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Adaptive smart card-based pull control systems in context-aware manufacturing systems: Training a neural network through multi-objective simulation optimization

机译:基于自适应智能卡的拉控系统在上下文中的制造系统中:通过多目标仿真优化培训神经网络

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摘要

Nowadays, context aware manufacturing systems offer interesting capabilities to improve the performance of pull controlled production systems. Smart Kanbans can be used instead of physical cards, and the information become available about the production context, collected for example through sensors and RFID. Such information can be exploited by intelligent pull control strategies so as to dynamically adapt the number of cards. This is particularly useful for production systems that are subjected to unpredictable changes in the customers' demand, and need to react quickly to preserve a high level of performance. For this reason, we aim, in this article, at proposing an intelligent system, which can communicate with the information system, whose purpose is to autonomously decide or to help managers in adding or removing cards. In this respect, we propose an approach that uses a neural network which is trained offline, directly from simulation, to decide when it is relevant to change the number of cards, and at what production stage. The learning process, based on multi-objective simulation optimization, aims at reducing the production costs as well as the number of changes to avoid nervousness. The use of stochastic simulation, allows various types of complex problems, related to manufacturing systems, to be addressed and fluctuating demand phenomena to be taken into account. The relevance of our approach is illustrated using six published adaptive ConWIP and Kanban systems. Comparisons with adaptive Kanban and ConWIP systems show that the neural network can automatically learn very relevant knowledge. Good results are obtained in terms of performance, with fewer changes in the number of cards. Several possible future research directions are pointed out. (C) 2018 Elsevier B.V. All rights reserved.
机译:如今,背景感知制造系统提供有趣的能力,以提高拉动控制生产系统的性能。智能Kanbans可以使用代替物理卡,并且信息可用于生产上下文,例如通过传感器和RFID收集。这些信息可以通过智能拉动控制策略利用,以便动态调整卡数量。这对于经历了客户需求的不可预测变化的生产系统特别有用,并且需要快速反应以保持高水平的性能。因此,我们的目标是在本文中提出智能系统,该系统可以与信息系统通信,其目的是自主决定或帮助管理员添加或删除卡。在这方面,我们提出了一种方法,该方法使用直接从模拟训练的神经网络,以确定它与改变卡数量相关的时候,以及在什么生产阶段。基于多目标仿真优化的学习过程旨在降低生产成本以及避免紧张的变化次数。随机仿真的使用允许与制造系统相关的各种类型的复杂问题,以应对和波动的需求现象被考虑在内。使用六个已发布的自适应Conwip和Kanban系统来说明我们的方法的相关性。与Adaptive Kanban和Conwip系统的比较表明,神经网络可以自动学习非常相关的知识。良好的结果是在性能方面获得的,卡数量较少。几个可能的未来研究方向被指出。 (c)2018 Elsevier B.v.保留所有权利。

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