Quantifying and reducing model-form uncertainties in Reynolds-averaged Navier–Stokes simulations: A data-driven, physics-informed Bayesian approach
Heng Xiao(Virginia Tech), Christopher J. Roy(Virginia Tech), Rui Sun(Virginia Tech), Jinlong Wu(Virginia Tech), Jianxun Wang(Kunming University of Science and Technology)
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