预测电池模块内单个电池温度的低计算模型

IF 4.6 4区 化学 Q2 ELECTROCHEMISTRY Batteries Pub Date : 2024-03-12 DOI:10.3390/batteries10030098
Ali Abbas, Nassim Rizoug, R. Trigui, E. Redondo-Iglesias, S. Pélissier
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引用次数: 0

摘要

就电动汽车的安全性和效率而言,预测锂离子电池在不同循环期间的工作温度非常重要。因此,采用合适的建模方法来分析电池的热性能至关重要。本文研究了锂离子 NMC 袋式电池的温度。本文提出了一种基于热阻网络的块状模型新公式。与以往将电池视为单一实体的模型不同,本文提出的模型引入了更详细的分析,将单个电池和单个电池片之间的热相互作用纳入单个电池的情况中,同时还考虑了模块情况中电池和位于电池之间的绝缘体或间隙之间的相互作用。这一改进可以精确预测电池模块中不同电池单元之间的温度变化。为了评估预测的准确性,我们采用了一个三维有限元模型作为参考。研究首先在单个电池上进行,然后在不同工作条件下,在由多个电池串联组成的模块上进行。对两个模型进行了全面比较。分析主要集中在两个方面:温度预测的准确性和所需的计算时间。值得注意的是,所开发的叠加模型在估算模块内的电池温度方面表现出了很强的能力。热结果显示与有限元模型的预测值非常接近,而所需的计算时间却大大减少。例如,有限元模型预测 10 个电池模块在连续充放电周期中的电池温度需要近 21 小时,而所开发的叠加模型在几秒钟内就预测出了温度,最大差异为 0.42 °C。
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Low-Computational Model to Predict Individual Temperatures of Cells within Battery Modules
Predicting the operating temperature of lithium-ion battery during different cycles is important when it comes to the safety and efficiency of electric vehicles. In this regard, it is vital to adopt a suitable modeling approach to analyze the thermal performance of a battery. In this paper, the temperature of lithium-ion NMC pouch battery has been investigated. A new formulation of lumped model based on the thermal resistance network is proposed. Unlike previous models that treated the battery as a single entity, the proposed model introduces a more detailed analysis by incorporating thermal interactions between individual cells and tabs within a single cell scenario, while also considering interactions between cells and insulators or gaps, located between the cells, within the module case. This enhancement allows for the precise prediction of temperature variations across different cells implemented within the battery module. In order to evaluate the accuracy of the prediction, a three-dimensional finite element model was adopted as a reference. The study was performed first on a single cell, then on modules composed of several cells connected in series, during different operating conditions. A comprehensive comparison between both models was conducted. The analysis focused on two main aspects, the accuracy of temperature predictions and the computational time required. Notably, the developed lumped model showed a significant capability to estimate cell temperatures within the modules. The thermal results revealed close agreement with the values predicted by the finite element model, while needing significantly lower computational time. For instance, while the finite element model took almost 21 h to predict the battery temperature during consecutive charge/discharge cycles of a 10-cell module, the developed lumped model predicted the temperature within seconds, with a maximum difference of 0.42 °C.
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来源期刊
Batteries
Batteries Energy-Energy Engineering and Power Technology
CiteScore
4.00
自引率
15.00%
发文量
217
审稿时长
7 weeks
期刊最新文献
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