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Design and Development of Iot Prototype for Real-Time Theft Detection and Optimization of Electricity Using Machine Learning Techniques

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

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Improving Energy Consumption in Q-Learning based Routing Protocol for Flying Ad-hoc Networks (FANETs)

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

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