支持可持续加工过程的数据驱动使用分析和异常检测

Fabian Fingerhut, Chaitra Harsha, Amirmohammad Eghbalian, Tom Jacobs, Mahdi Tabassian, R. Verbeke, E. Tsiporkova
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引用次数: 0

摘要

制造业企业在可持续发展方面还有很大的改进空间。在加工过程中,刀具的更换没有以最优的方式进行,导致生产过程中的资源利用不优化,效率低下。使用数据驱动的方法来扩展工具的使用,可以通过优化这些工具的替换过程来极大地改善这一缺点。因此,本研究旨在探讨应用于工业数据集的几种数据驱动方法的价值,以实现这一目标。虽然所研究的数据驱动方法应用于在各种加工条件下生成的数据集,并且缺乏可靠的地面真理,但所获得的实验结果证实,这些方法确实能够从刀具使用中提取信息轮廓,并且可以识别在不同加工过程中收集的时间序列数据集中的异常模式和标志。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-Driven Usage Profiling and Anomaly Detection in Support of Sustainable Machining Processes
There is a lot of room for improvement towards more sustainability in manufacturing companies. During the machining operations, replacement of the cutting tools is not done in an optimal way, resulting in sub-optimal usage of resources and inefficiencies during the production process. Using data-driven approaches to extend the usage of tools can greatly improve on this shortcoming by optimizing the replacement process of these tools. This study is therefore sought to investigate the value of several data-driven approaches, applied to an industrial dataset, to achieve this goal. Although the examined data-driven methods were applied to a dataset which has been generated under a wide variety of machining conditions and lacks reliable ground truth, the obtained experimental results confirm that these methods are indeed capable of extracting informative profiles from the tool usages and can identify anomalous patterns and signs in the time-series datasets collected during different machining processes.
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