Neural Computing and Applications

, Volume 29, Issue 9, pp 477–495 | Cite as

Oscillation of impulsive neutral delay generalized high-order Hopfield neural networks

Original Article

Abstract

In this paper, the existence and the exponential stability of piecewise differentiable pseudo-almost periodic solutions for a class of impulsive neutral high-order Hopfield neural networks with mixed time-varying delays and leakage delays are established by employing the fixed point theorem, Lyapunov functional method and differential inequality. Numerical example with graphical illustration is given to illuminate our main results.

Keywords

Neutral High-order Hopfield neural networks Impulse Piecewise differentiable pseudo-almost periodic function Mixed time-varying delays Leakage delays 

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Copyright information

© The Natural Computing Applications Forum 2016

Authors and Affiliations

  1. 1.Department of Mathematics, Faculty of Sciences of BizertaUniversity of CarthageBizerta, ZarzounaTunisia

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