Design of Picking Robot Manipulator Control System Based on Fuzzy Compensation RBF Neural Network

CONVERTER Pub Date : 2021-07-28 DOI:10.17762/converter.246
Na Wang, Qinghui Meng, Jie Yang
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引用次数: 1

Abstract

Industrial manipulator occupies a very important position in industrial production. The tracking control of its control system and joint trajectory has always been a research hotspot. But the manipulator is a multi input multi output system, which has the characteristics of nonlinearity and strong coupling. Radial basis function (RBF) neural network has high nonlinear mapping ability. In this paper, the structure characteristics, learning algorithm and application of RBF neural network in manipulator control are analyzed. In this paper, the nonlinear approximation property of RBF neural network is theoretically verified. This paper analyzes the basic structure of picking manipulator system in detail. At the same time, the Lagrange Euler method is used to deduce the dynamic equation of the two degree of freedom series manipulator, and the inertia characteristics, Coriolis force and centripetal force characteristics, heavy torque characteristics are analyzed. The nonlinear system model of manipulator based on S-function is established in MATLAB, and the dynamic model is transformed into the form of second-order differential equation to facilitate the introduction of the designed algorithm.
基于模糊补偿RBF神经网络的拾取机器人机械手控制系统设计
工业机械手在工业生产中占有非常重要的地位。其控制系统与关节轨迹的跟踪控制一直是研究的热点。但机械手是一个多输入多输出的系统,具有非线性和强耦合的特点。径向基函数(RBF)神经网络具有较高的非线性映射能力。分析了RBF神经网络的结构特点、学习算法及其在机械臂控制中的应用。本文从理论上验证了RBF神经网络的非线性逼近性。详细分析了采摘机械手系统的基本结构。同时,采用拉格朗日欧拉法推导了两自由度串联机械手的动力学方程,并对其惯性特性、科里奥利力和向心力特性、大扭矩特性进行了分析。在MATLAB中建立了基于s函数的机械臂非线性系统模型,并将动力学模型转化为二阶微分方程形式,便于设计算法的引入。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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