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Machine Learning in Reducing E-Waste: A Global Legal Perspective

Machine Learning in Reducing E-Waste: A Global Legal Perspective
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Author(s): Kavya Chandel (Sharda University, India), Soufiane Ouariach (Abdelmalek Essaadi University, Morocco)and Saquib Ahmed (Sharda University, India)
Copyright: 2025
Pages: 22
Source title: Machine Learning and Robotics in Urban Planning and Management
Source Author(s)/Editor(s): Kamalesh Ravesangar (Tunku Abdul Rahman University of Management and Technology, Malaysia), Christian Kaunert (Dublin City University, Ireland & University of South Wales, UK), Bhupinder Singh (Sharda University, India), Sahil Lal (Galgotias University, Greater Noida, India)and Manmeet Kaur Arora (Sharda University, India)
DOI: 10.4018/979-8-3693-9410-6.ch006

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Abstract

E-waste is a waste which is gathered from various sources, Household sector is considered as a biggest source of generation of e-waste. E-waste consists of various components characterized as hazardous and non-hazardous components also contain approximately 1000 substances categorized in this category. E-waste is comprising of ferrous and non-ferrous metals ceramics and other items. When e-waste gets dismantled and continuously processed it jeopardizes the health environment, and surroundings. E-waste is a composition of bio accumulative and toxic substances containing like chromium, mercury, and toxic substances (Arora et al., 2024). Machine learning plays a very important role in regulating e-waste. In context to urban segments, week by week e-waste is calculated through building a prescient model, by building and creating gradient boosting regression tree (GBRT) and neutral network machine learning calculations. By incorporating machine learning, calculations will provide exact accurateness of algorithm. A convolutional neural network was created to bifurcate e-waste into different countries. These categories are as follows: cell phone, remote controller, battery, and light bulb.

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