Curiosity Based RL on Robot Manufacturing Cell

Mohammed Sharafath Abdul Hameed, Md Muzahid Khan, Andreas Schwung
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引用次数: 1

Abstract

This paper introduces a novel combination of scheduling control on a flexible robot manufacturing cell with curiosity based RL. Reinforcement learning has proved to be highly successful in solving tasks like robotics and scheduling. But this requires hand tuning of rewards in problem domains like robotics and scheduling even where the solution is not obvious. To this end, we apply a curiosity based reinforcement learning, using intrinsic motivation as a form of reward, on a flexible robot manufacturing cell to alleviate this problem. Further, the learning agents are embedded into the transportation robots to enable a generalized learning solution that can be applied to a variety of environments. In the first approach, the curiosity based reinforcement learning is applied to a simple structured robot manufacturing cell. And in the second approach, the same algorithm is applied to a graph structured robot manufacturing cell. Results from the experiments show that the agents are able to solve both the environments with the ability to transfer the curiosity module directly from one environment to another. We conclude that curiosity based learning on scheduling tasks provide a viable alternative to the reward shaped reinforcement learning traditionally used.
基于好奇心的RL机器人制造单元
介绍了一种柔性机器人制造单元调度控制与基于好奇心的强化学习相结合的新方法。事实证明,强化学习在解决机器人和调度等任务方面非常成功。但这需要在机器人和调度等问题领域手动调整奖励,即使解决方案并不明显。为此,我们在一个柔性机器人制造单元上应用基于好奇心的强化学习,使用内在动机作为一种奖励形式来缓解这个问题。此外,学习代理被嵌入到运输机器人中,以实现可应用于各种环境的通用学习解决方案。在第一种方法中,基于好奇心的强化学习应用于一个简单的结构化机器人制造单元。在第二种方法中,将相同的算法应用于图结构机器人制造单元。实验结果表明,智能体能够解决这两种环境,并能够将好奇心模块直接从一种环境转移到另一种环境。我们得出的结论是,基于好奇心的任务调度学习为传统使用的奖励形强化学习提供了一种可行的替代方案。
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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