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State-of-Charge Estimation and State-of-Health Prediction of a Li-Ion Degraded Battery Based on an EKF Combined With a Per-Unit System

机译:基于EKF结合每单位系统的锂离子降解电池的荷电状态估计和荷电状态预测

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This paper describes the application of an extended Kalman filter (EKF) combined with a per-unit (p.u.) system to the identification of suitable battery model parameters for the high-accuracy state-of-charge (SOC) estimation and state-of-health (SOH) prediction of a Li-Ion degraded battery. Variances in electrochemical characteristics among Li-Ion batteries caused by aging differences result in erroneous SOC estimation and SOH prediction when using the existing EKF algorithm. To apply the battery model parameters varied by the aging effect, based on the p.u. system, the absolute values of the parameters in the equivalent circuit model in addition to the discharging/charging voltage and current are converted into dimensionless values relative to a set of base value. The converted values are applied to dynamic and measurement models in the EKF algorithm. In particular, based on two methods such as direct current internal resistance measurement and the statistical analysis of voltage pattern, each diffusion resistance $(R_{rm Diff})$ can be measured and used for offline and online SOC estimations, respectively. All SOC estimates are within $pm$5% of the values estimated by ampere-hour counting. Moreover, it is shown that $R_{rm Diff}$ is more sensitive than other model parameters under identical experimental conditions and, hence, implementable for SOH prediction.
机译:本文介绍了将扩展卡尔曼滤波器(EKF)与每单位(pu)系统结合使用以识别合适的电池模型参数,以进行高精度充电状态(SOC)估计和充电状态的应用。锂离子降解电池的健康(SOH)预测。当使用现有的EKF算法时,由老化差异引起的锂离子电池电化学特性的差异会导致错误的SOC估计和SOH预测。根据p.u,应用因老化效应而变化的电池模型参数。在系统中,等效电路模型中除放电/充电电压和电流以外的参数的绝对值都将转换为相对于一组基值的无量纲值。转换后的值将应用于EKF算法中的动态模型和测量模型。特别地,基于诸如直流内部电阻测量和电压模式的统计分析之类的两种方法,每个扩散电阻$(R_ {rm Diff})$可以被测量并且分别用于离线和在线SOC估计。所有SOC估算值均在安培小时计数估算值的pm $ 5%以内。此外,表明在相同的实验条件下,$ R_ {rm Diff} $比其他模型参数更敏感,因此可用于SOH预测。

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