Disentangling Slow and Fast Temporal Dynamics in Degradation Inference with Hierarchical Differential Models
Mengjie Zhao, Olga Fink

TL;DR
This paper introduces a Hierarchical Controlled Differential Equation framework that effectively disentangles slow degradation dynamics from fast operational variations in sensor data, improving unsupervised system health inference.
Contribution
The novel H-CDE model jointly captures slow and fast dynamics, enhancing degradation inference accuracy and interpretability compared to residual-based methods.
Findings
H-CDE outperforms baseline methods in accuracy and robustness.
The model provides more interpretable degradation insights.
Efficiently separates long-term degradation from short-term operational variability.
Abstract
Reliable inference of system degradation from sensor data is fundamental to condition monitoring and prognostics in mechanical and infrastructural systems. Since degradation is rarely directly observable and measurable, it must be inferred to enable accurate health assessment and decision-making. This is particularly challenging because operational and environmental variations dominate system behavior, while degradation introduces only subtle, long-term changes. Consequently, sensor data primarily reflect short-term operational variability, making it difficult to disentangle the underlying degradation process. Most unsupervised degradation inference methods learn nominal system behavior and use residuals as degradation proxies. However, residuals remain strongly entangled with operational history, yielding noisy and unreliable degradation estimates, particularly in infrastructural…
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Taxonomy
TopicsModel Reduction and Neural Networks · Machine Fault Diagnosis Techniques · Gaussian Processes and Bayesian Inference
