A Critical Review of Online Battery Remaining Useful Lifetime Prediction Methods

Lithium-ion batteries play an important role in our daily lives. The prediction of the remaining service life of lithium-ion batteries has become an important issue. This article reviews the methods for predicting the remaining service life of lithium-ion batteries from three aspects: machine learni...

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Bibliographic Details
Published inFrontiers in mechanical engineering Vol. 7
Main Authors Wang, Shunli, Jin, Siyu, Deng, Dan, Fernandez, Carlos
Format Journal Article
LanguageEnglish
Published Frontiers Media S.A 03.08.2021
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ISSN2297-3079
2297-3079
DOI10.3389/fmech.2021.719718

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Summary:Lithium-ion batteries play an important role in our daily lives. The prediction of the remaining service life of lithium-ion batteries has become an important issue. This article reviews the methods for predicting the remaining service life of lithium-ion batteries from three aspects: machine learning, adaptive filtering, and random processes. The purpose of this study is to review, classify and compare different methods proposed in the literature to predict the remaining service life of lithium-ion batteries. This article first summarizes and classifies various methods for predicting the remaining service life of lithium-ion batteries that have been proposed in recent years. On this basis, by selecting specific criteria to evaluate and compare the accuracy of different models, find the most suitable method. Finally, summarize the development of various methods. According to the research in this article, the average accuracy of machine learning is 32.02% higher than the average of the other two methods, and the prediction cycle is 9.87% shorter than the average of the other two methods.
ISSN:2297-3079
2297-3079
DOI:10.3389/fmech.2021.719718