State‐of‐charge estimators considering temperature effect, hysteresis potential, and thermal evolution for LiFePO4 batteries

Summary To achieve accurate state‐of‐charge (SoC) estimation for LiFePO4 batteries, the effects of temperature, hysteresis, and thermal evolution are elaborately modeled. Open‐circuit voltage is regarded as the sum of electromotive force and hysteresis potential (Vh), where electromotive force is co...

Full description

Saved in:
Bibliographic Details
Published inInternational journal of energy research Vol. 42; no. 8; pp. 2710 - 2727
Main Authors Xie, Jiale, Ma, Jiachen, Bai, Kun
Format Journal Article
LanguageEnglish
Published Bognor Regis John Wiley & Sons, Inc 25.06.2018
Subjects
Online AccessGet full text
ISSN0363-907X
1099-114X
DOI10.1002/er.4060

Cover

More Information
Summary:Summary To achieve accurate state‐of‐charge (SoC) estimation for LiFePO4 batteries, the effects of temperature, hysteresis, and thermal evolution are elaborately modeled. Open‐circuit voltage is regarded as the sum of electromotive force and hysteresis potential (Vh), where electromotive force is constructed as the function of SoC and temperature and Vh is reproduced with a geometrical model. By simulating battery heat generation and dissipation, a thermal evolution model is established and exploited for open‐circuit voltage and parameter identification. Then, on the basis of a second‐order equivalent circuit model, 2 SoC estimation schemes are proposed: One scheme uses the recursive least square with forgetting factor algorithm and off‐line equivalent circuit model parameters derived by the differential evolution algorithm; the other scheme resorts to the adaptive extended Kalman filter (EKF) and online tuned parameters. Experiments validate the effectiveness of the hysteresis model and the thermal evolution model. In contrast to a joint EKF estimator, experimental results under different temperatures and initial states suggest that both the proposed estimators are superior to the joint EKF estimator. Benefiting from the online updated parameters, the adaptive EKF estimator behaves best for giving consistent SoC‐tracking performance under different conditions. A battery thermal evolution model is formulated and exploited for OCV prediction and parameter identification. An off‐line approach using the differential evolution algorithm and an on‐line approach based on an LMS filter are proposed for ECM parameterization. The RLSF and AEKF algorithms are used to estimate the SOC.
Bibliography:ObjectType-Article-1
SourceType-Scholarly Journals-1
ObjectType-Feature-2
content type line 14
ISSN:0363-907X
1099-114X
DOI:10.1002/er.4060