The RMS Survey: Distribution and properties of a sample of massive young stars
J. S. Urquhart (1), T. J. T. Moore (2), M. G. Hoare (3), S. L. Lumsden, (3), R. D. Oudmaijer (3), J. M. Rathborne (1,4), J. C. Mottram (5), B. Davies, (3), J. J. Stead (3) ((1) CSIRO Astronomy, Space Science, (2) Liverpool, John Moores University, (3) University of Leeds

TL;DR
This study uses the RMS survey to analyze the distribution, properties, and galactic placement of massive young stars, revealing their correlation with spiral arms and a scale height that varies with galactocentric radius.
Contribution
It provides a comprehensive analysis of a large sample of massive young stellar objects, including their distances, luminosities, and spatial distribution within the Galaxy, highlighting their association with spiral structures.
Findings
Over 90% of sources are indicative of massive stars.
Identified peaks in source density at 4, 6, and 8 kpc galactocentric radii.
Average scale height of ~29 pc, increasing with galactocentric radius.
Abstract
The Red MSX Source (RMS) survey has identified a large sample of massive young stellar objects (MYSOs) and ultra compact (UC) HII regions from a sample of ~2000 MSX and 2MASS colour selected sources. Using a recent catalogue of molecular clouds derived from the Boston University-Five College Radio Astronomy Observatory Galactic Ring Survey (GRS), and by applying a Galactic scaleheight cut off of 120 pc, we solve the distance ambiguity for RMS sources located within 18\degr < |l| > 54\degr. These two steps yield kinematic distances to 291 sources out of a possible 326 located within the GRS longitude range. Combining distances and integrated fluxes derived from spectral energy distributions, we estimate luminosities to these sources and find that > 90% are indicative of the presence of a massive star. We find the completeness limit of our sample is ~10^4 Lsun, which corresponds to a zero…
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