Battery SOH estimation method based on gradual decreasing current, double correlation analysis and GRU

Chaolong Zhang , Laijin Luo , Zhong Yang , Shaishai Zhao , Yigang He , Xiao Wang , Hongxia Wang
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引用次数: 5

Abstract

In intelligent lithium-ion battery management, the state of health (SOH) of battery is essential for the batteries’ running in electric vehicles. Popularly, the battery SOH is estimated by using suitable features and data-driven methods. However, it is difficult to extract appropriate features characterizing battery SOH from the charging and discharging data of batteries owing to various state of charges (SOCs) and working conditions of batteries. In order to effectively estimate the battery SOH, an estimation method based on gradual decreasing current, double correlation analysis and gated recurrent unit (GRU) is proposed in this paper. Firstly, gradual decreasing current in the constant voltage charging phase is measured as the raw data. Then, the double correlation analysis method is proposed to select combined features characterizing the battery SOH from different categories of features. Meanwhile, the number of input features is also ensured by the method. Finally, the GRU algorithm is employed to set up a SOH estimation model whose learning rate is improved by using a sparrow search algorithm (SSA) for the purpose of capturing the hidden relationship between features and SOH. The adaptability of the proposed method is validated by SOH estimation experiments of a single battery and a battery pack. Additionally, contrast experiments are performed to show the advanced estimation performance of the proposed method.

Abstract Image

基于渐降电流、双相关分析和GRU的电池SOH估计方法
在智能锂离子电池管理中,电池的健康状态(SOH)对电池在电动汽车中的运行至关重要。通常,通过使用合适的特征和数据驱动的方法来估计电池SOH。然而,由于电池的各种充电状态(SOC)和工作条件,很难从电池的充电和放电数据中提取表征电池SOH的适当特征。为了有效地估计电池SOH,本文提出了一种基于电流递减、双相关分析和门控递归单元(GRU)的估计方法。首先,测量恒压充电阶段逐渐减小的电流作为原始数据。然后,提出了双相关分析方法,从不同类别的特征中选择表征电池SOH的组合特征。同时,该方法还保证了输入特征的数量。最后,利用GRU算法建立了SOH估计模型,并利用麻雀搜索算法(SSA)提高了模型的学习率,以捕捉特征与SOH之间的隐藏关系。通过单个电池和电池组的SOH估计实验验证了该方法的适应性。此外,还进行了对比实验,展示了该方法的先进估计性能。
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CiteScore
6.40
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