The AI-powered Cleanup: A Revolution in Solid Waste Management

Tiwari, Tanuja and ., Pallavi (2025) The AI-powered Cleanup: A Revolution in Solid Waste Management. International Journal of Environment and Climate Change, 15 (3). pp. 481-490. ISSN 2581-8627

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Abstract

Managing solid waste is a critical global issue that demands innovative strategies to enhance efficiency, sustainability, and environmental impact. Waste generation varies across sectors and regions, both in quantity and composition, making its management a critical environmental issue. The escalating decline of ecological quality directs the scientific community toward analyzing and optimizing waste management strategies. Artificial Intelligence (AI) has appeared to bring a revolution in this area by improving the processes of waste collection, segregation, recycling, and disposal. Various models and algorithms have been explored and evaluated for their potential to lead to more sustainable solid waste management (SWM) practices. AI-powered systems leverage data analytics, computer vision, machine learning, and automation to reduce landfill problems, lower operational costs, and support the circular economy. Advanced ML technologies, like deep learning and predictive analytics models, are being utilized for route optimization to ensure timely service delivery and adjust collection schedules accordingly. Smart bin systems equipped with sensors, IoT, and machine learning algorithms are enhancing waste collection and disposal efficiency. AI-generated predictive models significantly aid in waste management planning to adapt to changing waste generation patterns. Technologies like GPS and volumetric sensors, provide an encouraging solution to enhance the efficiency of waste collection systems, and waste-sorting robots can greatly improve the accuracy of waste segregation. Sensor-based waste monitoring tracks the amount of generated waste and identifies its sources in a given area. AI-powered surveillance cameras and drones can promptly detect illegal dumping, enabling authorities to respond swiftly. Thus, SWM can be strengthened by utilizing AI technologies in intelligent waste sorting, recycling, and disposal, leading to more sustainable practices. However, despite the efficiency of AI in supporting SWM systems, high cost, inconsistent data quality, traditional mindset, operational difficulties, etc., pose a challenge to their widespread adoption. There is still a notable gap in its practical application and comprehensive evaluation. To bridge this gap, targeted research on cost-effective solutions and real-world pilot projects is crucial, coupled with collaboration among technology developers, policymakers, and waste management professionals. This paper explores how AI can revolutionize waste management, leading to more efficient strategies and a cleaner future.

Item Type: Article
Subjects: AP Academic Press > Geological Science
Depositing User: Unnamed user with email support@apacademicpress.com
Date Deposited: 03 Apr 2025 09:34
Last Modified: 03 Apr 2025 09:34
URI: http://library.go4subs.com/id/eprint/2116

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