This paper deals with the stability of static recurrent neural networks (RNNs) with a time-varying delay. An augmented Lyapunov-Krasovskii functional is employed, in which some useful terms are included. Furthermore, the relationship among the time-varying delay, its upper bound and their difference, is taken into account, and novel bounding techniques for 1 - τ(t) are employed. As a result, without ignoring any useful term in the derivative of the Lyapunov-Krasovskii functional, the resulting delay-dependent criteria show less conservative than the existing ones. Finally, a numerical example is given to demonstrate the effectiveness of the proposed methods
Abstract—This paper is concerned with the stability analysis of discrete-time recurrent neural netwo...
This paper deals with the problem of exponential stability for a class of discrete-time recurrent ne...
AbstractThe problem of delay-dependent asymptotic stability criteria for neural networks (NNs) with ...
Copyright © 2014 Lei Ding et al.This is an open access article distributed under the Creative Common...
This paper introduces an effective approach to studying the stability of recurrent neural networks w...
Together with Lyapunov-Krasovskii functional theory and reciprocal convex technique, a new sufficien...
The robust stability of uncertain discrete-time recurrent neural networks with time-varying delay is...
[[abstract]]This paper performs a global stability analysis of a particular class of recurrent neura...
By using the fact that the neuron activation functions are sector bounded and nondecreasing, this br...
Dimirovski, Georgi M. (Dogus Author)This work is concerned with the delay-dependentstability problem...
This paper studies the problem of exponential stability analysis for recurrent neural networks with ...
This paper addresses the problem of asymptotic stability for discrete-time recurrent neural networks...
Abstract—In this paper, several sufficient conditions are established for the global asymptotic stab...
This paper discusses stability of neural networks (NNs) with time-varying delay. Delay-fractioning L...
[[abstract]]A global stability analysis of a particular class of recurrent neural networks with time...
Abstract—This paper is concerned with the stability analysis of discrete-time recurrent neural netwo...
This paper deals with the problem of exponential stability for a class of discrete-time recurrent ne...
AbstractThe problem of delay-dependent asymptotic stability criteria for neural networks (NNs) with ...
Copyright © 2014 Lei Ding et al.This is an open access article distributed under the Creative Common...
This paper introduces an effective approach to studying the stability of recurrent neural networks w...
Together with Lyapunov-Krasovskii functional theory and reciprocal convex technique, a new sufficien...
The robust stability of uncertain discrete-time recurrent neural networks with time-varying delay is...
[[abstract]]This paper performs a global stability analysis of a particular class of recurrent neura...
By using the fact that the neuron activation functions are sector bounded and nondecreasing, this br...
Dimirovski, Georgi M. (Dogus Author)This work is concerned with the delay-dependentstability problem...
This paper studies the problem of exponential stability analysis for recurrent neural networks with ...
This paper addresses the problem of asymptotic stability for discrete-time recurrent neural networks...
Abstract—In this paper, several sufficient conditions are established for the global asymptotic stab...
This paper discusses stability of neural networks (NNs) with time-varying delay. Delay-fractioning L...
[[abstract]]A global stability analysis of a particular class of recurrent neural networks with time...
Abstract—This paper is concerned with the stability analysis of discrete-time recurrent neural netwo...
This paper deals with the problem of exponential stability for a class of discrete-time recurrent ne...
AbstractThe problem of delay-dependent asymptotic stability criteria for neural networks (NNs) with ...