The Contribution of TP-AGB and RHeB Stars to the Near-IR Luminosity of Local Galaxies: Implications for Stellar Mass Measurements of High Redshift Galaxies
J. Melbourne (Caltech), Benjamin F. Williams (U. Washington), Julianne, J. Dalcanton (U. Washington), Philip Rosenfield (U. Washington), L\'eo, Girardi (INAF), P. Marigo (INAF), D. Weisz (U. Washington), A. Dolphin, (Raytheon), Martha L. Boyer (STScI), Knut Olsen (NOAO)

TL;DR
This study quantifies the contributions of TP-AGB and RHeB stars to near-infrared luminosity in local galaxies, revealing significant variability affecting stellar mass estimates of high-redshift galaxies and highlighting discrepancies in stellar population models.
Contribution
It provides new observational constraints on TP-AGB and RHeB star contributions to NIR luminosity, challenging existing stellar population synthesis models and improving understanding of galaxy mass measurements.
Findings
TP-AGB stars contribute up to 17% of F160W flux.
RHeB stars can contribute up to 21% of F160W flux.
SPS models over-predict TP-AGB flux by a factor of ~2.3.
Abstract
Using high spatial resolution HST WFC3 and ACS imaging of resolved stellar populations, we constrain the contribution of thermally-pulsing asymptotic giant branch (TP-AGB) stars and red helium burning (RHeB) stars to the 1.6 um near-infrared (NIR) luminosities of 23 nearby galaxies. The TP-AGB phase contributes as much as 17% of the integrated F160W flux, even when the red giant branch is well populated. The RHeB population contribution can match or even exceed the TP-AGB contribution, providing as much as 21% of the integrated F160W light. The NIR mass-to-light (M/L) ratio should therefore be expected to vary significantly due to fluctuations in the star formation rate over timescales from 25 Myr to several Gyr. We compare our observational results to predictions based on optically derived star formation histories and stellar population synthesis (SPS) models, including models based on…
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