基于迭代学习的锂离子电池模型辨识与充电状态估计

Qiao Zhu, Mengen Xu, Meng’qian Zheng
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引用次数: 5

摘要

本文主要研究采用迭代学习方法对锂离子电池的非线性参数进行准确辨识。首先,介绍了二阶RC模型。然后,当电池进行从100%到0%的放电试验时,提出了一种基于迭代学习的递归最小二乘(IL-RLS)算法来准确识别回归模型的非线性参数。IL-RLS算法的核心思想是通过学习之前轨迹的估计误差来改进当前的参数估计。值得注意的是,对于长时间的重复试验,IL-RLS算法需要离线实现,这是准确识别非线性参数值得付出的代价。然后,利用IL-RLS将参数识别为SOC的功能,并与经典电流脉冲识别方法的结果进行对比验证。最后,利用经典的扩展卡尔曼滤波(EKF)和IL-RLS识别的参数对SOC进行估计,给出了三种动态运行条件,证明了IL-RLS的有效性,其中所有SOC估计误差都小于2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Iterative Learning Based Model Identification and State of Charge Estimation of Lithium-Ion Battery
This work focuses on the accurate identification of Lithium-ion battery’s nonlinear parameters by using an iterative learning method. First, the 2nd-order RC model is introduced. Then, when the battery repeatedly implements a discharging trial from SOC 100% to 0%, an iterative learning based recursive least square (IL-RLS) algorithm is presented to accurately identify the nonlinear parameters of the regression model. The essential idea of IL-RLS algorithm is to improve the current parameter estimations by learning the estimation errors of the previous trails. Notably, the IL-RLS algorithm needs to be implemented offline for the long-time repetitive trials, which is the price worth paying to accurately identify the nonlinear parameters. After that, the parameters are identified as the functions of SOC by using the IL-RLS, which are verified by comparing with the result of the classic identification method for current pulses. Finally, by using the classic extended Kalman filter (EKF) as well as the parameters identified by the IL-RLS to estimate the SOC, three dynamic operation conditions are given to show the efficiency of the IL-RLS, where all the SOC estimation errors are less than 2%.
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