In geostatistics, stochastic simulation is often used either as an improved interpolation algorithm or as a measure of the spatial uncertainty. Hence, it is crucial to assess how fast realization-based statistics converge towards model-based statistics (i.e. histogram, variogram) since in theory such a match is guaranteed only on average over a number of realizations. This can be strongly affected by the random number generator being used. Moreover, the usual assumption of independence among simulated realizations of a random process may be affected by the random number generator used. Simulation results, obtained by using three different random number generators implemented in Geostatistical Software Library (GSLib), are compared. Some pra...
Geostatistical simulation using controlled or stratified sampling methods, namely Latin hypercube an...
The sequential algorithm is widely used to simulate Gaussian random fields. However, a rigorous appl...
The sequential indicator algorithm is a widespread geostatistical simulation technique that relies o...
Geostatistical simulation relies on the definition of a stochastic model (e.g. a random field charac...
Geostatistical simulation relies on the definition of a stochastic model (e.g. a random field charac...
There are many approaches to geostatistical simulation that can be used to generate realizations of ...
Sequential simulation is a widely used technique applied in geostatistics to generate realisations t...
The variogram model is one of the most relevant parameters in geostatistical estimation and simulat...
Sequential Gaussian simulation is one of the most widespread algorithms for simulating regionalized ...
Kriging provides metamodels for deterministic and random simulation models. Actually, there are seve...
This paper proposes a tiled map procedure enabling sequential indicator simulation on grids consisti...
This paper proposes a tiled map procedure enabling sequential indicator simulation on grids consisti...
Kriging provides metamodels for deterministic and random simulation models. Actually, there are seve...
Geostatistical simulation using controlled or stratified sampling methods, namely Latin hypercube an...
The sequential algorithm is widely used to simulate Gaussian random fields. However, a rigorous appl...
Geostatistical simulation using controlled or stratified sampling methods, namely Latin hypercube an...
The sequential algorithm is widely used to simulate Gaussian random fields. However, a rigorous appl...
The sequential indicator algorithm is a widespread geostatistical simulation technique that relies o...
Geostatistical simulation relies on the definition of a stochastic model (e.g. a random field charac...
Geostatistical simulation relies on the definition of a stochastic model (e.g. a random field charac...
There are many approaches to geostatistical simulation that can be used to generate realizations of ...
Sequential simulation is a widely used technique applied in geostatistics to generate realisations t...
The variogram model is one of the most relevant parameters in geostatistical estimation and simulat...
Sequential Gaussian simulation is one of the most widespread algorithms for simulating regionalized ...
Kriging provides metamodels for deterministic and random simulation models. Actually, there are seve...
This paper proposes a tiled map procedure enabling sequential indicator simulation on grids consisti...
This paper proposes a tiled map procedure enabling sequential indicator simulation on grids consisti...
Kriging provides metamodels for deterministic and random simulation models. Actually, there are seve...
Geostatistical simulation using controlled or stratified sampling methods, namely Latin hypercube an...
The sequential algorithm is widely used to simulate Gaussian random fields. However, a rigorous appl...
Geostatistical simulation using controlled or stratified sampling methods, namely Latin hypercube an...
The sequential algorithm is widely used to simulate Gaussian random fields. However, a rigorous appl...
The sequential indicator algorithm is a widespread geostatistical simulation technique that relies o...