CPSO-Based Parameter-Identification Method for the Fractional-Order Modeling of Lithium-Ion Batteries

IF 6.6 1区 工程技术 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Power Electronics Pub Date : 2021-04-16 DOI:10.1109/TPEL.2021.3073810
Zhihao Yu;Ruituo Huai;Hongyu Li
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引用次数: 18

Abstract

For battery equivalent circuit model parameter identification, the fractional-order modeling and the bionic algorithm are two excellent techniques. The former can describe the impedance characteristics of batteries accurately, while the latter has natural advantages in solving some nonlinear problems. However, the high computational cost limits their application. In this article, a parameter-identification method for a battery fractional-order model based on the coevolutionary particle swarm optimization (CPSO) is proposed. In this algorithm, a large number of optimization calculations are dispersed between the adjacent sampling times in the form of evolutionary steps by CPSO, so the algorithm can run in real time with the sampling process. In addition, the simplified fractional approximation further reduces the computational cost. By conducting tests under various algorithm conditions, we evaluate the main factors affecting the algorithm performance in detail. Our results show that compared with the integer-order model, the fractional-order model can track the optimal value more effectively in a wider optimization space, CPSO can track the time-varying battery parameters in real time by continuous evolution, and computational costs can be effectively reduced by using a fixed-order fractional-order model and appropriately compressing the length of the historical data required for fractional-order computation.
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基于CPSO的锂离子电池分数阶建模参数识别方法
对于电池等效电路模型参数辨识,分数阶建模和仿生算法是两种优秀的技术。前者可以准确地描述电池的阻抗特性,而后者在解决一些非线性问题方面具有天然的优势。然而,高昂的计算成本限制了它们的应用。提出了一种基于协同进化粒子群优化(CPSO)的电池分数阶模型参数辨识方法。在该算法中,通过CPSO以进化步骤的形式将大量的优化计算分散在相邻的采样次数之间,从而使算法能够随采样过程实时运行。此外,简化的分数近似进一步降低了计算成本。通过在各种算法条件下进行测试,详细评估了影响算法性能的主要因素。研究结果表明,与整阶模型相比,分数阶模型可以在更宽的优化空间内更有效地跟踪最优值;CPSO可以通过连续进化实时跟踪时变电池参数;采用定阶分数阶模型并适当压缩分数阶计算所需的历史数据长度,可以有效降低计算成本。
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来源期刊
IEEE Transactions on Power Electronics
IEEE Transactions on Power Electronics 工程技术-工程:电子与电气
CiteScore
15.20
自引率
20.90%
发文量
1099
审稿时长
3 months
期刊介绍: The IEEE Transactions on Power Electronics journal covers all issues of widespread or generic interest to engineers who work in the field of power electronics. The Journal editors will enforce standards and a review policy equivalent to the IEEE Transactions, and only papers of high technical quality will be accepted. Papers which treat new and novel device, circuit or system issues which are of generic interest to power electronics engineers are published. Papers which are not within the scope of this Journal will be forwarded to the appropriate IEEE Journal or Transactions editors. Examples of papers which would be more appropriately published in other Journals or Transactions include: 1) Papers describing semiconductor or electron device physics. These papers would be more appropriate for the IEEE Transactions on Electron Devices. 2) Papers describing applications in specific areas: e.g., industry, instrumentation, utility power systems, aerospace, industrial electronics, etc. These papers would be more appropriate for the Transactions of the Society which is concerned with these applications. 3) Papers describing magnetic materials and magnetic device physics. These papers would be more appropriate for the IEEE Transactions on Magnetics. 4) Papers on machine theory. These papers would be more appropriate for the IEEE Transactions on Power Systems. While original papers of significant technical content will comprise the major portion of the Journal, tutorial papers and papers of historical value are also reviewed for publication.
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