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Predictive RANS simulations via Bayesian Model-Scenario Averaging

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Figure

Figure 1: A schematic overview of a flat-plate turbulent boundary layer. Shown are the uniform inflow velocity ¯u ∞ , a schematic visualisation of the instantaneous flow field, and the averaged velocity ¯u 1 (x 2 )
Figure 2: Our experimental data set.
Figure 3: Experimental |β T | values for all flows but 1400 and 0141. Source [5].
Figure 4: Sobol indices of the considered turbulence models for flow case 1400.
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