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Asymptotical stability in discrete-time neural networks

机译:离散时间神经网络的渐近稳定性

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In this work, we present a proof of the existence of a fixed point and a generalized sufficient condition that guarantees the stability of it in discrete-time neural networks by using the Lyapunov function method. We also show that for both symmetric and asymmetric connections, the unique attractor is a fixed point when several conditions are satisfied. This is an extended result of Chen and Aihara (see Physica D, vol. 104, no. 3/4, p. 286-325, 1997). In particular, we further study the stability of equilibrium in discrete-time neural networks with the connection weight matrix in form of an interval matrix. Finally, several examples are shown to illustrate and reinforce our theory.
机译:在这项工作中,我们提出了一个不动点的证明和一个广义的充分条件,通过使用Lyapunov函数方法,可以保证它在离散时间神经网络中的稳定性。我们还表明,对于对称连接和非对称连接,当满足多个条件时,唯一吸引子是一个固定点。这是Chen和Aihara的扩展结果(请参阅Physica D,第104卷,第3/4页,第286-325页,1997年)。特别是,我们进一步研究了具有连接权重矩阵为间隔矩阵的离散时间神经网络中平衡的稳定性。最后,通过几个例子来说明和加强我们的理论。

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