基于强化学习的疲劳平衡延长机器人寿命

Francesco Costa, Saeed Mozaffari, Reza Alirezaee, M. Ahmadi, S. Alirezaee
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摘要

在过去的25年里,工业机器人已经成为现代制造和装配中不可或缺的组成部分。虽然实施这些机器人系统的成本可能很高,但随着时间的推移,这些支出会被它们的寿命和生产率所抵消。现有机器人系统的主要成本之一是维护和更换单个机器人。目前,工艺和制造机器人是由机器人技术人员根据工艺要求和产品规格预先确定的动作进行编程的。这些重复的动作往往会比其他动作更快地磨损特定的关节,导致机器人的整体故障,并促使整个机器人的更换。本文利用机器学习算法来修改非生产关键机器人运动,以平衡每个关节的物理负载,目的是延长这些工业机器人在制造环境中的使用寿命。实验结果表明,Q-Learning将机器人关节上的平均负载平衡了大约14%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prolonging Robot Lifespan Using Fatigue Balancing with Reinforcement Learning
Over the last quarter century, industrial robots have become an indispensable element in modern manufacturing and assembly. While the costs of implementing these robot systems can be high, over time these expenditures are offset by their longevity and productivity. One of the major costs of existing robotic systems is the maintenance and replacement of individual robots. Currently, process and manufacturing robots are programmed by robotic technicians with predetermined motions based on process requirements and product specifications. These repetitive motions tend to wear out specific joints faster than others, causing total robot failure and precipitating the replacement of the entire robot. This paper leverages machine learning algorithms to modify nonproduction critical robot movements to balance the physical load at each joint, with the goal of extending the useful life of these industrial robots in a manufacturing environment. Experimental results show that Q-Learning balanced the average load on robot joints by roughly 14%.
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