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基于外积FLNN的非线性系统辨识
引用本文:李萍,吴乐南.基于外积FLNN的非线性系统辨识[J].微计算机信息,2006,22(4):257-259.
作者姓名:李萍  吴乐南
作者单位:1. 210096,江苏南京,东南大学无线电工程系;462000,河南漯河,漯河职业技术学院
2. 210096,江苏南京,东南大学无线电工程系
摘    要:函数型连接神经网络通过对输入模式预先进行非线性扩展,增强了输入信号的模式表达,从而大大简化网络结构,降低计算复杂度。本文提出一种外积扩展型连接神经网络,用于辨识幂函数非线性系统,并与MLP和CFLNN网络对比,仿真结果表明,外积型辨识幂函数非线性系统结构简单、计算量低、性能最优。

关 键 词:外积扩展  函数型连接神经网络  非线性系统识别
文章编号:1008-0570(2006)02-1-0257-03
修稿时间:2005年7月26日

Nonlinear Dynamic System Identification Using Functional Link Artificial Neural Networks
Li,Ping,Wu,Lenan.Nonlinear Dynamic System Identification Using Functional Link Artificial Neural Networks[J].Control & Automation,2006,22(4):257-259.
Authors:Li  Ping  Wu  Lenan
Abstract:A functional link neural network can expand its input pattern to eliminate the need of hidden layer without sacrifice its performance. Thus the network structure and the computational complexity can be remarkably reduced. In this paper, a muti- extend- ed link neural network is introduced in identification of power function nonlinear system. It is contrasted with MLP and CFLNN net- work and simulation result indicates that its structure is very simple and its computational complexity is low.
Keywords:MLP
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