基于时变加权遗传算法的六自由度工业机器人改进动态辨识方法

Yimu Jiang, Benhuai Li, Chunyu Zhang, Chenlu Liu, Weiyang Lin, Xinghu Yu
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引用次数: 1

摘要

提出了一种基于遗传算法及其改进方法的无负载工业机器人动态参数辨识方法。该过程包括以下步骤:1)根据拉格朗日方程推导机器人动力学模型的线性形式;2)设计五阶傅立叶级数形式的激励轨迹作为激励轨迹;3)辨识,采用遗传算法,以理论转矩与实际转矩方差最小为优化准则,通过群体间的遗传交换和优胜劣汰机制,找到全局最优参数;4)模型验证;5)鉴定过程中影响结果准确性的因素分析;6)提出改进方法。实验结果表明,该识别算法得到的预测转矩与实测转矩具有较高的匹配度,模型能较好地反映机器人的实际动态特性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An enhanced dynamic identification method for 6-DOF industrial robot based on time-variant and weighted Genetic algorithm
This paper presents an identification method which is based on genetic algorithm (GA) and its improved method to estimate dynamic parameters of industrial robots without load. The procedure consists of the following steps: 1) derivation of the linear form of the dynamic model of the robot according to the Lagrange equation; 2) designing of the excitation trajectory in the form of fifth order Fourier series as exciting trajectory; 3) identification, where genetic algorithm is used to find the global optimal parameters through the genetic exchange between the groups and the survival of the fittest mechanism with the minimum variance between the theoretical torque and the actual torque as the optimization criteria; 4) model validation; 5) analysis of the factors influencing the accuracy of the results in the identification process; 6) proposal of improved method. The experimental results show that the predicted torque and the measured torque obtained by the identification algorithm have a high matching degree, and the model can reflect the actual dynamic characteristics of the robot.
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