期刊名称:Neural Information Processing: Letters and Reviews
电子版ISSN:1738-2532
出版年度:2007
卷号:11
期号:9
页码:189-194
出版社:Neural Information Processing
摘要:The asymptotic behavior of a class discrete-time Hopfield neural network is studied in this paper. Some properties
for this class discrete-time neural network, such as the boundedness of motion trajectory, the uniqueness and the
absolute stability of equilibrium point etc, are obtained. In this paper, the sufficient conditions related to the existence
of unique equilibrium point and absolute stability of equilibrium point for the discrete-time Hopfield neural networks are
discussed. These criteria to test absolute stability of the equilibrium point of this neural network model require verification
of the definiteness of a certain matrix or verification of a certain inequality. These results can be used for the synthesis
procedures for discrete-time Hopfield neural networks.
关键词:Neural Networks; Absolute Stability; Asymptotic Behavior; Equilibrium Point