基于大数据视角的车载锂离子电池云老化管理方法

Shuangqi Li, Hongwen He, Jianwei Li
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引用次数: 2

摘要

精确的数学模型是保证电池安全稳定运行的关键。本文提出了一种基于支持向量回归(SVR)算法的大数据驱动电池管理方法,该方法能够在动态条件和电池全寿命周期下稳定工作。本文采用雨流循环计数算法来反映电池退化现象,采用SVR算法建立电池模型。其思路是减少数据质量对模型的影响,从而有效利用电池大数据,提高电池建模精度。最后,提出了基于云的BMS (C-BMS)与车载BMS (V-BMS)的协同工作模式,并作为该模型的应用实例。利用电池数据验证了模型的有效性和准确性,电池荷电状态估计误差在3%以内。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Cloud-based Aging Considered Vehicle-mounted Lithium-ion Battery Management Method: A Big Data Perspective
A precise mathematical model is crucial for the battery management system to ensure the secure and stable battery operation. This paper presents a big data-driven battery management method utilizing the Support Vector Regression (SVR) algorithm, with the ability to work stably under dynamic conditions and whole battery life cycle. The rain-flow cycle counting algorithm is used to reflect the battery degradation phenomenon in this paper, and The SVR algorithm is used to establish the battery model. The idea is to reduce the impact of data quality on the model, so as to utilize the battery big data effectively and improve the battery modeling accuracy. Finally, a conjunction working mode between the Cloud-based BMS (C-BMS) and BMS in vehicles (V-BMS) is also proposed, provided as an applied case of the model. Using the battery data to verify the model effectiveness and accuracy, the error of the battery SoC estimation is within 3%.
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