AbstractBy using the continuation theorem of coincidence degree theory and constructing suitable Lyapunov functions, the global exponential stability and periodicity are investigated for a class of delayed high-order Hopfield neural networks (HHNNs) with impulses, which are new and complement previously known results. Finally, an example with numerical simulation is given to show the effectiveness of the proposed method and results. The numerical simulation shows that our models can occur in many forms of complexities including periodic oscillation and the Gui chaotic strange attractor
By using coincidence degree theory and Lyapunov functions, we study the existence and global expone...
AbstractSufficient conditions are obtained for the existence and global attractivity of periodic sol...
We study the stability of a delayed Hopfield neural network with periodic coefficients and inputs an...
By using coincidence degree theory as well as a priori estimates and Lyapunov functional, we study t...
AbstractWe investigate stationary oscillation for high-order Hopfield neural networks with time dela...
By using coincidence degree theory as well as a priori estimates and Lyapunov functional, we study t...
In this paper, we consider higher-order Hopfield neural networks (HHNNs) with time-varying delays....
AbstractIn this paper high-order Hopfield neural networks (HHNNs) with time-varying delays are consi...
By M-matrix theory, inequality techniques, and Lyapunov functional method, certain sufficient condit...
AbstractIn this paper, we investigate the global exponential stability of impulsive high-order Hopfi...
The problem of global exponential stability analysis of Impulsive high-order Hopfield-type neural ne...
In this paper we investigate a class of artificial neural networks with delays subject to periodic i...
A class of Clifford-valued high-order Hopfield neural networks (HHNNs) with state-dependent and leak...
AbstractIn this paper, by means of constructing the extended impulsive delayed Halanay inequality an...
In this paper the globally exponential stability criteria of delayed Hopfield neural networks with v...
By using coincidence degree theory and Lyapunov functions, we study the existence and global expone...
AbstractSufficient conditions are obtained for the existence and global attractivity of periodic sol...
We study the stability of a delayed Hopfield neural network with periodic coefficients and inputs an...
By using coincidence degree theory as well as a priori estimates and Lyapunov functional, we study t...
AbstractWe investigate stationary oscillation for high-order Hopfield neural networks with time dela...
By using coincidence degree theory as well as a priori estimates and Lyapunov functional, we study t...
In this paper, we consider higher-order Hopfield neural networks (HHNNs) with time-varying delays....
AbstractIn this paper high-order Hopfield neural networks (HHNNs) with time-varying delays are consi...
By M-matrix theory, inequality techniques, and Lyapunov functional method, certain sufficient condit...
AbstractIn this paper, we investigate the global exponential stability of impulsive high-order Hopfi...
The problem of global exponential stability analysis of Impulsive high-order Hopfield-type neural ne...
In this paper we investigate a class of artificial neural networks with delays subject to periodic i...
A class of Clifford-valued high-order Hopfield neural networks (HHNNs) with state-dependent and leak...
AbstractIn this paper, by means of constructing the extended impulsive delayed Halanay inequality an...
In this paper the globally exponential stability criteria of delayed Hopfield neural networks with v...
By using coincidence degree theory and Lyapunov functions, we study the existence and global expone...
AbstractSufficient conditions are obtained for the existence and global attractivity of periodic sol...
We study the stability of a delayed Hopfield neural network with periodic coefficients and inputs an...