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Park, Hyung Wook
Multiscale Hybrid Manufacturing Lab.
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Fisher-informed continual learning for remaining useful life prediction of machining tools under varying operating conditions

Author(s)
Kim, GyeonghoKang, Yun SeokYang, Sang MinChoi, Jae GyeongHwang, GahyunPark, Hyung WookLim, Sunghoon
Issued Date
2025-01
DOI
10.1016/j.ress.2024.110549
URI
https://scholarworks.unist.ac.kr/handle/201301/84275
Citation
RELIABILITY ENGINEERING & SYSTEM SAFETY, v.253, pp.110549 - 110549
Abstract
Accurate prediction of remaining useful life (RUL) of equipment has become an essential task in manufacturing. It not only helps prevent unexpected failures but also enables maximal utilization of available life, thus improving process efficiency. In practice, however, the use of multiple operating conditions that vary by time impedes efficient data-driven RUL prediction. Unlike conventional supervised learning setups, varying operating conditions generate heterogeneous data with time-varying generating distributions. Thus, existing approaches cannot be effectively applied due to increasing modeling and memory costs. One of the domains that suffer from this issue is machining, where RUL prediction of cutting tools is crucial for productivity. Considering realistic circumstances with varying operating conditions, this work proposes a method named Fisher-informed continual learning (FICL), which enables efficient tool RUL prediction that adaptively learns as conditions change without storing previous data and models. FICL uses Fisher information to improve generalization via sharpness-aware minimization and transfer knowledge between operating conditions through structural regularization. Experiments using datasets from real-world machining processes under five distinct operating conditions prove FICL’s efficacy, indicating its superior prediction performance to existing methods for all operating conditions. Particularly, FICL manifests the least catastrophic forgetting, implying it effectively retains informative knowledge from varying operating conditions.
Publisher
ELSEVIER SCI LTD
ISSN
0951-8320
Keyword (Author)
Continual learningDeep learningMachining toolsPrognostics and health managementRemaining useful lifeVarying operating conditions

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