工业物联网可解释性异常检测研究

Zijie Huang, Yulei Wu
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引用次数: 1

摘要

工业物联网(IIoT)中的异常检测技术正在推动传统工业向前所未有的效率、生产力和性能水平发展。它们通常是基于监督和无监督机器学习模型开发的。然而,一些机器学习模型面临着“黑箱”问题,即算法背后的基本原理是不可理解的。近年来,出现了几种可解释异常检测模型。“黑箱”问题已经用这样的模型进行了研究。但是很少有作品关注工业物联网领域的应用,并且没有对可解释的异常检测技术进行相关审查。在本调查中,我们概述了工业物联网中可解释的异常检测技术。本文提出了一种新的分类方法,将现有的可解释异常检测技术分为两类,即基于内在的可解释异常检测和基于解释器的可解释异常检测。我们进一步讨论了可解释异常检测在各种工业物联网领域的应用。最后,我们对这一迅速发展的学科提出了未来的研究建议。
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A Survey on Explainable Anomaly Detection for Industrial Internet of Things
Anomaly detection techniques in the Industrial Internet of Things (IIoT) are driving traditional industries towards an unprecedented level of efficiency, productivity and performance. They are typically developed based on supervised and unsupervised machine learning models. However, some machine learning models are facing “black box” problems, namely the rationale behind the algorithm is not understandable. Recently, several models on explainable anomaly detection have emerged. The “black box” problems have been studied by using such models. But few works focus on applications in the IIoT field, and there is no related review of explainable anomaly detection techniques. In this survey, we provide an overview of explainable anomaly detection techniques in IIoT. We propose a new taxonomy to classify the state-of-the-art explainable anomaly detection techniques into two categories, namely intrinsic based explainable anomaly detection and explainer based explainable anomaly detection. We further discuss the applications of explainable anomaly detection across various IIoT fields. Finally, we suggest future study options in this rapidly expanding subject.
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