爆裂
分叉
吸引子
鞍结分岔
混乱的
数学
统计物理学
分岔图
分叉理论的生物学应用
分岔理论
无限周期分岔
数学分析
物理
非线性系统
计算机科学
量子力学
人工智能
神经科学
生物
作者
S. R. Dtchetgnia Djeundam,R. Yamapi,Timoléon C. Kofané,M. A. Aziz-Alaoui
出处
期刊:Chaos
[American Institute of Physics]
日期:2013-08-15
卷期号:23 (3)
被引量:58
摘要
We analyze the bifurcations occurring in the 3D Hindmarsh-Rose neuronal model with and without random signal. When under a sufficient stimulus, the neuron activity takes place; we observe various types of bifurcations that lead to chaotic transitions. Beside the equilibrium solutions and their stability, we also investigate the deterministic bifurcation. It appears that the neuronal activity consists of chaotic transitions between two periodic phases called bursting and spiking solutions. The stochastic bifurcation, defined as a sudden change in character of a stochastic attractor when the bifurcation parameter of the system passes through a critical value, or under certain condition as the collision of a stochastic attractor with a stochastic saddle, occurs when a random Gaussian signal is added. Our study reveals two kinds of stochastic bifurcation: the phenomenological bifurcation (P-bifurcations) and the dynamical bifurcation (D-bifurcations). The asymptotical method is used to analyze phenomenological bifurcation. We find that the neuronal activity of spiking and bursting chaos remains for finite values of the noise intensity.
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