A predictive control model for master slave robotic manipulator with RBF neural network

被引:0
|
作者
Lei Y. [1 ]
机构
[1] Department of Electronic Information Technology, Jiangmen Polytechnic, Jiangmen
关键词
Approximation errors; Master slave robotic manipulator; Predictive control; Sliding mode controller;
D O I
10.46300/9106.2021.15.68
中图分类号
学科分类号
摘要
In recent years, manipulator control has been widely concerned, and its uncertainty is one of the focuses. As we all know, the manipulator is a MIMO nonlinear system, which has the characteristics of severe variable coupling, large time-varying amplitude of parameters and high degree of nonlinearity. Therefore, a lot of uncertain factors must be considered when designing the control algorithm of manipulator system. The predictive control algorithm adopts online rolling optimization, and in the process of optimization, feedback correction is carried out by the difference between the actual output and the reference output. It can iterate the predictive model and suppress the influence of some uncertain disturbances to a certain extent. Therefore, the design of predictive controller for robot is not only of theoretical significance, but also of great practical significance. The trajectory tracking problem is proposed in this paper, and a predictive control method for master slave robotic manipulator with sliding mode controller is designed. In addition, when external disturbances occurred, the approximation errors are compensated by the proposed control method. Finally, The results demonstrate that the stability of the controllers can be improved for the trajectory tracking errors. © 2021, North Atlantic University Union NAUN. All rights reserved.
引用
收藏
页码:617 / 622
页数:5
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