LAPSE:2023.13284
Published Article

LAPSE:2023.13284
Data-Driven Calibration of Rough Heat Transfer Prediction Using Bayesian Inversion and Genetic Algorithm
March 1, 2023
Abstract
The prediction of heat transfers in Reynolds-Averaged Navier−Stokes (RANS) simulations requires corrections for rough surfaces. The turbulence models are adapted to cope with surface roughness impacting the near-wall behaviour compared to a smooth surface. These adjustments in the models correctly predict the skin friction but create a tendency to overpredict the heat transfers compared to experiments. These overpredictions require the use of an additional thermal correction model to lower the heat transfers. Finding the correct numerical parameters to best fit the experimental results is non-trivial, since roughness patterns are often irregular. The objective of this paper is to develop a methodology to calibrate the roughness parameters for a thermal correction model for a rough curved channel test case. First, the design of the experiments allows the generation of metamodels for the prediction of the heat transfer coefficients. The polynomial chaos expansion approach is used to create the metamodels. The metamodels are then successively used with a Bayesian inversion and a genetic algorithm method to estimate the best set of roughness parameters to fit the available experimental results. Both calibrations are compared to assess their strengths and weaknesses. Starting with unknown roughness parameters, this methodology allows calibrating them and obtaining between 4.7% and 10% of average discrepancy between the calibrated RANS heat transfer prediction and the experimental results. The methodology is promising, showing the ability to finely select the roughness parameters to input in the numerical model to fit the experimental heat transfer, without an a priori knowledge of the actual roughness pattern.
The prediction of heat transfers in Reynolds-Averaged Navier−Stokes (RANS) simulations requires corrections for rough surfaces. The turbulence models are adapted to cope with surface roughness impacting the near-wall behaviour compared to a smooth surface. These adjustments in the models correctly predict the skin friction but create a tendency to overpredict the heat transfers compared to experiments. These overpredictions require the use of an additional thermal correction model to lower the heat transfers. Finding the correct numerical parameters to best fit the experimental results is non-trivial, since roughness patterns are often irregular. The objective of this paper is to develop a methodology to calibrate the roughness parameters for a thermal correction model for a rough curved channel test case. First, the design of the experiments allows the generation of metamodels for the prediction of the heat transfer coefficients. The polynomial chaos expansion approach is used to create the metamodels. The metamodels are then successively used with a Bayesian inversion and a genetic algorithm method to estimate the best set of roughness parameters to fit the available experimental results. Both calibrations are compared to assess their strengths and weaknesses. Starting with unknown roughness parameters, this methodology allows calibrating them and obtaining between 4.7% and 10% of average discrepancy between the calibrated RANS heat transfer prediction and the experimental results. The methodology is promising, showing the ability to finely select the roughness parameters to input in the numerical model to fit the experimental heat transfer, without an a priori knowledge of the actual roughness pattern.
Record ID
Keywords
Bayesian inversion, calibration, Computational Fluid Dynamics, data-driven analysis, Genetic Algorithm, rough heat transfers
Subject
Suggested Citation
Ignatowicz K, Solaï E, Morency F, Beaugendre H. Data-Driven Calibration of Rough Heat Transfer Prediction Using Bayesian Inversion and Genetic Algorithm. (2023). LAPSE:2023.13284
Author Affiliations
Ignatowicz K: Mechanical Engineering Department, École de Technologie Supérieure, Montréal, QC H3C1K3, Canada [ORCID]
Solaï E: Institut National de Recherche en Informatique et en Automatique (INRIA), F-33405 Talence, France
Morency F: Mechanical Engineering Department, École de Technologie Supérieure, Montréal, QC H3C1K3, Canada [ORCID]
Beaugendre H: University Bordeaux, INRIA, CNRS, Bordeaux INP, IMB, UMR 5251, F-33400 Talence, France
Solaï E: Institut National de Recherche en Informatique et en Automatique (INRIA), F-33405 Talence, France
Morency F: Mechanical Engineering Department, École de Technologie Supérieure, Montréal, QC H3C1K3, Canada [ORCID]
Beaugendre H: University Bordeaux, INRIA, CNRS, Bordeaux INP, IMB, UMR 5251, F-33400 Talence, France
Journal Name
Energies
Volume
15
Issue
10
First Page
3793
Year
2022
Publication Date
2022-05-21
ISSN
1996-1073
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Original Submission
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PII: en15103793, Publication Type: Journal Article
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LAPSE:2023.13284
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https://doi.org/10.3390/en15103793
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