An Intelligent Wastewater Pollution Detection Framework Using Deep Learning And Sensor-Based Environmental Monitoring

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Authors: Mr.G.Vijay Kumar, Pathi Krishna Kanth, Srikakolapu Chandi Mohana Manjusha, Palacharla Vidhatri, Makineedi Hari Gangadhar Satya Sairam, Bathula James

Abstract: Water pollution has become a major environmental concern due to the increasing discharge of industrial and domestic contaminants into wastewater systems. Continuous monitoring of wastewater quality is essential to detect harmful pollutants and prevent environmental damage. This study proposes an intelligent wastewater pollution detection system that integrates low-cost multisensor technology with deep learning techniques. The system collects environmental data using multiple sensors capable of measuring chemical characteristics present in wastewater. The acquired sensor data is pre-processed and transformed into structured textual representations, enabling advanced machine learning models to analyse patterns associated with different pollutants. A deep learning model based on transformer architecture is then employed to classify and identify contaminants present in the wastewater. The proposed approach improves detection accuracy while maintaining computational efficiency. Experimental evaluation demonstrates that the system achieves higher classification performance compared to conventional machine learning methods. The developed framework provides a cost-effective and scalable solution for real-time wastewater monitoring and environmental protection. Future improvements may include integration with IoT-based monitoring platforms and deployment in large-scale environmental monitoring systems.

DOI: http://doi.org/10.61137/ijsret.vol.12.issue2.166

 

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