Weighing the Giants - I. Weak-lensing masses for 51 massive galaxy clusters: project overview, data analysis methods and cluster images
Anja von der Linden (1,2), Mark T. Allen (1), Douglas E. Applegate, (1), Patrick L. Kelly (1), Steven W. Allen (1), Harald Ebeling (3), Patricia, R. Burchat (1), David L. Burke (1), David Donovan (3), R. Glenn Morris (1),, Roger Blandford (1), Thomas Erben (4)

TL;DR
This paper presents weak-lensing mass measurements for 51 massive galaxy clusters, aiming to calibrate cluster mass proxies and improve cosmological constraints by rigorously analyzing high-quality imaging data and quantifying systematic uncertainties.
Contribution
It provides the first comprehensive weak-lensing mass catalog for 51 clusters with detailed data analysis methods and systematic uncertainty quantification.
Findings
Weak-lensing masses are consistent with X-ray centroids for offsets <100kpc.
Median offset between X-ray centers and BCGs is 20kpc.
Systematic uncertainties are rigorously quantified.
Abstract
This is the first in a series of papers in which we measure accurate weak-lensing masses for 51 of the most X-ray luminous galaxy clusters known at redshifts 0.15<z<0.7, in order to calibrate X-ray and other mass proxies for cosmological cluster experiments. The primary aim is to improve the absolute mass calibration of cluster observables, currently the dominant systematic uncertainty for cluster count experiments. Key elements of this work are the rigorous quantification of systematic uncertainties, high-quality data reduction and photometric calibration, and the "blind" nature of the analysis to avoid confirmation bias. Our target clusters are drawn from RASS X-ray catalogs, and provide a versatile calibration sample for many aspects of cluster cosmology. We have acquired wide-field, high-quality imaging using the Subaru and CFHT telescopes for all 51 clusters, in at least three…
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