Anna Michalak

Director, Carnegie Climate and Resilience Hub



Spatial analysis and visualization of global data on multi-resolution hexagonal grids


Journal article


T. Stough, Noel A Cressie, Noel A Cressie, Emily L. Kang, A. Michalak, K. Sahr
Japanese Journal of Statistics and Data Science, 2020

Semantic Scholar DOI PubMedCentral PubMed
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APA   Click to copy
Stough, T., Cressie, N. A., Cressie, N. A., Kang, E. L., Michalak, A., & Sahr, K. (2020). Spatial analysis and visualization of global data on multi-resolution hexagonal grids. Japanese Journal of Statistics and Data Science.


Chicago/Turabian   Click to copy
Stough, T., Noel A Cressie, Noel A Cressie, Emily L. Kang, A. Michalak, and K. Sahr. “Spatial Analysis and Visualization of Global Data on Multi-Resolution Hexagonal Grids.” Japanese Journal of Statistics and Data Science (2020).


MLA   Click to copy
Stough, T., et al. “Spatial Analysis and Visualization of Global Data on Multi-Resolution Hexagonal Grids.” Japanese Journal of Statistics and Data Science, 2020.


BibTeX   Click to copy

@article{t2020a,
  title = {Spatial analysis and visualization of global data on multi-resolution hexagonal grids},
  year = {2020},
  journal = {Japanese Journal of Statistics and Data Science},
  author = {Stough, T. and Cressie, Noel A and Cressie, Noel A and Kang, Emily L. and Michalak, A. and Sahr, K.}
}

Abstract

In this article, computation for the purpose of spatial visualization is presented in the context of understanding the variability in global environmental processes. Here, we generate synthetic but realistic global data sets and input them into computational algorithms that have a visualization capability; we call this a simulation–visualization system. Visualization is key here, because the algorithms which we are evaluating must respect the spatial structure of the input. We modify, augment, and integrate four existing component technologies: statistical conditional simulation, Discrete Global Grids (DGGs), Array Set Addressing, and a visualization platform for displaying our results on a globe. The internal representation of the data to be visualized is built around the need for efficient storage and computation as well as the need to move up and downresolutions in a mutually consistent way. In effect, we have constructed a Geographic Information System that is based on a DGG and has desirable data storage, computation, and visualization capabilities. We provide an example of how our simulation–visualization system may be used, by evaluating a computational algorithm called Spatial Statistical Data Fusion that was developed for use on big, remote-sensing data sets.



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