TDCOSMO X. Automated Modeling of 9 Strongly Lensed Quasars and Comparison Between Lens Modeling Software
S. Ertl, S. Schuldt, S. H. Suyu, T. Schmidt, T. Treu, S. Birrer, A. J., Shajib, D. Sluse

TL;DR
This paper introduces an automated, efficient modeling pipeline for strongly lensed quasars that reduces user input time and produces uniform models suitable for cosmological analysis, demonstrated on nine HST images.
Contribution
The authors develop and validate a new automated modeling pipeline for strong lens systems, improving speed and uniformity over manual methods and enabling large-scale cosmological studies.
Findings
Automated pipeline significantly reduces modeling time.
Models show good light and mass centroid alignment.
Robust determination of Einstein radius and mass flattening.
Abstract
To use strong gravitational lenses as an astrophysical or cosmological probe, models of their mass distributions are often needed. We present a new, time-efficient automation code for uniform modeling of strongly lensed quasars with GLEE, a lens modeling software, for high-resolution multi-band data. By using the observed positions of the lensed quasars and the spatially extended surface brightness distribution of the lensed quasar host galaxy, we obtain a model of the mass distribution of the lens galaxy. We apply this uniform modeling pipeline to a sample of nine strongly lensed quasars with HST WFC 3 images. The models show in most cases well reconstructed light components and a good alignment between mass and light centroids. We find that the automated modeling code significantly reduces the user input time during the modeling process. The preparation time of required input files is…
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Taxonomy
TopicsAdaptive optics and wavefront sensing · Astronomy and Astrophysical Research · Galaxies: Formation, Evolution, Phenomena
