Two-dimensional kinematics of SLACS lenses: III. Mass structure and dynamics of early-type lens galaxies beyond z ~ 0.1
Matteo Barnabe (1,2), Oliver Czoske (2,3), Leon V. E. Koopmans (2),, Tommaso Treu (4), Adam S. Bolton (5) ((1) KIPAC/SLAC Stanford, (2) Kapteyn, Institute, (3) University of Vienna, (4) UC Santa Barbara, (5) University of, Utah)

TL;DR
This study combines gravitational lensing and stellar kinematics to analyze the mass distribution and dynamics of 16 early-type lens galaxies at intermediate redshifts, revealing their structural similarity to local counterparts and insights into dark matter content.
Contribution
It provides a detailed, self-consistent analysis of mass profiles, dark matter fractions, and dynamical states of intermediate-redshift early-type galaxies using combined lensing and kinematic data.
Findings
Mass density profiles are well approximated by a super-isothermal power-law.
Dark matter fraction within one effective radius varies from nearly zero to 50%.
Galaxies are classified into slow and fast rotators based on angular momentum.
Abstract
We combine in a self-consistent way the constraints from both gravitational lensing and stellar kinematics to perform a detailed investigation of the internal mass distribution, amount of dark matter, and dynamical structure of the 16 early-type lens galaxies from the SLACS Survey, at z = 0.08 - 0.33, for which both HST/ACS and NICMOS high-resolution imaging and VLT VIMOS IFU spectroscopy are available. Based on this data set, we analyze the inner regions of the galaxies, i.e. typically within one (3D) effective radius r_e, under the assumption of axial symmetry and by constructing dynamical models supported by two-integral stellar DFs. For all systems, the total mass density distribution is found to be well approximated by a simple power-law: this profile is on average slightly super-isothermal, with a logarithmic slope <gamma'> = 2.074^{+0.043}_{-0.041} (68% CL) and an intrinsic…
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