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MANIPULATION

Adaptive Neural Impedance Control of a Robotic Manipulator With Input Saturation

Wei He, Yiting Dong, Changyin Sun

Year
2015
Citations
787

Abstract

In this paper, adaptive impedance control is developed for an n-link robotic manipulator with input saturation by employing neural networks. Both uncertainties and input saturation are considered in the tracking control design. In order to approximate the system uncertainties, we introduce a radial basis function neural network controller, and the input saturation is handled by designing an auxiliary system. By using Lyapunov's method, we design adaptive neural impedance controllers. Both state and output feedbacks are constructed. To verify the proposed control, extensive simulations are conducted.

Keywords

Control theory (sociology)Artificial neural networkAdaptive controlLyapunov functionSaturation (graph theory)Electrical impedanceControl engineeringComputer scienceImpedance controlController (irrigation)

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