A branch current estimation and correction method for a parallel connected battery system based on dual BP neural networks

Quanqing Yu , Yukun Liu , Shengwen Long , Xin Jin , Junfu Li , Weixiang Shen
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引用次数: 21

Abstract

In the actual use of a parallel battery pack in electric vehicles (EVs), current distribution in each branch will be different due to inconsistence characteristics of each battery cell. If the branch current is approximately calculated by the total current of the battery pack divided by the number of the parallel branches, there will be a large error between the calculated branch current and the real branch current. Adding current sensors to measure each branch current is not practical because of the high cost. Accurate estimation of branch currents can give a safety warning in time when the parallel batteries of EVs are seriously inconsistent. This paper puts forward a method to estimate and correct branch currents based on dual back propagation (BP) neural networks. In the proposed method, one BP neural network is used to estimate branch currents, the other BP neural network is used to reduce the estimation error cause by current pulse excitations. Furthermore, this paper makes discussions on the selection of the best inputs for the dual BP neural networks and the adaptability of the method for different battery capacity and resistence differences. The effectiveness of the proposed method is verified by multiple dynamic conditions of two cells connected in parallel.

Abstract Image

基于双BP神经网络的并联电池系统支路电流估计与校正方法
并联电池组在电动汽车的实际使用中,由于每个电池单体特性的不一致,各支路的电流分布会有所不同。如果用电池组总电流除以并联支路的个数近似计算支路电流,则计算出的支路电流与实际支路电流存在较大误差。由于成本高,增加电流传感器来测量每个支路的电流是不现实的。准确估计支路电流可以在电动汽车并联电池严重不一致时及时给出安全预警。提出了一种基于双反向传播(BP)神经网络的支路电流估计和校正方法。在该方法中,一个BP神经网络用于支路电流估计,另一个BP神经网络用于减小电流脉冲激励引起的估计误差。此外,本文还讨论了双BP神经网络最佳输入的选择以及该方法对不同电池容量和电阻差异的适应性。通过两个并联单元的多个动态条件验证了该方法的有效性。
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CiteScore
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