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Maximum Available Capacity and Energy Estimation Based on Support Vector Machine Regression for Lithium-ion Battery

机译:基于支持向量机回归锂离子电池的最大可用容量和能量估计

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The practical application of electric vehicle needs an accurate and robust battery management system to monitor the battery state in real-time. The maximum available capacity (MAC) and maximum available energy (MAE) need to be derived before calculating state of charge and state of energy. However, the estimation of these two parameters is a difficult task due to the complicated and comprehensive influences of temperature, aging level and discharge rate. In this paper a data-driven algorithm, least squares support vector machine, is implemented to estimate the MAC and MAE, and the influences of temperature and degradation are taken into consideration. Meanwhile, a current correction term is proposed to compensate the effect of current rate. The experimental results verify the proposed methods have excellent estimation accuracy for LiFeP04 battery.
机译:电动车的实际应用需要精确且坚固的电池管理系统,实时监控电池状态。在计算充电状态和能量状态之前,需要导出最大可用容量(Mac)和最大可用能量(MAE)。然而,由于温度,老化水平和放电率的复杂和综合影响,这两个参数的估计是困难的任务。在本文中,实现了数据驱动算法,最小二乘支持向量机,以估计MAC和MAE,考虑温度和降解的影响。同时,提出了电流校正项以补偿电流率的影响。实验结果验证了提出的方法为LiFeP04电池具有出色的估计精度。

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