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Oscillatory activity in the neural networks of spiking elements

机译:尖峰元素神经网络中的振荡活动

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摘要

We study the dynamics of activity in the neural networks of enhanced integrate-and-fire elements (with random noise, refractory periods, signal propagation delay, decay of postsynaptic potential, etc.). We consider the networks composed of two interactive populations of excitatory and inhibitory neurons with all-to-all or random sparse connections. It is shown by computer simulations that the regime of regular oscillations is very stable in a broad range of parameter values. In particular, oscillations are possible even in the case of very sparse and randomly distributed inhibitory connections and high background activity. We describe two scenarios of how oscillations may appear which are similar to Andronov-Hopf and saddle-node-on-limit-cycle bifurcations in dynamical systems. The role of oscillatory dynamics for information encoding and processing is discussed. (C) 2002 Elsevier Science Ireland Ltd. All rights reserved. [References: 17]
机译:我们研究了增强的集成射击元素(具有随机噪声,不应期,信号传播延迟,突触后电位衰减等)的神经网络中的动力学。我们考虑的网络由两个具有全部或全部或稀疏稀疏连接的兴奋性和抑制性神经元的交互种群组成。计算机仿真表明,规则振荡的范围在很大范围的参数值中都非常稳定。特别是,即使在非常稀疏和随机分布的抑制性连接以及高背景活性的情况下,也可能发生振荡。我们描述了两种振荡如何出现的场景,它们与动态系统中的Andronov-Hopf和极限周期鞍形节点分叉相似。讨论了振荡动力学在信息编码和处理中的作用。 (C)2002 Elsevier Science Ireland Ltd.保留所有权利。 [参考:17]

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