Explainable AI guided unsupervised fault diagnostics for high-voltage circuit breakers
Chi-Ching Hsu, Ga\"etan Frusque, Florent Forest, Felipe Macedo, Christian M. Franck, Olga Fink

TL;DR
This paper introduces an unsupervised, explainable AI framework for fault detection and diagnostics in high-voltage circuit breakers using vibration and acoustic signals, enabling online monitoring without fault labels.
Contribution
It presents a novel unsupervised fault detection, segmentation, and explainability-guided diagnostic framework that operates with only healthy data during training.
Findings
Successfully detects faults without prior fault labels
Clusters different fault types using only healthy data
Provides explainable diagnostics for domain experts
Abstract
Commercial high-voltage circuit breaker (CB) condition monitoring systems rely on directly observable physical parameters such as gas filling pressure with pre-defined thresholds. While these parameters are crucial, they only cover a small subset of malfunctioning mechanisms and usually can be monitored only if the CB is disconnected from the grid. To facilitate online condition monitoring while CBs remain connected, non-intrusive measurement techniques such as vibration or acoustic signals are necessary. Currently, CB condition monitoring studies using these signals typically utilize supervised methods for fault diagnostics, where ground-truth fault types are known due to artificially introduced faults in laboratory settings. This supervised approach is however not feasible in real-world applications, where fault labels are unavailable. In this work, we propose a novel unsupervised…
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