ELG Spectroscopic Systematics Analysis of the DESI Data Release 1
Jiaxi Yu, Ashley J. Ross, Antoine Rocher, Ot\'avio Alves, Arnaud de, Mattia, Daniel Forero-S\'anchez, Jean-Paul Kneib, Alex Krolewski, TingWen, Lan, Michael Rashkovetskyi, Jessica Nicole Aguilar, Steven Ahlen, Stephen, Bailey, David Brooks, Edmond Chaussidon, Todd Claybaugh

TL;DR
This paper analyzes spectroscopic systematics in DESI's ELG data, developing correction methods, characterizing catastrophic failures and redshift uncertainties, and assessing their impact on large-scale structure measurements.
Contribution
It introduces new correction techniques for spectroscopic systematics in ELG data and evaluates their effects on cosmological analyses.
Findings
Catastrophic failures constitute 0.26% of ELGs and are simulated for bias assessment.
Redshift uncertainties have an 8.5 km/s Lorentzian profile, minimally affecting RSD parameters.
Corrections reduce systematic biases, ensuring reliable large-scale structure measurements.
Abstract
Dark Energy Spectroscopic Instrument (DESI) uses more than 2.4 million Emission Line Galaxies (ELGs) for 3D large-scale structure (LSS) analyses in its Data Release 1 (DR1). Such large statistics enable thorough research on systematic uncertainties. In this study, we focus on spectroscopic systematics of ELGs. The redshift success rate () is the relative fraction of secure redshifts among all measurements. It depends on observing conditions, thus introduces non-cosmological variations to the LSS. We, therefore, develop the redshift failure weight () and a per-fibre correction () to mitigate these dependences. They have minor influences on the galaxy clustering. For ELGs with a secure redshift, there are two subtypes of systematics: 1) catastrophics (large) that only occur in a few samples; 2) redshift uncertainty (small) that exists for…
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