AI RESEARCH

Explainable Condition Monitoring via Probabilistic Anomaly Detection Applied to Helicopter Transmissions

arXiv CS.LG

ArXi:2603.08130v1 Announce Type: new We present a novel Explainable methodology for Condition Monitoring, relying on healthy data only. Since faults are rare events, we propose to focus on learning the probability distribution of healthy observations only, and detect Anomalies at runtime. This objective is achieved via the definition of probabilistic measures of deviation from nominality, which allow to detect and anticipate faults. The Bayesian perspective underpinning our approach allows us to perform Uncertainty Quantification to inform decisions.