ICE-COLA: Towards fast and accurate synthetic galaxy catalogues optimizing a quasi $N$-body method
Albert Izard, Martin Crocce, Pablo Fosalba

TL;DR
This paper optimizes the COLA quasi N-body method to generate fast, accurate synthetic galaxy catalogues, achieving near N-body accuracy in key observables with significantly reduced computational cost.
Contribution
It provides an optimized set of COLA parameters that balance speed and accuracy, validated against state-of-the-art N-body simulations for various observables across redshifts.
Findings
Matter power spectrum within 1% up to k~1 h/Mpc
Halo mass function within 5% of N-body results
Redshift space monopole and quadrupole within 4% for k~0.4 h/Mpc
Abstract
Next generation galaxy surveys demand the development of massive ensembles of galaxy mocks to model the observables and their covariances, what is computationally prohibitive using -body simulations. COLA is a novel method designed to make this feasible by following an approximate dynamics but with up to 3 orders of magnitude speed-ups when compared to an exact -body. In this paper we investigate the optimization of the code parameters in the compromise between computational cost and recovered accuracy in observables such as two-point clustering and halo abundance. We benchmark those observables with a state-of-the-art -body run, the MICE Grand Challenge simulation (MICE-GC). We find that using 40 time steps linearly spaced since , and a force mesh resolution three times finer than that of the number of particles, yields a matter power spectrum within for $k…
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