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A lumped thermal model of lithium-ion battery cells considering radiative heat transfer

机译:考虑辐射热传递的锂离子电池电池的总热模型

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摘要

Thermal management plays a critical role in battery operations to improve safety and prolong battery life, especially in high power applications such as electric vehicles. A lumped parameter (LP) battery thermal model (BTM) is usually preferred for real-time thermal management due to its simple structure and ease of implementation. Considering the time-varying model parameters (e.g., the varying convective heat dissipation coefficient under different cooling conditions), an online parameter estimation scheme is needed to improve modelling accuracy. In this paper, a new formulation of adaptive LP BTM is proposed. Unlike the conventional LP BTMs that only consider convection heat transfer, the radiative heat transfer is also considered in the proposed model to better approximate the physical heat dissipation process, which leads to an improved modelling accuracy. On the other hand, the radiative heat transfer introduces nonlinearity to the BTM and poses challenge to online parameter estimation. To tackle this problem, the simplified refined instrumental variable approach is proposed for real-time parameter estimation by reformulating the nonlinear model equations into a linear-in-the-parameter manner. Finally, test data are collected using a Li ion battery. The experimental results have verified the accuracy of the proposed BTM and the effectiveness of the proposed online parameter estimation algorithm.
机译:热管理在电池运营中发挥着关键作用,以改善安全性和延长电池寿命,特别是在电动车如电动车如高功率应用中。一流的参数(LP)电池热模型(BTM)通常优于实时热管理,因为其结构简单和易于实现。考虑到时变模型参数(例如,在不同冷却条件下的变化的对流散热系数)中,需要在线参数估计方案来提高建模精度。本文提出了一种新的适应性LP BTM的制剂。与仅考虑对流传热的传统LP BTMS不同,在所提出的模型中也考虑辐射传热以更好地近似物理散热过程,这导致改进的建模精度。另一方面,辐射传热将非线性引入BTM并对在线参数估计构成挑战。为了解决这个问题,提出了通过将非线性模型方程重新塑造成直接参数方式来实时参数估计来提出简化的精细仪器变量方法。最后,使用LI离子电池收集测试数据。实验结果已经验证了所提出的BTM的准确性和所提出的在线参数估计算法的有效性。

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