Candidate free-floating super-Jupiters in the young sigma Orionis open cluster
G. Bihain, R. Rebolo, M. R. Zapatero Osorio, V. J. S. B\'ejar, I., Vill\'o-P\'erez, A. D\'iaz-S\'anchez, A. P\'erez-Garrido, J. A. Caballero, C., A. L. Bailer-Jones, D. Barrado y Navascu\'es, J. Eisl\"offel, T. Forveille,, B. Goldman, T. Henning, E. L. Mart\'in, R. Mundt

TL;DR
This study searches for the lowest-mass free-floating objects in the sigma Orionis cluster, finding candidates around 4 Jupiter masses and suggesting a potential decline in object frequency below 6 Jupiter masses, informing formation theories.
Contribution
It reports the discovery of new ultra-low-mass free-floating objects in sigma Orionis and analyzes the mass function at the planetary-mass boundary, indicating a possible cutoff below 6 Jupiter masses.
Findings
Discovery of three new candidates with masses around 4 Jupiter masses.
Evidence of a potential turnover in the substellar mass spectrum below 6 Jupiter masses.
Identification of candidates as L/T transition objects and possible companions.
Abstract
Free-floating substellar candidates with estimated theoretical masses of as low as ~5 Jupiter masses have been found in the ~3 Myr old sigma Orionis open cluster. As the overlap with the planetary mass domain increases, the question of how these objects form becomes important. The determination of their number density and whether a mass cut-off limit exists is crucial to understanding their formation. We propose to search for objects of yet lower masses in the cluster and determine the shape of the mass function at low mass. Using new- and (re-analysed) published IZJHKs[3.6]-[8.0]-band data of an area of 840 arcmin2, we performed a search for LT-type cluster member candidates in the magnitude range J=19.5-21.5 mag, based on their expected magnitudes and colours. Besides recovering the T type object S Ori 70 and two other known objects, we find three new cluster member candidates, S Ori…
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