In this work, we present a numerical methodology for construction of reduced order models of compressible flows which combines flow modal decomposition via proper orthogonal decomposition and regression analysis using deep feedforward neural networks. The framework is implemented in the context of the sparse identification of non-linear dynamics algorithm recently proposed in the literature. The method is tested on the reconstruction of a canonical nonlinear oscillator and the compressible flow past a cylinder. Results demonstrate that the technique provides accurate and stable reconstructions of the full order model beyond the training window of the deep feedforward neural network, demonstrating the robustness of the current reduced order ...
Generating a digital twin of any complex system requires modeling and computational approaches that ...
This thesis presents two nonlinear model reduction methods for systems of equations. One model utili...
Models with dominant advection always posed a difficult challenge for projection-based reduced order...
We present a numerical methodology for construction of reduced-order models (ROMs) of fluid flows th...
A non-intrusive reduced-order model for nonlinear parametric flow problems is developed. It is base...
This paper presents a novel model reduction method: deep learning reduced order model, which is base...
In this paper, we introduce a modular deep neural network (DNN) framework for data-driven reduced or...
A non-intrusive reduced-order model applicable to time-dependent parametric systems is developed. T...
Simulating fluid flows in different virtual scenarios is of key importance in engineering applicatio...
Simulating fluid flows in different virtual scenarios is of key importance in engineering applicatio...
Producción CientíficaSolving computational fluid dynamics problems requires using large computationa...
A non-intrusive reduced-basis (RB) method is proposed for parametrized unsteady flows. A set of redu...
This paper presents a new nonlinear non-intrusive reduced-order model (NL-NIROM) that outperforms tr...
In this thesis, a number of data-driven techniques are proposed for the analysis and extraction of ...
A non-intrusive reduced-order model for nonlinear parametric flow problems is developed. Itis based ...
Generating a digital twin of any complex system requires modeling and computational approaches that ...
This thesis presents two nonlinear model reduction methods for systems of equations. One model utili...
Models with dominant advection always posed a difficult challenge for projection-based reduced order...
We present a numerical methodology for construction of reduced-order models (ROMs) of fluid flows th...
A non-intrusive reduced-order model for nonlinear parametric flow problems is developed. It is base...
This paper presents a novel model reduction method: deep learning reduced order model, which is base...
In this paper, we introduce a modular deep neural network (DNN) framework for data-driven reduced or...
A non-intrusive reduced-order model applicable to time-dependent parametric systems is developed. T...
Simulating fluid flows in different virtual scenarios is of key importance in engineering applicatio...
Simulating fluid flows in different virtual scenarios is of key importance in engineering applicatio...
Producción CientíficaSolving computational fluid dynamics problems requires using large computationa...
A non-intrusive reduced-basis (RB) method is proposed for parametrized unsteady flows. A set of redu...
This paper presents a new nonlinear non-intrusive reduced-order model (NL-NIROM) that outperforms tr...
In this thesis, a number of data-driven techniques are proposed for the analysis and extraction of ...
A non-intrusive reduced-order model for nonlinear parametric flow problems is developed. Itis based ...
Generating a digital twin of any complex system requires modeling and computational approaches that ...
This thesis presents two nonlinear model reduction methods for systems of equations. One model utili...
Models with dominant advection always posed a difficult challenge for projection-based reduced order...