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Hauptverfasser: Jorge, Aurelienne A. S., Uba, Douglas, Fernandes, Alex A., Costa, Izabelly C., Santos, Leonardo B. L.
Format: Preprint
Veröffentlicht: 2022
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2206.11339
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author Jorge, Aurelienne A. S.
Uba, Douglas
Fernandes, Alex A.
Costa, Izabelly C.
Santos, Leonardo B. L.
author_facet Jorge, Aurelienne A. S.
Uba, Douglas
Fernandes, Alex A.
Costa, Izabelly C.
Santos, Leonardo B. L.
contents The study of complex systems in nature is essential to understand the interactions between different elements and how they influence one another. Complex network theory is a powerful tool that helps us to analyze these interactions and gain insights into the behavior of such systems. Surprisingly, this theory has been underutilized in the field of weather science, which focuses on the immediate state of the atmosphere. Our research aims to fill this gap by exploring the use of complex network theory in weather science. Specifically, we employ weather radar data to construct event-based geographical networks. By analyzing the relations between meteorological properties and network metrics in these event-based networks, we can gain a better understanding of the behavior of precipitation events. Our findings reveal significant correlations between various meteorological properties and network metrics, shedding light on the underlying mechanisms that govern precipitation events. Through our work, we hope to demonstrate the potential of complex network theory in weather science and inspire further research in this field.
format Preprint
id arxiv_https___arxiv_org_abs_2206_11339
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Precipitation event-based networks: an analysis of the relations between network metrics and meteorological properties
Jorge, Aurelienne A. S.
Uba, Douglas
Fernandes, Alex A.
Costa, Izabelly C.
Santos, Leonardo B. L.
Social and Information Networks
The study of complex systems in nature is essential to understand the interactions between different elements and how they influence one another. Complex network theory is a powerful tool that helps us to analyze these interactions and gain insights into the behavior of such systems. Surprisingly, this theory has been underutilized in the field of weather science, which focuses on the immediate state of the atmosphere. Our research aims to fill this gap by exploring the use of complex network theory in weather science. Specifically, we employ weather radar data to construct event-based geographical networks. By analyzing the relations between meteorological properties and network metrics in these event-based networks, we can gain a better understanding of the behavior of precipitation events. Our findings reveal significant correlations between various meteorological properties and network metrics, shedding light on the underlying mechanisms that govern precipitation events. Through our work, we hope to demonstrate the potential of complex network theory in weather science and inspire further research in this field.
title Precipitation event-based networks: an analysis of the relations between network metrics and meteorological properties
topic Social and Information Networks
url https://arxiv.org/abs/2206.11339