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Gaussian Process Regression based State of Health Estimation of Lithium-Ion Batteries using Indirect Battery Health Indicators*

机译:基于高斯工艺回归使用间接电池健康指标的锂离子电池的健康估算状态*

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摘要

In a Battery Management System (BMS), the State of Health (SoH) of a battery is a key parameter to be estimated. This parameter shows whether the capacity of the battery has degraded substantially from its original value. However, in online applications, it is difficult to directly measure the capacity of a battery. In this paper, Indirect Health Indicators (IHIs) are extracted from the curves of terminal voltage, current, and temperature during the process of charging and discharging the batteries, which reflect the battery capacity degradation. Out of a number of such indirect indicators, some significant ones are selected as the inputs of an SoH estimation algorithm by applying the Principal Component Analysis (PCA) technique. Based on these, the Gaussian Process Regression (GPR) method is used for the final SoH estimation. The results show that the proposed method has quite high estimation accuracy.
机译:在电池管理系统(BMS)中,电池的健康状况(SOH)是要估计的关键参数。 此参数显示电池的容量是否大大从其原始值下降。 但是,在在线应用中,难以直接测量电池的容量。 在本文中,在充电和放电过程中,从端电压,电流和温度的曲线提取间接健康指标(IHI),这反映了电池容量劣化。 在许多这样的间接指示器中,通过应用主成分分析(PCA)技术来选择一些重要的表示作为SOH估计算法的输入。 基于这些,高斯进程回归(GPR)方法用于最终的SOH估计。 结果表明,该方法具有相当高的估计精度。

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