The history of star-forming galaxies in the Sloan Digital Sky Survey
N. V. Asari (1), R. Cid Fernandes (1), G. Stasinska (2), J. P., Torres-Papaqui (1,3), A. Mateus (4), L. Sodre Jr. (5), W. Schoenell (1), J., M. Gomes (1) (for the SEAGal collaboration) ((1) UFSC, Brazil, (2) LUTH,, Observatoire de Paris, France, (3) INAOE, Mexico

TL;DR
This study analyzes the star formation histories of over 82,000 SDSS galaxies, introducing new methods to relate spectral synthesis results to galaxy evolution, and finds systematic variations in star formation based on nebular metallicity.
Contribution
It presents a novel formalism to derive time-dependent star formation rates from spectral synthesis, enabling analysis of galaxy evolution across metallicity, mass, and surface density.
Findings
Star formation histories vary systematically with nebular metallicity.
Current SFR estimates from spectral synthesis agree with H-alpha within a factor of two.
Low-metallicity galaxies evolve slower and have higher relative star formation rates.
Abstract
We study the evolution of 82302 star-forming (SF) galaxies from the SDSS. Our main goals are to explore new ways of handling star formation histories (SFH) obtained with our publicly available spectral synthesis code STARLIGHT, and apply them to investigate how SFHs vary as a function of nebular metallicity (Zneb). Our main results are: (1) A conventional correlation analysis shows how global properties such as luminosity, mass, dust content, mean stellar metallicity and mean stellar age relate to Zneb. (2) We present a simple formalism which compresses the results of the synthesis into time-dependent star formation rates (SFR) and mass assembly histories. (3) The current SFR derived from the population synthesis and that from H-alpha are shown to agree within a factor of two. Thus we now have a way to estimate SFR in AGN hosts, where the H-alpha method cannot be applied. (4) Fully…
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