Dynamic Electro-Thermal Li-ion Battery Model for Control Algorithms

Alessandro Rizzello, S. Scavuzzo, A. Ferraris, A. Airale, M. Carello
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引用次数: 4

Abstract

This paper presents a fast and effective approach to evaluate the heat generation of a Li-ion battery system. The thermal characterization of Li-ion batteries is a relevant topic for the correct monitoring of the battery pack. In particular, a reduced-order model, that estimates the thermal dynamics of a Li-ion battery cell, is reported. The proposed approach relies on the definition of a boundary-value problem for heat conduction, in the form of a linear partial differential equation with the integration of Equivalent Circuit Model. The model is based on the double polarization Thévenin equivalent circuit model since it represents an optimal trade-off between accuracy and computation effort, which justifies its implementation in a Battery Management System (BMS) for automotive real-time monitoring and control. The resulting model predicts the temperature dynamics at the external surface in relation with the rate of the internal heat generation. In this paper, the model is applied to estimate the temperature of a cylindrical cell during a discharging transient and it uses electrical data acquired from experimental tests and is validated Computational fluid dynamics simulation. The results of the test are suitable for the future implementation of a proper algorithm for State of Charge SOC and State of Health SOH estimations.
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动态电热锂离子电池模型的控制算法
本文提出了一种快速有效的锂离子电池系统产热评价方法。锂离子电池的热特性是正确监测电池组的一个相关课题。特别是,一个降阶模型,估计了锂离子电池的热动力学,被报道。提出的方法依赖于热传导边值问题的定义,以线性偏微分方程的形式与等效电路模型的积分。该模型基于双极化thsamvenin等效电路模型,因为它代表了精度和计算工作量之间的最佳权衡,这证明了它在汽车实时监测和控制的电池管理系统(BMS)中的实现是合理的。所得到的模型预测了外表面的温度动态与内部产热速率的关系。本文将该模型应用于圆柱电池放电瞬态过程的温度估计,并利用实验测试得到的电学数据进行了计算流体力学仿真验证。测试结果适用于未来实现充电状态SOC和健康状态SOH估计的适当算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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