Two-component mass models of the lensing galaxy in the quadruply imaged supernova iPTF16geu

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Abstract

The first resolved, multiply imaged supernova Type Ia, iPTF16geu, was observed 4 years ago, five decades after such systems were first envisioned. Because of the unique properties of the source, these systems hold a lot of promise for the study of galaxy structure and cosmological parameters. However, this very first example presented modelers with a few puzzles. It was expected that to explain image fluxes a contribution from microlensing by stars would be required, but to accommodate the magnitude of microlensing, the density slope of the elliptical power law lens model had to be quite shallow, ρ2D ∝ r−0.7. Furthermore, the center of mass had to be displaced from that of observed light by ∼ 0.1kpc, and the position angle of light distribution was misaligned with that of mass by ∼ 40o. In this paper we present mass models that resolve the first two problems, and suggest a resolution of the third. Motivated by observations of local ellipticals, and some recent analysis of galaxy-scale lenses, our mass models consist of two offset (baryonic) mass components. The resulting mass distributions have a single centroid, but are lopsided, and have isodensity contours that are not purely elliptical and not self-similar with radius. For many of our models the microlensing requirements are modest, and the ring formed by the extended supernova host galaxy resembles the observed one.

Original languageEnglish (US)
JournalThe Open Journal of Astrophysics
Volume3
Issue number1
DOIs
StatePublished - Sep 15 2020

Bibliographical note

Publisher Copyright:
© 2020, National University of Ireland Maynooth. All rights reserved.

Keywords

  • dark matter
  • galaxies
  • gravitational lensing: strong

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