This brief deals with the problem of global asymptotic stability for a class of delayed neural networks. Some new Lyapunov-Krasovskii functionals are constructed by nonuniformly dividing the delay interval into multiple segments, and choosing proper functionals with different weighting matrices corresponding to different segments in the Lyapunov-Krasovskii functionals. Then using these new Lyapunov-Krasovskii functionals, some new delay-dependent criteria for global asymptotic stability are derived for delayed neural networks, where both constant time delays and time-varying delays are treated. These criteria are much less conservative than some existing results, which is shown through a numerical example
In this paper, by using Lyapunov stability theorems, we present a new sufficient condition for the e...
This paper is concerned with global asymptotic stability for a class of generalized neural networks ...
The classical analysis of asymptotical and exponential stability of neural networks needs assumption...
This paper investigates the problem of global asymptotic stability for a class of neural networks wi...
This paper deals with the problem of stability analysis for a class of delayed neural networks descr...
This paper studies the problem of globally asymptotic stability analysis for neural networks wit...
This paper presents a new sufficient condition for the uniqueness and global asymptotic stability of...
Utilizing the Lyapunov functional method and combining linear matrix inequality (LMI) techniques and...
This brief is concerned with asymptotic stability of neural networks with uncertain delays. Two type...
In this paper, the asymptotic stability problem of neural networks with time-varying delays is inves...
We study the dynamical behavior of a class of neural network models with time-varying delays. By con...
This paper discusses stability of neural networks (NNs) with time-varying delay. Delay-fractioning L...
This brief is concerned with the stability analysis for cellular neural networks with time-varying d...
In this paper, we study the global stability problem for neutral neural networks with time delays. F...
This paper studies the problem of asymptotically stability for neural networks with time-varying del...
In this paper, by using Lyapunov stability theorems, we present a new sufficient condition for the e...
This paper is concerned with global asymptotic stability for a class of generalized neural networks ...
The classical analysis of asymptotical and exponential stability of neural networks needs assumption...
This paper investigates the problem of global asymptotic stability for a class of neural networks wi...
This paper deals with the problem of stability analysis for a class of delayed neural networks descr...
This paper studies the problem of globally asymptotic stability analysis for neural networks wit...
This paper presents a new sufficient condition for the uniqueness and global asymptotic stability of...
Utilizing the Lyapunov functional method and combining linear matrix inequality (LMI) techniques and...
This brief is concerned with asymptotic stability of neural networks with uncertain delays. Two type...
In this paper, the asymptotic stability problem of neural networks with time-varying delays is inves...
We study the dynamical behavior of a class of neural network models with time-varying delays. By con...
This paper discusses stability of neural networks (NNs) with time-varying delay. Delay-fractioning L...
This brief is concerned with the stability analysis for cellular neural networks with time-varying d...
In this paper, we study the global stability problem for neutral neural networks with time delays. F...
This paper studies the problem of asymptotically stability for neural networks with time-varying del...
In this paper, by using Lyapunov stability theorems, we present a new sufficient condition for the e...
This paper is concerned with global asymptotic stability for a class of generalized neural networks ...
The classical analysis of asymptotical and exponential stability of neural networks needs assumption...