Rapid Assessment of Lithium-ion Batteries' SOH Based on the Segment of Charge/Discharge Voltage Curve Using Convolutional Neural Networks

Zhukui Tan, Bin Liu, Junwei Zhang, Yong Zhu, Zhaoting Ren
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Abstract

An essential part of lithium-ion battery management is the assessment of state of health (SOH), which is the key to accurate estimation of the state of charge and the remaining useful life. The majority of recent studies on SOH evaluation make use of the whole charging or discharging curves, first mining the variables with a strong correlation to SOH, and then building the projection to SOH using data-driven methods. However, this kind of method is difficult to achieve rapid assessment of SOH and the generalization of the mined features is poor. Therefore, we propose a rapid SOH assessment method based on the segment of charge/discharge voltage curve by using the powerful feature extraction ability of 1D-CNN. The results on the Oxford and NASA datasets demonstrate that the proposed method has a small prediction error and better generalization performance. In particular, the absolute error in SOH assessment for the Oxford dataset is below 5% with only 10s of voltage data.
基于充放电电压曲线分段的卷积神经网络快速评价锂离子电池SOH
锂离子电池健康状态评估是锂离子电池管理的重要组成部分,是准确估计电池充电状态和剩余使用寿命的关键。目前的SOH评价研究大多是利用整个充放电曲线,首先挖掘与SOH相关性强的变量,然后利用数据驱动的方法对SOH进行预测。然而,这种方法难以实现对SOH的快速评价,而且所挖掘的特征泛化性较差。因此,我们利用1D-CNN强大的特征提取能力,提出了一种基于充放电电压曲线分段的SOH快速评估方法。在Oxford和NASA数据集上的实验结果表明,该方法预测误差小,具有较好的泛化性能。特别是,牛津数据集的SOH评估的绝对误差低于5%,只有10s的电压数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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