L-PICOLA: A parallel code for fast dark matter simulation

Robust measurements based on current large-scale structure surveys require precise knowledge of statistical and systematic errors. This can be obtained from large numbers of realistic mock galaxy catalogues that mimic the observed distribution of galaxies within the survey volume. To this end we pre...

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Bibliographic Details
Published inAstronomy and computing Vol. 12; pp. 109 - 126
Main Authors Howlett, C., Manera, M., Percival, W.J.
Format Journal Article
LanguageEnglish
Published Elsevier B.V 01.09.2015
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ISSN2213-1337
2213-1345
2213-1345
DOI10.1016/j.ascom.2015.07.003

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Summary:Robust measurements based on current large-scale structure surveys require precise knowledge of statistical and systematic errors. This can be obtained from large numbers of realistic mock galaxy catalogues that mimic the observed distribution of galaxies within the survey volume. To this end we present a fast, distributed-memory, planar-parallel code, l-picola, which can be used to generate and evolve a set of initial conditions into a dark matter field much faster than a full non-linear N-Body simulation. Additionally, l-picola has the ability to include primordial non-Gaussianity in the simulation and simulate the past lightcone at run-time, with optional replication of the simulation volume. Through comparisons to fully non-linear N-Body simulations we find that our code can reproduce the z=0 power spectrum and reduced bispectrum of dark matter to within 2% and 5% respectively on all scales of interest to measurements of Baryon Acoustic Oscillations and Redshift Space Distortions, but 3 orders of magnitude faster. The accuracy, speed and scalability of this code, alongside the additional features we have implemented, make it extremely useful for both current and next generation large-scale structure surveys. l-picola is publicly available at https://cullanhowlett.github.io/l-picola.
ISSN:2213-1337
2213-1345
2213-1345
DOI:10.1016/j.ascom.2015.07.003