1. Lithium-ion battery health estimation with real-world data for electric vehicles.
- Author
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Tian, Jiaqiang, Liu, Xinghua, Li, Siqi, Wei, Zhongbao, Zhang, Xu, Xiao, Gaoxi, and Wang, Peng
- Subjects
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LITHIUM-ion batteries , *CURRENT fluctuations , *PARAMETER identification , *ELECTRIC capacity , *EQUATIONS of state - Abstract
Complex environments and variable working conditions lead to irreversible attenuation of battery pack capacity in electric vehicles (EVs). Online capacity estimation is of great significance for battery pack management and maintenance. This work proposes a state-of-health (SOH) attenuation model considering driving mileage and seasonal temperature for battery health estimation. Firstly, a variable forgetting factor recursive least square (VFFRLS) algorithm is proposed for battery model parameter identification. It adaptively adjusts the forgetting factor according to current fluctuations. Then, an extended Kalman-particle filter (EPF) algorithm is proposed for online capacity estimation. In addition, a battery pack SOH attenuation model is constructed considering seasonal temperature and driving mileage. Finally, the performance of the proposed model and algorithm is verified with nine months of actual vehicle data. The experimental results show that the proposed parameter identification and capacity estimation algorithm can accurately estimate the model parameters and capacity. The average capacity of the battery module decreases with the total mileage. The compensation of monthly driving mileage and ambient temperature factors effectively improves the accuracy of SOH model. • A SOH attenuation model considering temperature and mileage is proposed for EVs. • A variable forgetting factor RLS is proposed for battery parameter identification. • Multidimensional equation of state is constructed for capacity estimation with EPF. • Nine month real vehicle data are used to validate the proposed algorithm and model. [ABSTRACT FROM AUTHOR]
- Published
- 2023
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