A few StePS forward in unveiling the complexity of galaxy evolution: light-weighted stellar ages of intermediate redshift galaxies with WEAVE
L. Costantin, A. Iovino, S. Zibetti, M. Longhetti, A. Gallazzi, A., Mercurio, I. Lonoce, M. Balcells, M. Bolzonella, G. Busarello, G. Dalton, A., Ferr\'e-Mateu, R. Garc\'ia-Benito, A. Gargiulo, C. Haines, S. Jin, F. La, Barbera, S. McGee, P. Merluzzi, L. Morelli, D. N. A. Murphy

TL;DR
This paper develops a Bayesian method to measure light-weighted stellar ages in intermediate-redshift galaxies using simulated spectra, enabling the study of complex star formation histories with upcoming WEAVE spectrograph data.
Contribution
It introduces a robust approach to derive ultraviolet and optical spectral indices and their age differences, improving the analysis of galaxy evolution at intermediate redshifts.
Findings
Ultraviolet indices reduce uncertainties in age estimates.
Method reliably detects secondary star formation episodes.
Age difference between bands constrains extended star formation histories.
Abstract
The upcoming new generation of optical spectrographs on four-meter-class telescopes will provide invaluable information for reconstructing the history of star formation in individual galaxies up to redshifts of about 0.7. We aim at defining simple but robust and meaningful physical parameters that can be used to trace the coexistence of widely diverse stellar components: younger stellar populations superimposed on the bulk of older ones. We produce spectra of galaxies closely mimicking data from the forthcoming Stellar Populations at intermediate redshifts Survey (StePS), a survey that uses the WEAVE spectrograph on the William Herschel Telescope. First, we assess our ability to reliably measure both ultraviolet and optical spectral indices in galaxies of different spectral types for typically expected signal-to-noise levels. Then, we analyze such mock spectra with a Bayesian approach,…
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