Towards Gaussian Processes for Automatic and Interpretable Anomaly Detection in Industry 4.0

Fabian Berns, Markus Lange-Hegermann, C. Beecks
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引用次数: 5

Abstract

Discerning unexpected from expected data patterns is the key challenge of anomaly detection. Although a multitude of solutions has been applied to this modern Industry 4.0 problem, it remains an open research issue to identify the key characteristics subjacent to an anomaly, sc. generate hypothesis as to why they appear. In recent years, machine learning models have been regarded as universal solution for a wide range of problems. While most of them suffer from non-self-explanatory representations, Gaussian Processes (GPs) deliver interpretable and robust statistical data models, which are able to cope with unreliable, noisy, or partially missing data. Thus, we regard them as a suitable solution for detecting and appropriately representing anomalies and their respective characteristics. In this position paper, we discuss the problem of automatic and interpretable anomaly detection by means of GPs. That is, we elaborate on why GPs are well suited for anomaly detection and what the current challenges are when applying these probabilistic models to large-scale production data.
工业4.0中用于自动和可解释异常检测的高斯过程
从预期数据模式中识别意外数据是异常检测的关键挑战。尽管许多解决方案已经应用于这个现代工业4.0问题,但确定异常下的关键特征仍然是一个开放的研究问题,例如产生关于它们出现原因的假设。近年来,机器学习模型被认为是广泛问题的通用解决方案。虽然它们中的大多数都存在非自解释表示,但高斯过程(gp)提供了可解释且健壮的统计数据模型,能够处理不可靠、有噪声或部分缺失的数据。因此,我们认为它们是检测和适当表示异常及其各自特征的合适解决方案。在本文中,我们讨论了利用GPs自动和可解释的异常检测问题。也就是说,我们详细阐述了为什么GPs非常适合异常检测,以及在将这些概率模型应用于大规模生产数据时面临的挑战。
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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