GA optimization of OBF TS fuzzy models with linear and non linear local models

Medieros, Anderson V., Amaral, Wagner C., and Campello, Ricardo J.G.B. (2006) GA optimization of OBF TS fuzzy models with linear and non linear local models. In: Proceedings of the Ninth Brazilian Symposium on Neural Networks. pp. 66-71. From: SBRN06: Ninth Brazilian Symposium on Neural Networks, 23-27 October 2006, Ribeirão Preto, Brazil.

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Abstract

OBF (Orthonormal Basis Function) Fuzzy models have shown to be a promising approach to the areas of nonlinear system identification and control since they exhibit several advantages over those dynamic model topologies usually adopted in the literature. Although encouraging application results have been obtained, no automatic procedure had yet been developed to optimize the design parameters of these models. This paper elaborates on the use of a genetic algorithm (GA) especially designed for this task, in which a fitness function based on the Akaike information criterion plays a key role by considering both model accuracy and parsimony aspects. The use of linear (actually affine) and nonlinear local models is also investigated. The proposed methodology is evaluated in the modeling of a real nonlinear magnetic levitation system.

Item ID: 47657
Item Type: Conference Item (Research - E1)
Date Deposited: 17 Jul 2017 03:54
FoR Codes: 01 MATHEMATICAL SCIENCES > 0102 Applied Mathematics > 010299 Applied Mathematics not elsewhere classified @ 100%
SEO Codes: 97 EXPANDING KNOWLEDGE > 970101 Expanding Knowledge in the Mathematical Sciences @ 100%
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