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首页> 外文期刊>International Journal of Electrochemical Science >A Novel Fractional - Order Extended Kalman Filtering Method for on-line Joint State Estimation and Parameter Identification of the High Power Li-ion Batteries
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A Novel Fractional - Order Extended Kalman Filtering Method for on-line Joint State Estimation and Parameter Identification of the High Power Li-ion Batteries

机译:一种新的分数级扩展卡尔曼滤波方法,用于高功率锂离子电池的在线接头状态估计和参数识别

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摘要

To ensure the reliability and sustainability of the energy storage system, it is important to accurately estimate the state of charge of the battery management system. The Li-ion battery is established based on fractional-order model, and the model parameters are identified online using particle swarm optimization combined with the forgetting factor recursive least square method. On this basis, a novel fractional-order extended Kalman filter method for on-line joint state estimation and parameter identification is proposed. This method can update the parameter model of Li-ion battery in real-time, which not only improves the accuracy of the battery model but also improves the accuracy of SOC estimation. Finally, to verify the accuracy and superiority of the method, the integral order extended Kalman filter, fractional-order extended Kalman filter are compared with the proposed method under the BBDST test schedule. Experimental results show that the algorithm has the highest SOC estimation accuracy and the smallest estimation error (1.5 %.). The results indicate that the fractional-order model can better describe the dynamic characteristics of Li-ion battery, and the adaptive scheme can significantly suppress noise measurement errors and battery model errors. The algorithm realizes online parameter identification and can be used in engineering applications.
机译:为确保能量存储系统的可靠性和可持续性,重要的是准确估计电池管理系统的充电状态。基于分数阶模型建立锂离子电池,并且模型参数使用粒子群优化在线识别,结合遗忘因子递归最小二乘法。在此基础上,提出了一种用于在线接合状态估计和参数识别的小型分数级扩展卡尔曼滤波方法。该方法可以实时更新Li离子电池的参数模型,这不仅提高了电池模型的准确性,还可以提高SOC估计的准确性。最后,为了验证该方法的准确性和优越性,将积分顺序扩展卡尔曼滤波器,分数顺序扩展卡尔曼滤波器与BBDST测试计划下的所提出的方法进行比较。实验结果表明,该算法具有最高的SOC估计精度和最小估计误差(1.5%。)。结果表明,分数阶模型可以更好地描述锂离子电池的动态特性,自适应方案可以显着抑制噪声测量误差和电池模型误差。该算法实现了在线参数识别,可用于工程应用程序。

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