State-of-Health Online Estimation for Li-Ion Battery

Features
Authors Abstract
Content
To realize a fast and high-precision online state-of-health (SOH) estimation of lithium-ion (Li-Ion) battery, this article proposes a novel SOH estimation method. This method consists of a new SOH model and parameters identification method based on an improved genetic algorithm (Improved-GA). The new SOH model combines the equivalent circuit model (ECM) and the data-driven model. The advantages lie in keeping the physical meaning of the ECM while improving its dynamic characteristics and accuracy. The improved-GA can effectively avoid falling into a local optimal problem and improve the convergence speed and search accuracy. So the advantages of the SOH estimation method proposed in this article are that it only relies on battery management systems (BMS) monitoring data and removes many assumptions in some other traditional ECM-based SOH estimation methods, so it is closer to the actual needs for electric vehicle (EV). By comparing with the traditional ECM-based SOH estimation method, the algorithm proposed in this article has higher accuracy, fewer identification parameters, and lower computational complexity.
Meta TagsDetails
DOI
https://doi.org/10.4271/14-09-02-0012
Pages
14
Citation
Fang, L., Xinyi, L., Weixing, S., Hanning, C. et al., "State-of-Health Online Estimation for Li-Ion Battery," SAE Int. J. Elec. Veh. 9(2):185-196, 2020, https://doi.org/10.4271/14-09-02-0012.
Additional Details
Publisher
Published
Oct 10, 2020
Product Code
14-09-02-0012
Content Type
Journal Article
Language
English