The ACS Nearby Galaxy Survey Treasury IX. Constraining asymptotic giant branch evolution with old metal-poor galaxies
Leo Girardi, Benjamin F. Williams, Karoline M. Gilbert, Philip, Rosenfield, Julianne J. Dalcanton, Paola Marigo, Martha L. Boyer, Andrew, Dolphin, Daniel R. Weisz, Jason Melbourne, Knut A.G. Olsen, Anil C. Seth,, Evan Skillman

TL;DR
This study uses observations of old, metal-poor galaxies to constrain models of asymptotic giant branch (AGB) star evolution, focusing on luminosity functions and star ratios to refine theoretical predictions.
Contribution
It provides new empirical constraints on low-mass, metal-poor AGB star models by analyzing star ratios in nearby galaxies, improving model calibration.
Findings
AGB/RGB ratio constrains TP-AGB lifetimes to 1.2-1.8 Myr
AGB final masses are between 0.51 and 0.55 Msun
Models matching observations have specific mass loss prescriptions
Abstract
In an attempt to constrain evolutionary models of the asymptotic giant branch (AGB) phase at the limit of low masses and low metallicities, we have examined the luminosity functions and number ratio between AGB and red giant branch (RGB) stars from a sample of resolved galaxies from the ACS Nearby Galaxy Survey Treasury (ANGST). This database provides HST optical photometry together with maps of completeness, photometric errors, and star formation histories for dozens of galaxies within 4 Mpc. We select 12 galaxies characterized by predominantly metal-poor populations as indicated by a very steep and blue RGB, and which do not present any indication of recent star formation in their color--magnitude diagrams. Thousands of AGB stars brighter than the tip of the RGB (TRGB) are present in the sample (between 60 and 400 per galaxy), hence the Poisson noise has little impact in our…
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