Rest-Frame UV Colors for Faint Galaxies at z 9-16 with the JWST NGDEEP Survey
Abstract
We present measurements of the rest-frame UV spectral slope, β, for a sample of 36 faint star-forming galaxies at z ~ 9-16 discovered in one of the deepest JWST NIRCam surveys to date, the Next Generation Deep Extragalactic Exploratory Public (NGDEEP) Survey. We use robust photometric measurements for UV-faint galaxies (down to MUV ~ -16), originally published in Leung+23, and measure values of the UV spectral slope via photometric power-law fitting to both the observed photometry and to stellar population models obtained through spectral energy distribution (SED) fitting with Bagpipes. We obtain a median and 68% confidence interval for β from photometric power-law fitting of βPL = -2.7+0.5-0.5 and from SED-fitting, βSED = -2.3+0.2-0.1 for the full sample. We show that when only 2-3 photometric detections are available, SED-fitting has a lower scatter and reduced biases than photometric power-law fitting. We quantify this bias and find that after correction, the median βSED,corr = -2.5+0.2-0.2. We measure physical properties for our galaxies with Bagpipes and find that our faint (MUV = -18.1+0.7-0.9) sample is low mass (log[M/M] = 7.7+0.5-0.5), fairly dust-poor (Av = 0.1+0.2-0.1 mag), and modestly young (log[age] = 7.8+0.2-0.8 yr) with a median star formation rate of log(SFR) = -0.3+0.4-0.4 M/yr. We find no strong evidence for ultra-blue UV spectral slopes (β ~ -3) within our sample, as would be expected for exotically metal-poor (Z/Z < 10-3) stellar populations with very high LyC escape fractions. Our observations are consistent with model predictions that galaxies of these stellar masses at z~9-16 should have only modestly low metallicities (Z/Z ~ 0.1--0.2).
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