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A novel algorithm containing an adaptive cubature Kalman filter (ACKF) modified by Frobenius-norm-based (fro-norm-based) QR decomposition (QR) and H-infinity(H ) filter based on electro-thermal model is proposed to estimate the state of charge (SOC) of lithium-ion batteries (LIBS). First, an electro-thermal model with a second-order RC equivalent circuit model (ECM) and a lumped thermal model is employed to identify the internal parameters of LIBS at different temperatures. Then, to solve the non-positive definiteness of the error covariance matrix, an adaptive cubature Kalman filter is modified by fro-norm-based QR decomposition (ACKF-QR). Finally, to cope with uncertain noises especially non-Gaussian noises, the H filter is combined with ACKF-QR to estimate the battery SOC (ACKF-QR-H ). The ACKF-QR-H algorithm is validated under different working conditions at different temperatures with incorrect initial values. The SOC estimation MAXE (Maximum absolute error) of the ACKF-QR-H algorithm is less than 1% and its SOC estimation MAE (Mean absolute error) and RMSE (Root mean square error) are less than 0.32%. As compared with the same algorithm without considering temperature variations, the SOC estimation error of ACKF-QR-H algorithm can almost reduce by half in most cases. When various noises are added manually, the ACKF-QR-H algorithm can remain robust.

中文翻译:

提出了一种包含基于 Frobenius-norm (fro-norm-b​​ased) QR 分解 (QR) 和基于电热模型的H-infinity( H∞ ) 滤波器改进的自适应容积卡尔曼滤波器 (ACKF) 的新算法来估计锂离子电池 (LIBS) 的充电状态 (SOC)。首先,采用具有二阶RC等效电路模型(ECM)和集总热模型的电热模型来识别LIBS在不同温度下的内部参数。然后,为了解决误差协方差矩阵的非正定性,通过基于范数的QR分解(ACKF-QR)对自适应容积卡尔曼滤波器进行了修改。最后,为了应对不确定的噪声,尤其是非高斯噪声,H 滤波器与 ACKF-QR 结合以估计电池 SOC (ACKF-QR-H )。ACKF-QR- H∞ 算法在不同工作条件下不同温度下进行了验证,初始值不正确。 ACKF-QR- H∞ 算法的SOC估计MAXE(最大绝对误差)小于1%,其SOC估计MAE(平均绝对误差)和RMSE(均方根误差)小于0.32%。与不考虑温度变化的相同算法相比,ACKF-QR- H∞ 算法的SOC估计误差在大多数情况下几乎可以减少一半。当手动添加各种噪声时,ACKF-QR- H∞ 算法可以保持鲁棒性。