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Adaptive Neural Network-Based Fixed-Time Control for Trajectory Tracking of Robotic Systems

Zhuang Liu, Ouyang Zhang, Yabin Gao, Yue Zhao, Yizhuo Sun, Jianxing Liu

Year
2022
Citations
76

Abstract

This brief investigates the problem of fixed-time trajectory tracking control of uncertain robotic systems. Firstly, an adaptive radial basis function neural network is designed to estimate the model uncertainties and viscous frictions in robotic systems. Secondly, a segmented terminal sliding mode control (TSMC) variable is adopted to alleviate the singularity problem. To improve the tracking performance, a new second-order fixed-time reaching law is designed. Then, in order to make the tracking errors converge to a small neighborhood of the origin in a fixed-time independent of the initial state, a novel fixed-time non-singular TSMC based on the adaptive neural network is proposed. Finally, the experimental results demonstrate the effectiveness and advantage of the proposed control method.

Keywords

Control theory (sociology)TrajectoryArtificial neural networkSingularityTracking (education)Computer scienceRadial basis functionAdaptive controlControl (management)Artificial intelligence

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