On the influence of spatial sampling on climate networks

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Date
2014
Volume
21
Issue
3
Journal
Series Titel
Book Title
Publisher
Göttingen : Copernicus GmbH
Abstract

Climate networks are constructed from climate time series data using correlation measures. It is widely accepted that the geographical proximity, as well as other geographical features such as ocean and atmospheric currents, have a large impact on the observable time-series similarity. Therefore it is to be expected that the spatial sampling will influence the reconstructed network. Here we investigate this by comparing analytical flow networks, networks generated with the START model and networks from temperature data from the Asian monsoon domain. We evaluate them on a regular grid, a grid with added random jittering and two variations of clustered sampling. We find that the impact of the spatial sampling on most network measures only distorts the plots if the node distribution is significantly inhomogeneous. As a simple diagnostic measure for the detection of inhomogeneous sampling we suggest the Voronoi cell size distribution.

Description
Keywords
climate networks, time series data, spatial sampling
Citation
Molkenthin, N., Rehfeld, K., Stolbova, V., Tupikina, L., & Kurths, J. (2014). On the influence of spatial sampling on climate networks. 21(3). https://doi.org//10.5194/npg-21-651-2014
License
CC BY 3.0 Unported