利用图形模型进行多通道异常检测

IF 5.9 2区 工程技术 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Bernadin Namoano, Christina Latsou, John Ahmet Erkoyuncu
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引用次数: 0

摘要

多变量时间序列数据中的异常检测对于监测资产状况至关重要,可以及时发现和诊断故障,从而减轻损害、减少停机时间并提高安全性。现有文献主要强调单通道数据中的时间依赖性,往往忽略了多变量时间序列数据和跨多通道特征之间的相互关系。本文介绍了 G-BOCPD,这是一种基于图形模型的新型注释方法,旨在自动检测多通道多变量时间序列数据中的异常情况。为了解决内部和外部依赖性问题,G-BOCPD 提出了图形套索算法和期望最大化算法的混合算法。这种方法通过识别具有不同行为和模式的片段来检测多通道多变量时间序列中的异常,然后对这些片段进行注释以突出变化。该方法交替使用图形套索算法估算表示变量间依赖关系的浓度矩阵,并通过最小路径聚类方法注释片段,以全面了解变化情况。为证明其有效性,G-BOCPD 被应用于多通道时间序列,这些时间序列来自:(i) 表现出故障行为的柴油多联式列车发动机;(ii) 处于不同退化阶段的一组列车车门。经验证据表明,G-BOCPD 在精确度、召回率和 F1 分数方面都优于之前的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Multi-channel anomaly detection using graphical models

Multi-channel anomaly detection using graphical models

Anomaly detection in multivariate time-series data is critical for monitoring asset conditions, enabling prompt fault detection and diagnosis to mitigate damage, reduce downtime and enhance safety. Existing literature predominately emphasises temporal dependencies in single-channel data, often overlooking interrelations between features in multivariate time-series data and across multiple channels. This paper introduces G-BOCPD, a novel graphical model-based annotation method designed to automatically detect anomalies in multi-channel multivariate time-series data. To address internal and external dependencies, G-BOCPD proposes a hybridisation of the graphical lasso and expectation maximisation algorithms. This approach detects anomalies in multi-channel multivariate time-series by identifying segments with diverse behaviours and patterns, which are then annotated to highlight variations. The method alternates between estimating the concentration matrix, which represents dependencies between variables, using the graphical lasso algorithm, and annotating segments through a minimal path clustering method for a comprehensive understanding of variations. To demonstrate its effectiveness, G-BOCPD is applied to multichannel time-series obtained from: (i) Diesel Multiple Unit train engines exhibiting faulty behaviours; and (ii) a group of train doors at various degradation stages. Empirical evidence highlights G-BOCPD's superior performance compared to previous approaches in terms of precision, recall and F1-score.

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来源期刊
Journal of Intelligent Manufacturing
Journal of Intelligent Manufacturing 工程技术-工程:制造
CiteScore
19.30
自引率
9.60%
发文量
171
审稿时长
5.2 months
期刊介绍: The Journal of Nonlinear Engineering aims to be a platform for sharing original research results in theoretical, experimental, practical, and applied nonlinear phenomena within engineering. It serves as a forum to exchange ideas and applications of nonlinear problems across various engineering disciplines. Articles are considered for publication if they explore nonlinearities in engineering systems, offering realistic mathematical modeling, utilizing nonlinearity for new designs, stabilizing systems, understanding system behavior through nonlinearity, optimizing systems based on nonlinear interactions, and developing algorithms to harness and leverage nonlinear elements.
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