Domain-Adaptive Health Indicator Learning with Degradation-Stage Synchronized Sampling and Cross-Domain Autoencoder
Jungho Choo, Hanbyeol Park, Gawon Lee, Yunkyung Park, Hyerim Bae

TL;DR
This paper introduces a domain-adaptive framework with synchronized sampling and a large autoencoder to improve health indicator learning across varying operating conditions, addressing distribution mismatch issues.
Contribution
It proposes a novel synchronized sampling method and a large autoencoder with cross-attention for better domain-invariant feature learning in health monitoring.
Findings
Achieved 24.1% average performance improvement over state-of-the-art methods.
Validated on defense and bearing datasets, demonstrating robustness across domains.
Enhanced long-term industrial condition monitoring capabilities.
Abstract
The construction of high quality health indicators (HIs) is crucial for effective prognostics and health management. Although deep learning has significantly advanced HI modeling, existing approaches often struggle with distribution mismatches resulting from varying operating conditions. Although domain adaptation is typically employed to mitigate these shifts, two critical challenges remain: (1) the misalignment of degradation stages during random mini-batch sampling, resulting in misleading discrepancy losses, and (2) the structural limitations of small-kernel 1D-CNNs in capturing long-range temporal dependencies within complex vibration signals. To address these issues, we propose a domain-adaptive framework comprising degradation stage synchronized batch sampling (DSSBS) and the cross-domain aligned fusion large autoencoder (CAFLAE). DSSBS utilizes kernel change-point detection to…
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Taxonomy
TopicsMachine Fault Diagnosis Techniques · Anomaly Detection Techniques and Applications · Domain Adaptation and Few-Shot Learning
