X-ray properties of radio-selected star forming galaxies in the Chandra-COSMOS survey
P. Ranalli (1,2,3), A. Comastri (3), G. Zamorani (3), N. Cappelluti, (3), F. Civano (4), I. Georgantopoulos (2,3), R. Gilli (3), E. Schinnerer, (5), V. Smolcic (6,7,8,9), C. Vignali (1) ((1) Universit\`a di Bologna, (2), National Observatory of Athens

TL;DR
This study evaluates X-ray and multiwavelength classification methods for star forming galaxies in the Chandra-COSMOS survey, analyzing their properties, refining selection criteria, and comparing results with other surveys to improve galaxy identification.
Contribution
It provides a detailed assessment of classification schemes for star forming galaxies using X-ray data, and explores their X-ray properties and evolution in the COSMOS survey.
Findings
X-ray based criteria refine galaxy and AGN samples effectively.
The radio/X-ray luminosity ratio for star forming galaxies is consistent with local universe values.
X-ray number counts of star forming galaxies are compared across surveys.
Abstract
X-ray surveys contain sizable numbers of star forming galaxies, beyond the AGN which usually make the majority of detections. Many methods to separate the two populations are used in the literature, based on X-ray and multiwavelength properties. We aim at a detailed test of the classification schemes and to study the X-ray properties of the resulting samples. We build on a sample of galaxies selected at 1.4 GHz in the VLA-COSMOS survey, classified by Smolcic et al. (2008) according to their optical colours and observed with Chandra. A similarly selected control sample of AGN is also used for comparison. We review some X-ray based classification criteria and check how they affect the sample composition. The efficiency of the classification scheme devised by Smolcic et al. (2008) is such that ~30% of composite/misclassified objects are expected because of the higher X-ray brightness of…
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