TL;DR
This paper develops a statistical method to infer the orbital history of satellite galaxies from phase space data using simulations, enabling better understanding of star formation processes in different satellite populations.
Contribution
The paper introduces a novel probabilistic approach to determine satellite infall times from phase space coordinates, validated with simulation data.
Findings
Different satellite populations occupy distinct phase space regions.
The method reliably estimates infall time within approximately 2.6 Gyr.
Accuracy improves in certain phase space regions.
Abstract
Physical processes regulating star formation in satellite galaxies represent an area of ongoing research, but the projected nature of observed coordinates makes separating different populations of satellites (with different processes at work) difficult. The orbital history of a satellite galaxy leads to its present-day phase space coordinates; we can also work backwards and use these coordinates to statistically infer information about the orbital history. We use merger trees from the MultiDark Run 1 N-body simulation to compile a catalog of the orbits of satellite haloes in cluster environments. We parameterize the orbital history by the time since crossing within 2.5 rvir of the cluster centre and use our catalog to estimate the probability density over a range of this parameter given a set of present-day projected (i.e. observable) phase space coordinates. We show that different…
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