We report on results concerning the global asymptotic stability (GAS) and absolute stability (ABST) of delay models of continuous-time neural networks. These results present sufficient conditions for GAS and in case the network has instantaneous signalling as well as delay signalling (for example, a delayed cellular neural network (DCNN)), are milder than previously known criteria; they apply to neural networks with a broad range of activation functions assuming neither differentiability nor strict monotonicity. We are therefore able to interpret the results as guarantees of absolute stability of the network with respect to the wide class of admissible activation functions. Furthermore, these results do not assume symmetry of the connection...
Recurrent neural networks have the potential of performing parallel computation for associative memo...
This paper studies the problem of robust stability of dynamical neural networks with discrete time d...
[[abstract]]The stability for cellular neural networks (CNNs) with timevarying delay is introduced b...
AbstractIn this paper, without assuming the boundedness, monotonicity, and differentiability of the ...
Following our recent approach of nonsmooth analysis, we report a new set of sufficient conditions an...
This brief presents new sufficient conditions for the global exponential stability of the equilibriu...
AbstractIn this paper, the existence and uniqueness of the equilibrium point and absolute stability ...
The classical analysis of asymptotical and exponential stability of neural networks needs assumption...
In this paper, absolute stability of nonlinear systems with time delays is investigated. Sufficient ...
In this paper, we obtain new sufficient conditions ensuring existence, uniqueness, and global asympt...
AbstractThe stability of cellular neural networks (CNNs) with continuous time delay is investigated ...
In this paper, we obtain new sufficient conditions ensuring existence, uniqueness, and global asympt...
In this note, we study the equilibrium and stability properties of neural networks with time varying...
In this paper, we investigate the robust stability problem for the class of delayed neural networks ...
This paper presents new sufficient conditions for the global exponential stability of the equilibriu...
Recurrent neural networks have the potential of performing parallel computation for associative memo...
This paper studies the problem of robust stability of dynamical neural networks with discrete time d...
[[abstract]]The stability for cellular neural networks (CNNs) with timevarying delay is introduced b...
AbstractIn this paper, without assuming the boundedness, monotonicity, and differentiability of the ...
Following our recent approach of nonsmooth analysis, we report a new set of sufficient conditions an...
This brief presents new sufficient conditions for the global exponential stability of the equilibriu...
AbstractIn this paper, the existence and uniqueness of the equilibrium point and absolute stability ...
The classical analysis of asymptotical and exponential stability of neural networks needs assumption...
In this paper, absolute stability of nonlinear systems with time delays is investigated. Sufficient ...
In this paper, we obtain new sufficient conditions ensuring existence, uniqueness, and global asympt...
AbstractThe stability of cellular neural networks (CNNs) with continuous time delay is investigated ...
In this paper, we obtain new sufficient conditions ensuring existence, uniqueness, and global asympt...
In this note, we study the equilibrium and stability properties of neural networks with time varying...
In this paper, we investigate the robust stability problem for the class of delayed neural networks ...
This paper presents new sufficient conditions for the global exponential stability of the equilibriu...
Recurrent neural networks have the potential of performing parallel computation for associative memo...
This paper studies the problem of robust stability of dynamical neural networks with discrete time d...
[[abstract]]The stability for cellular neural networks (CNNs) with timevarying delay is introduced b...