This paper is dedicated to the surrogate modeling of a particular type of computational model called stochastic simulators, which inherently contain some source of randomness. In this particular case the output of the simulator in a given point is a probability density function. In this paper, the stochastic simulator is represented as a stochastic process and the surrogate model is built using the Karhunen-Loève expansion. In a first approach, the stochastic process covariance was surrogated using polynomial chaos expansion; meanwhile in a second approach the eigenvectors were interpolated. The performance of the method is illustrated on a toy example and then on an electromagnetic dosimetry example. We then provide metrics to measure the ...
This thesis addresses surrogate modeling and forward uncertainty propagation for parametric/stochast...
The paper reviews the application of deterministic-stochastic models in some areas of computational ...
This paper introduces a fast stochastic surrogate modeling technique for the frequency-domain respon...
Stochastic simulators are non-deterministic computer models which provide a different response each ...
The classical uncertainty quantification approach models all uncertainty about a physical process in...
Stochastic simulators are computational models that produce different results when evaluated repeate...
Stochastic simulators are non-deterministic computer models which provide a different response each ...
The stochastic computation of electromagnetic (EM) problems is a relatively new topic, yet very impo...
International audienceIn numerical dosimetry, the recent advances in high performance computing led ...
Computer simulation is used in all fields of applied science and engineering to represent complex sy...
In the context of uncertainty quantification, computational models are required to be repeatedly eva...
Nowadays, computational models are used in virtually all fields of applied sciences and engineering ...
The use of generalized polynomial chaos (gPC) expansions is investigated for uncertainty quantificat...
Computational models are used in virtually all fields of applied sciences and engineering to predict...
Stochastic simulators are ubiquitous in many fields of applied sciences and engineering. In the cont...
This thesis addresses surrogate modeling and forward uncertainty propagation for parametric/stochast...
The paper reviews the application of deterministic-stochastic models in some areas of computational ...
This paper introduces a fast stochastic surrogate modeling technique for the frequency-domain respon...
Stochastic simulators are non-deterministic computer models which provide a different response each ...
The classical uncertainty quantification approach models all uncertainty about a physical process in...
Stochastic simulators are computational models that produce different results when evaluated repeate...
Stochastic simulators are non-deterministic computer models which provide a different response each ...
The stochastic computation of electromagnetic (EM) problems is a relatively new topic, yet very impo...
International audienceIn numerical dosimetry, the recent advances in high performance computing led ...
Computer simulation is used in all fields of applied science and engineering to represent complex sy...
In the context of uncertainty quantification, computational models are required to be repeatedly eva...
Nowadays, computational models are used in virtually all fields of applied sciences and engineering ...
The use of generalized polynomial chaos (gPC) expansions is investigated for uncertainty quantificat...
Computational models are used in virtually all fields of applied sciences and engineering to predict...
Stochastic simulators are ubiquitous in many fields of applied sciences and engineering. In the cont...
This thesis addresses surrogate modeling and forward uncertainty propagation for parametric/stochast...
The paper reviews the application of deterministic-stochastic models in some areas of computational ...
This paper introduces a fast stochastic surrogate modeling technique for the frequency-domain respon...