Development of a data-driven model for turbulent heat transfer in turbomachinery

Machine Learning (ML) algorithms have become popular in many fields, including applications related to turbomachinery and heat transfer. The key properties of ML are the capability to partially tackle the problem of slowing down of Moore’s law and to dig-out correlations within large datasets like t...

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Main Authors: Tucci Francesco Aldo, Delibra Giovanni, Corsini Alessandro
Format: Article
Language:English
Published: EDP Sciences 2020-01-01
Series:E3S Web of Conferences
Online Access:https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/57/e3sconf_ati2020_11006.pdf
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spelling doaj-403c78c39a0f4d2aa330b4fa358b3fdf2021-04-02T10:48:33ZengEDP SciencesE3S Web of Conferences2267-12422020-01-011971100610.1051/e3sconf/202019711006e3sconf_ati2020_11006Development of a data-driven model for turbulent heat transfer in turbomachineryTucci Francesco AldoDelibra GiovanniCorsini AlessandroMachine Learning (ML) algorithms have become popular in many fields, including applications related to turbomachinery and heat transfer. The key properties of ML are the capability to partially tackle the problem of slowing down of Moore’s law and to dig-out correlations within large datasets like those available on turbomachinery. Data come from experiments and simulations with different degree of accuracy, according to the test-rig or the CFD approach. When dealing with modelling of turbulent flows in turbomachinery there is a constant trade-off between accuracy and computational costs, but starting from the large amount of data on turbomachinery performance, with ML it is possible to train a learner to correct and improve CFD. The aim of this work is to investigate an innovative data-driven approach that could lead to a significant improvement in the analysis of heat transfer in turbulent flows. The effects of Reynolds number and wall temperature on heat transfer for a double forward-facing step with two squared obstacles were investigated by numerical simulations carried out in OpenFOAM. Then a machine-learnt model was derived using a regression algorithm. The results of regressor showed that a data-driven approach can effectively predict results of the RANS model.https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/57/e3sconf_ati2020_11006.pdf
collection DOAJ
language English
format Article
sources DOAJ
author Tucci Francesco Aldo
Delibra Giovanni
Corsini Alessandro
spellingShingle Tucci Francesco Aldo
Delibra Giovanni
Corsini Alessandro
Development of a data-driven model for turbulent heat transfer in turbomachinery
E3S Web of Conferences
author_facet Tucci Francesco Aldo
Delibra Giovanni
Corsini Alessandro
author_sort Tucci Francesco Aldo
title Development of a data-driven model for turbulent heat transfer in turbomachinery
title_short Development of a data-driven model for turbulent heat transfer in turbomachinery
title_full Development of a data-driven model for turbulent heat transfer in turbomachinery
title_fullStr Development of a data-driven model for turbulent heat transfer in turbomachinery
title_full_unstemmed Development of a data-driven model for turbulent heat transfer in turbomachinery
title_sort development of a data-driven model for turbulent heat transfer in turbomachinery
publisher EDP Sciences
series E3S Web of Conferences
issn 2267-1242
publishDate 2020-01-01
description Machine Learning (ML) algorithms have become popular in many fields, including applications related to turbomachinery and heat transfer. The key properties of ML are the capability to partially tackle the problem of slowing down of Moore’s law and to dig-out correlations within large datasets like those available on turbomachinery. Data come from experiments and simulations with different degree of accuracy, according to the test-rig or the CFD approach. When dealing with modelling of turbulent flows in turbomachinery there is a constant trade-off between accuracy and computational costs, but starting from the large amount of data on turbomachinery performance, with ML it is possible to train a learner to correct and improve CFD. The aim of this work is to investigate an innovative data-driven approach that could lead to a significant improvement in the analysis of heat transfer in turbulent flows. The effects of Reynolds number and wall temperature on heat transfer for a double forward-facing step with two squared obstacles were investigated by numerical simulations carried out in OpenFOAM. Then a machine-learnt model was derived using a regression algorithm. The results of regressor showed that a data-driven approach can effectively predict results of the RANS model.
url https://www.e3s-conferences.org/articles/e3sconf/pdf/2020/57/e3sconf_ati2020_11006.pdf
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AT corsinialessandro developmentofadatadrivenmodelforturbulentheattransferinturbomachinery
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