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Convergence and Chaos of a Class of Discrete-Time Background Neural Networks with Uniform Firing Rate

机译:一类具有均一发射率的离散背景神经网络的收敛性和混沌性

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The dynamical properties of a class of discrete-time background network with uniform firing rate are investigated. The conditions for stability are derived. To guaranteed the boundness of all trajectories of the discrete-time background network, several invariant sets are obtained. It's then proved that any trajectories of the network starting from each of the invariant sets will converge. In addition to the stability and convergence analysis, bifurcation and chaos are also discussed. It's shown that the network can engender bifurcation and chaos with the increase of background input. The Lyapunov exponents are finally computed to confirm the existence of chaos. Since the background networks originate from the study of the activities of brain and chaotic activities are ubiquitous in the human brain, the chaos analysis of the background networks is significant.
机译:研究了一类具有均匀点火速率的离散时间背景网络的动力学性质。得出稳定性的条件。为了保证离散时间背景网络的所有轨迹的有界性,获得了几个不变集。然后证明了从每个不变集开始的网络的任何轨迹都会收敛。除了稳定性和收敛性分析之外,还讨论了分叉和混乱。结果表明,随着背景输入的增加,网络会产生分叉和混乱。最后计算李雅普诺夫指数以确认混沌的存在。由于背景网络源自对大脑活动的研究,并且混沌活动在人脑中无处不在,因此对背景网络的混沌分析非常重要。

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