Title: SDSS-II Supernova Survey
1SDSS-II Supernova Survey
- Josh Frieman
- Leopoldina Dark Energy Conference
- October 8, 2008
See also poster by Hubert Lampeitl, talk by Bob
Nichol
2SN Models and Observations
- SN cosmology based on a purely empirical approach
(Phillips)? - SN observations over the last decade have
strengthened evidence for cosmic - acceleration, but dark energy constraints
now dominated by systematic errors - SNe will be one of 3 dark energy probes pursued
by JDEM - Reaching JDEM level of precision for SNe will
require improved control - of systematics
- Improved SN modeling, better empirical approaches
to estimating SN distances, - and better data are all important weapons
in the arsenal to reduce systematics - Current empirical distance estimators are limited
by the paucity of high-quality - input/training data. The situation is
improving (CfA, CSP, KAIT, SNF, SDSS), - but we need better, homogeneous data at
low/intermediate redshifts and a - systematic approach to ingesting them to
build better empirical estimators. - Will current ground-based SN surveys
deliver what we need for JDEM?
3Published Light Curves for Nearby Supernovae
Nearby SNe used to train distance estimators and
anchor Hubble diagram Heterogeneous published
sample, subject to various selection biases
4Cosmic Acceleration Discovery from
High-redshift SNe Ia SNe at z0.5 are 25
fainter than in an open Universe with same value
of ?m
Desert still there 10 years later
?? 0.7 ?? 0. ?m 1.
Technological Redshift Desert Possible
photometric offsets between low- and
high-redshift data
5SDSS II Supernova Survey Goals
- Obtain few hundred high-quality SNe Ia light
curves in the redshift desert z0.05-0.4 for
continuous Hubble diagram - Spectroscopic follow-up for redshifts, SN typing,
and to study diversity of SN features - Probe Dark Energy and systematics in redshift
range complementary to other surveys - Well-observed, homogeneous sample to anchor
Hubble diagram train distance estimators - Large survey volume rare peculiar SNe, probe
outliers of population to test SN models
6Frieman, et al (2008) Sako, et al (2008)?
7Spectroscopic follow-up telescopes
R. Miquel, M. Molla
P. Challis, G. Narayan, R. Kirshner
CfA team
8(No Transcript)
9B. Dilday
10Redshift Distribution for SNe Ia
and counting
11SDSS SN Light- curves Holtzman et al (2008)?
Well-sampled, multi-band light curves, including
measurements before peak light
12Spectroscopic Target Selection
2 Epochs SN Ia Fit SN Ibc Fit SN II
Fit
Sako etal 2008
13Spectroscopic Target Selection
2 Epochs SN Ia Fit SN Ibc Fit SN II
Fit
31 Epochs SN Ia Fit SN Ibc Fit SN II
Fit
Fit with template library Classification gt90 a
ccurate after 2-3 epochs Redshifts 5-10
accurate Sako etal 2008
14SN and Host Spectroscopy
- MDM 2.4m
- NOT 2.6m
- APO 3.5m
- NTT 3.6m
- KPNO 4m
- WHT 4.2m
- Subaru 8.2m
- HET 9.2m
- Keck 10m
- Magellan 6m
- TNG 3.5m
- SALT 10m
20052006
15SDSS SN Ia Spectra
1000 spectra taken over 3 seasons
Zheng et al (2008)?
16Fitting SN light curves I MLCS2k2
- Multicolor Light Curve Shape (Riess et al '98
Jha et al '07)? - Model SN light curves as a single parameter
family, trained on low-z UBVRI data from the
literature - Assumes SN color variations are due to dust
extinction, subject to prior
P(Av)?
time-dependent model vectors
fit parameters
Time of maximum distance modulus dust
law extinction stretch/decline rate
17MLCS2k2 model templates
Jha et al, 2007
- ? -0.3 bright, broad
- ? 1.2 faint, narrow
18Fitting SN Light curves II SALT2
Guy et al
- Fit each light curve using rest-frame spectral
surfaces - Transform to observer frame
- Light curves fit individually, but distances
only estimated globally - Not trained just on low-redshift data distances
are cosmology-dependent, flat priors on model
parameters
light-curve shape
color term
Global fit parameters, determined along with
cosmological parameters
19Light Curve Fitting with MLCS2k2 and SALT2
20Monte Carlo Simulations match data distributions
Use actual observing conditions (local sky,
zero-points, PSF, etc)?
21Model Spectroscopic Photometric Efficiency
Redshift distribution for all SNe passing
photometric selection cuts (spectroscopically
complete sample)? Data Need to model biases due
to whats missing Difficult to model
spectroscopic selection
22Extract AV Distribution from SDSS
(no prior)?
23Extract RV distribution from SDSS SN data
- MLCS previously used Milky Way avg RV3.1
- Lower RV more consistent with SALT2 color law
- Not conventional dust
24Preliminary Cosmology Results
w open
Kessler, Becker, et al. 2008
25Issues with rest-frame U band
epoch
- Data vs. SALT2 Model Residuals
- Similar Low-z vs. High-z discrepancy seen in MLCS
- MLCS trained only on Low-z, SALT2 model dominated
by SNLS - Similar differences seen in rest-frame UV spectra
(Foley et al)?
26SN Ia vs. Host Galaxy Properties I
Smith et al
Bright SN
Luminosity/Decline Rate
Faint
27SN Ia vs. Host Galaxy Properties II
Is reddening local to the SN environment?
Smith et al
Color/reddening
28SN Ia vs. Host Galaxy Properties III
Two SN Ia Populations? Implications for
SN cosmology host-galaxy population evolution
Smith et al
29Future Improved SN Ia Distances
Fit Cosmology
Train Fitters