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Page 1: High Redshift Galaxies (Ever Increasing Numbers).

High Redshift Galaxies

(Ever Increasing Numbers)

Page 2: High Redshift Galaxies (Ever Increasing Numbers).

(HP)Computers in Astronomy:- Handling the (nightly) Terabytes of data

- Data pipelines

- Analysis of images and catalogues

- Theory:

- Space Plasmas

- Stars (+ planetary systems)

- Formation and evolution of galaxies

- Clusters of Galaxies

- Large-scale Structure (galaxy statistics)

Page 3: High Redshift Galaxies (Ever Increasing Numbers).

Talk Overview

1) What is the correlation function and what can we learn from it?

2) The observational side

3) The theory side ( i.e. why HPC)

Page 4: High Redshift Galaxies (Ever Increasing Numbers).

Early statistical measures of galaxy populations:

Hubble, 1934 – Distr. of counts, N, are log gaussian.

Bok (1934), Mowbray (1938) – Variance in N larger than expected.

Rubin, Zwicky, Limber 1950s – Statistical methods related to the (auto-)correlation function.

Neyman, Scott 1962 – Used auto-correlation function on the Lick catalogue.

By the 70s, computers made such calculations a routine task.

Page 5: High Redshift Galaxies (Ever Increasing Numbers).

Correlation Function

w(θ) = DD(θ) / DR(θ) – 1

Excess probability, above random of finding 2 objects in solid angle elements, dΩ separated by θ..

Page 6: High Redshift Galaxies (Ever Increasing Numbers).

Hamilton (1993), Landy & Szalay (1993)

W = 4*DD*RR / DR2 - 1

W = (DD – 2*DR + RR)/RRReduces errors to poisson level*

Robust against edge effects.

W = DD / DR – 1

‘Natural estimator’.

-Simplest (cheapest).

-Suffers bias due to edges.

Page 7: High Redshift Galaxies (Ever Increasing Numbers).

Biased halo formation(Dark) Matter distribution: Power spectrum.

Highest density peaks collapse earliest.

Peaks are clustered.

Halos formed at these peaks merge.

Biggest halos are those formed at highest peaks.

Biggest halos most strongly clustered.

Page 8: High Redshift Galaxies (Ever Increasing Numbers).

Red galaxies found in clusters, blue in the 'field'...

...and luminosity segregated.

Zehavi et al. 2005

Page 9: High Redshift Galaxies (Ever Increasing Numbers).

Positions in 3-d known….

….halo mass!

Page 10: High Redshift Galaxies (Ever Increasing Numbers).

2 terms:

1-halo term (small scales), slope same as density slope.

2-halo term (large scales), slope = -0.8

1-halo term allows estimation of merging rate.

Page 11: High Redshift Galaxies (Ever Increasing Numbers).

Great! So all we need to know is 3-d positions!

EXPENSIVE!!

- Need redshift

- environment effects (finger of god).

Other method:

- estimate the redshift distribution (colour selection, Photometric redshifts)

- Deproject (Limber’s inversion)

=>>> r0

Page 12: High Redshift Galaxies (Ever Increasing Numbers).

TimingI / O

DD calc.

Random cat. Constr.

DR calc.

RR calc.

Deprojection.

Error estimation.

I / O

N

N2 / 2

N*10

10*N2

(10*N)2

-

100*N2

-

Scalability is very good!

Page 13: High Redshift Galaxies (Ever Increasing Numbers).

Mid-talk summary• From counting pairs of galaxies we can

estimate:• - Typical halo mass.• - Merger rate.• - What its halo will become by redshift 0.• (- and what its neighbours will be like.)• - When its host halo's progenitor formed.

• For any given galaxy population for which we have an estimate of its redshift distribution.

Page 14: High Redshift Galaxies (Ever Increasing Numbers).

The need for deep infrared surveysThe need for deep infrared surveys

Optical surveys sample rest-frame UV at high-z

Deep IR surveys vital for a complete census at z>1

1. Biased against high-z galaxies obscured by dust 2. Bias against high-z galaxies with old stellar populations 3. Provide poor estimate of stellar mass

Page 15: High Redshift Galaxies (Ever Increasing Numbers).

The UKIDSS Ultra-Deep Survey0.

88 d

eg.

DR1: KAB=23.5, JAB=23.6(85 hours)

World-wide public in january 2008

DR3: KAB=23.7, HAB=23.4, JAB=23.6(120 hours)

ESO public in december 2007

Final depth: KAB=25, HAB=24.7, JAB=24.7(200 nights)

Another 4 years of data to come… …plus new spectroscopic ESO survey

http://www.nottingham.ac.uk/astronomy/UDS

Page 16: High Redshift Galaxies (Ever Increasing Numbers).

http://www.nottingham.ac.uk/astronomy/UDS

02:17:48, -05:05:45

Page 17: High Redshift Galaxies (Ever Increasing Numbers).

BzK selection (Daddi 2004)

Efficiently selects objects between redshift 1.4 and 2.5.

50,000 objects.

650 passive (pBzK)

11,000 starforming (sBzK)

Page 18: High Redshift Galaxies (Ever Increasing Numbers).

r0 values:

pBzK – 17.5 h-1Mpc;

sBzK – 8.3 h-1Mpc.

r0 value for pBzK's

implies a halo mass in excess of 1014 M

sun.

Also, note the large excess on small scales for the sBzK's – suggests a lot of merging by z = 0.

Page 19: High Redshift Galaxies (Ever Increasing Numbers).

Comparing with models...

Can use:

Semi Analytic models

N-body simulations

N-body + S.A.

Full gas + DM sims.

(in order of increasing computational cost.)

Page 20: High Redshift Galaxies (Ever Increasing Numbers).

S.A. ResultsFrom Millennium simulation + S.A. model, 6 'lightcones' have been extracted ~1 million objects per lightcone.

Treated in the same way as the 'real' data. 7,000 pBzKs.

Looks fairly good.

1-halo term shows 'over-merging'?

Page 21: High Redshift Galaxies (Ever Increasing Numbers).

The future…

Star formation:

- highly sensitive to resolution.

- even M.S. isn’t sufficient!

- Where can we turn?

Re-simulation:

- choose a few representative volumes,

- Trace the particles back,

- Split those particles into many smaller ones.

=>>>> GIMIC

Page 22: High Redshift Galaxies (Ever Increasing Numbers).

Conclusions

Reached the limit of what can be done on a desktop!

Even simple codes require HPC to handle modern datasets.

We need to run specifically designed simulations to model how galaxies formed and evolved in the distant universe.

(High redshift)


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