Manufacturing rush orders rescheduling: a supervised learning approach

A. Madureira, J. M. Santos, S. Gomes, Bruno Cunha, J. Pereira, I. Pereira
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引用次数: 6

Abstract

Contemporary manufacturing scheduling has still limitations in real-world environments where disturbances on working conditions could occur over time. Therefore, human intervention is required to maintain real-time adaptation and optimization and efficiently adapt to the inherent dynamic of markets. This paper addresses the problem of incorporating rush orders into the current schedule of a manufacturing shop floor organization. A set of experiments were performed in order to evaluate the applicability of supervised classification algorithms in the attempt to predict the best integration mechanism when receiving a new order in a dynamic scheduling problem.
制造紧急订单的重新调度:一种监督学习方法
在现实世界中,随着时间的推移,工作条件可能会受到干扰,现代制造调度仍然存在局限性。因此,需要人为干预来保持实时适应和优化,有效地适应市场的内在动态。本文讨论了将紧急订单纳入制造车间组织的当前计划的问题。为了评估监督分类算法在动态调度问题中接收新订单时预测最佳集成机制的适用性,进行了一组实验。
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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