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Real-Time Production and Logistics Self-Adaption Scheduling Based on Information Entropy Theory

机译:基于信息熵理论的实时生产和物流自适应调度

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摘要

In recent years, the individualized demand of customers brings small batches and diversification of orders towards enterprises. The application of enabling technologies in the factory, such as the industrial Internet of things (IIoT) and cloud manufacturing (CMfg), enhances the ability of customer requirement automatic elicitation and the manufacturing process control. The job shop scheduling problem with a random job arrival time dramatically increases the difficulty in process management. Thus, how to collaboratively schedule the production and logistics resources in the shop floor is very challenging, and it has a fundamental and practical significance of achieving the competitiveness for an enterprise. To address this issue, the real-time model of production and logistics resources is built firstly. Then, the task entropy model is built based on the task information. Finally, the real-time self-adaption collaboration of production and logistics resources is realized. The proposed algorithm is carried out based on a practical case to evaluate its effectiveness. Experimental results show that our proposed algorithm outperforms three existing algorithms.
机译:近年来,客户的个性化需求为企业提供了小批量和多样化。在工厂中的启用技术的应用,如工业互联网(IIOT)和云制造(CMFG),增强了客户需求自动诱导的能力和制造过程控制。随机作业到达时间的作业商店调度问题大大提高了过程管理中的难度。因此,如何协作安排商店地板中的生产和物流资源非常具有挑战性,并且它对实现企业的竞争力具有基本和实际意义。为解决这个问题,首先建立了生产和物流资源的实时模型。然后,基于任务信息构建任务熵模型。最后,实现了生产和物流资源的实时自适应合作。所提出的算法基于实际情况进行以评估其有效性。实验结果表明,我们所提出的算法优于三种现有算法。

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