4.5 Article

Adaptation of Deep Network in Transfer Learning for Estimating State of Health in Electric Vehicles during Operation

期刊

BATTERIES-BASEL
卷 9, 期 11, 页码 -

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MDPI
DOI: 10.3390/batteries9110547

关键词

SOH; transfer learning; domain adaptation; lithium-ion battery; electric vehicle

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This study proposes a method utilizing deep network adaptation to estimate battery state of health, addressing the difficulties in obtaining complete charge data under electric vehicle operating conditions and the inconsistent data distribution between source and target domains. The method demonstrates good performance in practical validation.
Battery state of health (SOH) is a significant metric for evaluating battery life and predicting battery safety. Currently, SOH research is largely based on laboratory data, with a dearth of research on electric vehicle (EV) operating data. Due to the difficulty in obtaining complete charge data under EV operating conditions, this study presents a SOH estimation method utilizing deep network adaptation. First, a data-driven approach is employed to extract voltage, current, state of charge (SOC), and incremental capacity (IC) data features. To compensate for the lack of aging information in the EV operation data domain, transfer learning is employed to construct the SOH estimation model. Additionally, to resolve inconsistent data distribution between the source laboratory battery data domain and the target EV operation data domain, an adaptive layer is added to the network, and adaptation of deep network (ADN) is utilized to enhance the model's performance. Finally, the model is validated using electric bus operational data. Results indicate that this model's average Mean Absolute Error (MAE) is less than 3.0%, and, compared to support vector machine (SVM) regression and Gaussian Process Regression (GPR) algorithms, the MAE is reduced by 27.7% and 38.4%, respectively.

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