Current visualization tools lack the ability to perform full-range spatial and temporal analysis on terascale scientific datasets. Two key reasons exist for this shortcoming: I/O and postprocessing on these datasets are being performed in suboptimal manners, and the subsequent data extraction and analysis routines have not been studied in depth at large scales. We resolved these issues through advanced I/O tech-niques and improvements to current query-driven visualiza-tion methods. We show the efficiency of our approach by analyzing over a terabyte of multivariate satellite data and addressing two key issues in climate science: time-lag anal-ysis and drought assessment. Our methods allowed us to reduce the end-to-end execution times on thes...
In this paper, a unique approach to the problem of spatio-temporal pattern detection is discussed in...
Abstract — Climate change has been a challenging and urgent research problem for many related resear...
Understanding atmospheric phenomena involves analysis of large-scale spatiotemporal multivariate dat...
Current visualization tools lack the ability to perform full-range spatial and temporal analysis on ...
Current visualization tools lack the ability to perform full-range spatial and temporal analysis on ...
AbstractAlong with the expansion of computer-based climate simulations, efficient visualization and ...
We present a statistical approach to study time-varying, multivari-ate climate data sets. Aided by d...
Global Climate Models (GCMs) are essential tools to simulate future climate indicators and are widel...
Climate and weather modeling generate enormous volumes that make iterative analysis challenging, spu...
The increasing amount of data generated by earth observation missions like Copernicus, NASA Earth Da...
With the development of new technology, it is easier to collect spatial and spatio-temporal data, co...
<p>Increasing computer power and the availability of remote-sensing data measuring different environ...
Understanding, characterizing, and predicting drought is vital for the reduction of its consequences...
A multi-key data organization is developed for handling a continuous stream of large scale, time-dep...
Earth system scientists are being inundated by an explosion of data generated by ever-increasing res...
In this paper, a unique approach to the problem of spatio-temporal pattern detection is discussed in...
Abstract — Climate change has been a challenging and urgent research problem for many related resear...
Understanding atmospheric phenomena involves analysis of large-scale spatiotemporal multivariate dat...
Current visualization tools lack the ability to perform full-range spatial and temporal analysis on ...
Current visualization tools lack the ability to perform full-range spatial and temporal analysis on ...
AbstractAlong with the expansion of computer-based climate simulations, efficient visualization and ...
We present a statistical approach to study time-varying, multivari-ate climate data sets. Aided by d...
Global Climate Models (GCMs) are essential tools to simulate future climate indicators and are widel...
Climate and weather modeling generate enormous volumes that make iterative analysis challenging, spu...
The increasing amount of data generated by earth observation missions like Copernicus, NASA Earth Da...
With the development of new technology, it is easier to collect spatial and spatio-temporal data, co...
<p>Increasing computer power and the availability of remote-sensing data measuring different environ...
Understanding, characterizing, and predicting drought is vital for the reduction of its consequences...
A multi-key data organization is developed for handling a continuous stream of large scale, time-dep...
Earth system scientists are being inundated by an explosion of data generated by ever-increasing res...
In this paper, a unique approach to the problem of spatio-temporal pattern detection is discussed in...
Abstract — Climate change has been a challenging and urgent research problem for many related resear...
Understanding atmospheric phenomena involves analysis of large-scale spatiotemporal multivariate dat...