258 research outputs found
Mock galaxy catalogs using the quick particle mesh method
Sophisticated analysis of modern large-scale structure surveys requires mock
catalogs. Mock catalogs are used to optimize survey design, test reduction and
analysis pipelines, make theoretical predictions for basic observables and
propagate errors through complex analysis chains. We present a new method,
which we call "quick particle mesh", for generating many large-volume,
approximate mock catalogs at low computational cost. The method is based on
using rapid, low-resolution particle mesh simulations that accurately reproduce
the large-scale dark matter density field. Particles are sampled from the
density field based on their local density such that they have N-point
statistics nearly equivalent to the halos resolved in high-resolution
simulations, creating a set of mock halos that can be populated using halo
occupation methods to create galaxy mocks for a variety of possible target
classes.Comment: 13 pages, 16 figures. Matches version accepted by MNRAS. Code
available at http://github.com/mockFactor
Tests of redshift-space distortions models in configuration space for the analysis of the BOSS final data release
Observations of redshift-space distortions in spectroscopic galaxy surveys
offer an attractive method for observing the build-up of cosmological
structure, which depends both on the expansion rate of the Universe and our
theory of gravity. In preparation for analysis of redshift-space distortions
from the Baryon Oscillation Spectroscopic Survey (BOSS) final data release we
compare a number of analytic and phenomenological `streaming' models, specified
in configuration space, to mock catalogs derived in different ways from several
N-body simulations. The galaxies in each mock catalog have properties similar
to those of the higher redshift galaxies measured by BOSS but differ in the
details of how small-scale velocities and halo occupancy are determined. We
find that all of the analytic models fit the simulations over a limited range
of scales while failing at small scales. We discuss which models are most
robust and on which scales they return reliable estimates of the rate of growth
of structure: we find that models based on some form of resummation can fit our
N-body data for BOSS-like galaxies above Mpc well enough to return
unbiased parameter estimates.Comment: 12 pages, 11 figures, matches version accepted by MNRA
Spatial Clustering of Dark Matter Halos: Secondary Bias, Neighbor Bias, and the Influence of Massive Neighbors on Halo Properties
We explore the phenomenon commonly known as halo assembly bias, whereby dark
matter halos of the same mass are found to be more or less clustered when a
second halo property is considered, for halos in the mass range . Using the Large Suite of Dark Matter Simulations
(LasDamas) we consider nine commonly used halo properties and find that a
clustering bias exists if halos are binned by mass or by any other halo
property. This secondary bias implies that no single halo property encompasses
all the spatial clustering information of the halo population. The mean values
of some halo properties depend on their halo's distance to a more massive
neighbor. Halo samples selected by having high values of one of these
properties therefore inherit a neighbor bias such that they are much more
likely to be close to a much more massive neighbor. This neighbor bias largely
accounts for the secondary bias seen in halos binned by mass and split by
concentration or age. However, halos binned by other mass-like properties still
show a secondary bias even when the neighbor bias is removed. The secondary
bias of halos selected by their spin behaves differently than that for other
halo properties, suggesting that the origin of the spin bias is different than
of other secondary biases.Comment: 14 pages, LaTeX; minor revisions, and added references; results
unchange
- …