Evaluation of machine learning algorithms for prediction of regions of high Reynolds averaged Navier Stokes uncertainty
Top Cited Papers
- 1 August 2015
- journal article
- research article
- Published by AIP Publishing in Physics of Fluids
- Vol. 27 (8) , 085103
- https://doi.org/10.1063/1.4927765
Abstract
Reynolds Averaged Navier Stokes (RANS) models are widely used in industry to predict fluid flows, despite their acknowledged deficiencies. Not only do RANS models often produce inaccurate flow predictions, but there are very limited diagnostics available to assess RANS accuracy for a given flow configuration. If experimental or higher fidelity simulation results are not available for RANS validation, there is no reliable method to evaluate RANS accuracy. This paper explores the potential of utilizing machine learning algorithms to identify regions of high RANS uncertainty. Three different machine learning algorithms were evaluated: support vector machines, Adaboost decision trees, and random forests. The algorithms were trained on a database of canonical flow configurations for which validated direct numerical simulation or large eddy simulation results were available, and were used to classify RANS results on a point-by-point basis as having either high or low uncertainty, based on the breakdown of specific RANS modeling assumptions. Classifiers were developed for three different basic RANS eddy viscosity model assumptions: the isotropy of the eddy viscosity, the linearity of the Boussinesq hypothesis, and the non-negativity of the eddy viscosity. It is shown that these classifiers are able to generalize to flows substantially different from those on which they were trained. Feature selection techniques, model evaluation, and extrapolation detection are discussed in the context of turbulence modeling applications.Keywords
Funding Information
- Sandia National Laboratories, National Nuclear Security Administration
This publication has 43 references indexed in Scilit:
- Bayesian uncertainty analysis with applications to turbulence modelingReliability Engineering & System Safety, 2011
- A numerical study of scalar dispersion downstream of a wall-mounted cube using direct simulations and algebraic flux modelsInternational Journal of Heat and Fluid Flow, 2010
- A numerical study of algebraic flux models for heat and mass transport simulation in complex flowsInternational Journal of Heat and Mass Transfer, 2010
- On the non-local geometry of turbulenceJournal of Fluid Mechanics, 2008
- SmcHD1, containing a structural-maintenance-of-chromosomes hinge domain, has a critical role in X inactivationNature Genetics, 2008
- Random Forest: A Classification and Regression Tool for Compound Classification and QSAR ModelingJournal of Chemical Information and Computer Sciences, 2003
- An explicit algebraic Reynolds stress model for incompressible and compressible turbulent flowsJournal of Fluid Mechanics, 2000
- Development and application of a cubic eddy-viscosity model of turbulenceInternational Journal of Heat and Fluid Flow, 1996
- Support-vector networksMachine Learning, 1995
- Turbulent channel and Couette flows using an anisotropic k-epsilon modelAIAA Journal, 1987