A Precise Cluster Mass Profile Averaged from the Highest-Quality Lensing Data
Keiichi Umetsu (ASIAA), Tom Broadhurst (Basque U., Bilbao), Adi Zitrin, (Tel Aviv U.), Elinor Medezinski (JHU), Dan Coe (STScI), Marc Postman (STScI)

TL;DR
This study combines multiple high-quality lensing measurements to derive a precise average mass profile of galaxy clusters, confirming the NFW model and providing insights into cluster concentration consistent with LCDM predictions.
Contribution
It presents a novel high-precision stacking method combining weak and strong lensing data to accurately measure cluster mass profiles over a wide radial range.
Findings
Stacked mass profile detected at 58-sigma significance.
Projected mass profile steepens beyond the virial radius, matching NFW predictions.
Cluster concentration is high but consistent with LCDM when projection bias is considered.
Abstract
We outline our methods for obtaining high precision mass profiles, combining independent weak-lensing distortion, magnification, and strong-lensing measurements. For massive clusters the strong and weak lensing regimes contribute equal logarithmic coverage of the radial profile. The utility of high-quality data is limited by the cosmic noise from large scale structure along the line of sight. This noise is overcome when stacking clusters, as too are the effects of cluster asphericity and substructure, permitting a stringent test of theoretical models. We derive a mean radial mass profile of four similar mass clusters of high-quality HST and Subaru images, in the range R=40kpc/h to 2800kpc/h, where the inner radial boundary is sufficiently large to avoid smoothing from miscentering effects. The stacked mass profile is detected at 58-sigma significance over the entire radial range, with…
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