نتایج جستجو برای: geostatistical modeling

تعداد نتایج: 391757  

Journal: :Applied sciences 2023

Training images are important input parameters for multipoint geostatistical modeling, and training that can portray 3D spatial correlations required to construct models. The usually obtained by unconditional simulation using algorithms such as object-based algorithms, in some cases, it is difficult obtain the directly, so a series of modeling methods based on 2D constructing models has been fo...

1999

The variogram is a critical input to geostatistical studies. It is the most widely used tool to investigate and model spatial variability of lithofacies, porosity, and other petrophysical properties. In addition, 90% of geostatistical reservoir characterization studies use variogram-based geostatistical modeling methods. Furthermore, the variogram reflects our understanding of the geometry and ...

Journal: :Ecological applications : a publication of the Ecological Society of America 2006
Jennifer A Hoeting Richard A Davis Andrew A Merton Sandra E Thompson

We consider the problem of model selection for geospatial data. Spatial correlation is often ignored in the selection of explanatory variables, and this can influence model selection results. For example, the importance of particular explanatory variables may not be apparent when spatial correlation is ignored. To address this problem, we consider the Akaike Information Criterion (AIC) as appli...

2011
Michael Cardiff Warren Barrash

[1] We investigate, through numerical experiments, the viability of three-dimensional transient hydraulic tomography (3DTHT) for identifying the spatial distribution of groundwater flow parameters (primarily, hydraulic conductivity K) in permeable, unconfined aquifers. To invert the large amount of transient data collected from 3DTHT surveys, we utilize an iterative geostatistical inversion str...

2017
Ying-Qiang Song Bo Li Yue-Ming Hu Xue-Sen Cui Yi-Lun Liu

An accurate estimation of soil organic matter (SOM) content for spatial non-point prediction is an important driving force for the agricultural carbon cycle and sustainable productivity. This study proposed a hybrid geostatistical method of extreme learning machine-ordinary kriging (ELMOK), to predict the spatial variability of the SOM content. To assess the feasibility of ELMOK, a case study w...

2004
Greg A. Oldenborger Michael D. Knoll

Recent research has suggested that the geostatistical structure of ground-penetrating radar data may be representative of the spatial structure of hydraulic properties. However, radar images of the subsurface can change drastically with application of signal processing or by changing the signal frequency. We perform geostatistical analyses of surface radar reflection profiles in order to invest...

2000
J. K. Caers

Accurate prediction of petroleum reservoir performance requires reliable models of the often complex reservoir heterogeneity. Geostatistical simulation techniques generate multiple realizations of the reservoir model, all equally likely to be drawn. Traditional to geostatistics, geological continuity is represented through the variogram. The variogram is limited in describing complex geological...

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