A new approach to improve the parameter estimation accuracy in robotic manipulators using a multi-objective output error identification technique

C. West, A. Montazeri, S. Monk, Dobromil Duda, C. J. Taylor
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引用次数: 10

Abstract

The research behind this article primarily concerns the development of mobile robots for nuclear decommissioning. The robotic platform under study has dual, seven-function, hydraulically actuated manipulators, for which the authors are developing a vision based, assisted teleoperation interface for common decommissioning tasks such as pipe cutting. However, to improve safety, task execution speed and operator training-time, high performance control of the nonlinear manipulator dynamics is required. Hence, the present article focuses on an associated dynamic model, and addresses the challenging generic task of parameter estimation for a highly non-convex and nonlinear system. A novel approach for estimation of the fundamental parameters of the manipulator, based on the idea of multi-objectivization, is proposed. Here, a single objective output error identification problem is converted into a multi-objective optimization problem. This is solved using a multi-objective genetic algorithm with non-dominated sorting. Numerical and experimental results using the nuclear decommissioning robot, show that the performance of the proposed approach, in terms of both the output error index and the accuracy of the estimated parameters, is superior to the previously studied single-objective identification problem.
利用多目标输出误差辨识技术提高机械臂参数估计精度的新方法
本文背后的研究主要涉及核退役移动机器人的发展。正在研究的机器人平台具有双功能,七功能,液压驱动的机械手,作者正在为其开发一个基于视觉的辅助远程操作界面,用于常见的退役任务,如管道切割。然而,为了提高安全性、任务执行速度和操作者训练时间,需要对非线性机械臂动力学进行高性能控制。因此,本文的重点是一个相关的动态模型,并解决了一个具有挑战性的一般任务参数估计高度非凸和非线性系统。提出了一种基于多目标化思想的机械臂基本参数估计方法。将单目标输出误差辨识问题转化为多目标优化问题。采用非支配排序的多目标遗传算法求解。核退役机器人的数值和实验结果表明,该方法在输出误差指标和估计参数精度方面都优于以往研究的单目标识别问题。
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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