International audienceIn this paper, we shall investigate sequential data assimilation techniques to improve the stability of reducedorder models for fluid flows. The reduced-order model used relies on a Galerkin projection of Navier-Stokes equations on proper orthogonal decomposition (POD) basis vectors estimated from snapshots of the flow fields obtained with timeresolved particle image velocimetry (TR-PIV) measurements. The coefficients of the dynamical system are given through a least-squares regression technique applied to the experimental data and lead to a low-order model which is known to diverge, or damp, rapidly in time if left uncontrolled. In this context, a sequential data assimilation method based on a Bayesian approach is pro...
Data assimilation can be used to combine experimental and numerical realizations of the same flow to...
The variational approach to data assimilation is a widely used methodology for both online predictio...
Thesis: Ph. D. in Mechanical Engineering and Computation, Massachusetts Institute of Technology, Dep...
This thesis takes place in the framework of the calibration of low order models from experimental se...
It has recently been observed that Least-Squares Finite Element methods (LS-FEMs) can be used to ass...
Abstract. It has recently been observed that Least-Squares Finite Element methods (LS-FEMs) can be u...
International audienceThe estimation and prediction of unsteady flows in real time offers significan...
In this paper we propose a Bayesian method as a numerical way to correct and stabilise projection-ba...
In this paper we propose a Bayesian method as a numerical way to correct and stabilise projection-ba...
Lagrangian data arise from instruments that are carried by the flow in a fluid field. Assimilation o...
International audienceIn this study, we investigate a Data Assimilation approach for the numerical r...
RANS equations are nowadays widely used in industry because of their affordability in terms of compu...
We apply a data-based, linear dynamic estimator to reconstruct the velocity field from measurements ...
Data assimilation can be used to combine experimental and numerical realizations of the same flow to...
The variational approach to data assimilation is a widely used methodology for both online predictio...
Thesis: Ph. D. in Mechanical Engineering and Computation, Massachusetts Institute of Technology, Dep...
This thesis takes place in the framework of the calibration of low order models from experimental se...
It has recently been observed that Least-Squares Finite Element methods (LS-FEMs) can be used to ass...
Abstract. It has recently been observed that Least-Squares Finite Element methods (LS-FEMs) can be u...
International audienceThe estimation and prediction of unsteady flows in real time offers significan...
In this paper we propose a Bayesian method as a numerical way to correct and stabilise projection-ba...
In this paper we propose a Bayesian method as a numerical way to correct and stabilise projection-ba...
Lagrangian data arise from instruments that are carried by the flow in a fluid field. Assimilation o...
International audienceIn this study, we investigate a Data Assimilation approach for the numerical r...
RANS equations are nowadays widely used in industry because of their affordability in terms of compu...
We apply a data-based, linear dynamic estimator to reconstruct the velocity field from measurements ...
Data assimilation can be used to combine experimental and numerical realizations of the same flow to...
The variational approach to data assimilation is a widely used methodology for both online predictio...
Thesis: Ph. D. in Mechanical Engineering and Computation, Massachusetts Institute of Technology, Dep...