New Energy Vehicle Power Lithium Battery Model Establishment Method and SOC Estimation Research

Hua Ou, Hao Wu
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Abstract

As the main source of power for pure electric vehicles, new energy vehicle power lithium batteries are also a key technology that restricts the development of pure electric vehicles, and can directly affect the driving performance of vehicles. A reliable and efficient management system (Battery Management System, BMS) can allow the lithium-ion battery to output its best performance stably, while ensuring that the battery has a long enough service life. State of charge (SOC) estimation plays an important role in Li-ion battery management systems. The establishment of the battery working model is an important part of the state of charge estimation. Therefore, higher requirements are put forward for the establishment of the battery model. At the same time, the error of the subsequent data processing and estimation results is smaller, and the Kalman filter is often used for processing. This paper starts from the current situation of model research and improvement, focuses on the equivalent circuit model, analyzes the advantages and disadvantages of each model, and summarizes the comparative research on the analysis and processing effect of Kalman filter. And further experiment verification of SOC estimation through battery test experiments and algorithms, use Thevenin model, use least squares method for parameter identification, and finally use Kalman filter for SOC estimation, according to the analysis of the results, the fitting accuracy is 1.69%, provided by battery research a strong theoretical foundation.
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新能源汽车动力锂电池模型建立方法及SOC估算研究
新能源汽车动力锂电池作为纯电动汽车的主要动力来源,也是制约纯电动汽车发展的关键技术,可以直接影响到车辆的行驶性能。一个可靠、高效的管理系统(Battery management system, BMS)可以让锂离子电池稳定地输出最佳性能,同时保证电池有足够长的使用寿命。荷电状态(SOC)估计在锂离子电池管理系统中起着重要的作用。电池工作模型的建立是电量状态估计的重要组成部分。因此,对电池模型的建立提出了更高的要求。同时,后续数据处理和估计结果误差较小,常采用卡尔曼滤波进行处理。本文从模型研究和改进的现状出发,以等效电路模型为重点,分析了各模型的优缺点,总结了卡尔曼滤波分析和处理效果的比较研究。并通过电池测试实验和算法进一步实验验证荷电状态估计,使用Thevenin模型,使用最小二乘法进行参数辨识,最后使用卡尔曼滤波进行荷电状态估计,根据结果分析,拟合精度为1.69%,为电池研究提供了较强的理论基础。
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