电子科技 ›› 2021, Vol. 34 ›› Issue (2): 38-44.doi: 10.16180/j.cnki.issn1007-7820.2021.02.007

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基于径向基神经网络退役锂电池分选研究

何忠霖,周萍   

  1. 上海理工大学 机械工程学院,上海 200093
  • 收稿日期:2019-11-25 出版日期:2021-02-15 发布日期:2021-01-22
  • 作者简介:何忠霖(1991-),男,硕士研究生。研究方向:电动汽车动力系统。|周萍(1964-),女,副教授。研究方向:汽车发动机与动力匹配技术。
  • 基金资助:
    国家自然科学基金(51877138);上海市青年科技启明星(19QA1406200);上海市教委晨光计划(16CG52)

Research on Sorting of Retired Lithium Battery Based on Radial Basis Function Neural Network

HE Zhonglin,ZHOU Ping   

  1. School of Mechanical Engineering,University of Shanghai for Science and Technology,Shanghai 200093,China
  • Received:2019-11-25 Online:2021-02-15 Published:2021-01-22
  • Supported by:
    National Natural Science Foundation of China(51877138);Shanghai Science and Technology Development Fund(19QA1406200);“Chenguang Program” Supported by Shanghai Education Development Foundation and Shanghai Municipal Education Commission(16CG52)

摘要:

随着电动汽车关键零部件锂电池的寿命逐步到期,对退役锂电池梯次利用的研究愈发重要,其中对退役锂电池的分选技术是该领域的一大难点。传统的分选方法需要对单个电池进行逐个测试从而完成分选,但此方法不适于大批量电池快速分选。为了提高对退役动力电池的分选速度,文中采用了均衡-充电分选法。该方法对待分选的电池进行并联均衡,待电压一致后进行串联恒流充电;然后根据老化程度不同电池具有不同电压曲线的特点,结合径向基神经网络的非线性函数逼近能力;通过模型训练,实现电池容量估计,从而完成电池分选。仿真验证显示新方法容量误差不超过±5%,容量误差不超过±3%,表明文中所提方法可以实现对退役锂电池的分选。

关键词: 退役锂离子电池, 快速分选, 并联均衡, 恒流充电, 径向基神经网络, 容量估计

Abstract:

With the aging of lithium-ion batteries of electric vehicles in the near future, research on the second use of retired LIBs has become more and more critical. However, the classification method of the retired LIBs is challenging before the second use due to large cell variations. The traditional sorting method requires a single battery to be tested one by one to complete the sorting, but this method is not suitable for rapid sorting of large-scale batteries. In order to improve the sorting speed of the retired battery, the equalization-charging sorting method is proposed in this study. The batteries to be sorted are parallel-balanced, and the constant current charging is performed after the voltage is consistent. According to the characteristics of different aging batteries with different voltage curves, combined with the non-linear function approximation capability of radial basis function neural network, battery capacity estimation are realized through model training, thereby completing battery sorting. The results of the simulation verification reveale that the capacity error doesnot exceed ±5%, and the results of the experimental verification show the capacity error is within ±3%, which indicates the proposed method can achieve the sorting of retired lithium batteries.

Key words: retired lithium-ion battery, rapid classification, parallel equalization, constant current charging, radial basis function neural network, capacity estimation

中图分类号: 

  • TP391.9