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DESI DR1 Ly$α$ 1D power spectrum: Validation of estimators

DESI Collaboration, E. Gaztañaga, S. Nadathur

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Abstract

The Data Release 1 (DR1) of the Dark Energy Spectroscopic Instrument (DESI) is the largest sample to date for small-scale Lyα forest cosmology, accessed through its one-dimensional power spectrum (P1D). The Lyα forest P1D is extracted from quasar spectra that are highly inhomogeneous (both in wavelength and between quasars) in noise properties due to intrinsic properties of the quasar, atmospheric and astrophysical contamination, and also sensitive to low-level details of the spectral extraction pipeline. We employ two estimators in DR1 analysis to measure P1D: the optimal estimator and the fast Fourier transform (FFT) estimator. To ensure robustness of our DR1 measurements, we validate these two power spectrum and covariance matrix estimation methodologies against the challenging aspects of the data. First, using a set of 20 synthetic 1D realizations of DR1, we derive the masking bias corrections needed for the FFT estimator and the continuum fitting bias needed for both estimators. We demonstrate that both estimators, including their covariances, are unbiased with these corrections using the Kolmogorov-Smirnov test. Second, we substantially extend our previous suite of CCD image simulations to include 675,000 quasars, allowing us to accurately quantify the pipeline's performance. This set of simulations reveals biases at the highest k values, corresponding to a resolution error of a few percent. We base the resolution systematics error budget of DR1 P1D on these values, but do not derive corrections from them since the simulation fidelity is insufficient for precise corrections.
Original languageEnglish
Article number048
Number of pages32
JournalJournal of Cosmology and Astroparticle Physics
Volume2026
Issue number04
DOIs
Publication statusPublished - 16 Apr 2026

Keywords

  • astro-ph.CO
  • Lyman alpha forest
  • power spectrum

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