首页> 外文期刊>International Journal of Electrochemical Science >A Novel Joint Estimation Method of State of Charge and State of Health Based on the Strong Tracking-Dual Adaptive Extended Kalman Filter Algorithm for the Electric Vehicle Lithium-Ion Batteries
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A Novel Joint Estimation Method of State of Charge and State of Health Based on the Strong Tracking-Dual Adaptive Extended Kalman Filter Algorithm for the Electric Vehicle Lithium-Ion Batteries

机译:基于电动车辆锂离子电池的强力跟踪 - 双自适应扩展卡尔曼滤波器算法的充电和健康状况的新颖联合估计方法

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In order to enhance the efficiency of electric vehicle lithium-ion batteries, accurate estimation of the battery state is essential. To solve the problems of system noise statistical uncertainty and battery model inaccuracy when using the extended Kalman filter (EKF) algorithm to estimate the battery state, a novel joint estimation algorithm of SOC and SOH based on the strong tracking-dual adaptive extended Kalman filter (ST-DAEKF) is proposed. Based on the extended Kalman filtering algorithm, the fading factor is introduced into it to enhance the tracking ability. Meanwhile, the adaptive filter which can statistics the characteristics of time-varying noise is used to adjust the noise parameters of the system. The BBDST condition and the DST condition at 25 °C are used for simulation and verification in MATLAB. The results of the algorithm simulation show that under the BBDST condition, the maximum SOC error and the average error of the proposed algorithm are 3.41% and 0.99%, respectively, with the corresponding convergence time of 15 seconds. And under the DST condition, the corresponding data is 1.56%, 1.29%, and 20 seconds, respectively. At the same time, compared with the extended Kalman algorithm, the SOH estimation results of this algorithm also have a better estimation effect and reference value. Under the BBDST condition, the maximum SOH error and average error under this algorithm are 0.12% and 0.06%, with the corresponding data of 0.66% and 0.23% under the DST condition. The above data proves the superiority of the joint estimation algorithm.
机译:为了提高电动车辆锂离子电池的效率,精确估计电池状态是必不可少的。为了解决系统噪声统计不确定性和电池模型不准确的问题时使用扩展卡尔曼滤波器(EKF)算法来估计电池状态,基于强跟踪 - 双自适应扩展卡尔曼滤波器的SOC和SOH的新颖联合估计算法(提出了St-Daekf)。基于扩展的卡尔曼滤波算法,将衰落因子引入其中以增强跟踪能力。同时,可以统计时变噪声特性的自适应滤波器来调整系统的噪声参数。 BBDST条件和25°C的DST条件用于Matlab中的仿真和验证。算法模拟结果表明,在BBDST条件下,所提出的算法的最大SOC误差和平均误差分别为3.41%和0.99%,相应的收敛时间为15秒。在DST条件下,相应的数据分别为1.56%,1.29%和20秒。与此同时,与扩展卡尔曼算法相比,该算法的SOH估计结果也具有更好的估计效果和参考值。在BBDST条件下,该算法下的最大SOH误差和平均误差为0.12%和0.06%,相应的数据在DST条件下为0.66%和0.23%。以上数据证明了联合估计算法的优越性。

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