Molecular Gas Properties and CO-to-H2 Conversion Factors in the Central Kiloparsec of NGC 3351
Yu-Hsuan Teng, Karin M. Sandstrom, Jiayi Sun, Adam K. Leroy, L., Clifton Johnson, Alberto D. Bolatto, J. M. Diederik Kruijssen, Andreas, Schruba, Antonio Usero, Ashley T. Barnes, Frank Bigiel, Guillermo A. Blanc,, Brent Groves, Frank P. Israel, Daizhong Liu, Erik Rosolowsky

TL;DR
This study uses high-resolution ALMA observations and radiative transfer modeling to analyze molecular gas properties and CO-to-H2 conversion factors in the central kiloparsec of NGC 3351, revealing environmental variations affecting $ m{ m{ extit{ extalpha}_ m{CO}}}$.
Contribution
It provides detailed, pixel-by-pixel measurements of gas density, temperature, and $ m{ extalpha}_ m{CO}$ in NGC 3351's center, highlighting the impact of inflows and turbulence on conversion factors.
Findings
$ m{ extalpha}_ m{CO}$ varies from 0.5 to 2.0 in the central region.
Lower $ m{ extalpha}_ m{CO}$ (<0.1) in inflows due to turbulence or shear.
Overall $ m{ extalpha}_ m{CO}$ is about 1.5, consistent with previous dust-based estimates.
Abstract
The CO-to-H conversion factor (\alpha_\rm{CO}) is critical to studying molecular gas and star formation in galaxies. The value of \alpha_\rm{CO} has been found to vary within and between galaxies, but the specific environmental conditions that cause these variations are not fully understood. Previous observations on kpc scales revealed low values of \alpha_\rm{CO} in the centers of some barred spiral galaxies, including NGC 3351. We present new ALMA Band 3, 6, and 7 observations of CO, CO, and CO lines on 100 pc scales in the inner 2 kpc of NGC 3351. Using multi-line radiative transfer modeling and a Bayesian likelihood analysis, we infer the H density, kinetic temperature, CO column density per line width, and CO isotopologue abundances on a pixel-by-pixel basis. Our modeling implies the existence of a dominant gas component with a density…
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