Weak-lensing mass calibration of redMaPPer galaxy clusters in Dark Energy Survey Science Verification data
P. Melchior, D. Gruen, T. McClintock, T. N. Varga, E. Sheldon, E., Rozo, A. Amara, M. R. Becker, B. A. Benson, A. Bermeo, S. L. Bridle, J., Clampitt, J. P. Dietrich, W. G. Hartley, D. Hollowood, B. Jain, M. Jarvis, T., Jeltema, T. Kacprzak, N. MacCrann, E. S. Rykoff, A. Saro

TL;DR
This study uses weak-lensing shear measurements to calibrate the mass-richness relation of redMaPPer galaxy clusters in DES data, extending previous calibrations to higher redshifts and addressing systematic uncertainties.
Contribution
It provides a new weak-lensing calibration of the redMaPPer cluster mass-richness relation up to redshift 0.8, including systematic error analysis and comparison with previous results.
Findings
Mass-richness relation amplitude consistent with previous calibrations.
Extended calibration to higher redshift range (up to z=0.8).
Identified dominant systematic uncertainties in shear and photometric redshift measurements.
Abstract
We use weak-lensing shear measurements to determine the mean mass of optically selected galaxy clusters in Dark Energy Survey Science Verification data. In a blinded analysis, we split the sample of more than 8,000 redMaPPer clusters into 15 subsets, spanning ranges in the richness parameter and redshift , and fit the averaged mass density contrast profiles with a model that accounts for seven distinct sources of systematic uncertainty: shear measurement and photometric redshift errors; cluster-member contamination; miscentering; deviations from the NFW halo profile; halo triaxiality; and line-of-sight projections. We combine the inferred cluster masses to estimate the joint scaling relation between mass, richness and redshift, . We find $M_0 \equiv \langle…
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