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首页> 外文期刊>SIAM Journal on Applied Mathematics >Global attractivity in delayed Hopfield neural network models
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Global attractivity in delayed Hopfield neural network models

机译:时滞Hopfield神经网络模型的全局吸引性

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Two different approaches are employed to investigate the global attractivity of delayed Hopfield neural network models. Without assuming the monotonicity and differentiability of the activation functions, Liapunov functionals and functions (combined with the Razumikhin technique) are constructed and employed to establish sufficient conditions for global asymptotic stability independent of the delays. In the case of monotone and smooth activation functions, the theory of monotone dynamical systems is applied to obtain criteria for global attractivity of the delayed model. Such criteria depend on the magnitude of delays and show that self-inhibitory connections can contribute to the global convergence. [References: 28]
机译:采用两种不同的方法来研究延迟Hopfield神经网络模型的全局吸引性。在不假定激活函数具有单调性和微分性的情况下,构造了Liapunov函数和功能(与Razumikhin技术结合使用)并为独立于延迟的全局渐近稳定性建立了充分的条件。在单调和平滑激活函数的情况下,应用单调动力学系统的理论来获取延迟模型的整体吸引性标准。这样的标准取决于延迟的大小,并表明自我抑制联系可以促进全球趋同。 [参考:28]

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