基于估计动力学和时变输出约束状态的机械臂跟踪算法

Wenbin Zha, Xiangrong Xu, Zhaoxing Chen, A. Rodic, P. Petrovic
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引用次数: 1

摘要

为了解决7自由度机械臂在运动过程中由于外界干扰引起的抖振问题,给出了机械臂的动力学方程,选取了估计的惯性矩阵,利用RBF神经网络拟合特性对所需项进行拟合,降低建模难度。基于估计的动态模型,提出了一种具有时变约束状态的神经网络自适应控制方法;设计了控制律,建立了李雅普诺夫函数方程和非对称项,推导了控制律的收敛性。根据机械手关节状态跟踪结果,利用Simulink和gazebo仿真软件对其角位移、角速度、角加速度、输入力矩和扰动拟合进行分析。系统仿真结果表明,在存在干扰的情况下,该方法可以有效地抑制系统的抖振现象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Manipulator Tracking Algorithm Based on Estimated Dynamics and Time-Varying Output Constraint State
In order to solve the buffeting problem of 7 DOF Manipulator caused by external disturbance in the motion process, the dynamic equation of the manipulator is given, the estimated inertia matrix is selected, and the RBF neural network fitting characteristics are used to fit the required items to reduce the difficulty of modeling. Based on the estimated dynamic model, a neural network adaptive control method with time-varying constraint state is proposed; The control law is designed, and the Lyapunov function equation and asymmetric term are established to derive its convergence. The angular displacement, angular velocity, angular acceleration, input torque and disturbance fitting are analyzed according to the joint state tracking results of the manipulator by using Simulink and gazebo simulation. The system simulation results show that the chattering phenomenon can be suppressed by using this method in the case of disturbance.
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