Data-driven scheduling for smart shop floor via reinforcement learning with model-based clustering algorithm

Yuxin Li, Wenbin Gu, Xianliang Wang, Zeyu Chen
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引用次数: 1

Abstract

Various information technologies provide the manufacturing system massive data, which can support the decision optimization of product lifecycle management. However, the lack of effective use for advanced technologies prevents manufacturing industry from being automated and intelligent. Therefore, this paper proposes the smart shop floor and implementation mechanism. Meanwhile, based on the clustering and reinforcement learning, the brain agent and scheduling agent are designed to determine the approriate rule according to the shop floor state information, thus realizing the data-driven real-time scheduling. Experimental results show that the smart shop floor can effectively deal with disturbance events and has better performance compared with composite dispatching rules.
基于模型聚类算法的强化学习智能车间数据驱动调度
各种信息技术为制造系统提供海量数据,为产品生命周期管理的决策优化提供支持。然而,由于缺乏对先进技术的有效利用,阻碍了制造业的自动化和智能化。为此,本文提出了智能车间及其实现机制。同时,基于聚类和强化学习,设计大脑智能体和调度智能体,根据车间状态信息确定合适的规则,实现数据驱动的实时调度。实验结果表明,与复合调度规则相比,智能车间能够有效地处理干扰事件,具有更好的调度性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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