This brief studies the complete stability of neural networks with nonmonotonic piecewise linear activation functions. By applying the fixed-point theorem and the eigenvalue properties of the strict diagonal dominance matrix, some conditions are derived, which guarantee that such n-neuron neural networks are completely stable. More precisely, the following two important results are obtained: 1) The corresponding neural networks have exactly 5n equilibrium points, among which 3n equilibrium points are locally exponentially stable and the others are unstable; 2) as long as the initial states are not equal to the equilibrium points of the neural networks, the corresponding solution trajectories will converge toward one of the 3n locally stable ...
Both the analog Hopfield network [1] and the cellular neural network [2], [3] are special cases of t...
Globally convergent dynamics of a class of neural networks with normal connection matrices is studie...
This paper is concerned with stability analysis of multiple equilibria for recurrent neural networks...
In this paper, we discuss the coexistence and dynamical behaviors of multiple equilibrium points for...
In this paper, we examine the problem of multistability for competitive neural networks associated w...
This paper addresses the problem of coexistence and dynamical behaviors of multiple equilibria for c...
This paper addresses the problem of complete stability of delayed recurrent neural networks with a g...
In this paper, we present new conditions ensuring existence, uniqueness, and Global Asymptotic Stabi...
This paper presents the theoretical results on the multistability of state-dependent switching neura...
This paper deals with a class of large-scale nonlinear dynamical systems, namely the additive neural...
This paper is concerned with the problem of exponential stability of multiple equilibria for memrist...
In a recent paper, Fang and Kincaid proposed an open problem about the relationship between the loca...
This brief investigates the absolute exponential stability (AEST) of neural networks with a general ...
A typical neuron cell is characterized by the state variable and the neuron output, which is obtaine...
In this paper, the coexistence and dynamical behaviors of multiple equilibrium points are discussed ...
Both the analog Hopfield network [1] and the cellular neural network [2], [3] are special cases of t...
Globally convergent dynamics of a class of neural networks with normal connection matrices is studie...
This paper is concerned with stability analysis of multiple equilibria for recurrent neural networks...
In this paper, we discuss the coexistence and dynamical behaviors of multiple equilibrium points for...
In this paper, we examine the problem of multistability for competitive neural networks associated w...
This paper addresses the problem of coexistence and dynamical behaviors of multiple equilibria for c...
This paper addresses the problem of complete stability of delayed recurrent neural networks with a g...
In this paper, we present new conditions ensuring existence, uniqueness, and Global Asymptotic Stabi...
This paper presents the theoretical results on the multistability of state-dependent switching neura...
This paper deals with a class of large-scale nonlinear dynamical systems, namely the additive neural...
This paper is concerned with the problem of exponential stability of multiple equilibria for memrist...
In a recent paper, Fang and Kincaid proposed an open problem about the relationship between the loca...
This brief investigates the absolute exponential stability (AEST) of neural networks with a general ...
A typical neuron cell is characterized by the state variable and the neuron output, which is obtaine...
In this paper, the coexistence and dynamical behaviors of multiple equilibrium points are discussed ...
Both the analog Hopfield network [1] and the cellular neural network [2], [3] are special cases of t...
Globally convergent dynamics of a class of neural networks with normal connection matrices is studie...
This paper is concerned with stability analysis of multiple equilibria for recurrent neural networks...