The MOSDEF Survey: Probing Resolved Stellar Populations at $z\sim2$ Using a New Bayesian-defined Morphology Metric Called Patchiness
Tara Fetherolf, Naveen A. Reddy, Alice E. Shapley, Mariska Kriek,, Brian Siana, Alison L. Coil, Bahram Mobasher, William R. Freeman, Sedona H., Price, Ryan L. Sanders, Irene Shivaei, Mojegan Azadi, Laura de Groot, Gene, C.K. Leung, and Tom O. Zick

TL;DR
This paper introduces a new morphology metric called patchiness to analyze the spatial distribution of dust in high-redshift galaxies, revealing that dust distribution varies with galaxy mass and is patchy in more massive galaxies.
Contribution
The study develops and applies a novel Bayesian-defined morphology metric, patchiness, to quantify dust distribution in galaxies at z~1.5, providing new insights into dust mixing and distribution.
Findings
High-mass galaxies exhibit patchier dust distributions.
Dust is concentrated near star-forming regions in massive galaxies.
Dust mixing timescales are longer in high-mass galaxies.
Abstract
We define a new morphology metric called "patchiness" () that is sensitive to deviations from the average of a resolved distribution, does not require the galaxy center to be defined, and can be used on the spatially-resolved distribution of any galaxy property. While the patchiness metric has a broad range of applications, we demonstrate its utility by investigating the distribution of dust in the interstellar medium of 310 star-forming galaxies at spectroscopic redshifts observed by the MOSFIRE Deep Evolution Field (MOSDEF) survey. The stellar continuum reddening distribution, derived from high-resolution multi-waveband CANDELS/3D-HST imaging, is quantified using the patchiness, Gini, and coefficients. We find that the reddening maps of high-mass galaxies, which are dustier and more metal-rich on average, tend to exhibit patchier distributions (high ) with…
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Taxonomy
TopicsSpectroscopy and Chemometric Analyses · Gaussian Processes and Bayesian Inference · Data Analysis with R
