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首页> 外文期刊>Journal of Circuits, Systems, and Computers >Nonlinear Dynamics of Three-Neurons-Based Hopfield Neural Networks (HNNs): Remerging Feigenbaum Trees, Coexisting Bifurcations and Multiple Attractors
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Nonlinear Dynamics of Three-Neurons-Based Hopfield Neural Networks (HNNs): Remerging Feigenbaum Trees, Coexisting Bifurcations and Multiple Attractors

机译:基于三神经元的Hopfield神经网络(HNN)的非线性动力学:Feigenbaum树重新出现,分叉并存和多个吸引子

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In this work, the dynamics of a simplified model of three-neurons-based Hopfield neural networks (HNNs) is investigated. The simplified model is obtained by removing the synaptic weight connection of the third and second neuron in the original Hopfield networks introduced in Ref. 11. The investigations have shown that the simplified model possesses three equilibrium points among which origin of the systems coordinates. It is found that the origin is always unstable while the symmetric pair of fixed points with conditional stability has values depending on synaptic weight between the second and the first neuron that is used as bifurcation control parameter. Numerical simulations, carried out in terms of bifurcation diagrams, graph of Lyapunov exponents, phase portraits, Poincare section, time series and frequency spectra are employed to highlight the complex dynamical behaviors exhibited by the model. The results indicate that the modified model of HNNs exhibits rich nonlinear dynamical behaviors including symmetry breaking, chaos, periodic window, antimonotonicity (i.e., concurrent creation and annihilation of periodic orbits) and coexisting self-excited attractors (e.g., coexistence of two, four and six disconnected periodic and chaotic attractors) which have not been reported in previous works focused on the dynamics of HNNs. Finally, PSpice simulations verify the results of theoretical analyses of the simplified model of three-neurons-based HNNs.
机译:在这项工作中,研究了基于三神经元的Hopfield神经网络(HNN)简化模型的动力学。通过删除参考文献中引入的原始Hopfield网络中的第三和第二神经元的突触权重连接,可以获得简化的模型。 11.研究表明,简化模型具有三个平衡点,其中系统的原点相互协调。发现具有条件稳定性的不动点对称对具有取决于分叉控制参数的第二和第一个神经元之间的突触权重的值,原点始终是不稳定的。根据分叉图,李雅普诺夫指数图,相图,庞加莱截面,时间序列和频谱进行了数值模拟,以突出模型显示的复杂动力学行为。结果表明,改进后的神经网络模型表现出丰富的非线性动力学行为,包括对称破坏,混沌,周期窗口,反单调性(即周期轨道的同时创建和an灭)和自激吸引子共存(例如两个,四个和四个共存)。六个不连续的周期性吸引子和混沌吸引子),这些在以前的工作中没有报道过,它们集中在HNN的动力学上。最后,PSpice仿真验证了基于三神经元的HNN简化模型的理论分析结果。

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