The Completed SDSS-IV extended Baryon Oscillation Spectroscopic Survey: Growth rate of structure measurement from anisotropic clustering analysis in configuration space between redshift 0.6 and 1.1 for the Emission Line Galaxy sample
Am\'elie Tamone, Anand Raichoor, Cheng Zhao, Arnaud de Mattia, Claudio, Gorgoni, Etienne Burtin, Vanina Ruhlmann-Kleider, Ashley J. Ross, Shadab, Alam, Will J. Percival, Santiago Avila, Michael J. Chapman, Chia-Hsun Chuang,, Johan Comparat, Kyle S. Dawson, Sylvain de la Torre

TL;DR
This paper measures the growth rate of cosmic structure and distances at redshift 0.85 using anisotropic clustering of emission line galaxies from SDSS-IV eBOSS, confirming consistency with the standard cosmological model.
Contribution
First anisotropic clustering analysis of SDSS-IV eBOSS ELGs in configuration space, modeling systematics and radial constraints to measure key cosmological parameters.
Findings
Measured growth rate: fσ8(z=0.85)=0.35±0.10
Determined Hubble distance: D_H/r_d=19.1+1.9-2.1
Estimated angular diameter distance: D_M/r_d=19.9±1.0
Abstract
We present the anisotropic clustering of emission line galaxies (ELGs) from the Sloan Digital Sky Survey IV (SDSS-IV) extended Baryon Oscillation Spectroscopic Survey (eBOSS) Data Release 16 (DR16). Our sample is composed of 173,736 ELGs covering an area of 1170 deg over the redshift range . We use the Convolution Lagrangian Perturbation Theory in addition to the Gaussian Streaming Redshift-Space Distortions to model the Legendre multipoles of the anisotropic correlation function. We show that the eBOSS ELG correlation function measurement is affected by the contribution of a radial integral constraint that needs to be modelled to avoid biased results. To mitigate the effect from unknown angular systematics, we adopt a modified correlation function estimator that cancels out the angular modes from the clustering. At the effective redshift, ,…
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