An Economic Optimization Model of an E-Waste Supply Chain Network: Machine Learned Kinetic Modelling for Sustainable Production

被引:3
作者
Debnath, Biswajit [1 ,2 ]
Chattopadhyay, Amit K. [1 ]
Kumar, T. Krishna [3 ]
机构
[1] Aston Univ, Coll Engn & Phys Sci, Aston Ctr Artificial Intelligence Res & Applicat A, Dept Appl Math & Data Sci, Birmingham B4 7ET, England
[2] Jadavpur Univ, Dept Chem Engn, Kolkata 700032, India
[3] Rockville Analyt, Rockville, MD 20850 USA
关键词
supply chain sustainability; e-waste management; sustainable production; machine learning; kinetic modeling; global optimization; ELECTRONIC EQUIPMENT MANAGEMENT; DESIGN; INDIA;
D O I
10.3390/su16156491
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Purpose: E-waste management (EWM) refers to the operation management of discarded electronic devices, a challenge exacerbated due to overindulgent urbanization. The main purpose of this paper is to amalgamate production engineering, statistical methods, mathematical modelling, supported with Machine Learning to develop a dynamic e-waste supply chain model. Method Used: This article presents a multidimensional, cost function-based analysis of the EWM framework structured on three modules including environmental, economic, and social uncertainties in material recovery from an e-waste (MREW) plant, including the production-delivery-utilization process. Each module is ranked using Machine Learning (ML) protocols-Analytical Hierarchical Process (AHP) and combined AHP-Principal Component Analysis (PCA). Findings: This model identifies and probabilistically ranks two key sustainability contributors to the EWM supply chain: energy consumption and carbon dioxide emission. Additionally, the precise time window of 400-600 days from the start of the operation is identified for policy resurrection. Novelty: Ours is a data-intensive model that is founded on sustainable product designing in line with SDG requirements. The combined AHP-PCA consistently outperformed traditional statistical tools, and is the second novelty. Model ratification using real e-waste plant data is the third novelty. Implications: The Machine Learning framework embeds a powerful probabilistic prediction algorithm based on data-based decision making in future e-waste sustained roadmaps.
引用
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页数:23
相关论文
共 65 条
[1]  
[Anonymous], 2019, A New Circular Vision for Electronics: Time for a Global Reboot
[2]  
[Anonymous], 2015, ISO Standard No. 9000:2015)
[3]   Supply chain analysis of e-waste processing plants in developing countries [J].
Baidya, Rahul ;
Debnath, Biswajit ;
Ghosh, Sadhan Kumar ;
Rhee, Seung-Whee .
WASTE MANAGEMENT & RESEARCH, 2020, 38 (02) :173-183
[4]  
Balde C. P., 2024, Global E-waste Monitor 2024
[5]   Prerequisites for a high-level framework to design sustainable plants in the e-waste supply chain [J].
Barletta, Ilaria ;
Johansson, Bjorn ;
Reimers, Johanna ;
Stahre, Johan ;
Berlin, Cecilia .
22ND CIRP CONFERENCE ON LIFE CYCLE ENGINEERING, 2015, 29 :633-638
[6]  
Baryannis G., 2019, Revisiting supply chain risk, P53, DOI DOI 10.1007/978-3-030-03813-7_4
[7]  
Bishop Christopher M., 2006, Pattern recognition and machine learning
[8]  
Ciocoiu Carmen Nadia, 2011, Proceedings of the 5th WSEAS International Conference on Renewable Energy Sources (RES 2011). Proceedings of the 5th WSEAS International Conference on Energy Planning, Energy Saving, Environmental Education (EPESE 2011). Proceedings of the 5th WSEAS International Conference on Waste Management, Water Pollution, Air Pollution, Indoor Climate (WWAI 2011), P233
[9]   E-Waste Supply Chain in Mexico: Challenges and Opportunities for Sustainable Management [J].
Cruz-Sotelo, Samantha E. ;
Ojeda-Benitez, Sara ;
Jauregui Sesma, Jorge ;
Velazquez-Victorica, Karla I. ;
Santillan-Soto, Nestor ;
Rafael Garcia-Cueto, O. ;
Alcantara Concepcion, Victor ;
Alcantara, Camilo .
SUSTAINABILITY, 2017, 9 (04)
[10]  
Debnath B., 2024, Technological Advancement in E-waste Management, P63