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Noise induced complexity:patterns and collective phenomena in a small-world neuronal network

机译:噪声引起的复杂性:小世界神经元网络中的模式和集体现象

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The effects of noise on patterns and collective phenomena are studied in a small-world neuronal network with the dynamics of each neuron being described by a two-dimensional Rulkov map neuron. It is shown that for intermediate noise levels, noise-induced ordered patterns emerge spatially, which supports the spatiotemporal coherence resonance. However, the inherent long range couplings of small-world networks can effectively disrupt the internal spatial scale of the media at small fraction of longrange couplings. The temporal order, characterized by the autocorrelation of a firing rate function, can be greatly enhanced by the introduction of small-world connectivity. There exists an optimal fraction of randomly rewired links, where the temporal order and synchronization can be optimized.
机译:在小型世界神经元网络中研究了噪声对模式和集体现象的影响,其中每个神经元的动力学由二维Rulkov映射神经元描述。结果表明,对于中等噪声水平,噪声诱导的有序模式在空间上出现,这支持时空相干共振。但是,小世界网络固有的远程耦合可以在很小一部分远程耦合中有效地破坏媒体的内部空间尺度。通过引入小世界连接可以极大地增强以点火速率函数的自相关为特征的时间顺序。存在最佳比例的随机重新链接的链路,其中可以优化时间顺序和同步。

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