论文标题
用Gappy Pod,扩展POD和生成对抗网络对湍流旋转流的多尺度数据重建
Multi-scale data reconstruction of turbulent rotating flows with Gappy POD, Extended POD and Generative Adversarial Networks
论文作者
论文摘要
使用数据驱动的工具研究了旋转湍流快照的数据重建。鉴于直接和反向能量级联对众多的地球物理应用和基本方面至关重要,这导致了大小规模的非高斯统计。数据同化还可以作为一种工具来通过根据所使用的信息的质量和数量来评估重建的性能,以对湍流中的物理特征进行排名。此外,对各种重建技术进行基准测试对于评估定量至高无上,实施复杂性和明确性之间的权衡至关重要。在这项研究中,我们使用基于适当的正交分解(POD)和生成对抗网络(GAN)的线性和非线性工具来重建具有空间损坏(内置)的旋转湍流快照。我们专注于准确再现统计特性和瞬时速度场。研究了不同的差距和差距几何形状,以评估缺失信息的相干性和多尺度属性的重要性。令人惊讶的是,关于重点的重建,非线性gan的表现并不优于线性吊舱技术之一。另一方面,当比较统计多尺度属性时,显示了GAN方法的至高无上。同样,使用GAN时,可以更好地预测间隙区域中的极端事件。点误差和统计属性之间的平衡受对抗比的控制,这决定了GAN训练中发生器和鉴别器的相对重要性。还讨论了针对测量噪声的鲁棒性。
Data reconstruction of rotating turbulent snapshots is investigated utilizing data-driven tools. This problem is crucial for numerous geophysical applications and fundamental aspects, given the concurrent effects of direct and inverse energy cascades, which lead to non-Gaussian statistics at both large and small scales. Data assimilation also serves as a tool to rank physical features within turbulence, by evaluating the performance of reconstruction in terms of the quality and quantity of the information used. Additionally, benchmarking various reconstruction techniques is essential to assess the trade-off between quantitative supremacy, implementation complexity, and explicability. In this study, we use linear and non-linear tools based on the Proper Orthogonal Decomposition (POD) and Generative Adversarial Network (GAN) for reconstructing rotating turbulence snapshots with spatial damages (inpainting). We focus on accurately reproducing both statistical properties and instantaneous velocity fields. Different gap sizes and gap geometries are investigated in order to assess the importance of coherency and multi-scale properties of the missing information. Surprisingly enough, concerning point-wise reconstruction, the non-linear GAN does not outperform one of the linear POD techniques. On the other hand, supremacy of the GAN approach is shown when the statistical multi-scale properties are compared. Similarly, extreme events in the gap region are better predicted when using GAN. The balance between point-wise error and statistical properties is controlled by the adversarial ratio, which determines the relative importance of the generator and the discriminator in the GAN training. Robustness against the measurement noise is also discussed.