Stability Analysis of Recurrent Neural Networks with Random Delay and Markovian Switching
<p/> <p>In this paper, the exponential stability analysis problem is considered for a class of recurrent neural networks (RNNs) with random delay and Markovian switching. The evolution of the delay is modeled by a continuous-time homogeneous Markov process with a finite number of states....
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doaj-9eebe51a103e47d3ad0de0b35d3c42882020-11-24T21:37:56ZengSpringerOpenJournal of Inequalities and Applications1025-58341029-242X2010-01-0120101191546Stability Analysis of Recurrent Neural Networks with Random Delay and Markovian SwitchingZhang HanjunZou JiezhongWang YongZhu EnwenWang Yueheng<p/> <p>In this paper, the exponential stability analysis problem is considered for a class of recurrent neural networks (RNNs) with random delay and Markovian switching. The evolution of the delay is modeled by a continuous-time homogeneous Markov process with a finite number of states. The main purpose of this paper is to establish easily verifiable conditions under which the random delayed recurrent neural network with Markovian switching is exponentially stable. The analysis is based on the Lyapunov-Krasovskii functional and stochastic analysis approach, and the conditions are expressed in terms of linear matrix inequalities, which can be readily checked by using some standard numerical packages such as the Matlab LMI Toolbox. A numerical example is exploited to show the usefulness of the derived LMI-based stability conditions.</p>http://www.journalofinequalitiesandapplications.com/content/2010/191546 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Zhang Hanjun Zou Jiezhong Wang Yong Zhu Enwen Wang Yueheng |
spellingShingle |
Zhang Hanjun Zou Jiezhong Wang Yong Zhu Enwen Wang Yueheng Stability Analysis of Recurrent Neural Networks with Random Delay and Markovian Switching Journal of Inequalities and Applications |
author_facet |
Zhang Hanjun Zou Jiezhong Wang Yong Zhu Enwen Wang Yueheng |
author_sort |
Zhang Hanjun |
title |
Stability Analysis of Recurrent Neural Networks with Random Delay and Markovian Switching |
title_short |
Stability Analysis of Recurrent Neural Networks with Random Delay and Markovian Switching |
title_full |
Stability Analysis of Recurrent Neural Networks with Random Delay and Markovian Switching |
title_fullStr |
Stability Analysis of Recurrent Neural Networks with Random Delay and Markovian Switching |
title_full_unstemmed |
Stability Analysis of Recurrent Neural Networks with Random Delay and Markovian Switching |
title_sort |
stability analysis of recurrent neural networks with random delay and markovian switching |
publisher |
SpringerOpen |
series |
Journal of Inequalities and Applications |
issn |
1025-5834 1029-242X |
publishDate |
2010-01-01 |
description |
<p/> <p>In this paper, the exponential stability analysis problem is considered for a class of recurrent neural networks (RNNs) with random delay and Markovian switching. The evolution of the delay is modeled by a continuous-time homogeneous Markov process with a finite number of states. The main purpose of this paper is to establish easily verifiable conditions under which the random delayed recurrent neural network with Markovian switching is exponentially stable. The analysis is based on the Lyapunov-Krasovskii functional and stochastic analysis approach, and the conditions are expressed in terms of linear matrix inequalities, which can be readily checked by using some standard numerical packages such as the Matlab LMI Toolbox. A numerical example is exploited to show the usefulness of the derived LMI-based stability conditions.</p> |
url |
http://www.journalofinequalitiesandapplications.com/content/2010/191546 |
work_keys_str_mv |
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1725936348847669248 |