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J4  2009, Vol. 43 Issue (8): 1383-1388    DOI: 10.3785/j.issn.1008-973X
    
Robust stability analysis of delayed discretetime standard neural network model
 ZHANG Jian-Hai1, ZHANG Sen-Lin2, LIU Mei-Qin2
1. College of Computer Science, Hangzhou Dianzi University, Hangzhou 310018, China;
2. College of Electrical Engineering, Zhejiang University, Hangzhou 310027, China
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Abstract  

The problems of robust asymptotic stability and exponential stability of delayed discrete-time standard neural network model (SNNM) were investigated. Applying Lyapunov stability theory and S-procedure technique, sufficient stability conditions were derived in form of linear matrix inequalities, which could be solved easily. Especially, the condition for robust exponential stability was formulated as a generalized eigenvalued problem, which established an estimation of the exponential convergence rate and improved the previous results. In the given examples, two kinds of recurrent neural networks (RNNs) were transformed into SNNM to be analyzed in a unified way. Simulation showed the effectiveness of the presented method and the validity of the sufficient conditions. SNNM provides a new approach for the analysis of RNNs.



Published: 28 September 2009
CLC:  TP 183  
Cite this article:

ZHANG Jian-Hai, ZHANG Sen-Lin, LIU Mei-Qin. Robust stability analysis of delayed discretetime standard neural network model. J4, 2009, 43(8): 1383-1388.

URL:

http://www.zjujournals.com/eng/10.3785/j.issn.1008-973X     OR     http://www.zjujournals.com/eng/Y2009/V43/I8/1383


离散时滞标准神经网络模型的鲁棒稳定性分析

研究了离散时滞标准神经网络模型(SNNM)的鲁棒渐进稳定性和指数稳定性问题,结合Lyapunov稳定性理论和S方法推导出了两种稳定性的充分条件.所得到的稳定性条件被表示为线性矩阵不等式形式,便于求解.特别的,将鲁棒指数稳定性问题转化为一个广义特征值问题,除了可以判断网络的指数稳定性,还可以方便地估计其最大指数收敛率.在数值示例中,将两类递归神经网络(RNNs)转化为SNNM的形式并利用得到的相关结论对其鲁棒稳定性进行了分析,仿真结果验证了稳定性判据的有效性.SNNM为分析递归网络提供了新的思路,简单且有效.

[1] SUYKENS J A K, DE MOOR B L R, VANDEWALLE J. NLq theory: a neural control framework with global asymptotic stability criteria-Ⅰ: general theory
[J]. Neural Networks, 1997, 10(4): 615-637.


[2] BARABANOV N E, PROKHOROV D V. Stability analysis of discrete-time recurrent neural networks
[J]. IEEE Transactions on Neural Networks, 2002, 13(2): 292-302.


[3] TANAKA K. An approach to stability criteria of neural-network control systems
[J]. IEEE Transactions on Neural Networks, 1996, 7(3): 629-642.


[4] 颜钢锋,张森林,刘妹琴. 标准神经网络模型及其应用
[J]. 浙江大学学报:工学版, 2004, 38(3): 377-381.

YAN Gang-feng, ZHANG Sen-lin, LIU Mei-qin. Standard neural network model and its application
[J]. Journal of Zhejiang University: Engineering Science, 2004, 38(3): 377-381.


[5] LIU M Q. Discrete-time delayed standard neural network model and its application
[J]. Science in China: Series F Information Science, 2006, 49(2): 137-154.


[6] LIU M Q. Unified stabilizing controller synthesis approach for discrete-time intelligent systems with time-delays by dynamic output feedback
[J]. Science in China: Series F Information Science, 2007, 50(4): 636-656.


[7] LIU M Q. Delayed standard neural network models for control system
[J]. IEEE Transactions on Neural Networks, 2007, 18(5): 1376-1391.


[8] HU S Q, WANG J. Global robust stability of a class of discrete-time interval neural networks
[J]. IEEE Transactions on Circuits and Systems—I, 2006, 53(1): 129-138.


[9] LIANG J, CAO J. Exponential stability of continuous-time and discrete-time bidirectional associative memory networks with delay
[J]. Chaos, Solitons & Fractals, 2004, 22(4): 773-785.


[10] 张建海,张森林,刘妹琴. 新的时滞递归神经网络鲁棒稳定性分析方法
[J]. 浙江大学学报:工学版, 2009, 43(3): 434-441.

ZHANG Jian-hai, ZHANG Sen-lin, LIU Mei-qin. New approach for robust stability analysis of delayed recurrent neural networks
[J]. Journal of Zhejiang University: Engineering Science, 2009, 43(3): 434-441.


[11] KHARGONEKAR P P, PETERSEN I R, ZHOU K. Robust stabilization of uncertain linear system: quadratic stabilizability and H∞ control theory
[J]. IEEE Transactions on Automatic Control, 1990, 35(3): 356-361.


[12] XIE L, DE SOUZA CARLOS E. Robust H∞ control for linear systems with norm-bounded time-varying uncertainty
[J]. IEEE Transactions on Automatic Control, 1992, 37(8): 1188-1191.


[13] RONG L. LMI-based criteria for robust stability of Cohen-Grossberg neural networks with delay
[J]. Physics Letter A, 2005, 339(1): 63-73.

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