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Pulse-coupled model of excitable elements on heterogeneous sparse networks

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 نشر من قبل Pablo Piedrahita
 تاريخ النشر 2017
  مجال البحث علم الأحياء فيزياء
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We study a pulse-coupled dynamics of excitable elements in uncorrelated scale-free networks. Regimes of self-sustained activity are found for homogeneous and inhomogeneous couplings, in which the system displays a wide variety of behaviors, including periodic and irregular global spiking signals, as well as coherent oscillations, an unexpected form of synchronization. Our numerical results also show that the properties of the population firing rate depend on the size of the system, particularly its structure and average value over time. However, a few straightforward dynamical and topological strategies can be introduced to enhance or hinder these global behaviors, rendering a scenario where signal control is attainable, which incorporates a basic mechanism to turn off the dynamics permanently. As our main result, here we present a framework to estimate, in the stationary state, the mean firing rate over a long time window and to decompose the global dynamics into average values of the inter-spike-interval of each connectivity group. Our approach provides accurate predictions of these average quantities when the network exhibits high heterogeneity, a remarkable finding that is not restricted exclusively to the scale-free topology.



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