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神经元群体中的相干共振:平均场模型与网络模型

Coherence resonance in neuronal populations: Mean-field versus network model.

作者信息

Baspinar Emre, Schülen Leonhard, Olmi Simona, Zakharova Anna

机构信息

Inria Sophia Antipolis Méditerranée Research Centre, 2004 Route des Lucioles, 06902 Valbonne, France.

Institut für Theoretische Physik, Technische Universität Berlin, Hardenbergstraße 36, 10623 Berlin, Germany.

出版信息

Phys Rev E. 2021 Mar;103(3-1):032308. doi: 10.1103/PhysRevE.103.032308.

DOI:10.1103/PhysRevE.103.032308
PMID:33862689
Abstract

The counterintuitive phenomenon of coherence resonance describes a nonmonotonic behavior of the regularity of noise-induced oscillations in the excitable regime, leading to an optimal response in terms of regularity of the excited oscillations for an intermediate noise intensity. We study this phenomenon in populations of FitzHugh-Nagumo (FHN) neurons with different coupling architectures. For networks of FHN systems in an excitable regime, coherence resonance has been previously analyzed numerically. Here we focus on an analytical approach studying the mean-field limits of the globally and locally coupled populations. The mean-field limit refers to an averaged behavior of a complex network as the number of elements goes to infinity. We apply the mean-field approach to the globally coupled FHN network. Further, we derive a mean-field limit approximating the locally coupled FHN network with low noise intensities. We study the effects of the coupling strength and noise intensity on coherence resonance for both the network and the mean-field models. We compare the results of the mean-field and network frameworks and find good agreement in the globally coupled case, where the correspondence between the two approaches is sufficiently good to capture the emergence of coherence resonance, as well as of anticoherence resonance.

摘要

相干共振这一违反直觉的现象描述了在可激发状态下噪声诱导振荡的规律性的非单调行为,即在中等噪声强度下,就激发振荡的规律性而言会产生最优响应。我们在具有不同耦合结构的 FitzHugh-Nagumo(FHN)神经元群体中研究这一现象。对于处于可激发状态的 FHN 系统网络,此前已通过数值方法分析了相干共振。在此,我们专注于一种解析方法,研究全局和局部耦合群体的平均场极限。平均场极限指的是随着元素数量趋于无穷大,复杂网络的平均行为。我们将平均场方法应用于全局耦合的 FHN 网络。此外,我们推导了一个平均场极限,用于近似低噪声强度下局部耦合的 FHN 网络。我们研究了耦合强度和噪声强度对网络模型和平均场模型的相干共振的影响。我们比较了平均场框架和网络框架的结果,发现在全局耦合情况下两者吻合良好,在这种情况下,两种方法之间的对应关系足够好,能够捕捉到相干共振以及反相干共振的出现。

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Coherence resonance in neuronal populations: Mean-field versus network model.神经元群体中的相干共振:平均场模型与网络模型
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