4.5 Article

An Electrical-Thermal Coupling Model with Artificial Intelligence for State of Charge and Residual Available Energy Co-Estimation of LiFePO4 Battery System under Various Temperatures

期刊

BATTERIES-BASEL
卷 8, 期 10, 页码 -

出版社

MDPI
DOI: 10.3390/batteries8100140

关键词

LFP battery; SOC; RAE; electrical-thermal coupling; low temperature

资金

  1. National Key R&D Program of China [2021YFB2401901]
  2. China Postdoctoral Science Foundation [2021M691729]
  3. Beijing Science and Technology Planning Project [Z211100004221011]
  4. National Natural Science Foundation of China [52177217, 52037006]
  5. Beijing Natural Science Foundation [3212031]
  6. Tsinghua-Toyota Joint Research Fund [20213930025]

向作者/读者索取更多资源

This paper introduces an artificial intelligence-based electrical-thermal coupling battery model and an application-oriented procedure for estimating SOC and RAE in a reliable and effective battery management system. The paper also proposes a model-based strategy for controlling the battery's thermal state in low temperature. Simulation results show that the proposed method can accurately estimate SOC and RAE, and the preheating strategy significantly improves energy output.
The LiFePO4 (LFP) battery tends to underperform in low temperature: the available energy drops, while the state of charge (SOC) and residual available energy (RAE) estimation error increase dramatically compared to the result under room temperature, which causes mileage anxiety for drivers. This paper introduces an artificial intelligence-based electrical-thermal coupling battery model, presents an application-oriented procedure to estimate SOC and RAE for a reliable and effective battery management system, and puts forward a model-based strategy to control the battery thermal state in low temperature. Firstly, an LFP battery electrical model based on artificial intelligence is proposed to estimate the terminal voltage, and a thermal resistance model with an EKF estimation algorithm is established to assess the temperature distribution in the battery pack. Then, the electrical and thermal models are coupled, a closed-loop EKF algorithm is employed to estimate the battery SOC, and a fusion method is discussed. The coupled model is simulated under a given protocol and RAE can be obtained. Finally, based on the electrical-thermal coupling model and RAE calculation algorithm, a preheating method and constant power condition-based RAE estimation are discussed, and the thermal management strategy of the battery system under low temperature is formed. Results show that the estimation error of SOC can be controlled within 2% and RAE can be controlled within 4%, respectively. The preheating strategy at low temperature and low SOC can significantly improve the energy output of the battery pack system.

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