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Machine learning applications to predict two-phase flow patterns

Recent advances in artificial intelligence with traditional machine learning algorithms and deep learning architectures solve complex classification problems. This work presents the performance of different artificial intelligence models to classify two-phase flow patterns, showing the best alternat...

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Autores principales: Arteaga-Arteaga, Harold Brayan, Mora-Rubio, Alejandro, Florez, Frank, Murcia-Orjuela, Nicolas, Diaz-Ortega, Cristhian Eduardo, Orozco-Arias, Simon, delaPava, Melissa, Bravo-Ortíz, Mario Alejandro, Robinson, Melvin, Guillen-Rondon, Pablo, Tabares-Soto, Reinel
Formato: Online Artículo Texto
Lenguaje:English
Publicado: PeerJ Inc. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8641572/
https://www.ncbi.nlm.nih.gov/pubmed/34909465
http://dx.doi.org/10.7717/peerj-cs.798
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author Arteaga-Arteaga, Harold Brayan
Mora-Rubio, Alejandro
Florez, Frank
Murcia-Orjuela, Nicolas
Diaz-Ortega, Cristhian Eduardo
Orozco-Arias, Simon
delaPava, Melissa
Bravo-Ortíz, Mario Alejandro
Robinson, Melvin
Guillen-Rondon, Pablo
Tabares-Soto, Reinel
author_facet Arteaga-Arteaga, Harold Brayan
Mora-Rubio, Alejandro
Florez, Frank
Murcia-Orjuela, Nicolas
Diaz-Ortega, Cristhian Eduardo
Orozco-Arias, Simon
delaPava, Melissa
Bravo-Ortíz, Mario Alejandro
Robinson, Melvin
Guillen-Rondon, Pablo
Tabares-Soto, Reinel
author_sort Arteaga-Arteaga, Harold Brayan
collection PubMed
description Recent advances in artificial intelligence with traditional machine learning algorithms and deep learning architectures solve complex classification problems. This work presents the performance of different artificial intelligence models to classify two-phase flow patterns, showing the best alternatives for this specific classification problem using two-phase flow regimes (liquid and gas) in pipes. Flow patterns are affected by physical variables such as superficial velocity, viscosity, density, and superficial tension. They also depend on the construction characteristics of the pipe, such as the angle of inclination and the diameter. We selected 12 databases (9,029 samples) to train and test machine learning models, considering these variables that influence the flow patterns. The primary dataset is Shoham (1982), containing 5,675 samples with six different flow patterns. An extensive set of metrics validated the results obtained. The most relevant characteristics for training the models using Shoham (1982) dataset are gas and liquid superficial velocities, angle of inclination, and diameter. Regarding the algorithms, the Extra Trees model classifies the flow patterns with the highest degree of fidelity, achieving an accuracy of 98.8%.
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spelling pubmed-86415722021-12-13 Machine learning applications to predict two-phase flow patterns Arteaga-Arteaga, Harold Brayan Mora-Rubio, Alejandro Florez, Frank Murcia-Orjuela, Nicolas Diaz-Ortega, Cristhian Eduardo Orozco-Arias, Simon delaPava, Melissa Bravo-Ortíz, Mario Alejandro Robinson, Melvin Guillen-Rondon, Pablo Tabares-Soto, Reinel PeerJ Comput Sci Algorithms and Analysis of Algorithms Recent advances in artificial intelligence with traditional machine learning algorithms and deep learning architectures solve complex classification problems. This work presents the performance of different artificial intelligence models to classify two-phase flow patterns, showing the best alternatives for this specific classification problem using two-phase flow regimes (liquid and gas) in pipes. Flow patterns are affected by physical variables such as superficial velocity, viscosity, density, and superficial tension. They also depend on the construction characteristics of the pipe, such as the angle of inclination and the diameter. We selected 12 databases (9,029 samples) to train and test machine learning models, considering these variables that influence the flow patterns. The primary dataset is Shoham (1982), containing 5,675 samples with six different flow patterns. An extensive set of metrics validated the results obtained. The most relevant characteristics for training the models using Shoham (1982) dataset are gas and liquid superficial velocities, angle of inclination, and diameter. Regarding the algorithms, the Extra Trees model classifies the flow patterns with the highest degree of fidelity, achieving an accuracy of 98.8%. PeerJ Inc. 2021-11-29 /pmc/articles/PMC8641572/ /pubmed/34909465 http://dx.doi.org/10.7717/peerj-cs.798 Text en © 2021 Arteaga-Arteaga et al. https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, reproduction and adaptation in any medium and for any purpose provided that it is properly attributed. For attribution, the original author(s), title, publication source (PeerJ Computer Science) and either DOI or URL of the article must be cited.
spellingShingle Algorithms and Analysis of Algorithms
Arteaga-Arteaga, Harold Brayan
Mora-Rubio, Alejandro
Florez, Frank
Murcia-Orjuela, Nicolas
Diaz-Ortega, Cristhian Eduardo
Orozco-Arias, Simon
delaPava, Melissa
Bravo-Ortíz, Mario Alejandro
Robinson, Melvin
Guillen-Rondon, Pablo
Tabares-Soto, Reinel
Machine learning applications to predict two-phase flow patterns
title Machine learning applications to predict two-phase flow patterns
title_full Machine learning applications to predict two-phase flow patterns
title_fullStr Machine learning applications to predict two-phase flow patterns
title_full_unstemmed Machine learning applications to predict two-phase flow patterns
title_short Machine learning applications to predict two-phase flow patterns
title_sort machine learning applications to predict two-phase flow patterns
topic Algorithms and Analysis of Algorithms
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8641572/
https://www.ncbi.nlm.nih.gov/pubmed/34909465
http://dx.doi.org/10.7717/peerj-cs.798
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