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基于动态模糊神经网络的非线性系统辨识
引用本文:康珺,孟文俊,王倩怡. 基于动态模糊神经网络的非线性系统辨识[J]. 太原重型机械学院学报, 2011, 0(6): 432-436
作者姓名:康珺  孟文俊  王倩怡
作者单位:[1]太原科技大学机械工程学院,太原030024 [2]中北大学软件学院,太原030051
基金项目:国家自然科学基金(51075289)
摘    要:在分析模糊神经网络辨识特点及现状的基础上,设计了一种适用于非线性多输入系统的辨识模型。本模型将T-S模糊模型与5层动态模糊神经网络结构相结合,通过参数学习算法优化辨识结构,对辨识模型进行反馈调节,得到的辨识精度较高。另外,对输入数据采用归一化的方法进行预处理,加快了网络的辨识速率。最后,通过仿真实例证明了该设计的有效性,为模糊神经网络辨识结构的设计提供了一种新的思路和方法。

关 键 词:模糊神经网络  T-S模糊模型  非线性系统  辨识

Identification of Nonlinear System Based on Dynamic Fuzzy Neural Network
KANG Jun,MENG Wen-jun,WANG Qian-yi. Identification of Nonlinear System Based on Dynamic Fuzzy Neural Network[J]. Journal of Taiyuan Heavy Machinery Institute, 2011, 0(6): 432-436
Authors:KANG Jun  MENG Wen-jun  WANG Qian-yi
Affiliation:1. School of Mechanical and Electronic Engineering, Taiyuan University of Science and Technology, Taiyuan 030024, China; 2. School of Software, North University of China, Taiyuan 030051, China)
Abstract:The paper analyses the characteristics and the situation of dynamic fuzzy neural network identification, and designs a suitable identification model for muhivariable nonlinear system. The model combines T-S fuzzy model with 5-layer dynamic neural network, thus the identification structure can be optimized by using a kind of parameters learning algorithm and the identification precision can be improved. In addition, it gains quickly identification veloc- ity by the input-data preconditioning. Finally, the simulation proved the effectiveness of the model, which provides a new idea and method for designing a fuzzy neural network identification model.
Keywords:fuzzy neural network   T-S fuzzy model   nonlinear system   identification
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