An offline reinforcement learning-based framework for proactive robot assistance in assembly task

IF 6.7 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Yingchao You, Boliang Cai, Ze Ji
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引用次数: 0

Abstract

Proactive robot assistance plays a critical role in human–robot collaborative assembly (HRCA), enhancing operational efficiency, product quality and workers’ ergonomics. The shift toward mass personalisation in industries brings significant challenges to the collaborative robot that must quickly adapt to product changes for proactive assistance. State-of-the-art knowledge-based task planners in HRCA struggle to quickly update their knowledge to adapt to the change of new products. Different from conventional methods, this work studies learning proactive assistance by leveraging reinforcement learning (RL) to train a policy, ready to be used for robot proactive assistance planning in HRCA. To address the limitations therein, we propose an offline RL framework where a policy for proactive assistance is trained using the dataset visually extracted from human demonstrations. In particular, an RL algorithm with a conservative Q-value is utilised to train a planning policy in an actor–critic framework with carefully designed state space and reward function. The experimental results show that with only a few demonstrations performed by workers as input, the algorithm can train a policy for proactive assistance in HRCA. The assistance task provided by the robot can fully meet the task requirement and improve human assembly preference satisfaction by 47.06% compared to a static strategy.
基于离线强化学习的机器人主动辅助装配任务框架
主动机器人辅助在人机协作装配(HRCA)中发挥着至关重要的作用,可以提高作业效率、产品质量和工人的人体工程学。工业向大规模个性化的转变给协作机器人带来了重大挑战,协作机器人必须快速适应产品变化以提供主动帮助。HRCA中最先进的基于知识的任务规划者努力快速更新他们的知识以适应新产品的变化。与传统方法不同的是,本工作通过利用强化学习(RL)来训练策略,为HRCA中的机器人主动辅助规划做好准备。为了解决其中的局限性,我们提出了一个离线强化学习框架,其中使用从人类演示中视觉提取的数据集来训练主动帮助的策略。特别地,使用具有保守q值的RL算法在具有精心设计的状态空间和奖励函数的行为者批评框架中训练计划策略。实验结果表明,该算法只需要少量的工人演示作为输入,就可以训练出HRCA中的主动援助策略。机器人提供的辅助任务完全满足任务要求,与静态策略相比,人工装配偏好满意度提高47.06%。
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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来源期刊
Computers & Industrial Engineering
Computers & Industrial Engineering 工程技术-工程:工业
CiteScore
12.70
自引率
12.70%
发文量
794
审稿时长
10.6 months
期刊介绍: Computers & Industrial Engineering (CAIE) is dedicated to researchers, educators, and practitioners in industrial engineering and related fields. Pioneering the integration of computers in research, education, and practice, industrial engineering has evolved to make computers and electronic communication integral to its domain. CAIE publishes original contributions focusing on the development of novel computerized methodologies to address industrial engineering problems. It also highlights the applications of these methodologies to issues within the broader industrial engineering and associated communities. The journal actively encourages submissions that push the boundaries of fundamental theories and concepts in industrial engineering techniques.
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