Galaxies (May 2024)

ALMA Band 3 Source Counts: A Machine Learning Approach to Contamination Mitigation below 5 Sigma

  • Ivano Baronchelli,
  • Matteo Bonato,
  • Gianfranco De Zotti,
  • Viviana Casasola,
  • Michele Delli Veneri,
  • Fabrizia Guglielmetti,
  • Elisabetta Liuzzo,
  • Rosita Paladino,
  • Leonardo Trobbiani,
  • Martin Zwaan

DOI
https://doi.org/10.3390/galaxies12030026
Journal volume & issue
Vol. 12, no. 3
p. 26

Abstract

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We performed differential number counts down to 4.25 sigma using ALMA Band 3 calibrator images, which are known for their high dynamic range and susceptibility to various types of contamination. Estimating the fraction of contaminants is an intricate process due to correlated non-Gaussian noise, and it is often compounded by the presence of false positives generated during the cleaning phase. In addition, calibrator extensions further complicate the counting of background sources. In order to address these challenges, our strategy employs a machine learning-based approach utilizing the UMLAUT algorithm. UMLAUT assigns a value to each detection, and it considers how likely it is for there to be a genuine background source or a contaminant. With respect to this goal, we provide UMLAUT with eight observational input parameters, each automatically weighted using a gradient descent method. Our methodology significantly improves the precision of differential number counts, thus surpassing conventional techniques, including visual inspection. This study contributes to a better understanding of radio sources, particularly in the challenging sub-5 sigma regime, within the complex context of a high dynamic range of ALMA calibrator images.

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