A reduced order model of a turbulent channel flow is composed from a direct numerical simulation database hosted at the Johns Hopkins University. Snapshot proper orthogonal decomposition (POD) is used to identify the Hilbert space from which the reduced order model is obtained, as the POD basis is defined to capture the optimal energy content by mode. The reduced order model is defined by coupling the evolution of the dynamic POD mode coefficients through their respective time derivative with a least-squares polynomial fit of terms up to third order. Parameters coupling the dynamics of the POD basis are defined in analog to those produced in the classical Galerkin projection. The resulting low-order dynamical system is tested for a range of...
A new method, herein referred to as optimal mode decomposition (OMD), of finding a linear model to d...
Even though fluid flows possess an exceedingly high number of degrees of freedom, their dynamics oft...
A reduced-order modelling (ROM) approach for predicting steady, turbulent aerodynamic flows based on...
International audienceWith this work, we propose improvements to the construction of low-order dynam...
International audienceWith this work, we propose improvements to the construction of low-order dynam...
International audienceWith this work, we propose improvements to the construction of low-order dynam...
In the following paper, we consider the problem of constructing a time stable reduced order model of...
In this article, an improved reduced order modelling approach, based on the proper orthogonal decomp...
International audienceIn the following paper, we consider the problem of constructing a time stable ...
International audienceIn the following paper, we consider the problem of constructing a time stable ...
This work presents a robust method that minimises the impact of user-selected parameter on the ident...
In the present study, a set of physics-informed and data-driven approaches are examined towards the ...
Autoencoder techniques find increasingly common use in reduced order modeling as a means to create a...
Autoencoder techniques find increasingly common use in reduced order modeling as a means to create a...
A novel energy-based reduced-order model with the ability of isolating specific dynamics in turbulen...
A new method, herein referred to as optimal mode decomposition (OMD), of finding a linear model to d...
Even though fluid flows possess an exceedingly high number of degrees of freedom, their dynamics oft...
A reduced-order modelling (ROM) approach for predicting steady, turbulent aerodynamic flows based on...
International audienceWith this work, we propose improvements to the construction of low-order dynam...
International audienceWith this work, we propose improvements to the construction of low-order dynam...
International audienceWith this work, we propose improvements to the construction of low-order dynam...
In the following paper, we consider the problem of constructing a time stable reduced order model of...
In this article, an improved reduced order modelling approach, based on the proper orthogonal decomp...
International audienceIn the following paper, we consider the problem of constructing a time stable ...
International audienceIn the following paper, we consider the problem of constructing a time stable ...
This work presents a robust method that minimises the impact of user-selected parameter on the ident...
In the present study, a set of physics-informed and data-driven approaches are examined towards the ...
Autoencoder techniques find increasingly common use in reduced order modeling as a means to create a...
Autoencoder techniques find increasingly common use in reduced order modeling as a means to create a...
A novel energy-based reduced-order model with the ability of isolating specific dynamics in turbulen...
A new method, herein referred to as optimal mode decomposition (OMD), of finding a linear model to d...
Even though fluid flows possess an exceedingly high number of degrees of freedom, their dynamics oft...
A reduced-order modelling (ROM) approach for predicting steady, turbulent aerodynamic flows based on...