Euclid preparation. XCII. Controlling angular systematics in the Euclid spectroscopic galaxy sample
Euclid Collaboration: P. Monaco (1, 2, 3, 4, 5), M. Y. Elkhashab (2, 3, 1, 4), B. R. Granett (6), J. Salvalaggio (2, 4, 1, 3), E. Sefusatti (2, 4, 3), C. Scarlata (7), B. Zabelle (7), M. Bethermin (8), S. Bruton (9), C. Carbone (10), S. de la Torre (11), S. Dusini (12)

TL;DR
This paper details a strategy for identifying and mitigating angular systematics in the Euclid spectroscopic galaxy survey, ensuring accurate galaxy clustering and cosmological measurements.
Contribution
It introduces a method to construct a random catalogue based on a detection model to correct for angular systematics in galaxy surveys.
Findings
Galaxy power spectrum can be recovered with sub-percent accuracy using the random catalogue.
Power spectrum measurements are stable even with approximate knowledge of the visibility mask.
Parameter estimation remains robust despite large-scale effects of systematics.
Abstract
We present the strategy used to identify and mitigate potential sources of angular systematics in the \textit{Euclid} spectroscopic galaxy survey, and we quantify their impact on galaxy clustering measurements and cosmological parameter estimation. We first surveyed the \textit{Euclid} processing pipeline to identify all evident, potential sources of systematics, and classified them into two broad classes: angular systematics, which modulate the galaxy number density across the sky, and catastrophic redshift errors, which lead to interlopers in the galaxy sample. We then used simulated spectroscopic surveys to test our ability to mitigate angular systematics by constructing a random catalogue that represents the `visibility mask' of the survey; this is a dense set of intrinsically unclustered objects, subject to the same selection effects as the data catalogue. The construction of this…
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