Uncertain or indirect “soft” data, such as geologic interpretation, driller’s logs, geophysical logs or imaging, offer potential constraints or “soft conditioning” to stochastic models of discrete categorical subsurface variables in hydrogeology such as hydrofacies. Previous bivariate geostatistical simulation algorithms have not fully addressed the impact of data uncertainty in formulation of the (co) kriging equations and the objective function in simulated annealing (or quenching). This paper introduces the geostatistical simulation code tsim-s, which accounts for categorical data uncertainty through a data “hardness” parameter. In generating geostatistical realizations with tsim-s, the uncertainty inherent to soft conditioning is factor...
Geostatistical simulation using controlled or stratified sampling methods, namely Latin hypercube an...
A large borehole lithology dataset from the shallowly buried alluvial aquifer of the Brenta River Me...
An important step of reservoir characterization is the stochastic modeling of the geometry of lithof...
International Geostatistical Congress (10º. 2016. Valencia)In some hydrogeology applications, the on...
In some hydrogeology applications, the only subsurface geological information available comes from a...
A growing area of application for geostatistical conditional simulation is as a tool for risk analys...
When building a geostatistical model of the hydrofacies distribution in a volume block it is importa...
ABSTRACT. The geostatistical techniques of conditional simulation are well documented for the univar...
Uncertainty is endemic in geospatial data due to the imperfect means of recording, processing, and r...
This paper proposes a geostatistical approach for geological modelling and for validating an interpr...
There are many approaches to geostatistical simulation that can be used to generate realizations of ...
Copyright © 2002 Society for Mining, Metallurgy, and ExplorationMost mining applications of geostati...
© 2018, International Association for Mathematical Geosciences.Delineation of facies in the subsurfa...
In earth and environmental sciences applications, uncertainty analysis regarding the outputs of mode...
Forecasting the flow of groundwater requires a hydrostratigraphic model, which describes the archit...
Geostatistical simulation using controlled or stratified sampling methods, namely Latin hypercube an...
A large borehole lithology dataset from the shallowly buried alluvial aquifer of the Brenta River Me...
An important step of reservoir characterization is the stochastic modeling of the geometry of lithof...
International Geostatistical Congress (10º. 2016. Valencia)In some hydrogeology applications, the on...
In some hydrogeology applications, the only subsurface geological information available comes from a...
A growing area of application for geostatistical conditional simulation is as a tool for risk analys...
When building a geostatistical model of the hydrofacies distribution in a volume block it is importa...
ABSTRACT. The geostatistical techniques of conditional simulation are well documented for the univar...
Uncertainty is endemic in geospatial data due to the imperfect means of recording, processing, and r...
This paper proposes a geostatistical approach for geological modelling and for validating an interpr...
There are many approaches to geostatistical simulation that can be used to generate realizations of ...
Copyright © 2002 Society for Mining, Metallurgy, and ExplorationMost mining applications of geostati...
© 2018, International Association for Mathematical Geosciences.Delineation of facies in the subsurfa...
In earth and environmental sciences applications, uncertainty analysis regarding the outputs of mode...
Forecasting the flow of groundwater requires a hydrostratigraphic model, which describes the archit...
Geostatistical simulation using controlled or stratified sampling methods, namely Latin hypercube an...
A large borehole lithology dataset from the shallowly buried alluvial aquifer of the Brenta River Me...
An important step of reservoir characterization is the stochastic modeling of the geometry of lithof...