An environmental data set often concerns different correlated variables measured at some locations of the study area and for several time points. In this case, the data set presents a multivariate spatio-temporal structure; therefore appropriate modeling techniques which take into account the spatio-temporal relationships among the variables are needed. The space-time LCM (ST-LCM) based on admissible spatiotemporal models may successfully capture the spatio-temporal behaviour of the phenomena under study and can be used for prediction purposes. After a brief presentation of the spatio-temporal multivariate geostatistical framework, a case study is proposed and the following aspects are considered: 1. estimating the spatio-temporal int...
Environmental data is nearly always multivariate and often spatial–temporal. Thus to interpolate the...
This thesis addresses some problems in multivariate spatial and spatio-temporal modeling using a bay...
In geostatistics, methods for characterizing the spatial or temporal variation at different scales o...
In environmental sciences, it is very common to observe spatio-temporal multiple data concerning sev...
In multivariate spatio-temporal Geostatistics, direct and cross-correlations among the variables of ...
In multivariate Geostatistics, the linear coregionalization model (LCM) has been widely used over th...
In many environmental sciences, several correlated variables are observed at some locations of the d...
Modeling and prediction multivariate geostatistical techniques can be successfully applied to study ...
Modeling and prediction multivariate geostatistical techniques can be successfully applied to study ...
none4noIn environmental sciences, it is very common to observe spatio- temporal multiple data concer...
Environmental data present nearly always a multivariate spatiotemporal structure. Simultaneous diago...
Abstract: The near simultaneous diagonalization of the sample space-time matrix covariances or vari...
In various environmental studies multivariate spatial–temporal correlated data are involved, hence ...
A large number of hydrological phenomena may be regarded as realizations of space-time random functi...
In multivariate context, it is common to adopt the linear coregionalization model (LCM) based on iso...
Environmental data is nearly always multivariate and often spatial–temporal. Thus to interpolate the...
This thesis addresses some problems in multivariate spatial and spatio-temporal modeling using a bay...
In geostatistics, methods for characterizing the spatial or temporal variation at different scales o...
In environmental sciences, it is very common to observe spatio-temporal multiple data concerning sev...
In multivariate spatio-temporal Geostatistics, direct and cross-correlations among the variables of ...
In multivariate Geostatistics, the linear coregionalization model (LCM) has been widely used over th...
In many environmental sciences, several correlated variables are observed at some locations of the d...
Modeling and prediction multivariate geostatistical techniques can be successfully applied to study ...
Modeling and prediction multivariate geostatistical techniques can be successfully applied to study ...
none4noIn environmental sciences, it is very common to observe spatio- temporal multiple data concer...
Environmental data present nearly always a multivariate spatiotemporal structure. Simultaneous diago...
Abstract: The near simultaneous diagonalization of the sample space-time matrix covariances or vari...
In various environmental studies multivariate spatial–temporal correlated data are involved, hence ...
A large number of hydrological phenomena may be regarded as realizations of space-time random functi...
In multivariate context, it is common to adopt the linear coregionalization model (LCM) based on iso...
Environmental data is nearly always multivariate and often spatial–temporal. Thus to interpolate the...
This thesis addresses some problems in multivariate spatial and spatio-temporal modeling using a bay...
In geostatistics, methods for characterizing the spatial or temporal variation at different scales o...