Global exponential stability of delayed Markovian jump fuzzy cellular neural networks with generally incomplete transition probability — Yonggui Kao (2014) | RDL Network
Global exponential stability of delayed Markovian jump fuzzy cellular neural networks with generally incomplete transition probability
Neural Networks 63: 18-30
Article 2014 English
Authors
YK
Yonggui Kao
LS
Lei Shi
JX
Jing Xie
Abstract
1 min read
The problem of global exponential stability in mean square of delayed Markovian jump fuzzy cellular neural networks (DMJFCNNs) with generally uncertain transition rates (GUTRs) is investigated in this paper. In this GUTR neural network model, each transition rate can be completely unknown or only its estimate value is known. This new uncertain model is more general than the existing ones. By constructing suitable Lyapunov functionals, several sufficient conditions on the exponential stability in mean square of its equilibrium solution are derived in terms of linear matrix inequalities (LMIs). Finally, a numerical example is presented to illustrate the effectiveness and efficiency of our results.
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