The MUSE Deep Lensed Field on the Hubble Frontier Field MACS~J0416
E. Vanzella, G. B. Caminha, P. Rosati, A. Mercurio, M. Castellano, M., Meneghetti, C. Grillo, E. Sani, P. Bergamini, F. Calura, K. Caputi, S., Cristiani, G. Cupani, A. Fontana, R. Gilli, A. Grazian, M. Gronke, M., Mignoli, M. Nonino, L. Pentericci, P. Tozzi, T. Treu, I. Balestra

TL;DR
The paper presents deep MUSE observations of the MACS J0416 galaxy cluster, confirming redshifts of faint high-redshift sources, resolving their internal structures, and enhancing gravitational lensing models to study early universe star formation.
Contribution
It introduces the MUSE Deep Lensed Field program, providing unprecedented spectroscopic data that improve lens models and reveal internal structures of faint high-redshift galaxies.
Findings
Confirmed redshifts for 48 high-z galaxies and 136 multiple images.
Detected UV metal lines in sources as faint as magnitude 30.
Resolved galaxy clumps down to 100-200 pc, including potential star clusters.
Abstract
Context: A census of faint and tiny star forming complexes at high redshift is key to improving our understanding of reionizing sources, galaxy growth and the formation of globular clusters. Aims: We present the MUSE Deep Lensed Field (MDLF) program. Methods: We describe Deep MUSE observations of 17.1 hours integration on a single pointing over the Hubble Frontier Field galaxy cluster MACS~J0416. Results: We confirm spectroscopic redshifts for all 136 multiple images of 48 source galaxies at 0.9<z<6.2. Within those galaxies, we securely identify 182 multiple images of 66 galaxy components that we use to constrain our lens model. We identify 116 clumps belonging to background high-z galaxies; the majority of them are multiple images and span magnitude, size and redshift intervals of [-18,-10], [~400-3] parsec and 1<z<6.6, respectively, with the most magnified ones probing possible single…
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