A fuzzy-Bayesian model for supplier selection |
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Authors: | Luciano Ferreira Denis Borenstein |
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Affiliation: | 1. Science and Technology School, Federal University of Rio Grande do Norte, Brazil;2. Management School, Federal University of Rio Grande do Sul, Brazil;1. Department of Business and Management, Universidad Europea de Madrid, 28670, Madrid, Spain;2. Department of Mechanical Engineering, MCKV Institute of Engineering, West Bengal, India;3. Research Institute of Smart Building Technologies, Faculty of Civil Engineering, Vilnius Gediminas Technical University, Saul?tekio al. 11, LT-1022, Vilnius, Lithuania;4. Technology Foresight Group, Department of Management, Science and Technology, Amirkabir University of Technology (Tehran Polytechnic), P.O. Box 1585-4413, Tehran, Iran;1. Department of Manufacturing & Industrial Engineering, Universiti Teknologi Malaysia, Skudai 81310, Malaysia;2. Enterprise research centre,University of Limerick,Limerick, Ireland;3. Faculty ofManagement and Human Resource Development, Universiti Teknologi Malaysia, Skudai 81310, Malaysia |
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Abstract: | The selection supplier problem has received a lot of attention from academics in recent years. Several models were developed in the literature, combining consolidated operations research and artificial intelligence methods and techniques. However, the tools presented in the literature neglected learning and adaptation, since this decision making process is approached as a static one rather than a highly dynamic process. Delays, lack of capacity, quality related issues are common examples of dynamic aspects that have a direct impact on long-term relationships with suppliers. This paper presents a novel method based on the integration of influence diagram and fuzzy logic to rank and evaluate suppliers. The model was developed to support managers in exploring the strengths and weaknesses of each alternative, to assist the setting of priorities between conflicting criteria, to study the sensitivity of the behavior of alternatives to changes in underlying decision situations, and finally to identify a preferred course of action. To be effective, the computational implementation of the method was embedded into an information system that includes several functionalities such as supply chain simulation and supplier’s databases. A case study in the biodiesel supply chain illustrates the effectiveness of the developed method. |
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