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Physics-Informed Machine Learning for Pouch Cell Temperature Estimation

arXiv:2604.1456642.8h-index: 1
Predicted impact top 59% in LG · last 90 daysOriginality Incremental advance
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It addresses the need for efficient and accurate temperature estimation in battery thermal management for transportation electrification, offering a faster and more reliable surrogate model.

The paper presents a physics-informed machine learning framework for estimating steady-state temperature profiles in pouch cells with indirect liquid cooling, achieving a 49.1% reduction in mean squared error over purely data-driven models.

Accurate temperature estimation of pouch cells with indirect liquid cooling is essential for optimizing battery thermal management systems for transportation electrification. However, it is challenging due to the computational expense of finite element simulations and the limitations of data-driven models. This paper presents a physics-informed machine learning (PIML) framework for the efficient and reliable estimation of steady-state temperature profiles. The PIML approach integrates the governing heat transfer equations directly into the neural network's loss function, enabling high-fidelity predictions with significantly faster convergence than purely data-driven methods. The framework is evaluated on a dataset of varying cooling channel geometries. Results demonstrate that the PIML model converges more rapidly and achieves markedly higher accuracy, with a 49.1% reduction in mean squared error over the data-driven model. Validation against independent test cases further confirms its superior performance, particularly in regions away from the cooling channels. These findings underscore the potential of PIML for surrogate modeling and design optimization in battery systems.

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