Extracting compact fuzzy rules for nonlinear system modeling using subtractive clustering,GA and unscented filter |
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Authors: | M. Eftekhari S.D. Katebi |
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Affiliation: | Computer Science and Engineering Department, School of Engineering, Shiraz University, Shiraz, Iran |
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Abstract: | This paper presents a two stage procedure for building optimal fuzzy model from data for nonlinear dynamical systems. Both stages are embedded into Genetic Algorithm (GA) and in the first stage emphasis is placed on structural optimization by assigning a suitable fitness to each individual member of population in a canonical GA. These individuals represent coded information about the structure of the model (number of antecedents and rules). This information is consequently utilized by subtractive clustering to partition the input space and construct a compact fuzzy rule base. In the second stage, Unscented Filter (UF) is employed for optimization of model parameters, that is, parameters of the input–output Membership Functions (MFs). |
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Keywords: | Evolutionary algorithms Unscented filter Fuzzy identification |
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