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An improved proportional control forgetting factor recursive least square-Monte Carlo adaptive extended Kalman filtering algorithm for high-precision state-of-charge estimation of lithium-ion batteries.

Zhu, Chenyu; Wang, Shunli; Yu, Chunmei; Zhou, Heng; Fernandez, Carlos

Authors

Chenyu Zhu

Shunli Wang

Chunmei Yu

Heng Zhou



Abstract

For lithium-ion batteries, the state of charge (SOC) of batteries plays an important role in the battery management system, and the accuracy of the battery model and parameter identification is the basis of SOC estimation. Considering that the system has inevitable steady-state errors and the influence of random noise on SOC estimation results under dynamic conditions, this paper proposed an improved proportional control forgetting factor recursive least square-Monte Carlo adaptive extended Kalman filtering (PCFFRLS-MCAEKF) algorithm for high-precision state-of-charge estimation of lithium-ion batteries. The experimental results show that the proportional control forgetting factor recursive least square algorithm has higher parameter identification accuracy under HPPC and BBDST conditions. Under HPPC working conditions, the root mean square error of PCFFRLS-MCAEKF algorithm is reduced by 1.275%, 0.687%, and 0.549% compared with FFRLS-EKF, PCFFRLS-EKF, and PCFFRLS-AEKF algorithm, and the average absolute error is reduced by 0.71%, 0.537%, and 0.11%. Under BBDST working conditions, the SOC estimation result of PCFFRLS-MCAEKF algorithm is closer to the real SOC, which is consistent with the result obtained under HPPC working conditions. The experimental results show that under HPPC and BBDST working conditions, the PCFFRLS-MCAEKF algorithm can better improve the accuracy and robustness of SOC estimation than FFRLS-EKF, PCFFRLS-EKF, and PCFFRLS-AEKF algorithms.

Citation

ZHU, C., WANG, S., YU, C., ZHOU, H. and FERNANDEZ, C. 2023. An improved proportional control forgetting factor recursive least square-Monte Carlo adaptive extended Kalman filtering algorithm for high-precision state-of-charge estimation of lithium-ion batteries. Journal of solid state electrochemistry [online], 27(9), pages 2277-2287. Available from: https://doi.org/10.1007/s10008-023-05514-w

Journal Article Type Review
Acceptance Date Apr 14, 2023
Online Publication Date May 2, 2023
Publication Date Sep 30, 2023
Deposit Date May 23, 2023
Publicly Available Date May 3, 2024
Journal Journal of solid state electrochemistry
Print ISSN 1432-8488
Electronic ISSN 1433-0768
Publisher Springer
Peer Reviewed Peer Reviewed
Volume 27
Issue 9
Pages 2277-2287
DOI https://doi.org/10.1007/s10008-023-05514-w
Keywords Lithium-ion battery; State of charge; Monte Carlo; Adaptive extended Kalman filtering; Proportional control
Public URL https://rgu-repository.worktribe.com/output/1966230