Stochastic spectral methods can generate accurate compact stochastic models for electromagnetic problems with material and geometric uncertainties. This letter presents an improved implementation of the maximum-entropy algorithm to compute the density function of an obtained generalized polynomial chaos expansion in magnetic resonance imaging (MRI) applications. Instead of using statistical moments, we show that the expectations of some orthonormal polynomials can be better constraints for the optimization flow. The proposed algorithm is coupled with a finite element-boundary element method (FEM-BEM) domain decomposition field solver to obtain a robust computational prototyping for MRI problems with low- and high-dimensional uncertainties
This thesis presents methodologies for the efficient assessment of the impact of statistical variabi...
26 pagesThe determination of directional power density distribution of an electromagnetic wave from ...
This paper is dedicated to the surrogate modeling of a particular type of computational model called...
The finite element method can be used to compute the electromagnetic fields induced in the human bod...
International audienceThe finite element method can be used to compute the electromagnetic fields in...
We propose a framework of nonintrusive polynomial chaos methods for transcranial magnetic stimulatio...
Uncertainties in an electromagnetic observable, that arise from uncertainties in geometric and elect...
The stochastic computation of electromagnetic (EM) problems is a relatively new topic, yet very impo...
The use of generalized polynomial chaos (gPC) expansions is investigated for uncertainty quantificat...
Stochastic spectral methods are efficient techniques for uncertainty quantification. Recently they h...
The electroencephalogram (EEG) is one of the techniques used for the non-invasive diagnosis of patie...
Variations in material properties, boundary conditions, or the geometry can be expected in most elec...
Stochastic models are developed to investigate mechanical and biomedical structures with uncertainti...
We discuss computationally efficient ways of accounting for the impact of uncertainty, e. g., lack o...
In electromagnetism, for most numerical models (so-called deterministic models) solving Maxwell Equa...
This thesis presents methodologies for the efficient assessment of the impact of statistical variabi...
26 pagesThe determination of directional power density distribution of an electromagnetic wave from ...
This paper is dedicated to the surrogate modeling of a particular type of computational model called...
The finite element method can be used to compute the electromagnetic fields induced in the human bod...
International audienceThe finite element method can be used to compute the electromagnetic fields in...
We propose a framework of nonintrusive polynomial chaos methods for transcranial magnetic stimulatio...
Uncertainties in an electromagnetic observable, that arise from uncertainties in geometric and elect...
The stochastic computation of electromagnetic (EM) problems is a relatively new topic, yet very impo...
The use of generalized polynomial chaos (gPC) expansions is investigated for uncertainty quantificat...
Stochastic spectral methods are efficient techniques for uncertainty quantification. Recently they h...
The electroencephalogram (EEG) is one of the techniques used for the non-invasive diagnosis of patie...
Variations in material properties, boundary conditions, or the geometry can be expected in most elec...
Stochastic models are developed to investigate mechanical and biomedical structures with uncertainti...
We discuss computationally efficient ways of accounting for the impact of uncertainty, e. g., lack o...
In electromagnetism, for most numerical models (so-called deterministic models) solving Maxwell Equa...
This thesis presents methodologies for the efficient assessment of the impact of statistical variabi...
26 pagesThe determination of directional power density distribution of an electromagnetic wave from ...
This paper is dedicated to the surrogate modeling of a particular type of computational model called...