Improved CNN-LSTM Bearing Remaining Useful Life Prediction Based on the Weibull Loss Function

dc.citation.epage13
dc.citation.spage1
dc.citation.volume32
dc.contributor.authorYanping Zhang
dc.contributor.authorKho Lee Chin
dc.contributor.authorXiaozheng Li
dc.contributor.authorMingqiang Zhang
dc.contributor.authorDongfeng Yuan
dc.contributor.authorAnnie Joseph
dc.contributor.departmentFaculty of Engineering
dc.date.accessioned2026-04-22T06:20:11Z
dc.date.issued2026-01-01
dc.description.abstractThe prediction of the remaining useful life (RUL) of rolling bearings is a critical task in predictive maintenance. This paper presents a deep learning model named knowledge-driven convolutional neural network–long short-term memory (KCNN-LSTM), enhanced by the Weibull-based loss function tailored with historical bearing failure data. By incorporating a probabilistic Weibull modeling mechanism, the model can accurately capture the uncertainty and accelerated degradation trend of bearing failure over time. The prognostics and health management (PHM) 2012 and XJTU-SY bearing datasets are utilized to evaluate the proposed KCNN-LSTM model. The results indicate that the proposed KCNN-LSTM achieves superior performance compared with the conventional CNN-LSTM model, leading to a 10.2% improvement in the score metric and a notable reduction in prediction error. The proposed model offers a practical and effective approach for enhancing predictive maintenance in high-reliability industrial systems.
dc.description.referencesUncontrolled Keywords: bearing life prediction, Weibull, CNN, deep learning, predictive maintenance.
dc.description.statusPublished
dc.identifier.citationYanping Zhang, Kho Lee Chin, Xiaozheng Li, Mingqiang Zhang, Dongfeng Yuan, and Annie Joseph, “Improved CNN-LSTM Bearing Remaining Useful Life Prediction Based on the Weibull Loss Function”, Proc. eng. technol. innov., vol. 32, pp. 01–13, Jan. 2026.
dc.identifier.doihttps://doi.org/10.46604/peti.2025.15348
dc.identifier.emaillckho@unimas.my
dc.identifier.emailjannie@unimas.my
dc.identifier.issn2413-7146
dc.identifier.urihttps://ojs.imeti.org/index.php/PETI/article/view/15348
dc.identifier.urihttps://scholarhub.unimas.my/handle/123456789/466
dc.publisherTaiwan Association of Engineering and Technology Innovation
dc.relation.ispartofProceeding of Engineering and Technology Innovation
dc.titleImproved CNN-LSTM Bearing Remaining Useful Life Prediction Based on the Weibull Loss Function
dc.typeArticles
dc.type.statusYes

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