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Neural Network Adaptive Control of Free Floating Space Robot with Actuator Saturation

Guo Liang Zhang, Ting Lei, Fan Yang, Zhuang Cai

Year
2014
Citations
2

Abstract

This paper proposes an adaptive neural network law for trajectory tracking of a class of free-floating space robot with actuator saturation. Using neural network with global approximation, the control strategy design an on-line real time adaptive learning law to approach the uncertain model and the actuator saturation nonlinearity. The neural network approach errors and outside disturbance can be eliminated by a robust controller.The control strategy need not depend on the model, and can be used under actuator saturation.The control strategy can guarantee the stability of system and the asymptotic convergence of tracking errors based on the Lyapunov’s theory. The simulation results indicate that the proposed strategy can effectively work with actuator saturation.

Keywords

Control theory (sociology)Artificial neural networkActuatorAdaptive controlLyapunov functionNonlinear systemLyapunov stabilityPlantController (irrigation)Robot

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