Soft-ANN based correlation for air-water two-phase flow pressure drop estimation in a vertical mini-channel

Author:

Manuel Barroso-Maldonado Juan1,Manuel Riesco-Ávila José2ORCID,Martín Picón-Núñez3,Manuel Belman-Flores Juan2

Affiliation:

1. CETYS University, Engineering College, Mexicali, BC, Mexico

2. Department of Mechanical Engineering, University of Guanajuato, Mexico

3. Department of Chemical Engineering, University of Guanajuato, Mexico

Abstract

In this paper, an Artificial Neural Network soft matrix correlation to estimate the pressure drop of air-water two-phase flow is developed. The applicability of the model is extended by using dimensionless physical numbers as inputs (Air-Reynolds number, Water-Reynolds number, and the ratio of Air Inertial Forces to Water Inertial Forces), so the model can be implemented for vertical pipes with the proper combination of diameter-velocity-density-viscosity allowing estimations of dimensional numbers within the range of: Air-Reynolds numbers (430–6100), Water-Reynolds number (2400–7200), and Air-Water-Inertial forces ratio (1.6–1834), including the diameter range from 3 to 28 mm. Experimental measurements of frictional pressure drop of water-air mixtures are determined at different conditions. A search of the most suitable density, viscosity, and friction models was conducted and used in the model. The performance of the proposed ANN correlation is compared against published expressions showing good approximation to experimental data; results indicate that the most used correlations are within a mean relative error ( mre) of 23.9–30.7%, while the proposed ANN has a mre = 0.9%. Two additional features are discussed: i) the applicability and generality of the ANN using untrained data, ii) the applicability in laminar, transitional, and turbulent flow regimen. To take the approach beyond a robust performance mapping, the methodology to translate the ANN into a programmable equation is presented.

Publisher

SAGE Publications

Subject

Mechanical Engineering

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