论文标题

使用物理知识的生成对抗网络的湍流富集

Turbulence Enrichment using Physics-informed Generative Adversarial Networks

论文作者

Subramaniam, Akshay, Wong, Man Long, Borker, Raunak D, Nimmagadda, Sravya, Lele, Sanjiva K

论文摘要

生成对抗网络(GAN)已被广泛用于生成照片现实图像。一种称为超分辨率gan(SRGAN)的gan变体已经成功地用于图像超分辨率,其中低分辨率图像可以将其删除至$ 4 \ times $较大的图像,从而更现实。但是,当将这种生成模型用于描述物理过程的数据时,还有一些已知的限制,模型必须满足,包括管理方程和边界条件。通常,这些约束可能不会被生成的数据遵守。在这项工作中,我们开发了基于物理的方法来生成湍流的富集。我们通过修改损失函数来结合物理信息的学习方法,以最大程度地减少生成数据的控制方程的残差。我们已经分析了两个受过训练的物理知识模型:基于卷积神经网络(CNN)的监督模型和基于SRGAN的生成模型:SRGAN:湍流富集Gan(Tegan),并表明它们都超过了湍流中的简单简单的Bicubic插值。我们还表明,使用物理知识的学习也可以显着提高模型生成满足物理控制方程的数据的能力。最后,我们比较了Tegan的富集数据,以表明它能够恢复流场的统计指标,包括能量指标以及尺度间的能量动力学和流动形态。

Generative Adversarial Networks (GANs) have been widely used for generating photo-realistic images. A variant of GANs called super-resolution GAN (SRGAN) has already been used successfully for image super-resolution where low resolution images can be upsampled to a $4\times$ larger image that is perceptually more realistic. However, when such generative models are used for data describing physical processes, there are additional known constraints that models must satisfy including governing equations and boundary conditions. In general, these constraints may not be obeyed by the generated data. In this work, we develop physics-based methods for generative enrichment of turbulence. We incorporate a physics-informed learning approach by a modification to the loss function to minimize the residuals of the governing equations for the generated data. We have analyzed two trained physics-informed models: a supervised model based on convolutional neural networks (CNN) and a generative model based on SRGAN: Turbulence Enrichment GAN (TEGAN), and show that they both outperform simple bicubic interpolation in turbulence enrichment. We have also shown that using the physics-informed learning can also significantly improve the model's ability in generating data that satisfies the physical governing equations. Finally, we compare the enriched data from TEGAN to show that it is able to recover statistical metrics of the flow field including energy metrics and well as inter-scale energy dynamics and flow morphology.

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