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数据驱动的水平管气液两相流压降预测方法

张昭 邹晓晶 李媛 吴雨桐 柯诗颖 李健桐 吴澄

广东石油化工学院学报2026,Vol.36Issue(1):39-44,6.
广东石油化工学院学报2026,Vol.36Issue(1):39-44,6.DOI:10.26962/j.cnki.1991.2026.0007

数据驱动的水平管气液两相流压降预测方法

Data-Driven Pressure Drop Prediction Method for Gas-Liquid Two-Phase Flow in Horizontal Pipes

张昭 1邹晓晶 1李媛 1吴雨桐 1柯诗颖 1李健桐 1吴澄1

作者信息

  • 1. 广东石油化工学院 石油工程学院,广东 茂名 525000
  • 折叠

摘要

Abstract

The accurate prediction of pressure drop in horizontal gas-liquid two-phase flow has important guiding significance for productivity evaluation of horizontal wells,optimization design of surface pipelines,and flow safety assurance of subsea pipelines.In this study,through conducting laboratory simulation experiments of two-phase horizontal pipe flow under different pipe diameters and different gas-liquid flow rates,the traditional pressure drop calculation methods such as Lockhart&Martinelli,Beggs&Brill,and Dukler were evaluated.Meanwhile,machine learning methods such as support vector machine,random forest,and BP neural network were used to train and perform regression prediction on the experimental data,thereby establishing a data-driven pressure drop prediction model for horizontal gas-liquid two-phase flow.Results show that compared with the classical models,the data-driven model has higher prediction accuracy.Among the three types of machine learning methods,the horizontal pipe pressure drop model established based on the BP neural network algorithm has the highest prediction accuracy,which can meet the demand for horizontal pipe pressure drop prediction within the studied working conditions.This study has confirmed the potential of the data-driven method in predicting the pressure drop of gas-liquid two-phase flow and can be extended to other multiphase flow application scenarios.

关键词

气液两相流/BP神经网络/随机森林/压降/数据驱动

Key words

gas-liquid two-phase flow/BP neural network/random forest/pressure drop/data-driven

分类

能源科技

引用本文复制引用

张昭,邹晓晶,李媛,吴雨桐,柯诗颖,李健桐,吴澄..数据驱动的水平管气液两相流压降预测方法[J].广东石油化工学院学报,2026,36(1):39-44,6.

基金项目

茂名市科技计划项目(2023014) (2023014)

广东石油化工学院人才引进项目(2022rcyj2009) (2022rcyj2009)

广东石油化工学院大学生创新训练项目(71013407192) (71013407192)

广东石油化工学院学报

2095-2562

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