Bubbly flow prediction with randomized neural cells artificial learning and fuzzy systems based on k–ε turbulence and Eulerian model data set

Abstract Computing gas and liquid interactions based on interfacial force models require a proper turbulence model that accurately resolve the turbulent scales such as turbulence kinetic energy and turbulence dissipation rate with cheap computational resources. The k −  ε turbulence model can be a g...

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Autores principales: Meisam Babanezhad, Mahboubeh Pishnamazi, Azam Marjani, Saeed Shirazian
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Publicado: Nature Portfolio 2020
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spelling oai:doaj.org-article:b72973b2e7e849de82b0c64fa4f199332021-12-02T18:50:43ZBubbly flow prediction with randomized neural cells artificial learning and fuzzy systems based on k–ε turbulence and Eulerian model data set10.1038/s41598-020-70672-02045-2322https://doaj.org/article/b72973b2e7e849de82b0c64fa4f199332020-08-01T00:00:00Zhttps://doi.org/10.1038/s41598-020-70672-0https://doaj.org/toc/2045-2322Abstract Computing gas and liquid interactions based on interfacial force models require a proper turbulence model that accurately resolve the turbulent scales such as turbulence kinetic energy and turbulence dissipation rate with cheap computational resources. The k −  ε turbulence model can be a good turbulence predictive tool to simulate velocity components in different phases and approximately picture the turbulence eddy structure. However, even this average turbulence method can be expensive for very large domains of calculation, particularly when the number of phases and spices increases in the multi-size structure Eulerian approach. In this study, with the ability of artificial learning, we accelerate the simulation of gas and liquid interaction in the bubble column reactor. The artificial learning method is based on adaptive neuro-fuzzy inference system (ANFIS) method, which is a combination of neural cells and fuzzy structure for making decision or prediction. The learning method is specifically used in a cartesian coordinate such as Eulerian approach, while for the prediction process, the polar coordinate is applied on a fully meshless domain of calculations. During learning process all information at computing nodes is randomly chosen to remove natural pattern learning behavior of neural network cells. In addition, different $$r$$ r and $$\theta$$ θ are used to test the ability of the learning stage during prediction. The results indicate that there is great agreement between ANFIS and turbulence modeling of bubbly flow within the Eulerian framework. ANFIS method shows that neural cells can grow in the domain to provide high-resolution results and they are not limited to the movement or deformation of source points such as Eulerian method. In addition, this study shows that mapping between two different geometrical structures is possible with the ANFIS method due to the meshless behavior of this algorithm. The meshless behavior causes the stability of the machine learning method, which is independent of CFD boundary conditions.Meisam BabanezhadMahboubeh PishnamaziAzam MarjaniSaeed ShirazianNature PortfolioarticleMedicineRScienceQENScientific Reports, Vol 10, Iss 1, Pp 1-12 (2020)
institution DOAJ
collection DOAJ
language EN
topic Medicine
R
Science
Q
spellingShingle Medicine
R
Science
Q
Meisam Babanezhad
Mahboubeh Pishnamazi
Azam Marjani
Saeed Shirazian
Bubbly flow prediction with randomized neural cells artificial learning and fuzzy systems based on k–ε turbulence and Eulerian model data set
description Abstract Computing gas and liquid interactions based on interfacial force models require a proper turbulence model that accurately resolve the turbulent scales such as turbulence kinetic energy and turbulence dissipation rate with cheap computational resources. The k −  ε turbulence model can be a good turbulence predictive tool to simulate velocity components in different phases and approximately picture the turbulence eddy structure. However, even this average turbulence method can be expensive for very large domains of calculation, particularly when the number of phases and spices increases in the multi-size structure Eulerian approach. In this study, with the ability of artificial learning, we accelerate the simulation of gas and liquid interaction in the bubble column reactor. The artificial learning method is based on adaptive neuro-fuzzy inference system (ANFIS) method, which is a combination of neural cells and fuzzy structure for making decision or prediction. The learning method is specifically used in a cartesian coordinate such as Eulerian approach, while for the prediction process, the polar coordinate is applied on a fully meshless domain of calculations. During learning process all information at computing nodes is randomly chosen to remove natural pattern learning behavior of neural network cells. In addition, different $$r$$ r and $$\theta$$ θ are used to test the ability of the learning stage during prediction. The results indicate that there is great agreement between ANFIS and turbulence modeling of bubbly flow within the Eulerian framework. ANFIS method shows that neural cells can grow in the domain to provide high-resolution results and they are not limited to the movement or deformation of source points such as Eulerian method. In addition, this study shows that mapping between two different geometrical structures is possible with the ANFIS method due to the meshless behavior of this algorithm. The meshless behavior causes the stability of the machine learning method, which is independent of CFD boundary conditions.
format article
author Meisam Babanezhad
Mahboubeh Pishnamazi
Azam Marjani
Saeed Shirazian
author_facet Meisam Babanezhad
Mahboubeh Pishnamazi
Azam Marjani
Saeed Shirazian
author_sort Meisam Babanezhad
title Bubbly flow prediction with randomized neural cells artificial learning and fuzzy systems based on k–ε turbulence and Eulerian model data set
title_short Bubbly flow prediction with randomized neural cells artificial learning and fuzzy systems based on k–ε turbulence and Eulerian model data set
title_full Bubbly flow prediction with randomized neural cells artificial learning and fuzzy systems based on k–ε turbulence and Eulerian model data set
title_fullStr Bubbly flow prediction with randomized neural cells artificial learning and fuzzy systems based on k–ε turbulence and Eulerian model data set
title_full_unstemmed Bubbly flow prediction with randomized neural cells artificial learning and fuzzy systems based on k–ε turbulence and Eulerian model data set
title_sort bubbly flow prediction with randomized neural cells artificial learning and fuzzy systems based on k–ε turbulence and eulerian model data set
publisher Nature Portfolio
publishDate 2020
url https://doaj.org/article/b72973b2e7e849de82b0c64fa4f19933
work_keys_str_mv AT meisambabanezhad bubblyflowpredictionwithrandomizedneuralcellsartificiallearningandfuzzysystemsbasedonketurbulenceandeulerianmodeldataset
AT mahboubehpishnamazi bubblyflowpredictionwithrandomizedneuralcellsartificiallearningandfuzzysystemsbasedonketurbulenceandeulerianmodeldataset
AT azammarjani bubblyflowpredictionwithrandomizedneuralcellsartificiallearningandfuzzysystemsbasedonketurbulenceandeulerianmodeldataset
AT saeedshirazian bubblyflowpredictionwithrandomizedneuralcellsartificiallearningandfuzzysystemsbasedonketurbulenceandeulerianmodeldataset
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