4.8 Article

A machine learning-based framework for online prediction of battery ageing trajectory and lifetime using histogram data

期刊

JOURNAL OF POWER SOURCES
卷 526, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.jpowsour.2022.231110

关键词

Lithium-ion batteries; State of health prediction; Remaining useful life; Machine learning; Online adaptive learning; Real-world fleet data

资金

  1. Swedish Energy Agency within the Vehicle Strategic Research and Innovation Program [50187-1]

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This study proposes a battery ageing prediction framework that combines global models and individualized models, using histogram data as features. The framework achieves low error rates on laboratory and real-world fleet data, with further improvement through online adaptation.
Accurately predicting batteries' ageing trajectory and remaining useful life is not only required to ensure safe and reliable operation of electric vehicles (EVs) but is also the fundamental step towards health-conscious use and residual value assessment of the battery. The non-linearity, wide range of operating conditions, and cell to cell variations make battery health prediction challenging. This paper proposes a prediction framework that is based on a combination of global models offline developed by different machine learning methods and cell individualised models that are online adapted. For any format of raw data collected under diverse operating conditions, statistic properties of histograms can be still extracted and used as features to learn battery ageing. Our framework is trained and tested on three large datasets, one being retrieved from 7296 plug-in hybrid EVs. While the best global models achieve 0.93% mean absolute percentage error (MAPE) on laboratory data and 1.41% MAPE on the real-world fleet data, the adaptation algorithm further reduced the errors by up to 13.7%, all requiring low computational power and memory. Overall, this work proves the feasibility and benefits of using histogram data and also highlights how online adaptation can be used to improve predictions.

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