Large-scale clustering of Lyman-alpha emission intensity from SDSS/BOSS
Rupert A.C. Croft, Jordi Miralda-Escud\'e, Zheng Zheng, Adam Bolton,, Kyle S. Dawson, Jeffrey B. Peterson, Donald G. York, Daniel Eisenstein, Jon, Brinkmann, Joel Brownstein, Timoth\'ee Delubac, Andreu Font-Ribera,, Jean-Christophe Hamilton, Khee-Gan Lee, Adam Myers, Nathalie

TL;DR
This study detects large-scale Lyman-alpha emission structure at redshifts 2-3.5 via cross-correlation with quasars, revealing that most Lya emission is from undetected sources and demonstrating the first optical intensity mapping application.
Contribution
It presents the first large-scale Lyman-alpha intensity mapping in the optical, measuring the cosmic Lya emission and star formation rate density at high redshift.
Findings
Detected Lya emission cross-correlation consistent with LambdaCDM model
Inferred high total Lya surface brightness and star formation rate density
Found redshift space anisotropy indicating radiative transfer effects
Abstract
(Abridged) We detect the large-scale structure of Lya emission in the Universe at redshifts z=2-3.5 by measuring the cross-correlation of Lya surface brightness with quasars in SDSS/BOSS. We use a million spectra targeting Luminous Red Galaxies at z<0.8, after subtracting a best fit model galaxy spectrum from each one, as an estimate of the high-redshift Lya surface brightness. The quasar-Lya emission cross-correlation we detect has a shape consistent with a LambdaCDM model with Omega_M =0.30^+0.10-0.07. The predicted amplitude of this cross-correlation is proportional to the product of the mean Lya surface brightness, <mu_alpha>, the amplitude of mass fluctuations, and the quasar and Lya emission bias factors. Using known values, we infer <mu_alpha>(b_alpha/3) = (3.9 +/- 0.9) x 10^-21 erg/s cm^-2 A^-1 arcsec^-2, where b_alpha is the Lya emission bias factor. If the dominant sources of…
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