Constraints on the Richness-Mass Relation and the Optical-SZE Positional Offset Distribution for SZE-Selected Clusters
A. Saro, S. Bocquet, E. Rozo, B. A. Benson, J. Mohr, E. S. Rykoff, M., Soares-Santos, L. Bleem, S. Dodelson, P. Melchior, F. Sobreira, V. Upadhyay,, J. Weller, T. Abbott, F. B. Abdalla, S. Allam, R. Armstrong, M. Banerji, A.H., Bauer, M. Bayliss, A. Benoit-Levy, G. M. Bernstein

TL;DR
This study models the relation between optical richness and mass for SZE-selected galaxy clusters, constrains positional offsets, and enhances cluster detection by cross-matching SPT-SZ and DES data, providing insights into cluster properties and detection efficiencies.
Contribution
It introduces a combined optical-SZE model for cluster richness-mass relation and positional offsets, improving understanding of cluster detection and characterization in overlapping surveys.
Findings
Richness-mass relation parameters constrained with uncertainties.
Positional offset distribution modeled with two Gaussians, indicating a central and offset population.
Additional low-significance clusters identified through optical confirmation.
Abstract
We cross-match galaxy cluster candidates selected via their Sunyaev-Zel'dovich effect (SZE) signatures in 129.1 deg of the South Pole Telescope 2500d SPT-SZ survey with optically identified clusters selected from the Dark Energy Survey (DES) science verification data. We identify 25 clusters between in the union of the SPT-SZ and redMaPPer (RM) samples. RM is an optical cluster finding algorithm that also returns a richness estimate for each cluster. We model the richness -mass relation with the following function and use SPT-SZ cluster masses and RM richnesses to constrain the parameters. We find and . The associated scatter in mass at fixed richness is $\sigma_{\ln M|\lambda} =…
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