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An application of reinforcement learning algorithms to industrial multi-robot stations for cooperative handling operation

机译:强化学习算法在工业多机器人站协同处理作业中的应用

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This paper presents a novel approach to operate industrial robots as used for manufacturing lines within a cooperative robot station. The proposed framework consists of the application of especially to the cooperative robot handling problem adjusted Reinforcement Learning (RL) algorithms. Such RL-algorithms deal with sequential decision making processes in a trial-and-error learning interaction with the environment, to finally gain an optimal team-working behavior among the robots. In particular application results to a real team-working robot station underline the effectiveness of the novel RL approach.
机译:本文提出了一种新颖的方法来操作工业机器人,以用于协作式机器人站内的生产线。所提出的框架包括特别是在协作机器人处理问题调整的强化学习(RL)算法中的应用。这种RL算法在与环境的反复试验学习交互中处理顺序决策过程,以最终在机器人之间获得最佳的团队合作行为。特别是在实际的团队合作机器人工作站上的应用结果强调了新颖的RL方法的有效性。

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