Automatic source localization and spectra generation from sparse
beamforming maps
- URL: http://arxiv.org/abs/2012.09643v3
- Date: Fri, 9 Apr 2021 09:40:55 GMT
- Title: Automatic source localization and spectra generation from sparse
beamforming maps
- Authors: Armin Goudarzi, Carsten Spehr, Steffen Herbold
- Abstract summary: This paper presents two methods which enable the automated identification of aeroacoustic sources in sparse beamforming maps.
The methods are evaluated on two scaled airframe half-model wind tunnel measurements.
- Score: 7.444673919915048
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Beamforming is an imaging tool for the investigation of aeroacoustic
phenomena and results in high dimensional data that is broken down to spectra
by integrating spatial Regions Of Interest. This paper presents two methods
which enable the automated identification of aeroacoustic sources in sparse
beamforming maps and the extraction of their corresponding spectra to overcome
the manual definition of Regions Of Interest. The methods are evaluated on two
scaled airframe half-model wind tunnel measurements. The first relies on the
spatial normal distribution of aeroacoustic broadband sources in sparse
beamforming maps. The second uses hierarchical clustering methods. Both methods
are robust to statistical noise and predict the existence, location and spatial
probability estimation for sources based on which Regions Of Interests are
automatically determined.
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