We demonstrate several techniques to encourage practical uses of neural networks for fluid flow estimation. In the present paper, three perspectives which are remaining challenges for applications of machine learning to fluid dynamics are considered: 1. interpretability of machine-learned results, 2. bulking out of training data, and 3. generalizability of neural networks. For the interpretability, we first demonstrate two methods to observe the internal procedure of neural networks, i.e., visualization of hidden layers and application of gradient-weighted class activation mapping (Grad-CAM), applied to canonical fluid flow estimation problems -- $(1)$ drag coefficient estimation of a cylinder wake and $(2)$ velocity estimation from particl...
We propose the first machine-learned control-oriented flow estimation for multiple-input multiple-ou...
This work presents a novel methodology for analysis and control of nonlinear fluid systems using neu...
This work delineates a hybrid predictive framework configured as a coarse-grained surrogate for reco...
State estimation from limited sensor measurements is ubiquitously found as a common challenge in a b...
Recently, physics-driven deep learning methods have shown particular promise for the prediction of p...
Neural networks (NNs) and linear stochastic estimation (LSE) have widely been utilized as powerful t...
As early as at the end of the 19th century, shortly after mathematical rules describing fluid flow—s...
Physics-informed machine learning is a novel approach to solving flow problems with physics-informed...
DoctorThe objective of the present study is to investigate capabilities and mechanisms of data-drive...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
Flow control has a great potential to contribute to the sustainable society through mitigation of en...
The renewed interest from the scientific community in machine learning (ML) is opening many new area...
The usage of neural networks (NNs) for flow reconstruction (FR) tasks from a limited number of senso...
ABSTRACT Artificial Neural Networks (ANNs) and evolution are applied to the analysis of turbulent si...
International audienceThis paper investigates the use of data-driven methods for the reconstruction ...
We propose the first machine-learned control-oriented flow estimation for multiple-input multiple-ou...
This work presents a novel methodology for analysis and control of nonlinear fluid systems using neu...
This work delineates a hybrid predictive framework configured as a coarse-grained surrogate for reco...
State estimation from limited sensor measurements is ubiquitously found as a common challenge in a b...
Recently, physics-driven deep learning methods have shown particular promise for the prediction of p...
Neural networks (NNs) and linear stochastic estimation (LSE) have widely been utilized as powerful t...
As early as at the end of the 19th century, shortly after mathematical rules describing fluid flow—s...
Physics-informed machine learning is a novel approach to solving flow problems with physics-informed...
DoctorThe objective of the present study is to investigate capabilities and mechanisms of data-drive...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
Flow control has a great potential to contribute to the sustainable society through mitigation of en...
The renewed interest from the scientific community in machine learning (ML) is opening many new area...
The usage of neural networks (NNs) for flow reconstruction (FR) tasks from a limited number of senso...
ABSTRACT Artificial Neural Networks (ANNs) and evolution are applied to the analysis of turbulent si...
International audienceThis paper investigates the use of data-driven methods for the reconstruction ...
We propose the first machine-learned control-oriented flow estimation for multiple-input multiple-ou...
This work presents a novel methodology for analysis and control of nonlinear fluid systems using neu...
This work delineates a hybrid predictive framework configured as a coarse-grained surrogate for reco...