Evolutionary Techniques for Fuzzy Optimization Problems
نویسنده
چکیده
In this paper we deal with mathematical programming problems with fuzzy constraints. Fuzzy solutions are obtained by means of a parametric approach in conjuntion with evolutionary techniques. Some important characteristics of the evolutionary algorithm are a natural representation of solutions , a problem-independent technique for constraint satisfaction, tournament selection, complete generational replacement , and elitism strategy. A numerical example is shown for the sake of ilustra-tion.
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