Tracing cosmic voids with fast simulations
M. D. Lepinzan, C. T. Davies, T. Castro, N. Schuster, J. Mohr, P. Monaco

TL;DR
This paper evaluates the accuracy of the PINOCCHIO semi-analytic code in modeling cosmic voids by comparing its void statistics to those from detailed N-body simulations, demonstrating high reliability and efficiency.
Contribution
It validates PINOCCHIO's effectiveness in reproducing cosmic void statistics, offering a faster alternative to traditional N-body simulations.
Findings
PINOCCHIO matches void statistics from N-body simulations within 2σ.
No systematic differences in void properties across redshifts.
PINOCCHIO provides reliable void modeling with high computational efficiency.
Abstract
Context. Cosmic voids are vast underdense regions in the cosmic web that encode crucial information about structure formation, the composition of the Universe, and its expansion history. Due to their lower density, these regions are less affected by non-linear gravitational dynamics, making them suitable candidates for analysis using semi-analytic methods. Aims. We assess the accuracy of the PINOCCHIO code, a fast tool for generating dark matter halo catalogs based on Lagrangian Perturbation Theory, in modeling the statistical properties of cosmic voids. We validate this approach by comparing the resulting void statistics measured from PINOCCHIO to those obtained from N-body simulations. Methods. We generate a set of simulations using PINOCCHIO and OpenGADGET3, assuming a fiducial cosmology and varying the resolution. For a given resolution, the simulations share the same initial…
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Taxonomy
TopicsAstronomy and Astrophysical Research · Galaxies: Formation, Evolution, Phenomena · Cosmology and Gravitation Theories
