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Electrochemical Model-Based State of Charge Estimation for Li-Ion Cells

机译:基于电化学模型的锂离子电池充电状态估计

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Lithium ion (Li-ion) is the current leading battery technology. Because of their complex behavior, Li-ion batteries require advanced battery management systems (BMSs). One of the most critical tasks of a BMS is state of charge (SoC) estimation. In this paper, an efficient electrochemical model-based SoC estimation algorithm is presented. The use of electrochemical models enables an accurate estimation of the SoC as well during high current events. However, this often due to the cost of a high computational complexity. In this paper, it is shown that by writing the model as a linearly spatially interconnected system and by exploiting the resulting semi-separable structure an efficient extended Kalman filter (EKF) can be implemented. The proposed EKF is compared with another electrochemical-based estimation and shown to deliver an estimation error of less than 5% also during high current peak.
机译:锂离子(Li-ion)是当前领先的电池技术。由于其行为复杂,锂离子电池需要先进的电池管理系统(BMS)。 BMS的最关键任务之一是充电状态(SoC)估计。本文提出了一种有效的基于电化学模型的SoC估计算法。电化学模型的使用还可以在发生大电流事件期间准确估计SoC。然而,这通常是由于高计算复杂性的代价。本文表明,通过将模型编写为线性空间互连的系统,并利用所得的半可分离结构,可以实现有效的扩展卡尔曼滤波器(EKF)。将拟议的EKF与另一种基于电化学的估计进行比较,结果表明,即使在高电流峰值期间,其估计误差也小于5%。

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