Convolutional neural networks for compressible turbulent flow reconstruction

被引:9
|
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; DIRECT NUMERICAL-SIMULATION; LOW-FREQUENCY UNSTEADINESS; SHOCK-INDUCED SEPARATION; BOUNDARY-LAYER; SUPERRESOLUTION RECONSTRUCTION; WAVE STRUCTURE; HIGH-ORDER; RAMP; TEMPERATURE;
D O I
10.1063/5.0177654
中图分类号
O3 [力学];
学科分类号
08 ; 0801 ;
摘要
This paper investigates deep learning methods in the framework of convolutional neural networks for reconstructing compressible turbulent flow fields. The aim is to develop methods capable of up-scaling coarse turbulent data into fine-resolution images. The method is based on a parallel computational framework that accepts five image sets of various resolutions, trained to correspond to the respective fine resolution. The network architecture mainly consists of convolutional layers, constructing an encoder/decoder network. Based on the U-Net scheme, three different implementations are presented, with residual and skip connections. The methods are implemented in a supersonic shock-boundary-layer interaction problem. The results suggest that simple networks perform better when trained on limited data, and this can be a practical and fast solution when dealing with turbulent flow data, where the computational burden is most of the time difficult to decrease. In such a way, a coarse simulation grid can be upscaled to a fine grid.
引用
收藏
页数:15
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