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Adaptive estimation of the electromotive force of the lithium-ion battery after current interruption for an accurate state-of-charge and capacity determination

机译:自适应估算电流中断后锂离子电池的电动势,以准确确定充电状态并确定容量

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摘要

The online estimation of battery states and parameters is one of the challenging tasks when battery is used as a part of the pure electric or hybrid energy system. For the determination of the available energy stored in the battery, the knowledge of the present state-of-charge (SOC) and capacity of the battery is required. For SOC and capacity determination often the estimation of the battery electromotive force (EMF) is employed. The electromotive force can be measured as an open circuit voltage (OCV) of the battery when a significant time has elapsed since the current interruption. This time may take up to some hours for lithium-ion batteries and is needed to eliminate the influence of the diffusion overvoltages. This paper proposes a new approach to estimate the EMF by considering the OCV relaxation process within only some first minutes after the current interruption. The approach is based on an online fitting of an OCV relaxation model to the measured OCV relaxation curve. This model is based on an equivalent circuit consisting of a voltage source (represents the EMF) in series with the parallel connection of the resistance and a constant phase element (CPE). Based on this fitting the model parameters are determined and the EMF is estimated. The application of this method is exemplarily demonstrated for the state-of-charge and capacity estimation of the lithium-ion battery in an electrical vehicle. In the presented example the battery capacity is determined with the maximal inaccuracy of 2% using the EMF estimated at two different levels of state-of-charge. The real-time capability of the proposed algorithm is proven by its implementation on a low-cost 16-bit microcontroller (Infineon XC2287).
机译:当将电池用作纯电或混合能源系统的一部分时,电池状态和参数的在线估算是一项艰巨的任务。为了确定存储在电池中的可用能量,需要了解电池的当前充电状态(SOC)和容量。对于SOC和容量确定,通常采用电池电动势(EMF)的估计。自从电流中断起经过很长时间后,电动势可以测量为电池的开路电压(OCV)。对于锂离子电池,此时间可能要花费几个小时,这对于消除扩散过电压的影响是必需的。本文提出了一种新方法,通过在电流中断后的最初几分钟内考虑OCV松弛过程来估计EMF。该方法基于OCV松弛模型与所测OCV松弛曲线的在线拟合。该模型基于等效电路,该等效电路由与电阻和恒相元件(CPE)并联连接的电压源(代表EMF)组成。基于此拟合,可以确定模型参数并估算EMF。示例性地证明了该方法在电动车辆中锂离子电池的充电状态和容量估计中的应用。在给出的示例中,使用在两个不同电量状态下估算的EMF来确定电池容量,最大误差为2%。所提出算法的实时能力已通过在低成本16位微控制器(Infineon XC2287)上的实现得到证明。

著录项

  • 来源
    《Applied Energy》 |2013年第11期|416-427|共12页
  • 作者

    Wladislaw Waag; Dirk Uwe Sauer;

  • 作者单位

    Electrochemical Energy Conversion and Storage Systems Group, Institute for Power Electronics and Electrical Drives (ISEA), RWTH Aachen University, Germany,Juelich Aachen Research Alliance, JARA-Energy, Germany;

    Electrochemical Energy Conversion and Storage Systems Group, Institute for Power Electronics and Electrical Drives (ISEA), RWTH Aachen University, Germany,Institute for Power Generation and Storage Systems (PGS), E.ON ERC, RWTH Aachen University, Germany,Juelich Aachen Research Alliance, JARA-Energy, Germany;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Battery monitoring; Electromotive force; State-of-charge determination; Capacity estimation;

    机译:电池监控;电动势;充电状态确定;容量估算;

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