Airfoil Computational Fluid Dynamics - 9k shapes, 2 AoA's
This dataset contains aerodynamic quantities - including flow field values (momentum, energy, and vorticity) and summary values (coefficients of lift, drag, and momentum) - for 8,996 airfoil shapes, computed using the HAM2D CFD (computational fluid dynamics) model. The airfoil shapes were designed using the separable shape tensor parameterization that encodes two-dimensional shapes as elements of the Grassmann manifold. This data-driven approach learns two independent spaces of parameter from a collection of sample airfoils. The first captures large-scale, linear perturbations, and the second defines small-scale, higher-order perturbations. For this data, we used the G2Aero database of over 19,000 airfoil shapes to learn a parameter space that captured a wide array of shape characteristics. We fixed the linear deformations to be the mean over the database and sampled new shapes over a four-dimensional parameter space of higher-order perturbation. This sampling approaches allows for isolated analysis of non-linear airfoil shape deformations while holding other aspects (e.g., airfoil thickness) approximately constant.
The aerodynamic quantities for the generated airfoil were obtained using the HAM2D code, which is a finite-volume Reynolds-averaged Navier-Stokes (RANS) flow solver. We employ a fifth-order WENO scheme for spatial reconstruction with Roe's flux difference scheme for inviscid flux and second-order central differencing for viscous flux. A preconditioned GMRES method is applied for implicit integration. The Spalart-Allmaras 1-eq turbulence model is used for the turbulence closure, and the Medida-Baeder 2-eq transition model is applied to account for the effects of laminar turbulent transition. The airfoil grid is generated with a total of 400 points on the airfoil surface, the initial wall-normal spacing of y+ = 1, and an outer boundary located at 300 chord lengths away from the wall. The CFD simulations are performed at a freestream Mach number of 0.1, Reynolds number of 9M, and at two angles of attack, 4 deg. and 12 deg.
The simulations were performed using the Bridges-2 system at the Pittsburgh Supercomputing Center in February 2023 as part of the INTEGRATE project funded by the Advanced Research Projects Agency - Energy in the U.S. Department of Energy. The data was collected, reformatted, and preprocessed for this OEDI submission in July 2023 under the Foundational AI for Wind Energy project funded by the U.S. Department of Energy Wind Energy Technologies Office. This dataset is intended to serve as a benchmark against which new artificial intelligence (AI) or machine learning (ML) tools may be tested. Baseline AI/ML methods for analyzing this dataset have been implemented, and a link to their repository containing those models has been provided.
The .h5 data file structure can be found in the GitHub Repository resource under explore_airfoil_9k_data.ipynb.
Citation Formats
National Renewable Energy Laboratory (NREL). (2023). Airfoil Computational Fluid Dynamics - 9k shapes, 2 AoA's [data set]. Retrieved from https://dx.doi.org/10.25984/2222587.
Ramos, Dakota, Glaws, Andrew, King, Ryan, Lee, Bumseok, Doronina, Olga, Baeder, James, Vijayakumar, Ganesh, and Grey, Zachary. Airfoil Computational Fluid Dynamics - 9k shapes, 2 AoA's. United States: N.p., 10 Feb, 2023. Web. doi: 10.25984/2222587.
Ramos, Dakota, Glaws, Andrew, King, Ryan, Lee, Bumseok, Doronina, Olga, Baeder, James, Vijayakumar, Ganesh, & Grey, Zachary. Airfoil Computational Fluid Dynamics - 9k shapes, 2 AoA's. United States. https://dx.doi.org/10.25984/2222587
Ramos, Dakota, Glaws, Andrew, King, Ryan, Lee, Bumseok, Doronina, Olga, Baeder, James, Vijayakumar, Ganesh, and Grey, Zachary. 2023. "Airfoil Computational Fluid Dynamics - 9k shapes, 2 AoA's". United States. https://dx.doi.org/10.25984/2222587. https://data.openei.org/submissions/5889.
@div{oedi_5889, title = {Airfoil Computational Fluid Dynamics - 9k shapes, 2 AoA's}, author = {Ramos, Dakota, Glaws, Andrew, King, Ryan, Lee, Bumseok, Doronina, Olga, Baeder, James, Vijayakumar, Ganesh, and Grey, Zachary.}, abstractNote = {This dataset contains aerodynamic quantities - including flow field values (momentum, energy, and vorticity) and summary values (coefficients of lift, drag, and momentum) - for 8,996 airfoil shapes, computed using the HAM2D CFD (computational fluid dynamics) model. The airfoil shapes were designed using the separable shape tensor parameterization that encodes two-dimensional shapes as elements of the Grassmann manifold. This data-driven approach learns two independent spaces of parameter from a collection of sample airfoils. The first captures large-scale, linear perturbations, and the second defines small-scale, higher-order perturbations. For this data, we used the G2Aero database of over 19,000 airfoil shapes to learn a parameter space that captured a wide array of shape characteristics. We fixed the linear deformations to be the mean over the database and sampled new shapes over a four-dimensional parameter space of higher-order perturbation. This sampling approaches allows for isolated analysis of non-linear airfoil shape deformations while holding other aspects (e.g., airfoil thickness) approximately constant.
The aerodynamic quantities for the generated airfoil were obtained using the HAM2D code, which is a finite-volume Reynolds-averaged Navier-Stokes (RANS) flow solver. We employ a fifth-order WENO scheme for spatial reconstruction with Roe's flux difference scheme for inviscid flux and second-order central differencing for viscous flux. A preconditioned GMRES method is applied for implicit integration. The Spalart-Allmaras 1-eq turbulence model is used for the turbulence closure, and the Medida-Baeder 2-eq transition model is applied to account for the effects of laminar turbulent transition. The airfoil grid is generated with a total of 400 points on the airfoil surface, the initial wall-normal spacing of y+ = 1, and an outer boundary located at 300 chord lengths away from the wall. The CFD simulations are performed at a freestream Mach number of 0.1, Reynolds number of 9M, and at two angles of attack, 4 deg. and 12 deg.
The simulations were performed using the Bridges-2 system at the Pittsburgh Supercomputing Center in February 2023 as part of the INTEGRATE project funded by the Advanced Research Projects Agency - Energy in the U.S. Department of Energy. The data was collected, reformatted, and preprocessed for this OEDI submission in July 2023 under the Foundational AI for Wind Energy project funded by the U.S. Department of Energy Wind Energy Technologies Office. This dataset is intended to serve as a benchmark against which new artificial intelligence (AI) or machine learning (ML) tools may be tested. Baseline AI/ML methods for analyzing this dataset have been implemented, and a link to their repository containing those models has been provided.
The .h5 data file structure can be found in the GitHub Repository resource under explore_airfoil_9k_data.ipynb.}, doi = {10.25984/2222587}, url = {https://data.openei.org/submissions/5889}, journal = {}, number = , volume = , place = {United States}, year = {2023}, month = {02}}
https://dx.doi.org/10.25984/2222587
Details
Data from Feb 10, 2023
Last updated Jan 2, 2024
Submitted Oct 13, 2023
Organization
National Renewable Energy Laboratory (NREL)
Contact
Ryan King
Authors
Research Areas
Keywords
energy, power, airfoil, computational fluid dynamics, CFD, wind, wind energy, wind blade, airfoil shape, shape, aerodynamics, 9k, Foundational AI for Wind Energy, machine learning, ML, artificial intelligence, AI, HAM2D CFD model, data, benchmark, wind power, wind turbine, simulation, RANS, processed dataDOE Project Details
Project Name Foundational AI for Wind Energy
Project Number FY23 AOP 1.3.0.403