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Robust backstepping control of nonlinear systems using neural networks

Chiman Kwan, Frank L. Lewis

Year
2000
Citations
453

Abstract

A controller is proposed for the robust backstepping control of a class of general nonlinear systems using neural networks (NNs). A tuning scheme is proposed which can guarantee the boundedness of tracking error and weight updates. Compared with adaptive backstepping control schemes, we do not require the unknown parameters to be linear parametrizable. No regression matrices are needed, so no preliminary dynamical analysis is needed. One salient feature of our NN approach is that there is no need for the off-line learning phase. Three nonlinear systems, including a one-link robot, an induction motor, and a rigid-link flexible-joint robot, were used to demonstrate the effectiveness of the proposed scheme.

Keywords

BacksteppingControl theory (sociology)Artificial neural networkComputer scienceNonlinear systemController (irrigation)Scheme (mathematics)Tracking errorControl engineeringAdaptive control

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