We present BAM: a novel Bias Assignment Method envisaged to generate mock catalogs. Combining the statistics of dark matter tracers from a high resolution cosmological N-body simulation and the dark matter density field calculated from down-sampled initial conditions using efficient structure formation solvers, we extract the halo-bias relation on a mesh of a 3h−1 Mpc cell side resolution as a function of properties of the dark matter density field (e.g. local density, cosmic web type), automatically including stochastic, deterministic, local and non-local components. We use this information to sample the halo density field, accounting for ignored dependencies through an iterative process. By construction, our approach reaches ∼1% accuracy in the majority of the k-range up to the Nyquist frequency without systematic deviations for power spectra (about k∼1h Mpc−1) using either particle mesh or Lagrangian perturbation theory based solvers. When using phase-space mapping to compensate the low resolution of the approximate gravity solvers, our method reproduces the bispectra of the reference within 10% precision studying configurations tracing the quasi-nonlinear regime. BAM has the potential to become a standard technique to produce mock halo and galaxy catalogs for future galaxy surveys and cosmological studies being highly accurate, efficient and parameter free.
@article{arxiv.1806.05870,
title = {BAM: Bias Assignment Method to generate mock catalogs},
author = {A. Balaguera-Antolínez and Francisco-Shu Kitaura and Marcos Pellerejo-Ibañez and Cheng Zhao and Tom Abel},
journal= {arXiv preprint arXiv:1806.05870},
year = {2018}
}
Comments
6 pages. 3 figures. Accepted for publication in MNRAS letters