This brief is concerned with asymptotic stability of neural networks with uncertain delays. Two types of uncertain delays are considered: one is constant while the other is time varying. The discretized Lyapunov–Krasovskii functional (LKF) method is integrated with the technique of introducing the free-weighting matrix between the terms of the Leibniz–Newton formula. The integrated method leads to the establishment of new delay-dependent sufficient conditions in form of linear matrix inequalities for asymptotic stability of delayed neural networks (DNNs). A numerical simulation study is conducted to demonstrate the obtained theoretical results, which shows their less conservatism than the existing stability criteria.
Published in:
Neural Networks, IEEE Transactions on
(Volume:19
,
Issue:
12
)
Date of Publication:
Dec. 2008
- Page(s):
-
2154
-
2161
- ISSN :
-
1045-9227
- Digital Object Identifier :
-
10.1109/TNN.2008.2006904
- Product Type:
-
Journals & Magazines
- Date of Publication :
-
18 November 2008
- Date of Current Version :
-
02 December 2008
- Issue Date :
-
Dec. 2008
- Sponsored by :
-
IEEE Computational Intelligence Society
- PubMed ID :
-
19054738