1 cosmology results from the sdss supernova survey david cinabro smu 15 september 2008

68
1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

Upload: muriel-watson

Post on 04-Jan-2016

222 views

Category:

Documents


6 download

TRANSCRIPT

Page 1: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

1

Cosmology Results from the SDSS Supernova Survey

David Cinabro

SMU

15 September 2008

Page 2: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

2

Contents

Cosmology and Dark Energy Intro

SDSS Supernova Survey (2005-07)

Hubble Diagram Analysis & Results (1st-year SDSS data + external)

Page 3: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

3

Primary Motivation for Supernova Surveys:

measure expansionhistory of the Universe:in particular, the role of

dark energy

Page 4: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

4

Expansion BasicsH(z)2 = H0

2 i i (1+z)3(1+w) where w (equation of state parameter) is pressure/density

0.7 =

constant

-1Cosmological constant (Best current guess)

~ 10-5(1+z)41/3Radiation (CMB)

0.3M(1+z)3v2/c2 ~ 0Matter (dark, baryon, relic )

at

z=0

Evolution

with zw

Source of expansion

Page 5: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

5

Methods to Measure H(z)H(z)2 = i i (1+z)3(1+w)

Systematics of galaxy-shear measurements

Weak lensing

galaxy vs. dark matter clusteringgalaxy clustering; power spectrum or clumpiness (Baryon Acoustic Oscillatons)

Need to know cluster-mass selection function.

count galaxy clusters vs redshift.

Large dispersion in brightness.

Evolution? Dust? SN Model?

SN brightness vs. redshift

DifficultiesMethod

Page 6: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

6

Page 7: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

7

Hubble Diagram Basics

Expansion historydepends on and M

Page 8: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

8

Hubble Diagram Basics

Expansion historydepends on and M

What we measurewith SNe

… relative toempty universe

mag = –2.5log(L /4dL2).

dL = (1+z)∫dz/H(z) for flat universe.Distance modulus: 5log(dL/10pc)

Page 9: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

9

Hubble Diagram Basics

Expansion historydepends on and M

What we measurewith SNe

… relative toempty universe

Page 10: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

10

w-sensitivity with Supernova

Page 11: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

11

w-Quest with Supernova

SDSS

SNLS, ESSENCE w = –0.9 gives 4% variation from w = –1

redshift

Page 12: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

12

Surveys

compilation from Riess et. al., AJ 607(2004):

Calan Tololo, HZT, SCP, CfA, Higher-Z, ACS.

0 0.5 1.0 1.5 2.0 redshift

m ag

M=1 =0

M=1 =0

1990s

Development & discovery phase (Hi-z, SCP).Lightcurve quality limited by telescope time.

Page 13: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

13

Surveys 2000s

Much more telescope time rolling searches & more

passbands.

(SNLS, ESSENCE, SDSS)compilation from Riess et. al., AJ 607(2004):

Calan Tololo, HZT, SCP, CfA, Higher-Z, ACS.

0 0.5 1.0 1.5 2.0 redshift

m ag

SNLS 1st year sample (Astier 2005)

plus ~ 40 low-z SNe from literature

M=1 =0

M=1 =0

1990s

Development & discovery phase (Hi-z, SCP).Lightcurve quality limited by telescope time.

Page 14: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

14

Surveys

compilation from Riess et. al., AJ 607(2004):

Calan Tololo, HZT, SCP, CfA, Higher-Z, ACS.

0 0.5 1.0 1.5 2.0 redshift

m ag

SNLS 1st year sample (Astier 2005)

plus ~ 40 low-z SNe from literature

M=1 =0

M=1 =0

1990s

Development & discovery phase (Hi-z, SCP).Lightcurve quality limited by telescope time.

2000s

Much more telescope time rolling searches & more

passbands.

(SNLS, ESSENCE, SDSS)

Page 15: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

15

Surveys

compilation from Riess et. al., AJ 607(2004):

Calan Tololo, HZT, SCP, CfA, Higher-Z, ACS.

0 0.5 1.0 1.5 2.0 redshift

m ag

SNLS 1st year sample (Astier 2005)

plus ~ 40 low-z SNe from literature

M=1 =0

M=1 =0

SDSS surveyfills gap & addslow-z SNe

1990s

Development & discovery phase (Hi-z, SCP).Lightcurve quality limited by telescope time.

2000s

Much more telescope time rolling searches & more

passbands.

(SNLS, ESSENCE, SDSS)

Page 16: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

16

SN papers becoming “Methodology” papers

as surveys contribute smaller fraction of total SNe Ia

• Astier06: SNLS contributes ~ 70 of 110

• Kowalski 2008:

contributes 8 of 307 SNe Ia

• SDSS 2008: contributes 100 of 240

Page 17: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

17

AJ 135, 338 (2008)

Meet the SDSS-II Supernova Team

Page 18: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

18

SDSS-II Supernova Survey: Sep 1 - Nov 30, 2005-2007 (1 of 3 SDSS projects for 2005-2008)

GOAL: Few hundred high-quality type Ia SNe lightcurves in redshift range 0.05-0.35

SAMPLING: ~300 sq deg in ugriz (3 million galaxies every two nights)

SPECTROSCOPIC FOLLOW-UP: HET, ARC 3.5m, MDM, Subaru, WHT, Keck, NTT, KPNO, NOT, SALT, Magellan, TNG

Page 19: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

19

SDSS Data FlowOne full night collects 800 fields (ugriz per field) 200 GB

one raw g-field (0.150)Each ‘search’ field is compared to a 2-year old ‘template’ field … things that go “boom” are extracted for human scanning.

Ten dual-CPU servers at APO process g,r,i data (2400 fields) in ~ 20 hrs.

(can you find a confirmed SN Ia ?)

Page 20: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

20

SDSS Data FlowOne full night collects 800 fields (ugriz per field) 200 GB

one raw g-field (0.150)

Page 21: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

21

SDSS Manual Scanning

z=0.05 : also followed by SNF and CSP

search template subtr

g

r

i

Page 22: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

22

SDSS Manual Scanning

z=0.05 : also followed by SNF and CSP

search template subtr

g

r

i

search template subtr

Page 23: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

23

SDSS Manual Scanning

z=0.05 : also followed by SNF and CSP

search template subtr

g

r

i

search template subtr

search template subtr

Page 24: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

24

z = 0.09 z = 0.20

z = 0.29 z = 0.36search template subtr search template subtr

g

r

i

Page 25: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

25

Lightcurve Fits Update in Real Time

day

mag

mag

mag

2 epochs 30 epochs

Page 26: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

26

Lightcurve Fits Update in Real Time

day

mag

mag

mag

2 epochs 30 epochs

> 90% of photometric Ia

candidates were spectroscopicallyconfirmed to be

SN Ia

Page 27: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

27

Follow-up Spectral id

Observer wavelength (Å)

Observer wavelength (Å)

Observer wavelength (Å)

Flu

x

Flu

x

Observer wavelength (Å)

HH

Page 28: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

28

1516Probable SN Ia

37

193

267

3,700

14,400

20062005

18Confirmed SN other (Ib, Ic, II)

130Confirmed SN Ia

180 Candidates with ≥1 spectra

11,400 SN candidates

190,000Objects scanned

Survey Scan Stats Sako et al., AJ 135, 348 (2008)

Page 29: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

29

Survey Scan Stats Sako et al., AJ 135, 348 (2008)

1516Probable SN Ia

37

197

267

3,700

14,400

20062005

18Confirmed SN other (Ib, Ic, II)

130Confirmed SN Ia

180 Candidates with ≥1 spectra

11,400 SN candidates

190,000Objects scanned

5221

93

498

736

19,000

220,000

Total2007

38

171

289

3,967

15,200

Plus ~ 1000 photometric SN Ia: we have 200 host-galaxy redshifts and still observing …

Page 30: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

30

SN Fakes

Fake SN Ia were inserted into the images in real time to measure software & scanning efficiencies.

Here is a fakethat was missed !

search template subtr

g

r

i

Page 31: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

31

SDSS-SN Redshift & Cadence

2005+20062005+2006+2007

Page 32: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

32

SDSS-SN Redshift & Cadence

2005+20062005+2006+2007

Temporaledge effects:SNe peak too early or too late.May relax cutslater.

Page 33: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

33

SDSS Rate for SN Ia with z < 0.12:2005 sample Dilday et al.,

arXiv:0801.3297Motivation: understand nature of SN

progenitorsContributions:

16 spectroscopically confirmed Ia (26 before cuts)

1 photometric-id with host spec-Z

Page 34: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

34

Unbinned Likelihood Fit SDSS result: Dilday 2008 previous results with spectroscopic confirmation idem, but unclear efficiency (exclude from our fit)

Rate ~ (1+z)1.5 ± 0.6

Page 35: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

35

SDSS SN Ia Rate: in progress

Spectro-Confirmed

Photometricid + host z

Photometric id only

~ 350 and larger syst-error

statistics vs.systematics

Page 36: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

36

SDSS Hubble Diagram Analysis: Samples Include

• SDSS 2005 (~ 100)

• Low redshift from literature (26 or 44)

• SNLS published (~ 70)

• ESSENCE published (~ 60)

Page 37: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

37

Supernova Photometry from Fit

SNcalibstars

FIT-DATA: all images (few dozen ugriz)

FIT-MODEL: galaxy + stars + SN + sky

FIT PROPERTIES: gal + stars: same in every image SN: variable in every image gal + stars + SN: PSF-smeared

NO PIXEL RE-SAMPLING ! no pixel correlations proper stat. errors

SDSS image

(Holtzman et. al., 2008, submitted)

Page 38: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

38

Extensive Photometry Tests Include:

• Recover zero flux pre-explosion

• Recover star mags

• Recover flux from fake SN

Page 39: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

39

Analysis Overview• Use both MLCS2k2 & SALT2 methods

(competing SNIa models)• Evaluate systematic uncertainties

Page 40: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

40

Analysis Overview• Use both MLCS2k2 & SALT2 methods• Evaluate systematic uncertainties• Five sample-combinations

a) SDSS-only

b) SDSS + ESSENCE + SNLS

c) Nearby + SDSS

d) Nearby + SDSS + ESSENCE + SNLS

e) Nearby + ESSENCE + SNLS

}no nearby sample; SDSS is lowz anchor

SDSS ishigh-z sample

(nominal)

(compare to WV07)

Page 41: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

41

Lightcurve Fit: Brief Introduction

• Fit data to parametric model (or template) to get shape and color.

• Use shape and color to “standardize” intrinsic luminosity.

SDSS dataFit model

Page 42: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

42

Comparison of Lightcurve Fit Methods

dust + intrinsic (no assump)host-galaxy dustcolor variations

noneExtinction AV > 0Fitting prior

spectral surface vs. tU,B,V,R,I mag vs. trest-frame model

SALT2/SNLS

(Guy07)

MLCS2k2

(Jha 2007)property

Page 43: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

43

Comparison of Lightcurve Fit Methods

dust + intrinsic (no assump)host-galaxy dustcolor variations

noneExtinction AV > 0Fitting prior

not neededwarp composite SN Ia spectrum from Hsiao

K-correction

spectral surface vs. tU,B,V,R,I mag vs. trest-frame model

from global fitFit-param for each SN Iadistance modulus

SALT2

(Guy07)

MLCS2k2

(Jha 2007)property

Page 44: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

44

Comparison of Lightcurve Fit Methods

dust + intrinsic (no assump)host-galaxy dustcolor variations

noneExtinction AV > 0Fitting prior

not neededwarp composite SN Ia spectrum from Hsiao

K-correction

spectral surface vs. tU,B,V,R,I mag vs. trest-frame model

Turn-key code, but crucial SNLS spectra are private

requires highly trained chef

Training availability

black box provided by J.Guy of SNLS

wrote our own fitter with improvements & options

Fitter availability

all SNe used in trainingz < .1 : SN lum & shape

SDSS: RV, AV

Training

from global fitFit-param for each SN Iadistance modulus

SALT2

(Guy07)

MLCS2k2

(Jha 2007)property

vectors

Page 45: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

45

SDSS SN Ia Lightcurves @z = 0.09 z = 0.19 z = 0.36

data-- fit model

Page 46: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

46

Hubble Diagram

46995663

Page 47: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

47

Cosmology Fit for w and M

(illustration with all 4 Ia samples)

CMB

(WM

AP 5ye

ar)

SN

Ia

BA

O

(s)

Comoving sep (h-1 Mpc)

BAO:Eisenstein et al., 2005

Page 48: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

48

Fit Residuals

redshift

± .17 mag error added in fit, but not in plot)

Page 49: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

49

Fit Residuals

?

smaller 2 is partly due to inefficiency from spectroscopic targeting.

Page 50: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

50

a) SDSS-only

b) SDSS + ESSENCE + SNLS

c) Nearby + SDSS

d) Nearby +SDSS + ESSENCE + SNLS

e) Nearby + ESSENCE + SNLS

Systematicuncertainties forMLCS method.

Uncertainties forSALT2 nearly finished ...

Total systematic uncertainty 0.22 0.11 0.15 0.09 0.09Statistical uncertainty 0.25 0.12 0.18 0.10 0.12

Page 51: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

51

Total Error Contours(stretch stat-contour along BAO+CMB axis

w

M

SDSS-only

systematic tests68% stat-error68% total-error

Page 52: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

52

Results

MLCS Total-error contours

M

w

SALT2 stat-error contours(expect stat ~ syst )

Page 53: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

53

Results

M

w

ESSENCE: Wood-Vasey, AJ 666, 694 (2007)SNLS: Astier, AJ 447, 31 (2006)

MLCS Total-error contours

Page 54: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

54

Questions to Ponder

Q1: Why does our MLCS-based w-result

differ by ~ 0.3 compared to WV07

(same method & same data) ?

Q2: Why do MLCS and SALT2 results differ

when high-redshift samples

(ESSENCE + SNLS) are included ?

Page 55: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

55

Questions to PonderQ1: Why does our MLCS-based w-result differ by ~ 0.3 compared to WV07 (same method & same data) ?

w ~ .1 : different “RV” to describe host-galaxy extinction w ~ .1 : account for spectroscopic inefficiency w ~ .1 : require z > .025 instead of z > .015 to avoid Hubble anomalyMisc: different Bessell filter shifts, fit in flux, Vega BD17

Note: changes motivated by SDSS-SN observations !

Note: changes do NOT commute; depends on sequence.

Page 56: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

56

Dust Law: RV = AV/E(B-V)and A() from

Previous MLCS-based analyses assumed RV = 3.1 (global parameter)

Growing evidence points to RV ~ 2:

SALT2 “” (RV+1) = 2 - 2.5

LOWZ studies (Nobili 08: RV = 1.8) individual SN with NIR (Krisciunas)

We have evaluated RV with our own SDSS data

Cardelli, Clayton, Mathis ApJ, 345, 245 (1989)

Page 57: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

57

Dust Law: RV = AV/E(B-V)To measure a global property of SN Ia, need sample with well-understood efficiency

Spec-confirmed SN Ia sample has large (spec) inefficiencythat is not modeled by the sim.

Page 58: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

58

Dust Law: RV = AV/E(B-V)To measure a global property of SN Ia, need sample with well-understood efficiency

Spec-confirmed SN Ia sample has large (spec) inefficiencythat is not modeled by the sim.

z < .3“Dust sample”

Solution: include photometric SNe Ia with host-galaxy redshift !

Page 59: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

59

Dust Law: RV = AV/E(B-V)

Method: minimizedata-MC chi2 forcolor vs. epoch

Page 60: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

60

Dust Law: RV = AV/E(B-V)

SDSS Result:RV = 1.9 ± 0.2stat ± 0.6syst

Consistent with SALT2 and other SN-based studies.

Method: minimizedata-MC chi2 forcolor vs. epoch

Page 61: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

61

Spectroscopic Inefficiency

• Simulate all known effects using REAL observing conditions

• Compare data/sim redshift distributions

• Difference attributed to spectroscopic ineff.

Page 62: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

62

Spectroscopic efficiency modeled as exp(-mV/) Eff(spec) is included in fitting prior … Assign w-syst error = 1/2 change from this effect

Page 63: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

63

a) SDSS-only

b) SDSS + ESSENCE + SNLS

c) Nearby + SDSS

d) Nearby + SDSS + ESSENCE + SNLS

e) Nearby + ESSENCE + SNLS

Spectroscopic efficiency modeled as exp(-mV/) Eff(spec) is included in fitting prior … Assign w-syst error = 1/2 change from this effect

Page 64: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

64

Hubble Anomalya.k.a “Hubble Bubble”

Conley et. al. astro-ph/0705.0367

?

• Hubble anomaly in LOWZ sample: cz=7500 km/s

• About x2 smaller with RV=1.9 (compared to RV=3.1), but still there

• Error bars reflect RMS spread

fit from data; calc calculated from concordance model

Page 65: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

65

Hubble Anomaly

• SDSS data suggests z >.025 (instead of .015) to avoid Hubble anomaly.

• Reduces LOWZ sample from 44 to 26 SNe Ia.

• Increases w by ~ .1 ;

• Add .05 to w-syst

(2005 only)

Page 66: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

66

MLCS vs. SALT2 Now that we use MLCS-RV value consistent with

SALT2-, cosmology results become more discrepant ! Puzzling ??

Ignore fitting prior & allow AV < 0 w = .06 << MLCS-SALT2 discrepancy

Discrepancy is from model, NOT from SDSS data

Guesses: difference is in the training or problem in treating efficiency in one of the methods

Comparisons still in progress

Page 67: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

67

What Next?

Primordial Neutrinos?

CMB PolarizationIR Observation

SN Expansion History

Weak Lensing

Clusters

LSST

JDEM

Page 68: 1 Cosmology Results from the SDSS Supernova Survey David Cinabro SMU 15 September 2008

68

Conclusions Paper in preparation (with 99 SDSS SNe Ia, z = 0.05-0.40) side-by-side comparisons of MLCS vs. SALT2

SDSS “photometric SNe Ia + zhost ” are used to measure dust properties (RV) … important step toward using photo-SN in Hubble diagram, and quantifying survey efficiency.

SDSS SN with z < .15 may help understand low-z Hubble anomaly.

Need publicly available training codes to optimize training and evaluate systematic errors.

all SDSS-based analysis (fitter & sim) is publicly available now … data available with paper.

Three-season SDSS SN survey is done. Still acquiring host-galaxy redshifts to improve measurement of dust properties and for more SN Ia on the Hubble diagram.