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Novel reduced-order modeling method combined with three-particle nonlinear transform unscented Kalman filtering for the battery state-of-charge estimation.

Xu, Wenhua; Wang, Shunli; Fernandez, Carlos; Yu, Chunmei; Fan, Yongcun; Cao, Wen

Authors

Wenhua Xu

Shunli Wang

Chunmei Yu

Yongcun Fan

Wen Cao



Abstract

Accurate estimation of the lithium-ion battery state of charge plays an important role in the real-time monitoring and safety control of batteries. In order to solve the problems that the real-time estimation of the lithium-ion battery is difficult and the estimation accuracy is not high under various working conditions, a lithium-ion battery is taken as a research object, and the working characteristics of the lithium-ion battery are studied under various working conditions. In order to reduce the computational complexity of the traditional unscented Kalman algorithm, an improved unscented Kalman algorithm is proposed. Considering the importance of accurately estimating the initial state of charge for later estimation, the initial estimation value is calibrated by using the open-circuit voltage method. Then, the improved unscented Kalman filter algorithm based on a reduced-order model is used for assessing and tracking to realize real-time high-precision estimation of the state of charge of the lithium-ion battery. A simulation model is built and combined with a variety of working conditions data for performance analysis. The experimental results show that the convergence speed and tracking effect are good and that the estimation error control is within 0.8%. It is verified that the reduced order of the three-particle nonlinear transform unscented Kalman results in higher accuracy in the state-of-charge estimation of lithium-ion batteries.

Citation

XU, W., WANG, S., FERNANDEZ, C., YU, C., FAN, Y. and CAO, W. 2020. Novel reduced-order modeling method combined with three-particle nonlinear transform unscented Kalman filtering for the battery state-of-charge estimation. Journal of power electronics [online], 20(6), pages 1541-1549. Available from: https://doi.org/10.1007/s43236-020-00146-z

Journal Article Type Article
Acceptance Date Aug 31, 2020
Online Publication Date Sep 17, 2020
Publication Date Nov 30, 2020
Deposit Date Nov 11, 2020
Publicly Available Date Sep 18, 2021
Journal Journal of power electronics
Print ISSN 1598-2092
Electronic ISSN 2093-4718
Publisher Korean Institute of Power Electronics (KIPE)
Peer Reviewed Peer Reviewed
Volume 20
Issue 6
Pages 1541-1549
DOI https://doi.org/10.1007/s43236-020-00146-z
Keywords Lithium-ion battery; Thevenin model; State of charge; Unscented Kalman filtering algorithm; Nonlinear transform
Public URL https://rgu-repository.worktribe.com/output/971990