High-resolution mass models of dwarf galaxies from LITTLE THINGS
Se-Heon Oh, Deidre A. Hunter, Elias Brinks, Bruce G. Elmegreen,, Andreas Schruba, Fabian Walter, Michael P. Rupen, Lisa M. Young, Caroline E., Simpson, Megan Johnson, Kimberly A. Herrmann, Dana Ficut-Vicas, Phil Cigan,, Volker Heesen, Trisha Ashley, Hong-Xin Zhang

TL;DR
This study provides high-resolution rotation curves and mass models for 26 dwarf galaxies, revealing shallower dark matter density slopes consistent with baryonic feedback effects, challenging pure dark-matter-only Lambda CDM predictions.
Contribution
It offers the first homogeneous mass modeling of a sizable dwarf galaxy sample from LITTLE THINGS, comparing observed dark matter profiles with simulations including baryonic feedback.
Findings
Most dwarf galaxies show shallow inner dark matter slopes (~-0.32).
Results align with baryonic feedback simulations, not dark-matter-only models.
Central dark matter distribution in low-mass dwarf DDO 210 supports feedback scenarios.
Abstract
We present high-resolution rotation curves and mass models of 26 dwarf galaxies from LITTLE THINGS. LITTLE THINGS is a high-resolution Very Large Array HI survey for nearby dwarf galaxies in the local volume within 11 Mpc. The rotation curves of the sample galaxies derived in a homogeneous and consistent manner are combined with Spitzer archival 3.6 micron and ancillary optical U, B, and V images to construct mass models of the galaxies. We decompose the rotation curves in terms of the dynamical contributions by baryons and dark matter halos, and compare the latter with those of dwarf galaxies from THINGS as well as Lambda CDM SPH simulations in which the effect of baryonic feedback processes is included. Being generally consistent with THINGS and simulated dwarf galaxies, most of the LITTLE THINGS sample galaxies show a linear increase of the rotation curve in their inner regions,…
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