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Multi-agent reinforcement learning based maintenance policy for a resource constrained flow line system

机译:资源受限流水线系统的基于多主体强化学习的维护策略

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This paper investigates the maintenance problem for a flow line system consisting of two series machines with an intermediate finite buffer in between. Both machines independently deteriorate as they operate, resulting in multiple yield levels. Resource constrained imperfect preventive maintenance actions may bring the machine back to a better state. The problem is modeled as a semi-Markov decision process. A distributed multi-agent reinforcement learning algorithm is proposed to solve the problem and to obtain the control-limit maintenance policy for each machine associated with the observed state represented by yield level and buffer level. An asynchronous updating rule is used in the learning process since the state transitions of both machines are not synchronous. Experimental study is conducted to evaluate the efficiency of the proposed algorithm.
机译:本文研究了由两台串联机器组成的流水线系统的维护问题,这两台机器之间有一个中间有限缓冲器。两台机器在运行时均会独立变质,从而导致多个产量水平。资源受限的不完善的预防性维护措施可能会使机器恢复到更好的状态。该问题被建模为半马尔可夫决策过程。提出了一种分布式多智能体强化学习算法,以解决该问题并获得与以屈服水平和缓冲水平表示的观察状态关联的每台机器的控制极限维护策略。由于两台计算机的状态转换都不同步,因此在学习过程中使用了异步更新规则。实验研究进行了评估该算法的效率。

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