Euclid preparation. XXI. Intermediate-redshift contaminants in the search for $z>6$ galaxies within the Euclid Deep Survey
Euclid Collaboration: S. E. van Mierlo (1), K. I. Caputi (1, 2), M., Ashby (3), H. Atek (4), M. Bolzonella (5), R. A. A. Bowler (6, 7), G., Brammer (2, 8), C. J. Conselice (6), J. Cuby (9), P. Dayal (1), A., D\'iaz-S\'anchez (10), S. L. Finkelstein (11), H. Hoekstra (12)

TL;DR
This study evaluates the effectiveness of Euclid data in identifying z>6 galaxies and assesses contamination from intermediate-redshift galaxies, demonstrating high recovery rates and the importance of supplementary photometry for accurate selection.
Contribution
It provides a comprehensive analysis of contamination levels and selection strategies for z>6 galaxies using Euclid data combined with ancillary photometry.
Findings
High z>6 galaxy recovery rate of 91-88% with Euclid data alone.
Contamination from intermediate-redshift galaxies can be reduced to 1-13% with additional photometry.
Colour criteria can effectively separate contaminants for bright galaxies, but are less feasible for faint ones.
Abstract
(Abridged) The Euclid mission is expected to discover thousands of z>6 galaxies in three Deep Fields, which together will cover a ~40 deg2 area. However, the limited number of Euclid bands and availability of ancillary data could make the identification of z>6 galaxies challenging. In this work, we assess the degree of contamination by intermediate-redshift galaxies (z=1-5.8) expected for z>6 galaxies within the Euclid Deep Survey. This study is based on ~176,000 real galaxies at z=1-8 in a ~0.7 deg2 area selected from the UltraVISTA ultra-deep survey, and ~96,000 mock galaxies with 25.3H<27.0, which altogether cover the range of magnitudes to be probed in the Euclid Deep Survey. We simulate Euclid and ancillary photometry from the fiducial, 28-band photometry, and fit spectral energy distributions (SEDs) to various combinations of these simulated data. Our study demonstrates that…
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