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An improved forgetting factor recursive least square and extended particle filtering algorithm for accurate lithium-ion battery state of energy estimation.

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

Authors

Xianfeng Shen

Shunli Wang

Chunmei Yu

Zehao Li



Abstract

State of energy (SOE) estimation of lithium-ion batteries is the basis for electric vehicle range prediction. To improve the estimation accuracy of SOE under complex dynamic operating conditions. In this paper, ternary lithium-ion batteries are used as the object of study and propose a hybrid approach that combines a particle swarm optimization-based forgetting factor recursive least squares method with an improved curve-increasing particle swarm optimization-extended particle filter algorithm for accurate estimation of the state of energy of lithium-ion batteries. Firstly, for the accuracy defects of the FFRLS method, the particle swarm optimization algorithm is used to optimize the initial value of the optimal parameters and the value of the forgetting factor. Secondly, the curve-increasing strategy is introduced into particle swarm optimization to solve the sub-poor problem of extended particle filtering. Experimental validation through different working conditions at multiple temperatures. The results show that the maximum error of parameter identification using the PSO-FFRLS algorithm is stabilized within 1.5%, and the SOE estimation error is within 1.5% for both BBDST and DST conditions at both temperatures. Therefore, the algorithm has high accuracy and robustness under different complex working conditions. The estimation results prove the effectiveness of the energy state estimation.

Citation

SHEN, X., WANG, S., YU, C., LI, Z. and FERNANDEZ, C. 2024. An improved forgetting factor recursive least square and extended particle filtering algorithm for accurate lithium-ion battery state of energy estimation. Ionics [online], 30(10), pages 6179-6195. Available from: https://doi.org/10.1007/s11581-024-05698-9

Journal Article Type Article
Acceptance Date Jul 4, 2024
Online Publication Date Jul 19, 2024
Publication Date Oct 31, 2024
Deposit Date Jul 26, 2024
Publicly Available Date Jul 20, 2025
Journal Ionics
Print ISSN 0947-7047
Electronic ISSN 1862-0760
Publisher Springer
Peer Reviewed Peer Reviewed
Volume 30
Issue 10
Pages 6179-6195
DOI https://doi.org/10.1007/s11581-024-05698-9
Keywords Lithium-ion batteries; Second-order RC-PNGV model; Curve-increasing strategy; Particle filter algorithm; State of energy
Public URL https://rgu-repository.worktribe.com/output/2418892