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On stability and equilibria of the M-lattice

机译:关于M格的稳定性和平衡性

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摘要

Both the analog Hopfield network and the cellular neural network are special cases of the M-lattice system, recently introduced to the signal processing community. We prove that a subclass of the M-lattice is totally stable, This result also applies to the original cellular neural network as a rigorous proof of its total stability. By analyzing the stability of fixed points, we derive the conditions for driving the equilibrium outputs of another subclass of the M-lattice to binary values. For the cellular neural network, this analysis is a precise formulation of an earlier argument based on circuit diagrams. And for certain special cases of the analog Hopfield network, this analysis explains why the output variables converge to binary values even with nonzero neuron auto-connections. This behavior, observed in computer simulation by researchers for quite some time, is explained for the first time here
机译:模拟Hopfield网络和细胞神经网络都是M-lattice系统的特例,最近已引入信号处理社区。我们证明了M格的一个子类是完全稳定的。该结果也适用于原始的细胞神经网络,作为其总稳定性的严格证明。通过分析不动点的稳定性,我们得出了将M格的另一个子类的平衡输出驱动为二进制值的条件。对于细胞神经网络,此分析是基于电路图的较早论点的精确表述。对于模拟Hopfield网络的某些特殊情况,此分析解释了为什么即使在非零神经元自动连接的情况下,输出变量也会收敛为二进制值。研究人员在计算机仿真中观察到这种行为已有相当长的时间,此处首次对此进行了解释。

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