Computer Engineering and Applications ›› 2008, Vol. 44 ›› Issue (6): 231-233.

• 工程与应用 • Previous Articles     Next Articles

Flow regime identification based on wavelet packet analysis and Radial Basis Function neural network for Electrical Resistance Tomography system

CHEN De-yun,ZHU Bo,ZHANG Hua   

  1. College of Computer Science and Technology,Harbin University of Science and Technology,Harbin 150080,China
  • Received:2007-06-19 Revised:2007-09-07 Online:2008-02-21 Published:2008-02-21
  • Contact: CHEN De-yun

基于小波包分析和RBF神经网络的ERT系统流型辨识

陈德运,朱 波,张 华   

  1. 哈尔滨理工大学 计算机科学与技术学院,哈尔滨 150080
  • 通讯作者: 陈德运

Abstract: Two-phase fluid has complex flow characteristic and the accurate identification of flow regime is the basis of the accurate measurement of two-phase flow’s parameter,as a result,the on-line intelligent identification of flow regime is an important role of two-phase flow research.Based on electrical resistance tomography system and oil-water two phase flow regime,the feature of measurement data is extracted by the method of wavelet packet analysis,then the extracted data will be taken as input information of radial basis function neural network,both the model and the simulation are made for neural network.Experiment simulation analysis shows this method is very suitable for flow regime identification,and can attain a purpose of identification of flow regime effectively.

摘要: 两相流体具有复杂性的流动特性,流型的准确辨识是两相流参数准确测量的基础,流型的在线智能辨识成是两相流研究的重点内容之一。以ERT系统和油/水两相流的流型为研究基础,采用小波包分析方法对测量数据进行特征提取,然后以提取后的特征数据作为RBF神经网络的输入,对网络进行建模和仿真。通过实验仿真分析,该方法对流型辨识非常适用,并有效达到流型辨识的目的。