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Attractivity, multistability, and bifurcation in delayed Hopfield's model with non-monotonic feedback

机译:具有非单调反馈的延迟Hopfield模型中的吸引性,多重稳定性和分支

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For a system of delayed neural networks of Hopfield type, we deal with the study of global attractivity, multistability, and bifurcations. In general, we do not assume monotonicity conditions in the activation functions. For some architectures of the network and for some families of activation functions, we get optimal results on global attractivity. Our approach relies on a link between a system of functional differential equations and a finite-dimensional discrete dynamical system. For it, we introduce the notion of strong attractor for a discrete dynamical system, which is more restrictive than the usual concept of attractor when the dimension of the system is higher than one. Our principal result shows that a strong attractor of a discrete map gives a globally attractive equilibrium of a corresponding system of delay differential equations. Our abstract setting is not limited to applications in systems of neural networks; we illustrate its use in an equation with distributed delay motivated by biological models. We also obtain some results for neural systems with variable coefficients.
机译:对于Hopfield类型的延迟神经网络系统,我们处理全局吸引性,多重稳定性和分支的研究。通常,我们不假定激活函数中的单调性条件。对于网络的某些体系结构和某些激活功能系列,我们在全局吸引力上获得了最佳结果。我们的方法依赖于泛函微分方程系统和有限维离散动力系统之间的联系。为此,我们引入了离散动力系统的强吸引子的概念,当系统的尺寸大于一个时,它比通常的吸引子概念更具限制性。我们的主要结果表明,离散映射的强大吸引子给出了相应的时滞微分方程系统的全局吸引平衡。我们的抽象背景不仅限于在神经网络系统中的应用;我们通过生物学模型说明了其在具有分布式延迟的方程中的用法。我们还获得了具有可变系数的神经系统的一些结果。

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