Abstract
This paper brings forward a kind of adaptive neural-sliding model control schemes for uncertain robot trajectory tracking. The first scheme consists of a PD feedback and a dynamic compensator which is composed of RBF neural network and variable structure. The adaptive laws of Network weights are based on Lyapunov function method. This controller can guarantee stability of closed-loop system and asymptotic convergence of tracking errors.
Publisher
Trans Tech Publications, Ltd.
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