Analysis of Rainfall Networks Generated from Different Similarity Measures
Resumen
Network science allows the investigation of several complex systems. From a set of nodes (vertices) and links (edges), it is possible to abstract the characteristics of these systems and the interactions between their components, enabling, for example, the study of the dynamics of meteorological systems via their time series on global [4], and local [2, 5] scales. [...]Descargas
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