The GALEX Arecibo SDSS Survey II: The Star Formation Efficiency of Massive Galaxies
David Schiminovich, Barbara Catinella, Guinevere Kauffmann, Silvia, Fabello, Jing Wang, Cameron Hummels, Jenna Lemonias, Sean M. Moran, Ronin Wu,, Riccardo Giovanelli, Martha P. Haynes, Timothy M. Heckman, Antara R., Basu-Zych, Michael R. Blanton, Jarle Brinchmann

TL;DR
This study examines the star formation efficiency in massive galaxies, finding it remains relatively constant regardless of galaxy properties, and explores the implications for galaxy evolution and gas regulation mechanisms.
Contribution
It provides the first detailed analysis of the HI-based star formation efficiency in a large sample of massive galaxies, revealing its constancy and potential regulation by external processes.
Findings
Star formation efficiency is roughly constant at ~10^-9.5 yr^-1 across the sample.
Approximately 5% of galaxies show high efficiencies likely due to gas deficiency.
A significant fraction of HI mass and SFR density resides in massive galaxies.
Abstract
We use measurements of the HI content, stellar mass and star formation rates in ~190 massive galaxies with stellar masses greater than 10^10 Msun, obtained from the Galex Arecibo SDSS Survey (GASS) described in Paper I (Catinella et al. 2010) to explore the global scaling relations associated with the bin-averaged ratio of the star formation rate over the HI mass, which we call the HI-based star formation efficiency (SFE). Unlike the mean specific star formation rate, which decreases with stellar mass and stellar mass surface density, the star formation efficiency remains relatively constant across the sample with a value close to SFE = 10^-9.5 yr^-1 (or an equivalent gas consumption timescale of ~3 Gyr). Specifically, we find little variation in SFE with stellar mass, stellar mass surface density, NUV-r color and concentration. We interpret these results as an indication that external…
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