Predicting the quantity of recycled end-of-life products using a hybrid SVR-based model
Xia, H; Han, J; Milisavljevic-Syed, J
Date: 2023
Conference paper
Publisher
American Society of Mechanical Engineers
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Abstract
End-of-life product recycling is crucial for achieving
sustainability in circular supply chains and improving resource
utilization. Forecasting the quantity of recycled end-of-life
products is essential for planning and managing reverse supply
chain operations. Decision-makers and practitioners can
benefit from this information ...
End-of-life product recycling is crucial for achieving
sustainability in circular supply chains and improving resource
utilization. Forecasting the quantity of recycled end-of-life
products is essential for planning and managing reverse supply
chain operations. Decision-makers and practitioners can
benefit from this information when designing reverse logistics
networks, managing tactical disposal, planning capacity, and
operational production. To address the challenge of small
sample data with multiple factors influencing the recycling
number, and to deal with the randomness and nonlinearity of
the recycling quantity, a hybrid predictive model has been
developed in this research. The model is based on k-nearest
neighbor mega-trend dif usion (KNNMTD), particle swarm
optimization (PSO), and support vector regression (SVR) using
the data from the field of end-of-life vehicles as a case study. Unlike existing literature, this research incorporates the data
augmentation method to build an SVR-based model for end-oflife product recycling. The study shows that developing the
predictive model using artificial virtual samples supported by
the KNNMTD method is feasible, the PSO algorithm ef ectively
brings strong approximation ability to the SVR-based model, and the KNNMTD-PSO-SVR model perform well in predicting
the recycled end-of-life products quantity. These research
findings could be considered a fundamental component of the
smart system for circular supply chains, which will enable the
smart platform to achieve supply chain sustainability through
resource allocation and regional industry deployment
Management
Faculty of Environment, Science and Economy
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