In earth and environmental sciences applications, uncertainty analysis regarding the outputs of models whose parameters are spatially varying (or spatially distributed) is often performed in a Monte Carlo framework. In this context, alternative realizations of the spatial distribution of model inputs, typically conditioned to reproduce attribute values at locations where measurements are obtained, are generated via geostatistical simulation using simple random (SR) sampling. The environmental model under consideration is then evaluated using each of these realizations as a plausible input, in order to construct a distribution of plausible model outputs for uncertainty analysis purposes. In hydrogeological investigations, for example, condit...
We present a numerical study keyed to the analysis of the impact on hydraulic head statistics of two...
In the analysis of spatial data, one is often interested in modeling conditional probability distrib...
This paper presents a review of methods for stochastic representation of non-Gaussian random fields....
Uncertainty is endemic in geospatial data due to the imperfect means of recording, processing, and r...
Geostatistical simulation using controlled or stratified sampling methods, namely Latin hypercube an...
It is accepted that digital models simplify the physical reality that is the object of the modeling....
A growing area of application for geostatistical conditional simulation is as a tool for risk analys...
There are many approaches to geostatistical simulation that can be used to generate realizations of ...
Publicación ISIThis article presents models of random fields with continuous univariate distribution...
A stochastic approach to conditional simulation of flow in randomly heterogeneous media is proposed ...
This paper presents a new method to reduce uncertainties in reservoir simulation models using observ...
In the environmental risk assessment of oil fields, a detailed knowledge of the heterogeneity of gro...
It is common and convenient to treat distributed physical parameters as Gaussian random fields and m...
One of the uses of geostatistical conditional simulation is as a tool in assessing the spatial uncer...
Uncertain or indirect “soft” data, such as geologic interpretation, driller’s logs, geophysical logs...
We present a numerical study keyed to the analysis of the impact on hydraulic head statistics of two...
In the analysis of spatial data, one is often interested in modeling conditional probability distrib...
This paper presents a review of methods for stochastic representation of non-Gaussian random fields....
Uncertainty is endemic in geospatial data due to the imperfect means of recording, processing, and r...
Geostatistical simulation using controlled or stratified sampling methods, namely Latin hypercube an...
It is accepted that digital models simplify the physical reality that is the object of the modeling....
A growing area of application for geostatistical conditional simulation is as a tool for risk analys...
There are many approaches to geostatistical simulation that can be used to generate realizations of ...
Publicación ISIThis article presents models of random fields with continuous univariate distribution...
A stochastic approach to conditional simulation of flow in randomly heterogeneous media is proposed ...
This paper presents a new method to reduce uncertainties in reservoir simulation models using observ...
In the environmental risk assessment of oil fields, a detailed knowledge of the heterogeneity of gro...
It is common and convenient to treat distributed physical parameters as Gaussian random fields and m...
One of the uses of geostatistical conditional simulation is as a tool in assessing the spatial uncer...
Uncertain or indirect “soft” data, such as geologic interpretation, driller’s logs, geophysical logs...
We present a numerical study keyed to the analysis of the impact on hydraulic head statistics of two...
In the analysis of spatial data, one is often interested in modeling conditional probability distrib...
This paper presents a review of methods for stochastic representation of non-Gaussian random fields....