Chaos Study of the Lamprey Neural System via Improved Small Dataset Method

Yunlong Li, Pingjian Zhang
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Abstract

This paper is concerned with the locomotion property of the Lamprey neural system that is modeled by the winnerless competition (WLC) networks. An improved small dataset method for computing the largest Lyapunov exponent is proposed and applied to chaos detection. Application to classical non-linear systems shows that the new algorithm not only works effectively but also achieves better accuracy than the Wolf method. The new algorithm is then employed to study the chaotic properties of the Lamprey neural system. In addition, phase portrait for small perturbation on initial states of the dynamic system is also drawn to aid in chaos determination. Simulation results demonstrate that under some mild external stimulus, the Lamprey neural system exhibits chaos, when external stimulus continues increasing, the Lamprey neural system could return back to steady state.
基于改进小数据集方法的七鳃鳗神经系统混沌研究
本文研究了用无赢家竞争(WLC)网络建模的七鳃鳗神经系统的运动特性。提出了一种计算最大李雅普诺夫指数的改进小数据集方法,并将其应用于混沌检测。对经典非线性系统的应用表明,新算法不仅有效,而且比Wolf方法具有更高的精度。利用该算法研究了七鳃鳗神经系统的混沌特性。此外,还绘制了对动力系统初始状态的小扰动的相画像,以帮助确定混沌。仿真结果表明,在一定程度的外界刺激下,七鳃鳗神经系统呈现混沌状态,当外界刺激持续增加时,七鳃鳗神经系统可以恢复到稳态。
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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