TY - JOUR
T1 - Physics-Driven Learning of the Steady Navier-Stokes Equations using Deep Convolutional Neural Networks
AU - Ma, Hao
AU - Zhang, Yuxuan
AU - Thuerey, Nils
AU - Hu, Xiangyu
AU - Haidn, Oskar J.
N1 - Publisher Copyright:
©2022 Global-Science Press.
PY - 2022
Y1 - 2022
N2 - Recently, physics-driven deep learning methods have shown particular promise for the prediction of physical fields, especially to reduce the dependency on large amounts of pre-computed training data. In this work, we target the physics-driven learning of complex flow fields with high resolutions. We propose the use of Convolutional neural networks (CNN) based U-net architectures to efficiently represent and reconstruct the input and output fields, respectively. By introducing Navier-Stokes equations and boundary conditions into loss functions, the physics-driven CNN is designed to predict corresponding steady flow fields directly. In particular, this prevents many of the difficulties associated with approaches employing fully connected neural networks. Several numerical experiments are conducted to investigate the behavior of the CNN approach, and the results indicate that a first-order accuracy has been achieved. Specifically for the case of a flow around a cylinder, different flow regimes can be learned and the adhered “twin-vortices” are predicted correctly. The numerical results also show that the training for multiple cases is accelerated significantly, especially for the difficult cases at low Reynolds numbers, and when limited reference solutions are used as supplementary learning targets.
AB - Recently, physics-driven deep learning methods have shown particular promise for the prediction of physical fields, especially to reduce the dependency on large amounts of pre-computed training data. In this work, we target the physics-driven learning of complex flow fields with high resolutions. We propose the use of Convolutional neural networks (CNN) based U-net architectures to efficiently represent and reconstruct the input and output fields, respectively. By introducing Navier-Stokes equations and boundary conditions into loss functions, the physics-driven CNN is designed to predict corresponding steady flow fields directly. In particular, this prevents many of the difficulties associated with approaches employing fully connected neural networks. Several numerical experiments are conducted to investigate the behavior of the CNN approach, and the results indicate that a first-order accuracy has been achieved. Specifically for the case of a flow around a cylinder, different flow regimes can be learned and the adhered “twin-vortices” are predicted correctly. The numerical results also show that the training for multiple cases is accelerated significantly, especially for the difficult cases at low Reynolds numbers, and when limited reference solutions are used as supplementary learning targets.
KW - Deep learning
KW - Navier-Stokes equations
KW - convolutional neural networks
KW - physics-driven method
UR - http://www.scopus.com/inward/record.url?scp=85140458411&partnerID=8YFLogxK
U2 - 10.4208/cicp.OA-2021-0146
DO - 10.4208/cicp.OA-2021-0146
M3 - Article
AN - SCOPUS:85140458411
SN - 1815-2406
VL - 32
SP - 715
EP - 736
JO - Communications in Computational Physics
JF - Communications in Computational Physics
IS - 3
ER -