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Complex dynamics of 4D Hopfield-type neural network with two parameters

机译:具有两个参数的4D Hopfield型神经网络的复杂动态

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In this paper, a novel four-dimensional (4D) autonomous continuous time Hopfield-type neural network with two parameters is investigated. Computer simulations show that the 4D Hopfield neural network has rich and funny dynamics, and it can display equilibrium, periodic attractor, chaotic attractor and quasi-periodic attractor for different parameters. Moreover, when the system is chaotic, its positive Lyapunov exponent is much larger than those of the chaotic Hopfield neural networks already reported. The complex dynamical behaviors of the system are further investigated by means of Lyapunov exponents spectrum, bifurcation analysis and phase portraits.
机译:本文研究了具有两个参数的新型四维(4D)自主连续时间Hopfield型神经网络。计算机模拟表明,4D Hopfield神经网络具有丰富和有趣的动态,可以显示不同参数的平衡,周期性吸引子,混沌吸引子和准周期性吸引子。此外,当系统混乱时,它的积极Lyapunov指数远大于已经报告的混沌霍布菲尔德神经网络的展示。通过Lyapunov指数谱,分叉分析和相位肖像进一步研究了系统的复杂动态行为。

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