This paper presents a review of methods for stochastic representation of non-Gaussian random fields. One category of such methods is through transformation from Gaussian random fields, and the other category is through direct simulation. This paper also gives a reflection on the simulation of non-Gaussian random fields, with the focus on its primary application for uncertainty quantification, which is usually associated with a large number of simulations. Dimension reduction is critical in the representation of non-Gaussian random fields with the aim of efficient uncertainty quantification. Aside from introducing the methods for simulating non-Gaussian random fields, critical components related to suitable stochastic approaches for efficien...
Abstract. In studies involving environmental risk assessment, random field generators such as the se...
In the environmental risk assessment of oil fields, a detailed knowledge of the heterogeneity of gro...
International audienceThis paper deals with the construction of a non Gaussian positive-definite mat...
This paper presents non-intrusive, efficient stochastic approaches for predicting uncertainties asso...
Workshop du projet ANR "Advanced methods using stochastic modeling in high dimension for uncertainty...
The non-Gaussian random fields are used to modelling some dynamic loads generated by wind turbulence...
International audienceThis paper is concerned with the derivation of a generic sampling technique fo...
Groundwater flow models are usually subject to uncertainty as a consequence of the random representa...
In earth and environmental sciences applications, uncertainty analysis regarding the outputs of mode...
Plenary LectureInternational audienceThe paper deals with the statistical inverse problem for the id...
This work deals with a stochastic unconfined aquifer flow simulation in statistically isotropic satu...
It is accepted that digital models simplify the physical reality that is the object of the modeling....
Abstract: Generation of 2D and 3D normally distributed random fields conditioned on well d...
The modelling of spatial uncertainty in attributes of geological phenomena is frequently based on th...
International audienceIn this talk we will describe a framework for the systematic derivation of sto...
Abstract. In studies involving environmental risk assessment, random field generators such as the se...
In the environmental risk assessment of oil fields, a detailed knowledge of the heterogeneity of gro...
International audienceThis paper deals with the construction of a non Gaussian positive-definite mat...
This paper presents non-intrusive, efficient stochastic approaches for predicting uncertainties asso...
Workshop du projet ANR "Advanced methods using stochastic modeling in high dimension for uncertainty...
The non-Gaussian random fields are used to modelling some dynamic loads generated by wind turbulence...
International audienceThis paper is concerned with the derivation of a generic sampling technique fo...
Groundwater flow models are usually subject to uncertainty as a consequence of the random representa...
In earth and environmental sciences applications, uncertainty analysis regarding the outputs of mode...
Plenary LectureInternational audienceThe paper deals with the statistical inverse problem for the id...
This work deals with a stochastic unconfined aquifer flow simulation in statistically isotropic satu...
It is accepted that digital models simplify the physical reality that is the object of the modeling....
Abstract: Generation of 2D and 3D normally distributed random fields conditioned on well d...
The modelling of spatial uncertainty in attributes of geological phenomena is frequently based on th...
International audienceIn this talk we will describe a framework for the systematic derivation of sto...
Abstract. In studies involving environmental risk assessment, random field generators such as the se...
In the environmental risk assessment of oil fields, a detailed knowledge of the heterogeneity of gro...
International audienceThis paper deals with the construction of a non Gaussian positive-definite mat...