Genetic algorithm-based fuzzy goal programming for class of chance-constrained programming problems

Genetic algorithm-based fuzzy goal programming for class of chance-constrained programming problems

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Article ID: iaor20105509
Volume: 87
Issue: 4
Start Page Number: 733
End Page Number: 742
Publication Date: Mar 2010
Journal: International Journal of Computer Mathematics
Authors: ,
Keywords: programming: goal, heuristics: genetic algorithms
Abstract:

This paper presents a procedure for solving a multiobjective chance-constrained programming problem. Random variables appearing on both sides of the chance constraint are considered as discrete random variables with a known probability distribution. The literature does not contain any deterministic equivalent for solving this type of problem. Therefore, classical multiobjective programming techniques are not directly applicable. In this paper, we use a stochastic simulation technique to handle randomness in chance constraints. A fuzzy goal programming formulation is developed by using a stochastic simulation-based genetic algorithm. The most satisfactory solution is obtained from the highest membership value of each of the membership goals. Two numerical examples demonstrate the feasibility of the proposed approach.

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