基于模糊均值聚类的广义回归神经网络及其在系统辨识中的应用

Shizheng. Zhao, Jin-lei Zhang, Xunli, Wei Song
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引用次数: 14

摘要

提出了一种简化具有大量训练样本的广义回归神经网络结构的方法。模式单元的数量与训练样本成比例。因此,为了简化GRNN的结构,需要选择一些具有代表性的样本来构建网络。本文采用模糊均值聚类算法。它结合输入元素之间的相似性度量来寻找最佳聚类中心。仿真结果表明,该策略在很大程度上简化了GRNN的结构,显著提高了网络的效率,而精度损失很小。该策略所构建的网络结构学习速度快,适合处理非线性系统辨识问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Generalized Regression Neural Network Based on Fuzzy Means Clustering and Its Application in System Identification
A method to simplify the generalized regression neural networks (GRNN) structure with a large numbers of training samples is proposed. The amount of pattern units is proportionate to the training samples. So in order to simplify the GRNN's structure, some of the representative samples should be selected to build the network. This paper takes the fuzzy means clustering algorithm. It combines with a similarity measurement, which is calculated between input elements, to find the best clustering centers. According to the simulation results, this strategy can largely simplify the GRNN's structure and significantly improve the network's efficiency with just a tiny of loss in accuracy. The network structure built in this strategy can learn quickly, and is suitable to deal with the problems of nonlinear system identification.
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