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Mean square asymptotic behavior of stochastic neural networks with infinitely distributed delays

机译:具有无限分布时滞的随机神经网络的均方渐近行为

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摘要

In this paper, according to classic H-matrix method, integral-differential inequality technique and Ito formula, we study asymptotic behavior in mean square sense of stochastic neural networks with infinitely distributed delays by establishing a generalized Halanay inequality. This is a new means for investigating asymptotic behavior of stochastic differential equation. Some useful results are derived. Especially, our methods can be extended to research p-moment asymptotic behavior easily. At last, example and simulations demonstrate the power of our methods.
机译:本文根据经典H矩阵方法,积分微分不等式技术和Ito公式,通过建立广义的Halanay不等式,研究了具有无限分布延迟的随机神经网络的均方意义上的渐近行为。这是研究随机微分方程渐近行为的一种新手段。得出一些有用的结果。特别是,我们的方法可以扩展为轻松研究p矩渐近行为。最后,实例和仿真证明了我们方法的强大功能。

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