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A comparative study of global optimization methods for parameter identification of different equivalent circuit models for Li-ion batteries

机译:锂离子电池不同等效电路模型参数识别全局优化方法的比较研究

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摘要

A suitable model structure and matched model parameters are prerequisites for the precise estimation of the battery states. Previous studies pay little attention to whether a parameter identification method is suitable for a model. In this study, a comparative study is conducted by implementing model parameter optimization for nine equivalent circuit models using nine optimizers in the entire SOC area. The following conclusions are drawn: (1) PNGV and the exact algorithms are an ideal combination in the low SOC area (0%-20%). (2) In the high SOC area (20-100%), exact algorithms are an ideal choice for the first-order RC models, and PSO is an ideal identification algorithm for second-order RC models. For the third-and fourth-order RC models, firefly algorithm has the highest accuracy with longer identification time. (3) Firefly algorithm has the superior capacity to identify the accurate model parameters and PSO has the best comprehensive performance for on-line parameter identification. (C) 2018 Elsevier Ltd. All rights reserved.
机译:合适的模型结构和匹配的模型参数是电池状态精确估计的先决条件。以前的研究几乎没有注意参数识别方法是否适合模型。在本研究中,通过在整个SoC区域中使用九个优化器实现九等效电路模型的模型参数优化进行了比较研究。提出了以下结论:(1)PNGV,精确的算法是低SoC区域的理想组合(0%-20%)。 (2)在高SOC区域(20-100%)中,精确的算法是一阶RC型号的理想选择,PSO是二阶RC型号的理想识别算法。对于第三阶和四阶RC型号,Firefly算法具有最高的精度,识别时间较长。 (3)萤火虫算法具有卓越的容量来识别精确的模型参数,PSO具有最佳的综合性能,可在线参数识别。 (c)2018年elestvier有限公司保留所有权利。

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