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Papers/DyEdgeGAT: Dynamic Edge via Graph Attention for Early Faul...

DyEdgeGAT: Dynamic Edge via Graph Attention for Early Fault Detection in IIoT Systems

Mengjie Zhao, Olga Fink

2023-07-07Unsupervised Anomaly DetectionAnomaly DetectionFault DetectionTime Series
PaperPDFCode(official)

Abstract

In the Industrial Internet of Things (IIoT), condition monitoring sensor signals from complex systems often exhibit nonlinear and stochastic spatial-temporal dynamics under varying conditions. These complex dynamics make fault detection particularly challenging. While previous methods effectively model these dynamics, they often neglect the evolution of relationships between sensor signals. Undetected shifts in these relationships can lead to significant system failures. Furthermore, these methods frequently misidentify novel operating conditions as faults. Addressing these limitations, we propose DyEdgeGAT (Dynamic Edge via Graph Attention), a novel approach for early-stage fault detection in IIoT systems. DyEdgeGAT's primary innovation lies in a novel graph inference scheme for multivariate time series that tracks the evolution of relationships between time series, enabled by dynamic edge construction. Another key innovation of DyEdgeGAT is its ability to incorporate operating condition contexts into node dynamics modeling, enhancing its accuracy and robustness. We rigorously evaluated DyEdgeGAT using both a synthetic dataset, simulating varying levels of fault severity, and a real-world industrial-scale multiphase flow facility benchmark with diverse fault types under varying operating conditions and detection complexities. The results show that DyEdgeGAT significantly outperforms other baseline methods in fault detection, particularly in the early stages with low severity, and exhibits robust performance under novel operating conditions.

Results

TaskDatasetMetricValueModel
Anomaly DetectionPRONTOAUC0.8DyEdgeGAT
Anomaly DetectionPRONTOBest Delay61DyEdgeGAT
Anomaly DetectionPRONTOBest F10.86DyEdgeGAT
Anomaly DetectionPRONTOF10.83DyEdgeGAT
Anomaly DetectionSyntheticAUC0.83DyEdgeGAT
Anomaly DetectionSyntheticBest Delay21.4DyEdgeGAT
Anomaly DetectionSyntheticBest F10.75DyEdgeGAT
Anomaly DetectionSyntheticF10.69DyEdgeGAT
Unsupervised Anomaly DetectionPRONTOAUC0.8DyEdgeGAT
Unsupervised Anomaly DetectionPRONTOBest Delay61DyEdgeGAT
Unsupervised Anomaly DetectionPRONTOBest F10.86DyEdgeGAT
Unsupervised Anomaly DetectionPRONTOF10.83DyEdgeGAT
Unsupervised Anomaly DetectionSyntheticAUC0.83DyEdgeGAT
Unsupervised Anomaly DetectionSyntheticBest Delay21.4DyEdgeGAT
Unsupervised Anomaly DetectionSyntheticBest F10.75DyEdgeGAT
Unsupervised Anomaly DetectionSyntheticF10.69DyEdgeGAT

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