Discrete-time delayed standard neural network model and its application

被引:0
|
作者
Meiqin Liu
机构
[1] Zhejiang University,School of Electrical Engineering
来源
Science in China Series F: Information Sciences | 2006年 / 49卷
关键词
delayed standard neural network model (DSNNM); linear matrix inequality (LMI); stability; generalized eigenvalue problem (GEVP); discrete-time; nonlinear control;
D O I
暂无
中图分类号
学科分类号
摘要
A novel neural network model, termed the discrete-time delayed standard neural network model (DDSNNM), and similar to the nominal model in linear robust control theory, is suggested to facilitate the stability analysis of discrete-time recurrent neural networks (RNNs) and to ease the synthesis of controllers for discrete-time nonlinear systems. The model is composed of a discrete-time linear dynamic system and a bounded static delayed (or non-delayed) nonlinear operator. By combining various Lyapunov functionals with the S-procedure, sufficient conditions for the global asymptotic stability and global exponential stability of the DDSNNM are derived, which are formulated as linear or nonlinear matrix inequalities. Most discrete-time delayed or non-delayed RNNs, or discrete-time neural-network-based nonlinear control systems can be transformed into the DDSNNMs for stability analysis and controller synthesis in a unified way. Two application examples are given where the DDSNNMs are employed to analyze the stability of the discrete-time cellular neural networks (CNNs) and to synthesize the neuro-controllers for the discrete-time nonlinear systems, respectively. Through these examples, it is demonstrated that the DDSNNM not only makes the stability analysis of the RNNs much easier, but also provides a new approach to the synthesis of the controllers for the nonlinear systems.
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页码:137 / 154
页数:17
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