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Trailing edge noise prediction based on wall pressure spectrum models for NACA0012 airfoil

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Abstract This paper compares several approaches for the prediction of the noise emitted by a NACA0012 airfoil at 0 ∘ and 4 ∘ of angle of attack and a Reynolds… Click to show full abstract

Abstract This paper compares several approaches for the prediction of the noise emitted by a NACA0012 airfoil at 0 ∘ and 4 ∘ of angle of attack and a Reynolds number R e = 1.5 × 10 6 . Amiet's semi-analytical model for trailing-edge noise is combined with two-dimensional Reynolds-Averaged Navier-Stokes (RANS) computations. The wall-pressure spectrum, which constitutes the cornerstone of Amiet's model, is obtained by processing the boundary layer data extracted from the simulations. The specific contribution of the paper is a comparison of two families of prediction methods: semi-empirical wall-pressure models that are fitted to experimental databases, and statistical approaches based on the integration of the Poisson equation across the boundary layer profile. The semi-empirical models that were calibrated on airfoil databases provide better predictions with experiments, while the models based on flat-plate boundary layer data fail to reproduce the measured spectra. Considering the statistical approach, it was shown to predict the general spectral features, but with an overall under-prediction of about 3 dB. It can be concluded from this study that the statistical approach proves indeed more robust than semi-empirical models when the latter were not precisely calibrated for the flow under consideration. Further improvements of the statistical approach are suggested for future work.

Keywords: trailing edge; edge noise; naca0012 airfoil; prediction; wall pressure

Journal Title: Journal of Wind Engineering and Industrial Aerodynamics
Year Published: 2018

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