Molecular Cloud Populations in the Context of Their Host Galaxy Environments: A Multiwavelength Perspective
Jiayi Sun, Adam K. Leroy, Erik Rosolowsky, Annie Hughes, Eva, Schinnerer, Andreas Schruba, Eric W. Koch, Guillermo A. Blanc, I-Da Chiang,, Brent Groves, Daizhong Liu, Sharon Meidt, Hsi-An Pan, Jerome Pety, Miguel, Querejeta, Toshiki Saito, Karin Sandstrom, Amy Sardone

TL;DR
This study uses a multiwavelength database to analyze molecular cloud populations across 80 galaxies, revealing how local environmental factors influence cloud properties and estimating key timescales for cloud evolution and star formation.
Contribution
It provides a comprehensive multi-scale analysis linking molecular cloud properties to galaxy environments and estimates relevant evolutionary timescales.
Findings
Cloud properties correlate strongly with local environmental conditions.
Kpc-scale gas and SFR surface densities are most predictive of cloud properties.
Cloud lifetimes are estimated to be 5-20 Myr, with longer timescales for orbital and shear effects.
Abstract
We present a rich, multiwavelength, multiscale database built around the PHANGS-ALMA CO(2-1) survey and ancillary data. We use this database to present the distributions of molecular cloud populations and sub-galactic environments in 80 PHANGS galaxies, to characterize the relationship between population-averaged cloud properties and host galaxy properties, and to assess key timescales relevant to molecular cloud evolution and star formation. We show that PHANGS probes a wide range of kpc-scale gas, stellar, and star formation rate (SFR) surface densities, as well as orbital velocities and shear. The population-averaged cloud properties in each aperture correlate strongly with both local environmental properties and host galaxy global properties. Leveraging a variable selection analysis, we find that the kpc-scale surface densities of molecular gas and SFR tend to possess the most…
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