Knowledge Agora



Similar Articles

Title A New Decision Framework of Online Multi-Attribute Reverse Auctions for Green Supplier Selection under Mixed Uncertainty
ID_Doc 69403
Authors Wang, SL; Ji, Y; Wahab, MIM; Xu, D; Zhou, CB
Title A New Decision Framework of Online Multi-Attribute Reverse Auctions for Green Supplier Selection under Mixed Uncertainty
Year 2022
Published Sustainability, 14.0, 24
Abstract In order to realize the "dual carbon" goal proposed for the world and to seek the low-carbon and sustainable development of the economy and society, the green supply chain management problem faced by Chinese enterprises and governments is particularly important. At the same time, how to quickly and efficiently select the suitable green supplier is the most basic and critical link in green supply chain management, as well as an important issue that Chinese government and enterprises must face in the process of green material procurement. In addition, there are various uncertainties emerging in the current market environment that hinder the green suppliers and the buyer to make the efficient decisions. Therefore, in order to find a more suitable and efficient method for green supplier selection, from the standpoint of the buyer, a new decision framework of online multi-sourcing, multi-attribute reverse auction (OMSMARA), which effectively improves the procurement efficiency and reduces procurement costs and risks, is proposed under the mixed uncertainty. Specifically, the main innovation work includes three aspects: Firstly, the trapezoidal fuzzy numbers are applied to describe the uncertain bidding attribute values by the green suppliers. Secondly, the hesitant fuzzy sets theory is introduced to characterize the buyer's satisfaction degrees of the bidding evaluation attribute information, and the attribute weights are determined by using the hesitant fuzzy maximizing deviation method. Thirdly, a fuzzy multi-objective mixed integer programming model is proposed to solve the green supplier selection and quantity allocation question in OMSMARA. A numerical example is given to demonstrate the feasibility and effectiveness of the proposed decision framework, and the sensitivity analysis and comparison analysis further show the robustness and reliability of the proposed solution method.
PDF https://www.mdpi.com/2071-1050/14/24/16879/pdf?version=1671671542

Similar Articles

ID Score Article
73728 Lo, HW; Liou, JJH; Wang, HS; Tsai, YS An integrated model for solving problems in green supplier selection and order allocation(2018)
16668 Feng, JH; Gong, ZR Integrated linguistic entropy weight method and multi-objective programming model for supplier selection and order allocation in a circular economy: A case study(2020)
22528 Ali, H; Zhang, JW; Shoaib, M A hybrid approach for sustainable-circular supplier selection based on industry 4.0 framework to make the supply chain smart and eco-friendly(2024)Environment Development And Sustainability, 26.0, 9
75267 Saputro, TE; Rosiani, TY; Mubin, A; Dewi, SK; Baroto, T Green supplier selection under supply risks using novel integrated fuzzy multi-criteria decision making techniques(2024)
75252 Wang, CN; Nguyen, TL; Dang, HT Two-Stage Fuzzy MCDM for Green Supplier Selection in Steel Industry(2022)Intelligent Automation And Soft Computing, 33, 2
17013 Liu, C; Rani, P; Pachori, K Sustainable circular supplier selection and evaluation in the manufacturing sector using Pythagorean fuzzy EDAS approach(2022)Journal Of Enterprise Information Management, 35, 4/5
2859 Xie, ZY; Tian, GX; Tao, YC A Multi-Criteria Decision-Making Framework for Sustainable Supplier Selection in the Circular Economy and Industry 4.0 Era(2022)Sustainability, 14, 24
69342 Kara, K; Acar, AZ; Polat, M; Önden, I; Yalcin, GC Developing a hybrid methodology for green-based supplier selection: Application in the automotive industry(2024)
76346 Büyükselçuk, EÇ; Tozan, H; Vayvay, Ö A Multi-Criteria Decision-Making Approach For Greenovative Supplier Selection(2022)International Journal Of Industrial Engineering-Theory Applications And Practice, 29, 2
69140 Javad, MOM; Darvishi, M; Javad, AOM Green supplier selection for the steel industry using BWM and fuzzy TOPSIS: A case study of Khouzestan steel company(2020)
Scroll