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Dynamic scheduling in a job-shop production system with reinforcement learning

机译:加固学习职业店生产系统中的动态调度

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Fluctuating customer demands, expected short delivery times and the need for quick order confirmation creates a fast-paced scheduling environment for modern production systems. In this turbulent scene, using the data provided by intelligent elements of cyber-physical production systems opens up new possibilities for dynamic scheduling. The paper introduces a reinforcement learning approach, in particular Q-Learning, to reduce the average lead-time of production orders in a job-shop production system. The intelligent product agents are able to choose a machine for every production step based on real-time information. A performance comparison against standard dispatching rules is given, which shows that in the presented dynamic scheduling use-cases the application of RL reduces the average lead-time.
机译:波动客户需求,预期的简短交货时间以及快速订单确认的需求为现代生产系统创造了一个快节奏的调度环境。 在这种动荡的场景中,使用网络 - 物理生产系统的智能元素提供的数据,为动态调度开辟了新的可能性。 本文介绍了强化学习方法,特别是Q学习,以减少工作店生产系统中生产订单的平均报告时间。 智能产品代理能够根据实时信息为每个生产步骤选择机器。 给出了与标准调度规则的性能比较,这表明,在所呈现的动态调度用例中,RL的应用降低了平均报告时间。

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