Effective Models for Statistical Studies of Galaxy-Scale Gravitational Lensing
A. Lapi (1,2), M. Negrello (3), J. Gonzalez-Nuevo (4,2), Z.-Y. Cai, (2), G. De Zotti (3,2), L. Danese (2) ((1) Univ. 'Tor Vergata', Rome, (2), SISSA, Trieste, (3) INAF/OAPD, Padova, (4) CSIC/UC, Santander)

TL;DR
This paper develops simple analytical models to accurately describe galaxy-scale gravitational lensing, enabling quick insights into lensing effects, mass distribution reconstruction, and reproducing observed galaxy counts.
Contribution
Introduces simple power-law based analytical formulae for galaxy lensing, improving understanding and modeling of lens cross sections and amplification distributions.
Findings
Lens profiles well described by a near-isothermal power-law.
Amplification >20 indicates compact high-z sources.
Model reproduces observed counts of strongly lensed galaxies.
Abstract
We have worked out simple analytical formulae that accurately approximate the relationship between the position of the source with respect to the lens center and the amplification of the images, hence the lens cross section, for realistic lens profiles. We find that, for essentially the full range of parameters either observationally determined or yielded by numerical simulations, the combination of dark matter and star distribution can be very well described, for lens radii relevant to strong lensing, by a simple power-law whose slope is very weakly dependent on the parameters characterizing the global matter surface density profile and close to isothermal in agreement with direct estimates for individual lens galaxies. Our simple treatment allows an easy insight into the role of the different ingredients that determine the lens cross section and the distribution of gravitational…
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