The problem of global exponential stabilization of discrete-time delayed neural networks (DDNNs) via impulsive control is addressed in this paper. A novel time-varying Lyapunov functional is proposed to capture the dynamical characteristic of discrete-time impulsive delayed neural networks (DIDNNs). In conjunction with the convex combination technique, new conditions in the form of linear matrix inequalities are established for global exponential stability of DIDNNs. The distinct features of the new stability conditions for DIDNNs are that they are dependent upon the lengths of impulsive intervals but independent of the size of time delay. This paves the way for designing the impulsive controller for impulsive stabilization of DDNNs. The ap...
AbstractIn this article, a generalized model of neural networks involving time-varying delays and im...
The problem on global exponential stability of antiperiodic solution is investigated for a class of ...
AbstractIn this paper, the dynamic behaviors of a class of stochastic neural networks with time-vary...
This paper investigates the problems of impulsive stabilization and impulsive synchronization of dis...
Abstract. This paper investigates the problem of global exponential stability for a class of impulsi...
This paper focuses on the problem of global exponential stability analysis of impulsive neural netwo...
Abstract This paper examines the problem of the locally exponentially stability for impulsive discre...
The impulsive control method is developed to stabilize a class of neural networks with both time-var...
The main purpose of this paper is to further investigate the stability problem of impulsive neural n...
This paper considers the global exponential stability of delay neural networks with impulsive pertur...
The problem of global exponential stability analysis of impulsive neural networks with variable dela...
This paper focuses on the problem of exponential stability analysis of delayed cellular neural netwo...
This paper investigates the global exponential stability of uncertain delayed complex-valued neural ...
This paper studies the problem of global exponential stability and exponential convergence rate for ...
The problem of impulsive stabilization of delayed cellular neural networks (DCNNs) via partial state...
AbstractIn this article, a generalized model of neural networks involving time-varying delays and im...
The problem on global exponential stability of antiperiodic solution is investigated for a class of ...
AbstractIn this paper, the dynamic behaviors of a class of stochastic neural networks with time-vary...
This paper investigates the problems of impulsive stabilization and impulsive synchronization of dis...
Abstract. This paper investigates the problem of global exponential stability for a class of impulsi...
This paper focuses on the problem of global exponential stability analysis of impulsive neural netwo...
Abstract This paper examines the problem of the locally exponentially stability for impulsive discre...
The impulsive control method is developed to stabilize a class of neural networks with both time-var...
The main purpose of this paper is to further investigate the stability problem of impulsive neural n...
This paper considers the global exponential stability of delay neural networks with impulsive pertur...
The problem of global exponential stability analysis of impulsive neural networks with variable dela...
This paper focuses on the problem of exponential stability analysis of delayed cellular neural netwo...
This paper investigates the global exponential stability of uncertain delayed complex-valued neural ...
This paper studies the problem of global exponential stability and exponential convergence rate for ...
The problem of impulsive stabilization of delayed cellular neural networks (DCNNs) via partial state...
AbstractIn this article, a generalized model of neural networks involving time-varying delays and im...
The problem on global exponential stability of antiperiodic solution is investigated for a class of ...
AbstractIn this paper, the dynamic behaviors of a class of stochastic neural networks with time-vary...