Quantifying the structure of strong gravitational lens potentials with uncertainty-aware deep neural networks

被引:13
|
作者
Vernardos, Georgios [1 ]
Tsagkatakis, Grigorios [2 ]
Pantazis, Yannis [3 ]
机构
[1] Fdn Res & Technol Hellas FORTH, Inst Astrophys, GR-70013 Iraklion, Greece
[2] FORTH, Inst Comp Sci, GR-70013 Iraklion, Greece
[3] FORTH, Inst Appl & Computat Math, GR-70013 Iraklion, Greece
关键词
gravitational lensing: strong; EARLY-TYPE GALAXIES; ACS SURVEY; ADAPTIVE OPTICS; BIG DATA; SUBSTRUCTURE; CHALLENGES; STELLAR;
D O I
10.1093/mnras/staa3201
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
Gravitational lensing is a powerful tool for constraining substructure in the mass distribution of galaxies, be it from the presence of dark matter sub-haloes or due to physical mechanisms affecting the baryons throughout galaxy evolution. Such substructure is hard to model and is either ignored by traditional, smooth modelling, approaches, or treated as well-localized massive perturbers. In this work, we propose a deep learning approach to quantify the statistical properties of such perturbations directly from images, where only the extended lensed source features within a mask are considered, without the need of any lens modelling. Our training data consist of mock lensed images assuming perturbing Gaussian Random Fields permeating the smooth overall lens potential, and, for the first time, using images of real galaxies as the lensed source. We employ a novel deep neural network that can handle arbitrary uncertainty intervals associated with the training data set labels as input, provides probability distributions as output, and adopts a composite loss function. The method succeeds not only in accurately estimating the actual parameter values, but also reduces the predicted confidence intervals by 10 per cent in an unsupervised manner, i.e. without having access to the actual ground truth values. Our results are invariant to the inherent degeneracy between mass perturbations in the lens and complex brightness profiles for the source. Hence, we can quantitatively and robustly quantify the smoothness of the mass density of thousands of lenses, including confidence intervals, and provide a consistent ranking for follow-up science.
引用
收藏
页码:5641 / 5652
页数:12
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