论文标题

CFDNET:用于流体模拟的深度学习加速器

CFDNet: a deep learning-based accelerator for fluid simulations

论文作者

Obiols-Sales, Octavi, Vishnu, Abhinav, Malaya, Nicholas, Chandramowlishwaran, Aparna

论文摘要

CFD广泛用于物理系统设计和优化,用于预测工程量的关注量,例如平面机翼上的升降机或机动车上的拖动。但是,由于评估CFD仿真的费用,许多感兴趣的系统对于设计优化而非常昂贵。为了使计算可牵持,使用降低或替代模型用于加速模拟,同时尊重高保真解决方案提供的收敛约束。本文介绍了CFDNET-一个物理模拟和深度学习耦合框架,用于加速雷诺的收敛性。 CFDNET旨在预测流体的主要物理特性,包括使用单个卷积神经网络的核心,包括速度,压力和涡流粘度。我们在训练过程中观察到测试几何形状,在各种用例上评估CFDNET。我们的结果表明,CFDNET符合域特异性物理求解器的收敛约束,同时在稳定的层流和湍流流量上都超过1.9-7.4倍。此外,我们通过测试对训练期间看不见的新几何形状的预测来证明CFDNET的概括能力。在这种情况下,该方法符合CFD收敛标准,同时仍然对仅传统域模型提供了显着的加速。

CFD is widely used in physical system design and optimization, where it is used to predict engineering quantities of interest, such as the lift on a plane wing or the drag on a motor vehicle. However, many systems of interest are prohibitively expensive for design optimization, due to the expense of evaluating CFD simulations. To render the computation tractable, reduced-order or surrogate models are used to accelerate simulations while respecting the convergence constraints provided by the higher-fidelity solution. This paper introduces CFDNet -- a physical simulation and deep learning coupled framework, for accelerating the convergence of Reynolds Averaged Navier-Stokes simulations. CFDNet is designed to predict the primary physical properties of the fluid including velocity, pressure, and eddy viscosity using a single convolutional neural network at its core. We evaluate CFDNet on a variety of use-cases, both extrapolative and interpolative, where test geometries are observed/not-observed during training. Our results show that CFDNet meets the convergence constraints of the domain-specific physics solver while outperforming it by 1.9 - 7.4x on both steady laminar and turbulent flows. Moreover, we demonstrate the generalization capacity of CFDNet by testing its prediction on new geometries unseen during training. In this case, the approach meets the CFD convergence criterion while still providing significant speedups over traditional domain-only models.

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