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An adaptive neuro-fuzzy tracking control for multi-input nonlinear dynamic systems

โœ Scribed by S.P. Moustakidis; G.A. Rovithakis; J.B. Theocharis


Publisher
Elsevier Science
Year
2008
Tongue
English
Weight
613 KB
Volume
44
Category
Article
ISSN
0005-1098

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โœฆ Synopsis


An adaptive neuro-fuzzy control design is suggested in this paper, for tracking of nonlinear affine in the control dynamic systems with unknown nonlinearities. The plant is described by a Takagi-Sugeno (T-S) fuzzy model, where the local submodels are realized through nonlinear dynamical input-output mappings. Our approach relies upon the effective approximation of certain terms that involve the derivative of the Lyapunov function and the unknown system nonlinearities. The above task is achieved locally, using linear in the weights neural networks. A novel resetting scheme is proposed that assures validity of the control input. Stability analysis provides the control law and the adaptation rules for the network weights, assuring uniform ultimate boundedness of the tracking and the signals appearing in the closed-loop configuration. Illustrative simulations highlight the approach.


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