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Synchronization and stochastic resonance of the small-world neural network based on the CPG

机译:基于CPG的小世界神经网络的同步与随机共振

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摘要

According to biological knowledge, the central nervous system controls the central pattern generator (CPG) to drive the locomotion. The brain is a complex system consisting of different functions and different interconnections. The topological properties of the brain display features of small-world network. The synchronization and stochastic resonance have important roles in neural information transmission and processing. In order to study the synchronization and stochastic resonance of the brain based on the CPG, we establish the model which shows the relationship between the small-world neural network (SWNN) and the CPG. We analyze the synchronization of the SWNN when the amplitude and frequency of the CPG are changed and the effects on the CPG when the SWNN’s parameters are changed. And we also study the stochastic resonance on the SWNN. The main findings include: (1) When the CPG is added into the SWNN, there exists parameters space of the CPG and the SWNN, which can make the synchronization of the SWNN optimum. (2) There exists an optimal noise level at which the resonance factor Q gets its peak value. And the correlation between the pacemaker frequency and the dynamical response of the network is resonantly dependent on the noise intensity. The results could have important implications for biological processes which are about interaction between the neural network and the CPG.
机译:根据生物学知识,中枢神经系统控制中央模式发生器(CPG)来驱动运动。大脑是一个复杂的系统,由不同的功能和不同的互连组成。大脑的拓扑特性显示了小世界网络的特征。同步和随机共振在神经信息的传输和处理中具有重要作用。为了研究基于CPG的大脑的同步和随机共振,我们建立了表示小世界神经网络(SWNN)与CPG之间关系的模型。我们分析了CNN的幅度和频率变化时SWNN的同步,以及SWNN参数更改时对CPG的影响。并且我们还研究了SWNN上的随机共振。主要研究结果包括:(1)将CPG添加到SWNN中时,存在CPG和SWNN的参数空间,可以使SWNN的同步达到最佳。 (2)存在最佳噪声电平,在该最佳噪声电平处谐振因子Q达到峰值。起搏器频率与网络动态响应之间的相关性共振地取决于噪声强度。该结果可能对有关神经网络和CPG之间相互作用的生物过程具有重要意义。

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