Evidential Domain Adaptation for Remaining Useful Life Prediction with Incomplete Degradation
arXiv cs.LG / 3/18/2026
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Key Points
- The paper tackles remaining useful life (RUL) prediction under domain adaptation when the target domain has incomplete degradation data, creating extrapolation challenges.
- It argues that most DA methods rely on global alignment, which can misalign late degradation stages in source with early stages in target, and that varying operating conditions within a stage yield different features.
- The authors propose EviAdapt, an evidential adaptation approach that segments source and target data into degradation stages based on degradation rate to enable stage-wise alignment.
- EviAdapt also includes an evidential uncertainty alignment mechanism that estimates and aligns uncertainty across matched stages to improve transfer robustness.
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