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ACAT1 benchmark of RANS-informed analytical methods for fan broadband noise prediction: Part I - influence of the RANS simulation

ACAT1 benchmark of RANS-informed analytical methods for fan broadband noise prediction: Part I - influence of the RANS simulation
ACAT1 benchmark of RANS-informed analytical methods for fan broadband noise prediction: Part I - influence of the RANS simulation
A benchmark of RANS-informed analytical methods, which are attractive for predicting fan broadband noise, was conducted within the framework of the European project TurboNoiseBB. This paper discusses the first part of the benchmark, which investigates the influence of the Reynolds-Averaged Navier-Stokes (RANS) inputs. Its companion paper focuses on the influence of the applied acoustic models on predicted fan broadband noise levels. While similar benchmarking activities were conducted in the past, this benchmark is unique due to its large and diverse data set involving members from more than ten institutions. In this work, the authors analyze RANS solutions performed at approach conditions for the ACAT1 fan. The RANS solutions were obtained using different CFD codes, mesh resolutions, and computational settings. The flow, turbulence, and resulting fan broadband noise predictions are analyzed to pinpoint critical influencing parameters related to the RANS inputs. Experimental data are used for comparison. It is shown that when turbomachinery experts perform RANS simulations using the same geometry and the same operating conditions, the most crucial choice in terms of predicted fan broadband noise is the turbulence model. Chosen mesh resolutions, CFD solvers, and other computational settings are less critical.
539-578
Kissner, Carolin
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Guérin, Sébastien
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Seeler, Pascal
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Billson, Mattias
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Paruchuri, Chaitanya
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Laraña, Pedro Carrasco
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Laborderie, Hélène de
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François, Benjamin
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Lefarth, Katharina
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Lewis, Danny
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Villar, Gonzalo Montero
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Nodé-Langlois, Thomas
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Kissner, Carolin
4ae965b4-29b3-475a-86d0-27bf93f4e11c
Guérin, Sébastien
b97f1039-1c2b-4e0b-9030-a348089d178c
Seeler, Pascal
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Billson, Mattias
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Paruchuri, Chaitanya
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Laraña, Pedro Carrasco
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Laborderie, Hélène de
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François, Benjamin
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Lefarth, Katharina
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Lewis, Danny
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Villar, Gonzalo Montero
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Nodé-Langlois, Thomas
13ac63a0-fa4e-4fc1-a36b-dba13a676c0f

Kissner, Carolin, Guérin, Sébastien, Seeler, Pascal, Billson, Mattias, Paruchuri, Chaitanya, Laraña, Pedro Carrasco, Laborderie, Hélène de, François, Benjamin, Lefarth, Katharina, Lewis, Danny, Villar, Gonzalo Montero and Nodé-Langlois, Thomas (2020) ACAT1 benchmark of RANS-informed analytical methods for fan broadband noise prediction: Part I - influence of the RANS simulation. Acoustics, 2 (3), 539-578. (doi:10.3390/acoustics2030029).

Record type: Article

Abstract

A benchmark of RANS-informed analytical methods, which are attractive for predicting fan broadband noise, was conducted within the framework of the European project TurboNoiseBB. This paper discusses the first part of the benchmark, which investigates the influence of the Reynolds-Averaged Navier-Stokes (RANS) inputs. Its companion paper focuses on the influence of the applied acoustic models on predicted fan broadband noise levels. While similar benchmarking activities were conducted in the past, this benchmark is unique due to its large and diverse data set involving members from more than ten institutions. In this work, the authors analyze RANS solutions performed at approach conditions for the ACAT1 fan. The RANS solutions were obtained using different CFD codes, mesh resolutions, and computational settings. The flow, turbulence, and resulting fan broadband noise predictions are analyzed to pinpoint critical influencing parameters related to the RANS inputs. Experimental data are used for comparison. It is shown that when turbomachinery experts perform RANS simulations using the same geometry and the same operating conditions, the most crucial choice in terms of predicted fan broadband noise is the turbulence model. Chosen mesh resolutions, CFD solvers, and other computational settings are less critical.

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Accepted/In Press date: 18 July 2020
e-pub ahead of print date: 22 July 2020

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Local EPrints ID: 442677
URI: http://eprints.soton.ac.uk/id/eprint/442677
PURE UUID: fc292e18-5308-42a6-95fc-00bf1f5b11b2

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Date deposited: 23 Jul 2020 16:30
Last modified: 16 Mar 2024 08:41

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Contributors

Author: Carolin Kissner
Author: Sébastien Guérin
Author: Pascal Seeler
Author: Mattias Billson
Author: Pedro Carrasco Laraña
Author: Hélène de Laborderie
Author: Benjamin François
Author: Katharina Lefarth
Author: Danny Lewis
Author: Gonzalo Montero Villar
Author: Thomas Nodé-Langlois

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