基于静置电压曲线和DBSCAN聚类算法的退役电池SOH快速估计策略
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合肥工业大学电气与自动化工程学院合肥230009

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TN0;TM93

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安徽省科技重大专项(18030901064)资助


Rapid SOH estimation strategy for retired batteries based on resting voltage curves and DBSCAN clustering algorithm
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School of Electrical Engineering and Automation, Hefei University of Technology, Hefei 230009,China

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    摘要:

    退役动力电池即将迎来回收高峰,二次利用可以有效避免电池退役造成的资源浪费和环境污染。健康状态(state of health, SOH)评估是退役电池二次使用场景的关键依据,但是传统的退役电池SOH估计方法存在耗时和耗能的缺点。在将退役电池放电至相同电压下限后,不同SOH电池的荷电状态(state of charge, SOC)将存在差异,导致不同SOH电池静置电压曲线变化趋势不同。提出基于静置电压曲线的退役电池SOH快速估计策略,从这种静置电压差异中分析健康特征,可实现退役电池SOH的快速估计。针对在退役电池数据采集时部分电池会由于采集误差形成离群点,进而会导致训练集无法正确训练回归算法模型的问题,分析了离群点数量对回归算法估计电池SOH精度的影响,并利用基于密度的聚类算法(density-based spatial clustering of applications with noise,DBSCAN)标识这些离群点,并在此基础上提出了离群点标识效果评估方法,可避免离群点影响SOH估计模型的准确性,有效提高了SOH估计精度。

    Abstract:

    The recycling of retired power batteries is about to reach a peak. The secondary use of retired batteries can effectively avoid the waste of resources and environmental pollution. State of health (SOH) assessment is a key evaluation index for the secondary use. But traditional methods for estimating the SOH have the disadvantages of time and energy consumption. This paper proposes a rapid estimation strategy for the SOH of retired batteries based on resting voltage curves. After discharging the retired batteries to the same voltage lower limit, there will be differences in the state of charge (SOC) of different SOH batteries. Eventually, the resting voltage curves of different SOH batteries varies. By analyzing the health characteristics from this resting voltage difference, this paper achieves rapid estimation of the SOH of retired batteries. There are outliers in data collection due to acquisition errors, which can lead to incorrect training of regression algorithm models in the training set. In order to address this problem, this paper analyzes the impact of the number of outliers on the accuracy of regression algorithm estimation of SOH. This paper proposes using the density-based spatial clustering of applications with noise (DBSCAN) clustering algorithm to identify these outliers. The identifications of outliers can avoid the impact of outliers on the accuracy of SOH estimation model and effectively improve the accuracy of SOH estimation.

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黄海宏,刘鑫.基于静置电压曲线和DBSCAN聚类算法的退役电池SOH快速估计策略[J].电子测量与仪器学报,2026,40(1):20-32

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  • 在线发布日期: 2026-03-27
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