We discuss computationally efficient ways of accounting for the impact of uncertainty, e. g., lack of detailed knowledge about sources, materials, shapes, etc., in computational time-domain electromagnetics. In contrast to classic statistical Monte Carlo-based methods, we explore a probabilistic approach based on high-order accurate expansions of general stochastic processes. We show this to be highly efficient and accurate on both one- and two-dimensional examples, enabling the computation of global sensitivities of measures of interest, e. g., radar-cross-sections (RCS) in scattering applications, for a variety of types of uncertainties
The present work addresses the problems of high-dimensional approximation and uncertainty quantifica...
Computational Electromagnetics (CEM) involves the process of modeling the interaction of elec...
The paper reviews the application of deterministic-stochastic models in some areas of computational ...
We discuss computationally efficient ways of accounting for the impact of uncertainty, e.g., lack of...
Providing estimates of the uncertainty in results obtained by Computational Electromagnetic (CEM) si...
Variations in material properties, boundary conditions, or the geometry can be expected in most elec...
This thesis presents methodologies for the efficient assessment of the impact of statistical variabi...
To account for uncertainties on model parameters, the stochastic approach can be used. The model par...
This paper deals with the advanced integration of uncertainties in electromagnetic interferences (EM...
This dissertation study three different approaches for stochastic electromagnetic fields based on th...
The stochastic computation of electromagnetic (EM) problems is a relatively new topic, yet very impo...
The uncertainties in various Electromagnetic (EM) problems may present a significant effect on the p...
Uncertainty Quantification (UQ) has been an active area of research in recent years with a wide rang...
This work described in this thesis develops a computationally efficient approach to performing elect...
La quantification d’incertitudes est une démarche consistant à prendre en compte les incertitudes de...
The present work addresses the problems of high-dimensional approximation and uncertainty quantifica...
Computational Electromagnetics (CEM) involves the process of modeling the interaction of elec...
The paper reviews the application of deterministic-stochastic models in some areas of computational ...
We discuss computationally efficient ways of accounting for the impact of uncertainty, e.g., lack of...
Providing estimates of the uncertainty in results obtained by Computational Electromagnetic (CEM) si...
Variations in material properties, boundary conditions, or the geometry can be expected in most elec...
This thesis presents methodologies for the efficient assessment of the impact of statistical variabi...
To account for uncertainties on model parameters, the stochastic approach can be used. The model par...
This paper deals with the advanced integration of uncertainties in electromagnetic interferences (EM...
This dissertation study three different approaches for stochastic electromagnetic fields based on th...
The stochastic computation of electromagnetic (EM) problems is a relatively new topic, yet very impo...
The uncertainties in various Electromagnetic (EM) problems may present a significant effect on the p...
Uncertainty Quantification (UQ) has been an active area of research in recent years with a wide rang...
This work described in this thesis develops a computationally efficient approach to performing elect...
La quantification d’incertitudes est une démarche consistant à prendre en compte les incertitudes de...
The present work addresses the problems of high-dimensional approximation and uncertainty quantifica...
Computational Electromagnetics (CEM) involves the process of modeling the interaction of elec...
The paper reviews the application of deterministic-stochastic models in some areas of computational ...