AI and IoT-Based Smart Waste Management System for Urban Sustainability

Main Article Content

Dr. Murli Masimukku

Abstract

Efficient waste management is a critical challenge in urban areas. This paper proposes a smart waste management system integrating IoT sensors and AI algorithms to monitor and optimize waste collection processes. Sensors track bin levels in real time, while machine learning models predict optimal collection routes. The system reduces operational costs, fuel consumption, and environmental impact. The results demonstrate improved efficiency and sustainability in urban waste management systems.

Article Details

How to Cite
Masimukku, D. M. (2025). AI and IoT-Based Smart Waste Management System for Urban Sustainability. Transactions on Intelligent Computing and Data Systems , 3(3). Retrieved from https://publications.issri.in/index.php/ticds/article/view/12
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Articles

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