Title: Galaxy Formation, Theory and Modelling
1Galaxy Formation, Theory and Modelling
Collaborators Geraint Harker John Helly Adrian
Jenkins Hannah Parkinson
ICC Photo Malcolm Crowthers
25th October 2007
2Outline
- An Introduction to the Ingredients of Galaxy
Formation Models - Recent improvements/developments
- Dark matter merger trees (Parkinson, Cole
Helly 2007) - Modelling Galaxy Clustering
- Constraints on s8
(Harker, Cole Jenkins 2007) - Conclude
3Galaxy Formation Physics
Dark Matter
- The hierarchical evolution of the dark matter
distribution - The structure of dark matter halos
- Gas heating and cooling processes within dark
matter halos - Galaxy mergers
- Star formation and feedback processes
- AGN formation and feedback processes
- Stellar population synthesis and dust modelling
Gas
4The hierarchical evolution of the dark matter
distribution
- Lacey Cole trees (extended Press-Schechter)
- Simulation from the Virgo Aquarius project
- Parkinson, Cole and Helly trees
5The hierarchical evolution of the dark matter
distribution
- Millennium Simulation (movie and merger trees)
- Lacey Cole trees
- Parkinson, Cole and Helly trees
6The hierarchical evolution of the dark matter
distribution
- Lacey Cole trees (extended Press-Schechter)
- Simulation from the Virgo Aquarius project
- Parkinson, Cole and Helly trees
7EPS Merger Trees (Lacey Cole 1993, Cole et al
2000)
8Parkinson, Cole and Helly 2007
- Parkinson, Cole and Helly 2007
Insert an empirically motivated factor into this
merger rate equation
9Sheth-Tormen or Jenkins universal mass function
is a good fit to N-body results at all
redshifts. Thus we require
- Very nearly consistent with the universal
Sheth-Tormen/Jenkins Mass Function
10The structure of dark matter halos
NFW profiles, but with what concentration
Neto et al 2007
11Gas heating and cooling processes within dark
matter halos
- Standard Assumptions
- Gas initially at virial temperature with NFW or
b-model profile - All gas within cooling radius cools
- Improved models being developed (McCarthy et al)
- Initial power law entropy distribution
- Cooling modifies entropy and hydrostatic
equillibrium determines modified profile. - Explicit recipe for shock heating
Helly et al. (2002)?
12Galaxy mergers
- Galaxy orbits decay due to dynamical friction
- Lacey Cole (1993)
- Analytic
- Point mass galaxies
- Orbit averaged quantities
- Jiang et al 2007 (see also Boylan-Kolchin et al
2007)
13Star formation and feedback processes
- Rees-Ostriker/ Binney cooling argument cannot
produce M break - Feedback needed at faint end
Benson Bower 2003
14AGN formation and feedback processes
- SN feedback not enough as we must affect the
bright end - AGN always a sufficient energy source but how is
the energy coupled - Demise of cooling flows
- Benefits LF modelling as heats without producing
stars
Bower et al 2006
15Stellar population synthesis and dust modelling
Star Formation Rate and Metallicity as a Function
of Time IMF assumption
Library of Stellar Spectra
Convolution Machine
Dust Modelling
Galaxy SED
16Stellar population synthesis and dust modelling
- Many Stellar Population Synthesis codes (eg
Bruzual Charlot, Pegase, Starburst99) are quite
mature. But they arent necessarily complete. - Maraston (2005) showed that TP-AGB stars can make
a dominant contribution in the NIR.
Maraston 2005
17Dust
- Dust makes galaxies appear fainter, and
typically redder - Also re-emits absorbed energy at longer
wavelengths (dominating the SED at these
wavelengths)? - Dust has been treated with various degrees of
sophistication
No Dust
Diffuse Screen
Diffuse in Disk
Diffuse Clouds
18Semi-analytic Modelling
Semi-Analytic Model
19Semi-analytic N-body Techniques
- Harker, Cole Jenkins 2007
- Use a set of N-body simulations with varying
cosmoligical parameters. - Populate each with galaxies using Monte-Carlo DM
trees and the GALFORM code. - Compare the resulting clustering with SDSS
observations and constrain cosmological
parameters. - Particles in 300 Mpc/h box
Benson
20Harker, Cole Jenkins 2007
- Two grids of models with
- and varying
- Achieved by rescaling particle masses and
velocities (Zheng et al 2002)
-- Grid 1
-- Grid 2
21Harker, Cole Jenkins 2007
- For each (scaled) N-body output we have two
variants of each of three distinct GALFORM
models. - Low baryon fraction (Cole et al 2000)
- Superwinds (Baugh et al 2005 aka M)
- AGN-like feedback (C2000hib)
- Each model is adjusted to match the
- observed r-band LF.
22Select a magnitude limited sample with the same
space density as the best measured SDSS
sample. Compare clustering and determine best
fit.
23- Comparison of models all having the same .
- Clustering strength primarily dependent on
- I.E. Galaxy bias predicted by the GALFORM model
is largely independent of model details.
24The constraint on
25How Robust is this constraint?
- For this dataset the error on (including
statistical and estimated systematic
contributions) is small and comparable to that
from WMAP estimates. - The values do not agree, with WMAP3 preferring
(Spergel et al 2007) - If the method is robust we should get consistent
results for datasets with different luminosity
and colour selections.
26The constraint on
from b-band 2dFGRS data
Norberg 2002
27- None of the models produce observed dependence of
clustering strength on luminosity over the full
range of the data.
More modelling work required.
28Conclusions
- Significant improvements in our understanding and
ability to model many of the physical processes
involved in galaxy formation have been made in
recent years. - They are not yet all incorporated in
Semi-Analytic models - Big challenges remain in modelling stellar and
AGN feedback - Clustering predictions from galaxy formation
models can be more predictive and provide more
information than purely statistical HOD/CLF
descriptions. - Comparisons with extensive survey data can place
interesting constraints on galaxy formation
models and/or cosmological parameters