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EFNN一种增强型模糊神经网络
引用本文:陈保国,朱奕,张华,张家余.EFNN一种增强型模糊神经网络[J].哈尔滨工业大学学报,2001,33(1):89-92.
作者姓名:陈保国  朱奕  张华  张家余
作者单位:哈尔滨工业大学控制工程系,
摘    要:提出了一种较为广义的增强型模糊神经网络,以达到更高的非线性系统逼近能力。该网络模糊规则的结论以函数形式给出,从而决定了网络的结构由两个网络组成,即特征网络和功能网络。网络采用梯度算法来修正网络的参数。仿真表明:该网络具有较强的非线性逼近能力和较快的学习速度。

关 键 词:特征网络  功能网络  增强型模型神经网络  梯度算法
文章编号:0367-6234(2001)01-0089-04
修稿时间:1999年12月26

An enforced fuzzy neural networks
CHEN Bao-Guo,ZHU Yi,ZHANG Hua,ZHANG Jia-yu.An enforced fuzzy neural networks[J].Journal of Harbin Institute of Technology,2001,33(1):89-92.
Authors:CHEN Bao-Guo  ZHU Yi  ZHANG Hua  ZHANG Jia-yu
Abstract:Presents the general enforced fuzzy neural network (EFNN) proposed to obtain higher accuracy of closing in on nonlinear system with the consequent fuzzy rules given in the form of function, which determines that the structure of network is a combination of two sub networks. Character network and function one, and the parameters are tuned with the grade descending algorithms and concludes from simulation results that the network has a higher accuracy of closing in on nonlinear system and a faster training speed.
Keywords:fuzzy neural networks  character network  function network  enforced FNN
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