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Parameter space of the Rulkov chaotic neuron model

机译:Rulkov混沌神经元模型的参数空间

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The parameter space of the two dimensional Rulkov chaotic neuron model is taken into account by using the qualitative analysis, the co-dimension 2 bifurcation, the center manifold theorem, and the normal form. The goal is intended to clarify analytically different dynamics and firing regimes of a single neuron in a two dimensional parameter space. Our research demonstrates the origin that there exist very rich nonlinear dynamics and complex biological firing regimes lies in different domains and their boundary curves in the two dimensional parameter plane. We present the parameter domains of fixed points, the saddle-node bifurcation, the supercritical/subcritical Neimark-Sacker bifurcation, stability conditions of non hyperbolic fixed points and quasiperiodic solutions. Based on these parameter domains, it is easy to know that the Rulkov chaotic neuron model can produce what kinds of firing regimes as well as their transition mechanisms. These results are very useful for building-up a large-scale neuron network with different biological functional roles and cognitive activities, especially in establishing some specific neuron network models of neurological diseases.
机译:通过定性分析,二维2分叉,中心流形定理和正态形式,考虑了二维Rulkov混沌神经元模型的参数空间。该目标旨在阐明二维参数空间中单个神经元的分析上不同的动力学和激发方式。我们的研究证明了存在非常丰富的非线性动力学和复杂的生物激发机制的起源是在二维参数平面中的不同区域及其边界曲线。我们给出了不动点的参数域,鞍节点分叉,超临界/亚临界Neimark-Sacker分叉,非双曲不动点的稳定性条件和拟周期解。基于这些参数域,很容易知道Rulkov混沌神经元模型可以产生哪种触发方式及其过渡机制。这些结果对于建立具有不同生物学功能角色和认知活动的大规模神经元网络非常有用,特别是在建立某些神经疾病的特定神经元网络模型时。

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