Title: Semi-analytics and mock catalogues
1Semi-analytics and mock catalogues as tools to
observe ideas
- Semi-analytic modelling of galaxy formation The
long way from first principles to the
distribution of galaxy properties
II. Mocking the Universe
Construction, limitations and examples of mock
catalogues
2Semi-analytic modelling of galaxy formation
Y a des progrès à faire du côté de la
gastrophysique F. R. Bouchet
Jérémy Blaizot (MPA)
3Large-scale surveys
To what extent are galaxies tracers of
DM Physical sampling (bias) observational
selection
Colless et al., 2001
4From low to high redshifts
SAMs and mocks provide a means to connect
populations of galaxies selected in different
ways at different redshifts (e.g. LBGs/BXs/etc.
from Steidels group)
Driver et al. 1998
5Observations at different wavelengths
SAMs and mocks help establish the connection
between populations of galaxies selected at
different wavelengths
HST
ISO
Sources 15mm
Sources 6.7mm
The ISO-HDF Project (Mann et al.)
6Last but not least
- On top of these motivations, there is the
increasing need to produce realistic catalogues
that can be used - to prepare forthcoming observations
- to validate analysis techniques used on real
obs. - to check/understand biases uncertainties (e.g.
cosmic variance)
7Structure formation
Dark matter hierarchical structure formation
Given initial conditions and a cosmological
model, we know how to describe the formation of
dark matter structures with N-body simulations.
8Structure formation N-body simulations
9It all happens in haloes
Semi-analytics neglect the impact of baryons on
the formation of large scale structures, and can
thus be described a posteriori within the
hierarchy of haloes and their evolution. The
hybrid approach exploits our best way to describe
structure formation N-body simulations.
10Galaxy formation relevant processes
Star formation (threshold, efficiency, IMF, )
Cooling (metallicity, structure, )
AGNs (BH growth, feedback, )
Dust (formation, distribution, heating cooling,
)
Galaxy formation evolution
Galaxy interactions (morphological
transformations, starbursts, intracluster stars,
Winds (IGM heating, enrichment, SN feedback, etc)
Stellar evolution (spectro-photometric evolution,
yields, SN I/II rates,)
11Layout
I. Implementation of the hybrid approach
II. Limitations of SAMs
III. Example Brightest cluster galaxies
12Layout
I. Implementation of the hybrid approach
II. Limitations of SAMs
III. Example Brightest cluster galaxies
13From particles to haloes
From particles to haloes
Halo identification (FOF) and characterisation
(Mass, Spin, Energies, etc.)
14(Sub-)Halo finders
Identification of sub-structures from the density
field (only)
SUBFIND (Springel et al. 2001) ADAPTAHOP
(Aubert et al. 2004)
15From particles to halo merger trees
From particles to haloes
Halo identification (FOF) and characterisation
(Mass, Spin, Energies, etc.)
From density evolution to merger trees
Construction of a full merger tree (mergers,
accretion, fragmentation, evaporation)
16Example of a Clusters tree
17Semi-analytics
18Cooling (source term)
Assume hydrostatic equilibrium ( isothermal)
temperature and density profile.
Cooling time (function of radius)
White Rees (1978)
Binney (1977), Silk (1977)
Mass of gas that actually cools
Free-fall radius
Note cooling rates are sensitive to the heavy
elements content of the gas (Z).
19Cooling (source term)
Transition at 1012Msun (with some redshift
dependency)
Kravtsov et al.
20Star formation feedbacks
Star formation rate (highl redshifts ?)
SSFR
Supernovae feedback (highly uncertain)
or not
Kennicutt (1998)
Metal enrichment (hyper-highly uncertain)
Sgas
Fixed yield ? Instantaneous recycling ?
Instantaneous mixing ?
21Galaxy mergers - galaxy morphologies
Galaxies spiral down haloes potential wells due
to dynamical friction. When they reach the center
they merge with the central galaxy.
Bulge formation
Disrupted disk (m1 m2)
100
Major mergers
Fraction of progenitor disk mass tranfered to
descendents bulge.
50
Minor mergers
No bulge (m1 gtgt m2)
0
m2 / m1
1
0
22Spectral energy distributions
Final SED is the sum of SEDs of stars formed all
along the hierarchical history
- stellar evolutionary tracks (Padova tracks,
Genova, a-enhancement ? ) - stellar spectra library
- IMF (Chabrier, Kennicutt, Salpeter )
- - Extinction/emission by dust.
23THE result
spirals
ellipticals
Stellar mass
Gasstars
SFR
24THE result
25Frequently asked questions
- Do you resolve galaxies ?
- NO ! Galaxies in a SAM are vectors Mstar,
etc, - How many parameters do you fit ?
- I wish I knew Lucky we dont fit
- What do you get that you didnt put in by hand ?
- A quantitative estimate of the coupled evolution
of a set of processes (each put by hand) within
a complex system of boundary conditions (merger
trees).
26SAM Cinema
Semi-analytic galaxies
D.M. density
John Helly (Durham http//www.virgo.dur.ac.uk/)
27Layout
I. Implementation of the hybrid approach
II. Limitations of SAMs
III. Example Brightest cluster galaxies
28Chosing a simulation
Trade-off between - Mass resolution (ability
to describe history faint objects) - Volume
(ability to describe rare objects)
29Effects of mass resolution (1/3)
- completeness limit galaxies in small mass haloes
are missing.
Halo mass resolution
Galics 1 1.6 1011Msun
Galics 3 2.8 109Msun
30Effects of mass resolution (2/3)
- completeness limit galaxies in small mass haloes
are missing.
1010 MO
1011 MO
- redshift limit beyond zlim, there are no
resolved haloes.
1012 MO
1013 MO
31Effects of mass resolution (3/3)
- completeness limit galaxies in small mass haloes
are missing.
- redshift limit beyond zlim, there are no
resolved haloes.
- history resolution properties of new galaxies
are not realistic
32Other limitations
- Each step of the post-processing involve
approximations that do not disapear even if the
results fit the observations ! - halo finder N-body describes exactly the
(non-linear) evolution of a density field
haloes are not so exact - halo merger trees following sub-structures is
a delicate business - galaxy mergers largely unknown (both when
how) - metals production, transport
- SEDs if you dont believe in BC03 or
Chabriers IMF
33Layout
I. Implementation of the hybrid approach
II. Limitations of SAMs
III. Example Brightest cluster galaxies
34Brightest Cluster Galaxies (BCGs)
Brightest (and central) galaxies of the most
massive haloes of the Universe (typically Mhalo
1015 Msun)
Selection of clusters (e.g. with LX), so far
possible up to z 1
BCGs are the galaxies with the richest merger
trees
35Brightest Cluster Galaxies (BCGs)
De Lucia Blaizot (2006)
36Brightest Cluster Galaxies (BCGs)
De Lucia Blaizot (2006)
37Brightest Cluster Galaxies (BCGs)
2 x 2 Mpc (comoving)
38Brightest Cluster Galaxies (BCGs)
Mass growth 3 since z1 (along the main
branch)
Infered mass growth 3 since z1 (total)
High-z BCGs are do not end up in local BCGs
39Brightest Cluster Galaxies (BCGs)
The monolithic approximation (isolated evolution
or one-branch tree) is wrong in general and
should not be used to try to assess evolutionary
links between galaxy populations observed at
different redshifts.
The proper way to go is to reproduce
observational selections on the model galaxies,
using mock catalogues, and then go back to the
model to understand the (hierarchical) links
between galaxies selected in different ways.
40SAMs mock catalogues for interpreting
observations
Jérémy Blaizot (MPA)
41Selections
Colless et al., 2001
42Selections, selections
SAMs Mocks help establish the connection
between populations of galaxies selected at
different wavelengths
HST
ISO
Sources 15mm
Sources 6.7mm
The ISO-HDF Project (Mann et al.)
43Selections, selections, hierarchical evolution
SAMs and mocks provide a means to connect
(statistically) populations of galaxies selected
in different ways at different redshifts (e.g.
LBGs/BXs/etc. from Steidels group)
44General framework
Observations
Theoretical Framework
Surveys Galaxy samples _at_ diff. z l
Physical model (ingredients Recipes)
Hybrid implementation Some comparison to obs.
Mock Catalogues
45Layout
I. Construction of mock catalogues
II. Limitations of mock catalogues
III. Example 2 Lyman Break Galaxies
IV. Just do it
46Layout
I. Construction of mock catalogues
II. Limitations of mock catalogues
III. Example 2 Lyman Break Galaxies
IV. Just do it
47Inputs for mock catalogues
Series of napshots at zsnap zi (i 1, , N)
- Observer-frame (zsnap) absolute magnitudes and
their derivative - positions / velocities
- size(s), inclination
- IDs
48Tiling boxes basics
49Tiling boxes replications
50Tiling boxes random tiling
Random tiling
dec.
Supresses replication effects and some of the
signal (see later)
r.a.
51Example 1 mock SDSS stripe
21 lt r lt 22
20 lt r lt 21
19 lt r lt 20
18 lt r lt 19
52Pre-observation maps
discs
Scale to galaxy size
Scale to galaxy size
Rotate grid for orientation
Projection on the final grid
Spheroids
53Example 2 mock V-band deep field
HDF
Johnson V filter
6 arcmin
3 arcmin
54SkyMaker (E. Bertin)
55Layout
I. Construction of mock catalogues
II. Limitations of mock catalogues
III. Example 2 Lyman Break Galaxies
IV. Just do it
56Correlation functions
Excess probability of finding a pair of galaxies
at a given separation, relative to a random
distribution.
Data-Data
Random-Random
Field-to-field variance (in counts) average of
x over field-size
57Random tiling bias
Random pairs
58Random tiling bias
100 Mpc/h
R.T. bias present around r0, but well
understood. Finite volume effects (integral
constraint) comes in at larger scales
12 Mpc/h
Analytic estimate
59Finite-volume effects correlation function
100 Mpc/h
A simulation does not contain fluctuations
(clustering) on scales larger than Lbox
20 Mpc/h
60Finite-volume effect cosmic variance
Simulation volume should be gtgt light-cone volume
61Layout
I. Construction of mock catalogues
II. Limitations of mock catalogues
III. Example 2 Lyman Break Galaxies
IV. Just do it
62LBG selection (at z3)
(e.g.) Adelberger et al. (1998)
Pure photometric selection good test for the
model and mock-catalogue methodology
Blaizot et al. (2004)
63LBG counts and cosmic variance
Clustering of LBGs dominates cosmic variance up
to (at least) 1 deg.
64LBGs physical properties
Cest ca va !
Steidels team
30 of LBGs intense SF is triggered by mergers
65Link to local galaxies (1/2)
The Epoch of Galaxy Formation, Baugh et al. 1998
LBGs
z
z
66Link to local galaxies (2/2)
z 3
z 0
77 of z3 LBGs end up in E or S0 at z 0 35 of
local E or S0 have a LBG progenitor at z 3
E S0 with LBG prog. at z3
LBGs at z3
Other E S0
Sp with LBG prog. at z3
67Layout
I. Construction of mock catalogues
II. Limitations of mock catalogues
III. Example 2 Lyman Break Galaxies
IV. Just do it
68Online stuff
69Online stuff
http//www.g-vo.org/Millennium/
(Gerard Lemson)