The Cluster Lensing and Supernova Survey with Hubble (CLASH): Strong Lensing Analysis of Abell 383 from 16-Band HST WFC3/ACS Imaging
A. Zitrin, T. Broadhurst, D. Coe, K. Umetsu, M. Postman, N. Ben\'itez,, M. Meneghetti, E. Medezinski, S. Jouvel, L. Bradley, A. Koekemoer, W. Zheng,, H. Ford, J. Merten, D. Kelson, O. Lahav, D. Lemze, A. Molino, M. Nonino, M., Donahue, P. Rosati, A. Van der Wel, M. Bartelmann

TL;DR
This study uses deep multi-band HST imaging to analyze the mass distribution of galaxy cluster Abell 383 through strong lensing, identifying multiple lensed images to constrain its inner mass profile and compare it with weak lensing results.
Contribution
The paper presents a detailed strong lensing analysis of Abell 383 using 16-band HST imaging, discovering 13 new lensed images, and demonstrates the consistency of mass profiles with weak lensing and standard models.
Findings
Inner mass profile slope of approximately -0.6
Mass profile well fitted by an NFW profile with high concentration
Validation of imaging strategy for the CLASH survey
Abstract
We examine the inner mass distribution of the relaxed galaxy cluster Abell 383 in deep 16-band HST/ACS+WFC3 imaging taken as part of the CLASH multi-cycle treasury program. Our program is designed to study the dark matter distribution in 25 massive clusters, and balances depth with a wide wavelength coverage to better identify lensed systems and generate precise photometric redshifts. This information together with the predictive strength of our strong-lensing analysis method identifies 13 new multiply-lensed images and candidates, so that a total of 27 multiple-images of 9 systems are used to tightly constrain the inner mass profile, (r<160 kpc). We find consistency with the standard distance-redshift relation for the full range spanned by the lensed images, 1.01<z<6.03, with the higher redshift sources deflected through larger angles as…
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