论文标题

Kraichnan湍流的框架不变神经网络关闭

Frame invariant neural network closures for Kraichnan turbulence

论文作者

Pawar, Suraj, San, Omer, Rasheed, Adil, Vedula, Prakash

论文摘要

地球物理和大气流的数值模拟由于其空间分辨率有限,因此必须依赖于亚网格量表过程的参数化。尽管使用物理见解和数学近似为子网格量表(SGS)过程开发参数化(或关闭)模型的实质进展,但它们仍然不完善,可能导致预测不准确。近年来,机器学习已经成功地从高分辨率时空数据中提取复杂模式,从而改善了参数化模型,并最终可以更好地进行粗网格预测。但是,无法满足已知的物理学和不良的概括阻碍了这些模型在现实世界中的应用。在这项工作中,我们提出了一种不变的闭合方法,以通过将物理对称性直接嵌入神经网络的结构中来提高基于深度学习的亚网格量表闭合模型的准确性和概括性。具体而言,我们在卷积神经网络中利用了专门层,理论上可以保证所需的约束,而无需任何正则化项。我们为二维衰减的湍流测试案例展示了我们的框架,主要以前向肠cascade为特征。我们表明,我们的帧不变SGS模型(i)准确地预测了子网格量表源项,(ii)尊重物理对称性,例如翻译,galilean和旋转不变性,并且(iii)在以不同的初始条件和reynolds数字为单位的仿真中实现了(III)。这项工作在广泛的基于物理学的理论和数据驱动的建模范式之间建立了桥梁,因此代表了朝着物理一致的数据驱动的湍流封闭模型发展的有希望的步骤。

Numerical simulations of geophysical and atmospheric flows have to rely on parameterizations of subgrid scale processes due to their limited spatial resolution. Despite substantial progress in developing parameterization (or closure) models for subgrid scale (SGS) processes using physical insights and mathematical approximations, they remain imperfect and can lead to inaccurate predictions. In recent years, machine learning has been successful in extracting complex patterns from high-resolution spatio-temporal data, leading to improved parameterization models, and ultimately better coarse grid prediction. However, the inability to satisfy known physics and poor generalization hinders the application of these models for real-world problems. In this work, we propose a frame invariant closure approach to improve the accuracy and generalizability of deep learning-based subgrid scale closure models by embedding physical symmetries directly into the structure of the neural network. Specifically, we utilized specialized layers within the convolutional neural network in such a way that desired constraints are theoretically guaranteed without the need for any regularization terms. We demonstrate our framework for a two-dimensional decaying turbulence test case mostly characterized by the forward enstrophy cascade. We show that our frame invariant SGS model (i) accurately predicts the subgrid scale source term, (ii) respects the physical symmetries such as translation, Galilean, and rotation invariance, and (iii) is numerically stable when implemented in coarse-grid simulation with generalization to different initial conditions and Reynolds number. This work builds a bridge between extensive physics-based theories and data-driven modeling paradigms, and thus represents a promising step towards the development of physically consistent data-driven turbulence closure models.

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