Title |
Fuzzy Model Identification using a mGA Hybrid Schemes |
Authors |
주영훈(Ju, Yeong-Hun) ; 이연우(Lee, Yeon-U) ; 박진배(Park, Jin-Bae) |
Keywords |
Fuzzy inference system ; Genetic algorithm ; messy GA ; TS fuzzy model ; Gradient descent method |
Abstract |
This paper presents a systematic approach to the input-output data-based fuzzy modeling for the complex and uncertain nonlinear systems, in which the conventional mathematical models may fail to give the satisfying results. To do this, we propose a new method that can yield a successful fuzzy model using a mGA hybrid schemes with a fine-tuning method. We also propose a new coding method fo chromosome for applying the mGA to the structure and parameter identifications of fuzzy model simultaneously. During mGA search, multi-purpose fitness function with a penalty process is proposed and adapted to guarantee the accurate and valid fuzzy modes. This coding scheme can effectively represent the zero-order Takagi-Sugeno fuzzy model. The proposed mGA hybrid schemes can coarsely optimize the structure and the parameters of the fuzzy inference system, and then fine tune the identified fuzzy model by using the gradient descent method. In order to demonstrate the superiority and efficiency of the proposed scheme, we finally show its applications to two nonlinear systems. |