Current ideas of robustness in geostatistics concentrate upon estimation of the experimental variogram. However, predictive algorithms can be very sensitive to small perturbations in data or in the variogram model as well. To quantify this notion of robustness, nearness of variogram models is defined. Closeness of two variogram models is reflected in the sensitivity of their corresponding kriging estimators. The condition number of kriging matrices is shown to play a central role. Various examples are given. The ideas are used to analyze more complex universal kriging systems
Variograms are used to describe the spatial variability of environmental variables. In this study, t...
This study adds to our ability to predict the unknown by empirically assessing the performance of a...
In the context of spatial statistics, the classical variogram estimator proposed by Matheron is not ...
Geostatistics is a popular class of statistical methods for estimating, or predicting, the value of ...
Kriging is a well known spatial interpolation technique widely used in earth science and environment...
In this survey we present various classical geostatistical prediction methods with a focus on interp...
International audienceKriging consists in estimating or predicting the spatial phenomenon at non sam...
This report deals with Kriging, a spatial interpolation-method that enables making predictions of th...
International audienceGeostatistics is a branch of statistics dealing with spatial phenomena. Krigin...
This study adds to our ability to predict the unknown by empirically assessing the performance of a...
Two techniques are commonly used to predict values of a random field u(t) from a vector of observati...
Two techniques are commonly used to predict values of a random field u(t) from a vector of observati...
Two techniques are commonly used to predict values of a random field u(t) from a vector of observati...
Two techniques are commonly used to predict values of a random field u(t) from a vector of observati...
This study adds to our ability to predict the unknown by empirically assessing the performance of a...
Variograms are used to describe the spatial variability of environmental variables. In this study, t...
This study adds to our ability to predict the unknown by empirically assessing the performance of a...
In the context of spatial statistics, the classical variogram estimator proposed by Matheron is not ...
Geostatistics is a popular class of statistical methods for estimating, or predicting, the value of ...
Kriging is a well known spatial interpolation technique widely used in earth science and environment...
In this survey we present various classical geostatistical prediction methods with a focus on interp...
International audienceKriging consists in estimating or predicting the spatial phenomenon at non sam...
This report deals with Kriging, a spatial interpolation-method that enables making predictions of th...
International audienceGeostatistics is a branch of statistics dealing with spatial phenomena. Krigin...
This study adds to our ability to predict the unknown by empirically assessing the performance of a...
Two techniques are commonly used to predict values of a random field u(t) from a vector of observati...
Two techniques are commonly used to predict values of a random field u(t) from a vector of observati...
Two techniques are commonly used to predict values of a random field u(t) from a vector of observati...
Two techniques are commonly used to predict values of a random field u(t) from a vector of observati...
This study adds to our ability to predict the unknown by empirically assessing the performance of a...
Variograms are used to describe the spatial variability of environmental variables. In this study, t...
This study adds to our ability to predict the unknown by empirically assessing the performance of a...
In the context of spatial statistics, the classical variogram estimator proposed by Matheron is not ...