This work presents a set of neural network (NN) models specifically designed for accurate and efficient fluid dynamics forecasting. In this work, we show how neural networks training can be improved by reducing data complexity through a modal decomposition technique called higher order dynamic mode decomposition (HODMD), which identifies the main structures inside flow dynamics and reconstructs the original flow using only these main structures. This reconstruction has the same number of samples and spatial dimension as the original flow, but with a less complex dynamics and preserving its main features. We also show the low computational cost required by the proposed NN models, both in their training and inference phases. The core idea of ...
In this work, we present a numerical methodology for construction of reduced order models of compres...
We propose an approach to solving partial differential equations (PDEs) using a set of neural networ...
Abundance of measurement and simulation data has led to the proliferation of machine learning tools ...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
We present a numerical methodology for construction of reduced-order models (ROMs) of fluid flows th...
Producción CientíficaSolving computational fluid dynamics problems requires using large computationa...
Recently, computational modeling has shifted towards the use of statistical inference, deep learning...
Recently, physics-driven deep learning methods have shown particular promise for the prediction of p...
Producción CientíficaDeep learning models are not yet fully applied to fluid dynamics predictions, w...
Physical systems whose dynamics are governed by partial differential equations (PDEs) find applicati...
We demonstrate several techniques to encourage practical uses of neural networks for fluid flow esti...
A study to analyze the efficacy of two novel, state-of-the-art deep learning methods used in flow-fi...
This work presents data-driven predictions of nonlinear dynamical systems involving unsteady flow an...
In this thesis, a number of data-driven techniques are proposed for the analysis and extraction of ...
In this paper, we introduce a modular deep neural network (DNN) framework for data-driven reduced or...
In this work, we present a numerical methodology for construction of reduced order models of compres...
We propose an approach to solving partial differential equations (PDEs) using a set of neural networ...
Abundance of measurement and simulation data has led to the proliferation of machine learning tools ...
The modeling of complex physical and biological phenomena has long been the domain of computational ...
We present a numerical methodology for construction of reduced-order models (ROMs) of fluid flows th...
Producción CientíficaSolving computational fluid dynamics problems requires using large computationa...
Recently, computational modeling has shifted towards the use of statistical inference, deep learning...
Recently, physics-driven deep learning methods have shown particular promise for the prediction of p...
Producción CientíficaDeep learning models are not yet fully applied to fluid dynamics predictions, w...
Physical systems whose dynamics are governed by partial differential equations (PDEs) find applicati...
We demonstrate several techniques to encourage practical uses of neural networks for fluid flow esti...
A study to analyze the efficacy of two novel, state-of-the-art deep learning methods used in flow-fi...
This work presents data-driven predictions of nonlinear dynamical systems involving unsteady flow an...
In this thesis, a number of data-driven techniques are proposed for the analysis and extraction of ...
In this paper, we introduce a modular deep neural network (DNN) framework for data-driven reduced or...
In this work, we present a numerical methodology for construction of reduced order models of compres...
We propose an approach to solving partial differential equations (PDEs) using a set of neural networ...
Abundance of measurement and simulation data has led to the proliferation of machine learning tools ...