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基于度量学习的具有类内方差的工业数据故障诊断与异常检测

Metric Learning-Based Fault Diagnosis and Anomaly Detection for Industrial Data With Intraclass Variance.

作者信息

Huang Keke, Wu Shujie, Sun Bei, Yang Chunhua, Gui Weihua

出版信息

IEEE Trans Neural Netw Learn Syst. 2022 May 24;PP. doi: 10.1109/TNNLS.2022.3175888.

Abstract

Industrial system monitoring includes fault diagnosis and anomaly detection, which have received extensive attention, since they can recognize the fault types and detect unknown anomalies. However, a separate fault diagnosis method or anomaly detection method cannot identify unknown faults and distinguish between different fault types simultaneously; thus, it is difficult to meet the increasing demand for safety and reliability of industrial systems. Besides, the actual system often operates in varying working conditions and is disturbed by the noise, which results in the intraclass variance of the raw data and degrades the performance of industrial system monitoring. To solve these problems, a metric learning-based fault diagnosis and anomaly detection method is proposed. Fault diagnosis and anomaly detection are adaptively fused in the proposed end-to-end model, where anomaly detection can prevent the model from misjudging the unknown anomaly as the known type, while fault diagnosis can identify the specific type of system fault. In addition, a novel multicenter loss is introduced to restrain the intraclass variance. Compared with manual feature extraction that can only extract suboptimal features, it can learn discriminant features automatically for both fault diagnosis and anomaly detection tasks. Experiments on three-phase flow (TPF) facility and Case Western Reserve University (CWRU) bearing have demonstrated that the proposed method can avoid the interference of intraclass variances and learn features that are effective for identifying tasks. Moreover, it achieves the best performance in both fault diagnosis and anomaly detection.

摘要

工业系统监测包括故障诊断和异常检测,由于它们能够识别故障类型并检测未知异常,因此受到了广泛关注。然而,单独的故障诊断方法或异常检测方法无法同时识别未知故障并区分不同的故障类型;因此,难以满足工业系统对安全性和可靠性日益增长的需求。此外,实际系统通常在变化的工况下运行,并受到噪声干扰,这导致原始数据的类内方差增大,降低了工业系统监测的性能。为了解决这些问题,提出了一种基于度量学习的故障诊断和异常检测方法。故障诊断和异常检测在提出的端到端模型中进行自适应融合,其中异常检测可以防止模型将未知异常误判为已知类型,而故障诊断可以识别系统故障的具体类型。此外,引入了一种新颖的多中心损失来抑制类内方差。与只能提取次优特征的手动特征提取相比,它可以自动为故障诊断和异常检测任务学习判别特征。在三相流(TPF)设备和凯斯西储大学(CWRU)轴承上进行的实验表明,所提出的方法可以避免类内方差的干扰,并学习对识别任务有效的特征。此外,它在故障诊断和异常检测方面均取得了最佳性能。

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