In this paper, a method based on genetic algorithms is proposed to automatically extract fuzzy rules to identify a system where only its input-output data are available. This method can determine a fuzzy system with fewer fuzzy rules as well as the antecedent and consequent parameters of the fuzzy r
Fuzzy modeling by hierarchically built fuzzy rule bases
✍ Scribed by Oscar Cordón; Francisco Herrera; Igor Zwir
- Publisher
- Elsevier Science
- Year
- 2001
- Tongue
- English
- Weight
- 382 KB
- Volume
- 27
- Category
- Article
- ISSN
- 0888-613X
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✦ Synopsis
Although Mamdani-type fuzzy rule-based systems (FRBSs) became successfully performing clearly interpretable fuzzy models, they still have some lacks related to their accuracy when solving complex problems. A variant of these kinds of systems, which allows to perform a more accurate model representation, are the so-called approximate FRBSs. This alternative representation still cannot avoid the problems concerning the fuzzy rule learning methods, which as prototype identi®cation algorithms, try to extract those approximate rules from the object problem space. In this paper we deal with the previous problems, viewing fuzzy models as a class of local modeling approaches which attempt to solve a complex problem by decomposing it into a number of simpler subproblems with smooth transitions between them. In order to develop this class of models, we ®rst propose a common framework to characterize available approximate fuzzy rule learning methods, and later we modify it by introducing a fuzzy rule base hierarchical learning methodology (FRB-HLM). This methodology is based on the extension of the simple building process of the fuzzy rule base of FRBSs in a hierarchical way, in order to make the system more accurate. This ¯exibilization will allow us to have fuzzy rules with dierent degrees of speci®city, and thus to improve the modeling of those problem subspaces where the former models have bad performance, as a re®nement. This approach allows us not to have to assume a ®xed number of rules and to integrate the good local behavior of the hierarchical model with the global model, ensuring a good global performance.
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