Mock weak lensing analysis of simulated galaxy clusters: bias and scatter in mass and concentration
Yannick M. Bah\'e (1), Ian G. McCarthy (2,1), Lindsay J. King (1,2), ((1) Institute of Astronomy, Cambridge, (2) Kavli Institute for Cosmology,, Cambridge)

TL;DR
This study uses simulated weak lensing data to quantify biases and scatter in galaxy cluster mass and concentration estimates, revealing significant effects on the derived mass-concentration relation due to observational and structural factors.
Contribution
It provides a detailed analysis of bias and scatter in WL-derived cluster parameters using realistic simulations, highlighting the impact of substructure, shape noise, and halo triaxiality.
Findings
Median bias in mass and concentration is about 5%.
Scatter in mass and concentration is approximately 20-30%.
WL-derived mass-concentration relation is systematically underestimated.
Abstract
(Abridged) We quantify the bias and scatter in galaxy cluster masses and concentrations derived from an idealised mock weak gravitational lensing (WL) survey, and their effect on the cluster mass-concentration relation. For this, we simulate WL distortions on a population of background galaxies due to a large (~3000) sample of galaxy cluster haloes extracted from the Millennium Simulation at z~0.2. This study takes into account the influence of shape noise, cluster substructure and asphericity as well as correlated large-scale structure, but not uncorrelated large-scale structure along the line of sight and observational effects. We find a small, but non-negligble, negative median bias in both mass and concentration at a level of ~5%, the exact value depending both on cluster mass and radial survey range. Both the mass and concentration derived from WL show considerable scatter about…
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