1 / 74

Uncertainties in Population Synthesis Models: Applications to Local and Distant Galaxies

Uncertainties in Population Synthesis Models: Applications to Local and Distant Galaxies. Gustavo Bruzual A. CIDA, M érida, Venezuela. Motivation:.

fisk
Télécharger la présentation

Uncertainties in Population Synthesis Models: Applications to Local and Distant Galaxies

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Uncertainties in Population Synthesis Models: Applications to Local andDistant Galaxies Gustavo Bruzual A. CIDA, Mérida, Venezuela

  2. Motivation: • Look at some problems or failures of current generation of population synthesis models and see what is the best we can do to understand them using available tools and data. • What we would like to have in the years to come…

  3. My view: • There is not a perfect model or set of models. Depending on the application, a set of models built with a particular set of ingredients may be optimal. • Most data sets are incomplete and may remain incomplete for a long time • Work in collaboration with S. Charlot (soon to be published, CB10).

  4. Typical Isochrone Marigo et al. (2008) Theoretical HRD

  5. Typical Isochrone (detail) Marigo et al. (2008) Theoretical HRD

  6. Stellarlibraries:wavelength coverage

  7. Stellarlibraries: Teff coverage

  8. IndoUS, Miles, and Stelib [Fe/H] Distribution Complete near Solar (more or less)

  9. Increasing spectral resolution • Coelho (< 1Å) • IndoUS (~ 1Å) • Miles (2.4 Å) • Stelib (3 Å) • HNGSL (~ 5Å) • Pickles (5 Å) • Kurucz (20 Å) • Padova 94 tracks

  10. Behaviour of line strength indices:Models vs SDSS bright galaxies IndoUS (new) Stelib (BC03)

  11. Caution: • Flux calibration • problem in • IndoUS library. Calibration and stellar parameters under revision by Prugniel and collaborators

  12. STIS NGSL UV coverage NGSL (black) vs IUE (cyan) and Kurucz models (green) Solar metallicity 1 Gyr SSP Chabrier IMF Padova 1994 tracks STIS NGSL is being enlarged and recalibrated by Lindler & Heap and collaborators

  13. STIS NGSL UV coverage NGSL vs Kuruczmodels (green) Z = 0.2 x Solar (blue) 0.4 x Solar (cyan) 1.0 x Solar (red) 12 Gyr SSP Chabrier IMF Padova 1994 tracks

  14. Problem 1: Incompleteness of stellar libraries • U-UV spectral range. • Excess of U flux in population models built using incomplete stellar libraries. • Completeness matters

  15. Walcher et al. (2008): VVDS data (grey shading) vs. models (contours) Conclude that the wavelength range from 3300 to 4050 Å is not correctly reproduced by models based mostly in the Miles library, which contains few hot stars.

  16. Walcher et al. (2008): Excess U flux is clearly seen in fit to typical galaxy sed

  17. Improving the U-UV spectral range • Tlusty Models: • Grid of NLTE plane parallel hydrostatic model atmospheres for: • O-stars: Lanz & Hubeny (2003) • B-stars: Lanz & Hubeny (2007) • High spectral resolution from 54.8 Å to FIR (R = 50,000) • 15,000 ≤ Teff ≤ 55,000 K; • 0 ≤ Z ≤ 2 x Zo

  18. Improving the U-UV spectral range • Martins et al. (2005) Models: • Grid of NLTE plane parallel hydrostatic model atmospheres • Coverage: • 3,000 ≤ Teff ≤ 27,500 K; • 0.10 x Zo ≤ Z ≤ 2 x Zo • 3000 to 7000 Å (R = 20,000)

  19. Improving the U-UV spectral range • UVBLUE and BLURED: • Grid of model atmospheres based on Kurucz (1993) model atmospheres: • UVBLUE: Rodriguez-Merino et al. (2005) • Coverage: 3,000 to 50,000 K • 850 to 4700 Å (R = 50,000) • -2.0 ≤ [Fe/H] ≤ +0.5 • BLUERED: Bertone et al. (2008) • 3500 to 7000 Å (R = 500,000)

  20. Walcher (2009): VVDS data (grey shading) vs. models (contours) Major improvement after including Tlusty, Martins et al., and UVBLUE stellar atmosphere models to complement MILES library in SSP modelling (work in progress).

  21. Another look at the problem: Pure Miles (black) Extended Miles (red) In the pure Miles case intermediate Teff stars were represented by hotter stars. It is important to use a stellar library as complete as possible.

  22. Ionizing photons: Depend on Tlusty models For SSP’s of Z = 0 0.0001 0.0004 0.001 0.002 0.004 0.008 0.017 0.040 (green) 0.070 (black) Improvement over BaSeL Atlas values (e.g. HeII)

  23. UV spectral indices Defined by e.g. Fanelli et al., can be computed directly from the UV sed, the same as in the visible range. Z = 0.5 x Zo (blue) 1.0 x Zo (black) 2.5 x Zo (red) Recent work on UV indices: Maraston et al. (2008) Chavez et al. (2009)

  24. Problem 2:Tracks should predict the right number of stars, at least in most relevan evolutionary phases (e.g. TP-AGB): • NIR stellar sed’s • Evolutionary tracks and the mass of galaxies

  25. Improving the NIR spectral range • IRTF library: • Infrared Telescope Facility Spectral Library (Cool Stars) • Rayner et al. (2009) • Stellar Models for C-stars: • Aringer et al. (2009) • Both represent big improvements over previous data sets.

  26. AGB candidates from SAGE LMC survey(Srinavasan et al. 2009)

  27. AGB candidates from SAGE LMC surveyMust take into account effects of dusty envelope and mass loss. Dusty code Poster by González-Lopezlira et al.

  28. AGB candidates from SAGE LMC surveyMust take into account effects of dusty envelope and mass loss. Dusty code Poster by González-Lopezlira et al.

  29. Evolutionary tracks and the mass of galaxies • Bertelli et al. (2008): • Z = 0, 0.0001, 0.0004, 0.001, 0.002, 0.004, 0.008, 0.017, 0.040, 0.070 • TP-AGB evolutionary prescriptions by: • Marigo & Girardi (2007): calibrated with MC clusters and star counts • Bertelli et al (2008): extrapolate results from the Marigo and Girardi • prescription to different chemical content of the • stellar envelope. Hence they • are uncalibrated.

  30. olor Color evolution vs. MC cluster data

  31. TP-AGB stars contribute roughly 60% of K lightin the galaxy rest frame in the redshift range from 3 to 8

  32. TP-AGBmore numerous,brighter, and redder(240 vs 60 per 1 million Mo cluster)

  33. Inferred mass in B and K

  34. HUDF data • CB07 • SSP’s • τ(V) = 0 • t=0.6 – 1.3 Gyr • M11=0.09–0.25

  35. HUDF data • CB07 • SSP’s • τ(V) = 1 • t=0.7 – 1.3 Gyr • M11 = 0.1 – 0.3

  36. HUDF data • CB07 • SSP’s • τ(V) = 3 • t=0.7 – 0.9 Gyr • M11 = 0.1 – 0.5

  37. Problem 3:Why different codes produce different results? • Show example

  38. All these models are for the same Z = 0.008 and IMF (Salpeter)LMC clustersDifferent tracksDifferent sed’s

  39. Tracks Padova 2008, • Different Z’s

  40. Stochastic effects

  41. Large amount of work by many groups on: • Alpha-enhanced stellar and population models: • Vazdekis and collaborators; Coelho and collaborators; • Maraston and collaborators; Thomas and collaborators • Variable light/heavy element ratio stellar and population models: • Worthey and collaborators • Star formation history in large galaxy samples: • A legion of really bright and hard workers • The role of binaries • Vanbeveren, Zhanwen Han • Propagation of uncertainties in population synthesis models and derived properties of galaxies: • Series of papers by Conroy, Gunn, & White

  42. The future: • The answers to distant galaxy problems will come from understanding nearby stars • We have collected more photons from distant galaxies than from nearby stars • Population synthesis models can get better only if ingredients get better. Most of the uncertainties come from critical stages in the evolutionary tracks or missing spectra of important stellar evolutionary phases. • This can happen both from the observational and the theoretical framework

  43. Basic things that we do not know well enough: • Distance to star clusters needed for calibration of stellar evolution models to a higher precision than at present. These errors translate into errors in the age of galaxies or other stellar populations dated using synthesis models. • Physical properties of more stars distributted all over the HR diagram: mass, Teff, radius, chemical abundance, chemical anomalies… • Blue stragglers, origin and role in stellar evolution and relevance in galaxies as integrated populations • The role of binaries in the evolution of stellar populations of various ages and metallicities, and in different environments (stellar density)

More Related