A New Optimization Algorithm for Parameters Identification of Electric Vehicles’ Battery

A. Lorestani, J. Chebeir, R. Ahmed, J. Cotton
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引用次数: 1

Abstract

This study deals with parameter identification of behavioral model of the electric vehicle’s (EV) battery, which can be cast as a difficult optimization problem. This necessitates the employment of a powerful and global optimization algorithm to ensure the reliability of the results. In this study, a newly developed optimization technique referred to as evolutionary-particle swarm optimization (E-PSO) is implemented. A statistical analysis is conducted, and the proposed algorithm is compared with other widespread metaheuristic algorithms in terms of convergence and simulation time. To do so, first, the current of the battery is determined using a typical EV model and a standard driving cycle. Then, experimental tests are conducted on Lithium Polymer off the shelf cell to calculate the actual terminal voltage. Finally, this actual data is used in an optimization frame to calculate the parameters of the model by which the behavioral model and the real battery are in the closest agreement. The results show that the E-PSO algorithm outperforms other metaheuristic optimization algorithms in terms of finding better solution in a lower convergence time. It is also demonstrated that the solution obtained by E-PSO provides a more accurate estimation of the actual battery.
一种新的电动汽车电池参数识别优化算法
本文研究的是电动汽车电池行为模型的参数辨识问题,这是一个复杂的优化问题。这就需要采用强大的全局优化算法来保证结果的可靠性。本文提出了一种新的优化算法——进化粒子群优化算法(E-PSO)。对该算法进行了统计分析,并在收敛性和仿真时间方面与其他常用的元启发式算法进行了比较。要做到这一点,首先,使用一个典型的电动汽车模型和一个标准的行驶周期来确定电池的电流。然后,对现成的聚合物锂电池进行实验测试,计算出实际的终端电压。最后,在优化框架中使用这些实际数据来计算模型的参数,使行为模型与实际电池最接近。结果表明,E-PSO算法在较短的收敛时间内找到更好的解,优于其他元启发式优化算法。结果表明,e -粒子群算法能更准确地估计电池的实际性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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