Prediction of Reynolds stresses in high-Mach-number turbulent boundary layers using physics-informed machine learning
Jianxun Wang(University of Notre Dame), Heng Xiao(University of Stuttgart), Junji Huang(Missouri University of Science and Technology), Lian Duan(Missouri University of Science and Technology)
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