Uncertainty quantification and identification of SST turbulence model parameters based on Bayesian optimization algorithm in supersonic flow
Published 2023 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
Uncertainty quantification and identification of SST turbulence model parameters based on Bayesian optimization algorithm in supersonic flow
Authors
Keywords
-
Journal
INTERNATIONAL JOURNAL FOR NUMERICAL METHODS IN FLUIDS
Volume -, Issue -, Pages -
Publisher
Wiley
Online
2023-11-03
DOI
10.1002/fld.5245
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- Investigations on Turbulence Model Uncertainty for Hypersonic Shock-Wave/Boundary-Layer Interaction Flows
- (2022) Jin-ping Li et al. AIAA JOURNAL
- Bayesian parameter estimation of SST model for shock wave-boundary layer interaction flows with different strengths
- (2022) Denggao Tang et al. Chinese Journal of Aeronautics
- Effect of turbulence model uncertainty on scramjet strut injector flow field analysis
- (2021) Martin A. Di Stefano et al. COMPUTERS & FLUIDS
- Uncertainty analysis and calibration of SST turbulence model for free shear layer in cavity-ramp flow
- (2021) Kai-ling Zhang et al. ACTA ASTRONAUTICA
- Bayesian uncertainty analysis of SA turbulence model for supersonic jet interaction simulations
- (2021) Jinping LI et al. Chinese Journal of Aeronautics
- Application of flux vector splitting methods with SST turbulence model to wall-bounded flows
- (2020) K. Manokaran et al. COMPUTERS & FLUIDS
- An efficient approach for quantifying parameter uncertainty in the SST turbulence model
- (2019) Jincheng Zhang et al. COMPUTERS & FLUIDS
- On developing data-driven turbulence model for DG solution of RANS
- (2019) Liang SUN et al. Chinese Journal of Aeronautics
- Quantification of model uncertainty in RANS simulations: A review
- (2019) Heng Xiao et al. PROGRESS IN AEROSPACE SCIENCES
- Shape optimization for the noise induced by the flow over compact bluff bodies
- (2019) Wagner José Gonçalves da Silva Pinto et al. COMPUTERS & FLUIDS
- An efficient Bayesian uncertainty quantification approach with application to k - ω - γ transition modeling
- (2018) Jincheng Zhang et al. COMPUTERS & FLUIDS
- Particle swarm optimization algorithm: an overview
- (2017) Dongshu Wang et al. SOFT COMPUTING
- On the Statistical Calibration of Physical Models
- (2015) K. Sargsyan et al. INTERNATIONAL JOURNAL OF CHEMICAL KINETICS
- Cavity-based flameholding for chemically-reacting supersonic flows
- (2015) Frank W. Barnes et al. PROGRESS IN AEROSPACE SCIENCES
- Bayesian estimates of parameter variability in the k–ε turbulence model
- (2013) W.N. Edeling et al. JOURNAL OF COMPUTATIONAL PHYSICS
- Bayesian uncertainty analysis with applications to turbulence modeling
- (2011) Sai Hung Cheung et al. RELIABILITY ENGINEERING & SYSTEM SAFETY
- Point-Collocation Nonintrusive Polynomial Chaos Method for Stochastic Computational Fluid Dynamics
- (2010) Serhat Hosder et al. AIAA JOURNAL
- Uncertainty Quantification and Polynomial Chaos Techniques in Computational Fluid Dynamics
- (2008) Habib N. Najm Annual Review of Fluid Mechanics
Find the ideal target journal for your manuscript
Explore over 38,000 international journals covering a vast array of academic fields.
SearchAdd your recorded webinar
Do you already have a recorded webinar? Grow your audience and get more views by easily listing your recording on Peeref.
Upload Now