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SOC Estimation Based on Modified Covariance Extended Kalman Filter for Power Batteries of Electric Vehicles

机译:基于改进协方差扩展卡尔曼滤波的电动汽车动力电池SOC估计

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Accurate estimation of state of charge (SOC) of power battery is vital for electric vehicles. Extended Kalman Filter (EKF) is well accepted to estimate SOC, but it is largely affected by measurement noise and the covariance is easy to appear morbidity during the recursive process. This paper proposes a modified covariance Extended Kalman Filter (MVEKF) algorithm, which recalculates the covariance with the modified estimation and updates the process gain. The new covariance is used for the next state estimation. Through pulse discharge and dynamic stress test (DST), the results show that the MVEKF is more accurate and tend to be stable faster compared with the EKF. Healthy covariances reduce operational error, so the MVEKF can improve estimation of SOC.
机译:准确估算动力电池的充电状态(SOC)对于电动汽车至关重要。扩展卡尔曼滤波器(EKF)可以用来估计SOC,但它受测量噪声的影响很大,并且协方差在递归过程中容易出现发病。本文提出了一种改进的协方差扩展卡尔曼滤波器(MVEKF)算法,该算法通过修正后的估计重新计算协方差并更新过程增益。新的协方差用于下一个状态估计。通过脉冲放电和动态应力测试(DST),结果表明,与EKF相比,MVEKF更加准确,并且趋于更快地稳定。健康的协方差可减少操作错误,因此MVEKF可以改善SOC的估计。

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