The Herschel view of the on-going star formation in the Vela-C molecular cloud
T.Giannini, D. Elia, D. Lorenzetti, S. Molinari, F. Motte, E., Schisano, S. Pezzuto, M. Pestalozzi, A. M. Di Giorgio, P. Andr\`e, T. Hill,, M. Benedettini, S. Bontemps, J. Di Francesco, C. Fallscheer, M. Hennemann, J., Kirk, V. Minier, Q. Nguyen Luong, D. Polychroni, K.L.J. Rygl

TL;DR
This study uses Herschel observations to analyze star formation in the Vela-C molecular cloud, identifying and characterizing 268 sources, including protostellar and starless objects, and examining their physical properties and mass distribution.
Contribution
First comprehensive Herschel-based survey of Vela-C, providing detailed classification and physical parameters of star-forming sources in this nearby molecular cloud.
Findings
Protostellar sources are warmer and more compact than starless ones.
Approximately 90% of starless sources are gravitationally bound and prestellar.
Prestellar mass distribution follows a power law with index -1.1.
Abstract
As part of the Herschel guaranteed time key program 'HOBYS', we present the photometric survey of the star forming region Vela-C, one of the nearest sites of low-to-high-mass star formation in the Galactic plane. Vela-C has been observed with PACS and SPIRE in parallel mode between 70 um and 500 um over an area of about 3 square degrees. A photometric catalogue has been extracted from the detections in each band, using a threshold of 5 sigma over the local background. Out of this catalogue we have selected a robust sub-sample of 268 sources, of which 75% are cloud clumps and 25% are cores. Their Spectral Energy Distributions (SEDs) have been fitted with a modified black body function. We classify 48 sources as protostellar and 218 as starless. For two further sources, we do not provide a secure classification, but suggest they are Class 0 protostars. From SED fitting we have derived…
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