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Climbing Halo Merger Trees with TreeFrog

Authors :
Elahi, Pascal J.
Poulton, Rhys J. J.
Tobar, Rodrigo J.
Canas, Rodrigo
Lagos, Claudia del P.
Power, Chris
Robotham, Aaron S. G.
Elahi, Pascal J.
Poulton, Rhys J. J.
Tobar, Rodrigo J.
Canas, Rodrigo
Lagos, Claudia del P.
Power, Chris
Robotham, Aaron S. G.
Publication Year :
2019

Abstract

We present TreeFrog, a massively parallel halo merger tree builder that is capable comparing different halo catalogues and producing halo merger trees. The code is written in c++11, use the MPI and OpenMP API's for parallelisation, and includes python tools to read/manipulate the data products produced. The code correlates binding energy sorted particle ID lists between halo catalogues, determining optimal descendant/progenitor matches using multiple snapshots, a merit function that maximises the number of shared particles using pseudo-radial moments, and a scheme for correcting halo merger tree pathologies. Focusing on VELOCIraptor catalogues for this work, we demonstrate how searching multiple snapshots spanning a dynamical time significantly reduces the number of stranded halos, those lacking a descendant or a progenitor, critically correcting poorly resolved halos. We present a new merit function that improves the distinction between primary and secondary progenitors, reducing tree pathologies. We find FOF accretion rates and merger rates show similar mass ratio dependence. The model merger rates from Poole et al, (2017) agree with the measured net growth of halos through mergers.<br />Comment: 18 pages in main text, 23 pages total, 15 figures, 3 tables. Accepted for publication in PASA. Code is available from https://www.github.com/pelahi/TreeFrog

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1363508410
Document Type :
Electronic Resource
Full Text :
https://doi.org/10.1017.pasa.2019.18