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An optimized multi-segment long short-term memory network strategy for power lithium-ion battery state of charge estimation adaptive wide temperatures.

Liu, Donglei; Wang, Shunli; Fan, Yongcun; Fernandez, Carlos; Blaabjerg, Frede

Authors

Donglei Liu

Shunli Wang

Yongcun Fan

Frede Blaabjerg



Abstract

With the development of intelligentization and network connectivity of new energy vehicles, the estimation of power lithium-ion battery state of charge (SOC) using artificial intelligence methods is becoming a research hotspot. This paper proposes an optimized multi-segment long short-term memory (MSLSTM) network strategy for SOC estimation of powered lithium-ion batteries' adaptive wide temperatures. First, the multi-timescale electrochemical processes during the charging and discharging of power lithium-ion batteries are efficiently analyzed, and the analytically measurable external parameters are classified into subsets based on the analysis. Secondly, the idea of segment long short-term memory (SLSTM) estimation is proposed to enhance the data linkage between the SOC and the nonlinearly varying parameters and to improve the prediction accuracy. Finally, an optimized MSLSTM neural network is proposed for nonlinear regression prediction of SOC in subset intervals through a combination of segmented estimation idea and SLSTM neural network. The proposed algorithm is validated under a variety of temperatures and operating conditions, and the accuracy of the SOC estimation is improved by at least 66.770% or more. It provides a solution idea for intelligent estimation of power lithium-ion battery SOC.

Citation

LIU, D., WANG, S., FAN, Y., FERNANDEZ, C. and BLAABJERG, F. 2024. An optimized multi-segment long short-term memory network strategy for power lithium-ion battery state of charge estimation adaptive wide temperatures. Energy [online], 304, article number 132048. Available from: https://doi.org/10.1016/j.energy.2024.132048

Journal Article Type Article
Acceptance Date Jun 11, 2024
Online Publication Date Jun 14, 2024
Publication Date Sep 30, 2024
Deposit Date Jun 27, 2024
Publicly Available Date Jun 15, 2025
Journal Energy
Print ISSN 0360-5442
Electronic ISSN 1873-6785
Publisher Elsevier
Peer Reviewed Peer Reviewed
Volume 304
Article Number 132048
DOI https://doi.org/10.1016/j.energy.2024.132048
Keywords Lithium-ion battery; Segmented estimation; Neural network; State of charge; Intelligent estimation
Public URL https://rgu-repository.worktribe.com/output/2378280
Additional Information This article has been published with separate supporting information. This supporting information has been incorporated into a single file on this repository and can be found at the end of the file associated with this output.