Modelling the impact of quasar redshift errors on the full-shape analysis of correlations in the Lyman-α forest.
/ Authors
Calum Gordon, A. Cuceu, A. Font-Ribera, H. Herrera-Alcantar, Jessica Nicole Aguilar Steven Ahlen, D. Bianchi, D. Brooks, T. Claybaugh, S. Cole, A. de la Macorra
and 37 more authors
B. Dey, P. Doel, J. Forero-Romero, E. Gaztañaga, S. Gontcho, G. Gutierrez, J. Guy, K. Honscheid, M. Ishak, R. Kehoe, D. Kirkby, T. Kisner, A. Kremin, M. Landriau, L. Le Guillou, M. Levi, M. Manera, P. Martini, R. Miquel, J. Moustakas, S. Nadathur, G. Niz, N. Palanque-Delabrouille, W. Percival, F. Prada, I. Pérez-Ràfols, G. Rossi, E. Sanchez, D. Schlegel, M. Schubnell, H. Seo, J. Silber, D. Sprayberry, G. Tarl'e, B. Weaver, R. Zhou, H. Zou
/ Abstract
In preparation for the first cosmological measurements from the full shape of the Lyman-α (Lyα) forest from DESI, we must carefully model all relevant systematics that might bias our analysis. It was shown in Youles et al. (2022) that random quasar redshift errors produce a smoothing effect on the mean quasar continuum in the Lyα forest region. This, in turn, gives rise to spurious features in the Lyα autocorrelation and its cross-correlation with quasars. Using synthetic data sets based on the DESI survey, we confirm that the impact on BAO measurements is small, but that a bias is introduced to parameters which depend on the full shape of our correlations. We combine a model of this contamination in the cross-correlation (Youles et al. 2022) with a new model we introduce here for the auto-correlation. These are parametrised by 3 parameters, which, when included in a joint fit to both correlation functions, successfully eliminate any impact of redshift errors on our full-shape constraints. We also present a strategy for removing this contamination from real data, by removing ∼0.3% of correlating pairs.
Journal: Monthly Notices of the Royal Astronomical Society