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基于LM算法的神经网络系统辨识
引用本文:黄豪彩,黄宜坚,杨冠鲁.基于LM算法的神经网络系统辨识[J].组合机床与自动化加工技术,2003(2):6-8,11.
作者姓名:黄豪彩  黄宜坚  杨冠鲁
作者单位:1. 华侨大学,机电及自动化学院,福建,泉州,362011
2. 华侨大学,信息科学与工程学院,福建,泉州,362011
基金项目:福建省高新技术开发研究计划重点项目 (项目编号 2 0 0 2H0 1 5)
摘    要:介绍了电流变传动系统,并采用基于Levenberg-Marquardt(LM)算法的BP神经网络对其进行系统辨识,LM算法是梯度下降法与高斯-牛顿法的结合,就训练次数与精确度而言,它明显优于共轭梯度法及变学习率的BP算法,适用于系统辨识,仿真结果表明LM算法可大大在提高学习速度,缩短训练时间,且辨识效果很好。

关 键 词:电流变传动系统  系统辨识  LM算法  神经网络
文章编号:1001-2265(2003)02-0006-04

Neural network system identification based on levenberg-marquardt algorithm
HUANG Haocai,HUANG Yijian,YANG Guanlu.Neural network system identification based on levenberg-marquardt algorithm[J].Modular Machine Tool & Automatic Manufacturing Technique,2003(2):6-8,11.
Authors:HUANG Haocai  HUANG Yijian  YANG Guanlu
Affiliation:HUANG Haocai HUANG Yijian YANG Guanlu
Abstract:Electrorheological (ER) drive system is introduced in this paper. The system is identified utilized neural network based on Levenberg-Marquardt (LM) algorithm. The LM algorithm is the combination of the steepest decent algorithm with the Gauss-Newton algorithm. Concerned with the training process and accuracy, the LM algorithm is superior to conjugate gradient algorithm and a variable learning rate back propagation (BP) algorithm. Therefore, it can be applied to system identification. Simulation results illustrate that LM algorithm speed up learning process and reduce training time greatly. The identification effect is very good.
Keywords:ER drive system  system identification  LM algorithm  neural network
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