Research on Fuzzy Adaptive and PD-Type Iterative Learning Control for Robot Manipulator

Zuojun Zhu, Xiangrong Xu, Yongfei Zhu, A. Rodic, P. Petrovic
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引用次数: 1

Abstract

In industrial production, the robot arm often carries out repetitive operations such as moving objects, which leads to the problem of motion accuracy decline. Combining the advantages of fuzzy control and iterative learning control, this paper presents a fuzzy self-adaptive PD-type iterative learning control method. Taking the double joint manipulator as the research object and the Fuzzy control rules are written by using the Fuzzy toolbox. The fuzzy controller is used to modify PD parameters in real-time to improve the adaptability of the system. The trajectory tracking control model of the manipulator is built in Simulink. The two control strategies of PD iterative learning control and the proposed method are compared. The simulation results show that the error generated by the proposed control method is less than the former one, and the error convergence speed is faster, and the overall control effect is quite well.
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机器人机械臂模糊自适应与pd型迭代学习控制研究
在工业生产中,机器人手臂经常进行移动物体等重复性操作,从而导致运动精度下降的问题。结合模糊控制和迭代学习控制的优点,提出了一种模糊自适应pd型迭代学习控制方法。以双关节机械手为研究对象,利用模糊工具箱编写模糊控制规则。采用模糊控制器实时修改PD参数,提高系统的自适应能力。在Simulink中建立了机械手的轨迹跟踪控制模型。比较了PD迭代学习控制和该方法的两种控制策略。仿真结果表明,所提控制方法产生的误差小于前一种控制方法,且误差收敛速度更快,总体控制效果较好。
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