The RMS Survey: Ammonia mapping of the environment of massive young stellar objects
J. S. Urquhart (1), C. C. Figura (2), T. J. T. Moore (3), T. Csengeri, (1), S. L. Lumsden (4), T. Pillai (1), M. A. Thompson (5), D. J. Eden (6), L., K. Morgan (3,7), ((1) MPIfR,(2) Wartburg College, (3) LJMU, (4) Leeds, (5), Herts, (6) Universite de Strasbourg, (7) Met Office)

TL;DR
This study maps ammonia emission in 66 massive star-forming regions, revealing properties of dense clumps, temperature gradients, and gravitational binding, providing insights into the initial conditions of massive star formation.
Contribution
First large-scale ammonia mapping of massive star-forming regions, linking gas properties with embedded objects, and analyzing the potential for future star formation in quiescent clumps.
Findings
Most clumps are gravitationally bound and likely in free fall.
Star forming and quiescent clumps have similar sizes and masses.
Temperature and line width gradients peak towards star forming clump centers.
Abstract
We present the results of ammonia observations towards 66 massive star forming regions identified by the Red MSX source survey. We have used the Green Bank Telescope and the K-band focal plane array to map the ammonia NH3 (1,1) and (2,2) inversion emission at a resolution of 30 arcsec in 8 arcmin regions towards the positions of embedded massive star formation. We have identified a total of 115 distinct clumps, approximately two-thirds of which are associated with an embedded massive young stellar object or compact HII region, while the others are classified as quiescent. There is a strong spatial correlation between the peak NH3 emission and the presence of embedded objects. We derive the spatial distribution of the kinetic gas temperatures, line widths, and NH column densities from these maps, and by combining these data with dust emission maps we estimate clump masses, H…
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