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Physics-constrained Random Forests for Turbulence Model Uncertainty Estimation

23 June 2023
M. Matha
C. Morsbach
    AI4CE
ArXiv (abs)PDFHTML
Abstract

To achieve virtual certification for industrial design, quantifying the uncertainties in simulation-driven processes is crucial. We discuss a physics-constrained approach to account for epistemic uncertainty of turbulence models. In order to eliminate user input, we incorporate a data-driven machine learning strategy. In addition to it, our study focuses on developing an a priori estimation of prediction confidence when accurate data is scarce.

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