Deep Learning-Based Approach for Acoustic Source Localization in Turbulent Flows

Auteurs-es

  • Arnav Joshi University of Waterloo, CA
  • Jean-Pierre Hickey University of Waterloo

Résumé

Detection of acoustic sources in turbulent flows is an important part of the study of aeroacoustic noise. Passive Acoustic Source Localization is a method that uses the pressure fluctuations recorded by a microphone array to triangulate the location of the source. An application of Passive Acoustic Source Localization in the area of aeroacoustics is the detection of aircraft wakes. Aircraft wakes are responsible for causing wake turbulence thus airports must factor in the time it takes for the wakes to dissipate. A robust and accurate method for the detection of these wakes could result in increased efficiency and throughput for airports all around the world. Aircraft wakes are characterized by wake vortices that have been shown to emit characteristic noise that generally lies in the low-frequency range (100-500 Hz). The low-frequency nature of the noise causes traditional methods such as Acoustic Beamforming to fail. In this work, we tackled the problem of low-frequency, Passive Acoustic Source Localization using a Deep Learning-based approach. Deep Learning algorithms have found application in a wide range of domains including Acoustic Source Localization (ASL) due to their ability to extract features from limited or unstructured data. We simulated various test cases and models to test the viability of this approach. The architectures used in the models were Convolutional Neural Networks (CNN) and feed-forward Artificial Neural Networks (ANN). The choice of architecture was governed by the nature of the input feature. The test cases included two-dimensional ASL for detecting sources on the horizon or on a scanning plane parallel to the microphone array plane, three-dimensional ASL, and moving source detection. The results show much promise and are testimony to the viability of the approach, thus giving the incentive to build a real-life ASL framework for the detection of acoustic sources in turbulent flows.

Fichiers supplémentaires

Publié-e

2023-10-09

Comment citer

1.
Joshi A, Hickey J-P. Deep Learning-Based Approach for Acoustic Source Localization in Turbulent Flows. Canadian Acoustics [Internet]. 9 oct. 2023 [cité 13 mai 2026];51(3):74-5. Disponible à: https://jcaa.caa-aca.ca/index.php/jcaa/article/view/4070

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Rubrique

Actes du congrès de la Semaine canadienne d'acoustique

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