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一类离散时间动态神经网络的稳定性分析与镇定

Stability analysis and the stabilization of a class of discrete-time dynamic neural networks.

作者信息

Patan Krzysztof

机构信息

Institute of Control and Computation Engineering, University of Zielona Góra, Zielona Góra 65-246, Poland.

出版信息

IEEE Trans Neural Netw. 2007 May;18(3):660-73. doi: 10.1109/TNN.2007.891199.

Abstract

This paper deals with problems of stability and the stabilization of discrete-time neural networks. Neural structures under consideration belong to the class of the so-called locally recurrent globally feedforward networks. The single processing unit possesses dynamic behavior. It is realized by introducing into the neuron structure a linear dynamic system in the form of an infinite impulse response filter. In this way, a dynamic neural network is obtained. It is well known that the crucial problem with neural networks of the dynamic type is stability as well as stabilization in learning problems. The paper formulates stability conditions for the analyzed class of neural networks. Moreover, a stabilization problem is defined and solved as a constrained optimization task. In order to tackle this problem two methods are proposed. The first one is based on a gradient projection (GP) and the second one on a minimum distance projection (MDP). It is worth noting that these methods can be easily introduced into the existing learning algorithm as an additional step, and suitable convergence conditions can be developed for them. The efficiency and usefulness of the proposed approaches are justified by using a number of experiments including numerical complexity analysis, stabilization effectiveness, and the identification of an industrial process.

摘要

本文探讨离散时间神经网络的稳定性及稳定化问题。所考虑的神经结构属于所谓的局部递归全局前馈网络类别。单个处理单元具有动态行为。这是通过在神经元结构中引入一个以无限脉冲响应滤波器形式的线性动态系统来实现的。通过这种方式,得到了一个动态神经网络。众所周知,动态类型神经网络的关键问题在于学习问题中的稳定性以及稳定化。本文阐述了所分析神经网络类别的稳定性条件。此外,将稳定化问题定义为一个约束优化任务并加以解决。为解决此问题,提出了两种方法。第一种基于梯度投影(GP),第二种基于最小距离投影(MDP)。值得注意的是,这些方法可以很容易地作为附加步骤引入到现有的学习算法中,并且可以为它们制定合适的收敛条件。通过包括数值复杂度分析、稳定化有效性以及工业过程识别在内的大量实验,证明了所提出方法的效率和实用性。

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