Global-threshold and backbone high-resolution weather radar networks are significantly complementary in a watershed
There are several criteria for building up networks from time series related to different points in geographical space. The most used criterion is the Global-Threshold (GT). Using a weather radar dataset, this paper shows that the Backbone (BB) - a local-threshold criterion - generates networks whos...
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Zusammenfassung: | There are several criteria for building up networks from time series related
to different points in geographical space. The most used criterion is the
Global-Threshold (GT). Using a weather radar dataset, this paper shows that the
Backbone (BB) - a local-threshold criterion - generates networks whose
geographical configuration is complementary to the GT networks. We compare the
results for two well-known similarities measures: the Pearson Correlation (PC)
coefficient and the Mutual Information (MI). The extracted backbone network
(miBB), whose number of links is the same as the global MI (miGT), has the
lowest average shortest path and presents a small-world effect. Regarding the
global PC (pcGT) and its corresponding BB network (pcBB), there is a
significant linear relationship: $R2=0.77$ with a slope of $1.15$ (p-value
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DOI: | 10.48550/arxiv.2201.05503 |