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An improved comprehensive learning: particle swarm optimization: extended Kalman filtering method for the online high-precision state of charge and model parameter co-estimation of lithium-ion batteries.

Shen, Xianfeng; Wang, Shunli; Yu, Chunmei; Qi, Chuangshi; Li, Zehao; Fernandez, Carlos

Authors

Xianfeng Shen

Shunli Wang

Chunmei Yu

Chuangshi Qi

Zehao Li



Abstract

The precise assessment of the state of charge (SOC) of lithium-ion batteries (LIBs) is critical in battery management systems. This work offers a comprehensive learning particle swarm optimization (CLPSO) and extended Kalman filter (EKF) technique to forecast the SOC of LIBs in order to obtain an accurate SOC estimate for power batteries. Firstly, to address the challenge of identifying various parameters of the battery model, the bilinear transformation technique is employed to determine the parameters of the second-order RC equivalent circuit model. Secondly, to improve the fitness values for the conventional PSO algorithm, which is prone to entering local optimality, a learning strategy ( f i ) is added to the particle velocity update method. The optimized PSO and EKF algorithms are integrated to perform online prediction of the SOC of LIBs. The experimental results demonstrate that under the conditions of the Beijing Bus Dynamic Stress Test (BBDST), Dynamic Stress Test (DST), and Hybrid Pulse Power Characterization Test (HPPC), the parameter identification inaccuracy of CLPSO is restricted to 1%. After multi-metric evaluation, the maximum error and mean absolute error of the CLPSO-EKF algorithm in SOC estimation are 0.32% and 0.0652%, respectively, demonstrating a higher robustness and accuracy advantage over other versions.

Citation

SHEN, X., WANG, S., YU, C., QI, C., LI, Z. and FERNANDEZ, C. 2023. An improved comprehensive learning: particle swarm optimization: extended Kalman filtering method for the online high-precision state of charge and model parameter co-estimation of lithium-ion batteries. Journal of The Electrochemical Society [online], 170(7), article 070522. Available from: https://doi.org/10.1149/1945-7111/ace555

Journal Article Type Article
Acceptance Date Jun 10, 2023
Online Publication Date Jul 20, 2023
Publication Date Jul 31, 2023
Deposit Date Aug 11, 2023
Publicly Available Date Jul 21, 2024
Journal Journal of the Electrochemical Society
Print ISSN 0013-4651
Electronic ISSN 1945-7111
Publisher Electrochemical Society
Peer Reviewed Peer Reviewed
Volume 170
Issue 7
Article Number 070522
DOI https://doi.org/10.1149/1945-7111/ace555
Keywords Lithium-ion batteries; Battery management systems; Charge parameters; Extended Kalman filtering; State of charges
Public URL https://rgu-repository.worktribe.com/output/2035265