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Stability analysis of extended discrete-time BAM neural networks based on LMI approach

机译:基于LMI方法的扩展离散时间BAM神经网络的稳定性分析

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We propose a new approach for analyzing the global asymptotic stability of the extended discrete-time bidirectional associative memory (BAM) neural networks. By using the Euler rule, we discretize the continuous-time BAM neural networks as the extended discrete-time BAM neural networks with non-threshold activation functions. Here we present some conditions under which the neural networks have unique equilibrium points. To judge the global asymptotic stability of the equilibrium points, we introduce a new neural network model - standard neural network model (SNNM).For the SNNMs, we derive the sufficient conditions for the global asymptotic stability of the equilibrium points, which are formulated as some linear matrix inequalities (LMIs). We transform the discrete-time BAM into the SNNM and apply the general result about the SNNM to the determination of global asymptotic stability of the discrete-time BAM. The approach proposed extends the known stability results, has lower conservativeness, can be verified easily, and can also be applied to other forms of recurrent neural networks.
机译:我们提出了一种新的方法来分析扩展离散时间双向联想记忆(BAM)神经网络的全局渐近稳定性。通过使用Euler规则,我们将连续时间BAM神经网络离散化为具有非阈值激活函数的扩展离散时间BAM神经网络。在这里,我们介绍了神经网络具有唯一平衡点的一些条件。为了判断平衡点的全局渐近稳定性,我们引入了一种新的神经网络模型-标准神经网络模型(SNNM)。对于SNNM,我们导出了平衡点的全局渐近稳定性的充分条件,其公式为一些线性矩阵不等式(LMI)。我们将离散时间BAM转换为SNNM,并将有关SNNM的一般结果应用于确定离散时间BAM的全局渐近稳定性。所提出的方法扩展了已知的稳定性结果,具有较低的保守性,可以轻松地进行验证,还可以应用于其他形式的递归神经网络。

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