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GA-based approach to optimize an equivalent electric circuit model of a Li-ion battery-pack

机译:基于GA的锂离子电池组等同电路模型的方法

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This article presents the optimization procedure based on genetics algorithms (GA) to obtain an equivalent electric circuit model (EECM) of a Li-ion battery pack. In the first part, a series of experimental tests in time and frequency domains were carried out. These tests were used to identify the parameters of the EECM under different State-of-Charge (SoC) for a commercial battery-pack. Each EECM consists of a voltage source connected in series with a resistor and a set of k networks composed of a resistor in parallel with a capacitor, where k = 1, 2 o 3 (1RC, 2RC, and 3RC). Subsequently, parametric identification of the EECM was performed using optimization techniques. At this stage, the topology that gives the lowest estimation error was determined, where the options analyzed were to use 1RC, 2RC, or 3RC networks. The objective function consists of minimizing the mean square error between measured and calculated impedances of the different proposed circuit models. GA was used to solve this optimization problem. The minimum error obtained was 1.07% and 1.05% for the EECM with 2RC and 3RC networks, respectively. Finally, these EECMs were implemented in Matlab?/Simulink to validate the Li-ion battery-pack model response for an electric vehicle application. A hardware-in-the-loop (HIL) simulation platform was developed to simulate the performance of an electric vehicle (EV) under different driving cycles. The results show that the GA-based approach allows obtained an EECM of low order to represent the highly dynamic behavior of a Li-ion battery with high accuracy.
机译:本文介绍了基于遗传算法(GA)的优化过程,以获得锂离子电池组的等效电路模型(EECM)。在第一部分中,进行了一系列的时间和频率域的实验测试。这些测试用于识别EECM的不同充电状态(SOC)的参数,用于商业电池组件。每个EECM由与电阻器串联连接的电压源和由电容器并联的电阻组成的一组K网络,其中k = 1,203(1RC,2RC和3RC)。随后,使用优化技术进行EECM的参数识别。在此阶段,确定了提供最低估计误差的拓扑,其中分析的选项用于使用1RC,2RC或3RC网络。目标函数包括最小化不同提出的电路模型的测量和计算的阻抗之间的均方误差。 GA被用来解决这个优化问题。具有2RC和3RC网络的EECM,所获得的最小误差分别为1.07%和1.05%。最后,这些EECMS在MATLAB中实现?/ Simulink以验证电动车辆应用的LI离子电池组模型响应。开发了一种硬件循环(HIL)仿真平台以在不同的驱动周期下模拟电动车辆(EV)的性能。结果表明,基于GA的方法允许获得低顺序的EECM,以表示具有高精度的锂离子电池的高动态行为。

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