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State of charge and state of health estimation of lithium battery using dual Kalman filter method

机译:使用双卡尔曼滤波法的锂电池健康估算的充电状态和状态

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In a Battery Management System (BMS), the determinations of state of charge (SOC) and state of health (SOH) of Lithium battery in hybrid electric vehicle (HEV) need to be accurate and reliable. Charging and discharging processes occurred in Lithium Battery used in HEV produce different SOC value over time, and an accurate prediction method is needed to estimate the SOC current condition. In the long run, both processes can reduce the SOH value of the lithium battery. One of the methods to estimate SOC and SOH values is Coulomb Counting which calculates the coulomb rate flowing out of the Lithium battery over time, but the calculation cannot be done in real time. In this paper, the dual Kalman filter method to predict Lithium Battery SOC and SOH values in real time are utilized. The experimental results show that the estimation of SOC and SOH by using the dual Kalman filter provides almost the same value with that by using the Coulomb counting method.
机译:在电池管理系统(BMS)中,混合动力电动车辆(HEV)中的锂电池(SOC)和健康状态(SOH)的确定需要准确可靠。在HEV中使用的锂电池中发生的充电和放电过程会随着时间的推移产生不同的SOC值,并且需要精确的预测方法来估计SOC电流条件。从长远来看,两个过程都可以减少锂电池的SOH值。估计SOC和SOH值的方法之一是Coulomb计数,其计算流出锂电池随时间流出的库仑计数,但计算不能实时完成。在本文中,利用了预测实时预测锂电池SOC和SOH值的双卡尔曼滤波器方法。实验结果表明,使用双卡尔曼滤波器估计SOC和SOH,通过使用库仑计数方法,提供了几乎相同的值。

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