Sensors (Feb 2023)

3D Off-Grid Localization for Adjacent Cavitation Noise Sources Using Bayesian Inference

  • Minseuk Park,
  • Sufyan Ali Memon,
  • Geunhwan Kim,
  • Youngmin Choo

DOI
https://doi.org/10.3390/s23052628
Journal volume & issue
Vol. 23, no. 5
p. 2628

Abstract

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The propeller tip vortex cavitation (TVC) localization problem involves the separation of noise sources in proximity. This work describes a sparse localization method for off-grid cavitations to estimates their precise locations while keeping reasonable computational efficiency. It adopts two different grid (pairwise off-grid) sets with a moderate grid interval and provides redundant representations for adjacent noise sources. To estimate the position of the off-grid cavitations, a block-sparse Bayesian learning-based method is adopted for the pairwise off-grid scheme (pairwise off-grid BSBL), which iteratively updates the grid points using Bayesian inference. Subsequently, simulation and experimental results demonstrate that the proposed method achieves the separation of adjacent off-grid cavitations with reduced computational cost, while the other scheme suffers from a heavy computational burden; for the separation of adjacent off-grid cavitations, the pairwise off-grid BSBL took significantly less time (29 s) compared with the time taken by the conventional off-grid BSBL (2923 s).

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