Bulletin of the American Physical Society
77th Annual Meeting of the Division of Fluid Dynamics
Sunday–Tuesday, November 24–26, 2024; Salt Lake City, Utah
Session X15: Low-Order Modeling and Machine Learning in Fluid Dynamics: Turbulence Modeling I
8:00 AM–10:10 AM,
Tuesday, November 26, 2024
Room: 155 E
Chair: Leixin Ma, Arizona State University
Abstract: X15.00004 : RANN: A Neural RANS Closure Model for Physics-Informed Machine Learning on General Geometries
8:39 AM–8:52 AM
Presenter:
Matthew Uffenheimer
(FluidAI)
Authors:
Matthew Uffenheimer
(FluidAI)
Luca Rigazio
(FluidAI)
Eckart Heinz Meiburg
(University of California, Santa Barbara)
We propose the Reynolds-Averaging Neural Network (RANN), a neural network based RANS closure model to speed up these design loops. RANN is able to produce a fast inference model for RANS solutions which produces accurate results on unseen geometries nearly instantly. We leverage time-tested fluid dynamics modeling ideas in a physics-informed machine learning regime, combined with novel deep learning architectures to enable generalization to geometries outside the training set. This allows practitioners to quickly and exhaustively explore the design space of an aerodynamic optimization problem. We present an implementation of the neural inference model, a demonstration of the results, and an empirical comparison to state of the art methods.
Follow Us |
Engage
Become an APS Member |
My APS
Renew Membership |
Information for |
About APSThe American Physical Society (APS) is a non-profit membership organization working to advance the knowledge of physics. |
© 2024 American Physical Society
| All rights reserved | Terms of Use
| Contact Us
Headquarters
1 Physics Ellipse, College Park, MD 20740-3844
(301) 209-3200
Editorial Office
100 Motor Pkwy, Suite 110, Hauppauge, NY 11788
(631) 591-4000
Office of Public Affairs
529 14th St NW, Suite 1050, Washington, D.C. 20045-2001
(202) 662-8700