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Cosmology with the XMM Cluster Survey (XCS). Martin Sahl én University of Sussex with Pedro Viana (Porto), Andrew Liddle, Kathy Romer (PI) and others (XCS Consortium) arXiv:soon. Outline. Why Galaxy Clusters? From Theory to Predictions: Simulation and Observation The XMM Cluster Survey
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Cosmology with the XMM Cluster Survey (XCS) Martin Sahlén University of Sussex with Pedro Viana (Porto), Andrew Liddle, Kathy Romer (PI) and others (XCS Consortium) arXiv:soon
Outline • Why Galaxy Clusters? • From Theory to Predictions: Simulation and Observation • The XMM Cluster Survey • Forecasting by MCMC • Results • Status and Conclusions M. Sahlén - Cosmology with the XCS
Why Galaxy Clusters? • Galaxy clusters: largest grav. bound objects, hot intracluster gas – bremsstrahlung (X-ray) • Cluster abundance exponentially sensitive to σ8 and ΩM → good constraining power • Probe structure formation; constraints complementary to CMB, SNIa, etc. Knop et al. 2003 Allen et al. 2004 M. Sahlén - Cosmology with the XCS
Theoretical Components • n(M, z) – comoving number density of clusters • M(O, z) – relation between halo mass and direct observable • dV/dz – cosmic volume evolution • fsel(O,z) – probability of detecting a given cluster • Uncertainties in observables and distribution M. Sahlén - Cosmology with the XCS
Dynamics of Cluster Science THEORY SIMULATIONS FITTING FORMULAE IC’s Particle physics Gravita-tional theory Cosmo-dynamics Cluster dynamics Halo conc. Neto et al. 2007 Bias Sheth & Tormen 1999 Mass function Jenkins et al. 2001 e.g. Virgo Hubble Volume e.g. XCS Mass-observable relations Muanwong et al. 2006 OBSERVATIONS
Mass Function Pδ(k) - PS of density contrast; depends on primordial PS, transfer function and perturbation growth suppression factor Primordial spectrum specified, transfer function and growth factor determined by cosmology Use parameterisation for σ(R); Viana & Liddle 1996 Jenkins mass function; Jenkins et al. 2001 M. Sahlén - Cosmology with the XCS
Mass-Observable Relations • Luminosity-Temperature • Mass-Temperature • Evolution (γ, δ, η, ν) • Self-similar γ = 1/2, η = 1/3 • Scatter (σlogL, σlogT) • Self-calibration and follow-up e.g. Levine et al. 2002, Lima & Hu 2004, 2005, Majumdar & Mohr 2004 M. Sahlén - Cosmology with the XCS
XMM Cluster Survey (XCS) • Mining XMM-Newton images • X-ray temperature, luminosity, redshift • 2 keV < T < 8 keV, zmax = 1.45 • 500 □˚ • http://xcs-home.org M. Sahlén - Cosmology with the XCS
Selection Function Calculated using the cluster detection pipeline with mock clusters - numerically very intensive to compute (months) Dependencies include: • Halo model • X-ray spectrum • Detector characteristics • Cosmology M. Sahlén - Cosmology with the XCS
Detecting Mock Clusters Mock source detection Original XMM-Newton image Mock cluster added to image Original source detection M. Sahlén - Cosmology with the XCS
Detecting Mock Clusters Mock source detection Original XMM-Newton image Mock cluster added to image M. Sahlén - Cosmology with the XCS
Selection Function Thanks to Mark Hosmer M. Sahlén - Cosmology with the XCS
From Theory to Predictions • N-body/hydrodynamic simulations - full non-linear treatment, necessary! • Mass function, mass-observable relations, bias etc. calibrated to simulations/observations • Selection function determined through simulations using the detection pipeline • Used along with cosmology to make predictions M. Sahlén - Cosmology with the XCS
Forecasting • generate catalogues of clusters, as observed by XCS, for fiducial cosmology • perform MCMC parameter estimation using the catalogues to forecast performance of real observations (cf. Fisher matrix – idealised case) M. Sahlén - Cosmology with the XCS
Generating the Data • Construct a grid in (T, z) • Calculate the expected mean number of clusters in each bin • Draw clusters from a Poisson distribution with calculated mean, within each bin M. Sahlén - Cosmology with the XCS
Expected Number Counts M. Sahlén - Cosmology with the XCS
MCMC: Likelihood Function • Poissonian probability of observing clusters in bin {i,j}, [assume no clustering, given XCS’ serendipitous nature] Sahlén et al., in prep. Holder 2006 Hu & Cohn 2006 M. Sahlén - Cosmology with the XCS
Implementation Custom-written MCMC code • “Arbitrary” cosmology, measurement errors, scaling-relation evolution and scatter, etc. • Multidim. integrals • CUBPACK; Cools and Haegemans, ACM Trans. Math. Software 2003 M. Sahlén - Cosmology with the XCS
Expected Constraints, full XCS Fiducial: ΩM = 0.3 ΩΛ = 0.7 σ8 = 0.8 500 □˚ 2 keV < T < 8 keV 0.1 < z < 1 M. Sahlén - Cosmology with the XCS
Status • XCS DR1 • 168 □˚ • Exp. ~70 clusters with >500 photons and T > 2 keV • 166 candidates, 119 confirmed with redshift, BUT clusters with T < 2 keV not excluded yet • Results expected late 2008 • Full XCS • 500 □˚ • Exp. ~210 clusters with >500 photons and T > 2 keV • Results expected 2010 M. Sahlén - Cosmology with the XCS
Conclusions • Cosmology with clusters can be modeled with the help of N-body/hydrodynamic simulation results tuned to observations • A comprehensive forecasting and data analysis code based on MCMC has been developed M. Sahlén - Cosmology with the XCS
Conclusions • XCS DR1 to measure σ8 to ~15% and ΩM to ~25% in 2008 (comparable to WMAP3) • Full XCS to measure σ8 and ΩM to ~5% in 2010 • Information on M-T scatter and L-T evolution necessary for recovering σ8 (self-calibration/follow-up) • Cluster physics uncertainties do NOT affect ΩM M. Sahlén - Cosmology with the XCS