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.
Skip Nav Destination
Article navigation
February 2020
Research Article|
February 12 2020
Deep learning methods for super-resolution reconstruction of turbulent flows
Bo Liu;
Bo Liu
Department of Modern Mechanics, University of Science and Technology of China
, Hefei 230026, China
Search for other works by this author on:
Jiupeng Tang;
Jiupeng Tang
Department of Modern Mechanics, University of Science and Technology of China
, Hefei 230026, China
Search for other works by this author on:
Haibo Huang
;
Haibo Huang
a)
Department of Modern Mechanics, University of Science and Technology of China
, Hefei 230026, China
a)Author to whom correspondence should be addressed: [email protected]
Search for other works by this author on:
Xi-Yun Lu
Xi-Yun Lu
Department of Modern Mechanics, University of Science and Technology of China
, Hefei 230026, China
Search for other works by this author on:
a)Author to whom correspondence should be addressed: [email protected]
Physics of Fluids 32, 025105 (2020)
Article history
Received:
December 01 2019
Accepted:
January 21 2020
Citation
Bo Liu, Jiupeng Tang, Haibo Huang, Xi-Yun Lu; Deep learning methods for super-resolution reconstruction of turbulent flows. Physics of Fluids 1 February 2020; 32 (2): 025105. https://doi.org/10.1063/1.5140772
Download citation file:
Pay-Per-View Access
$40.00
Sign In
You could not be signed in. Please check your credentials and make sure you have an active account and try again.
Citing articles via
Referee acknowledgment for 2024
Alan Jeffrey Giacomin
Chinese Academy of Science Journal Ranking System (2015–2023)
Cruz Y. Li (李雨桐), 李雨桐, et al.
Fall and breakup of miscible magnetic fluid drops in a Hele–Shaw cell
M. S. Krakov (М. С. Краков), М. С. Краков, et al.
Related Content
Super-resolution reconstruction of turbulent flows with a transformer-based deep learning framework
Physics of Fluids (May 2023)
Prediction of internal and external flow with sparse convolution neural network: A computationally effective reduced-order model
Physics of Fluids (February 2023)
FlowSRNet: A multi-scale integration network for super-resolution reconstruction of fluid flows
Physics of Fluids (December 2022)
A novel framework for cost-effectively reconstructing the global flow field by super-resolution
Physics of Fluids (September 2021)
Flow time history representation and reconstruction based on machine learning
Physics of Fluids (August 2023)