Leveraging Artificial Intelligence for Real-Time Environmental Monitoring and Pollution Control

Authors

  • Jaipal Dhobale Author
  • Radhakrishna Bhimavarapu Author
  • Dr. Namah Dutta Author
  • Dev Kumar Yadav Author
  • Ms Purnima Prabhakar Author
  • Indranil Panda Author
  • Sachin Pavithran A P Author

DOI:

https://doi.org/10.64252/2yywr267

Keywords:

Artificial Intelligence, Real-Time Monitoring, Pollution Control, IoT Sensors, Reinforcement Learning

Abstract

Artificial Intelligence (AI) has emerged as  one of the  transformative tools in environmental science. This paper explores some of the  novel AI-driven systems designed for real-time monitoring of air as well as the  water quality, early detection of the  pollution hotspots, and dynamic control interventions. . We advocate a hybrid AI framework combining deep neural networks, reinforcement learning, and sensor fusion algorithms, implemented in a pilot deployment throughout urban–commercial zones. We gathered spatiotemporal records via a community of low-cost IoT sensors and compared AI version outputs towards conventional monitoring. Results indicate a 35% development in detection accuracy and a 40% discount in response time to pollution occasions. Furthermore, a reinforcement getting to know–based controller finished a 25% reduction in pollutant awareness peaks via dynamically optimizing commercial emissions. We talk about scalability, boundaries, and policy implications. Our findings demonstrate that AI-based structures can notably decorate environmental resilience and facilitate proactive interventions. This painting advances the literature by providing an actual-global demonstration of closed-loop AI for pollutants control and offers tips for large-scale adoption.

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Published

2025-06-18

Issue

Section

Articles

How to Cite

Leveraging Artificial Intelligence for Real-Time Environmental Monitoring and Pollution Control. (2025). International Journal of Environmental Sciences, 11(12s), 431-441. https://doi.org/10.64252/2yywr267