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Existence and Global Logarithmic Stability of Impulsive Neural Networks with Time Delay

Published 15 years agoVersion 1arXiv:1002.1164

Authors

A. K. Ojha, Dushmanta Mallick, C. Mallick

Categories

cs.NE

Abstract

The stability and convergence of the neural networks are the fundamental characteristics in the Hopfield type networks. Since time delay is ubiquitous in most physical and biological systems, more attention is being made for the delayed neural networks. The inclusion of time delay into a neural model is natural due to the finite transmission time of the interactions. The stability analysis of the neural networks depends on the Lyapunov function and hence it must be constructed for the given system. In this paper we have made an attempt to establish the logarithmic stability of the impulsive delayed neural networks by constructing suitable Lyapunov function.

Existence and Global Logarithmic Stability of Impulsive Neural Networks with Time Delay

15 years ago
v1
3 authors

Categories

cs.NE

Abstract

The stability and convergence of the neural networks are the fundamental characteristics in the Hopfield type networks. Since time delay is ubiquitous in most physical and biological systems, more attention is being made for the delayed neural networks. The inclusion of time delay into a neural model is natural due to the finite transmission time of the interactions. The stability analysis of the neural networks depends on the Lyapunov function and hence it must be constructed for the given system. In this paper we have made an attempt to establish the logarithmic stability of the impulsive delayed neural networks by constructing suitable Lyapunov function.

Authors

A. K. Ojha, Dushmanta Mallick, C. Mallick

arXiv ID: 1002.1164
Published Feb 5, 2010

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