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Adaptive PD Control Based on RBF Neural Network for a Wire‐Driven Parallel Robot and Prototype Experiments

Yuqi Wang, Qi Lin, Xiaoguang Wang, Fangui Zhou

Year
2019
Citations
14
Access
Open access

Abstract

An adaptive PD control scheme is proposed for the support system of a wire‐driven parallel robot (WDPR) used in a wind tunnel test. The control scheme combines a PD control and an adaptive control based on a radial basis function (RBF) neural network. The PD control is used to track the trajectory of the end effector of the WDPR. The experimental environment, the external disturbances, and other factors result in uncertainties of some parameters for the WDPR; therefore, the RBF neural network control method is used to approximate the parameters. An adaptive control algorithm is developed to reduce the approximation error and improve the robustness and control precision of the WDPR. It is demonstrated that the closed‐loop system is stable based on the Lyapunov stability theory. The simulation results show that the proposed control scheme results in a good performance of the WDPR. The experimental results of the prototype experiments show that the WDPR operates on the desired trajectory; the proposed control method is correct and effective, and the experimental error is small and meets the requirements.

Keywords

Control theory (sociology)Artificial neural networkRobustness (evolution)Adaptive controlComputer scienceRadial basis functionLyapunov stabilityTrajectoryLyapunov functionControl system

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