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 v(max)-r(max) relation. We then estimate the dark matter subhalo sensitivity in 16,000 simulated strong lens observations with depth and resolution resembling Euclid VIS images. We find that, with a 3 sigma detection threshold, 2.35 per cent of pixels inside twice the Einstein radius are sensitive to subhaloes with a mass M-max <= 10(10)M(?), 0.03 per cent are sensitive to M-max <= 10(9)M(?), and, the limit of sensitivity is found to be M-max=10(8.8 +/- 0.2)M(?). Using our sensitivity maps and assuming CDM, we estimate that Euclid-like lenses will yield 1.43(-0.11)(+0.14)[f(sub)(-1)] detectable subhaloes per lens in the entire sample, but this increases to 35.6(-0.9)(+0.9)[f(sub)(-1)] per lens in the most sensitive lenses. Estimates are given in units of the inverse of the substructure mass fraction f(sub)(-1). Assuming f(sub)=0.01, one in every 70 lenses in general should yield a detection, or one in every similar to three lenses in the most sensitive sample. From 170,000 new strong lenses detected by Euclid, we expect similar to 2500 new subhalo detections. We find that the expected number of detectable subhaloes in warm dark matter models only changes relative to cold dark matter for models which have already been ruled out, i.e., those with half-mode masses M-hm > 10(8)M(?).

Sensitivity of strong lensing observations to dark matter substructure: a case study with Euclid / O’Riordan, Conor M; Despali, Giulia; Vegetti, Simona; Lovell, Mark R; Moliné, Ángeles. - In: MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY. - ISSN 0035-8711. - ELETTRONICO. - 521:2(2023), pp. 2342-2356. [10.1093/mnras/stad650]

Sensitivity of strong lensing observations to dark matter substructure: a case study with Euclid

Despali, Giulia;Vegetti, Simona;
2023

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 v(max)-r(max) relation. We then estimate the dark matter subhalo sensitivity in 16,000 simulated strong lens observations with depth and resolution resembling Euclid VIS images. We find that, with a 3 sigma detection threshold, 2.35 per cent of pixels inside twice the Einstein radius are sensitive to subhaloes with a mass M-max <= 10(10)M(?), 0.03 per cent are sensitive to M-max <= 10(9)M(?), and, the limit of sensitivity is found to be M-max=10(8.8 +/- 0.2)M(?). Using our sensitivity maps and assuming CDM, we estimate that Euclid-like lenses will yield 1.43(-0.11)(+0.14)[f(sub)(-1)] detectable subhaloes per lens in the entire sample, but this increases to 35.6(-0.9)(+0.9)[f(sub)(-1)] per lens in the most sensitive lenses. Estimates are given in units of the inverse of the substructure mass fraction f(sub)(-1). Assuming f(sub)=0.01, one in every 70 lenses in general should yield a detection, or one in every similar to three lenses in the most sensitive sample. From 170,000 new strong lenses detected by Euclid, we expect similar to 2500 new subhalo detections. We find that the expected number of detectable subhaloes in warm dark matter models only changes relative to cold dark matter for models which have already been ruled out, i.e., those with half-mode masses M-hm > 10(8)M(?).
2023
Sensitivity of strong lensing observations to dark matter substructure: a case study with Euclid / O’Riordan, Conor M; Despali, Giulia; Vegetti, Simona; Lovell, Mark R; Moliné, Ángeles. - In: MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY. - ISSN 0035-8711. - ELETTRONICO. - 521:2(2023), pp. 2342-2356. [10.1093/mnras/stad650]
O’Riordan, Conor M; Despali, Giulia; Vegetti, Simona; Lovell, Mark R; Moliné, Ángeles
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/962612
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