Space-time correlation modeling is one of the crucial steps of traditional structural analysis, since spacetime models are used for prediction purposes. There are significant problems to overcome in both the estimation and the modeling stages for space-time analysis. A covariance function must be strictly positive definite and a variogram must be strictly conditionally negative definite to ensure that the kriging equations have a unique solution. In the spatial-temporal context the list of possible models is likely to be much greater and model type selection more difficult. Hence, in the estimation stage there are two separate problems, one is to determine the appropriate model type and the other is to estimate the model parameters. D...
Non-separable models are receiving a lot of attention, since they are more flexible to handle empir...
Modified GSLIB FORTRAN 77 routines are given in this paper for estimating and modeling space-time va...
The product covariance model, the product–sum covariance model, and the integrated product and integ...
As with a spatial variogram or spatial covariance, a principal purpose of estimating and modeling a ...
Consider teh class of intinsically stationary spatial processes, which contains the class of second-...
The product covariance model, the product-sum covariance model, and the integrated product and integ...
Modelisation and prediction of environmental phenomena, which typically show dependence in space and...
Non-separable models are receiving a lot of attention, since they are more flexible to handle empiri...
Click on the DOI link to access the article (may not be free)This paper studies a class of stationar...
Although there are multiple methods for modeling matrix covariance functions and matrix variograms i...
As a consequence of one of the stability properties of the covariance function in <n, new paramet...
Abstract Chapter3: Exploratory data analysis and prediction in time series modeling are not typicall...
Many branches within geography deal with variables that vary not only in space but also in time. The...
Space-time processes constitute a particular class, requiring suitable tools in order to predict val...
Many branches within geography deal with variables that vary not only in space but also in time. The...
Non-separable models are receiving a lot of attention, since they are more flexible to handle empir...
Modified GSLIB FORTRAN 77 routines are given in this paper for estimating and modeling space-time va...
The product covariance model, the product–sum covariance model, and the integrated product and integ...
As with a spatial variogram or spatial covariance, a principal purpose of estimating and modeling a ...
Consider teh class of intinsically stationary spatial processes, which contains the class of second-...
The product covariance model, the product-sum covariance model, and the integrated product and integ...
Modelisation and prediction of environmental phenomena, which typically show dependence in space and...
Non-separable models are receiving a lot of attention, since they are more flexible to handle empiri...
Click on the DOI link to access the article (may not be free)This paper studies a class of stationar...
Although there are multiple methods for modeling matrix covariance functions and matrix variograms i...
As a consequence of one of the stability properties of the covariance function in <n, new paramet...
Abstract Chapter3: Exploratory data analysis and prediction in time series modeling are not typicall...
Many branches within geography deal with variables that vary not only in space but also in time. The...
Space-time processes constitute a particular class, requiring suitable tools in order to predict val...
Many branches within geography deal with variables that vary not only in space but also in time. The...
Non-separable models are receiving a lot of attention, since they are more flexible to handle empir...
Modified GSLIB FORTRAN 77 routines are given in this paper for estimating and modeling space-time va...
The product covariance model, the product–sum covariance model, and the integrated product and integ...