Title: Probing dark energy by a multi probe approach
1Probing dark energy by a multi probe approach
A.Ealet With Ch.Yèche (CEA/ SPP), A. Réfrégier
(CEA/SAP), C. Tao (CPPM), A. Tilquin (CPPM),
J.-M. Virey (CPT) and D. Yvon (CEA/SPP).
See Prospects for dark energy evolution a
frequentist multi-probe approach, AA, 448, 831
(2006).
2 The dark energy question
- Beyong a precise measure of the standard
cosmological parameters.. The question is - Is acceleration due to the cosmological constant
? - Can we discriminate alternatives?
- Cosmological constant
- Quintessence are any dynamical component ?
- A modification of gravity ?
- Some inhomogeneities in LSS
- What is the best strategy to probe the nature of
the dark energy ?
3Classifying theoretical models
4Consistency and precision gt many probes
- Background evolution H(z) gt distances
measurement - Probing perturbations gdr/r/a
- 3D weak lensing (DA, and g)
- Baryon wiggles (DA)
- Supernova Hubble diagram (DL)
- Cluster abundance vs z (g)
- CMB (DA and g)
5- In many analyses,basic asumptions are LCDM flat
universe,w- 1, no DE clustering etc
But many parameters are strongly correlated
Removing degeneracy without bias gt No
direct external prior Take into account all
correlations (with all cosmological and
astrophysical parameters)
- Test of consistencies
- gttake all correlation into account
- gt Introduce a systematic error treatment
- gt need at least 4 different probes
Blanchard,Douspis 2004
6Dark energyUsing w(z)
simulation Wm 0.3 w0 -0.7 wa 0.8
- it is fundamental to have at least
- 2 free parameters , w and dw/dz
- w(z) parametrisation..
- w(z) w0 (1-a) wa
- Effect of the parametrisation?
- Extraction of wa is difficult
- Example in supernovae
- wa is degenerated with Wm
-
Maor
Riess 2004 data
7The statistical approach
- Developp a flexible tool
- A maximum of free parameters
- Take all correlation into account
- Coherent assumption of models
- Can add or remove probes and parameters
8Frequentist or Bayesian ??
- Frequentist approach
-
- region of the parameters for which the data have
at least a given probability (1-CL) of being
described by the model.( Well known by HEP..) - We assume a true value (here ? (optical depth))
and we measure the agreement of the model for
this given value. - Bayesian approach
- calculate the probability distribution of the
true parameters by assigning probability density
functions to all unknown parameters. - The method searches to predict a value
1-CL
WMAP Team Official paper
9 impact of a prior
- a basic example
- Two parameters A and ?.
- A (?82) is measured with TT and TE spectra.
- ? depends only on the first point
- of the TE spectrum.
- Likelihood marginalized for different
- priors for ?.
- PDF(A) depends a lot on ? prior choice !
10Fitter with Frequentist approach
- Principle
- Minimize the ?2
- Fix one of the variables, for instance ?I
- Repeat the fit and determine the new minimum
- Confidence Level f parameter ?i is defined by
- Extension to 2-D contours with two fixed
parameters ?i and ?j.
11The tools
- Minuit as Fitter
- Cmbeasy for CMB
- Kosmoshow (from A.Tilquin) for SNIa .
- Minimization after 200-300 call to Cmbeasy.
- One job per batch (1h) at CCIN2P3 (IN2P3
computing Center) - Flexible can easily add or remove parameter..
12A test of faisability ..
- Use SN and CMB data
- Use 1st year WMAP TT and TE spectrum
- Use SNIa 157 SNIa Riess et al. (2004).
- Fit with 9 parameters
13The parameters
9 free parameters
- ?b/?m density for baryon/matter
- h Hubble constant,
- ns spectral index,
- ? reionisation optical depth
- A(?82) normalization parameter for CMB (and
WL). - Ms0 normalization parameter for SNIa.
- ( NB neutrino masses neglected)
- Parameterization of Dark Energy
- Dark Energy perturbations for CMB
- 2 options
- No perturbation DE homogeneous and no
clustering - With perturbations APPLIED only for wgt-1
14fit results for w0 and wa
- Value of w0 smaller than -1.0 are favored
- Discrepancy in w0 / strategy for DE perturbation
treatment. - Errors significantly be degraded when DE
perturbations added.
15Comparison with other combinations
- Seljak et al. (2004)
- w0 -1 and wa0.
- 2) Upadhye et al. (2004)
- w0 -1.3 and wa1.2
the 2s discrepancy may be due to a different
treatment of DE perturbation in CMB. 1) No DE
perturbations 2) DE perturbations for wgt-1.
Upadhye et al., astro-ph/0411803
16 can be use for prospectives 3 scenarii
- Today Reference point
- WMAP 1 year
- 157 SNIa (Riess 2004).
- Mid-term 2007-2008
- CMB WMAP Olimpo (balloon with good
resolution and a small field). - SNIa SNLS (700) SNFactory (200) HST (50)
- WL CFHT-LS. (170 deg2)
- Long-term 2012-2015
- CMB Planck
- SNIa SNAP/JDEM (2000 300) 2 of systematic
- WL SNAP/JDEM 1000 deg2
17Some prospectives adding WL on wa
- Fisher approach on (w0,wa)
- Add WL information
- (Icosmo program (A.Refregier))
Simulation of a mid term data WMAP 1 year
Olympo CFHTLS WL SNLS SNIA
18Expected sensitivity
- With ground observations (mid-term), good
precision on w0 alone, but not on wa. - Satellite observations (Planck and SNAP) are
required to achieve the 0.1 precision on w. - Very impressive sensitivity on other parameters,
in particular ns (test of inflationary models).
19Some helpful degeneracies for wa
20Expected sensitivity for Long Term Scenario
SUGRA
?-CDM
Phantom
- precision of the long-term scenario, needed to
discriminate models ( here Phantom - ?CDM
SUGRA). - Sensitivity depends on the position in the w0-wa
plane.
- In the Long-term scenario, WL gives very
promising results (as good as SNCMB). - However, systematics effects not studied for WL.
21FUTURE
- Optimizing the tool
- we plan to have a software package allowing
contour plots in a few minutes for more than 10
cosmological parameters. - Provide a graphical interface
- Preparing a frame
- add new probes (BA0, clusters, SZ..)
- Work on experimental and theoretical systematic
modelization - define benchmark of models for test hypothesis
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23Conclusion
- We have used a frequentist approach to test DE
with a combination - We test the methode on current data (WMAP1 year
SNIa), - For the DE evolution, we get
- We have observed a strong effect on (w0, wa)
related to the treatment of DE perturbations,
which may explain the discrepancies observed in
the literature. - Our prospect study demonstrates that we need
satellite observations and many probes to
achieve a 0.1 sensitivity on wa.
24Stronger constraints thanks to correlations
- For ?m-w0 and for w0-wa, we observe
- orthogonal correlations between (CMB-WL)
- and SNIa
- It allows to break the degeneracies.
- Actually we have 9-dim correlations,
- we gain more than the simple 2-dim
- overlap!
- We use the full correlation matrix.
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26Stronger constraints thanks to correlations
- For ?m-w0 and for w0-wa, we observe
- orthogonal correlations between (CMB-WL)
- and SNIa
- It allows to break the degeneracies.
- Actually we have 9-dim correlations,
- we gain more than the simple 2-dim
- overlap!
- We use the full correlation matrix.
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27Error on Cl with Olimpo
Cosmic variance
Detector performances
Cosmic variance
Resolution effect
- Nominal configurations
- Observed Sky S300 deg2
- Detector sensitivity s150 ?Ks1/2
- Number of bolometers Nbolo 20
- Observation time Tobs 10 days
- Resolution ?fwhm 4 arcmin
28Error on Cl with Planck
- Nominal configurations
- Full Sky, 12 months
- 3 Frequencies 100 / 143 / 217 (GHz)
- Sensitivity R 2.0 / 2.2 / 4.8 (?K/K)
- Resolution ?fwhm 9.2 / 7.1 / 5.0 arcmin
- (Figures extracted from The Planck mission J.A.
Tauber - JASR 6394 (2004) )
29 Examples of 1D Confidence Level Plot
WMAP ?bh2 Scan
?bh2 0.0215, 0.0239_at_68 0.0209,
0.0247_at_90 ?mh2 0.130, 0.162_at_68
0.121, 0.174_at_90 h 0.66, 0.75_at_68
0.63, 0.78_at_90 A 0.75, 0.93_at_68 0.70,
1.00_at_90 ns 0.958, 1.013_at_68 0.943,
1.034_at_90 ? 0.091, 0.0173_at_68 0.068,
0.204_at_90
WMAP h Scan
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