CO Multi-line Imaging of Nearby Galaxies (COMING): VI. Radial variations in star formation efficiency
Kazuyuki Muraoka, Kazuo Sorai, Yusuke Miyamoto, Moe Yoda, Kana, Morokuma-matsui, Masato I.N. Kobayashi, Mayu Kuroda, Hiroyuki Kaneko, Nario, Kuno, Tsutomu T. Takeuchi, Hiroyuki Nakanishi, Yoshimasa Watanabe, Takahiro, Tanaka, Atsushi Yasuda, Yoshiyuki Yajima, Shugo Shibata

TL;DR
This study investigates how star formation efficiency varies radially in 80 nearby galaxies, finding it mostly constant but with some dependence on galaxy morphology and bar structures, revealing diverse star formation activities.
Contribution
It provides a comprehensive analysis of radial SFE variations across a large galaxy sample, highlighting differences related to morphology and bar features.
Findings
SFE is nearly constant along galactocentric radius within individual galaxies.
Average SFE across 80 galaxies is approximately 1.69 x 10^{-9} yr^{-1}.
Inner regions of SB galaxies tend to have higher SFE, with diversity observed in bar-related star formation activity.
Abstract
We examined radial variations in molecular-gas based star formation efficiency (SFE), which is defined as star formation rate per unit molecular gas mass, for 80 galaxies selected from the CO Multi-line Imaging of Nearby Galaxies project (Sorai et al. 2019). The radial variations in SFE for individual galaxies are typically a factor of 2 -- 3, which suggests that SFE is nearly constant along galactocentric radius. We found the averaged SFE in 80 galaxies of yr, which is consistent with Leroy et al. 2008 if we consider the contribution of helium to the molecular gas mass evaluation and the difference in the assumed initial mass function between two studies. We compared SFE among different morphological (i.e., SA, SAB, and SB) types, and found that SFE within the inner radii (, where is -band isophotal radius at 25 mag…
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