Assessment of the sampling variance of the experimental variogram is an important topic in geostatistics as it gives the uncertainty of the variogram estimates. This assessment, however, is repeatedly overlooked in most applications mainly, perhaps, because a general approach has not been implemented in the most commonly used software packages for variogram analysis. In this paper the authors propose a solution that can be implemented easily in a computer program, and which, subject to certain assumptions, is exact. These assumptions are not very restrictive: second-order stationarity (the process has a finite variance and the variogram has a sill) and, solely for the purpose of evaluating fourth-order moments, a Gaussian distribution for t...
18 pagesWe present a computationally-efficient strategy to find the hyperparameters of a Gaussian pr...
In spatial statistics, the correct identification of a variogram model when fitted to an empirical v...
Measurement error is an important component of variation in most measured variables and also, theref...
Copyright © 2001 Published by Elsevier ScienceVARIOG2D is a Fortran-77 program that provides four ba...
The variogram model is one of the most relevant parameters in geostatistical estimation and simulat...
The empirical variogram is a standard tool in the investigation and modelling of spatial covariance...
The aim of this note is to present a method to compute the empirical variogram of a regionalized var...
Geostatistical analysis of spatial random functions frequently uses sample variograms computed from ...
In applied geostatistics, the semivariogram is commonly estimated from experimental data, producing ...
Geostatistics is a popular class of statistical methods for estimating, or predicting, the value of ...
The variogram is essential for local estimation and mapping of any variable by kriging. The variogra...
Geostatistical analysis of soil properties is undertaken to allow prediction of values of these prop...
In many fields of science dealing with geostatistical data, the weighted least squares proposed by C...
Vita.In this dissertation, an approach to representing the covariance structure of spatial random va...
The semivariogram model is the fundamental component in all geostatistical applications and its infe...
18 pagesWe present a computationally-efficient strategy to find the hyperparameters of a Gaussian pr...
In spatial statistics, the correct identification of a variogram model when fitted to an empirical v...
Measurement error is an important component of variation in most measured variables and also, theref...
Copyright © 2001 Published by Elsevier ScienceVARIOG2D is a Fortran-77 program that provides four ba...
The variogram model is one of the most relevant parameters in geostatistical estimation and simulat...
The empirical variogram is a standard tool in the investigation and modelling of spatial covariance...
The aim of this note is to present a method to compute the empirical variogram of a regionalized var...
Geostatistical analysis of spatial random functions frequently uses sample variograms computed from ...
In applied geostatistics, the semivariogram is commonly estimated from experimental data, producing ...
Geostatistics is a popular class of statistical methods for estimating, or predicting, the value of ...
The variogram is essential for local estimation and mapping of any variable by kriging. The variogra...
Geostatistical analysis of soil properties is undertaken to allow prediction of values of these prop...
In many fields of science dealing with geostatistical data, the weighted least squares proposed by C...
Vita.In this dissertation, an approach to representing the covariance structure of spatial random va...
The semivariogram model is the fundamental component in all geostatistical applications and its infe...
18 pagesWe present a computationally-efficient strategy to find the hyperparameters of a Gaussian pr...
In spatial statistics, the correct identification of a variogram model when fitted to an empirical v...
Measurement error is an important component of variation in most measured variables and also, theref...