系统仿真学报 ›› 2016, Vol. 28 ›› Issue (4): 800-805.

• 仿真建模理论与方法 • 上一篇    下一篇

基于RBF神经网络的离心式水泵模型研究

巫庆辉, 申庆欢, 王新君   

  1. 渤海大学工学院,辽宁 锦州 121013
  • 收稿日期:2014-11-17 修回日期:2015-03-08 出版日期:2016-04-08 发布日期:2020-07-02
  • 作者简介:巫庆辉(1974-),男,辽宁锦州,博士,副教授,研究方向为变频调速理论与方法。
  • 基金资助:
    辽宁省教育厅一般项目(L2012402);辽宁省普通高等教育本科教学改革研究项目(UPRP20140866);渤海大学研究生教育教学改革研究项目(071502221)

Research on Modeling of Pump Model Based on RBF Neural Network

Wu Qinghui, Shen Qinghuan, Wang Xinjun   

  1. College of Engineering, Bohai University, Jinzhou 121013, China
  • Received:2014-11-17 Revised:2015-03-08 Online:2016-04-08 Published:2020-07-02

摘要: 在泵特性与泵模型研究的基础上,提出了一种基于k-均值聚类算法RBF(Radial Basis Function)神经网络的建模方法,采用k-均值聚类算法通过输入数据样本优化神经网络隐层中心向量与基宽参数,大大地优化了神经网络结构,提高了神经网络的性能;采用最小二乘法通过输入输出数据样本优化了隐层与输出层的连接权值;利用检测的数据分别对泵QH (流量与扬程)特性及泵综合模型进行了神经网络训练,并进行校验。试验结果表明:通过合理地选择隐层节点个数及重叠系数,训练后的神经网络模型可以代替传统的泵特性与泵综合模型的多项式方程,具有较高的精度。

关键词: 离心式水泵, 泵模型, Q-H特性曲线, 聚类算法, RBF神经网络

Abstract: On the basis of research on pump characteristics and pump model, a modeling method based on RBF neural network with K-means clustering algorithm was proposed. With k-means clustering algorithm the center vector and base width parameters, in which lie in the hidden layer, were optimized by input data sample. The weights between the hidden layer and the output layer were optimized by input-output data sample with least squares method. The neural network models of the pump characteristic and pump comprehensive model were separately trained and checked using the detected data. Its results suggest that reasonably choosing the number of hidden layer node and overlap coefficient, the trained neural network can substitute for the classic polynomial equations of the pump characteristics and the pump comprehensive model, and is with high accuracy.

Key words: centrifugal pump, pump model, Q-H characteristic curve, clustering algorithm, RBF neural network

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