COLD GASS, an IRAM Legacy Survey of Molecular Gas in Massive Galaxies: II. The non-universality of the Molecular Gas Depletion Timescale
Amelie Saintonge, Guinevere Kauffmann, Jing Wang, Carsten Kramer,, Linda J. Tacconi, Christof Buchbender, Barbara Catinella, Javier, Gracia-Carpio, Luca Cortese, Silvia Fabello, Jian Fu, Reinhard Genzel,, Riccardo Giovanelli, Qi Guo, Martha P. Haynes, Timothy M. Heckman, Mark R.

TL;DR
This study reveals that the molecular gas depletion timescale varies significantly with galaxy mass and star formation rate, challenging the notion of a universal depletion timescale across different galaxy types and epochs.
Contribution
It provides the first comprehensive analysis showing the non-universality of molecular gas depletion timescales in massive galaxies, highlighting their dependence on stellar mass and specific star formation rate.
Findings
Depletion timescale increases with galaxy stellar mass.
Molecular gas is consumed faster than atomic gas in low-mass galaxies.
High-redshift galaxies have longer depletion timescales due to larger gas fractions.
Abstract
We study the relation between molecular gas and star formation in a volume-limited sample of 222 galaxies from the COLD GASS survey, with measurements of the CO(1-0) line from the IRAM 30m telescope. The galaxies are at redshifts 0.025<z<0.05 and have stellar masses in the range 10.0<log(M*/Msun)<11.5. The IRAM measurements are complemented by deep Arecibo HI observations and homogeneous SDSS and GALEX photometry. A reference sample that includes both UV and far-IR data is used to calibrate our estimates of star formation rates from the seven optical/UV bands. The mean molecular gas depletion timescale, tdep(H2), for all the galaxies in our sample is 1 Gyr, however tdep(H2) increases by a factor of 6 from a value of ~0.5 Gyr for galaxies with stellar masses of 10^10 Msun to ~3 Gyr for galaxies with masses of a few times 10^11 Msun. In contrast, the atomic gas depletion timescale remains…
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