Takeshi FuruhashiS. MatsushitaHiroaki Tsutsui
Fuzzy modeling is one of the promising methods for describing nonlinear systems. The determination of the antecedent structure of the fuzzy model, i.e. input variables and the number of membership functions for the inputs, has been one of the most important problems of fuzzy modeling. The authors propose a hierarchical fuzzy modeling method using fuzzy neural networks (FNN) and a genetic algorithm (GA). This method can identify fuzzy models of nonlinear objects with strong nonlinearities. The disadvantage of this method is that the training of the FNN is time consuming. This paper presents a quick method for rough search for proper structures in the antecedent of fuzzy models. The fine tuning of the acquired rough model is done by the FNNs. This modeling method is quite efficient to identify precise fuzzy models of systems with strong nonlinearities. A simulation is done to show the effectiveness of the proposed method.
Rafik Aziz AlievB.G. GuirimovBijan FazlollahiRashad Rafik AlievR.R. AlievR.R. Aliev
Shin‐ichi HorikawaTakeshi FuruhashiY. Uchikawa
S. A. JafariSyamsiah MashohorMohammad Jalali Varnamkhasti