This brief investigates the absolute exponential stability (AEST) of neural networks with a general class of partially Lipschitz continuous (defined in Section II) and monotone increasing activation functions. The main obtained result is that if the interconnection matrix T of the network system satisfies that - T is an H-matrix with nonnegative diagonal elements, then the neural network system is absolutely exponentially stable (AEST); i.e., that the network system is globally exponentially stable (GES) for any activation functions in the above class, any constant input vectors and any other network parameters. The obtained AEST result extends the existing ones of absolute stability (ABST) of neural networks with special classes of activat...
AbstractIn this paper, some sufficient conditions for the local and global exponential stability of ...
In this paper, the exponential stability of nonlinear discrete-time systems is studied. A novel noti...
This paper concerns the problem of the globally exponential stability of neural networks with discre...
In this letter, the absolute exponential stability result of neural networks with asymmetric connect...
AbstractIn this paper, the global exponential stability for a class of neural networks is investigat...
In this paper, we prove that for a class of nonsymmetric neural networks with connection matrices T ...
This paper obtains the global exponential stability (GES) of the class of Hopfield-Tank neural circu...
This paper presents new necessary and sufficient conditions for absolute stability of neural network...
The main result obtained in this paper is that for a neural network with interconnection matrix T, i...
This brief studies the complete stability of neural networks with nonmonotonic piecewise linear acti...
AbstractIn this paper, we derive some new conditions for absolute exponential stability (AEST) of a ...
We report on results concerning the global asymptotic stability (GAS) and absolute stability (ABST) ...
This paper presents new necessary and sufficient conditions for absolute stability of asymmetric neu...
AbstractIn this work we consider a general class of continuous activation functions which may be nei...
In a recent paper, Fang and Kincaid proposed an open problem about the relationship between the loca...
AbstractIn this paper, some sufficient conditions for the local and global exponential stability of ...
In this paper, the exponential stability of nonlinear discrete-time systems is studied. A novel noti...
This paper concerns the problem of the globally exponential stability of neural networks with discre...
In this letter, the absolute exponential stability result of neural networks with asymmetric connect...
AbstractIn this paper, the global exponential stability for a class of neural networks is investigat...
In this paper, we prove that for a class of nonsymmetric neural networks with connection matrices T ...
This paper obtains the global exponential stability (GES) of the class of Hopfield-Tank neural circu...
This paper presents new necessary and sufficient conditions for absolute stability of neural network...
The main result obtained in this paper is that for a neural network with interconnection matrix T, i...
This brief studies the complete stability of neural networks with nonmonotonic piecewise linear acti...
AbstractIn this paper, we derive some new conditions for absolute exponential stability (AEST) of a ...
We report on results concerning the global asymptotic stability (GAS) and absolute stability (ABST) ...
This paper presents new necessary and sufficient conditions for absolute stability of asymmetric neu...
AbstractIn this work we consider a general class of continuous activation functions which may be nei...
In a recent paper, Fang and Kincaid proposed an open problem about the relationship between the loca...
AbstractIn this paper, some sufficient conditions for the local and global exponential stability of ...
In this paper, the exponential stability of nonlinear discrete-time systems is studied. A novel noti...
This paper concerns the problem of the globally exponential stability of neural networks with discre...