Observer-based direct adaptive fuzzy-neural control for nonaffine nonlinear systems
No Thumbnail Available
Date
2005-07-01
Authors
Y.-G. Leu
W.-Y. Wang
T.-T. Lee
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE Computational Intelligence Society
Abstract
In this paper, an observer-based direct adaptive fuzzy-neural control scheme is presented for nonaffine nonlinear systems in the presence of unknown structure of nonlinearities. A
direct adaptive fuzzy-neural controller and a class of generalized
nonlinear systems, which are called nonaffine nonlinear systems,
are instead of the indirect one and affine nonlinear systems given
by Leu et al. By using implicit function theorem and Taylor series
expansion, the observer-based control law and the weight update
law of the fuzzy-neural controller are derived for the nonaffine
nonlinear systems. Based on strictly-positive-real (SPR) Lyapunov
theory, the stability of the closed-loop system can be verified.
Moreover, the overall adaptive scheme guarantees that all signals
involved are bounded and the output of the closed-loop system will
asymptotically track the desired output trajectory. To demonstrate
the effectiveness of the proposed method, simulation results are
illustrated in this paper