Ultradeep Infrared Array Camera Observations of sub-L* z~7 and z~8 Galaxies in the Hubble Ultra Deep Field: the Contribution of Low-Luminosity Galaxies to the Stellar Mass Density and Reionization
I. Labbe, V. Gonzalez, R. J. Bouwens, G. D. Illingworth, P. A. Oesch,, P. G. van Dokkum, C. M. Carollo, M. Franx, M. Stiavelli, M. Trenti, D. Magee,, M. Kriek

TL;DR
This study analyzes low-luminosity galaxies at redshifts 7 and 8 using deep infrared observations, revealing their stellar masses and potential role in cosmic reionization, and highlights the need for deeper data to refine these measurements.
Contribution
It provides new stellar mass estimates for sub-L* galaxies at z~7 and z~8 using IRAC data, improving understanding of their contribution to reionization and galaxy evolution.
Findings
Sub-L* galaxies at z~7 have stellar masses around 1.2 x 10^9 M_sun.
Stellar mass density declines as (1+z)^{-6} from z=7 to z=8.
Deeper IRAC observations are needed to better constrain stellar masses at z~8.
Abstract
We study the Spitzer Infrared Array Camera (IRAC) mid-infrared (rest-frame optical) fluxes of 14 newly WFC3/IR-detected z=7 z_{850}-dropout galaxies and 5 z=8 Y_{105}-dropout galaxies. The WFC3/IR depth and spatial resolution allow accurate removal of contaminating foreground light, enabling reliable flux measurements at 3.6 micron and 4.5 micron. None of the galaxies are detected to [3.6]=26.9 (AB, 2 sigma), but a stacking analysis reveals a robust detection for the z_{850}-dropouts and an upper limit for the Y_{105}-dropouts. We construct average broadband SEDs using the stacked ACS, WFC3, and IRAC fluxes and fit stellar population synthesis models to derive mean redshifts, stellar masses, and ages. For the z_{850}-dropouts, we find z=6.9^{+0.1}_{-0.1}, (U-V)_{rest}=0.4, reddening A_V=0, stellar mass M*=1.2^{+0.3}_{-0.6} x 10^9 M_sun (Salpeter IMF). The best-fit ages ~300Myr,…
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