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题名

Interfacial Friction Prediction in a Vertical Annular Two-Phase Flow Based on Support Vector Regression Machine

作者
通讯作者Feng, Xingya
发表日期
2021-12-01
DOI
发表期刊
EISSN
2073-4441
卷号13期号:24
摘要

Accurate prediction of interfacial friction factor is critical for calculation of pressure drop and investigation of flow mechanism of vertical annular two-phase flows. Theoretical models of interfacial friction factor based on physical insight have been developed; however, these are inconvenient in engineering practice as too many parameters need to be measured. Although many researchers have proposed various empirical correlations to improve computation efficiency, there is no generally accepted simple formula. In this study, an efficient prediction model based on support vector regression machine (SVR) is proposed. Through sensitivity analysis, five factors are determined as the input parameters to train the SVR model, relative liquid film thickness, liquid Reynolds number, gas Reynolds number, liquid Froude number and gas Froude number. The interfacial friction factor is chosen as the output parameter to check the overall performance of the model. With the help of particle swarm algorithm, the optimization process is accelerated considerably, and the optimal model is obtained through iterations. Compared with other correlations, the optimal model shows the lowest average absolute error (AAE of 0.0004), lowest maximum absolute error (MAE of 0.006), lowest root mean square error (RMSE of 0.00076) and highest correlation factor (r of 0.995). The analysis using various data in the literature demonstrates its accuracy and stability in interfacial friction prediction. In summary, the proposed machine learning model is effective and can be applied to a wider range of conditions for vertical annular two-phase flows.;Accurate prediction of interfacial friction factor is critical for calculation of pressure drop and investigation of flow mechanism of vertical annular two-phase flows. Theoretical models of interfacial friction factor based on physical insight have been developed; however, these are inconvenient in engineering practice as too many parameters need to be measured. Although many researchers have proposed various empirical correlations to improve computation efficiency, there is no generally accepted simple formula. In this study, an efficient prediction model based on support vector regression machine (SVR) is proposed. Through sensitivity analysis, five factors are determined as the input parameters to train the SVR model, relative liquid film thickness, liquid Reynolds number, gas Reynolds number, liquid Froude number and gas Froude number. The interfacial friction factor is chosen as the output parameter to check the overall performance of the model. With the help of particle swarm algorithm, the optimization process is accelerated considerably, and the optimal model is obtained through iterations. Compared with other correlations, the optimal model shows the lowest average absolute error (AAE of 0.0004), lowest maximum absolute error (MAE of 0.006), lowest root mean square error (RMSE of 0.00076) and highest correlation factor (r of 0.995). The analysis using various data in the literature demonstrates its accuracy and stability in interfacial friction prediction. In summary, the proposed machine learning model is effective and can be applied to a wider range of conditions for vertical annular two-phase flows.

关键词
相关链接[来源记录]
收录类别
SCI ; EI
语种
英语
学校署名
第一 ; 通讯
WOS研究方向
Environmental Sciences & Ecology ; Water Resources
WOS类目
Environmental Sciences ; Water Resources
WOS记录号
WOS:000737321900001
出版者
EI入藏号
20215111369871
EI主题词
Errors ; Forecasting ; Friction ; Froude number ; Liquid films ; Mean square error ; Regression analysis ; Reynolds equation ; Sensitivity analysis ; Support vector machines ; Two phase flow
EI分类号
Fluid Flow, General:631.1 ; Computer Software, Data Handling and Applications:723 ; Mathematics:921 ; Calculus:921.2 ; Mathematical Statistics:922.2
来源库
Web of Science
引用统计
被引频次[WOS]:1
成果类型期刊论文
条目标识符http://sustech.caswiz.com/handle/2SGJ60CL/259303
专题工学院_海洋科学与工程系
作者单位
1.Southern Univ Sci & Technol, Dept Ocean Sci & Engn, Shenzhen 518055, Peoples R China
2.Southern Marine Sci & Engn Guangdong Lab Guangzho, Guangzhou 511458, Peoples R China
第一作者单位海洋科学与工程系
通讯作者单位海洋科学与工程系
第一作者的第一单位海洋科学与工程系
推荐引用方式
GB/T 7714
Liu, Qiang,Feng, Xingya,Chen, Junru. Interfacial Friction Prediction in a Vertical Annular Two-Phase Flow Based on Support Vector Regression Machine[J]. WATER,2021,13(24).
APA
Liu, Qiang,Feng, Xingya,&Chen, Junru.(2021).Interfacial Friction Prediction in a Vertical Annular Two-Phase Flow Based on Support Vector Regression Machine.WATER,13(24).
MLA
Liu, Qiang,et al."Interfacial Friction Prediction in a Vertical Annular Two-Phase Flow Based on Support Vector Regression Machine".WATER 13.24(2021).
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文件名: Published water-13-03609-v2.pdf
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格式: Adobe PDF
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