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Complicated Dynamic Regimes in a Neural Network of Three Oscillators with a Delayed Broadcast Connection

机译:具有延迟广播连接的三个振荡器神经网络中的复杂动态制度

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A model of neural association of three pulsed neurons with a delayed broadcast connection is considered. It is assumed that the parameters of the problem are chosen near the critical point of stability loss by the homogeneous equilibrium state of the system. Because of the broadcast connection the equation corresponding to one of the oscillators can be detached in the system. Two remaining pulsed neurons interact with each other and, in addition, there is a periodic external action, determined by the broadcast neuron. Under these conditions, the normal form of this system is constructed for the values of parameters close to the critical ones on a stable invariant integral manifold. This normal form is reduced to a four-dimensional system with two variables responsible for the oscillation amplitudes, and the other two are defined as the difference between the phase variables of these oscillators with the phase variable of the broadcast oscillator. The obtained normal form has an invariant manifold on which the amplitude and phase variables of the oscillators coincide. Dynamics of the problem is described on this manifold. An important result was obtained on the basis of numerical analysis of the normal form. It turned out that periodic and chaotic oscillatory solutions can occur when the coupling link between the oscillators is weakened. Moreover, a cascade of bifurcations associated with the same type of phase transformations was discovered, where a self-symmetric stable cycle alternately loses symmetry with the appearance of two symmetrical to each other cycles. A cascade of bifurcations of period doubling occurs with each of these cycles with the appearance of symmetric chaotic regimes. With further decreasing of the coupling parameter, these symmetric chaotic regimes are combined into a self-symmetric one, which is then rebuilt into a self-symmetric cycle of a more complex form compared to the cycle obtained at the previous step. Then the whole process is repeated. Lyapunov exponents were computed to study chaotic attractors of the system.
机译:考虑了具有延迟广播连接的三个脉冲神经元的神经关联模型。假设通过系统的均匀平衡状态选择问题的参数附近稳定性损失的临界点。由于广播连接,对应于振荡器之一的等式可以在系统中分离。剩余的脉冲神经元彼此相互作用,另外,由广播神经元确定的周期性外部作用。在这些条件下,该系统的正常形式被构造用于靠近临界不变积分歧管的参数的值。这种正常形式减少到具有两个负责振荡幅度的变量的四维系统,并且另一个两个被定义为这些振荡器的相位变量与广播振荡器的相位变量之间的差异。所获得的正常形式具有不变的歧管,其中振荡器的幅度和相位变量重合。在这种歧管上描述了问题的动态。基于正常形式的数值分析获得了重要结果。结果证明,当振荡器之间的耦合链路削弱时,可以发生周期性和混沌振荡解决方案。此外,发现了与相同类型的相变相关联的级联的分叉分叉,其中自对称稳定周期交替地失去对称性与彼此循环的两个对称的外观。随着对称混沌制度的出现,这些周期中的每一个随着对称混沌制度的出现而发生级联的级联。随着耦合参数的进一步减小,将这些对称的混沌制度组合成自我对称的混沌结果,然后与在前一步中获得的循环相比,将其重建为更复杂的形式的自我对称周期。然后重复整个过程。 Lyapunov指数被计算为研究系统的混沌吸引子。

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