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Stability analysis of Takagi-Sugeno stochastic fuzzy Hopfield neural networks with discrete and distributed time varying delays

机译:具有离散和分布时变时滞的Takagi-Sugeno随机模糊Hopfield神经网络的稳定性分析

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摘要

In this paper, the global stability problem of Takagi-Sugeno (T-S) stochastic fuzzy Hopfield neural networks (TSSFHNNs) with discrete and distributed time varying delays is considered. A novel LMI-based stability criterion is obtained by using Lyapunov functional theory to guarantee the asymptotic stability of TSSFHNNs with discrete and distributed time varying delays. Here we choose a generalized Lyapunov functional and introduce a parameterized model transformation with free weighting matrices to it, in order to obtain stability region. In fact, these techniques lead to generalized and less conservative stability condition that guarantee the wide stability region. The proposed stability conditions are demonstrated with numerical examples. Comparison with other stability conditions in the literature shows that our conditions are the more powerful ones to guarantee the widest stability region.
机译:本文考虑具有离散和分布时变时滞的Takagi-Sugeno(T-S)随机模糊Hopfield神经网络(TSSFHNNs)的全局稳定性问题。利用李雅普诺夫泛函理论,获得了一种新的基于LMI的稳定性准则,以保证具有离散和分布时变时滞的TSSFHNN的渐近稳定性。在这里,我们选择广义的Lyapunov泛函,并引入带有自由加权矩阵的参数化模型变换,以获得稳定区域。实际上,这些技术导致了广义且不太保守的稳定性条件,从而保证了较宽的稳定性区域。数值实例证明了所提出的稳定性条件。与文献中其他稳定条件的比较表明,我们的条件是保证最宽稳定范围的更强有力的条件。

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