Sensitivity of strong lensing observations to dark matter substructure: a case study with Euclid
Conor M. O'Riordan, Giulia Despali, Simona Vegetti, Mark R. Lovell,, \'Angeles Molin\'e

TL;DR
This study develops a machine learning approach to assess Euclid's ability to detect dark matter subhaloes through strong lensing, estimating sensitivity thresholds and expected detection rates in simulated observations.
Contribution
Introduces a machine learning method to evaluate dark matter subhalo sensitivity in Euclid-like strong lensing data, providing detailed detection thresholds and expected subhalo counts.
Findings
2.35% of pixels sensitive to subhaloes with M_max ≤ 10^10 M_sun
Expected ~2500 subhalo detections from Euclid lenses
Detection sensitivity limit around M_max=10^{8.8} M_sun
Abstract
We introduce a machine learning method for estimating the sensitivity of strong lens observations to dark matter subhaloes in the lens. Our training data include elliptical power-law lenses, Hubble Deep Field sources, external shear, and noise and PSF for the Euclid VIS instrument. We set the concentration of the subhaloes using a - relation. We then estimate the dark matter subhalo sensitivity in simulated strong lens observations with depth and resolution resembling Euclid VIS images. We find that, with a detection threshold, per cent of pixels inside twice the Einstein radius are sensitive to subhaloes with a mass , per cent are sensitive to , and, the limit of sensitivity is found to be . Using our sensitivity…
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Taxonomy
TopicsAstronomy and Astrophysical Research · Adaptive optics and wavefront sensing · Scientific Research and Discoveries
