TY - JOUR
T1 - Data-driven battery state-of-health estimation and prediction using IC based features and coupled model
AU - Zhou, Litao
AU - Zhang, Zhaosheng
AU - Liu, Peng
AU - Zhao, Yang
AU - Cui, Dingsong
AU - Wang, Zhenpo
N1 - Publisher Copyright:
© 2023
PY - 2023/11/20
Y1 - 2023/11/20
N2 - Accurate estimation and prediction of the lithium-ion battery state of health (SOH) play a vital role in improving the reliability and safety of battery operations. However, the complexity of operation modes and inconsistency of aging trajectories in the real-world deteriorate the functional domain of existing methods in accurate estimation and prediction. In this study, a novel data-driven framework is proposed to enhance performance in real-world operation scenarios. Accordingly, an SOH estimation method is proposed, based on incremental capacity (IC) analysis and the operation characteristics of batteries. This method is more feasible in practical applications and has a 12.89 % improvement in reflecting the SOH compared with the IC peak. Moreover, a correction model is proposed and coupled with a regression model to remedy the deviation due to battery individual adaptively. The method is verified on laboratory and EV datasets, achieving mean absolute percentage errors of 0.29 % and 3.20 % respectively, evidently lower than those of conventional methods. This study highlights the adaptability of health features in real-world operation scenarios and the promise of combining group-based models with individual-based models to optimize predictions. The proposed framework can be extensively utilized for battery residual value analysis, secondary use, analysis of system energy storage, and other applications in real-world scenarios.
AB - Accurate estimation and prediction of the lithium-ion battery state of health (SOH) play a vital role in improving the reliability and safety of battery operations. However, the complexity of operation modes and inconsistency of aging trajectories in the real-world deteriorate the functional domain of existing methods in accurate estimation and prediction. In this study, a novel data-driven framework is proposed to enhance performance in real-world operation scenarios. Accordingly, an SOH estimation method is proposed, based on incremental capacity (IC) analysis and the operation characteristics of batteries. This method is more feasible in practical applications and has a 12.89 % improvement in reflecting the SOH compared with the IC peak. Moreover, a correction model is proposed and coupled with a regression model to remedy the deviation due to battery individual adaptively. The method is verified on laboratory and EV datasets, achieving mean absolute percentage errors of 0.29 % and 3.20 % respectively, evidently lower than those of conventional methods. This study highlights the adaptability of health features in real-world operation scenarios and the promise of combining group-based models with individual-based models to optimize predictions. The proposed framework can be extensively utilized for battery residual value analysis, secondary use, analysis of system energy storage, and other applications in real-world scenarios.
KW - Electric vehicles
KW - Lithium-ion batteries
KW - Machine learning
KW - State of health prediction
UR - http://www.scopus.com/inward/record.url?scp=85165537804&partnerID=8YFLogxK
U2 - 10.1016/j.est.2023.108413
DO - 10.1016/j.est.2023.108413
M3 - Article
AN - SCOPUS:85165537804
SN - 2352-152X
VL - 72
JO - Journal of Energy Storage
JF - Journal of Energy Storage
M1 - 108413
ER -