Mutual Stabilization in Chaotic Hindmarsh–Rose Neurons

J. Parker, K. Short
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Abstract

Recent work has highlighted the vast array of dynamics possible within both neuronal networks and individual neural models. In this work, we demonstrate the capability of interacting chaotic Hindmarsh–Rose neurons to communicate and transition into periodic dynamics through specific interactions which we call mutual stabilization, despite individual units existing in chaotic parameter regimes. Mutual stabilization has been seen before in other chaotic systems but has yet to be reported in interacting neural models. The process of chaotic stabilization is similar to related previous work, where a control scheme which provides small perturbations on carefully chosen Poincaré surfaces that act as control planes stabilized a chaotic trajectory onto a cupolet. For mutual stabilization to occur, the symbolic dynamics of a cupolet are passed through an interaction function such that the output acts as a control on a second chaotic system. If chosen correctly, the second system stabilizes onto another cupolet. This process can send feedback to the first system, replacing the original control, so that in some cases the two systems are locked into persistent periodic behavior as long as the interaction continues. Here, we demonstrate how this process works in a two-cell network and then extend the results to four cells with potential generalizations to larger networks. We conclude that stabilization of different states may be linked to a type of information storage or memory.
混沌Hindmarsh-Rose神经元的相互稳定
最近的工作强调了神经网络和单个神经模型中可能存在的大量动态。在这项工作中,我们证明了相互作用的混沌Hindmarsh-Rose神经元通过我们称之为相互稳定的特定相互作用进行通信和过渡到周期性动态的能力,尽管单个单元存在于混沌参数体系中。相互稳定在其他混沌系统中已经被发现,但在相互作用的神经模型中还没有报道。混沌稳定的过程类似于先前的相关工作,其中一种控制方案在精心选择的庞卡罗曲面上提供小扰动,作为控制平面,稳定了一个混沌轨迹到一个杯状体上。为了实现相互稳定,偶极体的符号动力学通过一个交互函数传递,使输出作为对第二个混沌系统的控制。如果选择正确,第二个系统稳定在另一个杯子上。这个过程可以向第一个系统发送反馈,取代原来的控制,因此在某些情况下,只要交互继续,两个系统就会被锁定为持久的周期性行为。在这里,我们演示了这个过程是如何在两个单元网络中工作的,然后将结果扩展到四个单元,并有可能推广到更大的网络。我们得出结论,不同状态的稳定可能与某种类型的信息存储或记忆有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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