Recovering star formation histories: Integrated-light analyses vs stellar colour-magnitude diagrams
T. Ruiz-Lara, I. P\'erez, C. Gallart, D. Alloin, M. Monelli, M., Koleva, E. Pompei, M. Beasley, P. S\'anchez-Bl\'azquez, E. Florido, A., Aparicio, E. Fleurence, E. Hardy, S. Hidalgo, D. Raimann

TL;DR
This study compares star formation histories derived from integrated light spectroscopy with those from resolved stellar populations, demonstrating high accuracy and reliability of spectral fitting methods like STECKMAP for unresolved galaxies.
Contribution
It provides a validation of spectral fitting techniques against CMD-based SFHs, highlighting STECKMAP's effectiveness in recovering complex star formation histories.
Findings
Excellent agreement (∼4.1%) between spectral and CMD SFHs.
STECKMAP effectively minimizes age-metallicity degeneracy.
Spectral fitting methods are reliable for unresolved galaxy analysis.
Abstract
Accurate star formation histories (SFHs) of galaxies are fundamental for understanding the build-up of their stellar content. However, the most accurate SFHs - those obtained from colour-magnitude diagrams (CMDs) of resolved stars reaching the oldest main sequence turnoffs (oMSTO) - are presently limited to a few systems in the Local Group. It is therefore crucial to determine the reliability and range of applicability of SFHs derived from integrated light spectroscopy, as this affects our understanding of unresolved galaxies from low to high redshift. To evaluate the reliability of current full spectral fitting techniques in deriving SFHs from integrated light spectroscopy by comparing SFHs from integrated spectra to those obtained from deep CMDs of resolved stars. We have obtained a high signal--to--noise (S/N 36.3 per \AA) integrated spectrum of a field in the bar of the…
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