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复杂神经元网络中的双重随机相干性。

Doubly stochastic coherence in complex neuronal networks.

作者信息

Gao Yang, Wang Jianjun

机构信息

College of Nuclear Science and Technology, Harbin Engineering University, Harbin, China.

出版信息

Phys Rev E Stat Nonlin Soft Matter Phys. 2012 Nov;86(5 Pt 1):051914. doi: 10.1103/PhysRevE.86.051914. Epub 2012 Nov 26.

Abstract

A system composed of coupled FitzHugh-Nagumo neurons with various topological structures is investigated under the co-presence of two independently additive and multiplicative Gaussian white noises, in which particular attention is paid to the neuronal networks spiking regularity. As the additive noise intensity and the multiplicative noise intensity are simultaneously adjusted to optimal values, the temporal periodicity of the output of the system reaches the maximum, indicating the occurrence of doubly stochastic coherence. The network topology randomness exerts different influences on the temporal coherence of the spiking oscillation for dissimilar coupling strength regimes. At a small coupling strength, the spiking regularity shows nearly no difference in the regular, small-world, and completely random networks. At an intermediate coupling strength, the temporal periodicity in a small-world neuronal network can be improved slightly by adding a small fraction of long-range connections. At a large coupling strength, the dynamical behavior of the neurons completely loses the resonance property with regard to the additive noise intensity or the multiplicative noise intensity, and the spiking regularity decreases considerably with the increase of the network topology randomness. The network topology randomness plays more of a depressed role than a favorable role in improving the temporal coherence of the spiking oscillation in the neuronal network research study.

摘要

研究了一个由具有各种拓扑结构的耦合FitzHugh-Nagumo神经元组成的系统,该系统存在两个独立的加性和乘性高斯白噪声,特别关注神经元网络的放电规律性。当加性噪声强度和乘性噪声强度同时调整到最优值时,系统输出的时间周期性达到最大值,表明出现了双随机相干。网络拓扑随机性对不同耦合强度 regime下的放电振荡时间相干性有不同影响。在小耦合强度下,规则网络、小世界网络和完全随机网络中的放电规律性几乎没有差异。在中等耦合强度下,通过添加一小部分长程连接可以略微提高小世界神经元网络中的时间周期性。在大耦合强度下,神经元的动力学行为在加性噪声强度或乘性噪声强度方面完全失去共振特性,并且放电规律性随着网络拓扑随机性的增加而显著降低。在神经元网络研究中,网络拓扑随机性在改善放电振荡的时间相干性方面起到的抑制作用大于促进作用。

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