Title :
Modified Gath-Geva clustering based linear T-S fuzzy model identification for multi-input multi-output chaotic systems
Author :
Yu-yan, Liu ; Shi-liang, Zhou
Author_Institution :
Sch. of Nucl. Sci. & Eng., North China Electr. Power Univ., Beijing, China
Abstract :
A modified Gath-Geva clustering based linear T-S fuzzy model identification method for multi-input multi-output chaotic systems is proposed. Noise reduction via local projection and derivatives of state variable estimation using Heirmit spline interpolation are performed at first for better data. Then initial linear T-S fuzzy model is derived using modified Gath-Geva clustering, whose rule number is optimized by clustering validation procedure. After clustering, model reduction is implemented using OLS (Orthogonal Least Squares) and modified Fischer´s interclass separability criteria in order to obtain compact and transparent model. Parameters of the reduced fuzzy model are optimized by constraint Levenberg-Marquardt method to improve its precision, while preserving its interpretability. Simulation results show the efficiency of proposed method.
Keywords :
MIMO systems; chaos; fuzzy control; interpolation; nonlinear control systems; pattern clustering; reduced order systems; splines (mathematics); state estimation; Gath-Geva clustering; Heirmit spline interpolation; clustering validation; constraint Levenberg-Marquardt method; linear T-S fuzzy model identification; model reduction; modified Fischer interclass separability criteria; multiinput multioutput chaotic systems; noise reduction; orthogonal least squares; reduced fuzzy model; state variable estimation; Chaos; Computational modeling; Educational institutions; Electronic mail; Integrated circuits; Power systems; Reduced order systems; chaotic system; fuzzy clustering; linear T-S fuzzy model; model reduction;
Conference_Titel :
Control Conference (CCC), 2012 31st Chinese
Conference_Location :
Hefei
Print_ISBN :
978-1-4673-2581-3