CLASH-VLT: A Highly Precise Strong Lensing Model of the Galaxy Cluster RXC J2248.7-4431 (Abell S1063) and Prospects for Cosmography
G. B. Caminha, C. Grillo, P. Rosati, I. Balestra, W. Karman, M., Lombardi, A. Mercurio, M. Nonino, P. Tozzi, A. Zitrin, A. Biviano, M., Girardi, A. M. Koekemoer, P. Melchior, M. Meneghetti, E. Munari, S. H. Suyu,, K. Umetsu, M. Annunziatella, S. Borgani, T. Broadhurst

TL;DR
This study develops high-precision strong lensing models of galaxy cluster RXCJ2248 using extensive spectroscopic data, exploring systematics and cosmological implications with multiple model variations.
Contribution
It introduces a comprehensive set of 22 strong lensing models that analyze systematics and incorporate spectroscopic data to improve mass distribution and cosmological parameter estimates.
Findings
Best-fit model reproduces image positions with 0.3 arcsec rms.
Spectroscopic confirmation reduces biases in model parameters.
Constraints on cosmological parameters align with standard cosmology.
Abstract
We perform a comprehensive study of the total mass distribution of the galaxy cluster RXCJ2248 () with a set of high-precision strong lensing models, which take advantage of extensive spectroscopic information on many multiply lensed systems. In the effort to understand and quantify inherent systematics in parametric strong lensing modelling, we explore a collection of 22 models where we use different samples of multiple image families, parametrizations of the mass distribution and cosmological parameters. As input information for the strong lensing models, we use the CLASH HST imaging data and spectroscopic follow-up observations, carried out with the VIMOS and MUSE spectrographs, to identify bona-fide multiple images. A total of 16 background sources, over the redshift range , are multiply lensed into 47 images, 24 of which are spectroscopically confirmed and belong…
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