Abstract

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.

Highlights

  • Vertical annular two-phase flow is a type of gas-liquid two-phase flow in a vertical pipe [1]

  • Instead of applying empirical formulas, in this work, we develop a combined particle swarm optimization (PSO)-support vector regression machine (SVR) model to compute the optimal friction factor for the vertical annular flow

  • By comparison with results from empirical formulas, we show that the proposed model is promising for calculating the friction factor for vertical annular flows in a wide range of parameters

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Summary

Introduction

Vertical annular two-phase flow (as shown in Figure 1) is a type of gas-liquid two-phase flow in a vertical pipe [1]. Experimental observations in the literature show that there were a few types of fluctuations at the gas-liquid interface, leading to the complex interfacial structure [6] These fluctuation waves are generally classified into two categories, namely the large wave and the wavelet, according to parameters, such as relative wave height (relative average liquid film thickness), distribution continuity and. Instead of applying empirical formulas, in this work, we develop a combined PSO-SVR model to compute the optimal friction factor for the vertical annular flow. By comparison with results from empirical formulas, we show that the proposed model is promising for calculating the friction factor for vertical annular flows in a wide range of parameters.

Machine Learning Method
Particle Swarm Optimization
Data Normalization and Denormalization
SVR Input Variable Analysis
Parameter Optimization of PSO-SVR Model
Result
Comparison of Different Input Parameter Combinations
Findings
Conclusions
Full Text
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