Study on velocity profile of gas–liquid two-phase stratified flow in pipelines based on transfer component analysis-back propagation neural network

Author:

Liu Xu1234ORCID,Song Yingrui1234ORCID,Zhao Danlei1234,Lan Kang1234,Zhai Ke1234,Wang Mi1234ORCID,Fang Lide1234ORCID

Affiliation:

1. College of Quality and Technical Supervision, Hebei University 1 , Baoding 071002, China

2. National and Local Joint Engineering Research Center of Metrology Instrument and System, Hebei University 2 , Baoding, Hebei 071002, China

3. Hebei Key Laboratory of Energy Metering and Safety Testing Technology 3 , Baoding, Hebei 071002, China

4. Baoding Industrial Metrology Engineering Technology Research Center 4 , Baoding, Hebei 071002, China

Abstract

The measurement of cross-sectional velocity profile is a challenge in the field of two-phase flow. In this paper, the stereoscopic particle image velocimetry (SPIV) technique is employed to obtain the cross-sectional velocity profile of gas and liquid phase in stratified flow. Interface velocity profile is obtained through numerical simulation. By leveraging the concept of transfer learning, we propose to construct a transfer component analysis-back propagation network using stereo particle image velocimetry and numerical simulation and to predict the velocity profile of the gas–liquid interface in stratified flow. The research indicates that the cross-sectional velocity profile of the gas–liquid stratified flow is similar to the “mushroom” shape. The velocity profile of the gas–liquid interface changes from an M-type to the N-type, and the gas–liquid velocity slip affects the transformation process. With the increase in the gas-phase velocity, the distance between the two peaks of the M-type velocity profile increases and the gap between gas–liquid velocity peaks increases accordingly.

Funder

National Natural Science Foundation of China

Hebei Key Project of Natural Science Foundation

Beijing-Tianjin-Heibei Collaborative Innovation Community Construction Project

Natural Science Foundation of Hebei Province

Advanced Talents Incubation Program of Hebei University

Publisher

AIP Publishing

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