Establishment of a Lithium-Ion Battery Model Considering Environmental Temperature for Battery State of Charge Estimation

Jiabin Wang,Jianhua Du, Birong Tan, Xin Cao, Chang Qu, Yingjie Ou, Xingfeng He, Leji Xiong,Ran Tu

JOURNAL OF THE ELECTROCHEMICAL SOCIETY(2023)

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摘要
Accurate estimation of the state-of-charge (SOC) is essential to prevent overcharging and over-discharging of lithium-ion batteries. However, traditional SOC estimation methods exhibit significant errors under large temperature variations due to the strong temperature dependence of battery characteristics. To enhance the accuracy of SOC estimation, this study proposes a second-order RC equivalent circuit model with temperature correction. By considering the influence of temperature on model parameters, the model's accuracy is improved by adjusting the estimated parameters. A polynomial coefficient data table for model parameters is established to expedite the computation time of the SOC estimation process. Finally, the temperature-corrected model is combined with an Adaptive Extended Kalman Filter (AEKF) algorithm for SOC estimation. The results of the Dynamic Stress Test (DST) condition experiments show that the temperature correction model can improve the accuracy of SOC estimation under different temperature conditions. It has a more lower SOC estimation error than the model without temperature correction. Designed a second-order RC equivalent circuit model based on temperature correction.Creating a polynomial coefficient data table for model parameters to save state of charge(SOC) estimation time.Temperature-corrected model is combined with an Adaptive Extended Kalman Filter algorithm for SOC estimation.Dynamic stress testing validates that the proposed method reduces SOC estimation errors.
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