FLOW RECONSTRUCTION IN A TRANSONIC TURBINE CASCADE USING PHYSICS INFORMED NEURAL NETWORKS (PINNS)

被引:0
作者
McNichols, Ezra O. [1 ]
Juangphanich, Paht [1 ]
Hawke, Mallory S. [2 ]
Shoemaker, Ethan J. [3 ]
Poulson, Mackinnon J. [4 ]
Brandt, Meghan E. [1 ]
Bons, Jeffrey P. [5 ]
机构
[1] NASA Glenn Res Ctr, Cleveland, OH 44135 USA
[2] Johns Hopkins Univ, Appl Phys Lab, Laurel, MD 20723 USA
[3] Millennium Space Syst, El Segundo, CA 90245 USA
[4] Lockheed Martin, Denver, CO 80205 USA
[5] Ohio State Univ, Columbus, OH 43210 USA
来源
PROCEEDINGS OF ASME TURBO EXPO 2024: TURBOMACHINERY TECHNICAL CONFERENCE AND EXPOSITION, GT2024, VOL 12C | 2024年
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中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
This paper investigates the application of Physics-Informed Neural Networks (PINNs) for the analysis of turbine blades in a transonic cascade. The 2-D flow field in a transonic turbine cascade is reconstructed in three ways: the traditional forward approach (PINN not trained on experimental data), by training the PINN using discrete sets of experimentally measured pressure at midspan, and in the inverse sense where no inlet or outlet pressure boundary conditions are applied. Comparisons between the PINN solutions to measured data are made. This is repeated for three different turbine blades with distinct loading characteristics. Good agreement is shown between a CFD calculation of the CMC7 blade, and the PINN model trained with all data. 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. The forward problem results deviate the most from experimental data but show promise. Solutions from the assisted training cases show that the PINN can reconstruct the flow field with acceptable accuracy when trained on measurements along the entire blade. In the inverse case, it is shown that to simultaneously achieve acceptable errors for inlet Mach number and outlet isentropic Mach number, the PINN must be trained on the static pressure data along the entire blade.
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页数:12
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