Du Baozhu, Lam James
Department of Mechanical Engineering, University of Hong Kong, Pokfulam Road, Hong Kong.
Neural Netw. 2009 May;22(4):343-7. doi: 10.1016/j.neunet.2009.03.005. Epub 2009 Mar 24.
This paper introduces an effective approach to studying the stability of recurrent neural networks with a time-invariant delay. By employing a new Lyapunov-Krasovskii functional form based on delay partitioning, novel delay-dependent stability criteria are established to guarantee the global asymptotic stability of static neural networks. These conditions are expressed in the framework of linear matrix inequalities, which can be verified easily by means of standard software. It is shown, by comparing with existing approaches, that the delay-partitioning projection approach can largely reduce the conservatism of the stability results. Finally, two examples are given to show the effectiveness of the theoretical results.
本文介绍了一种研究具有时不变延迟的递归神经网络稳定性的有效方法。通过采用基于延迟划分的新型Lyapunov-Krasovskii泛函形式,建立了新颖的依赖延迟的稳定性准则,以保证静态神经网络的全局渐近稳定性。这些条件以线性矩阵不等式的框架表示,可以通过标准软件轻松验证。与现有方法相比表明,延迟划分投影方法可以大大降低稳定性结果的保守性。最后,给出两个例子来说明理论结果的有效性。