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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Emergent central pattern generator behavior in chemical coupled two-compartment models with time delay
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Emergent central pattern generator behavior in chemical coupled two-compartment models with time delay

机译:化学耦合两室模型中的紧急中心模式发生器行为,时间延迟

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This paper proposes that modified two-compartment Pinsky-Rinzel (PR) neural model can be used to develop the simple form of central pattern generator (CPG). The CPG is called as 'half-central oscillator', which constructed by two inhibitory chemical coupled PR neurons with time delay. Some key properties of PR neural model related to CPG are studied and proved to meet the requirements of CPG. Using the simple CPG network, we first study the relationship between rhythmical output and key factors, including ambient noise, sensory feedback signals, morphological character of single neuron as well as the coupling delay time. We demonstrate that, appropriate intensity noise can enhance synchronization between two coupled neurons. Different output rhythm of CPG network can be entrained by sensory feedback signals. We also show that the morphology of single neuron has strong effect on the output rhythm. The phase synchronization indexes decrease with the increase of morphology parameter's difference. Through adjusting coupled delay time, we can get absolutely phase synchronization and antiphase state of CPG. Those results of simulation show the feasibility of PR neural model as a valid CPG as well as the emergent behaviors of the particularly CPG. (C) 2017 Elsevier B.V. All rights reserved.
机译:本文提出了改进的两室PINSKY-RINZEL(PR)神经模型可用于开发中央图案发生器(CPG)的简单形式。 CPG称为“半导体振荡器”,其由两个抑制性化学偶联的PR神经元构成,随着时间延迟。研究了与CPG相关的PR神经模型的一些关键特性,并证明了满足CPG的要求。使用简单的CPG网络,我们首先研究节奏输出和关键因素之间的关系,包括环境噪声,感觉反馈信号,单个神经元的形态特征以及耦合延迟时间。我们证明,适当的强度噪声可以增强两个耦合神经元之间的同步。 CPG网络的不同输出节律可以通过感官反馈信号夹带。我们还表明,单一神经元的形态对输出节律产生强烈影响。相位同步指数随着形态参数的差异的增加而降低。通过调整耦合延迟时间,我们可以获得绝对相位同步和CPG的反相状态。这些模拟结果表明了PR神经模型作为有效CPG的可行性以及特别是CPG的紧急行为。 (c)2017年Elsevier B.V.保留所有权利。

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