基于改进最小二乘支持向量机的锂离子电池健康状态快速估计方法*

Fast Estimating the State of Health of Lithium-ion Batteries Based on Improved Least Squares Support Vector Machine

  • 摘要: 锂离子电池健康状态(State of health, SOH)是电池系统安全管理与运维的主要参数之一,准确快速的SOH估计对提高电池应用的安全性有着重要意义。针对目前存在的电池SOH估计速度与精度难以兼顾的问题,提出一种基于改进最小二乘支持向量机(Improved least squares support vector machine, ILS-SVM)的SOH快速准确估计方法。通过对LS-SVM算法设定合适的临界系数,舍弃部分支持向量,削弱边界样本对算法的影响,从而提高了算法的鲁棒性与运行速度,形成改进的LS-SVM算法。通过分析电池电压特性,选取特征电压数据区间进行估计,有效避免电池的完全充放电测量,提高SOH的估计效率。验证结果表明,所提出的电池SOH估计方法估计精度较高,大部分估计误差小于1%,且所提算法相比于改进之前的算法,运行速度提升最高可达20%。

     

    Abstract: State of health(SOH) is one of the core parameters for the safe management and operation of battery systems. Accurate and rapid estimation of SOH is of great significance to the safe utilization of batteries. To address the issue that conventional SOH estimation algorithms are difficult to involve both high running speed and high accuracy, a fast estimation method of battery SOH using an improved least squares support vector machine(ILS-SVM) is proposed. The robustness and running speed of the algorithm can be effectively improved by setting appropriate critical parameters, which discards some support vectors and weakens the influence of boundary samples on the algorithm. The ILS-SVM is then employed to fast estimate SOH of different battery data sets. By analyzing the operation data of batteries, a specific voltage data interval is used for data preprocessing to avoid the complete charging and discharging measurement of the battery, thus improving the efficiency of battery SOH estimation. The verified results show that accurate estimates can be achieved, and most of estimation errors of battery SOH are less than 1%. Compared with the original LS-SVM algorithm, the running speed of the ILS-SVM can be improved by up to 20%.

     

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