Simulations of BAO reconstruction with a quasar Lyman-alpha survey
J.-M. Le Goff, C. Magneville, E. Rollinde, S. Peirani, P. Petitjean,, C. Pichon, J. Rich, C. Yeche, E. Aubourg, N. Busca, R. Charlassier, T., Delubac, J.C. Hamilton, N. Palanque Delabrouille, I. Paris, M. Vargas

TL;DR
This study uses simulations to evaluate how well the BOSS quasar survey can measure BAO scales through Lyman-alpha forest data, accounting for uncertainties like quasar spectra.
Contribution
It introduces a method to simulate realistic Lyman-alpha forest data using Gaussian random fields validated against N-body simulations for BAO scale estimation.
Findings
BOSS survey can measure BAO scale with about 2.3% error
Errors on unabsorbed quasar spectrum increase BAO measurement uncertainty by 10-20%
BAO detection significance varies from 2 to 35 in different realizations
Abstract
The imprint of Baryonic Acoustic Oscillations (BAO) on the matter power spectrum can be constrained using the neutral hydrogen density in the intergalactic medium as a tracer of the matter density. One of the goals of the Baryon Oscillation Spectroscopic Survey (BOSS) of the Sloan Digital Sky Survey (SDSS-III) is to derive the Hubble expansion rate and the angular scale from the BAO signal in the IGM. To this aim, the Lyman-alpha forest of 10^5 quasars will be observed in the redshift range 2.2<z<3.5 and over 10,000 deg^2. We simulated the BOSS QSO survey to estimate the statistical accuracy on the BAO scale determination provided by such a large scale survey. In particular, we discuss the effect of the poorly constrained estimate of the unabsorbed intrinsic quasar spectrum. The volume of current N-body simulations being too small for such studies, we resorted to Gaussian random field…
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