Nonlinear autoregressive models for high accuracy early prediction of Li-ion battery end-of-life

Predictions of the state-of-health (SOH) of Li-ion batteries is an important goal in the monitoring and management of electric vehicles. In recent years, a number of pure machine-learning methods have been proposed for such predictions. In this paper, we instead consider autoregression methods and e...

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Veröffentlicht in:Journal of energy storage 2023-12, Vol.73, p.109014, Article 109014
Hauptverfasser: Shah, A.A., Shah, N., Luo, L., Xing, W.W., Leung, P.K., Zhu, X., Liao, Q.
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Sprache:eng
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Zusammenfassung:Predictions of the state-of-health (SOH) of Li-ion batteries is an important goal in the monitoring and management of electric vehicles. In recent years, a number of pure machine-learning methods have been proposed for such predictions. In this paper, we instead consider autoregression methods and embedding strategies, which are specifically tailored to time-series problems. For the first time, we comprehensively compare both linear and nonlinear approaches, including six deep learning architectures, autoregressive integrated moving average (ARIMA) models and seasonal ARIMA models. In particular, for the first time we introduce Gaussian process nonlinear autoregression (GPNAR) for SOH prediction and show that it is superior in terms of accuracy and computational costs to the other autoregressive approaches. On the basis of two different datasets, we also demonstrate that accurate early predictions of the end-of-life (based on 50% of the data) is achievable with GPNAR without the use of features, which keeps data acquisition and processing to a minimum. Finally, we show that GPNAR is capable of capturing seasonal trends such as regeneration without additional time-consuming data analyses. Comparisons to other state-of-the-art methods in the recent literature confirm the superior performance of GPNAR. •Gaussian process nonlinear autoregression for li-ion battery SOH estimation.•Comprehensive study of deep learning autoregression and data embeddings.•Study of the feasibility and efficacy of feature-based SOH predictions.•Predict Li-ion regeneration without the need for data analysis.
ISSN:2352-152X
2352-1538
DOI:10.1016/j.est.2023.109014