Probability Distribution Functions OF 12CO(J = 1-0) Brightness and Integrated Intensity in M51: The PAWS View
Annie Hughes, Sharon E. Meidt, Eva Schinnerer, Dario Colombo, Jerome, Pety, Adam K. Leroy, Clare L. Dobbs, Santiago Garcia-Burillo, Todd A., Thompson, Gaelle Dumas, Karl F. Schuster, Carsten Kramer

TL;DR
This study analyzes the probability distribution functions of CO brightness and intensity in M51 at high resolution, revealing environmental variations and correlations with local molecular cloud and star cluster properties, highlighting the influence of galactic dynamics.
Contribution
It provides detailed PDFs of CO emission in M51 and compares them with other galaxies, showing environmental dependence and linking gas properties to galactic-scale processes.
Findings
CO PDFs in M51 are generally lognormal but vary with environment.
Spiral arms and central regions show diverse CO PDF shapes with bright emission excess.
CO PDF shape correlates with local GMC and stellar cluster properties.
Abstract
We analyse the distribution of CO brightness temperature and integrated intensity in M51 at ~40 pc resolution using new CO data from the Plateau de Bure Arcsecond Whirlpool Survey (PAWS). We present probability distribution functions (PDFs) of the CO emission within the PAWS field, which covers the inner 11 x 7 kpc of M51. We find variations in the shape of CO PDFs within different M51 environments, and between M51 and M33 and the Large Magellanic Cloud (LMC). Globally, the PDFs for the inner disk of M51 can be represented by narrow lognormal functions that cover 1 to 2 orders of magnitude in CO brightness and integrated intensity. The PDFs for M33 and the LMC are narrower and peak at lower CO intensities. However, the CO PDFs for different dynamical environments within the PAWS field depart from the shape of the global distribution. The PDFs for the interarm region are approximately…
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