The Spitzer c2d Legacy Results: Star Formation Rates and Efficiencies; Evolution and Lifetimes
Neal J. Evans II, Michael M. Dunham, Jes K. J{\o}rgensen, Melissa L., Enoch, Bruno Mer\'in, Ewine F. van Dishoeck, Juan M. Alcal\'a, Philip C., Myers, Karl R. Stapelfeldt, Tracy L. Huard, Lori E. Allen, Paul M. Harvey,, Tim van Kempen, Geoffrey A. Blake, David W. Koerner

TL;DR
This study analyzes star formation rates, efficiencies, and lifetimes in nearby molecular clouds using Spitzer data, revealing higher efficiencies and longer protostellar phases than previously thought, with implications for star formation models.
Contribution
It provides a comprehensive statistical analysis of star formation properties across multiple clouds, updating estimates of efficiencies and protostellar lifetimes with new Spitzer data.
Findings
Star formation efficiencies range from 3% to 6%.
Protostellar phases last longer than early estimates.
Star formation surface density exceeds predictions from extragalactic relations.
Abstract
(Abridged) The c2d Spitzer Legacy project obtained images and photometry with both IRAC and MIPS instruments for five large, nearby molecular clouds. This paper combines information drawn from studies of individual clouds into a combined and updated statistical analysis of star formation rates and efficiencies, numbers and lifetimes for SED classes, and clustering properties. Current star formation efficiencies range from 3% to 6%. Taken together, the five clouds are producing about 260 solar masses of stars per Myr. The star formation surface density is more than an order of magnitude larger than would be predicted from the Kennicutt relation used in extragalactic studies. Measured against the dense gas probed by the maps of dust continuum emission, the efficiencies are much higher, and the current stock of dense cores would be exhausted in 1.8 Myr on average. The derived lifetime for…
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