Galaxy Velocity Bias in Cosmological Simulations: Towards Percent-level Calibration
Dhayaa Anbajagane, Han Aung, August E. Evrard, Arya Farahi, Daisuke, Nagai, David J. Barnes, Weiguang Cui, Klaus Dolag, Ian G. McCarthy, Elena, Rasia, Gustavo Yepes

TL;DR
This paper calibrates galaxy velocity bias across simulations to improve galaxy cluster mass estimates, achieving percent-level accuracy and reducing uncertainties significantly, aiding cosmological measurements.
Contribution
It provides a precise calibration of galaxy velocity bias as a function of key parameters using multiple simulations, with improved methods and publicly available estimates.
Findings
Velocity bias increases with halo mass and decreases with redshift.
The calibration reduces mass normalization uncertainty from 22% to 8%.
Simulations show consistent trends in velocity bias across different models.
Abstract
Galaxy cluster masses, rich with cosmological information, can be estimated from internal dark matter (DM) velocity dispersions, which in turn can be observationally inferred from satellite galaxy velocities. However, galaxies are biased tracers of the DM, and the bias can vary over host halo and galaxy properties as well as time. We precisely calibrate the velocity bias, b_v -- defined as the ratio of galaxy and DM velocity dispersions -- as a function of redshift, host halo mass, and galaxy stellar mass threshold (Mstarsat), for massive halos (M200c > 1e13.5 msun) from five cosmological simulations: IllustrisTNG, Magneticum, Bahamas + Macsis, The Three Hundred Project, and MultiDark Planck-2. We first compare scaling relations for galaxy and DM velocity dispersion across simulations; the former is estimated using a new ensemble velocity likelihood method that is unbiased for low…
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