데이터셋 상세
폴란드
Fusioncopter Sp. z o.o. - ANALIZA WYNIKÓW OBLICZEŃ ZA POMOCA METODY CFD CHARAKTERYSTYK AERODYNAMICZNYCH PŁATOWCA WIATRAKOWCA WIELOMODUŁOWEGO
,ANALIZA WYNIKÓW OBLICZEŃ ZA POMOCA METODY CFD CHARAKTERYSTYK AERODYNAMICZNYCH PŁATOWCA WIATRAKOWCA WIELOMODUŁOWEGO,
연관 데이터
Fusioncopter Sp. z o.o. - ZAŁĄCZNIK DO RAPORTU Nr FC.w02m.DOB.JBR.052.ver1 pt. „OBLICZENIA PORÓWNAWCZE PARAMETRÓW LOTNYCH WIATRAKOWCA WIELOMODUŁOWEGO Z RÓŻNYMI WIRNIKAMI Silniki rotax 915 iS”
공공데이터포털
,ZAŁĄCZNIK DO RAPORTU Nr FC.w02m.DOB.JBR.052.ver1 pt. „OBLICZENIA PORÓWNAWCZE PARAMETRÓW LOTNYCH WIATRAKOWCA WIELOMODUŁOWEGO Z RÓŻNYMI WIRNIKAMI Silniki rotax 915 iS”,
Fusioncopter Sp. z o.o. - Charakterystyki aerodynamiczne śmigła
공공데이터포털
,Charakterystyki aerodynamiczne śmigła,
Fusioncopter Sp. z o.o. - OBLICZENIA OBCIĄŻEŃ ŁOPATY WIRNIKA NOŚNEGO DLA PRZYPADKU KOŁOWANIA WIATRAKOWCA PO NIERÓWNYM TERENIE.
공공데이터포털
,OBLICZENIA OBCIĄŻEŃ ŁOPATY WIRNIKA NOŚNEGO DLA PRZYPADKU KOŁOWANIA WIATRAKOWCA PO NIERÓWNYM TERENIE.,
Fusioncopter Sp. z o.o. - WYZNACZENIE NAJKORZYSTNIEJSZEJ GEOMETRII WIRNIKA NOŚNEGO W KONFIGURACJI Z DWOMA WIRNIKAMI TYPU HUŚTAWKA
공공데이터포털
,WYZNACZENIE NAJKORZYSTNIEJSZEJ GEOMETRII WIRNIKA NOŚNEGO W KONFIGURACJI Z DWOMA WIRNIKAMI TYPU HUŚTAWKA,
Fusioncopter Sp. z o.o. - Walidacja programu XFLR5
공공데이터포털
,Walidacja programu XFLR5,
Fusioncopter Sp. z o.o. - Stateczność stateczna z profilem RUS-mod
공공데이터포털
,Stateczność stateczna z profilem RUS,
Airfoil Computational Fluid Dynamics - 2k shapes, 25 AoA's, 3 Re numbers
공공데이터포털
This dataset contains aerodynamic quantities - including flow field values (momentum, energy, and vorticity) and summary values (coefficients of lift, drag, and momentum) - for 1,830 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 dataset, 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 sampled airfoil designs over both parameter spaces to explore the full range of possible shape variations. 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, for or three different Reynolds' numbers (3M, 6M, and 9M), and for 25 angles of attack from -4 deg. to 20 deg. with 1 degree increments. Across all these various parameters, this dataset includes the results from over 250,000 CFD simulations. 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_2k_data.ipynb.
Turbulence Models: Data from Other Experiments: CFD Validation of Synthetic Jets and Turbulent Separation Control
공공데이터포털
CFD Validation of Synthetic Jets and Turbulent Separation Control. This web page provides data from experiments that may be useful for the validation of turbulence models. This resource is expected to grow gradually over time. All data herein arepublicly available.
Turbulence Models: Data from Other Experiments: CFD Validation of Synthetic Jets and Turbulent Separation Control
공공데이터포털
CFD Validation of Synthetic Jets and Turbulent Separation Control. This web page provides data from experiments that may be useful for the validation of turbulence models. This resource is expected to grow gradually over time. All data herein arepublicly available.