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GT2024-128885: Flow Reconstruction in a Transonic Turbine Cascade using Physics-Informed Neural Networks (PINNs)This presentation investigates the application of Physics-Informed Neural Networks (PINNs) for the analysis of turbine blades in a transonic cascade. PINNs are a machine learning method trained on losses calculated from reconstructed governing equations, assigned boundary/initial conditions, and measured data. We reconstruct the 2-D flow field in a transonic turbine cascade in two ways: the traditional forward approach (without training/experimental data) and by training the PINN using experimental data. We then compare the PINN solutions to measured data. This is repeated for three different turbine blades with distinct loading characteristics. The experimental data used for training is the static pressure measurements along the suction and pressure sides of each blade. The PINN is trained utilizing all available data, half the available data, data from only the leading edge region, and data from only the trailing edge region. It's shown that the PINN can reconstruct the flow field in all cases with acceptable errors. Cases where the PINN is trained on all the data, and even half the data, resulted in the lowest errors. The exit Mach number is inferred for each case and compared to the experimentally calculated value.
Document ID
20240007881
Acquisition Source
Glenn Research Center
Document Type
Presentation
Authors
Ezra O. McNichols
(Glenn Research Center Cleveland, United States)
Paht Juangphanich
(Glenn Research Center Cleveland, United States)
Mallory S. Hawke
(Johns Hopkins University Applied Physics Laboratory North Laurel, United States)
Ethan J. Shoemaker
(Millennium Space Systems)
Mackinnon J. Poulson
(Lockheed Martin (United States) Bethesda, United States)
Meghan E. Brandt
(Glenn Research Center Cleveland, United States)
Jeffrey P. Bons
(The Ohio State University Columbus, United States)
Date Acquired
June 21, 2024
Subject Category
Aircraft Propulsion and Power
Report/Patent Number
GT-2024-128885
Meeting Information
Meeting: Turbomachinery Technical Conference & Exposition (Turbo Expo 2024)
Location: London, England
Country: GB
Start Date: June 24, 2024
End Date: June 28, 2024
Sponsors: American Society of Mechanical Engineers
Funding Number(s)
WBS: 081876.02.03.50.19.02
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Technical Review
Single Expert
Keywords
Machine Learning
Turbine
Cascade
Aerodynamics
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