The RMS Survey: Critical Tests of Accretion Models for the Formation of Massive Stars
Ben Davies (IoA, Cambridge/Leeds), Melvin G. Hoare (Leeds), Stuart L., Lumsden (Leeds), Takashi Hosokawa (JPL/Kyoto), Rene D. Oudmaijer (Leeds),, James S. Urquhart (CSIRO), Joseph C. Mottram (Exeter), Joseph Stead, (Leeds)

TL;DR
This study uses simulations and the RMS survey data to test star formation models, finding that accelerating accretion models best match observations and suggesting a YSO phase lifetime of around 100,000 years.
Contribution
It provides the first comprehensive comparison of accretion models with Galactic massive star observations, favoring accelerating accretion scenarios.
Findings
Accelerating accretion models fit the data well.
Constant or decreasing accretion models are incompatible with observations.
The YSO phase lasts approximately 10^5 years.
Abstract
There is currently no accepted theoretical framework for the formation of the most massive stars, and the manner in which protostars continue to accrete and grow in mass beyond \sim10Msun is still a controversial topic. In this study we use several prescriptions of stellar accretion and a description of the Galactic gas distribution to simulate the luminosities and spatial distribution of massive protostellar population of the Galaxy. We then compare the observables of each simulation to the results of the Red MSX Source (RMS) survey, a recently compiled database of massive young stellar objects. We find that the observations are best matched by accretion rates which increase as the protostar grows in mass, such as those predicted by the turbulent core and competitive accretion (i.e. Bondi-Hoyle) models. These 'accelerating accretion' models provide very good qualitative and…
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