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Scientific Article details

Title Plastic Circular Economy Framework using Hybrid Machine Learning and Pinch Analysis
ID_Doc 4995
Authors Chin, HH; Varbanov, PS; You, FQ; Sher, F; Klemes, JJ
Title Plastic Circular Economy Framework using Hybrid Machine Learning and Pinch Analysis
Year 2022
Published
DOI 10.1016/j.resconrec.2022.106387
Abstract The worldwide plastic waste accumulation has posed probably irreversible harm to the environment, and the main dilemma for this global issue is: How to define the waste quality grading system to maximise plastic recyclability? This work reports a machine learning approach to evaluating the recyclability of plastic waste by categorising the quality trends of the contained polymers with auxiliary materials. The result reveals the hierarchical resource quality grades predictors that restrict the mapping of the waste sources to the demands. The Pinch Analysis framework is then applied using the quality clusters to maximise plastic recyclability. The method identifies a Pinch Point - the ideal waste quality level that limits the plastic recycling rate in the system. The novel concept is applied to a problem with different polymer types and properties. The results show the maximum recycling rate for the case study to be 38 % for PET, 100 % for PE and 92 % for PP based on the optimal number of clusters identified. Trends of environmental impacts with different plastic recyclability and footprints of recycled plastic are also compared.
Author Keywords Plastic recycling; Plastic Circular Economy; Machine Learning; Pinch Analysis
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED)
EID WOS:000798121400004
WoS Category Engineering, Environmental; Environmental Sciences
Research Area Engineering; Environmental Sciences & Ecology
PDF https://irep.ntu.ac.uk/id/eprint/46482/1/1553947_Sher.pdf
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