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Domain-Adaptive Health Indicator Learning with Degradation-Stage Synchronized Sampling and Cross-Domain Autoencoder

arXiv cs.LG / 3/12/2026

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Key Points

  • The study tackles cross-domain distribution shifts in health indicator modeling by introducing degradation stage synchronized batch sampling (DSSBS), which uses kernel change-point detection to ensure source and target batches align by failure phase.
  • It also presents the cross-domain aligned fusion large autoencoder (CAFLAE), combining large-kernel temporal feature extraction with cross-attention to learn robust domain-invariant representations for long-range vibration signals.
  • Evaluation on the Korean defense system dataset and the XJTU-SY bearing dataset shows an average 24.1% performance improvement over state-of-the-art methods.
  • The framework demonstrates that stage-consistent sampling improves cross-domain alignment and that CAFLAE provides a strong backbone for long-term industrial condition monitoring in prognostics and health management.

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 segment degradation stages, ensuring that source and target mini-batches are synchronized by their failure phases during alignment. Complementing this, CAFLAE integrates large-kernel temporal feature extraction with cross-attention mechanisms to learn superior domain-invariant representations. The proposed framework was rigorously validated on a Korean defense system dataset and the XJTU-SY bearing dataset, achieving an average performance enhancement of 24.1% over state-of-the-art methods. These results demonstrate that DSSBS improves cross-domain alignment through stage-consistent sampling, whereas CAFLAE offers a high-performance backbone for long-term industrial condition monitoring.