Solving the multiobjective possibilistic linear programming problem
✍ Scribed by M. Arenas Parra; A. Bilbao Terol; M.V. Rodrı́guez Urı́a
- Publisher
- Elsevier Science
- Year
- 1999
- Tongue
- English
- Weight
- 136 KB
- Volume
- 117
- Category
- Article
- ISSN
- 0377-2217
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✦ Synopsis
In conventional multiobjective decision making problems, the estimation of the parameters of the model is often a problematic task. Normally they are either given by the decision maker (DM), who has imprecise information and/or expresses his considerations subjectively, or by statistical inference from past data and their stability is doubtful. Therefore, it is reasonable to construct a model re¯ecting imprecise data or ambiguity in terms of fuzzy sets for which a lot of fuzzy approaches to multiobjective programming have been developed. In this paper we propose a method to solve a multiobjective linear programming problem involving fuzzy parameters (FP-MOLP), whose possibility distributions are given by fuzzy numbers, estimated from the information provided by the DM. As the parameters, intervening in the model, are fuzzy the solutions will be also fuzzy. We propose a new Pareto Optimal Solution concept for fuzzy multiobjective programming problems. It is based on the extension principle and the joint possibility distribution of the fuzzy parameters of the problem. The method relies on a-cuts of the fuzzy solution to generate its possibility distributions. These ideas are illustrated with a numerical example.
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