Neural Network-Based Hypersonic Crossflow Transition Model
Bryan Barraza,
Andreas Gross,
Madlen Leinemann
et al.
Abstract:A model is proposed for predicting crossflow transition in hypersonic flows. The model is based on transport equations for the crossflow amplification factor and a modified intermittency. The instability onset is estimated with a correlation function. The form of the transport equations is identical to that of typical transport equations for Reynolds-averaged Navier–Stokes (RANS) turbulence models, thus facilitating an easy integration into existing RANS codes. The crossflow amplification factor is estimated f… Show more
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