Computing Ensembles occurs frequently in the simulation of complex flows to increase forecasting skill, quantify uncertainty and estimate flow sensitivity. The main issue with ensemble calculation is its high demand of computer resources vs. the limited computer resources existing. Generally computing a large ensemble is prohibitive due to the high computational cost of numerical simulation of nonlinear dynamical systems. Moreover, to compute ensembles of moderate/small size, resolution is very often sacrificed to reduce computation time. In this thesis, we study an efficient ensemble simulation algorithm that can reduce the computing cost significantly making computing a large ensemble or an ensemble of high resolution possible. The mot...
In this work, we propose using an ensemble Kalman method to learn a nonlinear eddy viscosity model, ...
In this work, we propose using an ensemble Kalman method to learn a nonlinear eddy viscosity model, ...
In this work we focus on reducing the wall clock time required to compute statistical estimators of ...
Computing Ensembles occurs frequently in the simulation of complex flows to increase forecasting ski...
This report analyzes an efficient ensemble regularization algorithm for under-resolved and convectio...
This report develops an ensemble or statistical eddy viscosity model. The model is parameterized by ...
This report presents an efficient, higher order method for fast calculation of an ensemble of soluti...
Simulating fluid motion accurately and robustly is an enduring problem due to the com- plexity and c...
Predictability of fluid flow via natural convection is a fundamental issue with implications for, e....
This report presents an algorithm for computing an ensemble of p solutions of the Navier-Stokes equa...
This paper introduces an ensemble-based field inversion framework to augment the turbulence models b...
In many cases, partial differential equation (PDE) models involve a set of parameters whose values m...
Fluid motion and its richness of detail are described by theNavier-Stokes equations. Most of the num...
An ensemble model of turbulence is proposed. The ensemble consists of flow fields in which the flux ...
The classical approach for quantiles computation requires availability of the full sample before ran...
In this work, we propose using an ensemble Kalman method to learn a nonlinear eddy viscosity model, ...
In this work, we propose using an ensemble Kalman method to learn a nonlinear eddy viscosity model, ...
In this work we focus on reducing the wall clock time required to compute statistical estimators of ...
Computing Ensembles occurs frequently in the simulation of complex flows to increase forecasting ski...
This report analyzes an efficient ensemble regularization algorithm for under-resolved and convectio...
This report develops an ensemble or statistical eddy viscosity model. The model is parameterized by ...
This report presents an efficient, higher order method for fast calculation of an ensemble of soluti...
Simulating fluid motion accurately and robustly is an enduring problem due to the com- plexity and c...
Predictability of fluid flow via natural convection is a fundamental issue with implications for, e....
This report presents an algorithm for computing an ensemble of p solutions of the Navier-Stokes equa...
This paper introduces an ensemble-based field inversion framework to augment the turbulence models b...
In many cases, partial differential equation (PDE) models involve a set of parameters whose values m...
Fluid motion and its richness of detail are described by theNavier-Stokes equations. Most of the num...
An ensemble model of turbulence is proposed. The ensemble consists of flow fields in which the flux ...
The classical approach for quantiles computation requires availability of the full sample before ran...
In this work, we propose using an ensemble Kalman method to learn a nonlinear eddy viscosity model, ...
In this work, we propose using an ensemble Kalman method to learn a nonlinear eddy viscosity model, ...
In this work we focus on reducing the wall clock time required to compute statistical estimators of ...