NIKA2 Cosmological Legacy Survey: Blind detection of galaxy clusters in the COSMOS field via the Sunyaev-Zel'dovich effect
D. Ch\'erouvrier, J.F. Macias-Perez, F.X. D\'esert, R. Adam, P. Ade, H. Ajeddig, S. Amarantidis, P. Andr\'e, H. Aussel, R. Barrena, A. Beelen, A. Benoit, S. Berta, M. B\'ethermin, A. Bongiovanni, J. Bounmy, O. Bourrion, L. -J. Bing, M. Calvo, A. Catalano, M. De Petris, S. Doyle

TL;DR
This paper presents the first blind detection of galaxy clusters at millimeter wavelengths with high angular resolution using NIKA2 data, demonstrating its capability to identify low-mass, high-redshift clusters in the COSMOS field.
Contribution
The study develops a dedicated data reduction pipeline and a matched-filter detection algorithm, enabling blind identification of galaxy clusters via the Sunyaev-Zel'dovich effect at 18" resolution.
Findings
Detected 16 cluster candidates with S/N > 4
Eight candidates have optical or X-ray counterparts
Confirmed NIKA2's sensitivity to low-mass, high-redshift clusters
Abstract
(Abridged) Clusters of galaxies, formed in the latest stages of structure formation, are unique cosmological probes. With the advent of large CMB surveys like those from the Planck satellite, the ACT and SPT telescopes, we now have access to a large number of galaxy clusters detected at millimeter wavelengths via the thermal Sunyaev-Zel'dovich (tSZ) effect. Nevertheless, it is interesting to complement them with high-angular-resolution (tens of arcseconds) observations to target the lowest-mass and highest-redshift clusters. This is the case of observations with the NIKA2 camera, which is installed on the IRAM 30--m telescope in Pico Veleta, Spain. We used the existing 150 GHz (2 mm) data from the NIKA2 Cosmological Legacy Survey (N2CLS) Large Program to blindly search for galaxy clusters in the well-known COSMOS field, across a 877 arcmin region centered on (R.A., Dec.) =…
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