Automated Mining of the ALMA Archive in the COSMOS Field (A3COSMOS): I. Robust ALMA Continuum Photometry Catalogs and Stellar Mass and Star Formation Properties for ~700 Galaxies at z=0.5-6
Daizhong Liu, P. Lang, B. Magnelli, E. Schinnerer, S. Leslie, Y., Fudamoto, M. Bondi, B. Groves, E. Jimenez-Andrade, K. Harrington, A. Karim,, P. Oesch, M. Sargent, E. Vardoulaki, T. Badescu, L. Moser, F. Bertoldi, A., Battisti, E. da Cunha, J. Zavala, M. Vaccari, I. Davidzon

TL;DR
This paper presents automated pipelines for mining the ALMA archive in the COSMOS field, producing robust photometry catalogs and galaxy properties for about 700 high-redshift galaxies, enhancing data usability for galaxy evolution studies.
Contribution
It introduces new automated tools for extracting and analyzing ALMA continuum data, providing large, reliable galaxy catalogs with derived physical properties.
Findings
Approximately 1000 (sub)millimeter detections with 8-12% spurious fraction.
Robust galaxy properties including redshift, stellar mass, and star formation rate for ~700 galaxies.
Public release of catalogs, images, and data products for community use.
Abstract
The rich information on (sub)millimeter dust continuum emission from distant galaxies in the public Atacama Large Millimeter/submillimeter Array (ALMA) archive is contained in thousands of inhomogeneous observations from individual PI-led programs. To increase the usability of these data for studies deepening our understanding of galaxy evolution, we have developed automated mining pipelines for the ALMA archive in the COSMOS field (A3COSMOS) that efficiently exploit the available information for large numbers of galaxies across cosmic time and keep the data products in sync with the increasing public ALMA archive: (a) a dedicated ALMA continuum imaging pipeline, (b) two complementary photometry pipelines for both blind source extraction and prior source fitting, (c) a counterpart association pipeline utilizing the multiwavelength data available (including quality assessment based on…
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