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A Unified Uncertainty-Aware Multi-Task Framework for Robust Remaining Useful Life Prediction Under Distribution Shift

Khaled Mohammad Alomari · IEEE · 2026

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Reliable prognostics in predictive maintenance requires not only accurate remaining useful life (RUL) estimation but also robustness under distribution shift and support for decision-making under uncertainty. However, most existing approaches focus on in-distribution evaluation and treat prediction, uncertainty estimation, and decision-making as separate tasks. This paper proposes a unified uncertainty-aware predictive maintenance framework that integrates sequence modeling, multitask learning, calibrated uncertainty estimation, and cross-dataset robustness evaluation within a single pipeline. The framework combines a sequence-aware multitask architecture with conformal prediction to jointly estimate RUL, failure proximity, and prediction intervals. This approach was evaluated on multiple N-CMAPSS datasets under both in-distribution (ID) and out-of-distribution (OOD) conditions. Although several models show similar performance under ID settings, significant differences appear under the distribution shift. The proposed MT-Conf model achieved the lowest mean OOD RMSE (11.10) and demonstrated stable generalization across eight OOD datasets. Last-cycle analysis showed that sequence-based models significantly reduced the error near failure (for example, MAE = 6.52 GRU vs. 14.30 XGBoost). The framework also provides well-calibrated uncertainty estimates (empirical coverage = 0.973), enabling reliable decisions. Under OOD conditions, uncertainty-aware policies issue only 2.7% of immediate replacement decisions, while maintaining perfect precision. Overall, the results highlight the importance of jointly addressing accuracy, robustness, uncertainty, and decision impact in predictive maintenance.

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APA 7

Alomari, K. M. (2026). A Unified Uncertainty-Aware Multi-Task Framework for Robust Remaining Useful Life Prediction Under Distribution Shift. https://doi.org/10.1109/ACCESS.2026.3685622

MLA

Alomari, Khaled Mohammad. "A Unified Uncertainty-Aware Multi-Task Framework for Robust Remaining Useful Life Prediction Under Distribution Shift." 2026. https://doi.org/10.1109/ACCESS.2026.3685622.

Chicago

Alomari, Khaled Mohammad. 2026. "A Unified Uncertainty-Aware Multi-Task Framework for Robust Remaining Useful Life Prediction Under Distribution Shift.". https://doi.org/10.1109/ACCESS.2026.3685622.

Harvard

Alomari, K. M. 2026, A Unified Uncertainty-Aware Multi-Task Framework for Robust Remaining Useful Life Prediction Under Distribution Shift, IEEE, available at: https://doi.org/10.1109/ACCESS.2026.3685622 [Accessed 23 Jun. 2026].

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Título
A Unified Uncertainty-Aware Multi-Task Framework for Robust Remaining Useful Life Prediction Under Distribution Shift
Autor / colaboradores
Khaled Mohammad Alomari
Editorial
IEEE
Año de publicación
2026
ISSN
2169-3536
ISSN
2169-3536
Idioma
eng

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