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State of Charge Estimation of a Composite Lithium-Based Battery Model Based on an Improved Extended Kalman Filter Algorithm

机译:基于改进的扩展卡尔曼滤波算法的复合锂基电池模型的充电估计状态

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摘要

The battery State of Charge (SoC) estimation is one of the basic and significant functions for Battery Management System (BMS) in Electric Vehicles (EVs). The SoC is the key to interoperability of various modules and cannot be measured directly. An improved Extended Kalman Filter (iEKF) algorithm based on a composite battery model is proposed in this paper. The approach of the iEKF combines the open-circuit voltage (OCV) method, coulomb counting (Ah) method and EKF algorithm. The mathematical model of the iEKF is built and four groups of experiments are conducted based on LiFePO4 battery for offline parameter identification of the model. The iEKF is verified by real battery data. The simulation results with the proposed iEKF algorithm under both static and dynamic operation conditions show a considerable accuracy of SoC estimation.
机译:电池充电状态(SOC)估计是电动车辆(EVS)中电池管理系统(BMS)的基本和重要功能之一。 SoC是各种模块互操作性的关键,不能直接测量。本文提出了一种基于复合电池模型的改进的扩展卡尔曼滤波器(IEKF)算法。 IEKF的方法结合了开路电压(OCV)方法,库仑计数(AH)方法和EKF算法。构建IEKF的数学模型,并基于LifePO4电池进行四组实验,用于离线参数识别模型。 IEKF通过真正的电池数据验证。在静态和动态操作条件下,仿真结果采用所提出的IEKF算法显示了SOC估计的相当大精度。

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