The overall goal of this research, which is common to most spatial studies, is to predict a value of interest at an unsampled location based on measured values at nearby sampled locations. To accomplish this goal, ordinary kriging can be used to obtain the best linear unbiased predictor. However, there is often a large amount of variability surrounding the measurements of environmental variables, and traditional prediction methods, such as ordinary kriging, do not account for an attribute with more than one level of uncertainty. This dissertation addresses this limitation by introducing a new methodology called weighted kriging. This prediction technique accounts for measurements with significant variability, i.e., soft data, in additio...
Analyzing massive spatial datasets using a Gaussian process model poses computational challenges. Th...
In this survey we present various classical geostatistical prediction methods with a focus on interp...
In spatial statistics, a common method for prediction over a Gaussian random field (GRF) is maximum ...
The overall goal of this research, which is common to most spatial studies, is to predict a value of...
The overall goal of this research, which is common to most spatial studies, is to predict a value of...
Three methods for spatial prediction in Gaussian and transformed Gaussian random fields are describe...
[[abstract]]In many fields of science, predicting variables of interest over a study region based on...
Abstract In recent years, the environmental modeling community has moved away from kriging as the ma...
In this study it is shown how kriging with measurement errors (KME) is useful as opposed to more con...
This dissertation, comprising two distinct papers, investigates the prediction and sampling of spati...
The prediction of a spatial variable is of particular importance when analyzing spatial data. The ma...
Geostatistical estimates of a soil property by kriging are equivalent to the best linear unbiased pr...
Spatial interpolation is performed to predict data values of unseen locations based on the distribut...
In geostatistics, spatial data will be analysed that often come from irregularly distributed samplin...
Soil contamination by heavy metals and organic pollutants around industrial premises is a problem in...
Analyzing massive spatial datasets using a Gaussian process model poses computational challenges. Th...
In this survey we present various classical geostatistical prediction methods with a focus on interp...
In spatial statistics, a common method for prediction over a Gaussian random field (GRF) is maximum ...
The overall goal of this research, which is common to most spatial studies, is to predict a value of...
The overall goal of this research, which is common to most spatial studies, is to predict a value of...
Three methods for spatial prediction in Gaussian and transformed Gaussian random fields are describe...
[[abstract]]In many fields of science, predicting variables of interest over a study region based on...
Abstract In recent years, the environmental modeling community has moved away from kriging as the ma...
In this study it is shown how kriging with measurement errors (KME) is useful as opposed to more con...
This dissertation, comprising two distinct papers, investigates the prediction and sampling of spati...
The prediction of a spatial variable is of particular importance when analyzing spatial data. The ma...
Geostatistical estimates of a soil property by kriging are equivalent to the best linear unbiased pr...
Spatial interpolation is performed to predict data values of unseen locations based on the distribut...
In geostatistics, spatial data will be analysed that often come from irregularly distributed samplin...
Soil contamination by heavy metals and organic pollutants around industrial premises is a problem in...
Analyzing massive spatial datasets using a Gaussian process model poses computational challenges. Th...
In this survey we present various classical geostatistical prediction methods with a focus on interp...
In spatial statistics, a common method for prediction over a Gaussian random field (GRF) is maximum ...