Discrete-time Cohen-Grossberg neural networks with transmission delays and impulses

A discrete-time analogue is formulated for an impulsive Cohen- -Grossberg neural network with transmission delay in a manner in which the global exponential stability characterisitics of a unique equilibrium point of the network are preserved. The formulation is based on extending the existing semid...

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Veröffentlicht in:Tatra Mountains mathematical publications 2009-12, Vol.43 (1), p.145-161
Hauptverfasser: Mohamad, Sannay, Akça, Haydar, Covachev, Valéry
Format: Artikel
Sprache:eng
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Zusammenfassung:A discrete-time analogue is formulated for an impulsive Cohen- -Grossberg neural network with transmission delay in a manner in which the global exponential stability characterisitics of a unique equilibrium point of the network are preserved. The formulation is based on extending the existing semidiscretization method that has been implemented for computer simulations of neural networks with linear stabilizing feedback terms. The exponential convergence in the p-norm of the analogue towards the unique equilibrium point is analysed by exploiting an appropriate Lyapunov sequence and properties of an M-matrix. The main result yields a Lyapunov exponent that involves the magnitude and frequency of the impulses. One can use the result for deriving the exponential stability of non-impulsive discrete-time neural networks, and also for simulating the exponential stability of impulsive and non-impulsive continuous-time networks.
ISSN:1210-3195
DOI:10.2478/v10127-009-0034-5