全电离等离子体流体模型闭包的神经网络可表征性

R. Maulik, N. Garland, Xianzhu Tang, Prasanna Balaprakash
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引用次数: 17

摘要

流体建模中的闭包问题对于建模者来说是一个众所周知的挑战,建模者的目标是准确地描述他们感兴趣的系统。多年来,已经提出了各种形式的解析公式,但实际的、广义的磁化等离子体流体闭合仍然是一个难以实现的目标。在本研究中,作为构建基于数据的新方法解决该问题的第一步,我们应用日益成熟的机器学习方法来评估神经网络架构重现流行磁化等离子体闭包中固有的关键物理特性的能力。我们发现了令人鼓舞的结果,表明神经网络对闭合物理的适用性,但也得出了关于如何为给定的由等离子体基础物理决定的局部性选择适当的网络架构的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural network representability of fully ionized plasma fluid model closures
The closure problem in fluid modeling is a well-known challenge to modelers aiming to accurately describe their system of interest. Over many years, analytic formulations in a wide range of regimes have been presented but a practical, generalized fluid closure for magnetized plasmas remains an elusive goal. In this study, as a first step towards constructing a novel data based approach to this problem, we apply ever-maturing machine learning methods to assess the capability of neural network architectures to reproduce crucial physics inherent in popular magnetized plasma closures. We find encouraging results, indicating the applicability of neural networks to closure physics but also arrive at recommendations on how one should choose appropriate network architectures for given locality properties dictated by underlying physics of the plasma.
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