基于数据的锂离子电池状态在线估计

A. Fill, Arber Avdyli, K. Birke
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引用次数: 4

摘要

为了满足电动汽车对电池在功率、续驶里程和安全性方面的要求,对电池状态进行准确的在线估计是必不可少的。本文提出了两种基于数据的方法,以较低的计算量和存储容量连续估计每个单元的阻力。估计电阻分布的长期和短期变化用于深入了解电池单元之间的温度和SoH梯度。该算法通过电池的测量得到验证,电池由两个模块组成,每个模块包含50个汽车锂离子袋电池。该算法检测到靠近模块边缘的电池温度下降,并通过使用温度传感器进行验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Data-based Cell State Estimation of a Lithium-Ion Battery
To fulfill the battery requirements of an electric vehicle in terms of power, driving range and safety an accurate online estimation of the cell states is essential. In this paper two data-based approaches, which continuously estimate the resistance of each cell with low computational effort and memory capacity needed, are presented. The long- and short-term changes of the estimated resistance distribution are used to give insights into temperature and SoH gradients between the cells of a battery. The algorithms are validated by measurements of a battery, consisting of two modules each containing 50 automotive lithium-ion pouch cells. Decreasing cell temperatures close to the module edges are detected by the algorithms, which is validated by the use of temperature sensors.
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