Two deep learning (DL) models addressing the super-resolution (SR) reconstruction of turbulent flows from low-resolution coarse flow field data are developed. One is the static convolutional neural network (SCNN), and the other is the novel multiple temporal paths convolutional neural network (MTPC). The SCNN model takes instantaneous snapshots as an input, while the MTPC model takes a time series of velocity fields as an input, and it includes spatial and temporal information simultaneously. Three temporal paths are designed in the MTPC to fully capture features in different time ranges. A weight path is added to generate pixel-level weight maps of each temporal path. These models were first applied to forced isotropic turbulence. The corresponding high-resolution flow fields were reconstructed with high accuracy. The MTPC seems to be able to reproduce many important features as well, such as kinetic energy spectra and the joint probability density function of the second and third invariants of the velocity gradient tensor. As a further evaluation, the SR reconstruction of anisotropic channel flow with the DL models was performed. The SCNN and MTPC remarkably improve the spatial resolution in various wall regions and potentially grasp all the anisotropic turbulent properties. It is also shown that the MTPC supplements more under-resolved details than the SCNN. The success is attributed to the fact that the MTPC can extract extra temporal information from consecutive fluid fields. The present work may contribute to the development of the subgrid-scale model in computational fluid dynamics and enrich the application of SR technology in fluid mechanics.

1.
R. J.
Adrian
, “
Twenty years of particle image velocimetry
,”
Exp. Fluids
39
,
159
169
(
2005
).
2.
S. L.
Brunton
and
B. R.
Noack
, “
Closed-loop turbulence control: Progress and challenges
,”
Appl. Mech. Rev.
67
,
050801
(
2015
).
3.
J. N.
Kutz
, “
Deep learning in fluid dynamics
,”
J. Fluid Mech.
814
,
1
4
(
2017
).
4.
M.
Raissi
,
P.
Perdikaris
, and
G. E.
Karniadakis
, “
Physics-informed neural networks: A deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations
,”
J. Comput. Phys.
378
,
686
707
(
2019
).
5.
S.
Lee
and
D.
You
, “
Data-driven prediction of unsteady flow over a circular cylinder using deep learning
,”
J. Fluid Mech.
879
,
217
254
(
2019
).
6.
V.
Sekar
,
Q.
Jiang
,
C.
Shu
, and
B. C.
Khoo
, “
Fast flow field prediction over airfoils using deep learning approach
,”
Phys. Fluids
31
,
057103
(
2019
).
7.
Z.
Wang
,
K.
Luo
,
D.
Li
,
J.
Tan
, and
J.
Fan
, “
Investigations of data-driven closure for subgrid-scale stress in large-eddy simulation
,”
Phys. Fluids
30
,
125101
(
2018
).
8.
J.
Ling
,
A.
Kurzawski
, and
J.
Templeton
, “
Reynolds averaged turbulence modelling using deep neural networks with embedded invariance
,”
J. Fluid Mech.
807
,
155
166
(
2016
).
9.
B. D.
Tracey
,
K.
Duraisamy
, and
J. J.
Alonso
, “
A machine learning strategy to assist turbulence model development
,” in
53rd AIAA Aerospace Sciences Meeting
(
AIAA
,
2015
), p.
1287
.
10.
X.
Jin
,
P.
Cheng
,
W.-L.
Chen
, and
H.
Li
, “
Prediction model of velocity field around circular cylinder over various Reynolds numbers by fusion convolutional neural networks based on pressure on the cylinder
,”
Phys. Fluids
30
,
047105
(
2018
).
11.
H.
Koizumi
,
S.
Tsutsumi
, and
E.
Shima
, “
Feedback control of Karman vortex shedding from a cylinder using deep reinforcement learning
,” AIAA Paper No. 2018-3691, 2018.
12.
J.
Rabault
and
A.
Kuhnle
, “
Accelerating deep reinforcement learning strategies of flow control through a multi-environment approach
,”
Phys. Fluids
31
,
094105
(
2019
).
13.
M.
Gazzola
,
A. A.
Tchieu
,
D.
Alexeev
,
A.
de Brauer
, and
P.
Koumoutsakos
, “
Learning to school in the presence of hydrodynamic interactions
,”
J. Fluid Mech.
789
,
726
749
(
2016
).
14.
S.
Verma
,
G.
Novati
, and
P.
Koumoutsakos
, “
Efficient collective swimming by harnessing vortices through deep reinforcement learning
,”
Proc. Natl. Acad. Sci. U. S. A.
115
,
5849
5854
(
2018
).
15.
K.
Hayat
, “
Multimedia super-resolution via deep learning: A survey
,”
Digital Signal Process.
81
,
198
217
(
2018
).
16.
S. L.
Brunton
,
B. R.
Noack
, and
P.
Koumoutsakos
, “
Machine learning for fluid mechanics
,”
Annu. Rev. Fluid Mech.
52
,
477
508
(
2020
).
17.
C.
Dong
,
C. C.
Loy
,
K.
He
, and
X.
Tang
, “
Learning a deep convolutional network for image super-resolution
,” in
European Conference on Computer Vision
(
Springer
,
2014
), pp.
184
199
.
18.
W.
Dong
,
L.
Zhang
,
G.
Shi
, and
X.
Wu
, “
Image deblurring and super-resolution by adaptive sparse domain selection and adaptive regularization
,”
IEEE Trans. Image Process.
20
,
1838
1857
(
2011
).
19.
J.
Yang
,
J.
Wright
,
T. S.
Huang
, and
Y.
Ma
, “
Image super-resolution via sparse representation
,”
IEEE Trans. Image Process.
19
,
2861
2873
(
2010
).
20.
C.
Dong
,
C. C.
Loy
, and
X.
Tang
, “
Accelerating the super-resolution convolutional neural network
,” in
European Conference on Computer Vision
(
Springer
,
2016
), pp.
391
407
.
21.
W.-S.
Lai
,
J.-B.
Huang
,
N.
Ahuja
, and
M.-H.
Yang
, “
Deep Laplacian pyramid networks for fast and accurate super-resolution
,” in
Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition
(
IEEE
,
2017
), pp.
624
632
.
22.
M.
Haris
,
G.
Shakhnarovich
, and
N.
Ukita
, “
Recurrent back-projection network for video super-resolution
,” in
Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition
(
IEEE
,
2019
), pp.
3897
3906
.
23.
K.
Fukami
,
K.
Fukagata
, and
K.
Taira
, “
Super-resolution reconstruction of turbulent flows with machine learning
,”
J. Fluid Mech.
870
,
106
120
(
2019
).
24.
H.
Gunes
and
U.
Rist
, “
Spatial resolution enhancement/smoothing of stereo–particle-image-velocimetry data using proper-orthogonal-decomposition–based and kriging interpolation methods
,”
Phys. Fluids
19
,
064101
(
2007
).
25.
S.
Cai
,
S.
Zhou
,
C.
Xu
, and
Q.
Gao
, “
Dense motion estimation of particle images via a convolutional neural network
,”
Exp. Fluids
60
,
73
(
2019
).
26.
Y.
Lee
,
H.
Yang
, and
Z.
Yin
, “
PIV-DCNN: Cascaded deep convolutional neural networks for particle image velocimetry
,”
Exp. Fluids
58
,
171
(
2017
).
27.
Z.
Deng
,
C.
He
,
Y.
Liu
, and
K. C.
Kim
, “
Super-resolution reconstruction of turbulent velocity fields using a generative adversarial network-based artificial intelligence framework
,”
Phys. Fluids
31
,
125111
(
2019
).
28.
A.
Krizhevsky
,
I.
Sutskever
, and
G. E.
Hinton
, “
Imagenet classification with deep convolutional neural networks
,” in
Advances in Neural Information Processing Systems
(
MIT Press
,
2012
), pp.
1097
1105
.
29.
S.
Ren
,
K.
He
,
R.
Girshick
, and
J.
Sun
, “
Faster R-CNN: Towards real-time object detection with region proposal networks
,” in
Advances in Neural Information Processing Systems
(
MIT Press
,
2015
), pp.
91
99
.
30.
O.
Ronneberger
,
P.
Fischer
, and
T.
Brox
, “
U-net: Convolutional networks for biomedical image segmentation
,” in
International Conference on Medical Image Computing and Computer-Assisted Intervention
(
Springer
,
2015
), pp.
234
241
.
31.
W.
Shi
,
J.
Caballero
,
F.
Huszár
,
J.
Totz
,
A. P.
Aitken
,
R.
Bishop
,
D.
Rueckert
, and
Z.
Wang
, “
Real-time single image and video super-resolution using an efficient sub-pixel convolutional neural network
,” in
Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition
(
IEEE
,
2016
), pp.
1874
1883
.
32.
S. B.
Pope
,
Turbulent Flows
(
Cambridge University Press
,
2000
).
33.
J.
Li
,
F.
Fang
,
K.
Mei
, and
G.
Zhang
, “
Multi-scale residual network for image super-resolution
,” in
Proceedings of the European Conference on Computer Vision (ECCV)
(
Springer
,
2018
), pp.
517
532
.
34.
Y.
Li
,
E.
Perlman
,
M.
Wan
,
Y.
Yang
,
C.
Meneveau
,
R.
Burns
,
S.
Chen
,
A.
Szalay
, and
G.
Eyink
, “
A public turbulence database cluster and applications to study Lagrangian evolution of velocity increments in turbulence
,”
J. Turbul.
9
,
N31
(
2008
).
35.
E.
Perlman
,
R.
Burns
,
Y.
Li
, and
C.
Meneveau
, “
Data exploration of turbulence simulations using a database cluster
,” in
Proceedings of the 2007 ACM/IEEE Conference on Supercomputing
(
ACM
,
2007
), p.
23
.
36.
J.
Graham
,
K.
Kanov
,
X.
Yang
,
M.
Lee
,
N.
Malaya
,
C.
Lalescu
,
R.
Burns
,
G.
Eyink
,
A.
Szalay
,
R.
Moser
 et al., “
A web services accessible database of turbulent channel flow and its use for testing a new integral wall model for LES
,”
J. Turbul.
17
,
181
215
(
2016
).
37.
D. P.
Kingma
and
J.
Ba
, “
Adam: A method for stochastic optimization
,” arXiv:1412.6980 (
2014
).
38.
J.
Kim
,
P.
Moin
, and
R.
Moser
, “
Turbulence statistics in fully developed channel flow at low Reynolds number
,”
J. Fluid Mech.
177
,
133
166
(
1987
).
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