A Novel Identification Method for Generalized T‐S Fuzzy Systems
Mathematical Problems in Engineering 2012(1)
Article 2012 English
Authors
LH
Ling Huang
KW
Kai Wang
PS
Peng Shi
Abstract
1 min read
In order to approximate any nonlinear system, not just affine nonlinear systems, generalized T‐S fuzzy systems, where the control variables and the state variables, are all premise variables are introduced in the paper. Firstly, fuzzy spaces and rules were determined by using ant colony algorithm. Secondly, the state‐space model parameters are identified by using genetic algorithm. The simulation results show the effectiveness of the proposed algorithm.
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