Nonlinear Sciences – Chaotic Dynamics
Scientific paper
2010-10-25
International Journal of Bifurcation and Chaos 21(4), 1019-1046 (2011)
Nonlinear Sciences
Chaotic Dynamics
To be published in International Journal of Bifurcation and Chaos (2011)
Scientific paper
10.1142/S0218127411029021
Complex networks are an important paradigm of modern complex systems sciences which allows quantitatively assessing the structural properties of systems composed of different interacting entities. During the last years, intensive efforts have been spent on applying network-based concepts also for the analysis of dynamically relevant higher-order statistical properties of time series. Notably, many corresponding approaches are closely related with the concept of recurrence in phase space. In this paper, we review recent methodological advances in time series analysis based on complex networks, with a special emphasis on methods founded on recurrence plots. The potentials and limitations of the individual methods are discussed and illustrated for paradigmatic examples of dynamical systems as well as for real-world time series. Complex network measures are shown to provide information about structural features of dynamical systems that are complementary to those characterized by other methods of time series analysis and, hence, substantially enrich the knowledge gathered from other existing (linear as well as nonlinear) approaches.
Donges Jonathan F.
Donner Reik V.
Kurths Jürgen
Marwan Norbert
Small Michael
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