Spatiotemporal super-resolution forecasting of high-speed turbulent flows

被引:4
作者
Sofos, Filippos [1 ,2 ]
Drikakis, Dimitris [1 ]
Kokkinakis, Ioannis William [1 ]
Spottswood, S. Michael [3 ]
机构
[1] Univ Nicosia, Inst Adv Modeling & Simulat, CY-2417 Nicosia, Cyprus
[2] Univ Thessaly, Dept Phys, Condensed Matter Phys Lab, Lamia 35100, Greece
[3] Air Force Res Lab, Wright Patterson Afb, OH 45433 USA
关键词
LARGE-EDDY SIMULATION; HIGH-ORDER;
D O I
10.1063/5.0250509
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
This paper implements a spatiotemporal neural network architecture based on the U-Net prototype with four branches, UBranch, to perform both spatial reconstruction and temporal forecasting of flow fields. A high-speed turbulent flow featuring shock-wave turbulent boundary layer interaction is utilized to demonstrate the forecasting in two-dimensional flow frames. The main elements of UBranch consist of convolutional neural networks, which are fast and lightweight for such functions, in a form that bypasses the use of complex and time-consuming long-short-term memory networks. The proposed model can provide the following four future time frames when fed with a sequence of two-dimensional flow images with reasonable accuracy and low root mean square error, and, in parallel, it can indicate the maximum pressure points, which is of primary importance for shock-wave turbulent boundary layer interaction. Apart from the temporal operation, UBranch can also perform spatial super-resolution tasks, reconstructing a low-resolution image to a finer field with increased accuracy. Calculated peak signal-to-noise ratios reach 29.0 for spatiotemporal and 35.0 for spatial-only tasks.
引用
收藏
页数:12
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