COLDz: Shape of the CO Luminosity Function at High Redshift and the Cold Gas History of the Universe
Dominik A. Riechers (1,2), Riccardo Pavesi (1), Chelsea E. Sharon, (1,3,4), Jacqueline A. Hodge (5), Roberto Decarli (2,6), Fabian Walter (2,7),, Christopher L. Carilli (7,8), Manuel Aravena (9), Elisabete da Cunha (10),, Emanuele Daddi (11), Mark Dickinson (12), Ian Smail (13)

TL;DR
This study measures the shape of the CO luminosity function at high redshift, revealing insights into the cold gas content and its evolution over cosmic time, with implications for understanding galaxy formation and star formation history.
Contribution
First detailed measurement of the high-redshift CO luminosity function using extensive VLA observations, providing new insights into cold gas evolution and challenging existing models.
Findings
CO luminosity function's bright end is higher than semi-analytical predictions.
Cold gas density increases from z~0 to z~2-3, then possibly declines at higher redshifts.
Results support the link between cold molecular gas content and cosmic star-formation rate history.
Abstract
We report the first detailed measurement of the shape of the CO luminosity function at high redshift, based on 320 hr of the NSF's Karl G. Jansky Very Large Array (VLA) observations over an area of 60 arcmin taken as part of the CO Luminosity Density at High Redshift (COLDz) survey. COLDz "blindly" selects galaxies based on their cold gas content through CO(=10) emission at 2-3 and CO(=21) at 5-7 down to a CO luminosity limit of log(/K km s pc)9.5. We find that the characteristic luminosity and bright end of the CO luminosity function are substantially higher than predicted by semi-analytical models, but consistent with empirical estimates based on the infrared luminosity function at 2. We also present the currently most reliable measurement of the cosmic density of cold gas in galaxies at early…
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