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An Online SOC and SOH Estimation Model for Lithium-Ion Batteries

机译:锂离子电池在线SOC和SOH估计模型

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The monitoring and prognosis of cell degradation in lithium-ion (Li-ion) batteries are essential for assuring the reliability and safety of electric and hybrid vehicles. This paper aims to develop a reliable and accurate model for online, simultaneous state-of-charge (SOC) and state-of-health (SOH) estimations of Li-ion batteries. Through the analysis of battery cycle-life test data, the instantaneous discharging voltage (V) and its unit time voltage drop, V′, are proposed as the model parameters for the SOC equation. The SOH equation is found to have a linear relationship with 1/V′ times the modification factor, which is a function of SOC. Four batteries are tested in the laboratory, and the data are regressed for the model coefficients. The results show that the model built upon the data from one single cell is able to estimate the SOC and SOH of the three other cells within a 5% error bound. The derived model is also proven to be robust. A random sampling test to simulate the online real-time SOC and SOH estimation proves that this model is accurate and can be potentially used in an electric vehicle battery management system (BMS).
机译:锂离子(Li-ion)电池中电池退化的监测和预后对于确保电动和混合动力汽车的可靠性和安全性至关重要。本文旨在为锂离子电池的在线,同时充电状态(SOC)和健康状态(SOH)估计建立可靠而准确的模型。通过对电池循环寿命测试数据的分析,提出了瞬时放电电压(V)及其单位时间压降V'作为SOC方程的模型参数。发现SOH方程具有1 / V′乘以修正因子的线性关系,修正因子是SOC的函数。在实验室测试了四个电池,并对模型系数进行了数据回归。结果表明,基于来自单个单元格的数据构建的模型能够在5%的误差范围内估计其他三个单元格的SOC和SOH。派生模型也被证明是健壮的。模拟在线实时SOC和SOH估计的随机抽样测试证明,该模型是准确的,可以潜在地用于电动汽车电池管理系统(BMS)。

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