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Global Attractivity and Global Exponential Stability for Delayed Hopfield Neural Network Models
by
Xu, Dao-yi
, Pu, Zhi-lin
in
Liapunov functions
/ Neural networks
/ Stability
2001
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Global Attractivity and Global Exponential Stability for Delayed Hopfield Neural Network Models
by
Xu, Dao-yi
, Pu, Zhi-lin
in
Liapunov functions
/ Neural networks
/ Stability
2001
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Global Attractivity and Global Exponential Stability for Delayed Hopfield Neural Network Models
Journal Article
Global Attractivity and Global Exponential Stability for Delayed Hopfield Neural Network Models
2001
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Overview
Some global properties such as global attractivity and global exponential stability for delayed Hopfield neural networks model, under the weaker assumptions on nonlinear activation functions, are concerned. By constructing suitable Liapunov function, some simpler criteria for global attractivity and global exponential stability for Hopfield continuous neural networks with time delays are presented.
Publisher
Springer Nature B.V
Subject
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