Geographic data is growing in size and variety, which calls for big data management tools and analysis methods. To efficiently integrate information from high dimensional data, this paper explicitly proposes array-based modeling. A large portion of Earth observations and model simulations are naturally arrays once digitalized. This paper discusses the challenges in using arrays such as the discretization of continuous spatiotemporal phenomena, irregular dimensions, regridding, high-dimensional data analysis, and large-scale data management. We define categories and applications of typical array operations, compare their implementation in open-source software, and demonstrate dimension reduction and array regridding in study cases using Land...
Borrowing from the tidy data principles developed for tabular datasets [Wickham, 2014](https://vita....
Abstract data types are a helpful framework to formalise analyses and make them more transparent, re...
Scientists today are able to generate data at an unprecedented scale and rate. For example the Sloan...
© 2018 by the authors. Geographic data is growing in size and variety, which calls for big data mana...
Over the past few years, Earth Observation (EO) has been continuously generating much spatiotemporal...
Growing availability of long-term satellite imagery enables change modeling with advanced spatio-tem...
This paper defines the Field data type for big spatial data. Most big spatial data sets provide info...
Abstract: Environmental datasets grow in size and specialization while models designed for local sca...
<p>Growing availability of long-term satellite imagery enables change modeling with advanced spatio-...
Earth observation (EO) datasets are commonly provided as collection of scenes, where individual scen...
In this chapter, visualization is used to evaluate the performance of global-scale computational alg...
Data modeling is defined as the process of discretizing spatial variation, but is often confused wit...
Real-world phenomena have traditionally been modelled in a GIS in two and three dimensions. However,...
Gridded geospatial remote sensing (satellite) data has traditionally been stored in file-based multi...
Raster image data is the most voluminous data type encountered in remote sensing applications. With ...
Borrowing from the tidy data principles developed for tabular datasets [Wickham, 2014](https://vita....
Abstract data types are a helpful framework to formalise analyses and make them more transparent, re...
Scientists today are able to generate data at an unprecedented scale and rate. For example the Sloan...
© 2018 by the authors. Geographic data is growing in size and variety, which calls for big data mana...
Over the past few years, Earth Observation (EO) has been continuously generating much spatiotemporal...
Growing availability of long-term satellite imagery enables change modeling with advanced spatio-tem...
This paper defines the Field data type for big spatial data. Most big spatial data sets provide info...
Abstract: Environmental datasets grow in size and specialization while models designed for local sca...
<p>Growing availability of long-term satellite imagery enables change modeling with advanced spatio-...
Earth observation (EO) datasets are commonly provided as collection of scenes, where individual scen...
In this chapter, visualization is used to evaluate the performance of global-scale computational alg...
Data modeling is defined as the process of discretizing spatial variation, but is often confused wit...
Real-world phenomena have traditionally been modelled in a GIS in two and three dimensions. However,...
Gridded geospatial remote sensing (satellite) data has traditionally been stored in file-based multi...
Raster image data is the most voluminous data type encountered in remote sensing applications. With ...
Borrowing from the tidy data principles developed for tabular datasets [Wickham, 2014](https://vita....
Abstract data types are a helpful framework to formalise analyses and make them more transparent, re...
Scientists today are able to generate data at an unprecedented scale and rate. For example the Sloan...