Convolutional Neural Networks For Turbulent Model Uncertainty Quantification
Complex turbulent flow simulations are an integral aspect of the engineering design process. The mainstay of these simulations is represented by eddy viscosity based turbulence models. Eddy viscosity models are computationally cheap due to their underlying simplifications, but their predictions are...
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Main Authors | , |
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Format | Journal Article |
Language | English |
Published |
13.08.2024
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Subjects | |
Online Access | Get full text |
DOI | 10.48550/arxiv.2408.06864 |
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Summary: | Complex turbulent flow simulations are an integral aspect of the engineering
design process. The mainstay of these simulations is represented by eddy
viscosity based turbulence models. Eddy viscosity models are computationally
cheap due to their underlying simplifications, but their predictions are also
subject to structural errors. At the moment, the only method available to
forecast these uncertainties is the Eigenspace Perturbation Method. This
method's strictly physics-based approach frequently results in unreasonably
high uncertainty bounds, which drive the creation of extremely cautious
designs. To tackle this problem, we employ a strategy based on deep learning.
In order to control the perturbations, our trained deep learning models
forecast the appropriate amount of disturbance to apply to the anticipated
Reynolds stresses. A Convolutional Neural Network is used to carry out this,
and it is trained to distinguish between high fidelity data, which is a mapping
of flow characteristics, and model projections based on eddy viscosity. |
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DOI: | 10.48550/arxiv.2408.06864 |