LyMAS: Predicting Large-Scale Lyman-alpha Forest Statistics from the Dark Matter Density Field
S\'ebastien Peirani, David H. Weinberg, St\'ephane Colombi, J\'er\'emy, Blaizot, Yohan Dubois, Christophe Pichon

TL;DR
LyMAS is a novel method that predicts large-scale Ly-alpha forest statistics from dark matter simulations by calibrating with high-resolution hydrodynamic simulations, enabling accurate modeling of the intergalactic medium for cosmological studies.
Contribution
LyMAS introduces a calibration-based approach to accurately predict Ly-alpha forest clustering statistics from dark matter simulations, improving upon previous deterministic methods.
Findings
Accurately reproduces flux power spectrum and distribution from hydro simulations.
Predicts flux correlations and redshift-space distortions effectively.
Enables large-volume mock spectra for cosmological analysis.
Abstract
[abridged] We describe LyMAS (Ly-alpha Mass Association Scheme), a method of predicting clustering statistics in the Ly-alpha forest on large scales from moderate resolution simulations of the dark matter distribution, with calibration from high-resolution hydrodynamic simulations of smaller volumes. We use the "Horizon MareNostrum" simulation, a 50 Mpc/h comoving volume evolved with the adaptive mesh hydrodynamic code RAMSES, to compute the conditional probability distribution P(F_s|delta_s) of the transmitted flux F_s, smoothed (1-dimensionally) over the spectral resolution scale, on the dark matter density contrast delta_s, smoothed (3-dimensionally) over a similar scale. In this study we adopt the spectral resolution of the SDSS-III BOSS at z=2.5, and we find optimal results for a dark matter smoothing length sigma=0.3 Mpc/h (comoving). In extended form, LyMAS exactly reproduces…
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