Leveraging Artificial Intelligence for Real-Time Environmental Monitoring and Pollution Control
DOI:
https://doi.org/10.64252/2yywr267Keywords:
Artificial Intelligence, Real-Time Monitoring, Pollution Control, IoT Sensors, Reinforcement LearningAbstract
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.