Modeling and prediction multivariate geostatistical techniques can be successfully applied to study the temporal behaviour of several correlated time series. In particular, in the time domain, by using variogram-based tools the analyst can easily a) identify trend and periodicity which characterize each time series, b) fit a properly Multivariate Linear Temporal (MLT) model to multiple correlated time series, c) predict the variable of interest (primary variable) at some time points after the last available observation, by taking into account the fitted model as well as the auxiliary information coming from the secondary variables. In this paper the convenience of performing a complete analysis of multiple correlated time series on the basi...
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 ...
This dissertation studies several topics in time series modeling. The discussion on seasonal time se...
Modeling and prediction multivariate geostatistical techniques can be successfully applied to study ...
Abstract Chapter3: Exploratory data analysis and prediction in time series modeling are not typicall...
An environmental data set often concerns different correlated variables measured at some locations o...
A large number of hydrological phenomena may be regarded as realizations of space-time random functi...
In various environmental studies multivariate spatial–temporal correlated data are involved, hence ...
The third edition of this very successful text book provides an introduction to geostatistics stress...
In this paper we briefly illustrate some exploratory techniques born in the geostatistical framework...
Forecasting in geophysical time series is a challenging problem with numerous applications. The pres...
Box-Jenkins methodology (1976) is commonly applied for time series analysis. Using this approach, s...
Many branches within geography deal with variables that vary not only in space but also in time. The...
Many branches within geography deal with variables that vary not only in space but also in time. The...
We present a statistical approach to study time-varying, multivari-ate climate data sets. Aided by d...
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 ...
This dissertation studies several topics in time series modeling. The discussion on seasonal time se...
Modeling and prediction multivariate geostatistical techniques can be successfully applied to study ...
Abstract Chapter3: Exploratory data analysis and prediction in time series modeling are not typicall...
An environmental data set often concerns different correlated variables measured at some locations o...
A large number of hydrological phenomena may be regarded as realizations of space-time random functi...
In various environmental studies multivariate spatial–temporal correlated data are involved, hence ...
The third edition of this very successful text book provides an introduction to geostatistics stress...
In this paper we briefly illustrate some exploratory techniques born in the geostatistical framework...
Forecasting in geophysical time series is a challenging problem with numerous applications. The pres...
Box-Jenkins methodology (1976) is commonly applied for time series analysis. Using this approach, s...
Many branches within geography deal with variables that vary not only in space but also in time. The...
Many branches within geography deal with variables that vary not only in space but also in time. The...
We present a statistical approach to study time-varying, multivari-ate climate data sets. Aided by d...
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 ...
This dissertation studies several topics in time series modeling. The discussion on seasonal time se...