved all the challenges of MOSFET and helped in compact designing of electronic devices, FinFET is widely used in various modern electronic devices because of its structure, fast switching speed, low power consumption and less leakage current.

DOI: 10.61137/ijsret.vol.10.issue6.381

Truck Chassis Frequency Analysis with Different Simulation Conditions
Authors:- Dr. Prashanth A .S, Amith Kumar S N, Dr. Vishwanth M, Dr. T N Raju

Abstract- The chassis of a truck is the backbone of the vehicle, incorporating the majority of component systems such as axles, suspension, gearing, cab and trailer, and is typically subjected to the load of the cabin, its contents, and inertia forces induced by rough road surfaces, among other things (i.e. static, dynamic and cyclic loading).In fatigue research and component life prediction, strain analysis is critical for determining the best stress point, also known as the juncture that leads to likely failure. One of the causes that contributes to fatigue loss is this juncture.

Optimizing Solar Energy: A Study on Dynamic Panel Systems
Authors:- Ranjeeta Susan Avinash

Abstract- The greatest challenge in the upcoming decades is to switch from using fossil fuels to a greener form of energy. Solar energy is of the highest priority. However, the frequent change in the sun’s position with respect to the Earth makes it nearly impossible to collect a hundred percent heat energy from the sun. Therefore, the need to improve the energy efficiency of photovoltaic solar panels by building a solar tracking system must be considered. To get maximum energy, PV panels must be perpendicular to the sun’s position. The methodology includes the implementation of an Arduino-based solar tracking system consisting of Light-dependent resistors (LDRs), a PV solar panel, and a servo motor to control the movement of the solar panel based on the position of the sun. The result of this work has clearly shown that the tracking solar panel produces more energy than a fixed panel.

Analytical Study of Grubler’s Criterion for Plane Mechanisms
Authors:- Professor N.Tamiloli, T.Gowtham, T.Gowshik

Abstract- Grublers criterion is a foundational concept in kinematics, offering a systematic approach to determining the degrees of freedom (DoF) of planar mechanisms. This study delves into its theoretical basis, exploring its application to various types of plane mechanisms. By analyzing case studies and real-world examples, this research aims to validate the criterion’s utility and highlight its limitations. The findings demonstrate that while Grublers criterion effectively predicts kinematic behavior, it requires adaptation for certain complex mechanisms. The study provides insights into enhancing the understanding and application of this criterion in mechanical design.

Multimodal Emotion Recognition Using BERT and ANN: A Hybrid Deep Learning Approach
Authors:- Research Scholar Avasheen Shishir Temurkar, Professor Anuradha Purohit

Abstract- Emotion recognition plays a vital role in enhancing human-computer interaction systems by enabling empathetic and context-aware AI solutions. This study introduces a hybrid deep learning architecture that integrates BERT for extracting contextual text features and an Artificial Neural Network (ANN) for processing MFCC-based acoustic features. By combining textual and audio modalities, the proposed model effectively addresses the limitations of single-modality approaches. The model is evaluated on the USC-IEMOCAP dataset, encompassing six emotion categories: ‘Happy’, ‘Sad’, ‘Angry’, ‘Neutral’, ‘Frus- trated’, and ‘Excited’. It achieves competitive performance with a weighted F1-score of 0.91 and an accuracy of 86%, outperforming several state-of-the-art methods. The fusion of text and audio features enhances the model’s ability to capture subtle emotional nuances, demonstrating the potential of multimodal learning for robust emotion classification. This research underscores the value of hybrid architectures in advancing emotion recognition for real- world applications.

DOI: 10.61137/ijsret.vol.10.issue6.382

Educational Data Mining on University Management Information System for Measuring Performance of Students
Authors:- Pankaj Shrimali, Dr. Tarun Shrimali

Abstract- Data mining techniques are used in the numerous industries alongwith the IT sector, Agriculture and education system. Massive technical advancements and opportunities from past decades change the approach and lifestyle of the people. Although data mining techniques are used in the several industries but it is new approach in the Academics. The education system has not greatly profit from the potential of data mining techniuqes. A substantial amount of information are required for the better performance of the students in the academics. There is a vast amount of data are available which can help to find the performance of the students. The role of the data mining technology is to find out the performance of students in academics, the factors also find out which affects the academic performance and also other issues like financial, family background etc. how it effects the performance, how semester wise results so that students aware about the performance and also gender wise how it affects.

DOI: 10.61137/ijsret.vol.10.issue6.383

Validation Testing of Digital Blood Pressure Monitoring Devices for the Upper Arm According to the ISO 81060-2:2018/ AMD 1:2020 Protocol
Authors:- Saheb Singh, Deepak Sinha

Abstract- The purpose of the study was to ascertain the accuracy of blood pressure monitors commonly available in the market. Six devices were chosen including one professional BP monitor for home, clinical and hospital use, manufactured by Mann Electronics India Private Limited, Kota from the market. These devices did not have accessible validation testing results. The subjects for assessment were adults from the general population with varied age groups and sex. The objective was to establish whether the devices conform to the requirements of ISO 81060-2:2018/AMD1: 2020 protocol

DOI: 10.61137/ijsret.vol.10.issue6.384

Comparative Study of Dda Algarthem, Bresenham’s Line-Drawing Algorithm, Midpoint Circle Algorithm Using Python
Authors:- Professor N.Tamiloli, T.Gowtham

Abstract- Efficient algorithms for rendering geometric shapes are fundamental in computer graphics. This study presents a comparative analysis of the Digital Differential Analyzer (DDA), Bresenham’s line-drawing, and Midpoint circle algorithms. We evaluate their performance in terms of computational efficiency, accuracy, and ease of implementation. Python is used as the platform to implement and test the algorithms. Experimental results demonstrate that while DDA offers simplicity in implementation, Bresenham’s algorithm is computationally more efficient for line drawing. The Midpoint circle algorithm proves robust for circular shapes but is relatively complex. This paper provides insights into the algorithms’ suitability for various real-world applications, backed by runtime performance and output quality metrics.

Diagnosis of Acute Diseases in Villages and Smaller Towns Using AI
Authors:- Shreya Ravi Kumar, Neha R., Sneha R.

Abstract- Healthcare has changed as an effect of artificial intelligence’s remarkable accuracy and efficiency in medical diagnostics. A technology named artificial intelligence (AI) lets computers along with additional machines to mimic human abilities such as understanding, problem-solving, innovative thinking, autonomy, and the decision-making process Applications and devices with AI capabilities possess the ability to recognize and understand objects. They are able to decode and give response to human speech. AI is transforming the way illnesses are recognized, evaluated, and treated, especially in the field of medical diagnostics. Using machine learning and deep learning algorithms, AI can swiftly and effectively understand enormous quantities of data, offering healthcare professionals insightful information. These developments not only increase the accuracy of diagnoses but also make it possible for early diagnosis and customized treatment plans. In the early days, AI was primarily employed for administrative duties, but its use has risen significantly. Massive quantities of data can now be accurately and quickly evaluated by AI and machine learning systems, which helps healthcare professionals make better decisions. Medical practice can be revolutionised by these technologies, which can interpret medical pictures, discover trends, and even predict the course of diseases. Access to effective healthcare is usually limited in neglected and rural areas, leading to mediocre health outcomes and delayed diagnosis. Existing ways of resolving this issue, such as telemedicine, have struggled to grow in parallel with growing demands for healthcare. According to this method, a system driven by artificial intelligence would be able to comprehend a large volume of medical data, identify symptoms, and converse with patients in order to find out about their medical concerns. The advent of advanced AI- powered technology and the growing popularity of smart assistants like Google and Alexa signal the beginning of an era of change in healthcare innovation.

Development of Lightweight High-Entropy Nanocomposite Materials for Enhanced Protective Hat
Authors:- Abdulaziz S. Alaboodi, S. Sivasankaran, R. Karunanithi, Khalid Algadah

Abstract- The research project focuses on the design and development of lightweight, high-entropy nanocomposite materials for hard hats and helmets, aimed at enhancing safety across various industrial sectors, including construction and manufacturing. By blending five thermoplastic polymers—high-density polyethylene (HDPE), polycarbonate (PC), polypropylene (PPE), polyethylene terephthalate (PET), and polybutylene terephthalate (PBT) with glass fibers and nanographene, the study produced novel composite materials. Mechanical testing demonstrated improved strength and impact resistance, with a notable 13% weight reduction in the final prototype compared to traditional materials. The project utilized advanced characterization techniques, including FTIR and XRD, to validate the material properties. These innovative materials not only meet industry safety standards but also align with environmental considerations by utilizing readily available raw materials.

Examining the Acceptance of Mobile Marketing by Customer of Small and Medium Scale Enterprises
Authors:-Sopheap Suon

Abstract- In this study we try to explore the concept of mobile marketing in a holistic context. The main focus of the research is on consumer’s behaviour towards mobile marketing. The research is conducted through a primary methodology. Both quantitative and qualitative methodology were used. Surveys were conducted from customers of SMEs and interviews were conducted from the managers of those SMEs. The result shows various consumer attitudes towards mobile marketing, which organisations can understand and attract customers.

DOI: 10.61137/ijsret.vol.10.issue6.385

Smart Classroom Management Software for Enhanced Learning Environment
Authors:-Assistant Professor Ranjana Thakuria, Prajwal k, Sindhu H, Soumya A Bavagi

Abstract- Modern education needs real-time engagement and attendance tracking in order to ensure an effective learning environment. This paper introduces a Smart Classroom Management System, developing together with state-of-art tools like OpenCV for facial recognition and the Mailgun API for effective notifications. The automation of attendance would include sending absence notifications along with the topics missed to students and their parents at login. Furthermore, a camera is turned on during the login session to monitor the activity and engagement levels of the user. The system facilitates instant alerting about inactivity to mentors or parents, thus strengthening accountability. By integrating these technologies, the proposed system is the intelligent, responsive solution for classroom automation, allowing the creation of a more connected and interactive educational ecosystem.

Employing Swarm Intelligence for Optimizing Latency and Energy Consumption for Routing in WSNs
Authors:-Khushboo Parmar, Professor Ruchika Pachori

Abstract- Efficient routing is crucial for many practical applications in wireless sensor networks. Nevertheless, they encounter the unavoidable obstacle of restricted energy resources, which underscores the need of developing data transmission mechanisms that optimize the allocated energy to enhance the longevity of the networks and minimize the system’s latency. Implementing efficient clustering and energy management strategies can enhance the longevity of the network while concurrently decreasing the observed delay. The present study introduces a two-tier methodology for reducing unnecessary transmissions in conjunction with particle swarm optimization (PSO). The objective is to minimize the distances inside clusters in order to reduce both latency and energy usage. The evaluation parameters for the proposed method include the delay in the first hop, the latency in the network, and the energy usage. This empirical method has been employed to determine the optimal fitness function so as to optimize latency and energy consumption in WSNs.

DOI: 10.61137/ijsret.vol.10.issue6.386

AI in Healthcare and Medicine
Authors:-Assistant Professor Santhosh T, Khushi N S, Likhitha K M, Mamatha V

Abstract- AI is the science and engineering of creating intelligent machines, particularly clever computer programs. In fact, AI is already being used in healthcare in a number of ways that are pertinent to nurses in both nursing practice and nursing education. It consists of numerous healthcare technologies that improve patient care and change the duties of nurses. The workload of nurses is lessened as a result of it. AI ethics are crucial since the technology can effect not just the outcome for a single patient but also the way it is used in healthcare during the research, design, testing, integration, and continuous usage phases. Mobile health, clinical decision support, and sensor-based technology like voice assistants and robotics are examples of AI tools for nurses.

DOI: 10.61137/ijsret.vol.10.issue6.387

Over the top Platform
Authors:-Vipashyna Arun Sable, Namrata Yeola, Sanchee Sable, Kanishka Sable

Abstract- Hotstar, (now Disney+ Hotstar), is the most subscribed–to OTT platform in India, owned by Star India.The major cause of the issue might be an unreliable internet connection or connection that is not operating correctly in hotstar. OTT has boosted experimentation to another level. exchange4media Group held the second edition of its one-day event on OTT titled e4m Play Streaming Media Conference & Metal Announcements on May 12, 2021, at 2 pm. The awards honoured excellence in the on-demand video and audio content. OTT platforms deliver content via the Internet, circumventing the need to pay subscriptions to traditional cable broadcast and satellite TV service providers. Therefore, we are building an OTT platform. We are adding subscription model. The web system is developed with PHP, MySQL and Xampp

DOI: 10.61137/ijsret.vol.10.issue6.388

Optimizing Business Outcomes through Data-Driven Decision-Making: Techniques for Complex Dataset Analysis
Authors:-Vinaychand Muppala

Abstract- This study investigates how big data, artificial intelligence (AI), and predictive analytics can work together to transform marketing strategies within the context of Industry 4.0. By utilizing advanced analytical techniques, businesses can enhance their marketing efforts, predict consumer behavior, and optimize resource allocation to improve return on investment (ROI). The research examines the capabilities of AI algorithms and predictive analytics, demonstrating their ability to process large datasets and uncover actionable insights. Through a series of case studies and examples, we highlight how companies across various industries are leveraging these technologies to stay competitive in today’s fast-paced market. Furthermore, the study explores the challenges and ethical concerns related to integrating AI and predictive analytics into marketing strategies. In conclusion, this research underscores the significance of data-driven decision-making in maximizing marketing ROI in the age of Industry 4.0.

A Study on Factors Affecting to Loan Defaults of Micro Credit (Special Reference to People’s Bank Branches in Anuradhapura Region, Sri Lanka)
Authors:-Samansiri Sooriyagama

Abstract- This research investigatesthe factors affecting to loan defaults of micro credit (special reference to people’s bank branches in Anuradhapura region, Sri Lanka).The study addresses the critical need to understand the factors contributing to loan defaults, arrears, and loan restructuring, providing valuable insights for microfinance institutions to enhance their risk management strategies. The primary objectives of this study are to identify, analyse, and comprehend the factors influencing loan repayment behaviour among microfinance clients at People’s Bank branches in the Anuradhapura region. The research aims to contribute to the existing body of knowledge in microfinance and provide practical recommendations for enhancing the loan repayment process. A quantitative research approach was employed, utilizing Likert scale questionnaires to gather data on socioeconomic factors, loan characteristics, institutional practices, and borrower financial behaviours. The survey was distributed to a representative sample of microfinance clients in the Anuradhapura region. Data analysis was conducted using SPSS and Microsoft Excel, employing statistical methods to draw meaningful insights. The research revealed significant correlations between certain socioeconomic factors and loan repayment behaviour. Income levels, educational background, and employment status demonstrated notable associations with loan default rates. Additionally, institutional factors, such as the loan approval process and collection procedures, played a crucial role in shaping repayment behaviour. This research contributes valuable insights into the multifaceted aspects of loan repayment behaviour in microfinance. By understanding the key determinants, microfinance institutions can tailor their practices to mitigate risks and foster a more sustainable and inclusive financial environment. While efforts were made to ensure the reliability and validity of the research, certain limitations, such as sample size constraints and potential biases, should be acknowledged. Future research endeavours could delve deeper into the cultural and social dimensions influencing loan repayment behaviour. Longitudinal studies may also provide a dynamic perspective on the evolving nature of microfinance clients’ financial behaviours.

DOI: 10.61137/ijsret.vol.10.issue6.389

Optimizing the Influence of Temporal Dynamics, Network Topologies, and Semantics on Unsupervised NLP Algorithms
Authors:-Mayank Konduri

Abstract- The purpose of this study was to generate an algorithm able to decipher bots in social media. Prior research shows that variables/parameters affect the detection of AI; however, none attempt to compile an algorithm accurate enough to be deployed into a real-world scenario. Data was collected through mixed methods, in which data was collected online and through questionnaires. Participants included individuals from all demographics, only restricted to demonstrate no bias. Initial results show a strong correlation with variables on the usage of AI. This means that a model which can effectively deduce the usage of AI is plausible. Therefore, the conclusion can be made that it is possible to find bots in social media; however, this is limited to 70% accuracy, given the available resources. Future research should be targeted towards making sure text can be deciphered with more accuracy.

DOI: 10.61137/ijsret.vol.10.issue6.390

A Survey on Machine Learning Handling Imbalanced Dataset in Credit Card Fraud
Authors:-Pawan Panchole, Rajesh Dhakad

Abstract- In the era of digital transaction people prefer to make online payments and purchases due to the convenience of time, transportation, etc. Credit card fraud has also increased significantly due to the growing trend of e-commerce. Fraudsters try to take advantage of card and internet payment information. Credit card and online payment information is often used by fraudsters for fraudulent purpose. Imbalanced dataset and high dimensionality of data are the key issues observed in credit card fraud detection. The use of various machine learning algorithm has been utilized for identifying anomalies in credit card transaction, focusing on the problem of imbalanced dataset and reduction of dimension which were carefully reviewed and studied. The study investigates the impact of imbalanced datasets on PCA-based fraud detection and provided detailed techniques such as Random Oversampling, SMOTE & Random Undersam- pling to handle imbalanced datasets and various classification as well as anomaly detection methods. Additionally, given the labelled nature of the dataset, various methods are reviewed like Logistic Regression, Random Forests, and Decision Trees. This study analyses and compares the performance of these methods before and after applying PCA and addressing data imbalance to assess their effectiveness in detecting credit card fraud.

DOI: 10.61137/ijsret.vol.10.issue6.391

Optimizing Information Management, Security, and Analysis with Database Technologies
Authors:-Greeshma Muraly

Abstract- Database technology has been a central focus for organizations and businesses involved in managing information. As the amount and complexity of data continue to increase, efficient data management has become more critical. This paper examines the wide-ranging uses of database systems across different sectors. It starts with an overview of both relational and non-relational databases, then explores their applications in areas such as enterprise management, retail, education, and government/public services. In enterprise management, databases ensure data is timely, accurate, and reliable, forming the foundation for effective information handling. In retail, they support inventory management, sales analysis, and improve customer interactions. In education, databases help manage student records, support teaching insights, and contribute to online learning platforms. For government and public services, databases enhance information sharing, promote transparency, and are essential for crisis management and emergency response. This paper highlights the diverse and crucial roles of database systems while also addressing current research trends and future advancements in the field.

DOI: 10.61137/ijsret.vol.10.issue6.392

Development of an AI-Powered Chess Engine Using Minimax Algorithm and Genetic Algorithm for Evaluation Function
Authors:-Rishi Kiran Karnatakam, Kalyani Gullaeni, Sai Tarun Siri Vadlakonda

Abstract- This project demonstrates a high level processing chess engine employing the Minimax algorithm along alpha-beta pruning, one more added feature used is a genetic algorithm which proves useful to make decisions and performance higher. While the Minimax algorithm is a cornerstone of game theory, which helps one to discover best moves and counter-moves in order not to lose in games like chess, with Alpha-beta pruning you can limit the number of nodes that are evaluated and hence restrict computational power needed without loosing optimality. Our evaluation function rates board states, based on which we use a genetic algorithm to fine-tune it. The optimal criteria are formed by the selection and combination of those evaluation functions over generations, while the genetic algorithm evolves a population of candidate solutions. This continuous refinement allows the evaluation function to improve as it gives a better result. While playing, the engine uses the so-called Minimax algorithm with alpha-beta pruning to look ahead and move sequences up to a certain depth for better decision-making. We tackle both tactical and strategic parts of chess in our implementation, showing strong play against humans. The project has had an analysis, which shows that the move selection and game outcomes are superior to conventional Minimax-based engines. This breakthrough in the class of Minimax algorithms achieves higher intelligence levels in computer chess, drastically changing gameplay for both fun and competitive purposes.

DOI: 10.61137/ijsret.vol.10.issue6.393

Shaping the Social Commerce Landscape: Trends, Challenges, and Opportunities for Brands and Creators
Authors:-Jason Zeng

Abstract- Social Commerce (S-Commerce) is transforming the retail landscape by combining social media platforms with e-commerce to create a more engaging and personalized shopping experience. This paper looks into the challenges and future opportunities that come with S-Commerce. Some of the main challenges include concerns about data privacy and security, trust issues in online transactions, difficulties in integrating social platforms with e-commerce systems, and managing user-generated content. On the other hand, the future of S-Commerce presents exciting opportunities, such as the use of artificial intelligence (AI) to create customized shopping experiences, the rise of social commerce marketplaces, and the growing significance of video and live-streaming content. These trends provide substantial potential for businesses to improve customer engagement, boost sales, and innovate their digital commerce strategies. The paper delves into these dynamics and discusses how businesses can tackle the challenges while seizing the emerging opportunities in S-Commerce.

Developing a Web Application for Financial Statement Analysis: A User-Centric Approach
Authors:-Assistant Professor Md. Alim Khan, Mimansha Pranjal, Md. Ahbab Khan, Sudhakar Singh, Achint Raghuwanshi

Abstract- This application is designed to streamline the analysis of financial statements by allowing users to easily upload company data for comprehensive evaluation. By leveraging advanced algorithms, the application conducts thorough ratio analysis and trend analysis, converting raw financial data into meaningful visual insights, including graphs, pie charts, and heatmaps. These visual representations enhance the understanding of a company’s financial health, revealing trends and performance metrics over time. In addition to historical analysis, the application incorporates sophisticated predictive analytics to forecast the company’s financial performance over the next five years. This feature enables stakeholders to make informed strategic decisions based on projected outcomes. By integrating historical data analysis with predictive modeling, this tool empowers investors, financial analysts, and business managers to identify potential risks and uncover growth opportunities. Ultimately, the application enhances financial decision-making capabilities, providing users with a robust framework for evaluating company performance and making strategic investments. With its user-friendly interface and powerful analytical features, this application is poised to revolutionize how financial data is interpreted and utilized.

DOI: 10.61137/ijsret.vol.10.issue6.394

Design and Development of Exam Kit for Children with Dysgraphia Disorder
Authors:-Pavana A, Rakshitha G A, Sahana Shirishail Patil, Nagesh P, Dr. Jenitta J

Abstract- Children with Dysgraphia, a learning disorder that affects handwriting and fine motor skills, face significant barriers to academic progress and confidence building. This project introduces a novel. By integrating a Raspberry Pi with Optical Character Recognition (OCR) and advanced machine learning algorithms, the system provides precise, real-time feedback on let- ter formation, spacing, and stroke direction. The kit incorporates an intuitive interface, supported by a TFT display, QPC 1010 camera, and peripheral devices, ensuring accessibility and ease of use.To enhance engagement, gamified learning elements are in- tegrated, fostering an enjoyable and motivational environment for skill development. The system seeks to increase self-confidence, enhance motor coordination, and improve handwriting accuracy. By establishing a connection between technology and education. This project provides a portable and scalable solution for schooling that enables kids with dysgraphia to overcome obstacles and succeed academically.

DOI: 10.61137/ijsret.vol.10.issue6.395

A Bugs of C Programming
Authors:-Tapasya Mandar Mate

Abstract- A bug is an error in a computer program that causes it to behave unexpectedly or produce incorrect results. The focus of this study is on detecting, analyzing, and fixing of c programming bugs. The process of finding bugs — before users do — is called debugging. Debugging starts after the code is written and continues in stages as code is combined with other units of programming to form a software product, such as an operating system or an application. This research paper is about details explanation about the bug which mostly occurs while doing c programming.

Energy Storage Systems
Authors:-Ahmed R. Alharbi

Abstract- This review paper provides an in-depth analysis of diverse energy storage systems, emphasizing their significance, operating principles, and practical applications in tackling contemporary energy issues. As the global shift towards sustainable energy gains momentum, effective Energy Storage Systems (ESS) play a pivotal role in maintaining the balance between supply and demand, especially in the integration of renewable energy sources. The paper explores an extensive array of energy storage solutions, such as Thermal Energy Storage (TES), Chemical Energy Storage (CES), Electrochemical Energy Storage (EcES), Electrical Energy Storage (EES), Hybrid Energy Storage Systems (HES), and Mechanical Energy Storage (MES). By conducting a comparative assessment, it highlights the strengths and weaknesses of each approach and provides insights into emerging trends and challenges within the sector. Furthermore, the study focuses on optimizing Gravity Energy Storage (GES) systems using the Taguchi method to improve energy efficiency and system reliability, showcasing the potential of GES as a viable and adaptable solution for sustainable energy storage.

DOI: 10.61137/ijsret.vol.10.issue6.397

Fruits and Herbs Online Shopping
Authors:-Subaranjani BS, Deepavarthini S, Karpagam P

Abstract- This project brings the entire manual process of Fruits and Herbs Online Shopping which is built using Asp.NET as a front end and SQL Server as a backend. An online Fruits and Herbs shop that allows users to check for various Fruits and Herbs products available at the online store and purchase online. This project helps the users in curing its disease by giving the list of fruits and herbs that the user should consume in order to get rid of its disease. The main purpose of this project is to help the user to easily search for herbs and fruits that will be good for the health of the user depending on any health issue or disease that he/she is suffering from. This system helps the user to reduce its searching time to a great extent by allowing the user to enter its health problem and search accordingly. The admin can add fruits and herbs to the system and its

Predictive Maintenance with AI for Smart Homes
Authors:-Revathi Renjini, Associate Professor S R Raja

Abstract- As homes are increasingly adopt smart technologies, their reliability as well as longevity have become paramount to avoid unnecessary downtime and ensure continuous, efficient operations. By incorporating Artificial Intelligence (AI) and Internet of Things (IoT) technologies this research enhances predictive maintenance and thereby contributing sustainability goals. Sensors are utilized to monitor real-time data like temperature, pressure, and vibrations from connected devices and systems. Using the machine learning models – linear regression and decision trees, this research demonstrates how AI can extract actionable insights from sensor data. This research showcases the potential to create more reliable, sustainable, and efficient predictive maintenance solutions that are not only low-cost and accessible but can be adapted for both small-scale and large industrial applications. These advancements will further enhance the predictive capabilities of the system and support long-term environmental sustainability by continuously optimizing resource consumption and reducing waste generation.

DOI: 10.61137/ijsret.vol.10.issue6.398

Automating Complex Workflows in Cloud-Based Applications: Software Quality Assurance Process Driven Practices
Authors:-Raghavender Reddy

Abstract- Modern software systems are becoming increasingly complicated due to which the demand for a reliable, scalable system is on the rise. Cloud-based software-intensive systems (C-SIS) are emerging as the most significant means of meeting these challenges: flexibility, scaling, and increased reliability through distributed computing. This paper looks at the design and implementation of cloud-based systems as they are capable of leveraging the advantages offered by the cloud infrastructure for high availability, fault tolerance, and performance at scale. Cloud-based software-intensive systems are supposed to be a framework for developing systems that are reliable and scalable. The framework brings together the best practices related to cloud architecture, towards automated scaling, load balancing, and fault-tolerance mechanisms to adjust dynamically to varying workloads for always-on service availability. It also discusses the need for microservices and containerization as powerful components for modular and scalable solutions. The results of our experiments demonstrate that this proposed system is able to handle large-scale applications, leading to an understanding of its different performance, fault tolerance, and scalability under certain conditions. This study throws light on how the cloud-based software-intensive systems have a bright perspective to transform the industrial concept, robustly providing high performance and scalable solutions to meet today’s ever-increasing demands of computing environments.

Smart Surveillance Robotic Rover Using ESP32-CAM and Node MCU
Authors:-N Praveen, Professor S Swarnalatha

Abstract- Robotics is a field that combines engineering, technology, and science to design, build, and operate robots. Robots are machines that can perform tasks that are repetitive, complex, or dangerous for humans. They can be controlled by humans or operate autonomously. Robotics deals with the design, construction, operation, and use of robots and computer systems for their control, sensory feedback, and information processing. This project presents the design and implementation of a Smart Robotic Rover that integrates an ESP8266 microcontroller with various sensors and modules to achieve autonomous navigation and real-time data transmission. The rover is equipped with ultrasonic sensors for obstacle detection and Previous studies have demonstrated their effectiveness in providing real-time distance measurements, A GPS module for location tracking Such As outdoor navigation and autonomous vehicles Systems, GPS provides accurate location data, which is essential for tasks that require precise positioning. A BMP180 sensor for environmental monitoring, systems for measuring temperature, pressure, and altitude and a servo motor for directional control. The system is controlled remotely via the Blynk platform, and combining it with an ESP32 module for camera control and additional motor functionalities, Research on camera integration in robotics illustrates the benefits of using high- resolution cameras and efficient streaming protocols for real-time visual feedback. The project aims to deliver a comprehensive robotic system that is controllable via a web interface and Blynk application. Blynk’s native IOS and Android mobile apps are most often used as client-facing UI to remotely control the connected devices and visualize data from them in the dashboard The vehicle is designed for autonomous navigation, real-time environmental monitoring, and user-friendly remote control. Allowing for real-time data visualization and interaction. This paper discusses the system architecture, sensor integration, software development, and testing results of the Smart Robotic Rover.

T- Purity and T_C- Purity in Modules
Authors:-Professor Ashok Kumar Pandey

Abstract- An exact sequence E:0⟶A ⟶B ⟶C ⟶0….(1) is called T-pure if any torsion R- module is projective and relative to it and F- copure if any torsion free R- module is injective relative to it. . Since Tis closed under factors and F is closed under sub-modules. Here Walker’s [19] criterion of Co-purity is also applicable in this situation. We also know that 〖Pext〗_T (M,A)=0 if and only if an R- module M is T-pure projective and〖 Pext〗_F (A,M)=0 if it is F – copure injective for all A⊆M. In particular 〖Pext〗_T (T,A)=0 for all T∈T. We write the torsion sub-module of A⊆M by σ(A). Walker proved that the class of I- pure (J- copure) sequences form a proper class whenever I(J) is closed under homomorphic images (sub-modules) of an R- module M and if I(J) is closed under factors (sub-modules) then for any I- pure (J- copure) sequence E:0⟶A ⟶B ⟶C ⟶0 if E ∈π^(-1) (I) (E ∈i^(-1) (I)) and hence in this case the earlier notion of purity coincides with Walker’s I- purity (J- copurity ) . A sequence E:0⟶A ⟶B ⟶C ⟶0 is I- pure (J- copure) if and only if given C^’≤C∈ I, then there existsB’≤B such that B^’≅C’ and A∩B^’=0. We consider an another stronger notion of purity than the Cohn’s purity[11]. If FG denotes the class of all finitely generated R-modules, which is closed under factors. We shall try to develope some characterizations of FG-purity and to determine its relationship with the T- purity and T_C- purity in cyclic torsion modules We also derive some relations of absolutely ϑ- pure modules with it . We try to relate it the with conditions for T- pure projectivity Teply and Golan [18].. We relativize the above concept and also relate it with finite projectivity of Azumaya [8] with respect to a torsion theory and to study the inter-relationship between these concepts. Finite σ-projectivity, (FG,σ)- pure flatness, cyclically σ- pure projectivity and cyclically σ- pure flatness, the concept of locally σ- projectivity and locally σ- splitness are also considered here and we study its inter-relationship with (FG,σ)- purity and semi-simple module.

Optimizing Business Outcomes through Data-Driven Decision-Making: Techniques for Complex Dataset Analysis
Authors:-Assistant Professor D. Priyanka, Assistant Professor P. Anjaneyulu, Assistant Professor Y. Manaswini

Abstract- The widespread adoption of Cloud Computing technology in industry, education, and government sectors has made it a standard for IT implementation. Data leakage is one of them, particularly, the unauthorized transfer of information from one environment to any other domain. Data leakage has been a problem much before data was maintained digitally. It is therefore vital to prevent and detect this leakage so that the cloud service provider’s reputation is not jeopardized. Furthermore it is integral that users’ data confidentiality, integrity, and availability is not compromised. Inmost cases, data are handled by a third-party software whose security procedures are unknown to the user. This software serves as a bridge between the user and the cloud service provider. To resolve the issue of data leakage, several methods have already been proposed such as watermarking, cryptographic and probabilistic techniques. This paper, however, aims to use a revised version of the probabilistic approach by encrypting the user data even before it is uploaded through a portal. During the encryption process, a user ID is embedded into the encrypted file. When this file is accessed by another consumer, their user ID is also embedded into the file. Hence it makes it easier for the algorithm to detect the guilty agent by comparing the leaked file against the user file. A list of users who have accessed the file is thus maintained.

Power Consumption Analytics Using Cloud Platforms
Authors:-Muthuraja M, Krishnan T, Prakash Dass R, Deepak kumaran RMG, Bharath G

Abstract- The increasing demand for electricity and environmental concerns have created a critical need for advanced energy management solutions. This study presents an IoT and cloud-based analytics system that provides real-time insights into power consumption, enabling efficient energy utilization. Leveraging ThingSpeak as the cloud platform, the system integrates smart meters to monitor voltage, power factor, and energy trends. Key contributions include real-time anomaly detection, dynamic visualization, and customizable alert systems. The proposed methodology enhances user engagement and supports scalability for diverse energy applications.

DOI: 10.61137/ijsret.vol.10.issue6.399

Full Stack Web Application for Prediction and Diagnosis of Heart Disease
Authors:-Assistant Professor Ms. Dornadhula Danya, Suraj A U, Moju Kumar B L, Deepak Kumar Singh D, Shubhan GC

Abstract- In the modern era, Cardio-vascular disease has high prevalence and rate of mortality which proves how critical, identification and intervention strategies are, further highlighting the importance of incorporating this in developing heart disease prediction systems. The heart prediction system research revolves around using AI-driven techniques techniques to strengthen and make heart disease risk prediction robust and effective. The paper explains methodology, dataset characteristics, experimental setup, results and the design of the models in a AI-driven techniques heart prediction system. Additionally, the practical implications of the research output are discussed regarding the use of the system in real life for alleviating heart disease predictions and strategies.

DOI: 10.61137/ijsret.vol.10.issue6.400

Securing the Digital Age: A Look at Cryptography and Network Security
Authors:-Professor Mugdha Dharmadhikari, Mr. Vaishnav Sabale

Abstract- The digital world thrives on the secure exchange of information across vast networks. This paper explores cryptography as a fundamental pillar of network security, ensuring data confidentiality, integrity, and authenticity. We delve into the core objectives of network security and how cryptography achieves them through encryption techniques. We explore both symmetric-key and asymmetric-key cryptography, along with their strengths and limitations. The paper further examines cryptography’s role in guaranteeing data integrity and sender authentication. We acknowledge the limitations of cryptography, including computational demands and the looming threat of quantum computers, which necessitates the development of post-quantum cryptography. Finally, the paper emphasizes the crucial role of ongoing research and development in cryptography to safeguard the ever-expanding digital landscape.

DOI: 10.61137/ijsret.vol.10.issue6.401

A Comparative Analysis of Lab View and PyTorch for Machine Learning: The gap between Experimentation and Production
Authors:-Archana Narayanan, Vishrut Jha, Joanne Anto

Abstract- This paper presents a comparative analysis of handwritten digit recognition performance between LabVIEW and PyTorch frameworks, utilizing a Convolutional Neural Network (CNN). The model is designed to classify digits from the MNIST dataset, which consists of 28×28 grayscale images of handwritten digits (0–9). The dataset includes 60,000 training images and 10,000 test images, providing a standardized benchmark for evaluating model performance. Metrics such as accuracy, training time, memory usage, and inference speed are evaluated. The results provide insight into the strengths and weaknesses of these frameworks in terms of efficiency, scalability, and usability. Results indicate that while both frameworks are effective, PyTorch offers faster training and inference, whereas LabVIEW demonstrates marginally better training accuracy.

DOI: 10.61137/ijsret.vol.10.issue6.402

A Review on Effects of Water Proofing Admixture on Concrete
Authors:-M.Tech Scholar Viplove Lahori, Professor Afzal Khan

Abstract- This review explores the effects of water-proofing admixtures on concrete properties, focusing on their impact on durability, strength, and performance. Water-proofing admixtures are additives designed to reduce water permeability and enhance the resistance of concrete to moisture ingress, which is critical for ensuring the long-term durability of structures, especially in environments with high humidity, rainfall, or exposure to aggressive chemicals. The study systematically examines the various types of water-proofing admixtures, including crystalline, hydrophobic, and integral admixtures, and evaluates their performance characteristics such as compressive strength, permeability, durability, and resistance to chemical attacks. The influence of these admixtures on concrete microstructure, hydration process, and pore structure is discussed in detail. Additionally, the review highlights the factors that affect the effectiveness of water-proofing admixtures, such as admixture type, dosage, water-cement ratio, and curing conditions.

AI Based Smart Energy Meter for Data Analytics
Authors:-Assistant Professor Mrs.B. Christyjuliet, Dinesh Kumar.B, Divya.G, Kaviraj.S, Monisha.R

Abstract- The proliferation of smart meter technology offers vast opportunities for harnessing real-time data to optimize energy consumption, predict demand, and support sustainable energy grids. This paper explores the integration of artificial intelligence (AI) techniques, such as machine learning and deep learning, into smart meter data analytics, enhancing the accuracy of predictions and anomaly detection. With the rise of big data from millions of connected devices, AI-based analytics are vital to efficient energy management. We present a comparative analysis of various AI models used for smart meter data analytics and propose improvements for their real-time applications.

DOI: 10.61137/ijsret.vol.10.issue6.404

A Review of Herbal Technology
Authors:-Averineni Ravi Kumar N, Deepa Ramani

Abstract- Herbal Drug Development Plant Selection and Identification The first step is identifying a plant with potential medicinal properties. Ethnobotanical surveys, historical use, and scientific literature guide this process. Extraction and Isolation of Active Constituents Different extraction methods (e.g., solvent extraction, steam distillation, supercritical fluid extraction) are employed to isolate the active ingredients from plant material. Techniques like chromatography and spectroscopy are used to identify and purify these compounds. Standardization Standardization ensures that a herbal product contains a consistent amount of active compounds in each batch. This is crucial for reproducibility and efficacy. Preclinical Studies Laboratory testing on animals and in vitro models to assess the biological activity, toxicity, and pharmacokinetics of the herbal product. Clinical Trials Human trials are conducted to evaluate the safety, efficacy, and dosage of the herbal drug. Technological Approaches in Herbal Drug Development Extraction Techniques Solvent Extraction The most common method, where solvents like ethanol or water are used to extract bioactive compounds. Supercritical Fluid Extraction (SFE) Uses supercritical CO2 as a solvent, offering a cleaner and more efficient extraction method. Microwave-Assisted Extraction (MAE) Uses microwave energy to enhance the efficiency of the extraction process. Ultrasonic Extraction Utilizes high-frequency sound waves to enhance solvent penetration and compound release. Formulation Development Herbal products may be formulated into various forms

DOI: 10.61137/ijsret.vol.10.issue6.405

Automated Greenhouse Agricultural System (AGAS): Enhanced Efficiency and Sustainability in Agricultural Practices
Authors:-Justine P. Fuertes, Mary Jean R. Arevalo, Glyza Nicole M. Ewag, Michael P. Tumilap

Abstract- This research aimed to develop a prototype of an automated Greenhouse Agricultural System (AGAS) for efficient and sustainable cultivation of plants in tropical regions. The AGAS prototype was built using an Arduino Uno microcontroller, which monitors and regulates temperature, humidity, and soil moisture, utilizing sensors and a servo motor for water distribution. Data is transmitted to a website for remote monitoring and control. Data were analyzed mainly using percentages, mean and t-test of independent means. Results showed that, the system achieved a 100% success rate in six trials, demonstrating accurate soil moisture detection, effective servo motor operation, and reliable pump functionality; the website is 100% success rate in four trials in recording analog values, it successfully maintained optimal growing conditions for lettuce, showcasing its potential to improve crop yields and resource efficiency; and the AGAS is efficient compared to the traditional greenhouse system in terms of temperature, humidity and soil moisture. This highlights the significance of AGAS in addressing the challenges of unpredictable weather patterns and resource scarcity in tropical regions. Further development, including a user-friendly application, HVAC system, and error detection mechanisms, is recommended. The AGAS holds the potential to revolutionize greenhouse agriculture, promoting sustainable practices and enhancing food security.

DOI: 10.61137/ijsret.vol.10.issue6.406

Computer Network Secure Communication and Encryption Algorithm
Authors:-Janani J, Associate Professor Dr S R Raja

Abstract-Due to the continuous progress of Internet technology, computer network communication service has replaced the traditional short message service and multimedia message service. In order to ensure the security of the instant messaging system, some advanced security encryption algorithms are used in the communication system to prevent attacks and information leakage. By using encryption algorithms, the network security research based. Our system operates on a network of nodes, where each node plays a crucial role in ensuring the security and integrity of transmitted data. The SHA-256 algorithm is employed for generating hash values, providing a secure and efficient means of verifying data integrity. Furthermore, we implement AES (Advanced Encryption Standard) for file encryption, enhancing the confidentiality and privacy of sensitive information. AES is a symmetric key encryption algorithm renowned for its strength and efficiency, by combining SHA-256 for integrity checking and AES for encryption, we Include Face Change Attaining methods to prevent from attackers In Face Change that can support both anonymizing real IDs among neighbor nodes and collecting real ID-based encountering information. For node anonymity, two encountering nodes communicate anonymously. Our system offers a robust defense against various cyber threats, including data breaches and unauthorized access. Prevent malicious actors from intercepting or tampering with encrypted data, our system employs advanced encryption techniques and secure communication protocols.

DOI: 10.61137/ijsret.vol.10.issue6.407

AI Enabled Digital Media Versus Print media
Authors:-Research Scholar Seethal George, Dr. Prachi Chathurvedhi

Abstract-The introduction of artificial intelligence ultimately changing the media landscape, this lead to digital divide between traditional media and modern media. This research paper emphasize on the challenges opportunities strength and weakness faced by traditional media in this artificial intelligence era. Modern technology can replace the older one see but in the case of print media that is News Papers and magazines are not replaceable. Digital technological advancements are a part of our life but usage of traditional print medias became a habit of our generation. Through comparative analysis and expert interview this paper prose how artificial intelligence influence traditional media.

DOI: 10.61137/ijsret.vol.10.issue6.408

Data Narratives Using AI: A Framework for Automated Insight Storytelling
Authors:-Soundhar B, Associate Professor Dr S R Raja

Abstract-In today’s data-driven world, organizations are faced with an ever-growing volume of raw data that often requires sophisticated analysis to extract meaningful insights. However, the complexity of these insights can make it difficult for decision-makers, especially non-experts, to understand and act on the information. This paper proposes a novel framework that leverages Artificial Intelligence (AI) to automatically generate data narratives, transforming raw data into human-readable insights. The framework integrates data preprocessing, advanced AI techniques, and natural language processing (NLP) models to construct compelling and insightful narratives. We present a detailed methodology, including the use of clustering, trend analysis, and regression models to extract key insights from diverse data sources. The generated narratives are tested on multiple datasets, demonstrating their effectiveness in conveying actionable insights in an easily understandable format. Our results show that AI-generated data stories not only provide clarity and context but also enhance decision-making processes across various industries. Future work will focus on enhancing the framework’s adaptability to real-time data and improving narrative customization for different stakeholders.

DOI: 10.61137/ijsret.vol.10.issue6.409

A Robust and Secure Image Watermarking Technique for Digital Data: State-of-the-Art
Authors:-Bhupendra Kumar Bhardwaj, Professor Dr. Satya Singh

Abstract-With the fast development of computer technology, research in the fields of multimedia (text, image, audio and video clip) security, image processing and robot vision have recently become popular. Digital image watermarking techniques is one of the best techniques for image authentication. Watermarking algorithms are designed to embed and extract digital watermarks within digital content, such as images, audio, or video. The basic objective of the watermarking technique is to enhance imperceptibility, capacity and robustness. When developing an effective watermark method, it’s necessary to have a highly balanced trade-off between imperceptibility, capacity, and robustness. In this paper we presence about watermarking system, requirements for digital image watermarking, challenging issue of watermarking, application of watermarking, importance of watermarking, image watermarking classification, various watermarking techniques, attacks on watermarking process, performance measure for evaluating the image quality using metrics and a short view of watermarking tools. The work gives a view on various watermarking schemes in digital images that give new ideas to improve the already existing techniques.

DOI: 10.61137/ijsret.vol.10.issue6.410

Revolutionizing Neonatal Care: The Role of Embrace Innovations in Addressing Infant Mortality in Resource-Constrained Settings
Authors:-Ashish Pattnaik, Rishika Patwari, Rishi Kumar Karnani, Aayushman Joshi

Abstract-This paper explores the innovative business model of Embrace Innovations, a social enterprise committed to tackling the critical issue of infant mortality in resource-constrained settings, especially in India. Founded with the mission of offering affordable and effective infant care solutions, Embrace has developed the Embrace Infant Warmer as a cost-effective alternative to traditional incubators. In analysing the operational strategies, market dynamics, and impact of Embrace’s products on neonatal health outcomes, the study uses a mixed-method approach through applying qualitative and quantitative research methods. Conducting in-depth interviews and surveys with relevant stakeholders which lead to important discoveries about how Embrace was able to effectively penetrate these markets through its unique value proposition: affordability, portability, and user-friendliness. The paper discusses the challenges of the organization, such as high maintenance costs and regulatory compliance issues. Ultimately, this research would highlight the potential for Embrace Innovations to transform infant healthcare through continuous innovation and strategic partnerships, thereby contributing significantly to reducing infant mortality rates globally.

DOI: 10.61137/ijsret.vol.10.issue6.411

AI-Based Framework for Predicting Quantum State Transitions in Topologically Protected Material
Authors:-Soundhariya Ravi, Associate Professor Dr S R Raja

Abstract-Quantum state transitions in topologically protected materials have garnered significant attention for their potential applications in quantum computing, spintronics, and material science. Predicting these transitions under varying external conditions remains a challenge due to the intricate interplay of quantum effects and topological invariants. This study proposes an AI-based framework that leverages deep learning techniques to predict quantum state transitions in such materials with high precision. The framework utilizes a custom neural network architecture trained on data derived from simulations and experimental results. By incorporating topological invariants and environmental variables as features, the model accurately predicts phase transitions and provides insights into the factors driving them. The results demonstrate over 95% prediction accuracy, outperforming traditional simulation methods in terms of computational efficiency and scalability. This work lays the foundation for integrating AI into quantum materials research, offering tools for designing next- generation quantum devices.

DOI: 10.61137/ijsret.vol.10.issue6.412

Role of Data Mining and AI on Human Health
Authors:-Dharmendra Kumar Nagrani, MR.B.L.Pal

Abstract-Data Mining and AI are revolutionize the medical field by providing enhanced understanding of disease trends, increasing accuracy in diagnosis, and driving the development of tailored healthcare solutions. This document investigate into how data mining and Artificial intelligence methodologies influence various dimensions of human health, with an emphasis on predictive analytics, diagnostic imaging, real time health tracking, and customized treatment options. Techniques in data analytics, including categorization, grouping, and rule based mining, are utilized on extensive data sets, assisting healthcare professionals in making informed data centric choices for disease prevention and management. AI techniques, featuring ML and deep learning frameworks , significantly improves diagnoses, particularly within medical Imaging, where these models showcase remarkable accuracy in detecting diseases at early stages. In addition, wearable technology and mobile health platforms offer continuous data for ongoing health assessment, facilitating timely medical interventions. Nonetheless, applying data mining and AI in healthcare, introduces challenges, especially concerning data privacy, interpretability of models and ethical issues. This research addresses these hurdles and proposes strategies to bolster data protection, enhance model clarity, Forster patient confidence. With ongoing progress and mindful applications, data mining and Artificial intelligence present considerable potential for enhancing health outcomes, supporting preventive measures and leading to individualized and precision medicines.

DOI: 10.61137/ijsret.vol.10.issue6.413

Intelligent Baby Monitoring System Using Raspberry Pi and Sensors
Authors:-Sankalp shant, Shreelekha K, Siri Vennela KS, Tanya Raj, Dr .Nirmala S

Abstract-With the increased demand for advanced childcare solutions, the development of an intelligent and reliable baby monitoring system using the versatile Raspberry Pi has been encouraged. This project is focused on creating a comprehensive monitoring solution that prioritizes the safety and well-being of infants through the integration of sophisticated audio monitoring and environmental sensing capabilities using various sensors. This new system utilizes the central processing unit Raspberry Pi 4 Model B and interfaces nicely with high-quality microphone capability to pick up sound; it comes equipped with environmental sensors capable of monitoring essential conditions in temperature and humidity. The functionalities are advanced and include motion detection, which notifies caregivers upon any baby movement, while cry detection informs caregivers of a crying baby within seconds of its cry. A two-way audio system that connects caregivers with their children can converse and communicate with the baby real-time, providing yet another level of interaction and comfort. The application will be designed so that parents or guardians, through a mobile application, can have instant alerts when their baby’s condition arises from virtually any location. This system was designed to be cost-effective and easy to set up; it can be highly scaled to meet the needs of the users. There is always an integration for push notifications via mobile devices. By incorporating these advanced features and focusing on user-friendly design, this baby monitoring system represents a significant advancement in the realm of smart parenting tools, addressing the critical need for reliable and intelligent childcare solutions in contemporary households.

DOI: 10.61137/ijsret.vol.10.issue6.414

Leveraging Predictive Analytics and Cybersecurity Measures for Enhancing Risk Management and Resilience in Global Supply Chains
Authors:-Erumusele Francis Onotole

Abstract-In today’s interconnected global supply chains, the integration of predictive analytics and advanced cybersecurity measures has become a pivotal strategy for fortifying risk management and enhancing resilience. The COVID-19 pandemic underscored the vulnerabilities of supply chains, prompting organizations to adopt cutting-edge technologies to mitigate disruptions and ensure continuity. This paper explores the critical interrelationship between predictive analytics, cybersecurity, and supply chain resilience, highlighting their combined potential to create robust and adaptable systems. The study delves into predictive analytics for risk identification and mitigation, the role of cybersecurity in addressing digital threats, and the need for a holistic risk management approach. Empirical evidence and theoretical insights are discussed to present actionable strategies for organizations aiming to enhance their supply chain resilience in an increasingly uncertain global environment.

DOI: 10.61137/ijsret.vol.10.issue6.628

End-to-End Encryption, Role-Based Access Controls, and Audit Logs in Safeguarding Electronic Health Records – A closer look at the features housing EHR
Authors:-Erumusele Francis Onotole

Abstract-The rise of Electronic Health Records (EHRs) has revolutionized the way health care is practiced globally, particularly in providing patients with effective and precise care. Nevertheless, given the types of information EHRs contain, they are vulnerable to malicious attacks and access by unauthorized persons. The paper focuses on the importance of end-to-end encryption, role-based access control, and audit logs in maintaining optimal security of EHR data. These aspects are discussed in such a way that their combined effect is presented along with the individual functionality of circumstances and how each of them contributes to security, the legal requirements, and the stakeholders.

DOI: 10.61137/ijsret.vol.10.issue6.629

Analyzing the Loss of Sound Transmission for a Rectangular Cross Section Muffler with a Different Aspect Ratio in Same Gas Volume
Authors:-Associate Professor Amit Kumar Gupta

Abstract-The measurement of the acoustical transmission loss of an expansion chamber muffler with a rectangular cross section and different cross section aspect ratios is presented in the study. An essential component of noise management for reducing noise from gas flow sources, such as machinery exhaust, is a muffler, also known as a silencer. As a component of an internal combustion engine’s exhaust system, mufflers are usually placed along the exhaust pipe to lessen noise. One-dimensional waves are utilized as simulation tools.

DOI: 10.61137/ijsret.vol.10.issue6.415

Enhancement of Security in Wireless Network
Authors:-Mrs.C.Radha, Mr.R.Midunkumar, Mr.S.Muralibabu, Mr.V.Partheeban, Mr.C.Mani

Abstract-Wireless networks have become ubiquitous in our modern digital landscape, facilitating connectivity and enabling seamless access to information. However, the inherent vulnerabilities of wireless communication pose significant security challenges. This paper provides a comprehensive overview of wireless network security, examining various aspects such as encryption, authentication mechanisms, access control, intrusion detection, and physical security measures. The discussion begins by highlighting the importance of encryption protocols, such as WPA2 and WPA3, in safeguarding data transmitted over wireless networks. Strong encryption mechanisms are essential for ensuring the confidentiality and integrity of sensitive information, protecting against eavesdropping and data tampering. The aim of this study was to review some literatures on wireless security in the areas of attacks, threats, vulnerabilities and some solutions to deal with those problems. It was found that attackers (hackers) have different mechanisms to attack the networks through bypassing the security trap developed by organizations and they may use one weak pint to attack the whole network of an organization. Overall, this paper provides valuable insights into the various techniques and strategies for enhancing security in wireless networks.

The Role of Heavy Metals in Disrupting Intercellular Communication via Exosomes
Authors:-Talha, Usama Zahoor, Faseeh Ur Rehman, Muhammad Usama, Muhammad Shafique, Atif Ali, Ahmad Abid, Muhammad Faisal Ramzan, Muhammad Abdullah Sohail, Muhammad Zubair

Abstract-Small extracellular vesicles secreted by most cell types have been crucial for intercellular communication in transferring biologically active molecules, such as proteins, lipids, and RNA. The vesicles regulate the physiological processes that contribute to pathological conditions such as cancer. Exposure to heavy metals, including arsenic, cadmium, and lead, disrupts communication by interfering with the biogenesis of exosomes, the cargo that is transferred within them, and their release. This review discusses the molecular mechanisms through which heavy metals affect exosomes, their downstream effects on recipient cells, and the potential of exosome-based biomarkers for detecting and mitigating heavy metal toxicity. The discussion also brings out therapeutic opportunities and future research directions.

DOI: 10.61137/ijsret.vol.10.issue6.416

Enhancing Software Quality through Automation Testing
Authors:-Associate Professor Dr.S.R. Raja, Research Scholar B. Karthigeyan

Abstract-Web automation testing has become an essential component of modern software development, enabling developers to ensure the quality, functionality, and performance of web applications. It leverages automated tools and frameworks to perform repetitive and complex testing tasks, thereby reducing human error and speeding up the development lifecycle. This paper explores the methodologies, tools, and advancements in web automation testing, presenting a proposed system designed to enhance efficiency and reliability. Through an experimental prototype, we demonstrate the effectiveness of the proposed architecture in streamlining testing processes. The paper also addresses the challenges faced in script maintenance, scalability, and adaptability of automated tests in dynamic web environments. Finally, we outline future directions for research in this domain, emphasizing the role of AI and real-time analytics in shaping the next generation of automation testing tools.This paper explores the methodologies, tools, and advancements in web automation testing, focusing on overcoming challenges like script maintenance, handling dynamic elements, and frequent application updates. Through an experimental prototype, the proposed system demonstrates improved efficiency by integrating modular test designs and advanced reporting mechanisms.

DOI: 10.61137/ijsret.vol.10.issue6.417

Uplifting a Farmer through Connected Ecosystem
Authors:-Professor Rohini, G Ravi Teja, C Vinay Kumar Reddy, A Vidhyadhari, P Monish

Abstract-This project focuses on developing a comprehensive platform that bridges the gap between farmers and consumers, allowing users to purchase agricultural products directly from farmers. The application provides seamless online payments, user and farmer profile management, and real-time inventory updates. Administrators play a key role in fostering trust by onboarding verified farmers and uploading schemes that are beneficial to them. Future expansions include vehicle and land renting functionalities as well as fertilizer management to support farmers further. This app allows farmers to effortlessly rent agricultural machinery, such as tractors and harvesters, at nominal costs, empowering them with technology that was previously out of reach. Through user-friendly interfaces and robust backend support, farmers can connect with rental providers, manage bookings, and access real-time updates. Administrators oversee the system, ensuring transparent transactions and efficient dispute resolution, while users can explore and contribute to the ecosystem. Our goal is to uplift the agricultural community by reducing operational costs, enhancing productivity, and fostering collaboration. By leveraging digital tools, this app bridges the gap between modern technology and traditional farming practices, paving the way for a sustainable and prosperous agricultural future.

Novel Prediction of Diabetes Disease by Comparing K-Means with Logistic Regression with Improved Accuracy
Authors:-R.Vinoth, Associate Professor Dr.S.R.Raja

Abstract-Aim: This study aims to evaluate the effectiveness of the K-Means algorithm in comparison to Logistic Regression (LR) for analyzing a diabetes dataset. Diabetes is a critical and potentially fatal condition, and as it remains incurable, its prevention and management are vital public health concerns. Materials and Methods: For this research, a substantial dataset was sourced from the Kaggle Dataset – Diabetes Disease Analysis and Prediction, encompassing 13 clinical features pertinent to diabetes. The sample consisted of 10 instances, with additional control variables incorporated to account for possible confounding factors and enhance the accuracy of the findings. Both K-Means and Logistic Regression algorithms were employed for predictive analysis. Discussions: Two distinct analyses were conducted to assess the performance of the K-Means algorithm against the proposed LR algorithm. The outcomes indicated that the enhanced LR method yielded superior results. Result: The mean accuracy for the LR algorithm was recorded at 76.8%, while K-Means clustering achieved a mean accuracy of 46.2%, demonstrating that LR outperformed K-Means. The results suggest that machine learning techniques can effectively predict diabetes. The p-value obtained in this study was 0.001, which is less than the threshold of p=0.05, underscoring the importance of utilizing LR for diabetes prediction. Conclusion: The findings reveal that the extended LR algorithm achieved greater accuracy compared to the K-Means algorithm. Nonetheless, it is noted that Logistic Regression would benefit from a larger sample size to enhance the precision of the results.

AI with a Human Touch: Innovating E-Commerce through Emotion-Sensitive Technologies
Authors:-Umamageswari.GS, Associate Professor Dr S R Raja

Abstract-The swift advancement of artificial intelligence (AI) has dramatically altered the e-commerce landscape, allowing companies to improve customer experiences through increasingly customized and emotionally responsive methods. E-commerce platforms can now offer tailored interactions that connect with customers on an emotional plane by utilizing AI to identify and react to their emotional states, whether through written, spoken, or behavioral indicators. Emotion-cognizant AI systems can comprehend sentiments expressed across various contact points, including chatbots, customer support exchanges, product suggestions, and individualized marketing efforts. These AI systems employ sentiment analysis, natural language processing, and emotional intelligence algorithms to modify response promotions, and product recommendations based on weather a customer is content, irritated, perplexed, or enthusiastic. Consequently, customers receive highly personalized and empathetic interactions that boost satisfaction, build trust, and increase conversion rates. This study examines the newest innovations in AI-powered emotional intelligence for e-commerce, its capacity to enhance customer engagement, and its ramifications for businesses aiming to improve customer loyalty through a more profound understanding of emotional dynamics.

DOI: 10.61137/ijsret.vol.10.issue6.419

The Impact of Oil Sector Deregulation on the Nigerian Economy: Evaluating the Socioeconomic and Financial Implications across Key Economic Segments
Authors:-Dr. Sabina Ego Ekechukwu

Abstract-This study examines the impact of oil sector deregulation on the Nigerian economy, focusing on key economic segments such as households, finance, firms, public sector, and international trade. Utilizing a mixed-methods approach, this research combines quantitative survey data with qualitative observations to capture a comprehensive view of deregulation effects. A sample of 400 respondents, selected through stratified random sampling from relevant stakeholders in the oil industry, was surveyed to ensure representative insights across affected sectors. Anchored in the Circular Flow Model and the General Equilibrium Theory, the study explores how deregulation policies influence macroeconomic stability, cost structures, and resource allocation within Nigeria. Key findings indicate both positive and negative consequences: while deregulation contributes to fiscal savings and potential investment in infrastructure, it has also led to inflationary pressures and increased operational costs for firms. Limitations of this study include its restricted focus on short-term impacts and challenges in capturing the broader social implications of policy shifts. These insights offer policymakers a nuanced understanding to refine future economic strategies.

AcademEase: Revolutionizing Online Assignment Management for Enhanced Academic Efficiency
Authors:-Chethan M S, Associate Professor Dr S R Raja

Abstract-The traditional methods of managing assignments are steadily becoming outdated due to their numerous drawbacks, including inconvenience, inefficiency, and a lack of accuracy. These limitations have prompted a growing need for more effective solutions in the educational domain. With the rapid advancement of web technologies, web-based management systems have gained significant traction and are being widely adopted across various sectors. This paper presents a novel AcademEase: Revolutionizing Online Assignment Management for Enhanced Academic Efficiency that not only integrates the most effective features of existing commercial systems but also introduces innovative functionalities tailored specifically for modern assignment management needs. The proposed system addresses critical gaps in traditional practices by offering a comprehensive platform designed to streamline assignment handling processes for both administrators and students. Key features of the AMS include a user-friendly interface that simplifies the user experience, ensuring that assignments are managed in a convenient, efficient, and systematic manner. Furthermore, the system is designed with a high degree of portability and extensibility, making it adaptable to various educational environments and capable of evolving with future technological advancements. To safeguard sensitive data and ensure secure operations, the system incorporates robust, multi-layered security strategies that enhance its overall reliability. By leveraging the power of web technologies, this innovative system not only improves assignment management workflows but also sets a new benchmark for efficiency, usability, and security in academic institutions. This paper delves into the design, functionality, and benefits of the AMS, showcasing how it effectively meets the demands of modern educational practices.

DOI: 10.61137/ijsret.vol.10.issue6.420

An Overview of Textual Sentiment Analysis and Emotion Recognition
Authors:-Pallavi Suryavanshi, Dr Sunil Patil

Abstract-Opinion mining, another name for sentiment analysis, is a crucial task in natural language processing (NLP) that enables the extraction of subjective information from text. Sentiment analysis can use machine learning algorithms to classify opinions in text into three categories: neutral, negative, and positive. In the Internet age, social networking sites have grown rapidly, making them an essential tool for communicating emotions to individuals all over the world. Many people use music, video, photos, and text to express their ideas or perspectives. Sentiment analysis is inadequate in certain applications; therefore, emotion detection is necessary to accurately ascertain a person’s emotional and mental condition. The degrees of sentiment analysis, different models, and the steps involved in sentiment analysis and emotion detection, challenges faced are all explained in this review study.

DOI: 10.61137/ijsret.vol.10.issue6.421

User-Centered Design in Digital Marketing
Authors:-Abhijit Mojumder, Susmita Biswas

Abstract-Purpose: This thesis investigates how user-centered design (UCD). , user experience (UX) principles can have a remarkable impact on digital marketing campaigns, focusing on consumer engagement. , conversion rates. With the rising complexity of online consumer behavior. , ever-increasing competition in digital marketplaces, leveraging strategic UX design has emerged as a powerful tool for marketers. Methodology: The study adopts a mixed-methods approach, incorporating both quantitative data (such as user analytics, A/B testing results)., qualitative insights (such as interviews, focus groups). A framework is established to evaluate campaign performance metrics, user satisfaction scores, . , conversion funnels within diverse digital platforms—social media, e- commerce websites, mobile applications. Findings: The findings suggest that user-centered design elements—such as intuitive navigation, responsive interfaces, consistent br. ,ing, . , personalization—lead to higher levels of user satisfaction, br. , trust, , customer retention. In addition, campaigns designed around UX principles witnessed a measurable uptick in conversion rates compared to those that lacked deliberate UX planning. Implications: This thesis contributes to the existing literature on digital marketing by incorporating comprehensive UX design strategies. By applying user-centered methodologies, marketers can cultivate more engaging. , persuasive digital experiences, thus boosting key performance indicators (KPIs) such as click-through rates, time on site, average order value., customer lifetime value.

DOI: 10.61137/ijsret.vol.10.issue6.422

A 12 Switch Operated 19-Level Inverter to Reduce Distortion
Authors:-Mtech Scholar Umang Soni, Assistant Professor Shyam Kumar Barode, Assistant Professor Hari Mohan Soni, Assistant Professor Sachin Jain

Abstract-Purpose: The idea of a multilayer inverter originated from the development of inverters to more than two layers in order to lessen distortion from the basic sinusoidal waveform. One drawback of employing multiple level inverters is the installation of more switches, which raises system bulk and cost and reduces system dependability due to the increased component count. In order to address the issue of the system becoming bigger, more expensive, and less dependable with less distortion, this work provides a nineteen-level inverter (19-LI) with fewer switches than a symmetrical H-bridged nineteen-level inverter. The idea is developed using the MATLAB platform, then analysis is done to determine how valuable the final product is.

DOI: 10.61137/ijsret.vol.10.issue6.423

LIXXI-FSRD, A Fuel Efficiency Material “Z” Capsule
Authors:-Reghunath Ramakrishnan

Abstract-New technology to reduce pollution in motor vehicles and increase mileage.

DOI: 10.61137/ijsret.vol.10.issue6.424

Detection of DDOS Attacks and Classification
Authors:-Gopi A G, Professor Dr. M Anand Kumar

Abstract-Distributed Denial of Service (DDoS) attacks are a significant threat to the stability and availability of network services, often resulting in financial and reputational damage to organizations. Detecting and mitigating these attacks is a complex task due to their large scale, diverse attack vectors, and evolving nature. This paper explores various methods for DDoS attack detection and classification, with a focus on leveraging machine learning and statistical techniques. The primary objective is to identify attack patterns in network traffic data and classify them in real-time to distinguish between legitimate and malicious activities. We review traditional methods such as signature-based detection and anomaly detection, alongside modern machine learning-based approaches, including supervised and unsupervised classification techniques. Machine learning algorithms, such as decision trees, support vector machines, and neural networks, are evaluated for their effectiveness in detecting various types of DDoS attacks, including volumetric, protocol, and application-layer attacks. Additionally, we discuss the challenges posed by high traffic volumes, the need for low-latency detection, and the impact of adversarial tactics on detection systems. Finally, the paper highlights the importance of developing robust, scalable, and adaptive classification models that can efficiently handle the evolving nature of DDoS attacks in dynamic network environments.

DOI: 10.61137/ijsret.vol.10.issue6.425

Development of an Automated Penetration Testing Tool for Enhanced Cybersecurity
Authors:-Sanskriti Grover

Abstract-The continuous evolution of digitalization and the rapid growth of tools and technologies have led to a parallel rise in sophisticated cyberattacks. Attackers deploy advanced techniques to compromise critical systems, steal sensitive data, and disrupt operations. Traditional vulnerability detection and penetration testing methods, which rely heavily on manual processes and frameworks like Metasploit, are labour-intensive, time-consuming, and prone to human error. To address these challenges, this research presents the development of an Automated Penetration Testing Tool (APTT) to streamline cybersecurity assessments. Integrated with the Metasploit framework, APTT automates reconnaissance, vulnerability scanning, and exploitation, reducing time complexity and human error. Initial testing in diverse environments showed a 50% reduction in testing time and improved reliability of results, making it scalable and adaptable to various security needs.

DOI: 10.61137/ijsret.vol.10.issue6.427

Real-Time Malware Detection for Documents: A Cyber Security Browser Extension for File Protection
Authors:-Aniket Jha, Aaditya Chaudhari, Malay Khant, Anuj Kumar

Abstract-The increasing frequency of malware attacks through document files poses a significant risk to personal and organizational data security. This project focuses on developing a real-time malware detection system as a browser extension to protect users from malicious documents. By leveraging machine learning techniques and heuristic analysis, the extension scans documents uploaded or downloaded through the browser, identifying potential threats in real time. The solution ensures high accuracy in detecting various malware types while maintaining lightweight operation for seamless user experience. The system incorporates a user- friendly interface, automated scanning, and secure cloud-based updates for the detection engine. The proposed extension bridges the gap between cybersecurity and accessibility, providing a practical tool for users to protect themselves from file-based threats. Testing and evaluation demonstrate its reliability and effectiveness, making it a valuable addition to modern cybersecurity solutions.

Ethnomycological Investigation and Domestication of Wild Edible Mushrooms from the Department of Bamboutos (West Cameroon)
Authors:-Kamgoue Ngamaleu Yves Bertin, Sumer Singh Rathore, Sudhanshu Mishra, Donkeng Voumo Sylvain meinrad, Prashakha Jyotiprakash Shula, Nanda Djomou Giresse Ledoux, Ladoh Yemeda Christelle Flora, Essouman Ebouel Pyrus Flavien, Wamba Fotso Oscar, Asseng Charles Carnot

Abstract-Food security remains one of the major problems in the world. Wild edible mushrooms constitute an important source of food due to their nutritional and medical values, as well as a source of income for populations. This study aims to domesticate wild edible mushrooms that grow in the Bamboutos department. An ethnomycological survey was conducted among 154 people through direct and semi-structured interviews in the 04 Districts and in 15 villages of the Department. The macroscopic identification of the different species was carried out in situ using identification keys. The domestication test was carried out in the laboratory, the species inoculated on PDA medium and transplanted onto cereal seeds then onto corn cobs in order to obtain seeds. The seeds obtained were tested on corncob and sawdust substrates with the use of two additives, wheat bran and corn bran.The different substrates composed of slaked lime, urea, fungicide and water. This work reveals that the largest percentage of respondents is made up of men (65%). Knowledge related to the edibility of mushrooms is mainly transmitted by family members (68%). The wild edible mushrooms collected (04 species) belong to the Lyophyllaceae family and the Termitomyces genus: Termitomyces letestui, T. striatus, T. aurantiacus and T. brunneopileatus. The seed production process was a complete success. The substrate made up of corn stalks and wheat bran presented the best weights at harvest (221,66±3,36 g , 89,24±3,74 g and 93,58±7,13g). However, the carpophores obtained from the harvested and cultivated species were undifferentiated.

DOI: 10.61137/ijsret.vol.10.issue6.428

AI-Driven Vehicle Assistance Platform with Geolocation Services
Authors:-Rakesh Jaiswal, Kuldeep Yadav, Deepak Singh Purviya

Abstract-It often has brought inconveniences of unsafe situations and discomfort to its customers owing to vehicular breakdown. Typical roadside assistant applications that come out face problems such as high response times, small cover-up areas, and lack of real-time diagnostic capabilities among other problems. This research proposal intends to establish an innovative, web-based platform called Repair that has AI and LBS technologies integrated to provide real-time assistance for vehicles. The core feature of Repair is an AI-powered chatbot that can troubleshoot the most common vehicle issues independently. Advanced NLP techniques are applied to guide users through the diagnostic steps and provide solutions to problems such as flat tires, dead batteries, or other engine issues. When the problem exceeds the capabilities of the chatbot, the system uses Geolocation API technology to pinpoint the user’s exact location and dispatch the nearest available towing service. This seamless integration of AI and geospatial technology ensures faster response times, reducing user waiting periods and improving service efficiency.

DOI: 10.61137/ijsret.vol.10.issue6.429

Comprehensive Study of Mobile and Web Applications for on-Demand Services
Authors:-Aditi Pradeep, Akshara Vijay, Jerom Jo Manthara, K S Abhishek, Jithy John

Abstract-With the rapid growth of digital solutions, on- demand service applications have emerged as valuable tools for addressing daily needs, such as home maintenance and freelancing tasks. This survey paper provides a comprehensive review of ten existing mobile and web-based applications designed to connect customers with service providers across a range of sectors. By examining each system’s features, user experience, and limitations, this study highlights the commonalities and distinct approaches used to facilitate service matching. Key findings reveal that, while these applications effectively streamline access to services, they often face challenges such as limited service categories, regional restrictions, and issues with pricing transparency and real-time availability. Through a comparative analysis, this paper identifies trends, limitations, and potential improvements for future on-demand service platforms.

DOI: 10.61137/ijsret.vol.10.issue6.430

Assessing Model Misspecification in Stochastic Linear Regression Analysis
Authors:-Research Scholar Siddamsetty Upendra, Research Scholar R. Abbaiah

Abstract-This paper studies misspecification tests for stochastic linear regression models, including the Durbin-Watson test, Ramsey’s regression specification error test, Lagrange’s multiplier test, and UTTS’ rainbow test. Specification errors arise when there are deviations from the underlying assumptions of a stochastic linear regression model, impacting associated inferences. Specifically, errors may occur in specifying the error vector ( ) and the data matrix ( X ). Common causes of specification errors involve including irrelevant independent variables or excluding relevant ones in the stochastic linear regression model. Previous research by Ivan Krivy et al. (2000) presented two stochastic algorithms for estimating parameters in nonlinear regression models. In a 1984 paper, Russell Davidson et al. developed a computational procedure for a variety of model specification tests. Ludger Ruschendorf et al. (1993) constructed nonlinear regression representations of general stochastic processes, focusing on specific representations for Markov chains and certain m-dependent sequences. This study contributes to the understanding of misspecification in stochastic linear regression models, utilizing a range of tests to identify errors in model assumptions and parameter estimation. The insights gained from these tests can enhance the accuracy and reliability of regression model inferences.

DOI: 10.61137/ijsret.vol.10.issue6.432

The Role of Data Science in Business Intelligence: Use Cases and Implementation Challenges
Authors:-Priyanshu Tripathi

Abstract-Data Science has become a pivotal element in the evolution of modern Business Intelligence (BI), transforming the way organizations process and analyze vast amounts of data to uncover actionable insights. By leveraging advanced techniques such as machine learning, statistical modeling, and data visualization, businesses can enhance decision-making processes and gain a competitive edge. This report delves into the synergistic integration of Data Science within BI frameworks, illustrating its practical applications through diverse use cases including predictive analytics for forecasting trends, customer segmentation for personalized marketing strategies, and fraud detection to safeguard organizational integrity.While the potential benefits are immense, the implementation of Data Science in BI is not without its challenges. Key hurdles include ensuring data quality and consistency across sources, overcoming integration complexities with legacy systems, and addressing skill gaps in data literacy among employees. These challenges require strategic planning, investment in technology, and workforce training to be effectively mitigated.The report also explores emerging trends shaping the future of BI, such as the increasing adoption of artificial intelligence, real-time analytics, and the use of natural language processing for intuitive data interactions. Finally, it provides actionable recommendations for organizations to build robust and scalable BI strategies, emphasizing the importance of fostering a data-driven culture, prioritizing ethical data practices, and continuously evolving with technological advancements.

DOI: 10.61137/ijsret.vol.10.issue6.433

Software Evaluation Tools and Testing Methodologies
Authors:-Anil Kumar Behera, Associate Professor Dr S R Raja

Abstract-Testing is a task, which is performed to check the quality of the software and also this process is done for the improvement in software at the same time. Software testing is a critical component of the software development lifecycle, ensuring that applications meet specified requirements and function as intended. Over the years, a wide range of tools and methodologies have been developed to enhance the effectiveness, efficiency, and scalability of testing processes. This paper provides an overview of the most widely used tools and methodologies for software testing, focusing on both manual and automated approaches. It explores popular testing tools for different testing types such as unit testing, functional testing, performance testing, and security testing, with a detailed examination of frameworks like Selenium, JUnit, and TestNG. Additionally, the paper highlights key methodologies, including Agile testing, Behaviour-Driven Development (BDD), and Continuous Integration/Continuous Delivery (CI/CD) integration, emphasizing how these approaches align with modern development practices. The research also addresses the strengths and weaknesses of different tools and methodologies, offering insights into their suitability for various types of projects and testing environments. Challenges related to test maintenance, scalability, and the integration of testing within DevOps pipelines are also discussed. By analysing the current landscape of software testing tools and methodologies, this paper aims to provide valuable guidance for teams looking to improve their testing strategies, optimize workflows, and ensure higher- quality software releases.

DOI: 10.61137/ijsret.vol.10.issue6.434

Automated Malware and Phishing Website Detection Using Cluster Ensemble Techniques for Cybercrime Prevention
Authors:-Nega. B, Rithika. K, Rithika. V, D. Suganthi, J. Mythili, Dr. N. Prabhu

Abstract-Cybercrime is a specialised field that use internet communication networks to enhance the identification of cyber offenders via cyber laws. Extensive study is being undertaken to provide appropriate legal methodologies for preventing and regulating cybercriminal activity. Malware and phishing detection have become as prominent subjects in the last decade because to the harm they inflict on internet users. The identification of phishing websites is a novel area in the discipline. Phishing websites are regarded as a significant threat for the exploitation of personal information for the benefit of cybercriminals. This research presents an automated classification system designed to identify malware and phishing websites by integrating several clustering techniques using a cluster ensemble approach.

DOI: 10.61137/ijsret.vol.10.issue6.652

Development of Forensic Analysis Model for Investigating the Cybercrime Over TOR Network
Authors:-Atchaya. S, Bavana. D, Dharshini. V, Suganthi. D, Mythili. J, Greeshma K

Abstract-The proliferation of crimes using anonymised networks such as The Onion Router (TOR) has posed considerable hurdles for law enforcement and cybersecurity experts. Conventional forensic methods often have difficulties in tracking illegal activity carried out on TOR because of its encryption and anonymity attributes. This study aims to provide a forensic analysis model tailored for the investigation of criminality inside the TOR network. The model utilises sophisticated data analysis methods, using machine learning classifiers like as Naïve Bayes, Support Vector Machines (SVM), Random Forest, and K-Nearest Neighbours (KNN), to identify anomalous activity and discern attack patterns. Furthermore, it incorporates feature selection techniques to improve classification precision and minimise false positives. The proposed methodology utilises publicly accessible information and network traffic analysis to enhance the detection and investigation of criminality inside the TOR network, providing significant insights for security experts and law enforcement authorities.

DOI: 10.61137/ijsret.vol.10.issue6.653

Fraud Detection in Financial Institutions: AI VS. Traditional Methods
Authors:-Chintamani Bagwe

Abstract-This research paper provides a comparative analysis of traditional rule-based fraud detection methods and emerging AI-based approaches in financial institutions. The study examines effectiveness, adaptability, operational efficiency, regulatory compliance, and implementation considerations of both methodologies. Through detailed evaluation supported by visual representations, the paper demonstrates that while AI-based methods offer superior detection accuracy, adaptability, and reduced false positives, traditional approaches provide greater transparency and established regulatory compliance frameworks. The findings suggest that hybrid approaches combining the strengths of both methodologies represent the optimal strategy for most financial institutions. The paper concludes with an examination of future trends and recommendations for financial institutions seeking to enhance their fraud detection capabilities.

DOI: 10.61137/ijsret.vol.10.issue6.654

Professor Group Search Optimization and Leicht-Holme-Newman Trust based Wireless Sensor Network Optimization
Authors:-Poonam Tiwari, Professor Rani Kushwaha

Abstract-Wireless sensor networks (WSNs) are vulnerable to many backdoor attacks counting malicious nodes. Malicious nodes can inject false data, drop packets, or even launch denial-of-service attacks. One way to detect malicious nodes in WSNs is to use trust-based routing protocols. Trust-based routing protocols calculate a trust value for all network nodes. This paper has developed a model that estimates trust of each node based on social behavior function Leicht-Holme-Newman. Based on the trustful nodes paths of the packet were found by the Group Search Optimization algorithm. This paper has proposed a model that reduces the energy losses of WSN network. Experiment was done on different set of network environment under varying nodes attacks. Result shows that proposed model has increased the network spectrum utilization and network life as well.

Nanotechnology In Healthcare Business: Innovations In Diagnostics, Targeted Drug Delivery, And Market Dynamics

Authors: Noushad Pasha

 

 

Abstract: Nanotechnology is revolutionizing the healthcare industry by enabling unprecedented precision in diagnostics, drug delivery, and disease management. Operating at the molecular and atomic levels, nanotechnology introduces new tools and techniques that enhance the efficiency, accuracy, and personalization of medical interventions. This article explores the fundamental principles of nanotechnology in medicine and its transformative applications in early diagnostics and targeted drug delivery. It further examines evolving market dynamics, investment trends, and commercialization strategies within the healthcare business. Additionally, the paper addresses critical challenges such as regulatory ambiguity, ethical concerns, and scalability of nanotechnological solutions. Finally, it discusses future trends, including the integration of nanotech with artificial intelligence and personalized medicine, highlighting the potential for a paradigm shift toward more predictive, preventive, and patient-centered care. Through a multidisciplinary lens, the article provides a comprehensive overview of how nanotechnology is redefining the healthcare landscape and its implications for global health systems.

DOI: http://doi.org/10.61137/ijsret.vol.10.issue6.656

 

 

Post-Pandemic Business Models: Lessons In Resilience And Technological Adaptation

Authors: Meenakshi, Manju Prasad, Selva.P

 

Abstract: The COVID-19 pandemic profoundly disrupted global business landscapes, compelling organizations to reassess and transform their traditional business models. This article examines the critical lessons in resilience and technological adaptation that have emerged in the post-pandemic era, highlighting how agility, digital transformation, and customer-centric innovation have become essential for survival and growth. It explores shifts in business paradigms towards flexible operations, hybrid models, and platform ecosystems that blend physical and digital engagement. The discussion also addresses key challenges such as regulatory complexities, cybersecurity risks, and digital divides, emphasizing the importance of strategic investment in technology, workforce development, and collaborative innovation. By analyzing successful adaptation strategies and emerging trends, this study provides actionable insights for business leaders, entrepreneurs, and policymakers aiming to foster sustainable and competitive enterprises in a rapidly evolving, uncertain environment.

DOI: http://doi.org/10.61137/ijsret.vol.10.issue6.657

 

Revolutionizing Logistics: Nanotechnology Applications In Cold Chain And Smart Packaging

Authors: Sandhya, Mamatha U, Siddegowda

 

Abstract: This article delves into the transformative role of nanotechnology in logistics, particularly emphasizing its applications within cold chain management and smart packaging solutions. Cold chain logistics, critical for industries like pharmaceuticals and food, involves maintaining strict temperature controls to preserve product quality and safety during transportation and storage. Nanotechnology offers innovative tools such as nanosensors, nanomaterials, and nano-coatings that enable real-time, highly accurate monitoring of environmental conditions including temperature, humidity, and contamination risks. These nanoscale innovations can detect minute changes, alerting stakeholders immediately to potential breaches that could compromise product integrity. This capability not only significantly reduces spoilage and waste but also extends the shelf life of perishable goods, ensuring safer delivery to end consumers. Moreover, nanotechnology enhances smart packaging by integrating intelligent features directly into packaging materials. Nanocoatings can provide antimicrobial properties, improve barrier protection against oxygen and moisture, and facilitate controlled release of preservatives or freshness indicators. Combined with nanosensors embedded in packaging, businesses gain detailed insights into the product’s condition throughout the supply chain, promoting transparency and trust between producers, distributors, and consumers. This data can be integrated with Internet of Things (IoT) platforms and analyzed through artificial intelligence (AI) to optimize logistics, forecast demand, and respond dynamically to supply chain disruptions. Ultimately, this article offers strategic insights for enterprises eager to leverage nanotechnology as a means to build resilient, sustainable, and smart supply chains. By embracing these innovations, businesses can meet the increasing global demand for product safety, environmental responsibility, and operational efficiency, positioning themselves competitively in a rapidly evolving logistics landscape.

DOI: http://doi.org/10.61137/ijsret.vol.10.issue6.658

 

Smart Materials And Supply Chain Innovation: A Nanotechnological Approach Chethan Swamy And Nagendra Kumar

Authors: Chethan Swamy, Nagendra Kumar

 

Abstract: Nanotechnology-enabled smart materials are revolutionizing supply chain innovation by introducing adaptive, responsive, and durable solutions that enhance operational efficiency, transparency, and sustainability. These advanced materials, engineered at the nanoscale, enable real-time monitoring, self-healing capabilities, and improved product longevity, addressing key challenges faced by traditional supply chains such as inefficiency, lack of visibility, and environmental impact. The integration of nanosensors and nanocoatings into supply chains allows businesses to track conditions during transit, optimize inventory management, and reduce waste, thereby driving cost savings and improved customer satisfaction. Furthermore, the convergence of nanotechnology with digital technologies like IoT, AI, and blockchain is creating smarter, more resilient, and transparent supply networks. However, strategic adoption requires businesses to navigate technological, regulatory, and ethical complexities while fostering collaboration across the value chain. This article explores the transformative potential of nanotechnology-based smart materials in supply chain management, examining current applications, challenges, and future trends. It highlights how organizations that embrace these innovations can achieve competitive advantage through enhanced agility, sustainability, and innovation leadership.

DOI: http://doi.org/10.61137/ijsret.vol.10.issue6.659

 

Strategic Integration Of Nanotechnology In Business Operations: A Future-Driven Perspective

Authors: Amruth.P, Pavan Gowda

 

Abstract: This article explores the strategic integration of nanotechnology into business operations from a future-driven perspective. It highlights the transformative potential of nanoscale innovations across various industries, emphasizing how businesses can leverage nanotechnology to enhance product performance, improve operational efficiency, and achieve sustainability goals. The discussion includes a comprehensive framework for assessing organizational readiness, identifying relevant applications, managing investment risks, and fostering a culture of innovation. Additionally, it addresses challenges such as regulatory concerns, technical complexities, and workforce development, while showcasing real-world examples of successful nanotech adoption. Finally, the article outlines emerging trends and opportunities, encouraging businesses to adopt proactive strategies that align with evolving technological landscapes and market demands. This future-oriented approach aims to empower companies to maintain competitiveness and drive sustainable growth through the effective integration of nanotechnology.

DOI: http://doi.org/10.61137/ijsret.vol.10.issue6.660

 

Tech-Enabled Social Responsibility: Integrating CSR With Digital Transformation

Authors: Sadiq.H, Prabhu Prasad

 

 

Abstract: This article delves deeply into the transformative role that digital technologies are playing in reshaping Corporate Social Responsibility (CSR) practices across industries worldwide. It emphasizes how the integration of CSR with digital transformation is no longer optional but a strategic necessity for modern businesses aiming to enhance transparency, operational efficiency, and meaningful stakeholder engagement. By harnessing cutting-edge innovations such as big data analytics, artificial intelligence (AI), blockchain technology, the Internet of Things (IoT), and social media platforms, companies are now able to design and implement CSR initiatives that are not only more impactful but also more measurable and scalable. These technologies provide unprecedented capabilities for real-time monitoring, data-driven decision-making, and transparent reporting, thus fostering greater accountability and trust among consumers, investors, and communities. The article traces the evolution of CSR from traditional philanthropic and compliance-based approaches to its current status as an integral part of corporate strategy enabled by digital tools. It also explores the tangible benefits that technology integration brings, including enhanced resource allocation, improved risk management, and more dynamic stakeholder collaboration. However, the analysis does not shy away from discussing challenges such as data privacy concerns, digital divides, and the need for ethical frameworks to guide technology use in CSR. To ground the discussion in practical reality, the article presents a series of compelling case studies showcasing how leading organizations have successfully integrated digital technologies into their CSR agendas, thereby driving innovation and positive social change. Looking ahead, the article highlights emerging trends like AI-driven predictive analytics that can anticipate social risks, digital twins that simulate environmental impacts, and fintech solutions promoting financial inclusion. These innovations promise to further revolutionize CSR by enabling proactive, precise, and inclusive approaches to corporate responsibility.

DOI: http://doi.org/10.61137/ijsret.vol.10.issue6.661

 

 

The Evolving Supply Chain: Automation, Globalization, And Sustainability In The 21st Century

Authors: Hemanth Kumar, Mamathu U

 

 

Abstract: The supply chain landscape of the 21st century is undergoing a profound transformation driven by the synergistic forces of automation, globalization, and sustainability. As businesses face unprecedented challenges and opportunities in an increasingly complex global market, supply chains have evolved from traditional logistical operations into strategic frameworks critical to resilience, agility, and long-term growth. Automation technologies—such as robotics, AI, and the Internet of Things—have redefined efficiency and responsiveness, while digital globalization has prompted companies to reconfigure sourcing models to balance cost-effectiveness with resilience. At the same time, sustainability has emerged as a core imperative, reshaping supply chains to prioritize environmental responsibility, ethical labor practices, and circular economy principles. This article examines how these three pillars—automation, globalization, and sustainability—interact to reshape modern supply networks. It highlights the benefits and risks associated with new technologies, explores the strategic reorientation of global operations, and underscores the importance of ethical and sustainable practices. Through this comprehensive analysis, the article offers a forward-looking perspective on how companies can build adaptive, transparent, and values-driven supply chains to remain competitive in the evolving business landscape. By aligning operational excellence with societal and environmental goals, organizations can transform their supply chains into engines of innovation, resilience, and sustainable value creation.

DOI: http://doi.org/10.61137/ijsret.vol.10.issue6.662

 

 

The Role Of Digital Platforms In Accelerating Startup Ecosystems

Authors: Sandhya Kumari, Manohar Jain, Selva Kumar

 

 

Abstract: Digital platforms have emerged as powerful catalysts in accelerating startup ecosystems by providing entrepreneurs with unprecedented access to markets, funding, collaboration, and resources. By lowering traditional barriers to entry, enabling rapid scalability, and fostering vibrant communities, these platforms have transformed how startups are conceived, launched, and grown. This article examines the multifaceted role digital platforms play in enhancing market reach, facilitating funding through crowdfunding and online angel networks, and building global entrepreneurial networks. It also addresses challenges such as digital inequality, data privacy concerns, and regulatory complexities that startups and ecosystem stakeholders must navigate. Highlighting case studies of successful platform-enabled startups and ecosystems, the article explores future trends driven by emerging technologies like artificial intelligence, blockchain, and the Internet of Things, which promise to further evolve platform capabilities. Policymakers, investors, and entrepreneurs alike must understand and strategically leverage digital platforms to foster inclusive, resilient, and innovative startup ecosystems that drive economic growth and technological progress worldwide.

DOI: http://doi.org/10.61137/ijsret.vol.10.issue6.663

 

 

The Role Of Venture Capital In Scaling Nanotech Innovations

Authors: Prabhu Prasad, Hemanth Kumar

 

 

Abstract: Venture capital plays a crucial role in accelerating the commercialization and scaling of nanotechnology innovations, bridging the gap between early-stage research and market-ready products. Nanotech ventures face unique challenges such as high R&D costs, complex manufacturing, regulatory uncertainties, and long development timelines, which require patient capital and strategic support. This article explores how venture capitalists evaluate, invest in, and actively support nanotech startups through specialized investment strategies, risk management, and ecosystem building. It highlights the evolving landscape of nanotech VC funding, the impact of venture capital on technological advancement, and emerging trends that will shape the future of this sector. By understanding the dynamics between venture capital and nanotechnology, entrepreneurs, investors, and policymakers can better harness funding mechanisms to foster innovation, economic growth, and societal benefits.

DOI: http://doi.org/10.61137/ijsret.vol.10.issue6.664

 

 

Ethnobotanical Study Of Medicinal Plants Used By Indigenous Communities

Authors: Assistant Professor Ajay Kumar

Abstract: This study aims to document and analyze the traditional use of medicinal plants among three indigenous communities, integrating ethnobotanical knowledge into broader conservation and pharmacological frameworks. Field surveys were conducted in each community’s natural habitat, complemented by ninety semi-structured interviews with traditional healers and elders. Guided transect walks facilitated in-situ identification and GPS mapping of specimens, which were then authenticated and deposited as herbarium vouchers. Quantitative analyses employed Use Value (UV), Informant Consensus Factor (ICF), and Fidelity Level (FL) indices to assess species importance and consensus. In total, 212 medicinal plant species across 78 botanical families were recorded. The most-valued taxa, notably members of Fabaceae and Lamiaceae, exhibited high UV scores (≥0.65), while gastrointestinal remedies showed the strongest agreement among informants (ICF = 0.89). Five flagship species demonstrated fidelity levels above 80 percent, indicating specialized therapeutic roles. These findings underscore the richness and specificity of indigenous pharmacopoeias, offering critical insights for targeted phytochemical investigations. By highlighting culturally salient species and consensus patterns, this research contributes to in situ conservation planning, supports community-led knowledge preservation, and identifies promising candidates for drug-development pipelines.

Runbook Engineering and SOP Design in High-Availability Environments: A Playbook for DevOps Teams

Authors: Harish Govinda Gowda

Abstract: In modern high-availability environments, runbooks and Standard Operating Procedures (SOPs) serve as foundational tools for maintaining system reliability, enabling rapid incident response, and ensuring compliance. As organizations scale their DevOps and Site Reliability Engineering (SRE) practices, the need for structured, version-controlled, and automation-ready documentation becomes increasingly urgent. This article explores the principles and practices of runbook engineering and SOP design, offering a practical playbook for DevOps teams operating in complex, cloud-native infrastructures. Through real-world case studies and forward-looking strategies, it highlights how well-designed documentation not only reduces mean time to resolution (MTTR) but also empowers teams to automate responses, facilitate onboarding, and meet regulatory requirements. With insights into intelligent triggers, governance models, and AI-driven operational tooling, this guide aims to elevate runbooks and SOPs from static artifacts to dynamic, self-healing components of platform resilience.

DOI: https://doi.org/10.5281/zenodo.15916756

Forensic Readiness Using Tcpdump, Wireshark, and Log Analysis

Authors: Shalini Mehra, Pavan Krishnan, Rituja Deshpande, Anil Borkar

Abstract: Forensic readiness is a crucial component of modern cybersecurity, enabling organizations to effectively detect, analyze, and respond to security incidents. In a landscape where cyber threats are becoming increasingly sophisticated, forensic readiness ensures that organizations are prepared to collect and preserve digital evidence in a way that supports investigative processes and legal proceedings. This paper explores the role of network traffic capture tools, such as tcpdump and Wireshark, alongside log analysis, in forensic readiness. Tcpdump, a command-line tool for network packet capture, and Wireshark, a graphical network protocol analyzer, are instrumental in collecting real-time network data and identifying suspicious activities during security incidents. Log analysis plays a complementary role by providing detailed records of system and application events, helping investigators build a comprehensive timeline of the attack. Together, these tools enable organizations to monitor network traffic, correlate system activities, and preserve evidence, ensuring a rapid and efficient response to cyber threats. This paper discusses the features, practical applications, and benefits of using tcpdump, Wireshark, and log analysis in forensic investigations, highlighting their critical role in enhancing cybersecurity defenses and ensuring regulatory compliance.

DOI: https://doi.org/10.5281/zenodo.16154989

CentrifyDC Authentication Failures: Patterns, Prevention, and Protocols

Authors: Vinay Kulkarni, Sneha Patange, Meera Salgaonkar, Rajat Nair

Abstract: Authentication is a critical component of enterprise security, ensuring that only authorized users gain access to sensitive data and systems. CentrifyDC is an identity and access management solution that integrates with Active Directory (AD) to manage user authentication, offering features like single sign-on (SSO) and role-based access control (RBAC). However, authentication failures in CentrifyDC can arise due to various factors such as incorrect credentials, time synchronization issues, network connectivity problems, and misconfigured protocols. These failures can disrupt business operations and pose security risks. This paper explores the common patterns of authentication failures in CentrifyDC, including their root causes, troubleshooting methods, and prevention strategies. It also discusses key protocols involved in CentrifyDC authentication, such as Kerberos, LDAP, and RADIUS, and highlights best practices for minimizing failures and enhancing system reliability.

DOI: https://doi.org/10.5281/zenodo.16155649

Role-Based Access Control in Multi-Zone Solaris Networks

Authors: Bhavya Iyer, Pradeep Sinha, Krithika Sharma, Anand Joshi

Abstract: Role-Based Access Control (RBAC) is a crucial security model used to manage user access and permissions in complex network architectures. In multi-zone Solaris networks, RBAC plays a key role in ensuring that users only have access to the resources they need based on their designated roles. Solaris zones allow for the isolation of different virtual environments on the same physical machine, providing greater security and operational flexibility. However, managing access control in such segmented environments can be challenging. This paper explores the implementation of RBAC in multi-zone Solaris networks, discussing the configuration of roles and permissions across different zones, the tools available for managing RBAC, and the challenges and benefits of applying this access control model. Best practices for creating, managing, and auditing roles within Solaris zones are also outlined, demonstrating how RBAC enhances security and operational efficiency in multi-zone infrastructures.

DOI: https://doi.org/10.5281/zenodo.16156315

Data-Driven Decision-Making In Healthcare Systems Using Operations Research And Statistical Modeling: A Framework For Optimizing US Healthcare Delivery

Authors: Uchenna Evans-Anoruo

Abstract: The escalating complexity of healthcare delivery in the United States, coupled with increasing costs and demand for services, necessitates sophisticated analytical approaches to optimize system performance. This article presents a comprehensive framework for implementing data-driven decision-making in healthcare systems through the integration of operations research techniques and statistical modeling. By leveraging queuing theory, simulation modeling, and decision analysis, healthcare organizations can significantly improve resource allocation, patient flow management, and service delivery efficiency. The integration of advanced IT systems enables real-time data collection and analysis, supporting continuous optimization of healthcare operations. This research demonstrates how systematic application of these methodologies can address critical challenges in US healthcare delivery while maintaining quality standards and improving patient outcomes.

DOI: https://doi.org/10.5281/zenodo.16964206

 

Multi-attribute Group Decision-making Algorithm Based On Yager Norms For Intuitionistic Fuzzy Soft Numbers

Authors: Devraj Singh, Professor Vinit Kumar Sharma, Assistant Professor Kamal Kumar

 

Abstract: Intuitionistic fuzzy soft set (IFSS) theory offers an effective and comprehensive algorithm to handle uncertainty by incorporating parameterized elements which makes it a strong technique for decision-making (DM). For the purpose to aggregate IFS numbers (IFSNs), we propose new operation rules for IFSNs. Then, by utilizing the proposed operations, we propose intuitionistic fuzzy soft Yager weighted averaging (IFSYWA) and geometric (IFSYWG) aggregation operator (AO). Further, we thoroughly examine the mathematical characteristics of the proposed IFSYWA AO and IFSYWG AO such as idempotency and monotonicity. By using the proposed IFSYWA and IFSYWG AO, we develop a multi-attribute group decision-making (MAGDM) algorithm for IFSNs environment. Usefulness of proposed MAGDM algorithm is illustrated by a real-world MAGDM problem focussed on selecting the best renewable energy project for investment.Lastly, the results confirm that the suggested AOs can be used to solve MAGDM difficulties.

DOI: https://doi.org/10.5281/zenodo.16982006

AI-Augmented Platform Engineering: Redefining Developer Experience through Autonomous, Self-Optimizing Enterprise Systems

Authors: Shravan Kumar Reddy Padur

Abstract: The evolution of enterprise software delivery has entered a transformative era where artificial intelligence (AI) and platform engineering unite to revolutionize the developer experience (DX). Traditional DevOps pipelines, though effective at accelerating releases, often introduced cognitive overload, toolchain sprawl, and inconsistent governance. The advent of internal developer platforms (IDPs) exemplified by Spotify’s Backstage, Humanitec, and CNCF’s platform engineering models has redefined developer productivity through unified, self-service abstractions that reduce operational friction while preserving control and compliance. Concurrently, AI’s influence has permeated every layer of the development lifecycle: AI-assisted coding enhances ideation and reduces context switching, AI-driven operations (AIOps) enable proactive detection and self-healing, and predictive analytics frameworks like DORA and SPACE translate delivery data into actionable performance insights. Together, these advances are ushering in an era of adaptive, intelligence-augmented platforms where automation, observability, and developer empathy converge—elevating enterprise software delivery from procedural execution to a continuously learning, self-optimizing ecosystem.

DOI: http://doi.org/10.5281/zenodo.17679655

The Impact Of AI-based Anomaly Detection On Securing Hybrid Cloud Networks

Authors: Kavita L. Desai

Abstract: The rapid adoption of hybrid cloud architectures has transformed modern enterprise computing by offering scalability, flexibility, and cost efficiency. However, this transformation has also introduced complex security challenges stemming from heterogeneous infrastructures, dynamic workloads, and distributed data environments. Traditional rule-based and signature-driven security mechanisms have proven inadequate in addressing sophisticated cyber threats such as zero-day attacks, insider breaches, and advanced persistent threats (APTs). In response, Artificial Intelligence (AI)-based anomaly detection has emerged as a crucial innovation in hybrid cloud security. By leveraging machine learning algorithms, AI systems can identify deviations from normal behavioral patterns in real time, enabling early detection and mitigation of potential intrusions. This review paper explores the impact of AI-based anomaly detection on securing hybrid cloud networks. It examines the foundational aspects of hybrid cloud security, outlines the principles and mechanisms of AI-driven anomaly detection, and discusses practical applications in network monitoring, threat intelligence, and automated response. The paper also analyzes key challenges, including data imbalance, model interpretability, and privacy constraints, while comparing AI-based solutions with traditional detection systems. Furthermore, future research directions are highlighted, focusing on explainable AI, federated learning, quantum-driven analytics, and autonomous defense frameworks. The findings underscore that AI-based anomaly detection is not only enhancing real-time visibility and threat response but also paving the way toward predictive, self-healing, and intelligent hybrid cloud security ecosystems.

DOI: http://doi.org/10.5281/zenodo.17799638

The Influence Of Ethical AI Frameworks On Enterprise Automation Policies

Authors: Arjun M. Nair

Abstract: The integration of Artificial Intelligence (AI) into enterprise automation has revolutionized operational efficiency, data management, and decision-making across industries. However, this rapid technological transformation has also raised profound ethical concerns, including issues of algorithmic bias, privacy infringement, lack of transparency, and accountability gaps. As automation increasingly governs critical business functions, enterprises face mounting pressure to ensure that their policies and systems align with ethical principles. Ethical AI frameworks have emerged as essential guidelines that define how organizations should design, deploy, and govern AI-driven automation responsibly. This review paper examines the influence of ethical AI frameworks on enterprise automation policies, exploring how principles such as fairness, transparency, accountability, and human oversight are reshaping governance and risk management strategies. It provides an overview of key global ethical AI frameworks—such as those proposed by the European Union, OECD, and IEEE and discusses their role in guiding responsible automation. The paper analyzes how enterprises are integrating these frameworks into policy structures through bias audits, explainable AI models, and AI ethics committees. Additionally, it identifies critical challenges in operationalizing ethical principles, including data imbalance, interpretability limitations, and organizational resistance. A comparative analysis of ethical versus non-ethical automation models highlights the strategic advantages of ethical governance in fostering trust, regulatory compliance, and long-term sustainability. Future directions point toward the emergence of ethics-by-design approaches, explainable AI (XAI) systems, federated learning models, and adaptive governance frameworks that continuously monitor and enforce ethical compliance. Ultimately, this paper underscores that ethical AI is not merely a regulatory requirement but a cornerstone of responsible enterprise automation ensuring that technological progress remains aligned with societal values, human rights, and sustainable business integrity.

DOI: http://doi.org/10.5281/zenodo.17799640

Behavioral Analytics Using Machine Learning For Insider Threat Detection

Authors: Deepak Tomar, Kismat Chhillar

Abstract: Insider threats remain one of the most complex and costly cybersecurity challenges faced by modern organizations, as malicious or negligent actions originate from trusted users who possess legitimate access to critical systems and sensitive information. Traditional rule-based detection mechanisms often fail to identify subtle behavioral deviations that precede insider incidents, resulting in delayed response and elevated organizational risk. This study proposes a behavioral analytics framework powered by machine learning techniques to detect insider threats through dynamic modeling of user activity patterns. By leveraging multi-source organizational logs, including authentication records, file access events, communication metadata, and network activity traces, the framework constructs individualized behavioral baselines and identifies anomalous deviations indicative of potential threat activity. Both supervised and unsupervised learning models are evaluated using a benchmark insider threat dataset, with careful attention to data imbalance mitigation and model interpretability. Experimental results demonstrate that ensemble learning methods and temporal modeling approaches significantly enhance detection accuracy while maintaining acceptable false positive rates. The findings underscore the importance of integrating behavioral machine learning models into Security Operations Centers to enable proactive, scalable, and context-aware insider threat mitigation strategies.

DOI: https://doi.org/10.5281/zenodo.18996897

 

Ionic Liquids For Carbon Capture: A Comprehensive Review Of Absorbents, Mechanisms, And Process Applications

Authors: Rohit Sunil Khedkara, Sharad Dhanvijay

Abstract: The escalating atmospheric CO₂ concentration and its contribution to global climate change have driven intensive research into carbon capture technologies. Ionic liquids (ILs) have emerged as promising alternatives to conventional amine-based absorbents, offering unique advantages including negligible vapor pressure, exceptional thermal stability, and tunable physicochemical properties through rational cation-anion design. This comprehensive review examines the full spectrum of ionic liquid applications in CO₂ capture, from fundamental absorption mechanisms to process-scale implementations. Physical absorption in conventional ILs, chemisorption in task-specific ILs incorporating amine, carboxylate, and amino acid functionalities, and IL-based mixed absorbents are systematically analyzed. Structure-property relationships governing CO₂ solubility—including the influence of cation alkyl chain length, anion basicity, and functional group incorporation—are critically evaluated against experimental and computational data. Supported ionic liquid membranes (SILMs) and ionic liquid-based mixed matrix membranes for CO₂ separation are reviewed, highlighting permeability-selectivity trade-offs and stability considerations. Process configurations including IL-based absorption-desorption cycles, membrane contactors, and hybrid systems are assessed for energy consumption and economic viability. Recent advances in computational screening, machine learning-guided IL design, and process intensification are presented. Key challenges including high viscosity, long-term stability under operating conditions, absorbent regeneration energy, and scale-up economics are addressed. Finally, future directions toward industrial implementation are discussed, emphasizing the integration of ILs with renewable energy sources and the development of sustainable, cost-effective capture technologies.

DOI: https://doi.org/10.5281/zenodo.19050263

 

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AI-Augmented Platform Engineering: Redefining Developer Experience through Autonomous, Self-Optimizing Enterprise Systems

Uncategorized

Authors: Shravan Kumar Reddy Padur

Abstract: The evolution of enterprise software delivery has entered a transformative era where artificial intelligence (AI) and platform engineering unite to revolutionize the developer experience (DX). Traditional DevOps pipelines, though effective at accelerating releases, often introduced cognitive overload, toolchain sprawl, and inconsistent governance. The advent of internal developer platforms (IDPs) exemplified by Spotify’s Backstage, Humanitec, and CNCF’s platform engineering models has redefined developer productivity through unified, self-service abstractions that reduce operational friction while preserving control and compliance. Concurrently, AI’s influence has permeated every layer of the development lifecycle: AI-assisted coding enhances ideation and reduces context switching, AI-driven operations (AIOps) enable proactive detection and self-healing, and predictive analytics frameworks like DORA and SPACE translate delivery data into actionable performance insights. Together, these advances are ushering in an era of adaptive, intelligence-augmented platforms where automation, observability, and developer empathy converge—elevating enterprise software delivery from procedural execution to a continuously learning, self-optimizing ecosystem.

DOI: http://doi.org/10.5281/zenodo.17679655

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Designing Resilient Waste Management Systems For 21st-Century Cities: A Circular Economy Approach

Uncategorized

Authors: Olamide Ayeni, Opeyemi Alamutu

Abstract: The rapid urbanization of the 21st century has created unprecedented challenges for waste management systems, necessitating innovative approaches that integrate resilience and sustainability. This article examines the design and implementation of resilient waste management systems through a circular economy lens, addressing the critical need for sustainable urban development. By analyzing contemporary research and best practices, this study explores how cities can transform linear waste management models into circular systems that promote resource recovery, environmental protection, and economic viability. The article synthesizes evidence from global case studies and technological innovations to provide a comprehensive framework for designing resilient waste management systems that can withstand environmental, economic, and social pressures while contributing to urban sustainability goals

DOI: http://doi.org/10.5281/zenodo.17213748

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Combatting Business Email Compromise (BEC) In Hybrid Cloud Environments: A Policy-Aware Automation Approach

Uncategorized

AuthorsOlajide Adebayo, Tolulope Awobeku

Abstract: Business Email Compromise (BEC) attacks represent one of the most financially devastating cybersecurity threats facing modern enterprises, with losses exceeding $43 billion globally since 2016 according to FBI Internet Crime Complaint Center data. This study presents a comprehensive detection and mitigation strategy specifically designed for hybrid cloud environments utilizing Microsoft 365 and Google Workspace platforms. The research focuses on developing an integrated framework that combines advanced identity and access management protocols, robust encryption mechanisms, and automated compliance enforcement to effectively counter BEC threats. Through analysis of enterprise security architectures and implementation of policy-aware automation systems, this study demonstrates how organizations can significantly enhance their resilience against sophisticated social engineering attacks while maintaining operational efficiency in distributed work environments.

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IJSRET Volume 10 Issue 5, Sep-oct-2024

Uncategorized

An Unmanned Level Crossing Controller with Real Time Monitoring Based on Microcontroller Elements
Authors:-Angel Dixon, Muhammed Ashiq k, Sreenika V Nair, Assistant Professor MS. Sayana M

Abstract-The Automatic Railway Gate Control (ARGC)system is designed to overcome the limitations and inefficiencies associated with traditional manually operated railway crossing gates. This innovative system employs sensors and microcontroller technologies to manage and control the operation of railway gates automatically, thereby enhancing the safety and efficiency of rail and road traffic.

IoT Enabled Solutions for Women Safety and Health Monitring
Authors:-Sudeshna P, Vivekanandan K

Abstract-Women and children today deal with a number of problems, including sexual attacks. The victims’ life will undoubtedly be greatly impacted by such atrocities. It also has an impact on their psychological equilibrium and general wellbeing. The frequency of these acts of violence keeps rising daily. Even schoolchildren are victims of sexual abuse and abduction. In our society, a nine-month-old girl child is not protected; she was abducted, sexually assaulted, and ultimately killed. Seeing the abuses of women makes us want to take action to ensure the protection of women and children. Therefore, we intend to present a device in this project that will serve as a tool for security and guarantee the safety of women and children. GSM microcontroller.

DOI: 10.61137/ijsret.vol.10.issue5.224

Impact of Subsidies on Indian Agriculture
Authors:-Manish Kumar, Assistant Professor Dr Gurshaminder Singh

Abstract-Agriculture plays a crucial role in India’s economy, supporting approximately 55% of rural households and contributing about 18% to the nation’s GDP. At the time of independence, the agricultural sector was underdeveloped, with limited land dedicated to key crops. In response, the Indian government implemented programs to modernize farming by introducing high-yielding seed varieties, fertilizers, mechanization, and irrigation. However, higher the costs of these modern techniques presented challenges for many farmers. To make agricultural inputs more affordable to the farmer, the government introduced subsidies based on recommendations from the Food Grain Price Committee. While subsidies are essential for addressing market inefficiencies and promoting societal benefits like poverty alleviation and food security, they are often criticized for issues like poor targeting and governance challenges. In spite of this fact, subsidies have significantly influenced agricultural production, particularly during the Green Revolution. As India moves toward sustainable agricultural development, subsidies remain a vital tool for balancing economic, environmental, and social objectives.

DOI: 10.61137/ijsret.vol.10.issue5.225

A Review on Direct Seeded Rice: A Sustainable Approach to Paddy Cultivation
Authors:-Jagdeep Singh, Assistant Professor Dr. Gurshaminder Singh

Abstract-Agriculture is crucial for the Indian economy. Rice is a staple crop to more than half of world population. Conventional transplanted rice production faces issues like lowering water tables, lower productivity, methane emissions, soil health deterioration, and labour scarcity. Puddling, a crucial step in wetland rice production, can improve transplanting and weed management but can also cause soil conditions that are unfavourable for post-rice crops. Puddled transplanted rice is energy-intensive and contributes to climate change by emitting methane and nitrous oxide. Direct seeded rice (DSR) technologies can minimize environmental impact and increase productivity. DSR was introduced in 2009-10 to address labour constraints, rising labour prices, and a diminishing groundwater table in Punjab. With agricultural water requirements expected to increase by 20% by 2050, DSR requires about 50% less water under Indian conditions. This review article studies the condition of current rice production practices, the major constrains and DSR, its advantages along with agronomy as substitute of current TPR method.

DOI: 10.61137/ijsret.vol.10.issue5.226

Food for thought: Image-Based Recipe Generation using Deep Learning
Authors:-Aftab Shakil Shaikh

Abstract-The recognition of food on social media has spawned an growing interest in automated food recognition and recipe era. We gift a system that combines both neighborhood and global functions to create spatiotemporal convnet, this paper outlines the venture of creating particular but special recipes from snap shots of food. on this paper, we use convolutional neural networks and a generative antagonistic community to robotically convert meals photographs into textual content based totally recipes. To generate coherent and contextually relevant recipe instructions, our approach combines image popularity techniques based totally on Convolutional Neural Networks (CNN) [17] for the identity and category of food with herbal Language Processing (NLP)—fashions utilized in conjunction to analyze textual data. extra records: The authors present a large-scale dataset with various meals categories and corresponding recipe (i.e., cooking method) for schooling their proposed framework. at the photograph- to-recipe mission, our experiments set up that it is able to certainly generate a recipe carefully matching with food objects in snap shots. Quantitative assessment benchmarks on preferred datasets display superiority as compared to baseline models and qualitative evaluation verifies that our architecture can produce human-like recipe commands. these consequences assist our approach as a benchmark for more state-of-the-art packages closer to automated culinary content creation by way of offering users with more food-related experience in digital interfaces.

DOI: 10.61137/ijsret.vol.10.issue5.227

Accredited Philhealth Konsult Providers Service Quality and Diagnostic Examination Availability in Baguio City
Authors:-Aileen D. Ambros, Cristine Rose A. Angiwot, Kenje L. Coytop, Melvin A. Danao, Phemy Amor C. Galingan, Diana Febone L. Macalo, Merriam S. Pay-an, Marilou Dela Peña, Jolly B. Mariacos

Abstract-The PhilHealth Konsulta program aims to improve healthcare access and affordability in the Philippines by offering full primary care services such as consultations, diagnostic testing, and prescriptions. This study looks at the quality and availability of diagnostic examinations provided by accredited PhilHealth Konsulta providers in Baguio City. A quantitative research approach was used, with a survey disseminated to staff and outpatients from various PhilHealth Konsulta facilities in Baguio City. The study used a Likert scale to assess satisfaction levels in 10 areas of service quality and diagnostic availability, ranging from 1 (least satisfied) to 5 (very highly satisfied). A total of 117 people responded, including 48 personnel and 69 outpatients. Findings indicate generally high satisfaction levels among both healthcare providers and patients regarding consultation services, queue management, and patient instructions within the PhilHealth Konsulta framework. However, moderate satisfaction was noted regarding the availability of medications and diagnostic tests, highlighting potential areas for enhancement in inventory management and diagnostic infrastructure. Disparities between staff and patient perceptions suggest a need for improved communication and alignment in service delivery expectations. While the PhilHealth Konsulta program in Baguio City typically satisfies the demands of patients with moderate to high satisfaction, there are several crucial areas that need to be addressed to increase service quality and diagnostic availability. The study emphasizes the importance of increasing diagnostic test availability through enhanced equipment procurement and supply chain management. Strengthening healthcare manpower by recruiting additional staff and implementing training programs to optimize service delivery efficiency is also advised. Furthermore, leveraging technology to streamline administrative processes and improve patient management systems can enhance overall patient experience and operational effectiveness. This research contributes valuable insights to policymakers, healthcare managers, and practitioners involved in optimizing primary healthcare delivery under the PhilHealth Konsulta program. By addressing identified gaps and leveraging strengths, this study aims to support efforts towards achieving equitable healthcare access and improving health outcomes for residents of Baguio City and similar settings across the Philippines.

DOI: 10.61137/ijsret.vol.10.issue5.228

Mitigating Cyber Threats in Digital Payments: Key Measures and Implementation Strategies
Authors:-Praveen Tripathi

Abstract-This paper examines the increasing importance of robust cybersecurity measures in the digital payments industry. As the volume and value of online financial transactions continue to grow exponentially, the sector faces a corresponding surge in cyber-attacks, necessitating advanced cybersecurity protocols. This study explores key cybersecurity measures and implementation strategies, including encryption, multi-factor authentication (MFA), tokenization, artificial intelligence (AI)-based fraud detection, and regulatory compliance, to safeguard digital payments against various cyber threats. Through a detailed review of existing literature, case studies, and statistical analysis, the article provides strategic insights into how organizations can enhance security in digital payment ecosystems, maintain compliance, and achieve resilience in the face of evolving cyber threats.

DOI: 10.61137/ijsret.vol.10.issue5.229

Scalar and Vector Controlled Inverter Topology FED Three Phase Induction Motor
Authors:-Megavath Shankar

Abstract-This paper presents a comprehensive study of scalar and vector control techniques for three-phase induction motors fed by inverter topologies. Scalar control, commonly known as Voltage/Frequency (V/f) control, offers a simple, cost-effective method for motor control but is limited in its precision, torque regulation, and dynamic response. In contrast, vector control (or field-oriented control) decouples the motor’s torque and flux components, providing enhanced performance, including faster response times, improved speed and torque accuracy, and reduced harmonic distortion. MATLAB/Simulink simulations are used to evaluate both methods under various load and speed conditions, demonstrating the superior dynamic performance, accuracy, and reduced harmonic content of vector control, making it ideal for high-performance industrial applications.

DOI: 10.61137/ijsret.vol.10.issue5.230

Exploring Bioinformatics for Early Detection and Management of Lifestyle Disorders
Authors:-Dr. V. K. Singh

Abstract-Lifestyle diseases, such as cardiovascular diseases, diabetes, obesity, and hypertension, are significantly influenced by environmental factors and individual habits, including diet, physical activity, and stress. Advances in bioinformatics have allowed researchers to leverage genomics, proteomics, metabolomics, and transcriptomics data for early detection and effective management of these diseases. By analyzing gene expression, protein interactions, and metabolic pathways, bioinformatics helps identify biomarkers and therapeutic targets. This paper explores how bioinformatics-driven approaches can aid in understanding the molecular mechanisms behind lifestyle diseases, facilitating early diagnosis, personalized treatments, and improved health outcomes.

DOI: 10.61137/ijsret.vol.10.issue5.231

Effective System Design for Scalable Mobile Applications: A Practical Guide
Authors:-Vivek Agrawal

Abstract-Designing scalable mobile applications requires more than just robust code; it involves architectural foresight, optimized data models, and efficient network communication strategies. In this article, we present a comprehensive guide to effective system design for scalable mobile apps. Using real-world examples, we explore advanced data modeling techniques, API architecture (REST vs. GraphQL), and real-time data handling using Server-Sent Events (SSE) and WebSockets. Additionally, we examine design patterns such as Model-View-Presenter (MVP) and the use of Dependency Injection for managing complex dependencies. This paper explores a technical roadmap for developers looking to build scalable, maintainable mobile applications capable of handling growing user bases and evolving requirements.

Heart Disease and COVID-19 Prediction Using AI/ML
Authors:-Ms.Sristi Sharma, Mr.Sumeet Singh, Dr. Jasbir Kaur, Assistant Professor Ms.Sandhya Thakkar, Assistant Professor Mr.Suraj Kanal

Abstract-The current pandemic of COVID-19 for global medical care has high demand on rapid and correct diagnosis, especially in a cardiac population with prior heart disease being a large proportion among these patients. In this work, a predictive machine learning (ML) model based on convolutional neural networks (CNNs) is proposed to recognize COVID-19 and heart disease from chest X-ray images. The COVID-19 positive and normal X-ray images were used to train the CNN model. The objective behind was to automate the diagnosis so that it helps in early detection of diseases which can save lives and improve patient management. The model was accurate and demonstrated promising results in clinical scenarios.

DOI: 10.61137/ijsret.vol.10.issue5.232

Exploring the Adoption of Digital Payments: Key Drivers & Challenges
Authors:-Praveen Tripathi

Abstract-This paper investigates the factors influencing the adoption of digital payments globally. It discusses the drivers, challenges, and potential future research areas required to enhance the digital payment ecosystem. Emphasis is placed on technology advancements, consumer preferences, and regulatory frameworks, with a data-driven approach. Tables, graphs, and statistical analyses provide insights into the current adoption trends across regions. Future research directions focus on improving the security, user experience, and accessibility of digital payments.

DOI: 10.61137/ijsret.vol.10.issue5.233

Role of AI in Developing Countries
Authors:-Azhan Aslam

Abstract-This paper explores the role and impact of Generative Artificial Intelligence (AI) in developing countries, emphasizing its potential to address significant socio-economic challenges. Unlike traditional AI, which primarily focuses on decision-making based on existing data, Generative AI can create new content, making it a powerful tool for innovation. This technology offers unique opportunities for sectors such as healthcare, education, agriculture, and infrastructure development, particularly in nations with limited resources and technological infrastructure. Generative AI can revolutionize healthcare by enhancing diagnostic tools, supporting drug discovery, and enabling remote medical services. In agriculture, it assists in optimizing crop yields and improving food security through advanced monitoring techniques. Additionally, the technology can personalize educational experiences and democratize access to learning materials. Despite these advantages, the adoption of Generative AI faces challenges, including ethical concerns, data privacy issues, and the risk of job displacement. The paper concludes that Generative AI holds immense potential to drive sustainable development in developing countries. However, careful implementation and strategic investments in infrastructure and education are required to overcome existing barriers and ensure equitable access to these technologies.

DOI: 10.61137/ijsret.vol.10.issue5.234

A Performances Evaluation and Modelling of Solar and Wind Hybrid Power Generation Source
Authors:-Dharmendra Malviya, Neha Singh

Abstract-The recent upsurge in the demand of PV and wind systems is due to the fact that they produce electric power without hampering the environment by directly converting the solar radiation into electric power. However the solar radiation, wind never remains constant. It keeps on varying throughout the day. The need of the hour is to deliver a constant voltage to the grid irrespective of the variation in temperatures, wind pressure and solar isolation. We have designed a circuit such that it delivers constant and stepped up dc voltage to the load. We have studied the open loop characteristics of the PV array and wind system with variation in temperature and irradiation levels. Then we coupled the PV array and wind system with the boost converter in such a way that with variation in load, the varying input current and voltage to the converter follows the open circuit characteristic of the PV array and wind system closely. At various isolation levels, the load is varied and the corresponding variation in the input voltage and current to the boost converter is noted. It is noted that the changing input voltage and current follows the open circuit characteristics of the PV array and wind system closely.

Microgrid Modelling and its Performance Identification Using Matlab Simulink
Authors:-Bharat Lal Yadav, Neha Singh

Abstract-In this work, a Microgrid (MG) test model based on the 14-busbar IEEE distribution system is proposed. This model can constitute an important research tool for the analysis of electrical grids in its transition to Smart Grids (SG). The benchmark is used as a base case for power flow analysis and quality variables related with SG and holds distributed resources. The proposed MG consists of DC and AC buses with different types of loads and distributed generation at two voltage levels. A complete model of this MG has been simulated using the MATLAB/Simulink environmental simulation platform. The proposed electrical system will provide a base case for other studies such as: reactive power compensation, stability and inertia analysis, reliability, demand response studies, hierarchical control, fault tolerant control, optimization and energy storage strategies.

Emerging Network Security Threats
Authors:-Shashant Srivastava, Dr. Usha J

Abstract-Over the past few decades, the rapid expansion of the Internet in India has brought significant challenges in ensuring network security. Network security encompasses the strategies and policies implemented by users to protect and oversee the network infrastructure from unauthorized access. This concept is crucial for both private and public networks in India, safeguarding communications and transactions. In recent years, India’s networks have experienced substantial attacks from unauthorized entities. This paper examines the current network infrastructure and security policies in India, identifies the prevalent types of attacks, and proposes advanced technologies to enhance the robustness of India’s network security framework.

Exploring the Diagnostic Capabilities of Machine Learning in Glaucoma Detection
Authors:-Research Scholar Ramesh Chouhan, Assistant Professor Vikas Kalme

Abstract-This is a review of various image processing methods used in diagnosing glaucoma, an irreversible eye disorder of optic nerve results nerve cell damage. Glaucoma causes slow vision loss and is largely prevalent in rural and semi-urban populations, but people suffering from the disease can be found just about anywhere. The current method to diagnose retinal diseases mainly relies on the analysis of fundus images obtained from a retina through advanced image processing techniques. Image registration, fusion, segmentation, feature extraction, enhancement, morphological operations, medical image understanding are few of the standard methods used for detecting Glaucoma and different eye diseases along with GLCM based analysis and its pattern matching classification statistical techniques used. These methods play a critical role in increasing accurateness with early diagnosis and treatments results required for eye practices.

Smart Automation Systems for Home Appliances Using Arduino Techniques
Authors:-Mohin Dhiman

Abstract-In the order of the World massive quantities of power are inspired in residential buildings leading to a unenthusiastic impact on the surroundings. Also, the number of wireless connected strategy in use around the World is constantly and rapidly increasing, leading to potential health risks due to over exposer to electromagnetic emission. An opportunity appears to decrease the energy consumption in residential buildings by introducing smart home automation systems. Multiple such solutions are available in the market with most of them being wireless, so the challenge is to design such systems that would limit the quantity of newly generated electromagnetic radiation. For this we look at a number of wired, serial communication methods and we successfully test such a method using a simple protocol to switch over data between an Arduino microcontroller board and a Visual C#.Net app running on a Windows computer. We aspire to show that if desired, smart home automation systems can still be built using simple viable alternatives to wireless communication.

Tokenization Strategy Implementation with PCI Compliance for Digital Payment in the Banking
Authors:-Praveen Tripathi

Abstract-The banking sector is under increasing pressure to ensure secure and seamless digital payment processes. Tokenization, a method of securing sensitive payment data, has emerged as an effective strategy for mitigating security risks and ensuring compliance with Payment Card Industry Data Security Standards (PCI DSS). This paper explores the implementation of tokenization strategies within the banking sector, emphasizing its role in achieving PCI compliance. Through case studies, statistics, and the presentation of real-world examples, the paper highlights both the challenges and benefits of adopting tokenization strategies.

Tokenization Strategy Implementation with PCI Compliance for Digital Payment in the Banking
Authors:-Praveen Tripathi

Abstract-The banking sector is under increasing pressure to ensure secure and seamless digital payment processes. Tokenization, a method of securing sensitive payment data, has emerged as an effective strategy for mitigating security risks and ensuring compliance with Payment Card Industry Data Security Standards (PCI DSS). This paper explores the implementation of tokenization strategies within the banking sector, emphasizing its role in achieving PCI compliance. Through case studies, statistics, and the presentation of real-world examples, the paper highlights both the challenges and benefits of adopting tokenization strategies.

DOI: 10.61137/ijsret.vol.10.issue5.235

Review on Enhancement of Power System Demand Side Management and Forecasting of Grid Performance Using Machine Learning Approach
Authors:-Deepkant Ujjaini, Assistant Professor Raghunandan Singh Baghel

Abstract-Renewable energies are being introduced in countries around the world to move away from the environmental impacts from fossil fuels. In the residential sector, smart buildings that utilize smart appliances, integrate information and communication technology and utilize a renewable energy source for in-house power generation are becoming popular. Accordingly, there is a need to understand what factors influence the accuracy of managing such smart buildings. Thus, this study reviews the application of machine learning prediction algorithms in Home Energy Management Systems. Various aspects are covered, such as load forecasting, household consumption prediction, rooftop solar energy generation, and price prediction. Also, a proposed Home Energy Management System framework is included based on the most accurate machine learning prediction algorithms of previous studies. This review supports research into the selection of an appropriate model for predicting energy consumption of smart buildings.

Review on PV-Wind-Battery-Based Grid-Connected Bidirectional DC-DC Coupled Multi- Distribution Transformer
Authors:-Ravi Kumar Malviya, Assistant Professor Raghunandan Singh Baghel

Abstract-The objective of this synopsis is to provide a control scheme of a power flow management of a grid connected hybrid PV-wind-battery. The hybrid PV wind-battery system is connected to a multi-input transformer coupled bidirectional dc-dc converter and using a fuzzy controller. The power from the PV along with battery charging/discharging is controlled by a bidirectional buck-boost converter. The power from wind is controlled by a transformer coupled boost half-bridge converter. A single-phase full bridge bidirectional converter is used for feeding ac loads and interaction with grid. The proposed converter design has lessened number of power transformation stages with less segmentally, and diminished misfortunes contrasted with existing grid connected hybrid frameworks. In this proposed work analyzing the multi response of a grid connected hybrid PV-wind-battery in different cases. In the proposed system has two renewable power sources, load, grid and battery.

Review on Damped-Sogi Based Control Algorithm for Solar PV Power Generating System
Authors:-Vijay Jhaniya, Assistant Professor Raghunandan Singh Baghel

Abstract-This Review deals with two stage solar PV power generating system with improved power quality in three-phase distribution system. This system not only feeds the power to the grid but it also provides the load compensation, power factor correction and harmonics elimination. For this, a double stage system is used where first stage is a DC-DC boost converter, which performs the MPPT (Maximum Power Point Tracking). For extracting maximum power from the PV string, an incremental conductance based MPPT algorithm is used. Moreover, in second stage a voltage source converter (VSC) is utilized. For control of VSC, a damped-SOGI (Second Order Generalized Integrator) algorithm is proposed. By using damped-SOGI based control algorithm, fundamental active and reactive power components of load currents are extracted for estimating the reference grid currents. After comparing these reference grid currents with sensed grid currents, these produce the switching pulses for the grid tied VSC. A prototype of the proposed system is developed in the laboratory. Test results are shown to validate the design and control algorithm under steady state and dynamic conditions at linear and nonlinear loads.

Intelligent ERP System: A Survey an Intelligent and modern approach to ERP Software
Authors:-Piyush Khandelia

Abstract-today’s business need is more complicated than before. That is why the existing ERP needs to be updated and need to be empowered by Artificial Intelligence techniques. In this regard, this manuscript has provided an overview of the Intelligent ERP System.

DOI: 10.61137/ijsret.vol.10.issue5.236

Human Intelligence in the Age of AI: Why Machines Won’t Take Over Jobs
Authors:-Dr. V. K. Singh

Abstract-Artificial Intelligence (AI) is rapidly advancing, transforming industries and reshaping the global job market. While there are concerns that AI will replace human workers, this paper argues that AI will complement rather than substitute the human workforce. The paper explores the irreplaceable human qualities such as emotional intelligence, creativity, and ethical decision-making, and emphasizes the importance of AI-human collaboration. The research draws on a wide range of literature and studies to analyze how AI is enhancing, not replacing, job roles, and contributing to the creation of new job opportunities. The conclusion emphasizes that AI and humans will co-evolve, leading to a more dynamic, adaptive, and skilled workforce in the future.

DOI: 10.61137/ijsret.vol.10.issue5.237

Fostering Inclusive Ecologies of Knowledge: A Pathway to Equitable and Sustainable Futures in Education
Authors:-Clement Yeboah, Andrews Acquah

Abstract-This meta-analysis investigates the impact of inclusive ecologies of knowledge on promoting equitable and sustainable futures in education, synthesizing findings from peer-reviewed journal articles published between 2010 and 2024. The primary objective was to evaluate the effectiveness of inclusive educational practices in fostering equity and sustainability. Studies were selected based on explicit inclusion criteria, focusing on empirical research that addressed inclusivity and sustainability within educational contexts. A comprehensive search of databases including PubMed, ERIC, Web of Science, and Scopus was conducted, and the risk of bias in the included studies was assessed using the Cochrane Collaboration’s tool. The synthesis of results, encompassing 35 studies with a total of 4,500 participants, revealed a moderate positive effect of inclusive practices on educational outcomes (Cohen’s d = 0.45, 95% CI: 0.30–0.60). Limitations include variability in study designs and potential bias in some studies. The findings underscore the importance of integrating diverse knowledge systems into education to achieve equitable and sustainable futures. The review was neither registered nor funded.

Review of Optimization Algorithms
Authors:-Er. Vivek Sya, Assistant Professor Er.Raman kumar sofat

Abstract-Over the years, several optimization techniques has been developed for the real life applications. The traditional methods do not solve the nonlinear objectives. This paper presents the review of four popular optimization techniques: genetic algorithm (GA), differential evolution (DE. They can be applied to the linear, non-linear, differential and non-differential problems. The related description for each procedure of optimization is presented.

Active and Reactive Power Dispatch using Differential Evolution
Authors:-Er. Vivek Sya, Assistant Professor Er.Raman kumar sofat

Abstract-The paper presents an approach for the optimal dispatch of active and reactive power with an aim to generate the optimal generation schedule satisfying the equality and inequality constraints and minimizing the cost of operation of generating units by using Genetic Algorithm and Differential Evolution. The approaches have been applied to IEEE 30 Bus system and the obtained results are compared.

Understanding and Mitigating Ransomware Threats: A Comprehensive Analysis
Authors:-Rohit Yadav, Vinit Warang, Dr. Jasbir Kaur, Assistant Professor Ms. Sandhya Thakker

Abstract-Ransomware has emerged as one of the most significant and widespread cyber threats in recent years. This form of malicious software locks or encrypts victims’ data, demanding a ransom in exchange for restoring access. The growing sophistication of ransomware attacks has made them increasingly difficult to detect and mitigate, causing severe economic and operational damage across industries. This paper presents a comprehensive analysis of ransomware, its evolution, types, attack mechanisms, and the defensive measures necessary to combat its spread. We also explore the economic implications of ransomware and present future trends in the fight against these cyberattacks. Finally, we propose best practices for organizations to reduce their vulnerability to ransomware attacks and present case studies on successful and failed mitigations.

DOI: 10.61137/ijsret.vol.10.issue5.238

Understanding and Mitigating Ransomware Threats: A Comprehensive Analysis
Authors:-Rohit Yadav, Vinit Warang, Dr. Jasbir Kaur, Assistant Professor Ms. Sandhya Thakker

Abstract-Ransomware has emerged as one of the most significant and widespread cyber threats in recent years. This form of malicious software locks or encrypts victims’ data, demanding a ransom in exchange for restoring access. The growing sophistication of ransomware attacks has made them increasingly difficult to detect and mitigate, causing severe economic and operational damage across industries. This paper presents a comprehensive analysis of ransomware, its evolution, types, attack mechanisms, and the defensive measures necessary to combat its spread. We also explore the economic implications of ransomware and present future trends in the fight against these cyberattacks. Finally, we propose best practices for organizations to reduce their vulnerability to ransomware attacks and present case studies on successful and failed mitigations.

DOI: 10.61137/ijsret.vol.10.issue5.238

Football Game Analysis and Tracking Position
Authors:-Assistant Professor Dr. Divya T.L, Tenzin Yignyen

Abstract-Tracking players and the ball in football games is crucial for accurately evaluating team strategies and individual performance. To derive meaningful metrics such as players’ positions, ball possession, and tactical movements throughout a match, continuous tracking of both players and the ball is required. Traditionally, these analyses are conducted manually by professional analysts. However, automated systems using advanced image processing and machine learning techniques have begun to enhance the efficiency and accuracy of such analyses. In this paper, we explore a method utilizing YOLOv8 for object detection and tracking, combined with K-means clustering and homography-based transformations, to provide a comprehensive real-time analysis of football games. We discuss the integration of these technologies into a user-friendly application for coaches and analysts to enhance tactical planning and performance evaluation in sports.

Tuberculosis Detection: A Deep Learning Approach
Authors:-Krishna Pratap Singh R, Dr. Gowthami

Abstract-A serious and pervasive lung disease with a poor diagnosis rate is tuberculosis. Following the vacuity of high-resolution coffin x-rays, deep literacy can now yield results for the successful discovery of this unpleasant complaint and other possible operations in the health sector. This study presents a new deep learning algorithm for tuberculosis identification using a coffin x-ray image bracket to acquire geographical data. It combines the ImageNet dataset with two popular, trained vgg16 and vgg19 models. The system that is being described is validated through trials using the chest x-ray dataset. After assessing the model on the test set, we receive a score of 0.9992 for each of the criteria (delicacy, perfection, recall, and f1-score).

DOI: 10.61137/ijsret.vol.10.issue5.239

Fraud Detection in Financial Transactions Using Machine Learning
Authors:-Professor Syeeda, Abhisek Mohanty

Abstract-Banking system vulnerabilities have made us vulnerable to fraudulent activities that seriously harm the bank’s reputation and financial standing in addition to harming clients. An estimated large sum of money is lost financially each year as a result of financial fraud in banks. Early discovery aids in the mitigation of the fraud by allowing for the development of a countermeasure and the recovery of such losses. This research proposes a machine learning-based method to effectively aid in fraud detection. In order to combat counterfeits and minimise damage, the artificial intelligence (AI) based model will expedite the check verification process. In order to determine the association between specific parameters and fraudulence, we examined a number of clever algorithms that were trained on a public dataset in this article.

DOI: 10.61137/ijsret.vol.10.issue5.240

Advancing Sustainability and Performance: A Review on Recycled Aggregates and Portland Slag Cement in Construction
Authors:-Lamiaa Ismail, M. Abdelrazik, Assistant Professor El Sayed Ateya, Assistant Professor Ahmed Said

Abstract-The construction industry faces increasing pressure to adopt sustainable practices due to resource depletion and waste management challenges. This review critically examines the use of Portland Slag Cement (PSC) in combination with Recycled Aggregate Concrete (RAC) to enhance sustainability and performance in construction. The analysis consolidates research on the mechanical properties, durability, and environmental impact of PSC-RAC composites. Findings show that PSC enhances compressive strength, tensile strength, and long-term durability while reducing the carbon footprint of concrete production. The review highlights the superior performance of PSC in comparison to traditional cementitious materials, particularly in harsh environments. However, challenges remain regarding the variability in the quality of recycled aggregates, workability issues, and economic feasibility. This review emphasizes the need for standardized quality controls for recycled materials and advocates for further research into long-term performance and the integration of PSC with advanced materials such as Nano-Silica. Comprehensive studies and cost-benefit analyses are recommended to fully explore the feasibility of PSC-RAC in both structural and non-structural applications.

DOI: 10.61137/ijsret.vol.10.issue5.241

Modified Dadda Multipliers and Compressors Designed Using Approximate Multiplier Algorithm
Authors:-Mtech Scholar Sidhharth Yadav, HOD & Professor Dr Bharti Chourasia

Abstract-The multiplier is a crucial component in digital signal processing. Many scientists have attempted—and continue to attempt—to construct multipliers that satisfy the two flowing pan criteria of fast speed, low power consumption, consistent design, and fewer zones. This is made possible by technological advancements. They are appropriate for a range of applications needing high speed, low power, and less VSI consumption because they can even combine these two objectives into a single multiplier. In This paper present modified dadda multipliers using approximate multiplier with high speed and energy economy is discussed. This way, speed and energy efficiency are increased at the cost of a slight inaccuracy, as the computationally intensive part of the multiplication is bypassed. Whereas Isim Simulator is used for simulation, Xilinx 14.7 is used for implementation. Data from test bench validation indicates that it provides a higher accuracy than the others. Based on the simulation results, the suggested multiplier design outperforms earlier designs in terms of space, latency, speed, and power. Unlike prior proposals which could only construct 16 or 32 bit multipliers, the proposed multipliers can be constructed with 64 bits.

Recoil Logger: A Logging Utility for Monitoring Recoil State Changes in React Applications
Authors:-Sait Yalcin

Abstract-This paper introduces the RecoilLogger component, a lightweight utility designed to track and log state changes within Recoil-based React applications. The component provides developers with the ability to monitor both current and previous state values, aiding in debugging and state management performance analysis. The paper outlines the implementation, use cases, and potential applications of the RecoilLogger, discussing its methodology in comparison to existing logging utilities in React. Results demonstrate its effectiveness in state tracking without causing performance overhead or altering the UI.

DOI: 10.61137/ijsret.vol.10.issue5.242

Vertical Farming: An Agricultural Revolution
Authors:-Arjit Vashishta, Assistant Professor Dr Gurshaminder Singh

Abstract-Vertical farming is becoming a valuable complement to traditional agriculture, enhancing sustainable food production as climate pressures increase. Initially, vertical farming focused on technological advancements like design innovation, automated hydroponic systems, and advanced LED lighting. However, recent studies emphasize improving resilience and sustainability, particularly through water quality and microbial life in hydroponic environments. Plant growth-promoting rhizobacteria (PGPR) have proven effective in boosting plant growth and resilience to both biotic and abiotic stress. Using PGPR in plant-growing media enhances microbial diversity, helping reduce reliance on chemical fertilizers and pesticides. This overview explores the history of vertical farming, its economic, environmental, social, and political opportunities and challenges, and the role of the rhizosphere microbiome in advancing hydroponic systems.

DOI: 10.61137/ijsret.vol.10.issue5.243

Design of Cross Level Automatic Railway Gate Control System Using Arduino UNO 328
Authors:-Ayodele J, Barakur C.A, Joel O.O

Abstract-This paper presents the design and construction of an obstacle detection system for railway level crossings. The focus of this research is on reducing accident rates attributed to obstructions between the gates of the level crossing. Research indicates that approximately 30% of railway accidents at level crossings are resulting from obstacles blocking the tracks. To address this issue, we developed a system utilizing an Arduino Uno microcontroller, along with ultrasonic and reed switch sensors, and a GSM module for real-time alerts. While the ultrasonic sensors are deployed to monitor the gate crossing arena, the reed switches are positioned 3km away from each gate to detect the arrival/departure of the train. Such that when there is any obstacle detected the GSM triggers sms alert to the train operators for a possible halt to create room for evacuation of the obstacle. By facilitating timely responses, this system aims to decrease the likelihood of accidents, thereby enhancing safety for both rail and road users. This innovative solution highlights the potential for improved safety measures within railway infrastructure.

DOI: 10.61137/ijsret.vol.10.issue5.254

Kidney Stone Detection Using Machine Learning With CT_Images
Authors:-Ms.Priya Bhagat, Mr.Taabish Shaikh, Dr. Jasbir Kaur, Assistant Professor Ms.Ifrah Kampoo, Assistant Professor Mr.Suraj Kanal

Abstract-Effective management and treatment of these stones depend on early and precise detection. Ultrasound and X-ray are two conventional methods for kidney stone detection, but their resolution and accuracy are limited. Because of its increased resolution and capacity to produce precise anatomical information, computed tomography (CT) imaging has grown in reliability. However, it takes a lot of experience and time to interpret CT scans for kidney stone detection. Recent developments in Convolutional Neural Networks (CNNs) provide a promising solution to these problems. CNNs, a class of deep learning algorithms, have demonstrated remarkable performance in image analysis tasks by automatically learning hierarchical features from large datasets.

DOI: 10.61137/ijsret.vol.10.issue5.244

Value Chain of the Water Sector in India
Authors:-Balaji A

Abstract-India’s water sector is crucial for economic growth, public health, and environmental sustainability. With a population exceeding 1.4 billion, the water demand has risen sharply due to urbanisation, agriculture, and industrialization. However, the sector faces significant challenges, including water scarcity, pollution, and inadequate infrastructure. With 18% of the world’s population but only 4% of the world’s water sources, India grapples with water scarcity in many regions. India is the world’s largest user of groundwater that extracts more than any other country in the world and accounts for nearly 25 percent of the world’s extracted groundwater. With an estimated $250 billion investment requirement over the next 20 years, the Indian water sector offers immense opportunities for both domestic and international investors. This report highlights the structure of the water value chain in India, identifies investment opportunities, and names the key players and beneficiaries in the ecosystem.

DOI: 10.61137/ijsret.vol.10.issue5.245

Bioethanol Production from Potato Peel Waste
Authors:-Renuka Yadav, Shubham Shubhashish, Dr. Gurshaminder Singh

Abstract-Bioethanol is generated by fermenting sugars obtained from biomass such as crops, agricultural waste, and organic refuse, and is a sustainable and eco-friendly energy option. It provides a long-term solution to fossil fuels, which has the capacity to decrease greenhouse gas emissions and combat climate change. Potato peel waste (PPW) is one of the many feedstocks that shows potential for bioethanol production because of its high starch content. PPW is a waste product from the potato processing sector, commonly thrown away or utilized for less valuable purposes. This study investigates the possibility of using PPW as a productive raw material for bioethanol manufacturing, specifically examining its preparation, breakdown, conversion, and purification stages. Even though bioethanol from PPW shows potential, economic and technical limitations arise due to high moisture levels, composition variability, and the requirement for substantial pre-treatment processes. However, the use of PPW for bioethanol production is in line with worldwide initiatives for sustainable energy, waste reduction, and the circular economy.

DOI: 10.61137/ijsret.vol.10.issue5.246

Sustainable Potato Production through MAS and Late Blight Resistance
Authors:-Kartikay Sharma, Sahil Kumar, Dr. Gurshaminder Singh

Abstract-Late blight, caused by Phytophthora infestans, continues to pose a significant threat to potato production globally. While traditional breeding methods have been used to create resistant cultivars, these methods can be slow and often face limitations due to the availability of genetic resources. Marker-assisted selection (MAS) provides a more efficient and accurate approach by using molecular markers to identify plants that possess resistance genes. This review offers a thorough overview of MAS for late blight resistance in potatoes, discussing its historical development, genetic foundations, molecular markers, and the steps involved in its application. Key topics include the identification of resistance genes and their corresponding markers, the establishment of PCR conditions for marker amplification, and the combination of MAS with traditional breeding techniques. The review also addresses the challenges and future directions of MAS, emphasizing the importance of ongoing marker development, maintaining genetic diversity, and adapting to changing pathogens. In summary, MAS is a valuable tool for improving late blight resistance in potatoes. By integrating MAS with traditional breeding methods and tackling its challenges, breeders can create cultivars that are more resilient to this destructive disease, thereby supporting sustainable potato production.

DOI: 10.61137/ijsret.vol.10.issue5.247

Detection and Classification of Cotton Plant Disease Using Deep Learning Network
Authors:-Associate Professor G.Vasanthi, Professor Dr.S.Artheeswari, Assistant Professor M.Nithya

Abstract-This research aims to address critical challenges in agricultural sustainability by proposing a multifaceted approach to the detection and prediction of diseases affecting cotton plants. The objectives of this study are threefold. Firstly, the research focuses on the classification of cotton plant leaves, essential for accurate disease diagnosis. Through dataset analysis, normalization techniques, and feature extraction using Local Binary Patterns (LBP), cotton plant leaves are effectively differentiated from other foliage. Classification is accomplished utilizing Lightweight Convolutional Neural Networks (CNN), with performance parameters rigorously evaluated to ensure efficacy. Secondly, the study extends its scope to the classification of diseases affecting tomato plant leaves, offering insights into disease identification methodologies applicable to cotton plants. Leveraging the Coral Reef Optimization approach for feature extraction and a hybrid classifier comprising ResNet50 and VGG16 architectures, the system achieves precise disease classification. Lastly, the research addresses the critical need for predictive analytics in disease management by forecasting the occurrence of diseases in cotton plants. Utilizing historical time series weather data, machine learning and deep learning models, specifically Quantile Regression Forests coupled with Long Short-Term Memory (LSTM) algorithms, predict temperature and relative humidity parameters crucial for disease occurrence. By integrating these objectives, this study endeavors to provide a comprehensive framework for proactive disease management in cotton cultivation, thereby contributing to sustainable agricultural practices and food security.

DOI: 10.61137/ijsret.vol.10.issue5.248

CRISPR-Cas Technologies for Nutrition Enhancement: Current Progress and Future Directions
Authors:- Abhishek

Abstract-CRISPR-Cas technology has revolutionized the field of crop biotechnology, offering precise and efficient tools for enhancing the nutritional value of plants. This review highlights the current applications of CRISPR-Cas in biofortifying staple crops to combat global malnutrition. By editing specific genes, researchers have been able to increase essential nutrients such as vitamins, minerals, and proteins. However, challenges remain, including off-target effects, regulatory and biosafety concerns, and ethical considerations. Future directions point toward innovations in precision editing, multiplex gene editing for complex traits, and integration with synthetic biology and traditional breeding. Additionally, harmonizing global regulatory frameworks and ensuring equitable access to CRISPR technologies will be essential for realizing its potential to improve food security. This review underscores the transformative potential of CRISPR-Cas to address global nutritional deficiencies and enhance crop resilience in the face of climate change, ultimately contributing to a sustainable and food-secure future.

DOI: 10.61137/ijsret.vol.10.issue5.249

Sentiment Analysis of Customer Reviews Using Natural Language Processing
Authors:-Ms. Jyoshna Butty, Ms. Ankita Gupta, Dr. Jasbir Kaur, Assistant Professor Ms. Ifrah Kampoo, Assistant Professor Mr.Suraj Kanal

Abstract-The purpose of this research is to use Natural Language Processing (NLP) to categorize customer reviews into three groups: favorable, negative, and neutral. We employ machine learning models to categorize sentiment by preprocessing textual data. Matplotlib is then used to illustrate the results using area plots, pie charts, and keyword-based analysis. Our investigation shows how sentiment analysis, which provides actionable insights generated from consumer feedback, can advise firms on how to improve customer satisfaction and experience.

DOI: 10.61137/ijsret.vol.10.issue5.250

Comparative Assessment of Phytochemical Contents of Diet Combinations Made From Lima Beans and Cowpea
Authors:-Olife, Ifeyinwa Chidiogo, Ayatse, James O.I, Ega, RAI, Anajekwu, Benedette Azuka

Abstract-Legumes are important sources of nutrients and phytochemicals. Phytochemicals are plant derived chemicals known to possess many properties, including anti-oxidant, anti-microbial and physiological activities. Though phytochemicals are vital to both plants and animals, they are not established as essential nutrients and they can also have adverse effects by functioning as anti-nutrients. Processing affects the nutritional values of plant-based food and such food products may lose part of their functionality as these chemicals are sensitive to the impact of processing methods. Therefore, the objective of this study was to evaluate the phytochemical contents of legume-based lima beans/cowpea diet combinations so as to recommend the best combination to maximize their pharmacological potentials and reduce the anti-nutritional effects. Quantitative analysis of phytochemical constituents of the formulated diet combinations were carried out using standard procedures for oxalate, alkaloids, flavonoids, saponin, cardiac glycosides, tannin, phytate, cyanogenic glycoside while spectrophotometer method was used for the determination of steroids and phenols. Among whole legume-based diet combinations, 75:25 ratio lima beans/cowpea diet recorded the lowest alkaloid, flavonoid, cyanogenic glycosides and saponin levels of 5.20 %, 4.0 %, 4.8 % and 3.0 %, respectively. However, among the dehulled legume-based diet, the 50:50 ratio lima beans/cowpea combination had the lowest saponin, steroid, alkaloid, cyanogenic glycoside and flavonoid levels of 1.90 %, 5.38 mg/g, 3.0 %, 5.55 % and 4 %, respectively. Over all, the 50:50 ratio dehulled lima beans/cowpea diet combination, compared to other diet combinations, had the lowest contents of saponin, steroid, alkaloid and flavonoid out of the nine phytochemicals quantified. Pharmacological properties of phytochemicals are beneficial to human health. However, these phytochemicals could also be detrimental to human health when consumed in excess. Therefore, legume-based lima beans/cowpea diet combination ratios should be done with respect to the pharmacological properties of interest.

DOI: 10.61137/ijsret.vol.10.issue5.251

Designing of Nozzle for Unmanned Water Powered Aerial Vehicle
Authors:-Raj Sharma

Abstract-This project is used to develop a conceptual design for an UNMANNED WATER POWERED AERIAL VEHICLE (UWAV) that utilizes a waterjet propulsion system instead of traditional propulsion methods such as propellers or jet engines. The project idea is based on the flyboard system where the drone flies with the force generated by water jet from the nozzles and directing the force in required directions. The purpose of the project is to optimize the efficiency of the waterjet propulsion system to achieve maximum thrust while minimizing energy consumption by improving the design of nozzle. This propulsion systems reduces noise generated in conventional UAV’s. These types of drones are used for Aquatic ecosystem surveillance, agriculture, cleaning of building without human interface.

DOI: 10.61137/ijsret.vol.10.issue5.252

Innovative Antenna Coupling Approaches for Low SAR in Smartphone Communication Modes/strong>
Authors:-Associate Professor Dr TVS Divakar, Vambaravelli Mohini, Rupanagudi Siva Reddy

Abstract-This paper provides a thorough investigation of coupling adjustment using two antennas in the speak position for voice conversations on recent smart phones. Using the optimal relative phase between components helps minimize SAR while maintaining efficiency through power splitting and appropriate interelement coupling. When not in talk position, antenna elements can remain used for MIMO without considerably lowering their fundamental limit of capacity, although this is of secondary significance. This approach is applicable to mobile communications frequencies ranging from 1.8 – 10. 8 GHz, given that the ground plane possesses the suitable form factor. This study shows that optimizing two PIFAs at 10.1 GHz may Reduce SAR by more than 50% over one element. SAR reduction remains consistent irrespective of the user’s head structure or manipulation of the device while speaking.

Risk Management Using VaR, CVaR and Baye’s Model/strong>
Authors:-Arshad Ahmad Khan, Kiran Kumari

Abstract-Managing risks effectively is essential in the world of trading and investing to reduce the chance of losing money and improve the quality of decisions. This document delves into how Value at Risk (VaR), Conditional Value at Risk (CVaR), and Bayes’ Theorem are used to evaluate and handle financial risks. VaR offers a numerical estimate of the possible decrease in the value of a portfolio over a certain period, providing a glimpse into the most severe outcome under typical market conditions. CVaR builds on this by looking at the expected loss when the VaR threshold is surpassed, tackling the rare but significant risks that VaR might miss. Bayes’ Theorem is used to refine risk evaluations with fresh data, boosting the reliability of risk prediction models. By examining these techniques and how they can be combined, the document seeks to introduce a detailed strategy for risk management, showing how the use of these methods can result in more thorough risk evaluations and better strategic choices in trading and investing. The research also points out real- world uses and its constraints, providing a guide for refining risk management strategies in ever-changing financial landscapes.

Problem in Reviewing Software Testing in the Current Decade/strong>
Authors:-Professor Dharmaraj S Kumbar

Abstract-Software testing is an inalienable part of the software development life cycle, which directly influences product quality, stability, and, finally, user satisfaction. While the complexity of software systems is growing, testing methodologies face growing challenges related to a lack of coverage, high costs, or time-to-market. In this respect, 56% of organizations currently report that one of the biggest pains is certainly a lack of test coverage, while 40% report high operational costs as a significant barrier to effective testing. This paper looks at these key challenges and some of the emerging trends—impelling AI-driven testing, integration with DevOps, automation, and low-code/no-code platforms—that are rewriting this landscape. With such modern solutions to solving difficulties, organizations will be able to optimize the testing processes, enhance productivity, and deliver quality software that aligns with customer expectations and market demand.

Semigroups in Automata Theory and Formal Languages/strong>
Authors:-Nikuanj Kumar, Dr. Bijendra Kumar

Abstract-Semigroups are essential to many areas of theoretical computer science, including formal languages and automata theory. A thorough mathematical investigation of semigroups and their use in computer models is presented in this study. We first give a thorough explanation of semigroups, covering their algebraic structure, attributes, and classifications. We then discuss their importance in automata theory, with particular attention to how finite automata are represented as semigroups and how this helps with language recognition. Key ideas like syntactic semigroups are emphasised as well as the relationship between semigroups and regular languages. The paper also covers real-world computational applications, such as algorithmic models for machine learning and language processing. through the integration of practical computer applications with rigorous mathematical content. The versatility of semigroups in the nexus of computer science and mathematics is illustrated by this work.

Malaysian Noodle Images Classification System Using CNN and Transfer Learning/strong>
Authors:-Ibrahim Abba, Ubaid Mohammed Dahir, Mohammed Shettima

Abstract-Image Recognition is a term used to describe a set of algorithms and technologies that attempt to analyze images and understand the hidden representations of features behind them and apply these learned representations for different tasks like classifying images into distinct categories automatically, understanding which objects are present and where in an image, etc. These technologies leverage various traditional computer vision methods as well as machine learning and deep learning algorithms to achieve the required results for solving such problems. This paper shows a recognition model for classifying Malaysian Noodle images. Convolutional Neural Network (CNN) algorithms, a deep learning technique extensively applied to image recognition were used for this task. The model uses a deep learning process that was trained on natural images (AlexNet and SqueezeNet dataset) and was fine-tuned to generate the predictive Noodle model, which comprised approximately 4308 images. The dataset was divided into ten groups/categories of Noodles images which include the following: Mee Bee Hoon Goreng, Mee Bee Hoon Sup, Mee Goreng, Mee Koay Teow Goreng, Mee Koay Teow Sup, Mee Laksa Goreng, Mee Laksa Sup, Mee Maggi Goreng, Mee Maggi Sup, Mee Sup. The trained model achieved high accuracy on the test set, demonstrating the feasibility of this approach.

DOI: 10.61137/ijsret.vol.10.issue5.253

Review on: Methodology of Nanoemulsion Formulation/strong>
Authors:-Zadmuttha Bhavana P., Tandale Prashant S., Garje S.Y., Sayyed G. A.

Abstract-Nanoemulsions are thermodynamically stable systems consisting of two immiscible liquids combined with emulsifying agents, such as co- surfactants and surfactants, to create a single phase. Nanoemulsion represents an innovative drug delivery system that facilitates controlled or sustained release of medications. It is characterized as a dispersion comprising a surfactant, oil, and a clear aqueous phase, exhibiting kinetic or thermodynamic stability with droplet sizes ranging from 10 to 100 nanometers. The application of nanoemulsions enhances the solubility and bioavailability of lipophilic drugs, offering numerous advantages for drug delivery. Various methods exist for the preparation of nanoemulsions, including high-energy emulsification, spontaneous nanoemulsion formation, and phase inversion temperature (PIT) techniques. This system is applicable across multiple delivery routes, thereby demonstrating significant potential in diverse fields such as cosmetics, therapeutics, and biotechnology.

A Review on Machine Learning Assisted Handover Mechanisms for Future Generation Wireless Networks/strong>
Authors:-Priyanka Vishwakarma, Dr. Kamlesh Ahuja

Abstract-Machine Learning and Deep Learning Algorithms have been explored widely to identifyy potential avenues to optimize wireless networks. One such area happens to be a data driven model for initiating handover among multiple access techniques such as OFDM and NOMA. With increasing number of users and multimedia applications, bandwidth efficiency in cellular networks has become a critical aspect for system design. Bandwidth is a vital resource shared by wireless networks. Hence its in critical to enhance bandwidth efficiency. Orthogonal Frequency Division Multiplexing (OFDM) and Non-Orthogonal Multiple access (NOMA) have been the leading contenders for modern wireless networks. NOMA is a technique in which multiple users data is separated in the power domain. A typical wireless system generally has the capability of automatic fall back or handover. In such cases, there can be a switching from one of the technologies to another parallel or co-existing technology in case of changes in system parameters such as Bit Error Rate (BER) etc. This paper presents a review on existing machine learning based approaches for handover prediction in future generation wireless networks. The salient features of each of the approaches has been highlighted along with identifying potential research gaps.

DOI: 10.61137/ijsret.vol.10.issue5.255

Social Media Analysis in Criminal Investigation/strong>
Authors:-Anish Chauhan, Aman Kumar, Anushka Thakur, Assistant Professor Manish Goyal,

Abstract-Social media platforms have become an integral part of modern society, offering a wealth of data that can be instrumental in criminal investigations. This research paper examines the evolving role of social media analysis in the realm of criminal investigation. Focused on understanding the impact, challenges, and ethical considerations, this study delves into the multifaceted ways law enforcement agencies leverage social media data to solve crimes. The paper begins by exploring the transformative effect of social media on the investigative landscape, highlighting its potential as both a valuable tool and a source of complexity. It investigates the ethical and legal dimensions surrounding the use of social media data as evidence in criminal cases, addressing concerns of privacy, authenticity, and admissibility. Furthermore, this research sheds light on how social media platforms are utilized for crime detection, prevention, and profiling. It scrutinizes the methodologies, tools, and techniques employed in social media analysis to extract actionable intelligence for law enforcement purposes. Amidst the benefits, the paper examines the challenges and limitations inherent in social media analysis for criminal investigations, encompassing issues related to data validity, biases, and the rapid evolution of online platforms. Ultimately, this study aims to provide a comprehensive overview of the intersection between social media analysis and criminal investigations, presenting insights into its efficacy, limitations, and the evolving landscape of digital evidence in modern law enforcement. this abstract encapsulates the key areas of focus within the scope of social media analysis in criminal investigation, giving a glimpse of the research paper will explore.

DOI: 10.61137/ijsret.vol.10.issue5.256

Opex Home Solutions/strong>
Authors:-Yash Hulle, Abhishek Jadhav, Sangram Chougule, Sham Patil, Professor Girish Awadhwal

Abstract-The integration of modern technology into home design and architecture has transformed how homeowners and contractors engage with construction data and design options. This paper introduces Opex Home Solutions, a comprehensive platform that leverages artificial intelligence (AI) and machine learning (ML) to enhance the process of home design, selection, and customization. By utilizing a recommendation system and natural language processing (NLP)-driven search capabilities, the platform provides personalized home design suggestions based on user preferences and advanced query understanding. The system architecture is built on scalable.

DOI: 10.61137/ijsret.vol.10.issue5.257

Cybersecurity in Digital Therapeutics: Navigating the Risks Associated with Sensitive Health Data/strong>
Authors:-Sooraj Sudhakaran

Abstract-Imagine reaching for your smartphone to access a prescribed app that helps manage your chronic condition, only to wonder: “Is my personal health data truly safe?” As digital therapeutics revolutionize healthcare by bringing treatment directly to our fingertips, they also open new doors for potential security breaches. From busy doctors accessing patient records on tablets to individuals tracking their mental health through apps, the digital therapeutic revolution touches countless lives daily. But with this incredible progress comes a critical challenge: keeping sensitive health information secure in an increasingly connected world. Our paper delves into the real-world cyber threats that digital therapeutic platforms face, from data breaches that could expose personal health information to potential tampering with treatment protocols. We explore practical strategies for protecting sensitive health data and outline user-friendly approaches to enhance cybersecurity as these digital treatments evolve. By sharing actual cases and relatable scenarios, we highlight why it’s crucial to build security measures into these applications from the ground up, ensure they meet necessary regulations, and foster teamwork among everyone involved – from app developers to healthcare providers. Ultimately, our goal is to help create a digital therapeutic environment where patients can focus on their health journey without worrying about the safety of their personal information.

DOI: 10.61137/ijsret.vol.10.issue5.258

Application of Drone Technology in Evacuation Guidance and Emergency Support/strong>
Authors:-Madhav Venkatachalam

Abstract-Currently, drone technology is not widely applied in the emergency sector due to the high cost of implementation, and limited capabilities in terms of first response, where the drone is mainly used to collect data and provide a live feed. Drones are mostly seen as reconnaissance tools, unable to perform any vital “boots on the ground work”. However a possible scope for drones in certain evacuation and emergency situations exists, which is explored in this paper. To support and analyze the use of such drones, using a novel prototype drone, combining both a bluetooth module and flight controller in separate systems, was built and deployed for a relatively low cost to demonstrate the applications of the technology in real-world scenarios.

DOI: 10.61137/ijsret.vol.10.issue5.259

Self Balancing Robot with Autonomous Navigation and Obstacle Detection/strong>
Authors:- Professor Disha Nagpure, Bhakti.B.Bagal, Vaishnavi.B.Kute, Aakanksha.D.Pednekar, Akanksha.S.Shinde

Abstract-This paper details the design and implementation of a two-wheeled self-balancing robot capable of following a predefined path while detecting and avoiding obstacles. The robot utilizes an Infrared (IR) sensor array to track the path and an ultrasonic sensor to identify and measure the distance to obstacles in real-time. The self- balancing mechanism is achieved through a feedback control system that stabilizes the robot on its two wheels using a combination of gyroscopic and accelerometer data. A proportional-integral-derivative (PID) controller is employed to maintain stability and ensure smooth navigation along the path. The system’s effectiveness was evaluated through a series of experiments, demonstrating the robot’s ability to maintain stability, follow complex paths, and avoid collisions with obstacles.

DOI: 10.61137/ijsret.vol.10.issue5.261

Experimental Study on Effect of Heat Transfer Characteristics in a Corrugated Tube Pipe Having Different Pitch Length/strong>
Authors:-Assistant Professor Shailesh M Patel

Abstract-Heat transfer augmentation is a technique needed to increase the thermal performance of heat exchangers effecting energy, material & cost savings. This heat transfer augmentation technique lead to increase in heat transfer coefficient but at the cost of increase in pressure drop. So, analysis of heat transfer rate and pressure drop are the major parameter which are to be taken care of during design of heat exchanger using any of this techniques. One such technique is the use of corrugated tube instead of smooth tube. Corrugated tubes can enhance heat transfer coefficient on both the outer and inner heat transfer surface area without a significant increase in pressure drop. Experimental study is carried out on corrugated double pipe heat exchanger, in which comparison of heat transfer is carried out on smooth pipe and corrugated pipe having different pitch length. Pitch length of 0.045, 0.055 and 0.065 meter were taken and comparison of results were done with smooth pipe.

Design of 15th Order Length 32 Digital Differentiator Using Genetic Algorithm/strong>
Authors:-Anantnag V Kulkarni

Abstract-An essential tool for signal processing is the digital differentiator. It is used in a wide range of devices, including high frequency radars and low frequency biomedical equipment. Digital differentiators are an essential building piece of emerging areas like online signature verification and touch screen tablets. Although a variety of techniques have been established to build differentiators of all kinds, parameter optimization still has room for improvement. The challenge of designing differentiators is difficult. This work presents the design of a fifteenth order digital differentiator using the Genetic Algorithm, one of the optimization approaches.

A Review of Renewable Energy Based Distributed Generation in Electrical Power System/strong>
Authors:-Ravindra Sharma, Associate Professor Dr.Chandrakant Sharma

Abstract-It is possible to describe distributed generation as power generation by small scale generating units installed in distribution systems. There is a steady growth in the penetration of distributed generation (DG) units into electric distribution systems. DG allocation is the process of finding the optimal type, location and size of DG units. The allocation of DGs is a hot research field and poses a difficult problem in electrical power engineering. This paper discusses the recent research work on the issue of DG allocation from the point of view of their optimization algorithms, targets, and decision variables, type of DG, implemented limitations and type of modeling of uncertainty used. In this research an overview of DG types and various DG technologies are highlighted. Some DGs challenges ahead with current drive towards smart grid networks is also discussed. The research gaps are defined on the basis of their views on current research work and some helpful suggestions will be made for future research on DG allocation. The author strongly believes that this paper could be beneficial in the related field for researchers and engineers.

DOI: 10.61137/ijsret.vol.10.issue5.262

Credit Shield Solutions: Credit Card Fraud Detection System Using Machine Learning Approach/strong>
Authors:-Assistant Professor Mr. Rakesh Jaiswal, Aditya Krishna, Lucky Singh Rajput, Divyansh Rathore, Kishore Bole

Abstract-In recent times, the exponential growth in the usage of credit cards has increased fraudulent activities, which impacts financial institutions significantly. A large number of machine learning (ML) techniques are used to detect fraudulent transactions in order to thwart such threats. This paper represents a review of state-of-the-art ML algorithms used for credit card fraud detection and further analyzes their performance with regard to accuracy and privacy. Besides, a hybrid approach combining ANN with federated learning is proposed. This approach has the potential to not only increase the detection accuracy but also mitigate data privacy issues. The given model has had promising results for real-time application in credit card fraud detection while keeping users’ data private. Keywords— Artificial Neural Networks, Credit Card Fraud Detection, Federated Learning, Machine Learning, Privacy-Preserving, Blockchain. Credit card fraud has been an exploding problem with the large-scale growth of digital transactions, posing significant risk exposure to financial institutions. In this paper, we conducted a comprehensive review of various ML techniques applied to credit card fraud detection, touching on both aspects of accuracy and concerns over data privacy. We herein present a novel hybrid model based on the paradigm combination of ANN and FL for overcoming challenges arising from accuracy and privacy protection in detection. The advantages of the model are the usage of pattern recognition ability on ANN and its preservation of data privacy through decentralized learning. It has promising uses and outcomes since high detection accuracy and user privacy persistence were noted in achieving this characteristic. This makes this type of model suit fraud detection applications applied real-time. Keywords: Credit card fraud detection Machine learning Artificial neural networks Federated learning Privacy.

DOI: 10.61137/ijsret.vol.10.issue5.263

Exploring the Evolution, Impact and Growth of Investment and Trading Applications/strong>
Authors:-Shivang Gurjar, Umesh Bashyal, Khushi Vishwakarma, Priyanshi Shah, (Dr.) Monika Bhatnagar

Abstract-This paper explores the evolution, impact, and growth of investment and trading applications in the financial ecosystem, emphasizing how these platforms have revolutionized access to the market for retail and institutional investors alike. With the rise of fintech innovations, applications such as robo-advisors, micro-investing apps, and algorithmic trading platforms have democratized investing, lowering barriers to entry and automating portfolio management. These apps leverage advanced technologies like artificial intelligence (AI), machine learning (ML), and big data analytics to offer personalized investment strategies, real-time trading, and portfolio optimization. The paper examines the technological underpinnings of these applications, highlighting the role of AI and algorithmic systems in transforming traditional trading approaches. Case studies of platforms like Groww, Zerodha, and Upstox illustrates how investment apps have expanded market participation, particularly among younger, tech-savvy investors in India. However, the widespread adoption of these platforms has also raised concerns about overtrading, market manipulation, and speculative behaviour. Through a comprehensive review of the benefits, risks, and regulatory challenges, this research also addresses ethical concerns surrounding the gamification of trading and the protection of inexperienced investors. As investment apps continue to evolve, the paper explores future trends, including the integration of blockchain in decentralized finance (DeFi), increased regulatory scrutiny, and the growing focus on sustainability and environmental, social, and governance (ESG) investments. This study provides valuable insights into the ongoing transformation of the financial landscape through technology-driven investment solutions.

DOI: 10.61137/ijsret.vol.10.issue5.264

Review on Design of Bridge Structures/strong>
Authors:-Research Scholar Sombrat Arjariya, Assistant Professor Rahul Sharma

Abstract-This review synthesizes findings from a collection of papers investigating the design, analysis, and optimization of bridge structures. The reviewed studies cover a wide spectrum of topics, including T-beam and Box Girder designs, dynamic behavior under heavy loads, parametric studies for optimal design, and innovative optimization techniques. The papers collectively highlight the importance of accounting for factors such as material choices, loading conditions, and dynamic effects to achieve economically viable and structurally robust bridge designs. The insights gained from these studies contribute to the current knowledge base in bridge engineering and offer guidance for researchers, engineers, and practitioners seeking to enhance the efficiency and resilience of bridge structures.

A Review of Job Recommendation Systems Using Machine Learning/strong>
Authors:-M. Tech Scholer Reena Tiwari, Assistant Professor Mrs.Vaishali Upadhyay

Abstract-This research aims to assess recent literature on job recommender systems (JRS), placing particular emphasis on studies that consider temporal and reciprocal aspects in job recommendations. Unlike previous reviews, we highlight how incorporating these perspectives can improve model performance and lead to a more balanced distribution of applicants across similar jobs. Additionally, we examine the literature on algorithmic fairness, finding that it is rarely addressed, and when it is, authors often mistakenly assume that simply removing discriminatory features is sufficient. Many studies label their models as “hybrid” but fail to clarify what these methods entail, so we used existing recommender taxonomies to categorize these hybrids into more specific subclasses. We also found that data availability, particularly click data, significantly influences the choice of validation techniques. Finally, the research shows that generalizability across different datasets is rarely considered, though error scores can vary between datasets.

Autonomous Braking System for Automobile Powered by Artificial Intelligence and Reinforcement Learning/strong>
Authors:-Sukhwinder Sharma, P Hrithika kundar, Saksha K Bangera, Sandesh R Bhat, Shrinit R Poojary

Abstract-The rising number of accidents and injuries on the roads has created a pressing need for systems that can provide safety and protection to passengers while ensuring high performance in adverse conditions. Traditional braking systems may not always respond in time to prevent collisions, particularly in adverse conditions or emergencies. These systems rely on the driver to apply the brakes manually, which can result in delayed response times or even complete failure to apply the brakes in time. Additionally, these systems do not take into account factors such as road conditions, vehicle speed, and driver reaction time. To overcome these limitations and meet the needs, the Autonomous Braking System has been introduced in commercial vehicles, providing rapid brake response according to the driver’s need and safety. This system employs an intelligent control strategy that uses image processing technology based on object detection with the help of haarcascading object detection technique. Computer vision, a crucial component of this system, allows for the detection of path which is being followed by vehicle using Canny’s lane detection technique, obstacles and objects in the vehicle’s path. This information is then used to make decisions about when and how to apply the brakes, ensuring quick and safe stops. Reinforcement learning is also a key element of the system, allowing it to learn from its experiences and make better decisions over time. This involves providing feedback on the system’s performance and using it to adjust its behavior and improve its performance over a period of time. The haarcascading technique here recognizes captured objects as potential obstacles, feeding this information into the algorithm to take appropriate decisions. Overall, the Intelligent Braking System promises to significantly improve safety and performance in commercial vehicles.

DOI: 10.61137/ijsret.vol.10.issue5.266

Optimal Energy Management System Control of Permanent Magnet Direct Drive Linear Generator for Grid-Connected FC-Battery-Wave Energy Conversion/strong>
Authors:-Professor Adel Elgammal, Assistant Professor Curtis Boodoo

Abstract-The Wave Energy Conversion System (WECS) control strategy is presented in this study to make sure the system operates at its best under fluctuating wave resource situations. The suggested system consists of a MOPSO based MPC approach, a point absorber WEC oscillating in heave, back-to-back power converter for grid connections, and a linear permanent magnet generator. Despite the benefits of model predictive control, problems including switching frequency variations, steady-state errors, high processing costs, and constrained prediction horizons continue to exist. The article presents a method that incorporates the switching control action into the cost function while maintaining the finite nature of a model predictive control to handle the switching frequency issue. In order to minimise switching frequency variations while also addressing other control goals, such as regulating the direct current linked voltage and controlling the flow of active and reactive power, the switching control weight factors are optimised. In order to increase power quality, a fuel.

DOI: 10.61137/ijsret.vol.10.issue5.267

Use of Aeroponics Technique for Potato (Solanum Tuberosum) Mini Tubers Production in India: A Review/strong>
Authors:-Tamanna Sharma, Dr.Shilpa Kaushal, Shubham

Abstract-Potato, also known as Solanum tuberosum L., ranks as the third most vital food crop worldwide and is essential for food security, especially in developing countries. Potatoes grow from tubers instead of seeds like cereals, making them susceptible to seed-borne diseases that lower seed quality and decrease yields in the long run. India, a leading potato-producing nation, is facing a major challenge due to a significant lack of high-quality seed tubers, as only 20-25% of the required amount is being met by state and central agencies. Identified as promising solutions to address this problem are advanced methods of multiplication such as micropropagation, hydroponics, and aeroponics. These technologies make the production of disease-free Mini tubers faster and more efficient. Aeroponics, a method of growing plants without soil using mist, has demonstrated significant potential for producing seed potatoes on a large scale. Derived from research conducted in the early 1900s, aeroponics has advanced to increase crop yields, reduce disease risks, and improve production efficiency. Small tubers created using this method, varying from 5 to 25 mm in size, are grown in controlled settings such as greenhouses and growth chambers. Aeroponics provides several benefits, including enhanced water usage, quicker growth, increased harvest, and decreased reliance on pesticides and herbicides. Nevertheless, it also poses difficulties such as expensive initial costs, the requirement for specific expertise, and accurate management of nutrients. By making advances in temperature, nutrition, and light management, aeroponics presents a hopeful remedy for the lack of seed potatoes and a means to enhance worldwide potato yield.

DOI: 10.61137/ijsret.vol.10.issue5.268

Analysis of Methods of Fabricating Perovskite Photovoltaic Cells/strong>
Authors:-Barakur Calvin Azo, Al Moustafa Saad

Abstract-Perovskite solar cells (PSCs) are a promising photovoltaic technology utilizing organometal halides for high-efficiency, low-cost solar energy conversion. They have the potential to revolutionize renewable energy as a result of their outstanding photovoltaic performance and a surge in their efficiency advancements. with unprecedented progress on certified power conversion efficiency (PCE) from 3.8% to over 25% within a decade. However, large-scale, cost-effective fabrication remains a hurdle for commercialization The Objective of the research is to investigate various Perovskite Solar Cells (PSC) fabrication methods with the goal of identifying scalable and efficient fabrication methods for commercially viable PSCs.

DOI: 10.61137/ijsret.vol.10.issue5.269

Fundamental of Tissue Culture and it’s Future Prospects in Crop Improvement/strong>
Authors:-Anjali, Kopal Singh, Dr. Gurshaminder Singh

Abstract-The science of growing plant cells, tissues, or organs separated from the mother plant on artificial media is known as plant tissue culture. It has various useful goals and comprises research methodologies and approaches from numerous botanical disciplines. It is essential to acquire a thorough understanding of the processes involved in growing and working with plant material in “test tubes” before starting to propagate plants using tissue culture techniques.In a relatively short period of time, during the height of the plant tissue culture era in the 1980s, numerous commercial laboratories were set up worldwide to take use of the potential of micropropagation for the large-scale production of clonal plants for the horticultural sector.The most widely used biotechnological techniques are those based on plant tissue culture. These include investigations into the processes involved in plant development, functional gene studies, the creation of transgenic plants with particular industrial and agronomical traits, healthy plant material, the preservation and conservation of the germplasm of vegetative propagated plant crops.Plant tissue culture has to lead to significant contributions in recent times and today they constitute an indispensable tool in the advancement of agricultural sciences and modern agriculture. This review would enable us to have an analysis of plant tissue culture development for agriculture, human health and well being in general.

DOI: 10.61137/ijsret.vol.10.issue5.270

Assessing HRIS Effectiveness in Compliance Management among IT Employees within Trichy District/strong>
Authors:-Mrs. A.Keerthana Devi

Abstract-The Information Technology (IT) sector necessitates strict compliance measures to maintain operational integrity and data security because of the quickly changing regulatory environment. This research aims to assess how well Trichy’s IT organizations manage compliance using Human Resource Information System (HRIS) solutions. The research, which involved 2347 individuals in a variety of jobs across several IT businesses, used a thorough questionnaire to explore how employees perceive HRIS performance in negotiating intricate compliance concerns unique to the IT industry. Employee familiarity with compliance rules, data security, privacy features, audit trail maintenance, efficiency of documentation, and adequate user support are among the factors that are being examined. Regression modelling, multivariate analysis, and statistical validation approaches are used in this work to find connections and underlying patterns that affect compliance efficiency. The results of research highlight how important it is for users to be conversant with regulations, since they show a favourable link with improved compliance procedures. Data security plays a critical role in IT firms and is identified as a fundamental factor effecting compliance efficiency. In Trichy’s IT industry, accessibility and the efficacy of HRIS characteristics emerge as critical factors in maximizing compliance procedures. The study’s conclusions provide specific advice on how to improve HRIS capabilities so that they smoothly mesh with the complex compliance requirements that are common in Trichy’s IT environment. Consequences and significance, this study adds to a better knowledge of how HRIS systems can be tailored to successfully navigate and manage compliance in the always changing regulatory landscape of the IT sector. The consequences encompass methods for technology adoption within organizations, guaranteeing strong compliance management procedures that are essential for maintaining the security and integrity of IT operations within Trichy’s IT industry.

DOI: 10.61137/ijsret.vol.10.issue5.271

Magic Hexagon of Order-4 with Star Configuration: A Study on Symmetry and Combinatorial Patterns/strong>
Authors:-Himadri Maity

Abstract-This paper presents a new magic hexagon of Order-4 with 24 cells, which exhibits a unique star configuration inside the hexagon. The hexagon follows distinct combinatorial patterns where all combinations of selected numbers result in equal sums. A total of 52 combinations are identified with a constant sum of 190, making this work significant in the study of mathematical patterns and symmetry.

DOI: 10.61137/ijsret.vol.10.issue5.272

Agri Shield: Identify Plant Disease Using Machine Learning/strong>
Authors:-Aditya Bathre, Aajinkya Ingalkar, Awanish Srivastava, Anurag Patel

Abstract-This paper introduces Agri Shield, an innovative approach using machine learning, particularly convolutional neural networks, for predicting plant diseases and recommending sustainable individualized remedies. Agri Shield embodies early-stage disease detection with ecologically friendly solutions, making it easier for farmers and plant enthusiasts to care for plants, as such information would be sourced from a multiplicity of sources. The proposed system is able to detect 20 different diseases of 5 common plants with 93% accuracy.

DOI: 10.61137/ijsret.vol.10.issue5.273

Transforming Libyan Organizations through AI: Assessing Readiness and Strategic Pathways/strong>
Authors:-Ali Bakeer

Abstract-In the context of Libya’s ongoing digital transformation efforts, many sectors are still grappling with the early stages of deploying advanced technologies, particularly artificial intelligence (AI) tools. This study aims to addresses the pressing issue of AI readiness among Libyan organizations, focusing on the critical success factors that facilitate or hinder the Deployment of AI technologies. The study employs a case study methodology, collecting qualitative data through structured surveys from eighteen participants across various sectors, including education, healthcare, and finance. The findings reveal critical barriers to AI deployment, such as inadequate digital infrastructure, limited internet access, insufficient government support, and a shortage of skilled professionals. In response, a structured framework is developed, outlining essential steps for organizations to successfully integrate AI applications. This framework emphasizes the need for assessing organizational readiness, setting strategic objectives, selecting appropriate AI solutions, conducting pilot projects, implementing training programs, and fostering a culture of continuous improvement. Ultimately, this research aims to bridge the gap between the theoretical benefits of AI and the practical realities faced by Libyan organizations, providing a pathway toward a future where AI drives productivity, innovation, and informed decision-making. The insights derived from this study underscore the importance of collaboration between public and private sectors to ensure sustainable and effective AI Deployment in Libya.

DOI: 10.61137/ijsret.vol.10.issue5.274

Review on Basics of Cold Weather Concrete/strong>
Authors:-Anand Korakoppu

Abstract-Cold weather conditions pose significant challenges to concrete construction, primarily due to their impact on the hydration process, strength development, and overall durability of concrete. When temperatures drop below 10°C (50°F), the rate of chemical reactions in concrete slows down considerably, which can lead to delayed strength gain and potentially incomplete hydration. This is particularly critical during the early curing phase, as concrete is most vulnerable to freezing at this stage. If concrete freezes before reaching a compressive strength of approximately 5 MPa (725 psi), the formation of ice crystals can cause internal damage, resulting in spalling, cracking, and reduced long-term durability. Additionally, cold temperatures can adversely affect the workability of the mix, making it stiffer and more difficult to place and finish. This review not only examines these detrimental effects but also explores various methods for mitigating them, such as using heated materials, employing insulating techniques, and incorporating accelerating admixtures. Furthermore, it highlights best practices for successful concrete placement and curing in cold weather, emphasizing the importance of careful planning and monitoring. By understanding and addressing these challenges, construction professionals can ensure the integrity and longevity of concrete structures, even in adverse conditions.

DOI: 10.61137/ijsret.vol.10.issue5.275

Review Paper on LC3 Concrete: Properties, Applications, and Future Directions/strong>
Authors:-Assistant Professor K Sagar

Abstract-LC3 (Lime-Cement-Limestone) concrete is an innovative material that incorporates limestone powder, reducing the environmental impact associated with traditional Portland cement. This paper reviews the properties, benefits, and challenges of LC3 concrete, alongside its applications in construction and potential for sustainable development. LC3 (Lime-Cement-Limestone) concrete is a cutting-edge material designed to mitigate the significant environmental challenges posed by traditional Portland cement, which is responsible for approximately 8% of global CO2 emissions due to its production process. By incorporating limestone powder into the concrete mix, LC3 not only reduces the volume of Portland cement required but also enhances the hydration process, leading to improved mechanical properties. This innovative blend allows for comparable or even superior compressive strength and durability compared to conventional concrete. Additionally, the finer particle size of limestone enhances workability, making the mixing and placement processes more efficient. This composite material embodies a shift toward more sustainable construction practices by utilizing abundant local resources and decreasing the reliance on energy-intensive cement production.

DOI: 10.61137/ijsret.vol.10.issue5.276

Cryptocurrency Arbitrage: Exploiting Twin Exchange Price Differences/strong>
Authors:-Srijan Jaiswal, Syed Afzal Ali, Shubham Sharma, Assistant Professor Mohammad Alim

Abstract-Arbitrage trading takes advantage of the price differences existing in various markets; it is one of the major methods applied in the cryptocurrency world. This paper compares twin exchanges on different cryptocurrency platforms for the effectiveness of arbitrage trading. We introduce a new method for the identification and exploitation of arbitrage opportunities between paired exchanges with equivalent cryptocurrency pairs, examining variations of price and liquidity. Utilizing the massive dataset comprising outputs from various platforms, this research uses quantitative methods for determining arbitrage profitability, efficiency, and risks. Transactional costs, speed of execution, and existing market conditions all face analyses to establish the feasibility of arbitrage opportunities. This paper will therefore identify the most feasible conditions and strategies for exploiting twin exchange arbitrage while making obvious some of the limitations involved in such activities. It is mainly focused on enriching the knowledge about cryptocurrency arbitrage and offering real time insights to traders interested in maximizing their strategies across various platforms.

Life Depending on Digital Media: An Analysis on Contemporary Society/strong>
Authors:-Kajal Nanda

Abstract-This research paper explores the expansion of digital media in human life. The very existence of human beings seems to be enjoying the interference of digital life. From personal to professional, everything depends upon it. All aspects including Educational, Medical, cultural, communicational, and entertainment sectors have one thing in common which is digitalisation. It comes with both positive and negative impacts. This study draws upon a combination of qualitative and quantitative data to understand the influence of digital media on human life and lifestyle and potential consequences of over-dependence.

DOI: 10.61137/ijsret.vol.10.issue5.277

Classification of Packet Length Spectral Analysis for IoT Network Traffic Using Random Forest Extra Tree Categorization/strong>
Authors:-N.Deena Nepolian, Dr.Abhisha Mano, B.P.Beno Ben

Abstract-The swift advancement of the Internet of Things (IoT) has ushered in a wealth of benefits, allowing countless interconnected devices to interact and exchange data effortlessly. Previously, network traffic including unusual patterns, was mainly produced by established, secure endpoints with strong security features, like smartphones. With the advent of the Internet of Things (IoT) no matter how small or intricate device, now has the capability to produce unusual levels of network activity. One of the biggest challenges facing the IoT industry is network traffic, which can have a negative impact on the overall performance of IoT devices and systems. To address this issue, a random forest classifier has been developed specifically for classifying IoT data. Extra Trees offer a significant benefit by minimizing bias. This is achieved by randomly sampling from the entire dataset when building the trees. Random Forest is a widely recognized machine learning technique which favours accuracy, reliability, flexibility and scalability. The process of data preprocessing involves transforming unrefined data into a refined dataset. Chi-square based feature extraction is utilized to extract relevant information and this technique enhances classification by selecting the most important features from the extraction regions. In the end, the chosen characteristics are inputted into both an extra tree and random forest classifier to ensure precise categorization and the implementation of this endeavor is carried out utilizing Python programming.

DOI: 10.61137/ijsret.vol.10.issue5.278

Blockchain Technology in Global Healthcare: A Paradigm Shift/strong>
Authors:-Dr.Rohith Jampani

Abstract-The global healthcare landscape is rapidly evolving, driven by technological advancements, demographic shifts, and rising expectations for personalized, secure, and efficient medical care. However, healthcare systems face a myriad of challenges, including fragmented data systems, cybersecurity threats, inefficiencies, and opaque supply chains. Blockchain technology, with its decentralized, immutable, and transparent nature, has emerged as a promising solution to these issues. It enables a new paradigm for secure, interoperable, and scalable healthcare systems, addressing not only technological inefficiencies but also policy, regulatory, and ethical challenges. This research explores the application of blockchain technology in healthcare, providing case studies and insights into its transformative potential for enhancing patient-centered care and data security.

DOI: 10.61137/ijsret.vol.10.issue5.279

A Comprehensive Web-Based Application for Digital Book-Keeping, Payment Process, and Secure Peer-to-Peer Transaction/strong>
Authors:-Assistant Professor Shivangi Sharma, Devansh Gautam, Sanjana Rajput, Ritik Ghosh, Purva Pardhi

Abstract-This paper presents the designing of a web-based financial application that implements digital bookkeeping and payment management features considering the needs of small and medium-sized businesses (SMBs). Identified financial management challenges for SMBs to track their expenses and debts as well as to make UPI-based payments are considered. The added feature of the app is the sound peer-to-peer payment with state-of-the art technologies including usage of biometric authentication, face recognition, and near-field communication. This will enable smooth financial transactions and, consequently, enhance security thereby reducing reliance on intermediaries and risk of frauds. It then delves into technical architecture, security features, and user experience, extending that with business implications of the application in a scenario of commission-based benefits. The thesis then discusses market potential and scalability of the app.

DOI: 10.61137/ijsret.vol.10.issue5.280

Impact of Short-Duration Rice Cultivation on Water Resource Management and Sustainability/strong>
Authors:-Nikam Jaiswal, Assistant Professor Dr. Gurshaminder Singh

Abstract-Water scarcity is rapidly becoming one of the most critical challenges facing global agriculture, particularly in regions that heavily depend on water-intensive crops such as rice. Traditional rice farming, which involves continuous flooding of paddy fields, consumes vast amounts of water, making rice cultivation unsustainable in many water-stressed regions. The need for innovative, water-efficient agricultural practices has led to the development and adoption of short-duration rice varieties, which offer a viable solution to reducing water use without compromising crop yield or food security. Short-duration rice varieties are characterized by their shorter growing periods, typically maturing within 90 to 110 days compared to conventional varieties that can take over 150 days. By requiring less time in the field, these varieties also demand significantly less water for irrigation, making them highly suitable for areas facing water scarcity, irregular rainfall, and unreliable irrigation infrastructure. In addition to reducing water consumption, short-duration rice contributes to the overall sustainability of farming systems by allowing for better synchronization with seasonal rains, enabling double or multiple cropping, and minimizing the need for groundwater extraction.

DOI: 10.61137/ijsret.vol.10.issue5.281

The Expanding Universe: Dark Matter Causing Moon to Drift Apart From Earth/strong>
Authors:-Yashwini Gaur

Abstract-In the late 1960s, through Lunar Laser Ranging Experiments, it was discovered that the Moon is drifting apart from the Earth at a constant rate. This new discovery has created a buzz among the scientists, with widely speculated reasons such as tidal forces, and Earth’s rotation rate. This rate of the Moon drifting apart has been relatively stable over years, with an average rate of 3.8 centimeters (1.5 inches) per year. This research paper explores the factors contributing to the Moon’s gradual drift away from Earth and introduces an additional potential reason for this phenomenon; where dark energy and matter comes into the picture and plays a role by expanding the distance between the 2 celestial objects. This paper will discuss in detail about the effect of dark energy on local systems like the solar system. To conclude, this paper will analyze the gradual drift of the Earth and the Moon because of dark energy and matter, discuss about its distribution in the universe, and predict its future impact on local systems and bodies in detail.

DOI: 10.61137/ijsret.vol.10.issue5.282
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Radeon: An Innovative Malicious Discernment and Deterrance for Automaton Gadgets/strong>
Authors:-Venkatakrishnan Elangumaran

Abstract-Android clients are continually undermined by an expanding many malevolent (apps), conventionally called malicious. Malicious comprises a genuine danger to client security, cash, and gadget and record uprightness. In this work system note that, by concentrate their activities, system can arrange malicious into few social classes, every one of which plays out a constrained arrangement of mischievous activities that portray them. These mischievous activities can be characterized by checking highlights having a place with various Android levels. In this work, an innovative malicious location framework for Android gadgets whichever at the same time investigations the application by utilizing conduct models and keep an android application. This framework will be intended to take into records those practices attributes of pretty much every genuine malicious which can be found in nature. An epic host-based application which recognizes and adequately squares over 96% of noxious applications, which originate in distinction to three substantial data files with 3,000 applications, by abusing the collaboration of dual simultaneous classifiers conduct behavior-based locator. Broad investigations, likewise incorporates the examination of a tried of 9,800 authentic applications, have been led to demonstrate the not high negative caution rates, the insignificant execution overhead, restricted cordless utilization.

DOI: 10.61137/ijsret.vol.10.issue5.283
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Efficient Ultra High Voltage Conversion Using Multistage Boost Technology/strong>
Authors:-Assistant Professor R. Alamelu, R. Sureshkumar, R. Prasanth, S. Sakthivel

Abstract-An innovative ultrahigh step-up dc-dc converter that integrates a dual-stage boost converter, a coupled inductor, and a multiplier cell. The dual-stage boost converter provides an initial voltage boost, while the coupled inductor enables efficient energy transfer and recycling of leakage energy. The multiplier cell further amplifies the output voltage. This configuration reduces voltage stress on power switches, decreases the size of passive components, and ensures continuous input current. With these features, the proposed converter offers enhanced performance, making it suitable for applications requiring high voltage conversion with minimal power losses. The simulation prototype steps up the input voltage using a 150-W prototype converter from 25 V to 550 V using MATLAB.

DOI: 10.61137/ijsret.vol.10.issue5.284
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Classification of Online Toxic Comments Using Machine Learning Algorithms/strong>
Authors:-Professor Shubhangi Chatnale, Shivai P. Gore, Rutwik J. Shetty, Soham A. Mahajan

Abstract-The increasing prevalence of toxic comments on social media necessitates efficient automated systems for content moderation. This paper presents a machine learning-based approach to classifying toxic comments, aiming to detect harmful content such as hate speech, threats, and offensive language. We evaluate various supervised learning algorithms, including logistic regression, support vector machines (SVM), random forests, and advanced deep learning models such as recurrent neural networks (RNNs) and transformer-based models like BERT. Text preprocessing techniques like tokenization and feature extraction using TF-IDF and word embeddings are applied to optimize model performance. The models are trained on large labeled datasets and evaluated using accuracy, precision, recall, and F1-score. Our results show that deep learning models, particularly transformer-based architectures, achieve superior performance in identifying toxic comments, highlighting their effectiveness in supporting content moderation on social media platforms.

DOI: 10.61137/ijsret.vol.10.issue5.285
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Impact of Advertisement on Consumer’s Buying Behaviour with References to FMCGs in Jabalpur City (M.P): Literature Review/strong>
Authors:-Research Scholar Arpan Kumar Samuel, Assistant Professor Dr. Sourabh Kumar Nougriaya

Abstract-The key objectives of advertisement are to raise awareness and promoting products. The objective of this Paper is to find out Impact of Advertisement on Consumer’s Buying Behaviour with References to FMCGs in Jabalpur City (M.P). By using 5 point Likert scale total of 430 persons agreed to participate and 400 responses were found satisfactory for further analysis. Questionnaires having 18 questions were distributed in Jabalpur (M.P.). Data was analyzed by using different statistical techniques such as Descriptive statistic, Factor Analysis, and Reliability analysis. Results of our study are robust because the evidence shows that advertisements have significant impact on consumers’ buying behavior and their choices. From the above discussion we have drawn the conclusion that advertisement can change the behavior of the consumer’s. Factors likewise Need of advertisement, Happiness of advertisement, Control of advertisement, Recall of Brand advertisement, and Feeling of advertisement. These are very helpful in creating and shifting the consumer’s buying behavior that is a very positive sign for the advertising and marketing companies.

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Solar- Powered Water Purification System/strong>
Authors:-Prakalya E, Priyadharshini S M, Srilatha B

Abstract-The Solar-Powered Water Purification System provides a sustainable solution for remote areas lacking clean drinking water. Powered by solar energy, it uses advanced filtration technology to operate independently of traditional electricity sources. IoT sensors allow real-time monitoring and maintenance. Designed for portability and user-friendliness, the system is adaptable to various environments. Targeted at NGOs and rural communities, it offers a cost-effective way to improve water access, with significant health and quality of life benefits.

DOI: 10.61137/ijsret.vol.10.issue5.286
55

Advanced Skin Cancer Detection using Hybrid CNN Feature Extraction/strong>
Authors:-Mr. S. Sinimoxon Lee, Professor Arpita Das

Abstract-Skin cancer is one of the deadliest types of cancer, with a rapidly increasing incidence worldwide. Early detection is crucial to reducing the mortality rate. In this paper, we present an effective computer-aided diagnostic model for accurate skin cancer detection and classification. Our proposed system consists of three primary steps: a) Preprocessing, b) Feature extraction, and c) Classification. During preprocessing, image quality is enhanced through median filtering. In the feature extraction phase, features are extracted from three powerful pretrained CNN models—GoogleNet, AlexNet, and ResNet-101—using transfer learning and are then combined. In the classification stage, the hybrid features are classified using three successful Machine Learning (ML) classifiers: Support Vector Machine (SVM), Random Forest (RF), and K-Nearest Neighbor (KNN). We validated our model on 3000 images from the MNIST dataset, achieving an accuracy of 96.66%, a precision of 96.5%, a recall of 96.66%, and an F1-score of 96.5%.

DOI: 10.61137/ijsret.vol.10.issue5.287
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Risk Identification/strong>
Authors:-Sattam A Otaibi, Ahmed A AlSaleh, Mohammed H Aljaber, Dhawi A Alotaibi

Abstract-Identifying and managing risk processes are essential for achieving organizational success. This study investigates the significance of risk assessment, evidence differentiation, and control in safeguarding fundamental objectives and enhancing contemporary decision-making. Organizations can develop strategies to mitigate adverse effects on performance, financial stability, and resource allocation if they promptly recognize a potential risk. Utilizing global indicators with ISO 31000 and specialized frameworks such as RiskWatch and RiskLens, organizations can more effectively identify and monitor risks across several domains. Fundamental factors encourage the prompt detection of inadequacies, thereby preventing negative consequences, boosting efficiency, cutting down on resource wastage, and guaranteeing the prioritization of well-informed choices. Furthermore, the item provides insights from the Deloitte Global Impact Survey, which indicates that 61% of firms acknowledge that risk identification and management are significant factors in transformation success. The incorporation of opportunities into business strategies, as demonstrated by several studies, results in enhanced success rates and improved planning aligned with strategic objectives. The inquiry thoroughly examines essential brainstorming strategies, SWOT analysis metrics, requirements, and protocols while highlighting developmental areas that facilitate organizational change. In addition, research indicates that the integration of opportunities into change initiatives results in increased success rates and enhanced alignment with key objectives. The agency’s ability to efficiently organize and execute tasks at a large scale, utilizing appropriate tools and techniques, is essential to its effectiveness and long-term success.

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Cloud kitchen Inventory System/strong>
Authors:-Assistant Professor Mr. Vishal Jaiswal, Ms. Bhakti Sarode, Mr. Dipesh Bobade, Ms. Nikita Chhapparghare, Ms. Shrutika Chauhan, Ms. Sneha Kolte

Abstract-Fast growth in cloud kitchens, driven by increased demand for food delivery services, is coupled with massive challenges to inventory management. Traditional inventory systems usually cannot meet dynamic requirements like those of cloud kitchens—fast-moving environments needing precise, real- time tracking of ingredients to ensure minimal wastage and resource optimization. This paper investigates how an IoT- enabled inventory management system can be implemented in a cloud kitchen setting. The system provides real-time observations of inventory levels, expiration dates, and storage conditions through the use of IoT technologies such as smart sensors, and other connected devices. It provides a holistic solution to inventory management problems within cloud kitchens since it allows for the automation of replenishment, demand prediction using data analytics, and compliance with food safety standards. The integrating technology will increase operational efficiency, generate cost savings, and sustain them by decreasing food wastage. This paper also discusses the possible challenges of IoT adoption related to data security and system integration, proposing strategies for successful implementation.

DOI: 10.61137/ijsret.vol.10.issue5.288
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Digital Marketing Grow in India/strong>
Authors:-Assistant Professor Tanmoy Ghosh

Abstract-Digital Marketing grow in India has seen outstanding development as of late, determined by the quick expansion in web entrance, cell phone utilization, and the computerized change across different enterprises. With more than 700 million web clients, India is one of the biggest internet based showcases universally, making a fruitful ground for organizations to use computerized promoting techniques. The multiplication of virtual entertainment stages, web crawlers, web based business, and portable applications has reshaped purchaser conduct, making computerized channels fundamental for arriving at interest groups. Factors, for example, the reception of advanced installment frameworks, the ascent of neighborhood language content, and government drives like Computerized India have additionally energized this development. Little and medium endeavors (SMEs), as well as huge organizations, are progressively putting resources into Web optimization, virtual entertainment promoting, email showcasing, and powerhouse coordinated efforts to drive commitment and deals. Also, the accessibility of reasonable information plans and the ascent of video content, especially on stages like YouTube and Instagram, have opened new open doors for advertisers. As digital marketing keeps on developing with the coordination of man-made brainpower (artificial intelligence) and information examination, organizations in India are zeroing in on customized and information driven ways to deal with upgrade their showcasing endeavors. The fate of computerized showcasing in India guarantees development, development, and a critical effect on business achievement.

DOI: 10.61137/ijsret.vol.10.issue5.289
55

Application of Hybridized Model of Shunt and Series Facts Controllers for Improvement of Generator Oscillation Damping Stability of Electrical Power System/strong>
Authors:-Abass Balogun, Isaiah Gbadegeshin Adebayo

Abstract-One of the technical solutions for improving the stability of power system is incorporation of Static Synchronous Compensators (STATCOM) and Static Synchronous Series Compensator (SSSC) controllers. However, the impact of hybridized STATCOM and SSSC on the generator damping stability of the power system to improve the post disturbance recovery voltages of the generator is necessary. Thus, in this study, hybridized model of STATCOM and SSSC controllers were incorporated in the Nigerian 31-bus power system to improve the system generator damping stability during disturbance. Transient stability of electrical power system with contingency was performed using swing equations technique. Line-Voltage Stability Index (L-VSI) technique was employed to determine the critical load bus for the placement of the controllers. Hybridized model of the STATCOM and SSSC was developed and incorporated into the selected load buses and its impact on stability of the generator oscillation damping was examined. Simulation was done in MATLAB R2023a. The generator damping ratio, total active power losses and total cost of controllers were determined. Results verified the effectiveness of hybridized model of STATCOM and SSSC controllers in improving the stability of power generator oscillation damping.

DOI: 10.61137/ijsret.vol.10.issue5.290
55

Artificial Intelligence with Cloud Computing/strong>
Authors:-Mr. Ankit Pandey, Dr.Jasbir Kaur, Assistant Professor Mrs.Sandhya Thakkar

Abstract-Artificial Intelligence (AI) boasts the ability to perform tasks that typically require human intelligence. Ability to completely transform many sectors within the market, facilitating decision-making that is both more efficient and effective. Cloud Computing offers the infrastructure needed for the expansion of AI applications and work together without any problems. This offers a thorough examination of the methodologies and techniques, AI integration with Cloud Computing. It had been a long time since she had [1] last seen her childhood friend, but when they finally reunited, it felt as if no time had passed at all, explores different methods of artificial intelligence, different types of cloud computing structures, as well as techniques for combining different systems. Moreover, the paper explores instances of successful outcomes, research and practical applications of artificial intelligence in cloud computing along with the difficulties that come with it. The article ends by discussing upcoming plans, potential areas for future research in this field.

DOI: 10.61137/ijsret.vol.10.issue5.291
55

AI and the Arts: Can Machines Truly Create/strong>
Authors:-Aditya Dubey, Archana Raj, Manish Rai, MD Owais Alam, Raj Mandwal

Abstract-The following paper deals with the modern trend of AI regarding artworks that have so far been challenging for human creativity. It goes as far as finding an answer to the question of whether machines can be attributed to true creators from analyses on AI-generated works on art, music, and literature. It similarly raises questions about philosophical matters with regard to the authorship, originality, and the emotional level of works by machines. The paper seeks to describe a wide capability and limitation of a potential creative force that AI carries about by reviewing the processes that are technical behind AI-generated art as well as the response towards this creativity in the world of art.

DOI: 10.61137/ijsret.vol.10.issue5.292
55

Decentralized E-Voting System Using Blockchain Technology/strong>
Authors:-Professor Disha Nagpure, Jidnesh Shah, Abhay Sanap, Hanuman Keskar, Krushna Khairnar

Abstract-Elections are a cornerstone of modern democracies. However, concerns regarding trust and potential manipulation plague traditional voting systems. This paper explores the potential of decentralized e-voting systems powered by blockchain technology and Aadhaar OTP verification. By leveraging the immutability, transparency, and security of blockchain, combined with the robust authentication of Aadhaar OTP, this system aims to revolutionize the electoral process. It addresses key challenges of traditional methods, such as fraud and lack of trust, through the use of smart contracts, voter identity verification, and cryptographic techniques.

55

Reinforcement Learning in Autonomous Racing/strong>
Authors:-Mr. Mihir Pawaskar, Dr. Jasbir Kaur, Assistant Professor Ms. Sandhya Thakkar

Abstract-Reinforcement Learning (RL) is rapidly advancing as a key approach to training autonomous agents, particularly in complex, real-time environments such as autonomous racing. This review discusses the latest developments in RL applied to endurance and competitive racing, including telemetry data integration and the application of advanced deep reinforcement learning models. The paper explores the architecture and strategies behind “Formula RL,” a system designed to optimize vehicle performance on the racetrack through RL. We delve into how RL algorithms such as Deep Deterministic Policy Gradient (DDPG) and Proximal Policy Optimization (PPO) are employed to enhance racing strategies, vehicle control, and decision-making, ultimately setting a course for the future of autonomous racing.

DOI: 10.61137/ijsret.vol.10.issue5.293
55

The Symbiotic Relationship: Ethernet and the Rise of 5G Networks/strong>
Authors:-Hrishikesh Bhatawadekar, Professor Dr. Shivani Budhkar

Abstract-The emergence of 5G promises a transformative era in wireless communication, boasting ultra-fast speeds, minimal delays, and the ability to connect a multitude of devices. However, this revolution rests upon a foundation often overlooked – Ethernet technology. This paper delves into the critical role Ethernet plays in the success of 5G networks. We explore how Ethernet’s established standards, exceptional reliability, and high bandwidth capabilities significantly contribute to the efficient functioning of 5G infrastructure. This analysis delves into the specific functionalities of Ethernet within the 5G Radio Access Network (RAN), particularly the potential of Ethernet Fronthaul for future deployments. Additionally, the paper examines the strengths and limitations of both technologies, highlighting the synergistic relationship that allows them to operate seamlessly together. Finally, we explore ongoing research regarding the convergence of Ethernet and 5G, emphasizing the potential for more efficient and secure future networks.

DOI: 10.61137/ijsret.vol.10.issue5.294
55

Work-life Balance Initiative and Employee Well-being/strong>
Authors:-Yamuna P, Raychal Phillips

Abstract-In today’s dynamic and demanding work environments, achieving a healthy work-life balance has become increasingly essential for employees’ well-being and organizational effectiveness. This paper investigates the impact of work-life balance initiatives on employee well-being and organizational outcomes, recognizing them as a strategic imperative for modern organizations. Drawing on a comprehensive review of existing literature, including theoretical frameworks and empirical studies, this research explores the relationship between work-life balance initiatives, employee well-being, and organizational performance. The study employs a mixed-methods approach, combining quantitative surveys and qualitative interviews to gather insights from employees across various industries. Preliminary findings suggest that effective work-life balance initiatives not only contribute to enhanced employee well-being, including reduced stress levels and increased job satisfaction, but also yield positive outcomes for organizations, such as improved productivity, retention, and overall employee engagement. The implications of these findings for HR practitioners and organizational leaders are discussed, emphasizing the importance of prioritizing work-life balance initiatives as a strategic investment in human capital. By fostering a culture that values work-life balance and supports employees’ well-being, organizations can create healthier, more productive work environments conducive to long-term success and sustainability.

DOI: 10.61137/ijsret.vol.10.issue5.295
55

Financely: Personal Finance Tracker Revolutionizing your Financial Journey/strong>
Authors:-Megha Suvarna, Shruti Rajak, Pranjali Gupta, Bhoomi Saini

Abstract-This project aims to develop a comprehensive personal finance tracker to help individuals manage their expenses and savings efficiently. The tracker was developed using [specific technologies], incorporating features such as budget categorization, expense logging, and financial goal setting. User feedback indicated a 20% improvement in their ability to stay within budgets. This project provides a valuable tool for personal finance management and suggests avenues for future enhancements, such as integration with banking APIs for automated transaction tracking. A personal finance tracker investigates how tools designed to manage personal finances—such as apps, software, and online platforms—affect users’ financial habits and literacy. The study typically examines the features of these trackers, such as budgeting and expense tracking, and assesses their effectiveness in improving users’ financial awareness and decision-making. It often involves analyzing user data and feedback to understand how these tools help people manage their money better, identify any challenges they face, and suggest improvements for enhancing their impact. The ultimate goal is to determine how personal finance trackers contribute to better financial management and overall financial health. This research paper examines the impact of personal finance trackers (PFTs) on financial literacy and management. Personal finance trackers, including mobile apps, desktop software, and web-based tools, are designed to help individuals monitor their spending, budget effectively, and improve their financial decision-making. Through a combination of quantitative and qualitative methods, this study evaluates user engagement, financial behavior changes, and the overall effectiveness of these tools. The quantitative analysis involves surveys and usage data from personal finance tracker users, revealing increased financial awareness, better budgeting practices, and improved savings rates. The qualitative analysis includes user interviews, highlighting experiences and challenges related to data integration, privacy concerns, and tool usability.

DOI: 10.61137/ijsret.vol.10.issue5.296
55

House Price Prediction Models with Noise-Injected Data Using Machine Learning/strong>
Authors:-S.Shanmathi, V.Rajeswari, V.Chaitanya, T.Navya, P.Vasudeva Rao

Abstract-Using machine learning techniques, notably linear regression, the project “House Price Prediction Models with Noise-Injected Data Using Machine Learning” aims to improve house price predictions. Data collection, preprocessing, and the incorporation of environmental elements like noise levels into the model are among the goals of the study. The study’s data base consists of publicly available datasets from real estate sources and websites like Kaggle. To create a reliable prediction model, the methodology uses an organized procedure that includes data collection, preprocessing, feature engineering, exploratory analysis, model selection, and comparison analysis. Accurately predicting house prices is achieved by the use of linear regression, and the model’s performance is assessed using metrics such as Mean Squared Error (MSE) and R-squared (R²). The findings show that important variables like housing size, location, and noise levels have a big impact on the forecasts. High R-squared values and a low Mean Squared Error confirm the model’s good predictive ability and validate that it is a reliable tool for projecting property prices.

55

Vision Parking Model/strong>
Authors:-A. Mugdha, Harsh Jaiswal

Abstract-Parking was one of the first issues that emerged after the invention of the vehicle. Technology has made progress in solving this issue throughout time, but parking is still a challenge. The primary cause is that parking issues are a collection of issues rather than a single one. By training a model to guide us on the gate entry where we have to park our vehicle according to the available space in parking and saving people’s time, we can use AI technology to provide you with a solution that will make the parking system more convenient and easy for people. One such, task is to determine the occupancy of parking spaces in a decentralized parking ecosystem. In a decentralized system, users find their preferred parking space, not random parking spaces. In this post, we offer a web application, as a solution for detecting parking spaces in various parking spaces. The solution is based on computer vision. As we know Python is an emerging it is that the only but this will language, so it becomes easy to write a script for Traffic in Python. The instructions for it is that the only but this will, analysis can be it is that the only but this will handled as per the requirement of the user. Data analysis is the, process of converting data into information. This is commonly used in removing barrier like advertisement, fetching files etc. In Python there is an API it is that the only but this will called traffic, which allows us to convert data into text. In the current scenario, advancement in technologies is such that they, can perform any task with same effectiveness or can say more it is that the only but this will effectively than us.

DOI: 10.61137/ijsret.vol.10.issue5.297
55

Molecular dynamics Simulation of the Turnbull Criterion for Predicting the Glass Forming Ability (GFA) in the Binary Fe100-XZrX Metallic Alloy/strong>
Authors:-Anik Shrivastava

Abstract-In order to better understand the glass forming ability, we have evaluated the reduced glass transition temperature (Trg) as one of the potential factors in molecular dynamics simulations of the binary Fe100-XZrX (X=10,12) system. Our investigation indicates that the calculated Trg values for Fe88Zr12 and Fe90Zr10 are 0.537 and 0.535, respectively, which are close to the minimum requisite T_rg≅0.4 the Turnbull criteria for glass formation in alloys.

DOI: 10.61137/ijsret.vol.10.issue5.298
55

Enhancing Cardiovascular Disease Prediction with XAI Technique Using Machine Learning/strong>
Authors:-Assistant Professor Dr.N.Chandrasekhar, P. Sravani, V.Charishma, N.Padmavathi, SK. Abdul Khadar, S.Rajeswari

Abstract-Globally, coronary diseases (CV) are several of the most significant causes of demise, improvements in predictive healthcare technologies are imperative. The goal of this study is to improve the predictability and interpretability of cardiovascular disease prediction models by combining machine learning methods with Explainable Artificial Intelligence (XAI). To create reliable predictive models, we investigate a range of machine learning algorithms, such as ensemble approaches, logistic regression, and XG-Boost. But while though precision is crucial, these predictions’ interpretability is just as crucial for therapeutic use. Our goal is to make model procedures for making decisions concise and intelligible for physicians by utilising XAI techniques like SHAP (Shapley Additive Explanations) and LIME (Local Interpretable Model-agnostic Explanations). Using a real-world CVD dataset, our tests demonstrate that XAI-enhanced models do not not only increase the accuracy of predictions but also identify important variables affecting heart function. By providing a workable framework for using interpretable machine learning models in healthcare, this study advances the discipline and may result in better clinical judgements and more individualised patient care.The accuracy of the Random forest-CARDIO system is assessed against the Framingham heart disease dataset using the Colab Simulator. In the experiment, Random forest demonstrated a significant accuracy score of 91.38%, which is appreciably better than alternative techniques including, XGBoost (90.01%), RNN (85.02%), GRU (85.02%) and RNN+GRU (as a combined model) (86%).

DOI: 10.61137/ijsret.vol.10.issue5.299
55

Build Your Own SOC Lab/strong>
Authors:-Monika Sahu, Kanakmedala Kashish, Assistant Professor Neelam Sharma, Dr. Siddhartha Choubey

Abstract-The “Build your SOC Lab” project is designed to address the pressing need for robust cybersecurity measures in today’s digital landscape. It provides a comprehensive guide tailored to organizations and individuals seeking practical resources in digital security. Emphasizing cost-effectiveness, adaptability, and scalability, it offers detailed instructions for setting up a functional SOC lab. Covering essential components like hardware, software tools, and network infrastructure, the project ensures thorough preparation for cybersecurity challenges. It delves into various use cases, including threat detection, incident response, and security monitoring, facilitating hands-on learning in SOC operations. By enhancing stakeholders’ capabilities in safeguarding digital assets and mitigating cyber threats, the project contributes to the resilience and security of modern digital ecosystems. Through practical insights and methodologies, it empowers individuals and organizations to navigate the evolving cybersecurity landscape effectively.

DOI: 10.61137/ijsret.vol.10.issue5.300
55

Organic Farming and Climate Change Mitigation/strong>
Authors:-Rohan Raju Thomas, Dr Gurshaminder Singh

Abstract-Organic farming has gained significant attention as a sustainable agricultural practice with potential benefits for climate change mitigation. This paper presents a comprehensive review of the literature on the role of organic farming in mitigating climate change. The review examines various aspects such as carbon sequestration, reduced greenhouse gas emissions, soil health improvement, biodiversity conservation, and resilience to climate variability. The findings highlight the potential of organic farming practices to contribute positively to climate change mitigation efforts. Key challenges and future research directions in this field are also discussed. The analysis draws upon a range of studies and scholarly articles to support the assertions made regarding the positive role of organic farming in climate change mitigation. Additionally, challenges and future prospects in this field are explored, emphasizing the need for further research and policy support to harness the full potential of organic farming for sustainable agriculture and climate resilience. Organic farming has gained prominence as an environmentally friendly agricultural approach with the potential to mitigate climate change impacts. This paper presents a synthesized overview of the contributions of organic farming practices to climate change mitigation. Climate change is one of the most pressing issues facing the world today, and agriculture is a significant contributor to greenhouse gas emissions. Organic farming has gained popularity as a more sustainable alternative to conventional farming practices, but what impact does it have on mitigating climate change? This essay will explore the impact of organic farming on climate change mitigation, the effectiveness of organic farming in mitigating climate change, and the challenges and limitations of organic farming in mitigating climate change.

DOI: 10.61137/ijsret.vol.10.issue5.301
55

Review on Multi-Objective Optimization in Highway Pavement Maintenance and Rehabilitation Project Selection and Scheduling/strong>
Authors:-Sandip Sampat More, Assistant Professor Shashikant B.Dhobale

Abstract-This study review an efficient asset management framework that enables decision makers to prioritize the maintenance of their roads, while focusing on the most critical road segments. In particular, this study first extends the application of reliability theory to estimate the overall network condition. Following that, this study proposes a new consequence of failure function for the whole road network based on road segments’ reliability, age, and road agency preferences. Finally, the study proposes an efficient multi-objective optimization algorithm, with the goal of maximizing overall network performance with the least maintenance and computational cost. The suggested framework was applied to three main roads in Jordan and validated statistically by comparing its performance to that of a typical multi-objective genetic algorithm (GA) under various scenarios and utilizing multiple performance metrics.

55

Revolutionizing Gratitude Humanizing Tipping Culture and Empowering Unseen Contributors through Digital Recognition/strong>
Authors:-Tania, Professor Vanita Rani

Abstract-Tipping culture, a long-standing custom in many service sectors, has changed dramatically as digital platforms and technology have grown in popularity. The core of thankfulness, though, which is to recognize and empower the invisible contributors who work behind the scenes, is still mostly ignored. Using digital recognition, this article investigates the idea of “humanizing” tipping, emphasizing how digital platforms might transform the distribution and expression of gratitude. Blockchain, mobile apps, and peer-to-peer recognition are examples of technical advancements that service providers can use to make sure that frontline and background workers receive just recognition and compensation. In addition to increasing tipping’s monetary worth, this digital revolution fosters an inclusive and appreciative culture. The study highlights the potential socio-economic effects, psychological advantages, and ethical ramifications of strengthening frequently disregarded contributions through a more open and equal tipping ecology.

DOI: 10.61137/ijsret.vol.10.issue5.302

A Study on Consumer Attitudes towards Organic Skincare Products among Young Adults in Urban Areas/strong>
Authors:-Smeet Raut

Abstract-This study aims to explore consumer attitudes towards organic skincare products, focusing specifically on young adults residing in urban areas. The growing demand for organic products has transformed the skincare industry, with consumers increasingly seeking products that align with their values of health, sustainability, and ethical consumption. This research investigates the motivations, preferences, and purchasing behaviours of young urban consumers, examining how factors such as environmental concerns, health consciousness, and brand perception influence their choices in skincare products. Utilizing a mixed-methods approach, the study employs quantitative surveys and qualitative interviews to gather comprehensive data on consumer attitudes. The survey targets a diverse sample of young adults aged 18 to 35, encompassing various demographics and lifestyles within urban settings. The qualitative component further enriches the findings by providing deeper insights into the underlying motivations behind consumers’ preferences for organic skincare products. Preliminary findings indicate that young adults are significantly influenced by the perceived benefits of organic ingredients, such as their natural composition and lower environmental impact. Additionally, social media and peer recommendations play a crucial role in shaping their purchasing decisions. The study highlights the importance of transparency in marketing and the need for brands to effectively communicate the benefits of organic skincare products to engage this demographic. By understanding the attitudes and behaviours of young consumers towards organic skincare, this research aims to provide valuable insights for marketers and industry stakeholders, ultimately contributing to more effective strategies in the rapidly evolving skincare market. The findings will also pave the way for future research exploring the broader implications of consumer attitudes on the organic product industry as a whole.

DOI: 10.61137/ijsret.vol.10.issue5.304

An Overview of Deep Learning Techniques for Enhanced Violence Detection in Surveillance Systems/strong>
Authors:-M. Tech Scholar Dhirendra Tripathi, HoD Nagendra Patel

Abstract-This paper provides an overview of deep learning techniques aimed at enhancing violence detection in surveillance systems. As surveillance technologies advance, identifying violent activities accurately becomes critical to maintaining public safety. Traditional approaches often struggle with the complexity of video data, which includes both spatial and temporal patterns. To address this, modern deep learning methods like Convolutional Neural Networks (CNNs), InceptionV3, Long Short-Term Memory (LSTM) networks, and hybrid models have been employed to improve detection accuracy. These models effectively capture spatial features while also learning temporal dependencies, making them ideal for real-time violence detection. The review highlights preprocessing steps such as noise reduction, feature extraction, and data augmentation, which contribute to better model performance. It also examines challenges like data imbalance, scalability, and computational demands in deploying these models.

Exploring Friend Recommendation Algorithms in Social Networking Sites/strong>
Authors:-M. Tech Scholar Vipin Kumar Singh, HoD Nagendra Patel

Abstract-Friend suggestion is a highly popular feature in social networking platforms, designed to connect users with similar or familiar individuals. This concept, rooted in social networks like Twitter and Facebook, often utilizes a “friends-of-friends” approach, where users are introduced to connections through their existing social circles. Traditionally, users tend to connect not with random individuals but rather with acquaintances of their friends. However, existing friend recommendation methods have limitations in scope and efficiency. To address these limitations, we propose an enhanced buddy recommendation model. Our approach leverages collaborative filtering to improve accuracy by analyzing users’ similarities and differences based on their interests, activities, and preferences. Additionally, location-based friend recommendations have become increasingly popular as they bridge the gap between the physical and digital worlds, offering insights into users’ preferences and interests. This model will expand the range of recommendations, connecting users with others who share similar interests and reside in similar areas.

Advanced Multi Model RAG Application/strong>
Authors:-Professor Disha Nagpure, Sujal Pore, Shardul Deshmukh, Aditya Suryawanshi

Abstract-This paper presents a modular, context-aware multimodal Retrieval-Augmented Generation (RAG) application that leverages both chain-based and agentic execution strategies. Powered by Gemini 1.5 Flash as the core language model, the system integrates Langchain and Langsmith frameworks to enable dynamic document retrieval, task orchestration, and seamless handling of multiple data sources. Key features include a YouTube summarizer using transcript APIs, real-time web search via the Tavily search tool, and support for text, image, and audio inputs, with OpenAI’s Whisper model for speech-to-text conversion. The application’s contextual awareness is enhanced by chat memory fallback functions, ensuring continuous, coherent interaction across sessions. Additionally, vector databases are employed for efficient multimodal retrieval. This system represents a significant advancement in RAG applications, offering flexibility, scalability, and adaptability across various input modalities and real-time tasks.

DOI: 10.61137/ijsret.vol.10.issue5.305

Vehicle-Focused Traffic Mapping for Forecasting Urban Movement and Detecting Peak Congestion Periods/strong>
Authors:-Atharva Daga, Aditya Wandhekar

Abstract-Effectively managing urban traffic dynamics is essential for optimized city planning and administration. This research focuses on a vehicle-centric approach to traffic mapping, aiming to predict congestion levels and identify peak traffic times within urban areas. The main objective is to forecast daily traffic density and detect periods of high congestion to support improved traffic management. To achieve this, we analysed real-time CCTV footage from Nasik Smart City Office, collected from key routes—Pathardi Gaon Circle and Golf Club Ground Circle — over a continuous five-day span. The findings confirm that real-time CCTV data delivers accurate congestion predictions and enhances traffic control strategies. By applying this methodology, we provide a reliable solution for traffic authorities, enabling them to take proactive measures to mitigate traffic congestion and improve overall traffic flow. This research contributes to the advancement of intelligent transportation systems, highlighting the value of incorporating real-time data into urban traffic management solutions.

DOI: 10.61137/ijsret.vol.10.issue5.306

A Short Review on Botany, Phytochemistry and Medicinal Potential of Christ’s Thorn Jujube/strong>
Authors:-Ruwa Talib Arffa, Sivamani Selvaraju

Abstract-Ziziphus spina-christi, commonly known as Christ’s thorn jujube, is a hardy deciduous shrub native to arid and semi-arid regions of Africa and the Middle East. This species is characterized by its thorny branches, small, yellow-green flowers, and edible drupes. Z. spina-christi is of considerable ecological and economic importance; it plays a vital role in soil stabilization and desert reclamation due to its deep root system. Additionally, the plant has various traditional uses, including medicinal applications, as a source of fodder, and for its wood, which is valued for its durability. Recent studies have highlighted its potential in sustainable agriculture and agroforestry, particularly in drought-prone areas. The present review highlights the botanical characteristics, ecological significance, traditional uses, and potential applications of Z. spina-christi , underscoring its value in both cultural practices and environmental conservation.

DOI: 10.61137/ijsret.vol.10.issue5.307

Park Ments: A Revolutionary Parking Application for the Modern City/strong>
Authors:-Nikhil A. Patil, Utkarsha A. Salunkhe, Deepika S. Patil, Pooja S. Wagh, Professor Disha Nagpure

Abstract-Challenge due to limited spaces, high demand, and the difficulty of finding available spots. Park Ments is a cutting-edge mobile application designed to revolutionize parking in urban areas by providing real-time information on parking availability. Park Ments is a mobile application that provides real-time information on parking availability in cities, allowing drivers to find a parking spot quickly and easily. This application uses intelligence probability for finding a perfect parking spot which makes it easy to find a perfect parking spot. This parking spot sorted with the help of distance between the user and parking spot, price and it delivers accurate, up-to-date information to users. Park Ments predicts parking availability based on historical data and real-time traffic patterns, enabling drivers to plan their parking in advance, reducing time and stress. It offers features such as advance reservation, remote payment, and directions to parking spots, enhancing user convenience. For cities and parking operators, Park Ments helps reduce traffic congestion and optimize parking space usage. The user-friendly app will be available for both iOS and Android devices, free to download from the App Store and Google Play, with various pricing options including hourly, daily, and monthly passes. By transforming parking into a more efficient and convenient process, Park Ments aims to significantly improve urban parking experiences.

DOI: 10.61137/ijsret.vol.10.issue5.309

Fake Profile Identification and Classification Using Machine Learning/strong>
Authors:-Professor Disha Nagpure (HOD), Professor Shilpa Shide (Guide) Vaishnavi Gaikwad, Vaishnavi Panchal, Vikrant Kothimbire, Vinay Makwana

Abstract-This paper details the design and implementation of Social media platforms are essential for communication today, allowing people to connect, share, and interact. However, the rise of fake profiles on sites like Instagram creates significant challenges related to user privacy, security, and trust. This research proposes a new approach to identify and classify these fake profiles using machine learning techniques. The findings contribute to ongoing efforts to combat fake accounts, promoting a safer and more trustworthy online environment. By leveraging machine learning and a thorough set of features, the model shows promising results in detecting and categorizing fake profiles. This research also opens up opportunities for further exploration, such as integrating different data sources and adapting the model for use on other social media platforms.

DOI: 10.61137/ijsret.vol.10.issue5.310

Social Media Insights
Authors:-Professor Disha Nagpure (HOD), Professor Shilpa Shide (Guide) Vaishnavi Gaikwad, Vaishnavi Panchal, Vikrant Kothimbire, Vinay Makwana

Abstract-This paper details the design and implementation of Social media platforms are essential for communication today, allowing people to connect, share, and interact. However, the rise of fake profiles on sites like Instagram creates significant challenges related to user privacy, security, and trust. This research proposes a new approach to identify and classify these fake profiles using machine learning techniques. The findings contribute to ongoing efforts to combat fake accounts, promoting a safer and more trustworthy online environment. By leveraging machine learning and a thorough set of features, the model shows promising results in detecting and categorizing fake profiles. This research also opens up opportunities for further exploration, such as integrating different data sources and adapting the model for use on other social media platforms.

DOI: 10.61137/ijsret.vol.10.issue5.310

Social Media Insights
Authors:-Saniya M. Kadmude, Shrutika D. Bansode, Vedant S. Joge, Professor Prachi Tamhan

Abstract-This research presents a comprehensive sentiment analysis system tailored for social media comments, aiming to classify user sentiments into positive, negative, or neutral categories. With Social media’s vast user engagement—over 1 billion unique users generating extensive comment data—there exists a significant opportunity to derive insights into public opinions. This study addresses challenges inherent in analyzing social media comments, including the high volume of data, diverse linguistic expressions, the use of slang, emojis, sarcasm, and the presence of spam. We leverage a constructed annotated corpus comprising 1500 citation sentences, which underwent rigorous data normalization to enhance quality and consistency. Six machine learning algorithms— Naïve Bayes, Support Vector Machine (SVM), Logistic Regression, Decision Tree, K-Nearest Neighbor (KNN), and Random Forest (RF)—were implemented for sentiment classification. The performance of these algorithms was evaluated using various metrics, including F-score and accuracy, demonstrating a correlation between sentiment trends and real-world events associated with specific keywords. This work contributes to the field of sentiment analysis by providing insights that can aid researchers in identifying quality research papers and understanding user attitudes towards video content.

DOI: 10.61137/ijsret.vol.10.issue5.311

A Study of the Behavioural Biases in Investment Decision-Making in Mumbai
Authors:-Urzin Pardiwalla

Abstract-This study examines how behavioural biases influence investment decision-making, challenging the rational assumptions of traditional finance theories. Investors often deviate from rationality due to cognitive biases, leading to suboptimal decisions. Key biases such as overconfidence, anchoring, herd behaviour, and loss aversion shape investment choices, potentially impacting portfolio performance and market trends. By analyzing these biases, this research sheds light on their psychological foundations and the importance of awareness in mitigating their effects. Understanding these biases helps investors and financial professionals improve decision-making processes, contributing to more informed and resilient investment strategies.

Easy Trade: Forex Trading bot Using Artificial Intelligence
Authors:-Professor Alim Khan, Rudransh Sharma, Abhinav Shukla, Kshitij Khare, Shivam Shukla

Abstract-The foreign exchange (forex) market, with its high liquidity and 24/5 trading hours, presents significant opportunities for investors. This paper discusses the development of a forex trading AI bot by a group of four college students, leveraging Python for programming and various analytical sources for strategy formulation. The project aims to create an automated trading system that utilizes machine learning algorithms and technical indicators to make informed trading decisions.

DOI: 10.61137/ijsret.vol.10.issue5.312

College Admisssion Enquiry Chatbot Using Machine Learning
Authors:-Professor Disha Nagpure, Akanksha S. Chavan, Harshali R. Salunkhe, Aryan S. Rathod, Kirankumar G. Reddy

Abstract-In recent years, there has been a significant increase in the volume of inquiries received by college admission offices, creating challenges in managing and responding to these queries efficiently. Traditional methods of handling such inquiries are time-consuming and often fail to meet the expectations of prospective students, leading to dissatisfaction and missed opportunities. This paper presents the development of an intelligent college admission inquiry chatbot, leveraging machine learning and natural language processing (NLP) techniques to automate and streamline the query resolution process. The proposed solution utilizes NLP models to classify user intents and recognize relevant entities from student queries. The chatbot is trained on a dataset comprising frequently asked questions (FAQs) and admission-related information, allowing it to provide accurate, real-time responses to inquiries regarding courses, application deadlines, eligibility criteria, and more. Key machine learning algorithms, including deep learning techniques for intent classification and rule- based systems for response generation, form the backbone of the system. The main findings indicate that the chatbot achieves a high accuracy rate in intent detection, with an F1-score of 92% and a significant reduction in response time compared to manual systems. User satisfaction surveys also revealed an improvement in the overall experience, particularly in terms of accessibility and response accuracy. In conclusion, the chatbot demonstrates the potential to enhance the efficiency and quality of admission inquiry handling in educational institutions, offering a scalable and cost-effective solution. Future improvements could focus on expanding the chatbot’s language capabilities and improving its ability to handle more complex, multi-part queries.

Student Voting Election Portal
Authors:-Professor Swati Shinde, Vaishnavi Borse, Resham Umale, Shraddha Borate

Abstract-With advancements in technology, traditional voting methods are evolving, offering more advanced solutions like online voting portals. A Student Voting Election Portal provides a modern and secure way for students to participate in elections from any location with internet access, eliminating the need for physical polling stations. This online system offers several benefits, such as improved accessibility, time and resource efficiency, greater accuracy, and transparency, making the voting process more democratic. Critical to the success of such a platform are proper voter verification and the accurate management of student information. While online voting systems have been implemented successfully in various contexts, there are still challenges and limitations to overcome for widespread adoption. This paper will explore different types of electronic voting, examine successful implementations of student election portals, and compare them to traditional voting methods, highlighting current trends and potential future developments.

DOI: 10.61137/ijsret.vol.10.issue5.313

A Cost-Benefit Analysis of Material Handling on the Productivity of Food and Beverage Manufacturing Industries
Authors:-Ms. Krupa Shetty

Abstract-Food and Beverage manufacturing companies face challenges today due to their high competitiveness, poor working conditions, and more stringent regulations. Growing demand for high quality products and frequent changes in the variety of products by the consumers had an impact on the viability of the food and beverages manufacturing sector. Working conditions for many food and beverages operatives are difficult, as it requires large number of labours for handling. In the present scenario, the production cost increases due to the handling of material from one place to another inside the factory by using the unskilled labour. Due to shortage of labour majority of the manufacturing industries are facing problem and there is a drastic reduction in total output and not achieving the required target is a common weakness In most of the small scale food and beverage manufacturing companies manual handling is adopted to transfer the raw material from one place to other, transfer of semi- finished material from one equipment to other and finally transfer the final finished products to the packing section and storage division. In all these stages movement of material takes place with help of semi-skilled workers. Because of this required quality is not achieved. Finally cost of the product increases, which they are not in a position to match the competitive market. One of the major reasons for slow growth of the Indian Economy is the improper handling of materials and unnecessary costs incurred. This research paper focuses on the benefits of utilising the material handling system with properly planed plant layout and automation, there is a drastic reduction labour cost and it avoids the damage caused by manual movement of material, which results in better- quality product with less cost of production. Good handling system also improve inventory control, less fatigue of workers, greater industrial safety with less accident potential and disruption of work, improved morale of workers.

DOI: 10.61137/ijsret.vol.10.issue5.314
55

ECG Signal Classification Using Fine-Tuned MobileNetV2 for Cardiovascular Disease Detection/strong>
Authors:-Assistant Professor Nadikatla Chandrasekhar, Chennapragada Tarun, Gorle vassudeva rao, Burada Jeevan

Abstract-Cardiovascular disease, otherwise referred to as heart disease, represents one of the most common and fatal illnesses that entails injuring the heart as well as the blood vessels. These, in turn, can cause a range of complications such as myocardial ischemia, for instance, coronary artery disease, or heart failure. The appropriate and timely identification of heart conditions. Clinical practice is determined by the relevance of the illness. The sickness known as heart disease, also known as cardiovascular disease, is common and, sadly, harmful. This condition deals with the morbidity and mortality associated with the heart and blood vessels. This can cause numerous issues such as myocardial ischemia, coronary heart problems and heart failure. A timely and correct identification of heart ailments. clinical practice is guided by the relevance of the disease. Being able to identify those at risk allows for preventative measures, preventative actions, and individualized treatment plans to lessen the negative effects and slow the disease’s course. The identification of cardiac disease has seen significant growth in recent years. major improvements as a result of the incorporation of the complex. Technology and methods based on computation. Among them is the machine. predictive modeling, data mining methods, and learning algorithms frameworks that make extensive use of physiological and clinical data information.

DOI: 10.61137/ijsret.vol.10.issue5.315
55

Space Debris Tracking and Prediction Models/strong>
Authors:-Sakshi Khedekar, Jayesh Jadhav, Jiya Mokalkar, Pratik Patil, Professor Manisha Mali

Abstract-In a growing risk for space activities intentionally located or accidentally resulting from the creation of space debris, monitoring and forecasting are indispensable for the protection of both crewed and uncrewed space missions. The paper presents the assessment of eight most widespread space debris tracking and prediction models: TLE based SGP4, ORDEM, MASTER, Debrisat, SDebrisNet, SDTS, CARA, SSN. For every model, a multi-faceted approach with respect to its various characteristics, accuracy, complexity, data requirement, adaptability, reliability, and usability is employed. This appraisal provides the benefits and associated drawbacks of each methodology in tackling the major issues of data, computation and construction of the complete system. The research further considers the progress of tracking devices and existing systems as well as possibilities of their improvement for the realtime challenges. The comparative assessment of the models presented in this paper will help to strategically improve current approaches to space debris control instruments, thus supporting safety and long-term operating trends in outer space. This study has been carried out in order to devise strategies that will fit the growing and dynamic endeavors of exploring space, by tracking debris with the utmost efficiency and precision.

DOI: 10.61137/ijsret.vol.10.issue5.316
55

Heart Disease Prediction Using Machine Learning Techniques in Python: A Review/strong>
Authors:-Tanmay Deshmukh, Supriya Kharatmol, Professor Nishant Patil

Abstract-As the global incidence of heart disease escalates daily, there is an urgent imperative to accurately predict and diagnose these conditions efficiently. Heart illness, also referred to as cardiovascular disease, is a broad category of conditions that affect the heart, including congenital abnormalities, vascular problems, and cardiac arrhythmias. In recent decades, it has emerged as one of the world’s top causes of death. Thus, it is imperative to create accurate and trustworthy techniques for early disease detection .Heart illness, also referred to as cardiovascular disease, is a broad category of conditions that affect the heart, including congenital abnormalities, vascular problems, and cardiac arrhythmias

DOI: 10.61137/ijsret.vol.10.issue5.317
55

The End of LIBOR: A Comprehensive Analysis of Financial Reforms and Market Adaptations/strong>
Authors:-Sagnik Kar Roy

Abstract-The London Interbank Offered Rate (LIBOR), a cornerstone of global finance used to set interest rates across a wide range of financial products, is undergoing a major transition due to issues of transparency and susceptibility to manipulation revealed in the 2012 LIBOR scandal. This report examines LIBOR’s historical role, its critical influence on financial markets, and the extensive regulatory reforms following the scandal, which have prompted a shift toward transaction-based alternative reference rates (ARRs) like SOFR and SONIA. The transition to ARRs presents significant challenges for financial institutions, requiring adjustments in valuation, risk management, and contract structures. Additionally, the report explores how technological innovations, such as real-time data processing and blockchain, could further enhance the reliability of benchmarks, pointing toward a future financial landscape grounded in transparent and stable interest rate standards.

55

Dietary Interventions for Speech Delay and Hyperactivity in a Child with Machine Learning and AI Applications/strong>
Authors:-Sujatha Mudadla

Abstract-This study investigates the role of specific dietary changes in addressing speech delay and hyperactivity symptoms in my son. Recognizing nutrition and maternal health as influential factors in child development, I explored how targeted dietary adjustments might enhance speech clarity, attention, concentration, and behavior. The study also explores maternal influences, including anemia and stress during conception, and their potential impacts on gut health and speech development. Additionally, I examined the effectiveness of repeated oral teaching methods, such as memorizing rhymes and vocabulary, for reinforcing neural pathways. To extend the research, I explore how machine learning (ML), deep learning (DL), computer vision, and generative AI can be applied to monitor, predict, and enhance the intervention’s effectiveness.

DOI: 10.61137/ijsret.vol.10.issue5.318
55

Energy Theft Detection in Smart Grids Using Graph Neural Networks (GNNs)/strong>
Authors:-Assistant Professor Dr. Pankaj Malik, Himisha Gupta, Anoushka Anand, Siddhesh Bhatt, Devansh Gupta

Abstract-Energy theft poses significant challenges to smart grid operations, leading to substantial financial losses and grid instability. Traditional machine learning approaches often fall short in detecting energy theft due to the complex and interconnected nature of smart grid systems. This paper proposes a novel approach to energy theft detection using Graph Neural Networks (GNNs), leveraging the inherent graph structure of smart grids. By representing the grid as a graph, where nodes correspond to smart meters and transformers, and edges represent electrical connections, GNNs capture both the local consumption patterns and the relationships between grid components. The proposed model aggregates node and edge features to identify anomalous consumption behaviors indicative of energy theft. We apply both Graph Convolutional Networks (GCN) and Graph Attention Networks (GAT) to enhance detection accuracy by considering both the structural and consumption-related features of the grid. The model is trained and evaluated on real-world and simulated smart grid datasets, showing improved performance over traditional classification models such as support vector machines and random forests. Evaluation metrics including precision, recall, and F1-score demonstrate the model’s robustness, even in the presence of noisy data and imbalanced class distributions. This research highlights the potential of GNNs to enhance energy theft detection in smart grids, providing a scalable and interpretable solution that can adapt to evolving grid conditions. Future work includes expanding the model to incorporate temporal data for real-time detection and exploring reinforcement learning for adaptive theft prevention strategies.

DOI: 10.61137/ijsret.vol.10.issue5.319
55

News Recommendation System/strong>
Authors:-Professor Disha Nagpure, Furquan M. Khan, Roshan A. Yadav, Sahil V.Prasad

Abstract-News recommendation systems have become integral to the digital media ecosystem, helping users navigate the overwhelming volume of news content generated daily. These systems employ a variety of algorithms to personalize news feeds, enhancing user engagement and satisfaction by tailoring content based on individual preferences, behavior, and demographic profiles. The underlying techniques include collaborative filtering, content-based filtering, and hybrid methods that combine multiple approaches. In recent years, the adoption of deep learning and natural language processing (NLP) has further advanced the accuracy and relevance of recommendations by enabling more sophisticated understanding of news articles and user interactions. However, challenges such as bias in recommendations, filter bubbles, and the trade-off between personalization and content diversity remain significant concerns. Additionally, ensuring transparency, fairness, and privacy in recommendation algorithms is a growing area of focus. This abstract provides an overview of the key technologies, challenges, and future directions in news recommendation systems, with an emphasis on improving the user experience while addressing ethical and societal implications.

55

Adoption of Artificial Intelligence: Benefits, Challenges, and Future Prospects/strong>
Authors:-Malvika Singh

Abstract-Artificial Intelligence (AI) has emerged as one of the most transformative technologies of the 21st century, reshaping industries, driving operational efficiencies, and fostering innovation. The adoption of AI spans numerous sectors, such as healthcare, finance, retail, and manufacturing, where it is optimizing processes, enhancing decision-making, and delivering personalized services. However, while AI adoption holds significant promise, it also presents notable challenges, including ethical concerns, data privacy issues, skills gaps, and high implementation costs. This paper explores the advantages of AI adoption, the barriers it faces, and future trends that could shape its progression. By examining case studies and identifying key trends, this paper aims to provide a comprehensive overview of the adoption of AI and its potential for transforming industries worldwide.

DOI: 10.61137/ijsret.vol.10.issue5.320
55

Agriculture Sustainability: A Comprehensive Review/strong>
Authors:-Rajat Kumar, Gurshaminder Singh

Abstract-Agricultural sustainability is essential for meeting global food demands, safeguarding the environment, and ensuring economic stability. This review delves into the various dimensions of sustainable agriculture, covering practices, technologies, policies and their collective effects on biodiversity, soil heath, and climate resilience. A central focus is on blending traditional agricultural knowledge with contemporary innovations to create sustainable practices that support biodiversity and soil vitality while adapting to climate challenges. The role of agroecology, which emphasizes ecological principles in agricultural settings, is highlighted as a key approach in promoting biodiversity and minimizing environmental impact. Additionally, the review stresses the importance of robust policy framework that support sustainable practices, ensure resource management, and address climate impacts. The paper also examines the main challenges hindering sustainable agriculture, such as resource depletion, land degradation, water scarcity, and economic pressures. These issues are interconnected with socio-economic factors, including access to resources, income stability, and social equity, all of which shape agricultural sustainability and impact communities reliant on farming. Resource depletion and land degradation are particularly emphasized, as they reduce productivity and soil health, leading to less resilient agricultural systems. To combat these challenges, the review suggests innovative solutions aimed at fostering resilience and sustainability. These include precision agriculture, which leverages data and technology for efficient resource use, crop diversification to reduce vulnerability to climate shifts, and regenerative farming practices that enhance soil health and sequester carbon. The potential of agroecology and regenerative practices is especially emphasized for their ability to restore ecosystems while boosting productivity. Policy interventions, particularly those that support sustainable practices, incentivize research and development in agro-innovations, and provide farmers with training and resources, are crucial for advancing sustainable agriculture.

DOI: 10.61137/ijsret.vol.10.issue5.321
55

Harnessing AIML for Sustainable Optimization in Agricultural Supply Chains/strong>
Authors:-Jayesh Hajare, Anshika Mishra, Kiran Pounikar, Vikas Yadav, Assistant Professor Princy Shrivastava

Abstract-The present research addresses the integration of Artificial Intelligence and Machine Learning (AIML) to optimize agricultural supply chains with respect to critical challenges surrounding efficiencies, costs and sustainability. With agriculture experiencing mounting pressure from climate change, market volatility and resource depletion and limited long-term solutions, AIML provides a novel approach to addressing challenges in the sector. We present a comprehensive AIML framework that provides decision support throughout the agricultural supply chain by leveraging historical and real-time agricultural data. We examine different machine learning approaches with a focus on predictive analytics and optimization to enhance yield prediction, resource allocation, and efficient logistical management. Findings suggest that the AIML model not only improves efficiencies, but also contributes to advancing sustainable agricultural practices. Finally, we posit that this AIML model would lead to a possible significant reduction of waste, overhead costs and improved profits in the agricultural supply chain and will ultimately improve agricultural ecosystem resilience. The objective of the paper is to provide insight into utilizing AIML methods in agricultural supply chain management and possible implications for future research and application in this important area.

55

Real-Time River Health Monitoring using Custom Dataset, YOLOv8, and Crowdsourced Solutions: A Comprehensive Review/strong>
Authors:-Assistant Professor Mrs. Vandana Navale, Yashi Solanki, Riddhi Khot, Pradnya Nalawade, Aakanksha Wadekar

Abstract-Water pollution is still a global problem, especially in urban waters. The routine process of monitoring water bodies is slow and resource intensive. This paper reviews modern approaches to monitoring water health using proprietary data, deep learning models such as YOLOv8 for pollution detection, and public service centers for initiating cleanup projects. The review describes the collection of user data and examines how the proposed system combines public research with machine learning techniques to develop good and measurable solutions to problems. It also investigates the role of public services in promo ng knowledge and environmental financing.

DOI: 10.61137/ijsret.vol.10.issue5.322
55

Surface Water Cleaning Robot (SWCR) for Sustainable Environmental Protection/strong>
Authors:-T. Anilkumar, V. Abhiram, K. Sampath Kumar, R. Yashwanth Sai Ganesh, U. Bhavani Prasad, P. Aditya Raj

Abstract-The emphasis of the project is centered upon the designing and advanced construction of an ecological water cleaning system that has wireless control features which integrates advanced environmental monitoring and robotics that is operated remotely towards achieving environmental sustainability. Consequently, due to the growing concern of water pollution, there is an increasing demand of deploying an easy system which will eliminate the waste and pollutants from the water bodies in an efficient manner. The system consists of a and a rotary bracket which consists of a substantial floating platform mounted on a 12V battery, four 500 RPM DC motors and L298N motor driver for river surface navigation. The operation of this device centers around the use of an ESP32- CAM module which acts as a camera that streams real time images to the operator for effective monitoring of the device and waste collection process. This system solves the problem of debris reduction in water bodies and enhances water reclamation curbing the risks of cash intensive manual cleaning. If the technology comes into practice it is going to improve environmental protection by introducing a new approach to environmental management and promoting sustainability strategies in the protection of water bodies.

DOI: 10.61137/ijsret.vol.10.issue5.323
55

The Impact of Behavioural Features on Predicting Academic Success: A Machine Learning Approach/strong>
Authors:-Nidhi Kataria Chawla, Swati Sareen, Chietra Jalota

Abstract-To discover hidden patterns from educational data, researchers are developing methods by using educational data mining. Dataset and its features/attributes determine the eminence of data mining techniques. Student’s academic performance model by using a new class of features i.e., behavioural features was built in this research paper. These are significant features as they are associated with the learner interactivity in e-learning system. Data was collected from an e-Learning system called Kalboard 360 using Experience API web service called (xAPI). After data preprocessing and feature selection, machine learning algorithms such as Decision Tree, Support Vector Machine and Artificial Neural Network were used to build the model. It is clearly visible from the results that there is a sturdy association between learner behaviours and its academic achievement. Results with above-mentioned classification methods using behavioural features attained up to 25% enhancement in the accuracy as compared to the results when same classification methods were applied on the data set without behavioural features.

DOI: 10.61137/ijsret.vol.10.issue5.324
55

Seismic Analysis of C-Shaped Building with Varying Bay Length: A Review/strong>
Authors:-Vikas Patanker, Deepesh Malviya, Ankita Choubey

Abstract-This study looks at four instances of G+10 story C-shaped buildings. By considering the distinctive irregularities, engineers can design structures that satisfy performance requirements and make efficient use of materials. In order to distinguish the other three structures from the base model, we looked at the same building with varying bay lengths. The base model’s bay length is 27 meters, while the second model’s bay length is roughly 33 meters, structure III’s bay length is 39 meters and 4th models bay length is 45 meters. In this study, an irregularly shaped building model will be analyzed and designed using STAAD.Pro. Shear force, bending moment, and storey drift etc. are just a few of the parameters that will be used to compare the results with simplified analysis methods in order to illustrate the advantages of using STAAD.Pro for irregular building design.

55

Forensic Analysis Model for Investigating Cybercrime Over the Network/strong>
Authors:-Midhunya.P.S, Adhulya. D, Merlin Jenifer. L, D. Suganthi, J. Mythili, Dr. N. Prabhu

Abstract-Despite significant investments in security protocols, the frequency of cybersecurity incidents continues to rise, with traditional methods proving ineffective against complex cyber-attacks. This research aims to address this issue by using a publicly accessible dataset on Advanced Persistent Threats (APTs) to develop a data-driven approach for identifying APT phases within the Cyber Kill Chain framework. APTs are sophisticated and targeted attack strategies that can bypass conventional intrusion detection systems, posing a major challenge for security professionals. The study incorporates several machine learning classifiers, including Naïve Bayes, Bayes Net, KNN, Random Forest, and Support Vector Machine (SVM), to analyze the dataset and identify APT phases, offering a promising method for improving cybersecurity detection and response.

DOI: 10.61137/ijsret.vol.10.issue5.499
55

Comparative Analysis on Social Media Sites Using Sentiment Analysis/strong>
Authors:-Indhuja.G, Abinaya.K, Deekshitha.M, D. Suganthi, J Mythili, Dr. J. Viji Gripsy

Abstract-This paper evaluates user views and emotional tone in postings across many social media sites by means of a comparative analysis utilising sentiment analysis. Understanding the mood underlying user-generated material has become vital for companies, marketers, and academics as social media is playing more and more influence on public debate. Focussing on sites like Twitter, Facebook, and Instagram, the paper uses sentiment analysis methods on social media data. The performance of these models in terms of accuracy, precision, recall, and F1 score is compared using machine learning models including Support Vector Machines (SVM), Light GBM (LGBM), and Long Short-Term Memory (LSTM). The results expose how sentiment patterns vary on different platforms, therefore offering understanding of public opinion dynamics, brand perception, and content engagement. Following LGBM in precisely identifying sentiment, the study emphasises SVM and LSTM’s efficiency and analyses the ramifications of these results for content development, market research, and social media monitoring.

DOI: 10.61137/ijsret.vol.10.issue5.500
55

CRISPR/Cas9-mediated Genome Editing in Plants for Stress Resistance

Authors: Assistant Professor Ajay Kumar

Abstract: CRISPR/Cas9 genome editing has revolutionized plant biotechnology by enabling precise, efficient modifications to target genes associated with stress tolerance. This paper reviews current advances in CRISPR/Cas9 applications for enhancing abiotic (drought, salinity) and biotic (pathogen) stress resistance in major crops. We first outline the molecular mechanism of the CRISPR/Cas9 system and delivery strategies in plants. Next, we examine key case studies: OsERA1 and OsDST edits for drought resilience in rice (Ogata et al.), ARGOS8 modification in maize (Shi et al.), SlHyPRP1 disruption for salt tolerance in tomato (Tran et al.), and powdery mildew resistance via TaMLO and PMR4 edits in wheat and tomato (Wang et al.; Santillán Martínez et al.). We then discuss methodological challenges—off-target effects, regeneration efficiency—and regulatory frameworks governing genome-edited crops. Finally, we explore future directions, including multiplex editing, transgene‐free approaches, and integration with computational tools to accelerate breeding programs. Our synthesis highlights CRISPR/Cas9’s transformative potential for sustainable agriculture under climate change.

Governance at Scale: Managing IAM and Policy Enforcement across AWS and GCP

Authors: Harish Govinda Gowda

Abstract: As enterprises accelerate their multi-cloud strategies, managing Identity and Access Management (IAM) and enforcing governance policies across platforms like AWS and GCP has become a top priority. These cloud providers offer distinct IAM models, policy enforcement tools, and logging mechanisms, creating complexity for organizations seeking consistent security, compliance, and operational control. This article explores a comprehensive governance framework for managing IAM and policy enforcement at scale in a dual-cloud environment. It examines core architectural principles, identity federation strategies, scalable IAM design, and automation practices using infrastructure-as-code and policy-as-code tools. Additionally, it highlights native policy enforcement mechanisms such as AWS Service Control Policies and GCP Organization Constraints, while outlining approaches for centralized monitoring, auditing, and anomaly detection. Through a real-world case study of a financial services platform, the article illustrates how cross-cloud governance can be automated, monitored, and evolved to meet business and regulatory demands. The piece concludes with lessons learned, technical recommendations, and a blueprint for sustainable cloud governance in large-scale environments.

DOI: https://doi.org/10.5281/zenodo.15917433

Combatting Business Email Compromise (BEC) In Hybrid Cloud Environments: A Policy-Aware Automation Approach

AuthorsOlajide Adebayo, Tolulope Awobeku

Abstract: Business Email Compromise (BEC) attacks represent one of the most financially devastating cybersecurity threats facing modern enterprises, with losses exceeding $43 billion globally since 2016 according to FBI Internet Crime Complaint Center data. This study presents a comprehensive detection and mitigation strategy specifically designed for hybrid cloud environments utilizing Microsoft 365 and Google Workspace platforms. The research focuses on developing an integrated framework that combines advanced identity and access management protocols, robust encryption mechanisms, and automated compliance enforcement to effectively counter BEC threats. Through analysis of enterprise security architectures and implementation of policy-aware automation systems, this study demonstrates how organizations can significantly enhance their resilience against sophisticated social engineering attacks while maintaining operational efficiency in distributed work environments.

DOI:

 

 

An Analysis Of Federal Government Policy On Organic Agriculture In Nigeria

Authors: Professor Moses Shaibu Faruna

Abstract: This paper examines Nigeria’s federal policy framework on organic agriculture, emphasizing its opportunities, challenges, and relevance for food security and sustainability. Organic farming, which avoids synthetic inputs in favour of natural processes, improves soil fertility, reduces costs, promotes health, and enhances resilience to climate change. While demand in Nigeria is driven by health, export, and sustainability concerns, government policies remain focused on conventional farming, offering only limited indirect support. Civil society groups, regional frameworks such as ECOWAP, and state-level initiatives have helped bridge policy gaps. Major national innovations like Joevet Powder Organic Pesticide and Ecofarmsillustrate the potential of local organic solutions in pest management without environmental or health risks. However, adoption remains constrained by high certification costs, weak institutional support, low awareness, and limited market access. The study concludes that organic agriculture offers Nigeria a viable path to sustainable development and global market competitiveness. Realizing this potential requires stronger government commitment, policy reforms, financial and market incentives, and investment in research and capacity building.

DOI: https://doi.org/10.5281/zenodo.17142355

 

Designing Resilient Waste Management Systems For 21st-Century Cities: A Circular Economy Approach

Authors: Olamide Ayeni, Opeyemi Alamutu

Abstract: The rapid urbanization of the 21st century has created unprecedented challenges for waste management systems, necessitating innovative approaches that integrate resilience and sustainability. This article examines the design and implementation of resilient waste management systems through a circular economy lens, addressing the critical need for sustainable urban development. By analyzing contemporary research and best practices, this study explores how cities can transform linear waste management models into circular systems that promote resource recovery, environmental protection, and economic viability. The article synthesizes evidence from global case studies and technological innovations to provide a comprehensive framework for designing resilient waste management systems that can withstand environmental, economic, and social pressures while contributing to urban sustainability goals

DOI: http://doi.org/10.5281/zenodo.17213748

Salesforce CRM Security Compliance: Leveraging Tivoli And Tripwire To Enforce Data Protection In Hybrid Unix Clouds

Authors: Kanwarpal Sekhon

Abstract: The rapid adoption of Salesforce CRM across industries has transformed how organizations manage customer data, streamline business processes, and enhance operational efficiency. However, when deployed within hybrid Unix cloud infrastructures, Salesforce CRM faces significant security and compliance challenges due to data fragmentation, complex integrations, and diverse regulatory requirements. This review article explores the role of IBM Tivoli and Tripwire as complementary tools for addressing these challenges. Tivoli strengthens identity and access management by unifying authentication and authorization across Salesforce and Unix/Linux systems, while Tripwire provides continuous file integrity monitoring, vulnerability detection, and automated compliance reporting. Together, these platforms create a comprehensive security and compliance framework capable of safeguarding sensitive CRM data in distributed environments. The article also examines real-world applications across industries such as financial services, healthcare, retail, and government, highlighting how integrated deployments improve regulatory adherence and resilience. Furthermore, it discusses future directions in security automation, including the integration of AI-driven threat detection, Zero Trust architectures, and cloud-native security enhancements. By combining Salesforce CRM with Tivoli and Tripwire, enterprises can establish a proactive, scalable, and audit-ready compliance strategy, ensuring customer trust and long-term digital sustainability.

DOI: http://doi.org/10.5281/zenodo.17365413

Salesforce AI-Driven Omni-Channel Enhancements Integrated With Hybrid Unix/Linux Infrastructure For Customer-Centric Operations

Authors: Gaganjot Bajwa

Abstract: The increasing demand for seamless and personalized customer experiences has driven enterprises to adopt omni-channel engagement strategies that unify communication across digital, mobile, and traditional platforms. Salesforce has emerged as a leading enabler of such strategies, particularly with the integration of artificial intelligence through its Einstein platform. These AI-driven capabilities enhance omni-channel operations by enabling predictive insights, intelligent routing, conversational AI, and real-time personalization. However, the success of such systems depends on the underlying IT infrastructure. Hybrid environments that combine on-premises Unix/Linux systems with private and public cloud platforms provide the scalability, reliability, and flexibility required to support AI-enhanced customer engagement. This review examines the integration of Salesforce AI-driven omni-channel features with hybrid Unix/Linux infrastructures, highlighting frameworks, automation, and security considerations that enable seamless interoperability. Case studies from industries such as finance, healthcare, and retail illustrate the tangible benefits of this integration, while also identifying challenges related to complexity, compliance, and operational costs. Future trends point toward advancements in generative AI, edge computing, and zero-trust security frameworks, which will further enhance resilience and responsiveness in omni-channel CRM. The findings underscore the importance of aligning AI-powered Salesforce capabilities with robust hybrid infrastructures to achieve customer-centric operations that are scalable, secure, and adaptive to evolving enterprise needs

DOI: http://doi.org/10.5281/zenodo.17365436

The Impact Of Digital Identity Governance On User Data Protection In The Cloud

Authors: Ramesh K. Bhatia

Abstract: The rapid expansion of cloud computing has redefined how organizations store, access, and protect user data. However, this transformation has also intensified challenges surrounding identity management and data security. Digital identity governance has emerged as a strategic mechanism to ensure that user access, authentication, and authorization processes align with organizational security and compliance requirements. This review paper explores the impact of digital identity governance on user data protection within cloud environments, emphasizing its role in mitigating cyber threats, maintaining regulatory compliance, and enhancing user trust. The paper begins by outlining the fundamentals of digital identity and its relationship with cloud data protection, highlighting the limitations of traditional identity management systems. It then reviews key digital identity governance frameworks, including Identity Governance and Administration (IGA), Zero Trust architectures, and AI-driven access analytics. Through a comparative analysis, the paper demonstrates how governance-driven identity systems outperform conventional models in terms of scalability, compliance readiness, and breach prevention. Despite significant advancements, organizations face persistent challenges such as integration complexity, identity sprawl, and balancing user experience with security. The review identifies emerging trends shaping the future of identity governance, including blockchain-based decentralized identity (DID), self-sovereign identity (SSI), and AI-powered adaptive authentication. These innovations aim to establish greater transparency, privacy, and interoperability across cloud ecosystems.

DOI: http://doi.org/10.5281/zenodo.17799750

The Influence Of Predictive Security Analytics On Mitigating Cyber Threats

Authors: Sneha R. Ghosh

Abstract: In today’s hyperconnected digital environment, cyber threats have evolved in complexity, persistence, and scale, challenging the effectiveness of conventional, reactive defense mechanisms. Traditional cybersecurity tools such as firewalls, intrusion detection systems, and antivirus software largely depend on signature-based or rule-driven models that detect known attacks but fail to identify novel, polymorphic, or zero-day threats. As a result, enterprises increasingly require security systems that not only detect and respond to breaches but also anticipate and prevent them proactively. Predictive Security Analytics (PSA) has emerged as a transformative approach within this context, integrating artificial intelligence (AI), machine learning (ML), big data analytics, and behavioral modeling to forecast potential cyber incidents before they occur. PSA operates by continuously analyzing massive volumes of structured and unstructured data from network traffic, endpoint logs, user behavior, and external threat intelligence to identify anomalies, correlations, and early indicators of compromise. By applying advanced statistical learning and pattern recognition, predictive models can uncover subtle deviations that signify emerging threats, enabling organizations to implement countermeasures preemptively. The incorporation of automation and real-time analytics empowers security teams to respond faster and with greater precision, significantly reducing false positives and improving overall cyber resilience. This review explores the impact of predictive security analytics on mitigating cyber threats, outlining its foundational principles, operational architectures, and major applications in enterprise and cloud environments. It contrasts predictive analytics with traditional reactive defense mechanisms, emphasizing its capacity to enhance situational awareness, optimize incident response, and support risk-based decision-making.

DOI: http://doi.org/10.5281/zenodo.17799756

Securing AI-Assisted Cloud Engineering: Guardrails For Copilot-Generated IaC And CI/CD Changes To Prevent Vulnerability Injection

Authors: Sunil Anasuri, Komal Manohar Tekale

Abstract: The quick pace of AI coding assistant adoption in cloud engineering has greatly led to the creation of Infrastructure-as-Code (IaC) and CI/CD pipelines. Nevertheless, AI-generated setting may readily imply security misconfigurations, insecure defaults and violations of the policy that can be transmitted straight into production cloud environments. Such risks are especially acute in those organizations that deal with regulated and high-assurance industries, whose misconfigured resources can cause data breaches, privilege increases, and violation of the rules. Conventional security review procedures are too sluggish and manual to follow through with the AI-assisted development processes, which resulted in a pressing need of automated preventive security mechanisms. The paper presents a recommendation in the form of the AI Guardrailed Cloud Engineering Framework (AGCEF) that is a proactive security model that involves the imposition of guardrails on AI-generated IaC and CI/CD artifacts prior to the deployment. AGCEF combines policy-as-code checking, matching of vulnerability signatures, semantic intent checking with LLM and a quantitative risk scoring system, which identifies and thwart insecure configurations at design time. Through experimental analysis, it is shown that AGCEF is significantly better in comparison to current AI-based methods of vulnerability detection because it offers higher vulnerability prevention, lowers false negatives, less manual review, and enhances the safety of deployment. The framework allows organizations to use AI copilots to enhance productivity and maintain high levels of cloud security and compliance, hence restoring the balance between the speed of AI-assisted development and AI-assisted operations in the cloud.

DOI: https://doi.org/10.5281/zenodo.18594687

Machine Learning For Water Resource Management

Authors: Deepak Tomar, Kismat Chhillar

Abstract: Water resource management has become increasingly challenging due to rapid population growth, climate variability, urbanization, and rising agricultural demand. Traditional hydrological models often struggle to capture the complex and nonlinear interactions between environmental variables affecting water systems. Machine Learning (ML) offers powerful data-driven techniques that can analyze large and heterogeneous datasets to support efficient water management. This paper explores the role of machine learning in water resource management, highlighting its applications in hydrological forecasting, irrigation optimization, groundwater monitoring, and water quality assessment. Various ML algorithms such as Artificial Neural Networks, Random Forest, Support Vector Machines, and Deep Learning architectures are examined for their ability to model complex hydrological processes. The study also discusses current challenges including data availability, model interpretability, and integration with existing hydrological frameworks. The findings indicate that ML-based approaches can significantly enhance predictive accuracy, optimize resource utilization, and support sustainable water management strategies.

DOI: https://doi.org/10.5281/zenodo.19019143

Developing Autonomous Self-Healing Infrastructure Frameworks Using Predictive Monitoring And Intelligent Automation To Strengthen Reliability And Resilience In Distributed Computing Environments

Authors: Shekar Vollem

Abstract: Modern distributed computing environments support critical digital services but frequently encounter operational instability caused by complex interdependencies, infrastructure failures, and delayed incident response. These challenges highlight the need for intelligent infrastructure systems capable of identifying anomalies early and initiating automated corrective actions without human intervention. This study investigates the development of an autonomous self healing infrastructure framework that integrates predictive monitoring with intelligent automation to strengthen reliability, resilience, and operational continuity across distributed computing platforms. The research addresses the problem of reactive infrastructure management by proposing a proactive model that continuously analyzes operational telemetry, predicts potential system failures, and triggers automated remediation workflows. A mixed methodological approach is adopted, combining quantitative analysis of system performance metrics with qualitative evaluation of automation effectiveness in simulated distributed infrastructure environments. Predictive models analyze infrastructure signals such as resource utilization patterns, system logs, and service latency to detect early indicators of degradation, while automation components coordinate corrective responses including resource reconfiguration, service restart, and workload redistribution. Experimental observations indicate that the proposed framework significantly reduces incident response time, improves system availability, and enhances infrastructure stability during abnormal operating conditions. The findings demonstrate the strategic value of predictive automation in enabling autonomous infrastructure operations and minimizing manual intervention. This research contributes to the advancement of resilient infrastructure engineering by providing a scalable framework that supports proactive infrastructure management and strengthens reliability across complex distributed computing ecosystems.

DOI: https://doi.org/10.5281/zenodo.19208689

Environmental Justice In A Changing Climate: Pollution And Resilience In Illinois

Authors: Samuel N Nimaful, Joel Holison, Augustine Hanyabui, Gloria O Darkoh, Laureta Tatenda Nyamutswa, Faith Esther Holison

Abstract: Environmental justice (EJ) in Illinois is shaped by the long arc of industrialization, suburbanization, infrastructure siting, and land-use decisions that have unevenly distributed environmental burdens across communities. Illinois’ pollution landscape spans legacy industrial corridors in and near Chicago[1], heavy manufacturing and petrochemical activity in the Metro-East, extensive agricultural nutrient and pesticide pressures across rural watersheds, major transportation and freight emissions, and persistent contamination from historical dumping and hazardous waste sites. These burdens interact with—and are increasingly amplified by—climate change impacts such as more intense precipitation and flooding, extreme heat, and air-quality–relevant meteorological shifts (e.g., conditions that favor ozone formation). Together, these factors create a cumulative exposure environment that can deepen existing health inequities and economic vulnerabilities for low-income communities and communities of color. [2] This report synthesizes official and peer‑reviewed evidence through 2024 to analyze (a) the major historical and current pollution sources in Illinois; (b) how pollution burdens are distributed spatially by race, income, and related social vulnerability factors; (c) climate hazards that exacerbate exposure and risk; (d) documented and plausible public health outcomes linked to pollution and climate stressors; (e) Illinois and local policy frameworks and resilience programs; (f) community-led EJ initiatives and illustrative case studies; and (g) recommended strategies and metrics for monitoring progress. Where possible, the analysis uses official screening and monitoring frameworks such as EPA’s EJSCREEN and CDC/ATSDR’s Environmental Justice Index (EJI), alongside Illinois EPA air and water program documentation and Illinois Department of Public Health (IDPH) surveillance. [3]

DOI: https://doi.org/10.5281/zenodo.19414502

 

SAP Intelligent Manufacturing Enabled By AI, IoT, And Cloud-Based Machine Learning Models

Authors: Ravindu Dissanayake

Abstract: This review article investigates the integration of SAP Digital Manufacturing with IoT and cloud-based machine learning to achieve intelligent, self-optimizing production environments. As the manufacturing sector transitions toward mass customization and Industry 4.0, the synergy between the S/4HANA digital core and edge computing becomes critical for maintaining real-time operational agility. The research evaluates architectural frameworks that enable a seamless digital thread from the enterprise planning layer to the shop floor, focusing on the role of SAP Business Technology Platform in orchestrating high-frequency IoT data. Key methodologies examined include the application of Time-Series analysis for predictive maintenance and the use of Deep Learning architectures, such as Convolutional Neural Networks, for automated computer vision-based quality inspection. Furthermore, the article analyzes the strategic implementation of Digital Twins to simulate production scenarios and optimize resource utilization. The study addresses technical constraints related to legacy equipment integration, data quality at the edge, and the necessity for zero-trust cybersecurity in connected factories. The review concludes that the shift toward agentic manufacturing workflows and quantum-enhanced scheduling is essential for global enterprises seeking to achieve the dual goals of high-efficiency production and ESG-compliant sustainability in 2026.

DOI: https://doi.org/10.5281/zenodo.19427850

 

Machine Learning Driven SAP DevOps Automation For Scalable Enterprise Software Delivery

Authors: Shokhruh Nabiyev

 

Abstract: This review article investigates the transformation of SAP software delivery through machine learning driven DevOps automation. As enterprises migrate to complex, multi-cloud architectures such as S/4HANA and the Business Technology Platform, traditional manual and threshold-based CI/CD pipelines fail to scale with the increasing frequency of changes. The research evaluates how ML models enhance the delivery lifecycle by introducing predictive risk assessment, intelligent test impact analysis, and self-healing deployment scripts. A primary focus is placed on the architectural evolution toward data-centric pipelines that leverage AI Core for real-time telemetry processing and ABAP code governance using large language models. The study further analyzes the operational impact of AIOps on progressive rollout strategies and automated root cause analysis within hybrid landscapes. Addressing critical challenges such as the "cold start" data problem and the necessity for explainable AI in regulated environments, the review concludes that the transition toward autonomous, "zero-touch" delivery is the essential roadmap for sustaining high-velocity innovation and industrial resilience in 2026.

DOI: https://doi.org/10.5281/zenodo.19427858

 

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Securing AI-Assisted Cloud Engineering: Guardrails For Copilot-Generated IaC And CI/CD Changes To Prevent Vulnerability Injection

Uncategorized

Authors: Sunil Anasuri, Komal Manohar Tekale

Abstract: The quick pace of AI coding assistant adoption in cloud engineering has greatly led to the creation of Infrastructure-as-Code (IaC) and CI/CD pipelines. Nevertheless, AI-generated setting may readily imply security misconfigurations, insecure defaults and violations of the policy that can be transmitted straight into production cloud environments. Such risks are especially acute in those organizations that deal with regulated and high-assurance industries, whose misconfigured resources can cause data breaches, privilege increases, and violation of the rules. Conventional security review procedures are too sluggish and manual to follow through with the AI-assisted development processes, which resulted in a pressing need of automated preventive security mechanisms. The paper presents a recommendation in the form of the AI Guardrailed Cloud Engineering Framework (AGCEF) that is a proactive security model that involves the imposition of guardrails on AI-generated IaC and CI/CD artifacts prior to the deployment. AGCEF combines policy-as-code checking, matching of vulnerability signatures, semantic intent checking with LLM and a quantitative risk scoring system, which identifies and thwart insecure configurations at design time. Through experimental analysis, it is shown that AGCEF is significantly better in comparison to current AI-based methods of vulnerability detection because it offers higher vulnerability prevention, lowers false negatives, less manual review, and enhances the safety of deployment. The framework allows organizations to use AI copilots to enhance productivity and maintain high levels of cloud security and compliance, hence restoring the balance between the speed of AI-assisted development and AI-assisted operations in the cloud.

DOI: https://doi.org/10.5281/zenodo.18594687

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