Unveiling the dynamics hidden in multivariate time series is a task of the utmost importance in a broad variety of areas in physics. We here propose a method that leads to the construction of a novel functional network, a multi-mode weighted graph combined with an empirical mode decomposition, and to the realization of multi-information fusion of multivariate time series. The method is illustrated in a couple of successful applications (a multi-phase flow and an epileptic electro-encephalogram), which demonstrate its powerfulness in revealing the dynamical behaviors underlying the transitions of different flow patterns, and enabling to differentiate brain states of seizure and non-seizure.
CITATION STYLE
Gao, Z. K., Yang, Y. X., Dang, W. D., Cai, Q., Wang, Z., Marwan, N., … Kurths, J. (2017). Reconstructing multi-mode networks from multivariate time series. EPL, 119(5). https://doi.org/10.1209/0295-5075/119/50008
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