C Yu, X Bi, Y Fan - Ocean Engineering, 2023 - Elsevier
Deep learning technique, has made tremendous progress in fluid mechanics in recent years, because of its mighty feature extraction capacity from complicated and massive fluid …
In the last 50 years there has been a tremendous progress in solving numerically the Navier- Stokes equations using finite differences, finite elements, spectral, and even meshless …
Electroconvection is a multiphysics problem involving coupling of the flow field with the electric field as well as the cation and anion concentration fields. Here, we use …
B Liu, J Tang, H Huang, XY Lu - Physics of fluids, 2020 - pubs.aip.org
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 …
Z Deng, C He, Y Liu, KC Kim - Physics of Fluids, 2019 - pubs.aip.org
A general super-resolution reconstruction strategy was proposed for turbulent velocity fields using a generative adversarial network-based artificial intelligence framework. Two …
Uncertainty quantification (UQ) in scientific machine learning (SciML) becomes increasingly critical as neural networks (NNs) are being widely adopted in addressing complex problems …
C Lagemann, K Lagemann, S Mukherjee… - Nature Machine …, 2021 - nature.com
A wide range of problems in applied physics and engineering involve learning physical displacement fields from data. In this paper we propose a deep neural network-based …
K Hasegawa, K Fukami, T Murata… - Fluid Dynamics …, 2020 - iopscience.iop.org
We investigate the capability of machine learning (ML) based reduced order model (ML- ROM) for two-dimensional unsteady flows around a circular cylinder at different Reynolds …
In this study, a deep learning-based approach is applied with the aim of reconstructing high- resolution turbulent flow fields using minimal flow field data. A multi-scale enhanced super …