Neural networks (NNs) and linear stochastic estimation (LSE) have widely been utilized as powerful tools for fluid-flow regressions. We investigate fundamental differences between them considering two canonical fluid-flow problems: 1. the estimation of high-order proper orthogonal decomposition coefficients from low-order their counterparts for a flow around a two-dimensional cylinder, and 2. the state estimation from wall characteristics in a turbulent channel flow. In the first problem, we compare the performance of LSE to that of a multi-layer perceptron (MLP). With the channel flow example, we capitalize on a convolutional neural network (CNN) as a nonlinear model which can handle high-dimensional fluid flows. For both cases, the nonlin...
In this paper, we train turbulence models based on convolutional neural networks. These learned turb...
Turbulence remains a problem that is yet to be fully understood, with experimental and numerical stu...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
State estimation from limited sensor measurements is ubiquitously found as a common challenge in a b...
We demonstrate several techniques to encourage practical uses of neural networks for fluid flow esti...
This work presents a novel methodology for analysis and control of nonlinear fluid systems using neu...
Near-wall regions in wall-bounded turbulent flows experience strong intermittent events involving ej...
Computational Fluid Dynamics (CFD) simulations are a numerical tool to model and analyze the behavio...
Convolutional Neural Network (CNN) is a tool that one can use to deduce information about unknown up...
This study assesses the capability of extended proper orthogonal decomposition (EPOD) and convolutio...
The two key characteristics of a normalizing flow is that it is invertible (in particular, dimension...
Information loss in numerical physics simulations can arise from various sources when solving discre...
Recently, physics-driven deep learning methods have shown particular promise for the prediction of p...
Instantaneous readouts of an electrical resistivity probe are taken in an upward vertical air-water ...
Convolutional Neural Networks (CNN) are widely used in the CFD community due to their fast predictio...
In this paper, we train turbulence models based on convolutional neural networks. These learned turb...
Turbulence remains a problem that is yet to be fully understood, with experimental and numerical stu...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
State estimation from limited sensor measurements is ubiquitously found as a common challenge in a b...
We demonstrate several techniques to encourage practical uses of neural networks for fluid flow esti...
This work presents a novel methodology for analysis and control of nonlinear fluid systems using neu...
Near-wall regions in wall-bounded turbulent flows experience strong intermittent events involving ej...
Computational Fluid Dynamics (CFD) simulations are a numerical tool to model and analyze the behavio...
Convolutional Neural Network (CNN) is a tool that one can use to deduce information about unknown up...
This study assesses the capability of extended proper orthogonal decomposition (EPOD) and convolutio...
The two key characteristics of a normalizing flow is that it is invertible (in particular, dimension...
Information loss in numerical physics simulations can arise from various sources when solving discre...
Recently, physics-driven deep learning methods have shown particular promise for the prediction of p...
Instantaneous readouts of an electrical resistivity probe are taken in an upward vertical air-water ...
Convolutional Neural Networks (CNN) are widely used in the CFD community due to their fast predictio...
In this paper, we train turbulence models based on convolutional neural networks. These learned turb...
Turbulence remains a problem that is yet to be fully understood, with experimental and numerical stu...
The modeling of complex physical and biological phenomena has long been the domain of computational ...