REFERENCES
1. Zhang X, Ao X, Cai W, Jiang Z, Zhang H. A sustainability evaluation method integrating the energy, economic and environment in remanufacturing systems. J Clean Prod 2019;239:118100.
2. Sarkar B, Ullah M, Sarkar M. Environmental and economic sustainability through innovative green products by remanufacturing. J Clean Prod 2022;332:129813.
3. Kernbaum S, Heyer S, Chiotellis S, Seliger G. Process planning for IT-equipment remanufacturing. CIRP J Manuf Sci Technol 2009;2:13-20.
4. Li J, Xie X, Chen G, et al. Analysis and application on technical evaluation model of remanufacturing for auto parts. Mach Design Res 2016;32:52-4. Available from: https://caod.oriprobe.com/articles/47641719/Analysis_and_Application_on_Technical_Evaluation_M.htm. [Last accessed on 23 Apr 2024]
5. Ramírez FJ, Castellani M, Xu W. Autonomous remanufacturing. Int J Adv Manuf Technol 2023;124:2971-2.
6. Wu CH, Wu HH. Competitive remanufacturing strategy and take-back decision with OEM remanufacturing. Comput Ind Eng 2016;98:149-63.
7. Yanıkoğlu İ, Denizel M. The value of quality grading in remanufacturing under quality level uncertainty. Int J Prod Res 2021;59:839-59.
8. Du Y, Zheng Y, Wu G, Tang Y. Decision-making method of heavy-duty machine tool remanufacturing based on AHP-entropy weight and extension theory. J Clean Prod 2020;252:119607.
9. Shi J, Li T, Liu Z. A three-dimensional method for evaluating the remanufacturability of used engines. Int J Sustain Manuf 2015;3:363-88.
10. Li C, Li C, Cao H, Yi Q. Uncertain remanufacturing process routings model for used components based on GERT network. Comput Integr Manuf Syst 2012;18:298-305. (in Chinese).
11. Peng S, Li T, Li M, et al. An integrated decision model of restoring technologies selection for engine remanufacturing practice. J Clean Prod 2019;206:598-610.
12. Zhang X, Zhang S, Zhang L, Xue J, Sa R, Liu H. Identification of product’s design characteristics for remanufacturing using failure modes feedback and quality function deployment. J Clean Prod 2019;239:117967.
13. Ke C, Jiang Z, Zhu S, Wang Y. An integrated design method for remanufacturing process based on performance demand. Int J Adv Manuf Technol 2022;118:849-63.
14. Shahbazi S, Johansen K, Sundin E. Product design for automated remanufacturing - a case study of electric and electronic equipment in sweden. Sustainability 2021;13:9039.
15. Boorsma N, Balkenende R, Bakker C, Tsui T, Peck D. Incorporating design for remanufacturing in the early design stage: a design management perspective. Jnl Remanufactur 2021;11:25-48.
16. Tant KMM, Mulholland AJ, Curtis A, Ijomah WL. Design-for-testing for improved remanufacturability. J Remanuf 2019;9:61-72.
17. Wang Q, Li B, Chen B, Wang Z, Liu W, Cheng Y. Impact of product design on remanufacturing under environmental legislation. Comput Ind Eng 2022;165:107889.
18. Ke C, Pan X, Wan P, Jiang Z, Zhao J. An integrated design method for used product remanufacturing scheme considering carbon emission. Sustain Prod Consump 2023;41:348-61.
19. Dey BK, Datta A, Sarkar B. Effectiveness of carbon policies and multi-period delay in payments in a global supply chain under remanufacturing consideration. J Clean Prod 2023;402:136539.
20. Yang X, Cao H, Liu H, Deng Q. Construct method of predicting satisfaction model of customer requirements based on product technical characteristics. J Manuf Technol Manag 2012;25:201-12.
21. Johnson CN. Best of back to basics: QFD explained. Qual Prog 2016;49:40. Available from: https://asq.org/quality-progress/articles/best-of-back-to-basics-qfd-explained?id=5f52b777dc954361a63b37e5f1790447. [Last accessed on 23 Apr 2024].
22. Kirgizov UA, Kwak C. Quantification and integration of Kano’s model into QFD for customer-focused product design. Qual Technol Quant Manag 2022;19:95-112.
23. Wu Y, Ho CC. Integration of green quality function deployment and fuzzy theory: a case study on green mobile phone design. J Clean Prod 2015;108:271-80.
24. Zhou J, Liu L, Sun L, Xiao F. A multi-criteria decision-making method for hesitant fuzzy linguistic term set based on the cloud model and evidence theory. J Intell Fuzzy Syst 2019;36:1797-808.
25. Wang L, Huang H, Chai Y. Choosing multi-issue negotiating object based on trust and K-armed bandit problem. J Softw 2006;17:2537-46 (in Chinese). Available from: https://jos.org.cn/josen/article/pdf/20061213.[Last accessed on 8 May 2024]
26. Al-shami TM, Mhemdi A. Generalized frame for orthopair fuzzy sets: (m,n)-fuzzy sets and their applications to multi-criteria decision-making methods. Information 2023;14:56.
27. Maputi ES, Arora R, Pham D. Gear concept selection procedure using fuzzy QFD, AHP and tacit knowledge. Cogent Eng 2020;7:1802816.
28. Yazdani M, Wang ZX, Chan FTS. A decision support model based on the combined structure of DEMATEL, QFD and fuzzy values. Soft Comput 2020;24:12449-68.
29. Wang H, Fang Z, Wang D, Liu S. An integrated fuzzy QFD and grey decision-making approach for supply chain collaborative quality design of large complex products. Comput Ind Eng 2020;140:106212.
30. Yazdani M, Kahraman C, Zarate P, Onar SC. A fuzzy multi attribute decision framework with integration of QFD and grey relational analysis. Expert Syst Appl 2019;115:474-85.
31. Zafar S, Alamgir Z, Rehman MH. An effective blockchain evaluation system based on entropy-CRITIC weight method and MCDM techniques. Peer Peer Netw Appl 2021;14:3110-23.
32. Wang C, Le TQ, Chang K, Dang T. Measuring road transport sustainability using MCDM-based entropy objective weighting method. Symmetry 2022;14:1033.
33. Midrar T, Khan S, Abdullah S, Botmart T. Entropy based extended TOPOSIS method for MCDM problem with fuzzy credibility numbers. AIMS Math 2022;7:17286-312.
34. Rogulj K, Kilić Pamuković J, Ivić M. Hybrid MCDM based on VIKOR and cross entropy under rough neutrosophic set theory. Mathematics 2021;9:1334.
36. Deschênes L, Lyklema J. Entropy studies in interface science: an ageless tool. Curr Opin Colloid Interface Sci 2019;44:220-4.
39. Vapnik VN. Statistical learning theory. New York: Wiley; 1998. Available from: https://www.wiley.com/en-us/Statistical+Learning+Theory-p-9780471030034. [Last accessed on 23 Apr 2024].
40. Xiao Y, Li H. Improvement on judgement matrix based on triangle fuzzy number. Fuzzy Syst Math 2003;17:59-64. (in Chinese) Available from: http://en.cnki.com.cn/Article_en/CJFDTOTAL-MUTE200302011.htm.[Last accessed on 26 Apr 2024].