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Non-Gaussian signatures in cosmic shear fields

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(wa)= 0.50, 0.57, 0.38 0.52(4 ... Convergence map. Hamana, MT, Yoshida 04. 2 degrees. Miyazaki, Hamana 07 ... A detailed study of cluster physics (e.g. the ... – PowerPoint PPT presentation

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Title: Non-Gaussian signatures in cosmic shear fields


1
Non-Gaussian signatures in cosmic shear fields
Masahiro Takada (Tohoku U., Japan)
Based on collaboration with Bhuvnesh Jain
(Penn) (MT Jain 04, MT Jain 07 in prep.)
Sarah Bridle (UCL) (MT Bridle 07,
astro-ph/0705.0163) Some part of my talks is
based on the discussion of WLWG
Oct 26th 07 _at_ ROE
2
Outline of this talk
  • What is cosmic shear tomography?
  • Non-Gaussian errors of cosmic shear fields and
    the higher-order moments
  • Parameter forecast including non-Gaussian errors
  • Combining WLT and cluster counts
  • Summary

3
Cosmological weak lensing cosmic shear
  • Arises from total matter clustering
  • Not affected by galaxy bias uncertainty
  • well modeled based on simulations (current
    accuracy, lt10 White Vale 04)
  • A level effect needs numerous (108) galaxies
    for the precise measurements

zzs
past
zzl
observables
Large-scale structure
z0
present
4
Weak Lensing Tomography
(e.g., Hu 99, 02, Huterer 01, MT Jain 04)
  • Subdivide source galaxies into several bins based
    on photo-z derived from multi-colors (e.g.,
    Massey etal07)
  • ltzigt in each bin needs accuracy of 0.1
  • Adds some depth information to lensing
    improve cosmological paras (including DE)

?m(z)
5
Tomographic Lensing Power Spectrum
  • Tomography allows to extract redshift evolution
    of the lensing power spectrum.
  • A maximum multipole used should be like
    l_maxlt3,000

6
Tomographic Lensing Power Spectrum (contd.)
  • Lensing PS has a less feature shape, not like CMB
  • Cant better constrain inflation parameters (n_s
    and alpha_s) than CMB
  • Need to use the lensing power spectrum amplitudes
    to do cosmology the amplitude is sensitive to
    A_s, ?de0 (or ?m0), w(z).

7
Lenisng tomography (condt.)
  • WLT can be a powerful probe of DE energy density
    and its redshift evolution.
  • Need 3 z-bins at least, if we want to constrain
    DE model with 3 parameters (?_de,w0, wa)
  • Less improvement using more than 4 z-bins, for
    the 3 parameter DE model

8
An example of survey parameters (on a behalf of
HSCWLWG)
Area 2,000 deg2 Filters B26,V26,R26,
i25.8, z24.3 Nights 150-300 nights
  • PS measurement error ? (survey area)-1
  • Requirements expected DE constraints should be
    comparable with or better than those from other
    DE surveys in same time scale (DES, Pan-Starrs,
    WFMOS)
  • Note optimization of survey parameters are being
    investigated using the existing Suprime-Cam data
    (also Yamamoto sans talk)

9
Non-linear clustering
  • Most of WL signal is from small angular scales,
    where the non-linear clustering boosts the
    lensing signals by an order of magnitude (Jain
    Seljak97).
  • Large-scale structures in the non-linear stage
    are non-Gaussian by nature.
  • 2pt information is not sufficient higher-order
    correlations need to be included to extract all
    the cosmological information
  • Baryonic physics lgt103

Non-linear clustering
l_max3000
10
Non-Gaussianity induced by structure formation
  • Linear regime O(?)ltlt1 all the Fourier modes of
    the perturbations grow at the same rate the
    growth rate D(z)
  • The linear theory, based on FRW GR, gives
    robust, secure predictions
  • Mildly non-linear regime O(?)1 a mode coupling
    between different Fourier modes is induced
  • The perturbation theory gives the specific
    predictions for a CDM model
  • Highly non-linear regime a more complicated mode
    coupling
  • N-body simulation based predictions are needed
    (e.g., halo model)
  • Correlations btw density perturbations of
    different scales arise as a consequence of
    non-linear structure formation, originating from
    the initial Gaussian fields
  • However, the non-Gaussianity is fairly accurately
    predictable based on the CDM model

11
Aspects of non-Gaussianity in cosmic shear
  • Cosmic shear observables are non-Gaussian
  • Including non-Gaussian errors degrades the
    cosmological constraints?
  • Realize a more realistic ability to constrain
    cosmological parameters
  • The dependences for survey parameters (e.g.,
    shallow survey vs. deep survey)
  • Yet, adding the NG information, e.g. carried by
    the bispectrum, is useful?

12
Covariance matrix of PS measurement
(MT Jain 07 in prep.)
  • Most of lensing signals are from non-linear
    scales the errors are non-Gaussian
  • PS covariance describes correlation between the
    two spectra of multipoles l1 and l2 (Cooray Hu
    01), providing a more realistic estimate of the
    measurement errors
  • The non-Gaussian errors for PS arise from the
    4-pt function of mass fluctuations in LSS

l1
l1
13
Correlation coefficients of PS cov. matrix
w/o shot noise
  • Diagonal Gaussian Off-diagonal NG, 4-pt
    function
  • 30 bins 50ltllt3000
  • If significant correlations, r_ij?1
  • The NG is stronger at smaller angular scales
  • The shot noise only contributes to the Gaussian
    (diagonal) terms, suppressing significance of the
    NG errors

with shot noise
14
Correlations btw Cls at different ls
  • Principal component decomposition of the PS
    covariance matrix

15
Power spectrum with NG errors
  • The band powers btw different ells are highly
    correlated (also see Kilbinger Schneider 05)
  • NG increases the errors by up to a factor of 2
    over a range of l1000
  • elllt100, gt104, the errors are close to the
    Gaussian cases

16
Signal-to-noise ratio SNR
  • Data vector power spectra binned in multipole
    range, l_minltlltl_max, (and redshifts)
  • In the presence of the non-Gaussian errors, the
    signal-to-noise ratio for a power spectrum
    measurement is
  • For a larger area survey (f_sky ) or a deeper
    survey (n_g ), the covariance matrix gets
    smaller, so the signal-to-noise ratio gets
    increased S/N

17
Signal-to-noise ratio SNR (contd.)
Gaussian
  • Multipole range 50ltlltl_max
  • Non-gaussian errors degrade S/N by a factor of 2
  • This means that the cosmic shear fields are
    highly non-Gaussian (Cooray Hu 01 Kilbinger
    Schneider 05)

Non-Gaussian
50ltlltl_max
18
The impact on cosmo para errors
  • We are working in a multi-dimensional parameter
    space (e.g. 7D)

error ellipse
?_de
w_0
w_a
n_s
.
  • Volume of the ellipse VNG?2VG
  • Marginalized error on each parameter ? length of
    the principal axis ?NG2(1/Np)??G (reduced by
    the dim. of para space)
  • Each para is degraded by slightly different
    amounts
  • Degeneracy direction is slightly changed

?_mh2
?_bh2
19
An even more direct use of NG bispectrum
Bernardeau97, 02, Schneider Lombardi03,
Zaldarriaga Scoccimarro 03, MT Jain 04, 07,
Kilbinger Schneider 05
given as a function of separation l
given as a function of triangles
20
A more realistic parameter forecast
MT Jain in prep. 07
WLT (3 z-bins) CMB
  • Parameter errors PS, Bisp, PSBisp
  • G ?(?_de)0.015, 0.014, 0.010 ? NG 0.016(7),
    0.022(57), 0.013(30)
  • ?(w0) 0.18, 0.20, 0.13 ? 0.19(6), 0.29(45),
    0.15(15)
  • ?(wa) 0.50, 0.57, 0.38 ? 0.52(4), 0.78(73),
    0.41(8)
  • The errors from Bisp are more degraded than PS
  • Need not go to 4-pt!
  • In the presence of systematics, PSBisp would be
    very powerful to discriminate the cosmological
    signals (Huterer, MT 05)

21
WLT Cluster Counts
MT S. Bridle astro-ph/0705.0163
  • Clusters are easy to find from WL survey itself
    mass peaks (Miyazaki etal.03 see Hamana sans
    talk for the details)
  • Synergy with other wavelength surveys (SZ,
    X-ray)
  • Combining WL signal and other data is very useful
    to discriminate real clusters from contaminations
  • Combing WL with cluster counts is useful for
    cosmology?
  • Yes, would improve parameter constraints, but how
    complementary?
  • Cluster counts is a powerful probe of cosmology,
    established method (e.g., Kitayama Suto 97)

Angular number counts
w0-1 ? w0-0.9
22
Mass-limited cluster counts vs. lensing-selected
counts
Hamana, MT, Yoshida 04
Halo distribution
Convergence map
2 degrees
  • Mass-selected sample (SZ) vs lensing-based sample

23
Miyazaki, Hamana07
  • Mass

Light (galaxies)
Secure candidates
X-ray
24
A closer look at nearby clusters (zlt0.3)
30 clusters (Okabe, MT, Umetsu in prep.)
  • Subaru is superb for WL measurement
  • A detailed study of cluster physics (e.g. the
    nature of dark matter)

25
Redshift distribution of cluster samples
26
Cross-correlation between CC and WL
Cluster
A patch of the observed sky
Shearing effect on background galaxies
  • If the two observables are drawn from the same
    survey region, the two probe the same cosmic mass
    density field in LSS
  • Around each cluster, stronger shear signal is
    expected up to 10 in induced ellipticities,
    compared to a few for typical cosmic shear
  • A positive cross-correlation is expected
    Clusters happen to be less/more populated in a
    given survey region than expected, the amplitudes
    of lt???gt are most likely to be smaller/greater
  • Note that lt ??? gt 2pt, cluster counts (CC) 1pt
    gtno correlation for Gaussian fields

27
Cross-correlation btw CC and WL (contd.)
M/M_sgt1013
  • Shown is the halo model prediction for the
    lensing power spectrum
  • A correlation between the number of clusters and
    the ps amplitude at l103 is expected.

M/M_sgt1014
M/M_sgt1015
28
Cross-covariance between CC WL
  • Cross-covariance between PS binned in l and z and
    the cluster counts binned in z
  • The cross-correlation arises from the 3-pt
    function of the cluster distribution and the two
    lensing fields of background galaxies
  • The cross-covariance is from the non-Gaussianity
    of LSS
  • The structure formation model gives specific
    predictions for the cross-covariance

29
SNR for CCWL
  • The cross-covariance leads to degradation and
    improvement in S/N up to ?20, compared to the
    case that the two are independent

30
Parameter forecasts for CCWL
lensing-selected sample
mass-selected sample
WL
CCWL
CCWL with Cov
  • Lensing-selected sample with detection threshold
    S/N10 contains clusters with gt1015Msun
  • Lensing-selected sample is more complementary to
    WLT, than a mass-selected one? Needs to be more
    carefully addressed

31
HSCWLS performance (WLTCCCMB)
  • Combining WLT and CC does tighten the DE
    constraints, due to their different cosmological
    dependences
  • Cross-correlation between WLT and CC is
    negligible the two are considered independent
    approximately

32
Real world issues on systematic errors
  • E/B mode separation as a diagnostics of
    systematics
  • Non-gaussian signals in weak lensing fields
  • Theoretical compelling theoretical modeling of DE
  • Shape measurement accuracies vs. galaxy types,
    morphology, magnitudes
  • Data reduction pipelines optimized for weak
    lensing analyses
  • Exploring a possibility to self-calibrate
    systemtaics, by combining different methods
  • Non-linearities in lensing reduced shear needs
    to be included?
  • Intrinsic alignments
  • Source clustering, source-lens coupling
  • Usefulness of Flexions?
  • Develop a sophisticated photo-z code
  • Photo-z vs. color space?
  • Requirement on spec-z sub-sample from which
    data?
  • N-body simulations (initial conditions, how to
    work in multi-dimenaional parameter space for
    N-body simulations, the strategy)
  • DE vs. modified gravity
  • Fourier space vs. real-space explore an optimal
    method to measure power spectrum from actual
    data, with complex survey geometry
  • Exploring a code of likelihood surface in a
    multi-dimensional parameter space (MCMC) how to
    combine with other probes such as CMB, 2dF/SDSS,
    .
  • Can measure DE clustering or neutrino mass from
    WL or else with HSC?

33
Issues on systematics self-calibration
  • If several observables (O1,O2,) are drawn from
    the same survey region e.g., WLPS, WLBisp, CC,
  • Each observable contains two contributions (C
    cosmological signal and S systematics)
  • Covariances (or correlation) between the
    different obs.
  • If the systematics in different obs are
    uncorrelated
  • The cosmological covariances are fairly
    accurately predictable
  • Taking into account the covariances in the
    analysis could allow to discriminate the
    cosmological signals from the systemacs
    self-calibration
  • Working in progress

34
Summary
  • The non-Gaussian errors in cosmic shear fields
    arise from non-linear clustering in structure
    formation
  • The CDM model provides the specific predictions,
    so the NG errors are in some sense accurately
    predictable
  • Bad news the NG errors are very important to be
    included for current and, definitely, future
    surveys
  • The NG degrades the S/N for the lensing power
    spectrum measurement up to a factor of 2
  • Good news the NG impact on cosmo para errors are
    less significant if working in a
    multi-dimensional parameter space
  • 10 for 7-D parameter space
  • WLT and cluster counts, both available from the
    same imaging survey, can be used to tighten the
    cosmological constraints
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