锂离子电池有效状态估计的模型偏差表征

Modjtaba Dahmardeh, Zhimin Xi
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引用次数: 0

摘要

锂离子电池的荷电状态(SOC)估计已经得到了广泛的研究,主要是通过开发各种电池模型和动态估计算法来研究荷电状态估计的精度。然而,由于简化和假设,所有电池模型都包含固有的模型偏差,无法通过各种算法(如卡尔曼滤波(KF)或粒子滤波(PF))的发展有效地解决。因此,正如我们在研究中观察到的,使用典型扩展KF的电池SOC估计实际上不是很准确,根据电池特性,误差可能在5%到10%之间,甚至更多。本文提出对电池模型进行偏置表征,从而显著提高基线模型的精度,最终使电池荷电状态估计比仅使用基线模型准确得多。本文报道了利用偏压表征改进电池荷电状态估计的巨大潜力,并提出了两种实际偏压建模方法。特别提出了多项式回归模型和高斯过程(GP)回归模型,以典型电池电路模型为例,研究了两种方法对偏置建模和SOC估计的影响。结果证明了实验室测试使用三个电池充电/放电配置文件与交叉验证技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model Bias Characterization for Effective States Estimation of Lithium-Ion Batteries
State of charge (SOC) estimation of lithium-ion batteries has been extensively studied and the estimation accuracy was mainly investigated through the development of various battery models and dynamic estimation algorithms. All battery models, however, contain inherent model bias due to the simplifications and assumptions, which cannot be effectively addressed through the development of various algorithms such as Kalman filtering (KF) or particle filtering (PF). Consequently, as observed in our study, battery SOC estimation using a typical extended KF in fact is not very accurate where the error could range from 5% to 10% or even more depending on the battery characteristics. This paper proposes bias characterization of the battery model so that accuracy of the baseline model could be significantly improved and eventually SOC estimation could be much more accurate than the one only using the baseline model. This paper reports great potential for improving battery SOC estimation with the bias characterization and proposes two methods for actual bias modeling. In particular, the polynomial regression model and the Gaussian process (GP) regression model are proposed to examine the effects of the two methods on bias modeling and SOC estimation using a typical battery circuit model. Results are demonstrated in lab testing using three battery charging/discharging profiles with the cross-validation technique.
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