Forecasting in geophysical time series is a challenging problem with numerous applications. The presence of correlation (i.e. spatial correlation across several sites and time correlation within each site) poses difficulties with respect to traditional modeling, computation and statistical theory. This paper presents a cluster-centric forecasting methodology that allows us to yield a characterization of correlation in geophysical time series through a spatio-temporal clustering step. The clustering phase is designed for partitioning time series of numeric data routinely sampled at specific space locations. A forecasting model is then computed by resorting to multivariate time series analysis, in order to predict the future values of a time ...
We present a correlation study of time-varying multivariate volu-metric data sets. In most scientifi...
Abstract The simplest way to forecast geophysical processes, an engineering problem with a widely re...
Ubiquitous sensor stations continuously measure several geophysical fields over large zones and long...
Forecasting in geophysical time series is a challenging problem with numerous applications. The pres...
Managing geophysical data generated by emerging spatiotemporal data sources (e.g. geosensor networks...
Managing geophysical data generated by emerging spatiotemporal data sources (e.g. geosensor networks...
Clustering geosensor data is a problem that has recently attracted a large amount of research. In th...
Clustering geosensor data is a problem that has recently attracted a large amount of research. In th...
Modeling and prediction multivariate geostatistical techniques can be successfully applied to study ...
Modeling and prediction multivariate geostatistical techniques can be successfully applied to study ...
Even though many studies have shown the usefulness of clustering for the exploration of spatio-tempo...
Time series clustering is an important task in data analysis issues in order to extract implicit, pr...
Time series clustering is an important task in data analysis issues in order to extract implicit, pr...
Increasing amounts of high-velocity spatio-temporal data reinforce the need for clustering algorithm...
Nowadays ubiquitous sensor stations are deployed worldwide, in order to measure several geophysical ...
We present a correlation study of time-varying multivariate volu-metric data sets. In most scientifi...
Abstract The simplest way to forecast geophysical processes, an engineering problem with a widely re...
Ubiquitous sensor stations continuously measure several geophysical fields over large zones and long...
Forecasting in geophysical time series is a challenging problem with numerous applications. The pres...
Managing geophysical data generated by emerging spatiotemporal data sources (e.g. geosensor networks...
Managing geophysical data generated by emerging spatiotemporal data sources (e.g. geosensor networks...
Clustering geosensor data is a problem that has recently attracted a large amount of research. In th...
Clustering geosensor data is a problem that has recently attracted a large amount of research. In th...
Modeling and prediction multivariate geostatistical techniques can be successfully applied to study ...
Modeling and prediction multivariate geostatistical techniques can be successfully applied to study ...
Even though many studies have shown the usefulness of clustering for the exploration of spatio-tempo...
Time series clustering is an important task in data analysis issues in order to extract implicit, pr...
Time series clustering is an important task in data analysis issues in order to extract implicit, pr...
Increasing amounts of high-velocity spatio-temporal data reinforce the need for clustering algorithm...
Nowadays ubiquitous sensor stations are deployed worldwide, in order to measure several geophysical ...
We present a correlation study of time-varying multivariate volu-metric data sets. In most scientifi...
Abstract The simplest way to forecast geophysical processes, an engineering problem with a widely re...
Ubiquitous sensor stations continuously measure several geophysical fields over large zones and long...