GOODS-ALMA 2.0: Source catalog, number counts, and prevailing compact sizes in 1.1 mm galaxies
C. G\'omez-Guijarro, D. Elbaz, M. Xiao, M. B\'ethermin, M. Franco, B., Magnelli, E. Daddi, M. Dickinson, R. Demarco, H. Inami, W. Rujopakarn, G. E., Magdis, X. Shu, R. Chary, L. Zhou, D. M. Alexander, F. Bournaud, L. Ciesla,, H. C. Ferguson, S. L. Finkelstein, M. Giavalisco

TL;DR
This paper presents an improved ALMA survey of 1.1mm galaxies, revealing that most dusty star-forming galaxies have compact dust emission regions, with sizes evolving with redshift and stellar mass, and demonstrating the survey's enhanced sensitivity and coverage.
Contribution
The study provides a homogeneous, combined low and high resolution ALMA dataset over a large area, significantly increasing detected sources and refining measurements of dust continuum sizes in 1.1mm galaxies.
Findings
Most galaxies have compact dust emission regions with median size ~0.73 kpc.
Dust sizes evolve with redshift and stellar mass, similar to optical stellar sizes.
Sources brighter than 1mJy are predominantly compact at 1.1mm.
Abstract
Submillimeter/millimeter observations of dusty star-forming galaxies with the Atacama Large Millimeter/submillimeter Array (ALMA) have shown that dust continuum emission generally occurs in compact regions smaller than the stellar distribution. However, it remains to be understood how systematic these findings are. Studies often lack homogeneity in the sample selection, target discontinuous areas with inhomogeneous sensitivities, and suffer from modest coverage coming from single array configurations. GOODS-ALMA is a 1.1mm galaxy survey over a continuous area of 72.42arcmin at a homogeneous sensitivity. In this version 2.0, we present a new low resolution dataset and its combination with the previous high resolution dataset from the survey, improving the coverage and sensitivity reaching an average of Jy beam. A total of 88 galaxies are detected in…
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