Crossref Citations
This article has been cited by the following publications. This list is generated based on data provided by
Crossref.
Han, Renkun
Wang, Yixing
Zhang, Yang
and
Chen, Gang
2019.
A novel spatial-temporal prediction method for unsteady wake flows based on hybrid deep neural network.
Physics of Fluids,
Vol. 31,
Issue. 12,
Brenner, M. P.
Eldredge, J. D.
and
Freund, J. B.
2019.
Perspective on machine learning for advancing fluid mechanics.
Physical Review Fluids,
Vol. 4,
Issue. 10,
Deng, Zhiwen
Chen, Yujia
Liu, Yingzheng
and
Kim, Kyung Chun
2019.
Time-resolved turbulent velocity field reconstruction using a long short-term memory (LSTM)-based artificial intelligence framework.
Physics of Fluids,
Vol. 31,
Issue. 7,
Güemes, A.
Discetti, S.
and
Ianiro, A.
2019.
Sensing the turbulent large-scale motions with their wall signature.
Physics of Fluids,
Vol. 31,
Issue. 12,
Callaham, Jared L.
Maeda, Kazuki
and
Brunton, Steven L.
2019.
Robust flow reconstruction from limited measurements via sparse representation.
Physical Review Fluids,
Vol. 4,
Issue. 10,
Fukami, Kai
Nabae, Yusuke
Kawai, Ken
and
Fukagata, Koji
2019.
Synthetic turbulent inflow generator using machine learning.
Physical Review Fluids,
Vol. 4,
Issue. 6,
Li, Yunfei
Chang, Juntao
Wang, Ziao
and
Kong, Cheng
2019.
Inversion and reconstruction of supersonic cascade passage flow field based on a model comprising transposed network and residual network.
Physics of Fluids,
Vol. 31,
Issue. 12,
Maulik, Romit
San, Omer
Jacob, Jamey D.
and
Crick, Christopher
2019.
Sub-grid scale model classification and blending through deep learning.
Journal of Fluid Mechanics,
Vol. 870,
Issue. ,
p.
784.
Deng, Zhiwen
He, Chuangxin
Liu, Yingzheng
and
Kim, Kyung Chun
2019.
Super-resolution reconstruction of turbulent velocity fields using a generative adversarial network-based artificial intelligence framework.
Physics of Fluids,
Vol. 31,
Issue. 12,
Fukami, Kai
Nakamura, Taichi
and
Fukagata, Koji
2020.
Convolutional neural network based hierarchical autoencoder for nonlinear mode decomposition of fluid field data.
Physics of Fluids,
Vol. 32,
Issue. 9,
Guo, S.
Feng, Y.
and
Sagaut, P.
2020.
Improved standard thermal lattice Boltzmann model with hybrid recursive regularization for compressible laminar and turbulent flows.
Physics of Fluids,
Vol. 32,
Issue. 12,
Renganathan, S. Ashwin
Maulik, Romit
and
Rao, Vishwas
2020.
Machine learning for nonintrusive model order reduction of the parametric inviscid transonic flow past an airfoil.
Physics of Fluids,
Vol. 32,
Issue. 4,
Clark Di Leoni, Patricio
Mazzino, Andrea
and
Biferale, Luca
2020.
Synchronization to Big Data: Nudging the Navier-Stokes Equations for Data Assimilation of Turbulent Flows.
Physical Review X,
Vol. 10,
Issue. 1,
Fukami, Kai
Fukagata, Koji
and
Taira, Kunihiko
2020.
Assessment of supervised machine learning methods for fluid flows.
Theoretical and Computational Fluid Dynamics,
Vol. 34,
Issue. 4,
p.
497.
Liu, Bo
Tang, Jiupeng
Huang, Haibo
and
Lu, Xi-Yun
2020.
Deep learning methods for super-resolution reconstruction of turbulent flows.
Physics of Fluids,
Vol. 32,
Issue. 2,
Pawar, Suraj
San, Omer
Rasheed, Adil
and
Vedula, Prakash
2020.
A priori analysis on deep learning of subgrid-scale parameterizations for Kraichnan turbulence.
Theoretical and Computational Fluid Dynamics,
Vol. 34,
Issue. 4,
p.
429.
Scott, K. Andrea
Xu, Linlin
and
Pour, Homa Kheyrollah
2020.
Retrieval of ice/water observations from synthetic aperture radar imagery for use in lake ice data assimilation.
Journal of Great Lakes Research,
Vol. 46,
Issue. 6,
p.
1521.
Wang, Hongping
Yang, Zixuan
Li, Binglin
and
Wang, Shizhao
2020.
Predicting the near-wall velocity of wall turbulence using a neural network for particle image velocimetry.
Physics of Fluids,
Vol. 32,
Issue. 11,
Kim, Junhyuk
and
Lee, Changhoon
2020.
Prediction of turbulent heat transfer using convolutional neural networks.
Journal of Fluid Mechanics,
Vol. 882,
Issue. ,
Kong, Chen
Chang, Jun-Tao
Li, Yun-Fei
and
Chen, Ruo-Yu
2020.
Deep learning methods for super-resolution reconstruction of temperature fields in a supersonic combustor.
AIP Advances,
Vol. 10,
Issue. 11,