AbstractThis paper demonstrates that there is a discrete-time analogue which does not require any restriction on the size of the time-step in order to preserve the exponential stability of an artificial neural network with distributed delays. The analysis exploits an appropriate Lyapunov sequence and a discrete-time system of Halanay inequalities, and also either a Young inequality or a geometric-arithmetic mean inequality, to derive several sufficient conditions on the network parameters for the exponential stability of the analogue. The sufficiency conditions are independent of the time-step, and they correspond to those that establish the exponential stability of the continuous-time network
For a family of non-autonomous differential equations with distributed delays, we give sufficient co...
In this paper, utilizing the Lyapunov functional method and combining linear matrix inequality (LMI)...
This paper presents some results on the global exponential stabilization for neural networks with va...
AbstractThis paper demonstrates that there is a discrete-time analogue which does not require any re...
This Letter deals with the global exponential stability of discrete-time bidirectional associative m...
This is the post print version of the article. The official published version can be obtained from t...
AbstractWe formulate discrete-time analogues of integrodifferential equations modelling bidirectiona...
This paper studies the problem of global exponential stability and exponential convergence rate for ...
This is the post print version of the article. The official published version can be obtained from t...
AbstractIn this paper, we introduce some new discrete type Halanay inequalities which extend the exi...
AbstractIn this paper, a model is considered to describe the dynamics of Cohen–Grossberg neural netw...
AbstractThis letter, investigates the problem of mean square exponential stability for a class of di...
In this paper, the global exponential stability and exponential convergence rate of neural networks ...
This paper concerns the problem of the globally exponential stability of neural networks with discre...
AbstractWe study delayed cellular neural networks (DCNNs) whose state variables are governed by nonl...
For a family of non-autonomous differential equations with distributed delays, we give sufficient co...
In this paper, utilizing the Lyapunov functional method and combining linear matrix inequality (LMI)...
This paper presents some results on the global exponential stabilization for neural networks with va...
AbstractThis paper demonstrates that there is a discrete-time analogue which does not require any re...
This Letter deals with the global exponential stability of discrete-time bidirectional associative m...
This is the post print version of the article. The official published version can be obtained from t...
AbstractWe formulate discrete-time analogues of integrodifferential equations modelling bidirectiona...
This paper studies the problem of global exponential stability and exponential convergence rate for ...
This is the post print version of the article. The official published version can be obtained from t...
AbstractIn this paper, we introduce some new discrete type Halanay inequalities which extend the exi...
AbstractIn this paper, a model is considered to describe the dynamics of Cohen–Grossberg neural netw...
AbstractThis letter, investigates the problem of mean square exponential stability for a class of di...
In this paper, the global exponential stability and exponential convergence rate of neural networks ...
This paper concerns the problem of the globally exponential stability of neural networks with discre...
AbstractWe study delayed cellular neural networks (DCNNs) whose state variables are governed by nonl...
For a family of non-autonomous differential equations with distributed delays, we give sufficient co...
In this paper, utilizing the Lyapunov functional method and combining linear matrix inequality (LMI)...
This paper presents some results on the global exponential stabilization for neural networks with va...