Complex network approach to characterize the statistical features of the sunspot series

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Date
2014
Volume
16
Issue
Journal
Series Titel
Book Title
Publisher
Bristol : Institute of Physics Publishing
Abstract

Complex network approaches have been recently developed as an alternative framework to study the statistical features of time-series data. We perform a visibility-graph analysis on both the daily and monthly sunspot series. Based on the data, we propose two ways to construct the network: one is from the original observable measurements and the other is from a negative-inverse- transformed series. The degree distribution of the derived networks for the strong maxima has clear non-Gaussian properties, while the degree distribution for minima is bimodal. The long-term variation of the cycles is reflected by hubs in the network that span relatively large time intervals. Based on standard network structural measures, we propose to characterize the long-term correlations by waiting times between two subsequent events. The persistence range of the solar cycles has been identified over 15-1000 days by a power-law regime with scaling exponent γ = 2.04 of the occurrence time of two subsequent strong minima. In contrast, a persistent trend is not present in the maximal numbers, although maxima do have significant deviations from an exponential form. Our results suggest some new insights for evaluating existing models.

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Keywords
complex network, time-series data, sunspots
Citation
Zou, Y., Small, M., Liu, Z., & Kurths, J. (2014). Complex network approach to characterize the statistical features of the sunspot series. 16. https://doi.org//10.1088/1367-2630/16/1/013051
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License
CC BY 3.0 Unported