Neural differentiable modeling with diffusion-based super-resolution for two-dimensional spatiotemporal turbulence

IF 6.9 1区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY Computer Methods in Applied Mechanics and Engineering Pub Date : 2024-10-25 DOI:10.1016/j.cma.2024.117478
Xiantao Fan , Deepak Akhare , Jian-Xun Wang
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Abstract

Simulating spatiotemporal turbulence with high fidelity remains a cornerstone challenge in computational fluid dynamics (CFD) due to its intricate multiscale nature and prohibitive computational demands. Traditional approaches typically employ closure models, which attempt to represent small-scale features in an unresolved manner. However, these methods often sacrifice accuracy and lose high-frequency/wavenumber information, especially in scenarios involving complex flow physics. In this paper, we introduce an innovative neural differentiable modeling framework designed to enhance the predictability and efficiency of spatiotemporal turbulence simulations. Our approach features differentiable hybrid modeling techniques that seamlessly integrate deep neural networks with numerical PDE solvers within a differentiable programming framework, synergizing deep learning with physics-based CFD modeling. Specifically, a hybrid differentiable neural solver is constructed on a coarser grid to capture large-scale turbulent phenomena, followed by the application of a Bayesian conditional diffusion model that generates small-scale turbulence conditioned on large-scale flow predictions. Two innovative hybrid architecture designs are studied, and their performance is evaluated through comparative analysis against conventional large eddy simulation techniques with physics-based subgrid-scale closures and purely data-driven neural solvers. The findings underscore the potential of the neural differentiable modeling framework to significantly enhance the accuracy and computational efficiency of turbulence simulations. This study not only demonstrates the efficacy of merging deep learning with physics-based numerical solvers but also sets a new precedent for advanced CFD modeling techniques, highlighting the transformative impact of differentiable programming in scientific computing.
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针对二维时空湍流的基于扩散的超分辨率神经可微分建模
由于复杂的多尺度性质和过高的计算要求,高保真地模拟时空湍流仍然是计算流体动力学(CFD)的一项基本挑战。传统方法通常采用闭合模型,试图以未解决的方式表示小尺度特征。然而,这些方法往往会牺牲精度并丢失高频/波数信息,尤其是在涉及复杂流动物理的情况下。在本文中,我们介绍了一种创新的神经可微分建模框架,旨在提高时空湍流模拟的可预测性和效率。我们的方法以可微分混合建模技术为特色,在可微分编程框架内将深度神经网络与数值 PDE 求解器无缝集成,使深度学习与基于物理的 CFD 建模协同增效。具体来说,在较粗的网格上构建混合可微分神经求解器,捕捉大尺度湍流现象,然后应用贝叶斯条件扩散模型,以大尺度流动预测为条件生成小尺度湍流。研究了两种创新的混合架构设计,并通过与传统的大涡度模拟技术(基于物理的子网格尺度闭合)和纯数据驱动的神经求解器进行比较分析,评估了它们的性能。研究结果强调了神经可微分建模框架在显著提高湍流模拟的精度和计算效率方面的潜力。这项研究不仅证明了将深度学习与基于物理的数值求解器相结合的功效,还为先进的 CFD 建模技术开创了新的先例,凸显了可微分编程在科学计算中的变革性影响。
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来源期刊
CiteScore
12.70
自引率
15.30%
发文量
719
审稿时长
44 days
期刊介绍: Computer Methods in Applied Mechanics and Engineering stands as a cornerstone in the realm of computational science and engineering. With a history spanning over five decades, the journal has been a key platform for disseminating papers on advanced mathematical modeling and numerical solutions. Interdisciplinary in nature, these contributions encompass mechanics, mathematics, computer science, and various scientific disciplines. The journal welcomes a broad range of computational methods addressing the simulation, analysis, and design of complex physical problems, making it a vital resource for researchers in the field.
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