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Luminous Red Galaxies in the SDSS

Luminous Red Galaxies in the SDSS. Daniel Eisenstein ( University of Arizona) with Blanton, Hogg, Nichol, Tegmark, Wake, Zehavi, Zheng, and the rest of the SDSS team. Outline of the Talk. SDSS and Galaxies The Luminous Red Galaxy Sample Stacking Spectra Clustering

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Luminous Red Galaxies in the SDSS

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  1. Luminous Red Galaxies in the SDSS Daniel Eisenstein(University of Arizona) with Blanton, Hogg, Nichol, Tegmark,Wake, Zehavi, Zheng,and the rest of the SDSS team.

  2. Outline of the Talk • SDSS and Galaxies • The Luminous Red Galaxy Sample • Stacking Spectra • Clustering • Clustering with Cross-Correlations

  3. The Sloan Digital Sky Survey • Data Release 3 is today! • 5282 square degrees of imaging (ugriz) to r~22.2. • 500,000 spectra over 4188 sq. deg. R~1800. • 375k galaxies • 50k quasars • 70k stars http://www.sdss.org/DR3

  4. I. Local Galaxy Properties • SDSS has made high-precision measurements of the properties of local galaxies. • This sets the baseline for quantification of evolution.

  5. Multivariate Distributions • With massive statistics, we can explore high- dimensional spaces of galaxy parameters. • Magnitude • Color(s) • Surface Brightness • SB Profiles • Velocity Dispersion • Environment • Emission Lines • Make these distributions yourself with the NYU Value-Added Galaxy Catalog.http://wassup.physics.nyu.edu/vagc Blanton et al. (2003)

  6. Red Sequence MassiveGalaxies Color Bimodality Blanton et al. (2003)

  7. II. Introduction to SDSS LRGs • SDSS uses color to target luminous, early-type galaxies at 0.2<z<0.5. • Fainter than MAIN (r<19.5) • About 15/sq deg • Excellent redshift success rate • The sample is close to mass-limited at z<0.38. Number density ~ 10-4h3 Mpc-3 • Co-conspirators: Annis, Connolly, Gunn, Nichol, Szalay • Science Goals: • Clustering on largest scales • Galaxy clusters to z~0.5 • Evolution of massive galaxies

  8. 55,000 Spectra

  9. A Volume-Limited Sample

  10. Massive Galaxies Evolve Slowly

  11. Luminosity Function of LRGs • Using data from the SDSS-2dF LRG project. • Using SDSS imaging to select LRGs at 0.5<z<0.7 for spectroscopy at 2dF. • 5500 redshifts at z>0.4. Preliminary from Wake et al, in prep

  12. III. Spectral Analyses of LRGs • Stack spectra in bins of luminosity & environment. • This is like studying the ensemble of stars. • Environment and luminosity form a 1-dimensional set of stacked spectra. • 90% of all spectral variation is in first PCA component. • “Environment is Age; Luminosity is Metallicity” does not match data. Eisenstein, Hogg, et al. (2003)

  13. IV. Clustering of Galaxies: Luminosity Dependence • Clustering is seen to depend strongly on luminosity, esp. above L*. • This is expected if more luminous galaxies live in more massive halos. Tegmark et al. (SDSS, 2003)

  14. Luminosity and Color Dependences • The mean environment around galaxies is a strong function of luminosity and color. • Sharp upturn for the most massive red galaxies. Hogg, Blanton, DJE et al. (2002)

  15. Zoom in on the Massive End • We’re going to look at the high-luminosity end with much more precision. • Goal: Probe the halo occupation of these massive galaxies and the role of environment in building these system. Tegmark et al. (SDSS, 2003)

  16. LRG Correlation Functions • s8 = 1.80±0.03 up to 2.06±0.06, r0 = 9.8h-1 up to 11.2h-1 Mpc • Obvious deviations from power-laws! Zehavi, DJE, et al. (2004)

  17. Halo Occupation Modeling • The distribution of dark matter halo masses for the galaxies determines their clustering. • Generically predict an inflection in x(r). Zehavi et al. (2004); Zheng et al, in prep.

  18. V. Cross-Correlation Analysis • Angular correlations of objects with known redshift with objects of unknown redshift. • Only physical correlations (save weak lensing) must be at the known redshift. • Therefore, we can map angles to transverse distance and flux to luminosity. • E.g., can take a fixed metric aperture and track galaxies of a constant luminosity bin. • Background subtraction: yields projection of correlation function: wp = Int x([R2+z2]0.5) dz.

  19. A New Method • Statistical isotropy permits deprojection. • However, this usually requires dwp/dr. • Instead, consider an integral of the correlation function. • This reduces to a weighted sums over pairs. • Very flexible! Eisenstein (2002)

  20. Application to LRG Sample • 30,000 spectroscopic LRGs. • 16 million galaxies from SDSS imaging. • At each LRG redshift, select imaging galaxies in range M*-0.5 to M*+1.0. • Measure overdensity of L* galaxies around LRGs at radii from 200 kpc to 6.4 Mpc, as a function of LRG luminosity. Eisenstein et al. (2004)

  21. Environment (200 kpc) vs. Luminosity

  22. What are these numbers? • For f0D =10, we have: • f0VD = 0.92 galaxy near the LRG, weighting the count by W(r). • x(200 kpc) = 500. • f0D =10 gal h3 Mpc-3 approx. mean density 200 kpc from LRG. • If D scales as bLRGb*, then bLRG varies by 4!

  23. Environment (200 kpc) vs. Luminosity

  24. Environment (400 kpc) vs. Luminosity

  25. Environment (800 kpc) vs. Luminosity

  26. Environment (1.6 Mpc) vs. Luminosity

  27. Environment (3.2 Mpc) vs. Luminosity

  28. Environment (6.4 Mpc) vs. Luminosity

  29. Clustering on 5 Mpc scales

  30. Smaller Scales, in comparison • Can passive evolution from z>1 do this? Or must we invoke environmental effects?

  31. Deviations from Power Law • Opportunity for detailed modeling of halo occupation.

  32. Conclusions • The SDSS is providing enormous amounts of data on massive galaxies at low redshift (z<0.5). • Quantitative baseline for evolution comparison. • Stacked spectra refute “Environment = Age; Luminosity = Metallicity” hypothesis. • High-precision measurement of clustering of massive galaxies and L* galaxies. • Small-scale bias is a very steep function of luminosity, a factor of 4 from 2L* to 8L*. • Luminosity dependence is steeper on small scales. • Future work: Halo occupation. Evolution of LRGs.

  33. Take Our Data. Please!

  34. Scale & Luminosity Dependent Bias

  35. Red Fractions vs. Scale & Luminosity

  36. Red Fractions versus Time

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