Bulletin of the American Physical Society
71st Annual Meeting of the APS Division of Fluid Dynamics
Volume 63, Number 13
Sunday–Tuesday, November 18–20, 2018; Atlanta, Georgia
Session F32: Machine Learning and Data Driven Models I
8:00 AM–10:10 AM,
Monday, November 19, 2018
Georgia World Congress Center
Room: B404
Chair: Michael Brenner, Harvard University
Abstract ID: BAPS.2018.DFD.F32.4
Abstract: F32.00004 : Surrogate Modeling of High-Order Physics-Based Fluid Modeling Tools
8:39 AM–8:52 AM
Presenter:
Robert Zacharias
(GE Global Research)
Authors:
Nicholas Magina
(GE Global Research)
James Tallman
(GE Global Research)
Robert Zacharias
(GE Global Research)
A neural network surrogate modeling methodology was used to reproduce a two-dimensional flowfield distribution over a set of NACA airfoils. Once trained and validated, the surrogate model has the potential to generate subsequent CFD quality predictions in 5-6 orders of magnitude less computational effort, in terms of cpu*hours, than traditional methods. A suite of 250 RANS-based Computational Fluid Dynamics (CFD) solutions, for varying NACA airfoil shapes and angles of attacks, was utilized as training data to a machine learning algorithm. The resultant tuned surrogate model was validated, and the differences between the CFD and the surrogate model predictions were compared on a node-by-node basis for mean shift and standard deviation. For these validation cases, the average of these metrics was -7.230e-05 and 1.710e-03, respectively for the Mach number. The surrogate model was then applied to three specific engineering problem classes of interest: (1) initial guess / accelerated convergence of a CFD model, (2) generating derived quantities (pressure envelopes) and (3) optimization of the airfoil geometry toward an objective function. Conclusions and recommendations are reported as to the appropriateness of using the surrogate model towards expediting these problem classes.
To cite this abstract, use the following reference: http://meetings.aps.org/link/BAPS.2018.DFD.F32.4
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