The identification of the spatially dependent parameters in Partial Differential Equations (PDEs) is important in both physics and control problems. A methodology is presented to identify spatially dependent parameters from spatio-temporal measurements. Local non-rational transfer functions are derived based on three local measurements allowing for a local estimate of the parameters. A sample Maximum Likelihood Estimator (SMLE) in the frequency domain is used, because it takes noise properties into account and allows for high accuracy consistent parameter estimation. Confidence bounds on the parameters are estimated based on the noise properties of the measurements. This method is successfully applied to the simulations of a finite differen...
Parameter estimation is a growing area of interest in statistical signal processing. Some parameters...
International audienceMany physical phenomena are modeled by parametrized PDEs. The poor knowledge o...
A new method to identify the spatial dependent parameters describing the heat transport, i.e. diffus...
The identification of the spatially dependent parameters in Partial Differential Equations (PDEs) is...
This paper presents a frequency domain approach to estimate spatially varying physical parameters of...
A large variety of natural, industrial, and environmental systems involves phenomena that are contin...
Partial differential equation (PDE) models are widely used in engineering and natural sciences to de...
A large variety of natural, industrial, and environmental systems involves phenomena that are contin...
International audienceIn this paper, we discuss on-line adaptive estimation of distributed diffusion...
Résumé : Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involve...
International audienceIn this paper, the adaptive estimation of spatially varying diffusion and sour...
AbstractThe theory of identification of variable coefficients in parabolic distributed parameter sys...
Partial differential equation (PDE) models are commonly used to model complex dynamic systems in app...
International audienceWe investigate the joint estimation of time and space distributed parameters a...
Parameter estimation is a growing area of interest in statistical signal processing. Some parameters...
International audienceMany physical phenomena are modeled by parametrized PDEs. The poor knowledge o...
A new method to identify the spatial dependent parameters describing the heat transport, i.e. diffus...
The identification of the spatially dependent parameters in Partial Differential Equations (PDEs) is...
This paper presents a frequency domain approach to estimate spatially varying physical parameters of...
A large variety of natural, industrial, and environmental systems involves phenomena that are contin...
Partial differential equation (PDE) models are widely used in engineering and natural sciences to de...
A large variety of natural, industrial, and environmental systems involves phenomena that are contin...
International audienceIn this paper, we discuss on-line adaptive estimation of distributed diffusion...
Résumé : Many physical phenomena are modeled by parametrized PDEs. The poor knowledge on the involve...
International audienceIn this paper, the adaptive estimation of spatially varying diffusion and sour...
AbstractThe theory of identification of variable coefficients in parabolic distributed parameter sys...
Partial differential equation (PDE) models are commonly used to model complex dynamic systems in app...
International audienceWe investigate the joint estimation of time and space distributed parameters a...
Parameter estimation is a growing area of interest in statistical signal processing. Some parameters...
International audienceMany physical phenomena are modeled by parametrized PDEs. The poor knowledge o...
A new method to identify the spatial dependent parameters describing the heat transport, i.e. diffus...