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Abstract - Explainable Condition Monitoring via Probabilistic Anomaly Detection Applied to Helicopter Transmissions
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. At the same time, we provide descriptive tools to enhance the interpretability of the results, supporting the deployment of the proposed strategy also in safety-critical applications. The methodology is validated experimentally on two use cases: a publicly available benchmark for Predictive Maintenance, and a real-world Helicopter Transmission dataset collected over multiple years. In both applications, the method achieves competitive detection performance with respect to state-of-the-art anomaly detection methods.
基于概率异常检测的可解释直升机传动系统状态监测方法 /
Explainable Condition Monitoring via Probabilistic Anomaly Detection Applied to Helicopter Transmissions
1️⃣ 一句话总结
这篇论文提出了一种仅需健康数据、基于概率模型和贝叶斯推断的异常检测方法,用于监测直升机传动系统等关键设备的状态,该方法不仅能提前发现故障,还能量化预测的不确定性并提供易于理解的解释,从而增强其在安全关键应用中的实用性。