Battery state-of-health estimation based on a metabolic extreme learning machine combining degradation state model and error compensation

Accurate estimation of battery state-of-health (SOH) is of great importance for ensuring the safety and reliability of battery energy storage system. Due to the complicated degradation mechanism of batteries, the transfer application of SOH estimation for different types of the batteries with unknow...

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Bibliographic Details
Published inEnergy (Oxford) Vol. 215; p. 119078
Main Authors Chen, Lin, Wang, Huimin, Liu, Bohao, Wang, Yijue, Ding, Yunhui, Pan, Haihong
Format Journal Article
LanguageEnglish
Published Oxford Elsevier Ltd 15.01.2021
Elsevier BV
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Summary:Accurate estimation of battery state-of-health (SOH) is of great importance for ensuring the safety and reliability of battery energy storage system. Due to the complicated degradation mechanism of batteries, the transfer application of SOH estimation for different types of the batteries with unknown usage levels is challenging. To solve this issue, a novel metabolic extreme learning machine (MELM) framework for SOH estimation is proposed in this study. A degradation state model based on the extreme learning machine (ELM) is developed to describe the complex battery degradation mechanism, and the established model can map the relationship between the degradation features and the degradation dynamics for different batteries. To realize SOH estimation at different usage levels with a few data, the metabolic mechanism is introduced to update the input of the degradation state model and reflect the latest trend of degradation. To reduce the errors caused by the metabolism, the grey model is adopted to extrapolate the trend of error accumulation and correct the estimation results. The prominent performances of the MELM framework are synthetically verified from different aspects, the results indicate the MELM framework can effectively realize the SOH estimation for different types of batteries with unknown usage levels. •An extreme learning machine is developed to describe the battery degradation mechanism.•The metabolic mechanism is introduced to update the input of the degradation state model.•The grey model is adopted to extrapolate error accumulation and correct the SOH.•The proposed SOH estimation framework is synthetically verified from different perspectives.
ISSN:0360-5442
1873-6785
DOI:10.1016/j.energy.2020.119078