Spatial-temporal modelling of environmental systems such as agriculture, forestry, and water resources requires high resolution input data. Assembling and summarizing this data in the appropriate format for model input often requires a series of spatial analyses which can be extremely time-consuming, especially when many large data sets are involved. In this paper we investigated the ability of high-performance computing techniques to improve the efficiency of spatial analysis for model data assembly. We implemented an array-based algorithm to calculate summary statistics for long time-series daily grid climate data sets for 11,575 climate-soil zones across the Australian wheat-growing regions for input into a crop simulation model. We deve...
Computing tasks may be parallelized top-down by splitting into per-node chunks when the tasks permit...
Some of the most challenging problems in ecology, hydrology, and geomorphology arise from processes ...
The authors present an application of multivariate non-hierarchical statistical clustering to geogra...
Spatial-temporal modelling of environmental systems such as agriculture, forestry, and water resourc...
Abstract: Efficient computation of regional land-surface parameters for large-scale digital elevatio...
The solution of complex global challenges in the land system, such as food and energy security, requ...
WaSSI-C is an ecohydrological model which couples water and carbon cycles with water use efficiency ...
AbstractIdentification of geographic ecoregions has long been of interest to environmental scientist...
The increasing interest in larger spatial and temporal scale models and high resolution input data p...
This final report includes details on the research accomplished by the grant entitled 'Exploitation ...
Copyright © 2003 Published by Elsevier Science B.V.The number of applications that require parallel ...
Increasing concerns about food security have stimulated integrated assessment of the sustainability ...
Abstract: The object of this article is the parallelization of kriging, which is an estimation metho...
The authors present an application of multivariate non-hierarchical statistical clustering to geogra...
Abstract: The computer industry has evolved from single-core to many-core architectures to keep offe...
Computing tasks may be parallelized top-down by splitting into per-node chunks when the tasks permit...
Some of the most challenging problems in ecology, hydrology, and geomorphology arise from processes ...
The authors present an application of multivariate non-hierarchical statistical clustering to geogra...
Spatial-temporal modelling of environmental systems such as agriculture, forestry, and water resourc...
Abstract: Efficient computation of regional land-surface parameters for large-scale digital elevatio...
The solution of complex global challenges in the land system, such as food and energy security, requ...
WaSSI-C is an ecohydrological model which couples water and carbon cycles with water use efficiency ...
AbstractIdentification of geographic ecoregions has long been of interest to environmental scientist...
The increasing interest in larger spatial and temporal scale models and high resolution input data p...
This final report includes details on the research accomplished by the grant entitled 'Exploitation ...
Copyright © 2003 Published by Elsevier Science B.V.The number of applications that require parallel ...
Increasing concerns about food security have stimulated integrated assessment of the sustainability ...
Abstract: The object of this article is the parallelization of kriging, which is an estimation metho...
The authors present an application of multivariate non-hierarchical statistical clustering to geogra...
Abstract: The computer industry has evolved from single-core to many-core architectures to keep offe...
Computing tasks may be parallelized top-down by splitting into per-node chunks when the tasks permit...
Some of the most challenging problems in ecology, hydrology, and geomorphology arise from processes ...
The authors present an application of multivariate non-hierarchical statistical clustering to geogra...