NASA Logo

NTRS

NTRS - NASA Technical Reports Server

Back to Results
Tuning Neural Network Models for Improved Prediction of Boundary Layer TransitionBoundary layer transition can strongly impact flight vehicle performance as it influences surface skin friction and aerodynamic heating, making accurate transition prediction a key to designing next generation aircraft. Artificial neural networks (ANNs) have shown promise toward predicting laminar-turbulent transition based on linear stability correlations. The computational efficiency of ANNs and the substantially reduced user involvement in relation to direct computations based on the linear stability theory (LST) makes them an attractive methodology for integrating the LST based correlations in computational fluid dynamics codes. Tollmien-Schlichting (TS) waves correspond to the dominant transition mechanism in 2D or weakly 3D subsonic boundary layers, such as those encountered in general aviation applications. Improvements to neural network model accuracy in predicting the amplification rates of TS instability waves have been investigated by leveraging recent machine learning developments in conjunction with surrogate optimization techniques and via suitable augmentation of the data used to train the networks. The optimized models trained on the modified dataset reduced the average transition location errors on different airfoils at several flow conditions by 51% of the original manually-tuned network’s errors on the same flow cases. The actual transition locations were derived from the Langley Stability and Transition Analysis Code (LASTRAC).
Document ID
20205000994
Acquisition Source
Langley Research Center
Document Type
Presentation
Authors
Tomas Osses
(Universities Space Research Association Columbia, Maryland, United States)
Date Acquired
April 16, 2020
Publication Date
April 29, 2020
Publication Information
Subject Category
Aerodynamics
Computer Programming And Software
Meeting Information
Meeting: Spring Interns 2020 Exit Deliverable Presentations
Location: Hampton, Virginia
Country: US
Start Date: April 29, 2020
End Date: April 29, 2020
Sponsors: Langley Research Center
Funding Number(s)
CONTRACT_GRANT: NNX13AJ46A
WBS: 109492.02.07.01.0
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Keywords
Machine Learning
Hyper-parameter Optimization
Boundary Layer Transition
No Preview Available