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A modified Lyapunov functional with application to stability of neutral-type neural networks with time delays

机译:改进的Lyapunov函数在时滞中立型神经网络稳定性中的应用

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摘要

This paper investigates the problem for stability of neutral-type dynamical neural networks involving delay parameters. Different form the previously reported results, the states of the neurons involve multiple delays and time derivative of states of neurons include discrete time delays. The stability of such neural systems has not been given much attention in the past literature due to the difficulty of finding Lyapunov functionals which are suitable for stability analysis of this type of neural networks. This paper constructs a generalized Lyapunov functional by introducing new terms into the well-known Lyapunov functional that enables us to conduct a theoretical investigation into stability analysis of delayed neutral-type neural systems. Based on this modified novel Lyapunov functional, sufficient criteria are derived, which guarantee the existence, uniqueness and global asymptotic stability of the equilibrium point of the neutral-type neural networks with multiple delays in the states and discrete delays in the time derivative of the states. The applicability of the proposed stability conditions rely on testing two basic matrix properties. The constraints impose on the system matrices are determined by using nonsingular M-matrix condition, and the constraints imposed on the coefficients of the time derivative of the delayed state variables are derived by exploiting the vector-matrix norms. We also note that the obtained stability conditions have no involvement with the delay parameters and expressed in terms of nonlinear Lipschitz activation functions. We present a constructive numerical example for this class of neural networks to give a systematic procedure for determining the imposed conditions on the whole system parameters of the delayed neutral-type neural systems. (C) 2018 The Franklin Institute. Published by Elsevier Ltd. All rights reserved.
机译:本文研究了涉及时滞参数的中立型动力神经网络的稳定性问题。与先前报道的结果不同,神经元的状态包括多个延迟,神经元的状态的时间导数包括离散的时间延迟。由于难以找到适合这种神经网络稳定性分析的Lyapunov函数,在过去的文献中并未对此类神经系统的稳定性给予太多关注。本文通过将新术语引入到著名的Lyapunov函数中来构造广义Lyapunov函数,这使我们能够对延迟中立型神​​经系统的稳定性进行理论研究。基于这种改进的新颖Lyapunov泛函,导出了足够的准则,从而保证了状态为多个时延且状态的时间导数为离散时滞的中立型神经网络的平衡点的存在,唯一性和全局渐近稳定性。 。所提出的稳定性条件的适用性取决于测试两个基本的矩阵特性。通过使用非奇异M矩阵条件来确定施加在系统矩阵上的约束,并通过利用矢量矩阵范数来得出对延迟状态变量的时间导数的系数施加的约束。我们还注意到,所获得的稳定性条件不涉及延迟参数,并以非线性Lipschitz激活函数表示。我们为此类神经网络提供了一个建设性的数值示例,为确定延迟中立型神​​经系统的整个系统参数所施加的条件提供了系统的程序。 (C)2018富兰克林研究所。由Elsevier Ltd.出版。保留所有权利。

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  • 来源
    《Journal of the Franklin Institute》 |2019年第1期|276-291|共16页
  • 作者

    Arik Sabri;

  • 作者单位

    Istanbul Univ Cerrahpasa, Fac Engn, Dept Comp Engn, TR-34320 Istanbul, Turkey;

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  • 正文语种 eng
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