Very large spatially-referenced datasets, for example, those derived from satellite-based sensors which sample across the globe or large monitoring networks of individual sensors, are becoming increasingly common and more widely available for use in environmental decision making. In large or dense sensor networks, huge quantities of data can be collected over small time periods. In many applications the generation of maps, or predictions at specific locations, from the data in (near) real-time is crucial. Geostatistical operations such as interpolation are vital in this map-generation process and in emergency situations, the resulting predictions need to be available almost instantly, so that decision makers can make informed decisions and ...
In the last few decades, the size of spatial and spatio-temporal datasets in many research areas has...
Geographic information systems (GIS) are performing increasingly sophisticated analyses on growing d...
This article develops a block composite likelihood for estimation and prediction in large spatial da...
Areal interpolation is the procedure of using known attribute values at a set of (source) areal unit...
With the ability to collect and store increasingly large datasets on modern computers comes the need...
Abstract: The object of this article is the parallelization of kriging, which is an estimation metho...
Data analysis is receiving considerable attention with the design of new graphics processing units (...
In the past decades, multiple-point geostatistical methods (MPS) are increasing in popularity in var...
Spatial-temporal modelling of environmental systems such as agriculture, forestry, and water resourc...
Computing tasks may be parallelized top-down by splitting into per-node chunks when the tasks permit...
Copyright © 2003 Published by Elsevier Science B.V.The number of applications that require parallel ...
AbstractGeostatistical methods provide a powerful tool to understand the complexity of data arising ...
Due to rapid data growth, it is increasingly becoming infeasible to move massive datasets, and stati...
The expressive power of Gaussian process (GP) models comes at a cost of poor scalability in the size...
<p>Spatial process models for analyzing geostatistical data entail computations that become prohibit...
In the last few decades, the size of spatial and spatio-temporal datasets in many research areas has...
Geographic information systems (GIS) are performing increasingly sophisticated analyses on growing d...
This article develops a block composite likelihood for estimation and prediction in large spatial da...
Areal interpolation is the procedure of using known attribute values at a set of (source) areal unit...
With the ability to collect and store increasingly large datasets on modern computers comes the need...
Abstract: The object of this article is the parallelization of kriging, which is an estimation metho...
Data analysis is receiving considerable attention with the design of new graphics processing units (...
In the past decades, multiple-point geostatistical methods (MPS) are increasing in popularity in var...
Spatial-temporal modelling of environmental systems such as agriculture, forestry, and water resourc...
Computing tasks may be parallelized top-down by splitting into per-node chunks when the tasks permit...
Copyright © 2003 Published by Elsevier Science B.V.The number of applications that require parallel ...
AbstractGeostatistical methods provide a powerful tool to understand the complexity of data arising ...
Due to rapid data growth, it is increasingly becoming infeasible to move massive datasets, and stati...
The expressive power of Gaussian process (GP) models comes at a cost of poor scalability in the size...
<p>Spatial process models for analyzing geostatistical data entail computations that become prohibit...
In the last few decades, the size of spatial and spatio-temporal datasets in many research areas has...
Geographic information systems (GIS) are performing increasingly sophisticated analyses on growing d...
This article develops a block composite likelihood for estimation and prediction in large spatial da...