Noise-immune state of charge estimation for lithium-ion batteries based on optimized dynamic model and improved adaptive unscented Kalman filter under wide temperature range

Due to diverse vehicle driving conditions, it is difficult to ensure that lithium-ion batteries operate at a fixed ambient temperature. Meanwhile, the environmental noise accompanying vehicle driving can also affect the data sampling accuracy of batteries. To achieve a high-robustness state of charg...

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Veröffentlicht in:Journal of energy storage 2023-08, Vol.64, p.107223, Article 107223
Hauptverfasser: Lian, Gaoqi, Ye, Min, Wang, Qiao, Wei, Meng, Ma, Yuchuan
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Sprache:eng
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Zusammenfassung:Due to diverse vehicle driving conditions, it is difficult to ensure that lithium-ion batteries operate at a fixed ambient temperature. Meanwhile, the environmental noise accompanying vehicle driving can also affect the data sampling accuracy of batteries. To achieve a high-robustness state of charge (SOC) estimation for lithium-ion batteries at different ambient temperatures with noise effects, a noise-immune SOC estimation method under a wide ambient temperature range is proposed. First, based on the moving window principle, a high-precision fitting model of the open-circuit voltage is established. Second, based on the Multi-Verse Optimizer, a new dynamic model parameter identification method is proposed, while the complete optimized dynamic battery model is established relying on the data of Dynamic Stress Test at different temperatures. Third, to enhance the SOC estimation accuracy and stability, based on adaptive theory and matrix diagonalization theory, the unscented Kalman filter is improved. Finally, the effectiveness and robustness of the proposed method are validated under two other working conditions with random noise added at various temperatures. Under every set of working conditions at all temperatures, the SOC estimation results can maintain stability after converging to the reference SOC, while root mean square errors and mean absolute errors under all cases do not exceed 1.5 %. •A high precision and efficiency OCV-SOC mapping model considering the ambient temperature is established.•An optimized dynamic battery model under a wide ambient temperature range is established.•An improved adaptive unscented Kalman filter algorithm is proposed.•The estimated SOC results of the proposed method are high-robustness under various experimental settings.
ISSN:2352-152X
2352-1538
DOI:10.1016/j.est.2023.107223