In this paper, we continue to explore application of nonsmooth analysis to the study of global asymptotic robust stability (GARS) of delayed neural networks. In combination with Lyapunov theory, our approach gives several new types of sufficient conditions ensuring GARS. A significant common aspect of our results is their low computational complexity. It is demonstrated that the reported results can be verified either by conducting spectral decompositions of symmetric matrices associated with the uncertainty sets of network parameters, or by solving a semidefinite programming problem. Nontrivial examples are constructed to compare with some closely related existing result
This paper presents a novel sufficient condition for the existence, uniqueness and global robust asy...
Global robust convergence properties of continuous-time neural networks with discrete delays are stu...
In this paper, global robust stability for delayed neural networks is studied. First the free-weight...
In this paper, by using Lyapunov stability theorems, we present a new sufficient condition for the e...
Following our recent approach of nonsmooth analysis, we report a new set of sufficient conditions an...
This paper studies the problem of establishing robust asymptotic stability of neural networks with m...
In this paper, we obtain new sufficient conditions ensuring existence, uniqueness, and global asympt...
In this paper, we obtain new sufficient conditions ensuring existence, uniqueness, and global asympt...
In this paper, we study the global asymptotic robust stability of delayed neural networks with norm-...
The problem of global robust stability of neural networks with time delays and uncertainties is inve...
This paper studies the problem of robust stability of dynamical neural networks with discrete time d...
In this paper, we investigate the robust stability problem for the class of delayed neural networks ...
This paper deals with the global asymptotic robust stability (GARS) of neural networks (NNs) with co...
We investigate the problem of global robust stability for delayed neural networks in this paper. We ...
This paper is concerned with the global asymptotic stability problem of dynamical neural networks wi...
This paper presents a novel sufficient condition for the existence, uniqueness and global robust asy...
Global robust convergence properties of continuous-time neural networks with discrete delays are stu...
In this paper, global robust stability for delayed neural networks is studied. First the free-weight...
In this paper, by using Lyapunov stability theorems, we present a new sufficient condition for the e...
Following our recent approach of nonsmooth analysis, we report a new set of sufficient conditions an...
This paper studies the problem of establishing robust asymptotic stability of neural networks with m...
In this paper, we obtain new sufficient conditions ensuring existence, uniqueness, and global asympt...
In this paper, we obtain new sufficient conditions ensuring existence, uniqueness, and global asympt...
In this paper, we study the global asymptotic robust stability of delayed neural networks with norm-...
The problem of global robust stability of neural networks with time delays and uncertainties is inve...
This paper studies the problem of robust stability of dynamical neural networks with discrete time d...
In this paper, we investigate the robust stability problem for the class of delayed neural networks ...
This paper deals with the global asymptotic robust stability (GARS) of neural networks (NNs) with co...
We investigate the problem of global robust stability for delayed neural networks in this paper. We ...
This paper is concerned with the global asymptotic stability problem of dynamical neural networks wi...
This paper presents a novel sufficient condition for the existence, uniqueness and global robust asy...
Global robust convergence properties of continuous-time neural networks with discrete delays are stu...
In this paper, global robust stability for delayed neural networks is studied. First the free-weight...