Dark Energy Survey Year 3 Results: Galaxy Sample for BAO Measurement
A. Carnero Rosell, M. Rodriguez-Monroy, M. Crocce, J. Elvin-Poole, A., Porredon, I. Ferrero, J. Mena-Fernandez, R. Cawthon, J. De Vicente, E., Gaztanaga, A.J. Ross, E. Sanchez, I. Sevilla-Noarbe, O. Alves, F., Andrade-Oliveira, J. Asorey, S. Avila, A. Brandao-Souza, H. Camacho

TL;DR
This paper details the creation and validation of a galaxy sample from DES Y3 data optimized for BAO analysis, including redshift estimation, contamination control, and systematic mitigation, to improve cosmological measurements.
Contribution
It introduces a new galaxy sample selection, validation methods, and systematic correction techniques specifically designed for BAO measurements in DES Y3 data.
Findings
Sample contains over 7 million galaxies with accurate photometric redshifts.
Low stellar contamination of less than 4%.
Effective mitigation of observational systematics for robust clustering analysis.
Abstract
In this paper we present and validate the galaxy sample used for the analysis of the Baryon Acoustic Oscillation signal (BAO) in the Dark Energy Survey (DES) Y3 data. The definition is based on a colour and redshift-dependent magnitude cut optimized to select galaxies at redshifts higher than 0.5, while ensuring a high quality photometric redshift determination. The sample covers square degrees to a depth of at . It contains 7,031,993 galaxies in the redshift range from = 0.6 to 1.1, with a mean effective redshift of 0.835. Photometric redshifts are estimated with the machine learning algorithm DNF, and are validated using the VIPERS PDR2 sample. We find a mean redshift bias of and a mean uncertainty, in units of , of . We evaluate the galaxy population of the sample, showing it…
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