Deep Q-Network Model for Dynamic Job Shop Scheduling Pproblem Based on Discrete Event Simulation

Y. Turgut, C. Bozdag
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引用次数: 2

Abstract

In the last few decades, dynamic job scheduling problems (DJSPs) has received more attention from researchers and practitioners. However, the potential of reinforcement learning (RL) methods has not been exploited adequately for solving DJSPs. In this work deep Q-network (DQN) model is applied to train an agent to learn how to schedule the jobs dynamically by minimizing the delay time of jobs. The DQN model is trained based on a discrete event simulation experiment. The model is tested by comparing the trained DQN model against two popular dispatching rules, shortest processing time and earliest due date. The obtained results indicate that the DQN model has a better performance than these dispatching rules.
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基于离散事件仿真的动态作业车间调度问题深度q -网络模型
在过去的几十年里,动态作业调度问题越来越受到研究者和实践者的关注。然而,强化学习(RL)方法的潜力尚未被充分利用来解决djsp。本文采用深度q -网络(deep Q-network, DQN)模型来训练智能体学习如何通过最小化作业的延迟时间来动态调度作业。基于离散事件仿真实验对DQN模型进行了训练。通过将训练好的DQN模型与两种流行的调度规则最短处理时间和最早到期日进行比较,对模型进行了检验。结果表明,DQN模型比这些调度规则具有更好的性能。
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