Reinforcement Learning based Condition-oriented Maintenance Scheduling for Flow Line Systems

Raphael Lamprecht, Ferdinand Wurst, Marco F. Huber
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引用次数: 3

Abstract

Maintenance scheduling is a complex decision-making problem in the production domain, where a number of maintenance tasks and resources has to be assigned and scheduled to production entities in order to prevent unplanned production downtime. Intelligent maintenance strategies are required that are able to adapt to the dynamics and different conditions of production systems. The paper introduces a deep reinforcement learning approach for condition-oriented maintenance scheduling in flow line systems. Different policies are learned, analyzed and evaluated against a benchmark scheduling heuristic based on reward modelling. The evaluation of the learned policies shows that reinforcement learning based maintenance strategies meet the requirements of the presented use case and are suitable for maintenance scheduling in the shop floor.
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基于强化学习的管道系统状态维护调度
维护调度是生产领域中一个复杂的决策问题,其中必须将许多维护任务和资源分配和调度给生产实体,以防止计划外的生产停机时间。智能维护策略需要能够适应生产系统的动态和不同条件。介绍了一种基于深度强化学习的管道系统状态维护调度方法。根据基于奖励模型的基准调度启发式算法学习、分析和评估不同的策略。对学习策略的评估表明,基于强化学习的维护策略满足所提出用例的要求,适合于车间的维护调度。
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