主动中断管理系统:如何对即将到来的情况不感到惊讶

Suad Sejdovic, Yvonne Hegenbarth, Gerald H. Ristow, Roland Schmidt
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引用次数: 10

摘要

在大多数工业加工场景中,产品的价值在价值链中随着时间的推移而增加。为了避免不必要的处理步骤,在价值创造过程中尽早检测缺陷是非常重要的。根据因果关系是否已知和确定,可以将这些感兴趣的情况区分为指定的和未指定的情况。在本文中,我们描述了正在进行的针对制造环境的主动中断管理系统的工作,该系统通过应用无监督和有监督机器学习的组合来识别和预测未指定的情况,并采用数据挖掘技术来导出指定情况的预测模式,从而帮助为意外情况做好准备。我们还介绍了半导体制造领域的一个实际用例,并提出了第一个初步结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Proactive disruption management system: how not to be surprised by upcoming situations
In most industrial processing scenarios the value of a product increases over time in the value chain. To avoid unnecessary processing steps, it is of immense importance to detect defects as early as possible in the value creating process. These situations of interest can be distinguished as specified and unspecified situations, dependent on whether the cause-effect relation is known and defined or not. In this article we describe ongoing work on a proactive disruption management system for manufacturing environments, which helps being prepared for the unexpected by applying a combination of unsupervised and supervised machine learning for the identification and prediction of unspecified situations and adopting data mining techniques to derive predictive patterns for specified situations. We also introduce a real-world use case from the field of semiconductor manufacturing and present first preliminary results.
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