This paper is divided into four parts. Part 1 contains a survey of three neural networks found in the literature and which motivate this work. In Part 2 we model a neural network with a very general integral form of memory, prove a boundedness result, and obtain a first result on asymptotic stability of equilibrium points. The system is very general and we do not solve the stability problem. In the third section we show that the neural networks are very robust. The fourth section concerns simplification of the systems from the second part. Several asymptotic stability results are obtained for the simplified systems. Key wozds: Neural networks, stability, memory. AMS (MOS) subject classifications: 34K20
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This paper presents new necessary and sufficient conditions for absolute stability of asymmetric neu...
This paper presents some new sufficient conditions for the global robust asymptotic stability of the...
This paper presents a novel sufficient condition for the existence, uniqueness and global robust asy...
This paper presents new necessary and sufficient conditions for absolute stability of asymmetric neu...
This report presents a formalism that enables the dynamics of a broad class of neural networks to be...
In the present paper we survey and utilize results from the qualitative theory of large scale interc...
The importance of the Stability Problem in neurocomputing is discussed, as well as the need for the ...
This paper is devoted to studying both the global and local stability of dynamical neural networks. ...
The present paper shows that a su±cient condition for the existence of a stable solution to an autor...
This brief studies the complete stability of neural networks with nonmonotonic piecewise linear acti...
The paper introduces a new approach to analyze the stability of neural network models without using ...
Gradient recurrent high-order neural networks (GRHONNs) have found great applicability to optimizati...
Cataloged from PDF version of article.We consider the design problem for a class of discrete-time a...
This paper presents a sufficient condition for the existence, uniqueness and global asymptotic stabi...
This letter points out that while a class of conditions presented in Matsuoka K. [1] are truly suffi...
This paper presents new necessary and sufficient conditions for absolute stability of asymmetric neu...
This paper presents some new sufficient conditions for the global robust asymptotic stability of the...
This paper presents a novel sufficient condition for the existence, uniqueness and global robust asy...
This paper presents new necessary and sufficient conditions for absolute stability of asymmetric neu...
This report presents a formalism that enables the dynamics of a broad class of neural networks to be...