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首页> 外文期刊>Journal of Energy Storage >State of Charge Estimation of Power Lithium-ion Battery Based on a Variable Forgetting Factor Adaptive Kalman Filter
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State of Charge Estimation of Power Lithium-ion Battery Based on a Variable Forgetting Factor Adaptive Kalman Filter

机译:基于变量遗忘因子自适应卡尔曼滤波器的功率锂离子电池的充电状态

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Due to the lack of direct measurement, how to accurate estimate the State of charge (SoC) becomes one of the most crucial tasks in the battery management system recently. In this paper, a linear model with the Variable Forgetting Factor Adaptive Kalman Filter is proposed for the SoC estimation. Firstly, Multiple Linear Regression and Adaptive Kalman Filter are used to predict the initial values of model parameters and determine their threshold. Then, Variable Forgetting Factor Adaptive Kalman Filter (VFFAKF) is proposed for the first time, which makes full use of posterior measurement correction rather than just the current error.Numerical experiments demonstrate the effectiveness of our linear model in estimating the SoC Regardless of whether the exact terminal current is known or not, which is better than the traditional Rint and Thevenin Models. The traditional Rint and Thevenin Models can only obtain acceptable estimation results when the exact terminal current is known. The RMSE of SoC estimation results with the proposed method in this paper is less than 1.4%. The RMSE of the Rint model is larger than 3.6% and the RMSE of the Thevenin model is larger than 2.1% at 0 degrees C with the traditional Extended Kalman Filter (EKF). When the temperature reaches to 25 degrees C and 45 degrees C, the slight increase of the RMSE of our linear model can be compensated by the significantly reduced execution time, which implies a good balance between the estimation accuracy and the computation burden. When the terminal current is unknown exactly, the linear model can reach an acceptable results, the maximum error is less than 5% in FUDS, 25 degrees C. However, neither Rint model nor Thevenin model can obtain good estimation results, especially at the tail end of discharge.
机译:由于缺乏直接测量,如何准确估计充电状态(SOC)成为最近电池管理系统中最重要的任务之一。本文提出了一种具有变量遗忘因子自适应卡尔曼滤波器的线性模型,用于SOC估计。首先,多个线性回归和自适应卡尔曼滤波器用于预测模型参数的初始值并确定其阈值。然后,首次提出了可变的遗忘因子自适应卡尔曼滤波器(Vufakf),这是充分利用后测量校正而不是当前误差。数字实验证明了我们的线性模型在估计SoC时的有效性,无论是否则确切的终端电流是已知的或不优于传统的RINT和母线模型。当已知确切的终端电流是已知的,传统的RINT和母线模型只能获得可接受的估计结果。本文中所提出的方法的SOC估计结果的RMSE小于1.4%。 RINT模型的RMSE大于3.6%,并且在0摄氏度的典型型模型的RMSE与传统的扩展卡尔曼滤波器(EKF)大于0摄氏度的2.1%。当温度达到25摄氏度和45摄氏度时,我们的线性模型的RMSE的轻微增加可以通过显着减少的执行时间来补偿,这意味着估计精度与计算负担之间的良好平衡。当终端电流完全较好时,线性模型可以达到可接受的结果,误差的最大误差小于5%,25摄氏度,既不是rint型号,也不能获得良好的估计结果,尤其是尾部排放结束。

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