Detection of the large-scale tidal field with galaxy multiplet alignment in the DESI Y1 spectroscopic survey
Claire Lamman, Daniel Eisenstein, Jaime E. Forero-Romero, Jessica, Nicole Aguilar, Steven Ahlen, Stephen Bailey, Davide Bianchi, David Brooks,, Todd Claybaugh, Axel de la Macorra, Peter Doel, Simone Ferraro, Andreu, Font-Ribera, Enrique Gazta\~naga, Satya Gontcho A Gontcho

TL;DR
This paper detects large-scale tidal field effects through galaxy multiplet alignments in DESI Y1 data, revealing a new method that surpasses traditional galaxy shape measurements and extends to higher redshifts.
Contribution
It introduces a novel estimator based on galaxy multiplet alignments to probe the large-scale tidal field, applicable beyond redshift 1 and independent of galaxy shape imaging.
Findings
Detection of multiplet intrinsic alignment up to 100 Mpc/h
Similar scale dependence across different galaxy types
Mock catalogues show a 33% lower amplitude than observations
Abstract
We explore correlations between the orientations of small galaxy groups, or "multiplets", and the large-scale gravitational tidal field. Using data from the Dark Energy Spectroscopic Instrument (DESI) Y1 survey, we detect the intrinsic alignment (IA) of multiplets to the galaxy-traced matter field out to separations of 100 Mpc/h. Unlike traditional IA measurements of individual galaxies, this estimator is not limited by imaging of galaxy shapes and allows for direct IA detection beyond redshift z = 1. Multiplet alignment is a form of higher-order clustering, for which the scale-dependence traces the underlying tidal field and amplitude is a result of small-scale (< 1 Mpc/h) dynamics. Within samples of bright galaxies (BGS), luminous red galaxies (LRG) and emission-line galaxies (ELG), we find similar scale-dependence regardless of intrinsic luminosity or colour. This is promising for…
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