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Efficient Hybrid Deep Learning Model for Battery State of Health Estimation Using Transfer Learning

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  • Jinling Ren

    (Department of Automotive Engineering, Shandong Vocational College of Science and Technology, Weifang 261053, China)

  • Misheng Cai

    (Hubei Longzhong Laboratory, Hubei University of Arts and Science, Xiangyang 441000, China
    Hubei Key Laboratory of Power System Design and Test for Electrical Vehicle, Hubei University of Arts and Science, Xiangyang 441053, China)

  • Dapai Shi

    (Hubei Longzhong Laboratory, Hubei University of Arts and Science, Xiangyang 441000, China
    Hubei Key Laboratory of Power System Design and Test for Electrical Vehicle, Hubei University of Arts and Science, Xiangyang 441053, China)

Abstract

Achieving accurate battery state of health (SOH) estimation is crucial, but existing methods still face many challenges in terms of data quality, computational efficiency, and cross-scenario generalization capabilities. This study proposes a hybrid deep learning framework incorporating transfer learning to address these challenges. The framework integrates inception depthwise convolution (IDC), channel reduction attention (CRA) mechanism, and staged training strategy to improve the accuracy and generalization ability of SOH estimation. The IDC module of the proposed model is capable of extracting battery degradation time series features from multiple scales while reducing the computational overhead. The CRA module effectively reduces the computational complexity and memory usage of global feature capture by compressing the channel dimensions. A well-designed pre-training/fine-tuning two-stage training strategy achieves accurate cross-scene SOH estimation by utilizing large-scale source-domain data to learn generalized aging features and then uses a small amount of new data to quickly fine-tune the base model. The proposed method is validated using two publicly available datasets, including 54 nickel cobalt manganese oxide (NCM) cells and 16 nickel manganese cobalt oxide (NMC) cells. The experimental results show that the root mean square error (RMSE) of the model on the NCM and NMC datasets is 0.522% and 0.283%, respectively, with a coefficient of determination (R 2 ) not less than 0.98 and mean absolute percentage error (MAPE) of 0.431% and 0.22%, respectively. The proposed method not only achieves high-precision SOH estimation among the same type of batteries but also demonstrates strong generalization ability under different battery chemistries and scenarios.

Suggested Citation

  • Jinling Ren & Misheng Cai & Dapai Shi, 2025. "Efficient Hybrid Deep Learning Model for Battery State of Health Estimation Using Transfer Learning," Energies, MDPI, vol. 18(6), pages 1-27, March.
  • Handle: RePEc:gam:jeners:v:18:y:2025:i:6:p:1491-:d:1614544
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    References listed on IDEAS

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