Global asymptotic stability of a class of feedback neural networks with an application to optimization problems

被引:0
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作者
Zhaoshu Feng
Anthony N. Michel
机构
[1] University of Notre Dame,Department of Electrical Engineering
关键词
Neural Network; Asymptotic Stability; Stability Testing; Stability Theory; Unique Equilibrium;
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摘要
By applying results from homotopy theory, new conditions are obtained for the existence and uniqueness of an equilibrium for a class of continuous-time feedback neural networks which contains the Hopfield model as a special case. Next, new criteria are established for the global asymptotic stability of the unique equilibrium of this class of neural networks by utilizing Lur'e-type Lyapunov functions and the stability theory for systems of differential inequalities. Several practical stability testing conditions are given. As a special case, criteria are derived for the global asymptotic stability of Hopfield neural networks. This is followed by a robustness analysis of the class of neural networks considered. The results obtained are then applied to an optimization problem.
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页码:219 / 241
页数:22
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