An enhanced fuzzy IDOCRIW-COCOSO multi-attribute decision making algorithm for decisive electric vehicle battery recycling method
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2024Author
Parthasarathy, Thirumalai NallasivanNarayanamoorthy, Samayan
Thilagasree, Chakkarapani Sumathi
Marimuthu, Palanivel Rubavathi
Salahshour, Soheil
Ferrara, Massimiliano
Ahmadian, Ali
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Parthasarathy, T. N., Narayanamoorthy, S., Thilagasree, C. S., Marimuthu, P. R., Salahshour, S., Ferrara, M., & Ahmadian, A. (2024). An enhanced fuzzy IDOCRIW-COCOSO multi-attribute decision making algorithm for decisive electric vehicle battery recycling method. Results in Engineering, 102272.Abstract
An adaptation to electric mobility quickens waste management tasks for recyclers to end-to-end processing of marketed electric vehicle batteries. Especially lithium-ion batteries play a prominent role in electrifying the world for e-transport technology innovation. This research offers a multi-attribute decision-making (MADM) structure for finding the best performance e-vehicle recycling techniques. The structured algorithm combines an advanced stratified MADM strategy with e-transportation recycling techniques. The optimal algorithm evaluates the results of qualitative attributes and alternatives using a weighted-ranking MADM approach. The importance of attributes is calculated using a blending of dual objective-weighted approaches: entropy and CILOS methods, viz., the aggregated IDOCRIW approach. The ranking of alternatives is determined through the COCOSO method in a hesitation environment. The q-rung orthopair picture fuzzy set (q-ROPFS) is used to cope with uncertainty and vagueness in decision analysis. The feasibility and robustness of the suggested algorithm were validated through different MADM methods and by altering crucial ranking-dependent parameters in the problem.