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Redundant fuzzy rules exclusion by genetic algorithms
Authors:A Lekova  L Mikhailov  D Boyadjiev  A Nabout
Institution:

a Institute of Control and System Research, Bulgarian Academy of Sciences, Acad. G. Bonchev str., bl. 107, P.O. Box 79, 1113, Sofia, Bulgaria

b Wuppertal University, Department of Automatic Control and Technical Cybernetics, Fuhlrotstrasse 10, 42097, Wuppertal, Germany

Abstract:A genetic-algorithm-based method for exclusion of the potential redundant if-then fuzzy rules that have been extracted from numerical input-output data is proposed. The main idea is the input-space separation into activation rectangles, corresponding to certain output intervals. The generation of fuzzy rules and the membership functions are based on these activation rectangles and appropriate fuzzy rules inference mechanism is proposed. As the method usually produces too many rules, it is necessary to exclude the potential redundant if-then rules. The concept for varying the family of sensitivity parameters, defining the overlapping of the fuzzy regions is proposed. The genetic algorithms are used to resolve the following combinatorial optimization problem: the generation of families of sensitivity parameters. In this way the potential redundant if-then fuzzy rules are excluded.

The method formalizes the synthesis of the fuzzy system and could be used for function approximation, classification and control purposes. An illustrative example for implementation of the method for traffic fuzzy control is given.

Keywords:Fuzzy sets  Measure of fuzziness  Empirical research  Control theory  Genetic algorithms
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