基于灵敏度分析的 5-DOF 混合机器人动态参数识别方法

Zaihua Luo, Juliang Xiao, Sijiang Liu, Mingli Wang, Wei Zhao, Haitao Liu
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引用次数: 0

摘要

目的 本文旨在提出一种基于灵敏度分析的五自由度(DOF)混合机器人动态参数识别方法,以解决识别参数过多、模型复杂、优化算法收敛困难、易陷入局部最优解等问题,提高动态参数识别的效率和精度。设计/方法/途径首先,根据虚功原理建立了五自由度混合机器人的动态参数识别模型。然后,通过 Sobol 灵敏度法分析待识别参数的灵敏度,并进行仿真验证。研究结果与传统的全参数识别方法相比,本文提出的基于灵敏度分析的动态参数识别方法在使用遗传算法优化时收敛速度更快,识别出的动态模型对关节驱动力和扭矩的预测精度高于全参数识别模型。该方法可有效减少待识别参数,简化识别模型,加快优化算法的收敛速度,提高识别模型对关节驱动力和扭矩的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A dynamic parameter identification method for the 5-DOF hybrid robot based on sensitivity analysis

Purpose

This paper aims to propose a dynamic parameter identification method based on sensitivity analysis for the 5-degree of freedom (DOF) hybrid robots, to solve the problems of too many identification parameters, complex model, difficult convergence of optimization algorithms and easy-to-fall into a locally optimal solution, and improve the efficiency and accuracy of dynamic parameter identification.

Design/methodology/approach

First, the dynamic parameter identification model of the 5-DOF hybrid robot was established based on the principle of virtual work. Then, the sensitivity of the parameters to be identified is analyzed by Sobol’s sensitivity method and verified by simulation. Finally, an identification strategy based on sensitivity analysis was designed, experiments were carried out on the real robot and the results were verified.

Findings

Compared with the traditional full-parameter identification method, the dynamic parameter identification method based on sensitivity analysis proposed in this paper converges faster when optimized using the genetic algorithm, and the identified dynamic model has higher prediction accuracy for joint drive forces and torques than the full-parameter identification models.

Originality/value

This work analyzes the sensitivity of the parameters to be identified in the dynamic parameter identification model for the first time. Then a parameter identification method is proposed based on the results of the sensitivity analysis, which can effectively reduce the parameters to be identified, simplify the identification model, accelerate the convergence of the optimization algorithm and improve the prediction accuracy of the identified model for the joint driving forces and torques.

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