Teach industrial robots peg-hole-insertion by human demonstration

Te Tang, Hsien-Chung Lin, Yu Zhao, Yongxiang Fan, Wenjie Chen, M. Tomizuka
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引用次数: 57

Abstract

Programming robotic assembly tasks usually requires delicate force tuning. In contrast, human may accomplish assembly tasks with much less time and fewer trials. It will be a great benefit if robots can learn the human inherent skill of force control and apply it autonomously. Recent works on Learning from Demonstration (LfD) have shown the possibility to teach robots by human demonstration. The basic idea is to collect the force and corrective velocity that human applies during assembly, and then use them to regress a proper gain for the robot admittance controller. However, many of the LfD methods are tested on collaborative robots with compliant joints and relatively large assembly clearance. For industrial robots, the non-backdrivable mechanism and strict tolerance requirement make the assembly tasks more challenging. This paper modifies the original LfD to be suitable for industrial robots. A new demonstration tool is designed to acquire the human demonstration data. The force control gains are learned by Gaussian Mixture Regression (GMR) and the closed-loop stability is analysed. A series of peg-hole-insertion experiments with H7h7 tolerance on a FANUC manipulator validate the performance of the proposed learning method.
通过人工示范,教工业机器人插入钉孔
编程机器人装配任务通常需要精细的力调整。相比之下,人类可以用更少的时间和更少的试验完成组装任务。如果机器人能够学习人类固有的力控制技能并自主应用,这将是一个很大的好处。最近关于从示范中学习(LfD)的研究表明,通过人类示范来教授机器人是可能的。其基本思想是收集人在装配过程中施加的力和校正速度,然后利用它们来回归机器人导纳控制器的适当增益。然而,许多LfD方法都是在具有柔性关节和相对较大装配间隙的协作机器人上进行测试的。对于工业机器人来说,其非反驱动机构和严格的公差要求使其装配任务更具挑战性。本文对原LfD进行了改进,使其适用于工业机器人。设计了一种新的演示工具来获取人体演示数据。利用高斯混合回归(GMR)学习力控制增益,并分析了闭环稳定性。在FANUC机械臂上进行了一系列具有H7h7公差的钉孔插入实验,验证了该学习方法的有效性。
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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