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Robust Tracking Control of Space Robot via Neural Network

Baomin Feng, Guangcheng Ma, Weinan Xie, Changhong Wang

Year
2006
Citations
6

Abstract

This paper proposes a new robust control method for space robot by using neural network. A radial-basis-function (RBF) neural network is included to compensate for the system uncertainties. The parameters of the neural network are adapted on-line according to derived learning algorithms using Lyapunov method. Simulation results of a two-link planar space robot verify the validity of the proposed controller in the presence of uncertainties.

Keywords

Artificial neural networkComputer scienceRobotRadial basis functionControl theory (sociology)Lyapunov functionTracking (education)Artificial intelligenceController (irrigation)Control (management)

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