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Machine Preventive Replacement Policy for Serial Production Lines Based on Reinforcement Learning

机译:基于强化学习的串行生产线机械预防替代政策

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In the manufacturing industry, the random failures of machines introduce unexpected disruptions to the production. It is preferable to replace those aged machines with new ones before they fail. In this paper, the machine preventive replacement problem in serial production lines is discussed. To obtain an optimal machine replacement policy, the problem is formulated as a reinforcement learning problem and solved with the Q-learning algorithm. A reward function is proposed based on the production loss evaluation of the serial production lines. The data-driven modeling of serial production lines is used during the training process of the agent. A simulation study is conducted to evaluate the efficiency and effectiveness of the proposed method.
机译:在制造业中,机器随机故障引起了对生产的意外中断。在失败之前,最好用新的机器替换这些老年机器。本文讨论了串行生产线中的机器预防置换问题。为了获得最佳机器替换策略,问题被制定为加强学习问题,并用Q学习算法解决。基于串行生产线的生产损失评估提出了奖励功能。在代理的训练过程中使用串行生产线的数据驱动建模。进行了仿真研究以评估所提出的方法的效率和有效性。

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