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A method for Lyapunov spectrum estimation using cloned dynamics and its application to the discontinuously-excited FitzHugh–Nagumo model

机译:基于克隆动力学的李雅普诺夫谱估计方法及其在不连续激励FitzHugh–Nagumo模型中的应用

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摘要

This work presents a new method to calculate the Lyapunov spectrum of dynamical systems based on the time evolution of initially small disturbed copies (“clones”) of the motion equations. In this approach, it is not necessary to construct the tangent space associated with the time evolution of linearized versions of motion equations, being the Lyapunov exponents directly estimated in terms of the rate of convergence or divergence of these disturbed clones with respect to the fiducial trajectory, there being periodic correction via the Gram–Schmidt Reorthonormalization procedure. The proposed method offers the possibility of partial estimation of the Lyapunov spectrum and can also be applied to nonsmooth dynamics, since the linearization procedure is no longer required. The idea is tested for representative continuous- and discrete-time dynamical systems and validated by means of comparison with the classical method to perform this calculation. To illustrate its applicability in the nonsmooth context, the largest Lyapunov exponent of the FitzHugh–Nagumo neuronal model under discontinuous periodic excitation is calculated taking the amplitude of stimulation as control parameter. This analysis reveals some complex behaviours for this simple neuronal model, which motivates relevant discussions about the possible role of chaos in the cognitive process.
机译:这项工作提出了一种基于运动方程的初始小干扰副本(“克隆”)的时间演化来计算动力学系统的Lyapunov谱的新方法。在这种方法中,没有必要构造与运动方程线性化版本的时间演化相关的切线空间,而是直接根据这些受干扰克隆相对于基准轨迹的收敛或发散速率来估计Lyapunov指数,可以通过Gram–Schmidt正交归一化程序进行定期校正。所提出的方法提供了对Lyapunov谱进行部分估计的可能性,并且由于不再需要线性化过程,因此还可以应用于非平滑动力学。该思想已针对具有代表性的连续时间和离散时间动力系统进行了测试,并通过与经典方法进行比较而得到验证,以进行此计算。为了说明其在非光滑环境中的适用性,以刺激幅度为控制参数,计算了不连续周期激励下FitzHugh-Nagumo神经元模型的最大Lyapunov指数。该分析揭示了此简单神经元模型的一些复杂行为,从而激发了有关混沌在认知过程中可能作用的相关讨论。

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