DocumentCode
948307
Title
Noise-Induced Stabilization of the Recurrent Neural Networks With Mixed Time-Varying Delays and Markovian-Switching Parameters
Author
Shen, Yi ; Wang, Jun
Author_Institution
Huazhong Univ. of Sci. & Technol., Wuhan
Volume
18
Issue
6
fYear
2007
Firstpage
1857
Lastpage
1862
Abstract
The stabilization of recurrent neural networks with mixed time-varying delays and Markovian-switching parameters by noise is discussed. First, a new result is given for the existence of unique states of recurrent neural networks (NNs) with mixed time-varying delays and Markovian-switching parameters in the presence of noise, without the need to satisfy the linear growth conditions required by general stochastic Markovian-switching systems. Next, a delay-dependent condition for stabilization of concerned recurrent NNs is derived by applying the ltd formula, the Gronwall inequality, the law of large numbers, and the ergodic property of Markovian chain. The results show that there always exists an appropriate white noise such that any recurrent NNs with mixed time-varying delays and Markovian-switching parameters can be exponentially stabilized by noise if the delays are sufficiently small.
Keywords
Markov processes; asymptotic stability; delays; recurrent neural nets; stochastic systems; Gronwall inequality; Markovian chain; Markovian-switching parameter; delay-dependent condition; exponential stability; mixed time-varying delay; noise-induced stabilization; recurrent neural network stabilization; stochastic Markovian-switching system; Markovian chain; noise; recurrent neural networks (NNs); stabilization; time-varying delay;
fLanguage
English
Journal_Title
Neural Networks, IEEE Transactions on
Publisher
ieee
ISSN
1045-9227
Type
jour
DOI
10.1109/TNN.2007.903159
Filename
4359208
Link To Document