大规模尖峰神经网络与四元积分-发射神经元的动态关系

IF 3.1 4区 医学 Q2 Medicine
Neural Plasticity Pub Date : 2021-02-23 eCollection Date: 2021-01-01 DOI:10.1155/2021/6623926
Weijie Ye
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引用次数: 0

摘要

由于大规模尖峰神经网络维度高、复杂度大,网络动力学研究难度大。近几十年来,均场近似法一直是降低网络维度的有效方法。在本研究中,我们构建了一个具有二次积分-发射神经元的大规模尖峰神经网络,并将其简化为均值场模型来研究网络动力学。我们发现均值场模型的活动与网络活动是一致的。基于这种一致性,我们对均值场模型进行了双参数分岔分析,以了解网络动力学。分岔情况表明,网络模型有静止态、发射率相对较高的稳定态和同步态,分别对应于系统的稳定节点、稳定焦点和稳定极限循环。存在多个不同周期的稳定极限周期,因此我们可以观察到不同周期的同步状态。此外,该模型在分岔图的某些区域显示出双稳态,这表明网络中同时存在两种不同的活动。分岔曲线也表明了这些状态的切换机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Dynamics of a Large-Scale Spiking Neural Network with Quadratic Integrate-and-Fire Neurons.

Dynamics of a Large-Scale Spiking Neural Network with Quadratic Integrate-and-Fire Neurons.

Dynamics of a Large-Scale Spiking Neural Network with Quadratic Integrate-and-Fire Neurons.

Dynamics of a Large-Scale Spiking Neural Network with Quadratic Integrate-and-Fire Neurons.

Since the high dimension and complexity of the large-scale spiking neural network, it is difficult to research the network dynamics. In recent decades, the mean-field approximation has been a useful method to reduce the dimension of the network. In this study, we construct a large-scale spiking neural network with quadratic integrate-and-fire neurons and reduce it to a mean-field model to research the network dynamics. We find that the activity of the mean-field model is consistent with the network activity. Based on this agreement, a two-parameter bifurcation analysis is performed on the mean-field model to understand the network dynamics. The bifurcation scenario indicates that the network model has the quiescence state, the steady state with a relatively high firing rate, and the synchronization state which correspond to the stable node, stable focus, and stable limit cycle of the system, respectively. There exist several stable limit cycles with different periods, so we can observe the synchronization states with different periods. Additionally, the model shows bistability in some regions of the bifurcation diagram which suggests that two different activities coexist in the network. The mechanisms that how these states switch are also indicated by the bifurcation curves.

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来源期刊
Neural Plasticity
Neural Plasticity Neuroscience-Neurology
CiteScore
5.70
自引率
0.00%
发文量
0
审稿时长
1 months
期刊介绍: Neural Plasticity is an international, interdisciplinary journal dedicated to the publication of articles related to all aspects of neural plasticity, with special emphasis on its functional significance as reflected in behavior and in psychopathology. Neural Plasticity publishes research and review articles from the entire range of relevant disciplines, including basic neuroscience, behavioral neuroscience, cognitive neuroscience, biological psychology, and biological psychiatry.
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