AbstractIn this paper, the global exponential stability and asymptotic stability of retarded functional differential equations with multiple time-varying delays are studied by employing several Lyapunov functionals. A number of sufficient conditions for these types of stability are presented. Our results show that these conditions are milder and more general than previously known criteria, and can be applied to neural networks with a broad range of activation functions assuming neither differentiability nor strict monotonicity. Furthermore, the results obtained for neural networks with time-varying delays do not assume symmetry of the connection matrix
In this paper, utilizing the Lyapunov functional method and combining linear matrix inequality (LMI)...
This paper studies the problem of globally asymptotic stability analysis for neural networks wit...
For a general n-dimensional nonautonomous and nonlinear differential equation with infinite delay, ...
AbstractIn this paper, the global exponential stability and asymptotic stability of retarded functio...
Abstract—In this paper, several sufficient conditions are established for the global asymptotic stab...
AbstractIn this paper, the conditions ensuring existence, uniqueness, and global exponential stabili...
This paper presents sufficient conditions for global asymptotic/exponential stability of neural netw...
AbstractWe study a system of retarded functional differential equations which generalise both the Ho...
This paper presents sufficient conditions for global asymptotic/exponential stability of neural netw...
This paper presents sufficient conditions for global asymptotic/exponential stability of neural netw...
This paper concerns the problem of the globally exponential stability of neural networks with discre...
This paper presents sufficient conditions for global asymptotic/exponential stability of neural netw...
The stability analysis of neural networks is important in the applications and has been studied by m...
For a family of non-autonomous differential equations with distributed delays, we give sufficient co...
The classical analysis of asymptotical and exponential stability of neural networks needs assumption...
In this paper, utilizing the Lyapunov functional method and combining linear matrix inequality (LMI)...
This paper studies the problem of globally asymptotic stability analysis for neural networks wit...
For a general n-dimensional nonautonomous and nonlinear differential equation with infinite delay, ...
AbstractIn this paper, the global exponential stability and asymptotic stability of retarded functio...
Abstract—In this paper, several sufficient conditions are established for the global asymptotic stab...
AbstractIn this paper, the conditions ensuring existence, uniqueness, and global exponential stabili...
This paper presents sufficient conditions for global asymptotic/exponential stability of neural netw...
AbstractWe study a system of retarded functional differential equations which generalise both the Ho...
This paper presents sufficient conditions for global asymptotic/exponential stability of neural netw...
This paper presents sufficient conditions for global asymptotic/exponential stability of neural netw...
This paper concerns the problem of the globally exponential stability of neural networks with discre...
This paper presents sufficient conditions for global asymptotic/exponential stability of neural netw...
The stability analysis of neural networks is important in the applications and has been studied by m...
For a family of non-autonomous differential equations with distributed delays, we give sufficient co...
The classical analysis of asymptotical and exponential stability of neural networks needs assumption...
In this paper, utilizing the Lyapunov functional method and combining linear matrix inequality (LMI)...
This paper studies the problem of globally asymptotic stability analysis for neural networks wit...
For a general n-dimensional nonautonomous and nonlinear differential equation with infinite delay, ...