Ge JuHong
Department of Mathematics and Information Science, Henan University of Economics and Law, Zhengzhou, 450046 China.
Cogn Neurodyn. 2024 Apr;18(2):615-630. doi: 10.1007/s11571-023-10012-w. Epub 2023 Oct 18.
Multiple delays and connection topology are the key parameters for the realistic modeling of networks. This paper discusses the influences of time delays and connection weight on multi-delay artificial neural models with inertial couplings. Firstly, sufficient conditions of some singularities involving static bifurcation, Hopf bifurcation, and pitchfork-Hopf bifurcation are presented by analyzing the transcendental characteristic equation. Secondly, taking self-connection weight and coupling delays as adjusting parameters and utilizing the parameter perturbation with the aid of the non-reduced order technique for the first time, rich dynamics near zero-Hopf interaction are obtained on the plane with self-connected weight and coupling delay as abscissa and ordinate. The multi-delay inertial neural system can exhibit coexisting attractors such as a pair of nontrivial equilibrium points and a periodic orbit with nontrivial equilibrium points. Self-connected weight can affect the number and dynamics of the system equilibrium points, while time delays can contribute to both trivial equilibrium and non-trivial equilibrium losing their stability and generating limit cycles. Simulation plots are displayed with computer software to support the established main results. Compared with the traditional reduced-order method, the used method here is simple and valid with less computation. The key research findings of this paper have significant theoretical guiding value in dominating and optimizing networks.
多重延迟和连接拓扑是网络现实建模的关键参数。本文讨论了时间延迟和连接权重对具有惯性耦合的多延迟人工神经网络模型的影响。首先,通过分析超越特征方程,给出了涉及静态分岔、霍普夫分岔和叉形霍普夫分岔等一些奇点的充分条件。其次,以自连接权重和耦合延迟为调整参数,首次借助非降阶技术利用参数扰动,在以自连接权重和耦合延迟为横纵坐标的平面上获得了零霍普夫相互作用附近丰富的动力学。多延迟惯性神经系统可以表现出共存吸引子,如一对非平凡平衡点和一个带有非平凡平衡点的周期轨道。自连接权重可以影响系统平衡点的数量和动力学,而时间延迟既可以导致平凡平衡点也可以导致非平凡平衡点失去稳定性并产生极限环。用计算机软件展示了仿真图以支持所建立的主要结果。与传统的降阶方法相比,这里使用的方法简单有效且计算量较小。本文的关键研究结果在网络的主导和优化方面具有重要的理论指导价值。