基于连续系统辨识方法和非均匀采样数据的非线性电池建模

Markus Kneissl, C. Hametner, Markus Dohr
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引用次数: 5

摘要

本文提出了一种基于非均匀采样数据的电池模型识别方法,旨在反映锂离子电池的非线性动态行为。为了准确地预测电压响应,底层模型应该重现电池单元的快速和缓慢动态。因此,采用基于连续时间模型辨识的非均匀采样测量数据直接辨识。考虑到电池的非线性行为,对电池的充电状态进行局部线性模型划分。所得到的电池动态模型能够准确地预测系统的响应。在等效电路模型的基础上,将参数转换为物理可解释的参数,研究了相似单元间的参数方差、模型识别对温度的依赖以及参数随时间的变化特征。所有结果均基于三个相同锂离子动力电池的非均匀采样输入输出测量数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nonlinear battery modeling using continuous-time system identification methods and non-uniformly sampled data
A battery model identification approach, based on non-uniformly sampled data, aiming to reflect the nonlinear dynamic behavior of a lithium-ion cell is presented in this work. To accurately predict the voltage response, the underlying model should reproduce the fast and slow dynamics of the battery cell. Therefore direct identification from non-uniformly sampled measurement data based on continuous-time model identification is applied. To take into account the nonlinear behavior of the battery, local linear model partitioning for the state of charge is performed. The resulting dynamic battery model is able to accurately predict the system response. With a parameter conversion to physically interpretable parameters, based on an equivalent circuit model, the parameter variance among similar cells and the temperature dependency of the model identification are investigated as well as the parameter characteristics over time. All results are based on non-uniformly sampled input output measurement data of three identical lithium-ion power cells.
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