Uncertainty-aware remaining useful life prediction for predictive maintenance using deep learning

Publikation: Beitrag in FachzeitschriftKonferenzaufsatz in FachzeitschriftForschungPeer-Review

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OriginalspracheEnglisch
Seiten (von - bis)116-121
Seitenumfang6
FachzeitschriftProcedia CIRP
Jahrgang118
Frühes Online-Datum18 Juli 2023
PublikationsstatusVeröffentlicht - 2023
Veranstaltung16th CIRP Conference on Intelligent Computation in Manufacturing Engineering 2022 - Naples, Italien
Dauer: 13 Juli 202215 Juli 2022

Abstract

Reliably predicting Remaining Useful Life (RUL) is crucial for reducing asset maintenance costs. Deep learning emerges as a powerful data-driven method capable of predicting RUL based on historical operating data. However, standard deep learning tools typically do not account for the uncertainty inherent in prediction tasks. This paper presents an uncertainty-aware approach that predicts not only the RUL but also the associated confidence interval, capturing both aleatoric and epistemic uncertainty. The proposed approach is evaluated on publicly available datasets of aircraft turbofan engines, showing its ability to estimate accurate RUL and well-calibrated uncertainties that are robust to out-of-distribution data.

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Uncertainty-aware remaining useful life prediction for predictive maintenance using deep learning. / Xuan, Quy Le; Adhisantoso, Yeremia G.; Munderloh, Marco et al.
in: Procedia CIRP, Jahrgang 118, 2023, S. 116-121.

Publikation: Beitrag in FachzeitschriftKonferenzaufsatz in FachzeitschriftForschungPeer-Review

Xuan QL, Adhisantoso YG, Munderloh M, Ostermann J. Uncertainty-aware remaining useful life prediction for predictive maintenance using deep learning. Procedia CIRP. 2023;118:116-121. Epub 2023 Jul 18. doi: 10.1016/j.procir.2023.06.021
Xuan, Quy Le ; Adhisantoso, Yeremia G. ; Munderloh, Marco et al. / Uncertainty-aware remaining useful life prediction for predictive maintenance using deep learning. in: Procedia CIRP. 2023 ; Jahrgang 118. S. 116-121.
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abstract = "Reliably predicting Remaining Useful Life (RUL) is crucial for reducing asset maintenance costs. Deep learning emerges as a powerful data-driven method capable of predicting RUL based on historical operating data. However, standard deep learning tools typically do not account for the uncertainty inherent in prediction tasks. This paper presents an uncertainty-aware approach that predicts not only the RUL but also the associated confidence interval, capturing both aleatoric and epistemic uncertainty. The proposed approach is evaluated on publicly available datasets of aircraft turbofan engines, showing its ability to estimate accurate RUL and well-calibrated uncertainties that are robust to out-of-distribution data.",
keywords = "Deep learning, Hyper-deep ensemble, PHM systems, Predictive maintenance, RUL prediction, Uncertainty quantification",
author = "Xuan, {Quy Le} and Adhisantoso, {Yeremia G.} and Marco Munderloh and J{\"o}rn Ostermann",
note = "Funding Information: This work was supported by the Federal Ministry for Economic Affairs and Climate Action (BMWK), Germany, within the framework of the project IIP-Ecosphere (project number 01MK20006A).; 16th CIRP Conference on Intelligent Computation in Manufacturing Engineering 2022, CIRP ICME ; Conference date: 13-07-2022 Through 15-07-2022",
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Download

TY - JOUR

T1 - Uncertainty-aware remaining useful life prediction for predictive maintenance using deep learning

AU - Xuan, Quy Le

AU - Adhisantoso, Yeremia G.

AU - Munderloh, Marco

AU - Ostermann, Jörn

N1 - Funding Information: This work was supported by the Federal Ministry for Economic Affairs and Climate Action (BMWK), Germany, within the framework of the project IIP-Ecosphere (project number 01MK20006A).

PY - 2023

Y1 - 2023

N2 - Reliably predicting Remaining Useful Life (RUL) is crucial for reducing asset maintenance costs. Deep learning emerges as a powerful data-driven method capable of predicting RUL based on historical operating data. However, standard deep learning tools typically do not account for the uncertainty inherent in prediction tasks. This paper presents an uncertainty-aware approach that predicts not only the RUL but also the associated confidence interval, capturing both aleatoric and epistemic uncertainty. The proposed approach is evaluated on publicly available datasets of aircraft turbofan engines, showing its ability to estimate accurate RUL and well-calibrated uncertainties that are robust to out-of-distribution data.

AB - Reliably predicting Remaining Useful Life (RUL) is crucial for reducing asset maintenance costs. Deep learning emerges as a powerful data-driven method capable of predicting RUL based on historical operating data. However, standard deep learning tools typically do not account for the uncertainty inherent in prediction tasks. This paper presents an uncertainty-aware approach that predicts not only the RUL but also the associated confidence interval, capturing both aleatoric and epistemic uncertainty. The proposed approach is evaluated on publicly available datasets of aircraft turbofan engines, showing its ability to estimate accurate RUL and well-calibrated uncertainties that are robust to out-of-distribution data.

KW - Deep learning

KW - Hyper-deep ensemble

KW - PHM systems

KW - Predictive maintenance

KW - RUL prediction

KW - Uncertainty quantification

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U2 - 10.1016/j.procir.2023.06.021

DO - 10.1016/j.procir.2023.06.021

M3 - Conference article

AN - SCOPUS:85173575575

VL - 118

SP - 116

EP - 121

JO - Procedia CIRP

JF - Procedia CIRP

SN - 2212-8271

T2 - 16th CIRP Conference on Intelligent Computation in Manufacturing Engineering 2022

Y2 - 13 July 2022 through 15 July 2022

ER -

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