Online estimation of an electric vehicle Lithium-Ion battery using recursive least squares with forgetting

Xiaosong Hu, Fengchun Sun, Y. Zou, H. Peng
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引用次数: 76

Abstract

A battery model that is suitable for real-time State-of-Charge (SOC) estimation of a Lithium-Ion battery is presented in this paper. The battery open circuit voltage (OCV) as a function of SOC is described by an adaptation of the Nernst equation. The analytical representation can facilitate Kalman filtering or observer-based SOC estimation methods. A zero-state hysteresis correction term is used to depict the hysteresis effect of the battery. A parallel resistance-capacitance (RC) network is used to depict the relaxation effect of the battery. A linear discrete-time formulation of the battery model is derived. A recursive least squares algorithm with forgetting is applied to implement the online parameter calibration. Validation results show that the calibrated model can accurately simulate the dynamic voltage behavior of the Lithium-Ion battery for two different experimental data sets.
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带遗忘的递归最小二乘法在线估计电动汽车锂离子电池
提出了一种适合于实时估算锂离子电池荷电状态的电池模型。电池开路电压(OCV)作为荷电状态的函数,通过对能斯特方程的修正来描述。分析表示可以简化卡尔曼滤波或基于观测器的SOC估计方法。采用零状态迟滞校正项来描述电池的迟滞效应。采用并联电阻-电容(RC)网络来描述电池的松弛效应。导出了电池模型的线性离散时间表达式。采用带遗忘的递推最小二乘算法实现在线参数标定。验证结果表明,校正后的模型能够准确模拟两种不同实验数据集下锂离子电池的动态电压行为。
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