Title of article :
DISTURBANCE REJECTION IN NONLINEAR SYSTEMS USING NEURO-FUZZY MODEL
Author/Authors :
AOUICHE, A , CHAFAA, K , BOUTTOUT, F
Abstract :
The problem of disturbance rejection in the control of nonlinear
systems with additive disturbance generated by some unforced nonlinear systems,
was formulated and solved by Mukhopadhyay and Narendra, they applied
the idea of increasing the order of the system, using neural networks the model
of multilayer perceptron on several systems of varying complexity, so the objective
of this work is using the same idea with two other recent methods fast
and reliable ; fuzzy set systems and hybrid neuro-fuzzy systems respectively
to compute the control law which minimizes the effect of the disturbance at
the output of nonlinear systems. The application of the methods previously
cited in form of results is presented to determine the identification model and
to provide theoretical justification to existence a solution of disturbance rejection.
Our better results with fuzzy systems and neuro-fuzzy systems are
presented and discussed in detail in this paper with several systems of increasing
complexity.
Keywords :
Nonlinear systems , Disturbance rejection , Fuzzy set systems , Identification of dynamical systems , Neuro - fuzzy systems
Journal title :
Astroparticle Physics