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Stability analysis of discrete-time BAM neural networks based on standard neural network models

机译:基于标准神经网络模型的离散BAM神经网络的稳定性分析

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摘要

To facilitate stability analysis of discrete-time bidirectional associative memory (BAM) neural networks, they were converted into novel neural network models, termed standard neural network models (SNNMs), which interconnect linear dynamic systems and bounded static nonlinear operators. By combining a number of different Lyapunov functionals with S-procedure, some useful criteria of global asymptotic stability and global exponential stability of the equilibrium points of SNNMs were derived. These stability conditions were formulated as linear matrix inequalities (LMIs). So global stability of the discrete-time BAM neural networks could be analyzed by using the stability results of the SNNMs. Compared to the existing stability analysis methods, the proposed approach is easy to implement, less conservative, and is applicable to other recurrent neural networks.
机译:为了促进离散时间双向联想记忆(BAM)神经网络的稳定性分析,将它们转换为新颖的神经网络模型,称为标准神经网络模型(SNNM),该模型将线性动态系统和有界静态非线性算子互连在一起。通过将许多不同的Lyapunov泛函与S程序相结合,得出了SNNMs平衡点的全局渐近稳定性和全局指数稳定性的一些有用准则。这些稳定性条件公式化为线性矩阵不等式(LMI)。因此,可以利用SNNM的稳定性结果来分析离散时间BAM神经网络的全局稳定性。与现有的稳定性分析方法相比,该方法易于实现,不那么保守,并且适用于其他递归神经网络。

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