A search for candidate strongly-lensed dusty galaxies in the Planck satellite catalogues
Tiziana Trombetti, Carlo Burigana, Matteo Bonato, Diego Herranz,, Gianfranco De Zotti, Mattia Negrello, Vincenzo Galluzzi, Marcella Massardi

TL;DR
This paper develops a method to identify strongly-lensed dusty galaxies in Planck data by using their unique sub-mm color signatures, significantly increasing the number of known candidates for detailed galaxy evolution studies.
Contribution
The authors introduce a novel color-based selection technique that enhances the detection of candidate strongly-lensed galaxies in Planck catalogues, improving identification efficiency by a factor of 3-4.
Findings
Identified 177, 97, 104 lensed candidates at 545, 857, 353 GHz.
Estimated 30%-40% efficiency in detecting true lensed galaxies.
Predicted 150-190 such sources across the sky with |b|>20°.
Abstract
The Planck sub-mm surveys detected the brightest strongly gravitationally lensed dusty galaxies in the sky. The combination of their extreme gravitational flux boosting and image stretching offers the unique possibility of measuring in detail, via high-resolution imaging and spectroscopic follow-up, the galaxy structure and kinematics in early evolutionary phases, thus gaining otherwise unaccessible direct information on physical processes in action. The extraction of candidate strongly lensed galaxies (SLGs) from Planck catalogues is hindered by the fact that they are generally detected with poor S/N, except for the few brightest ones, their photometric properties are strongly blurred and they are difficult to single out. We devised a method to increase by a factor of 3 to 4 the number of identified Planck-detected SLGs, although with an unavoidably limited efficiency. Our approach…
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