Cosmological Constraints from Sunyaev-Zel'dovich-Selected Clusters with X-ray Observations in the First 178 Square Degrees of the South Pole Telescope Survey
B. A. Benson, T. de Haan, J. P. Dudley, C. L. Reichardt, K. A. Aird,, K. Andersson, R. Armstrong, M. Bautz, M. Bayliss, G. Bazin, L. E. Bleem, M., Brodwin, J. E. Carlstrom, C. L. Chang, H. M. Cho, A. Clocchiatti, T. M., Crawford, A. T. Crites, S. Desai, M. A. Dobbs, R. J. Foley

TL;DR
This paper combines Sunyaev-Zel'dovich and X-ray observations of galaxy clusters to improve constraints on cosmological parameters, demonstrating the method's effectiveness and its impact on understanding dark energy and neutrino masses.
Contribution
The paper introduces a new statistical method that jointly fits for cluster scaling relations and cosmology, accounting for selection effects and mass calibration uncertainties.
Findings
SPT cluster data constrain sigma_8 and Omega_m with high precision.
Adding cluster data improves constraints on dark energy and neutrino masses.
The method enhances cosmological parameter estimation by integrating multiple observables.
Abstract
We use measurements from the South Pole Telescope (SPT) Sunyaev Zel'dovich (SZ) cluster survey in combination with X-ray measurements to constrain cosmological parameters. We present a statistical method that fits for the scaling relations of the SZ and X-ray cluster observables with mass while jointly fitting for cosmology. The method is generalizable to multiple cluster observables, and self-consistently accounts for the effects of the cluster selection and uncertainties in cluster mass calibration on the derived cosmological constraints. We apply this method to a data set consisting of an SZ-selected catalog of 18 galaxy clusters at z > 0.3 from the first 178 deg2 of the 2500 deg2 SPT-SZ survey, with 14 clusters having X-ray observations from either Chandra or XMM. Assuming a spatially flat LCDM cosmological model, we find the SPT cluster sample constrain sigma_8 (Omega_m/0.25)^0.30…
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