The Matérn correlation function provides great flexibility for modeling spatially correlated random processes in two dimensions, in particular via a smoothness parameter, whose estimation allows data to determine the degree of smoothness of a spatial process. The extension to include anisotropy provides a very general and flexible class of spatial covariance functions that can be used in a model-based approach to geostatistics, in which parameter estimation is achieved via REML and prediction is within the E-BLUP framework. In this article we develop a general class of linear mixed models using an anisotropic Matérn class with an extended metric. The approach is illustrated by application to soil salinity data in a rice-growing field in Aus...
We consider the problem of analyzing spatially distributed data characterized by spatial anisotropy....
The 12th International Conference on Computational and Financial Econometrics (CFE 2018) and the 11t...
The efficient mapping of environmental hazards requires the development of methods for the analysis ...
The Matérn correlation function provides great flexibility for modeling spatially correlated random...
This thesis concerns the development, estimation and investigation of a general anisotropic spatial ...
Many heterogeneous media and environmental processes are statistically anisotropic, that is, their m...
Summarization: Many heterogeneous media and environmental processes are statistically anisotropic, t...
Geostatistical estimates of a soil property by kriging are equivalent to the best linear unbiased pr...
For modeling spatial processes, we propose rich classes of range anisotropic covariance structures t...
In multivariate context, it is common to adopt the linear coregionalization model (LCM) based on iso...
The study on spatial variability of soil properties performed through geostatistical techniques all...
This work addresses the question of building useful and valid models of anisotropic variograms for s...
The anisotropy in particular environmental phenomena is detected when behavior of a physical process...
Spartan random fields (RF’s) were recently introduced as computationally fast and parametrically fru...
<div><p>ABSTRACT Spatial variability depends on the sampling configuration and characteristics assoc...
We consider the problem of analyzing spatially distributed data characterized by spatial anisotropy....
The 12th International Conference on Computational and Financial Econometrics (CFE 2018) and the 11t...
The efficient mapping of environmental hazards requires the development of methods for the analysis ...
The Matérn correlation function provides great flexibility for modeling spatially correlated random...
This thesis concerns the development, estimation and investigation of a general anisotropic spatial ...
Many heterogeneous media and environmental processes are statistically anisotropic, that is, their m...
Summarization: Many heterogeneous media and environmental processes are statistically anisotropic, t...
Geostatistical estimates of a soil property by kriging are equivalent to the best linear unbiased pr...
For modeling spatial processes, we propose rich classes of range anisotropic covariance structures t...
In multivariate context, it is common to adopt the linear coregionalization model (LCM) based on iso...
The study on spatial variability of soil properties performed through geostatistical techniques all...
This work addresses the question of building useful and valid models of anisotropic variograms for s...
The anisotropy in particular environmental phenomena is detected when behavior of a physical process...
Spartan random fields (RF’s) were recently introduced as computationally fast and parametrically fru...
<div><p>ABSTRACT Spatial variability depends on the sampling configuration and characteristics assoc...
We consider the problem of analyzing spatially distributed data characterized by spatial anisotropy....
The 12th International Conference on Computational and Financial Econometrics (CFE 2018) and the 11t...
The efficient mapping of environmental hazards requires the development of methods for the analysis ...