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No galaxy left behind: accurate measurements with the faintest objects in the Dark Energy Survey
- Source :
- Suchyta, E, Huff, E M, Aleksić, J, Melchior, P, Jouvel, S, MacCrann, N, Crocce, M, Gaztanaga, E, Honscheid, K, Leistedt, B, Peiris, H V, Ross, A J, Rykoff, E S, Sheldon, E, Abbott, T, Abdalla, F B, Allam, S, Banerji, M, Benoit-Lévy, A, Bertin, E, Brooks, D, Burke, D L, Rosell, A C, Kind, M C, Carretero, J, Cunha, C E, D'Andrea, C B, Costa, L N D, DePoy, D L, Desai, S, Diehl, H T, Dietrich, J P, Doel, P, Eifler, T F, Estrada, J, Evrard, A E, Flaugher, B, Fosalba, P, Frieman, J, Gerdes, D W, Gruen, D, Gruendl, R A, James, D J, Jarvis, M, Kuehn, K, Kuropatkin, N, Lahav, O, Nichol, R C, Percival, W J, Thomas, D & Dark Energy Survey Collaboration 2016, ' No galaxy left behind : accurate measurements with the faintest objects in the Dark Energy Survey ', MNRAS, vol. 457, no. 1, pp. 786-808 . https://doi.org/10.1093/mnras/stv2953, NASA Astrophysics Data System
- Publication Year :
- 2015
-
Abstract
- Accurate statistical measurement with large imaging surveys has traditionally required throwing away a sizable fraction of the data. This is because most measurements have have relied on selecting nearly complete samples, where variations in the composition of the galaxy population with seeing, depth, or other survey characteristics are small. We introduce a new measurement method that aims to minimize this wastage, allowing precision measurement for any class of stars or galaxies detectable in an imaging survey. We have implemented our proposal in Balrog, a software package which embeds fake objects in real imaging in order to accurately characterize measurement biases. We demonstrate this technique with an angular clustering measurement using Dark Energy Survey (DES) data. We first show that recovery of our injected galaxies depends on a wide variety of survey characteristics in the same way as the real data. We then construct a flux-limited sample of the faintest galaxies in DES, chosen specifically for their sensitivity to depth and seeing variations. Using the synthetic galaxies as randoms in the standard Landy-Szalay correlation function estimator suppresses the effects of variable survey selection by at least two orders of magnitude. With this correction, our measured angular clustering is found to be in excellent agreement with that of a matched sample drawn from much deeper, higher-resolution space-based Cosmological Evolution Survey (COSMOS) imaging; over angular scales of $0.004^{\circ} < ��< 0.2^{\circ}$, we find a best-fit scaling amplitude between the DES and COSMOS measurements of $1.00 \pm 0.09$. We expect this methodology to be broadly useful for extending the statistical reach of measurements in a wide variety of coming imaging surveys.<br />24 pages, 17 figures. This is the version accepted by MNRAS. Changes compared to the original version are very minimal; the biggest update is including a curve for a theoretical model in the clustering results
- Subjects :
- statistics [galaxies]
Cosmology and Gravitation
Cosmology and Nongalactic Astrophysics (astro-ph.CO)
astro-ph.GA
Population
FOS: Physical sciences
Astrophysics
Astrophysics::Cosmology and Extragalactic Astrophysics
Correlation function (astronomy)
01 natural sciences
0103 physical sciences
data analysis [methods]
10. No inequality
Cluster analysis
education
miscellaneous [methods]
010303 astronomy & astrophysics
Instrumentation and Methods for Astrophysics (astro-ph.IM)
STFC
Physics
education.field_of_study
image processing [techniques]
010308 nuclear & particles physics
Estimator
Astronomy
RCUK
Astronomy and Astrophysics
Astrophysics - Astrophysics of Galaxies
Galaxy
Stars
Amplitude
Space and Planetary Science
Astrophysics of Galaxies (astro-ph.GA)
Dark energy
astro-ph.CO
Astrophysics - Instrumentation and Methods for Astrophysics
astro-ph.IM
Astrophysics - Cosmology and Nongalactic Astrophysics
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Journal :
- Suchyta, E, Huff, E M, Aleksić, J, Melchior, P, Jouvel, S, MacCrann, N, Crocce, M, Gaztanaga, E, Honscheid, K, Leistedt, B, Peiris, H V, Ross, A J, Rykoff, E S, Sheldon, E, Abbott, T, Abdalla, F B, Allam, S, Banerji, M, Benoit-Lévy, A, Bertin, E, Brooks, D, Burke, D L, Rosell, A C, Kind, M C, Carretero, J, Cunha, C E, D'Andrea, C B, Costa, L N D, DePoy, D L, Desai, S, Diehl, H T, Dietrich, J P, Doel, P, Eifler, T F, Estrada, J, Evrard, A E, Flaugher, B, Fosalba, P, Frieman, J, Gerdes, D W, Gruen, D, Gruendl, R A, James, D J, Jarvis, M, Kuehn, K, Kuropatkin, N, Lahav, O, Nichol, R C, Percival, W J, Thomas, D & Dark Energy Survey Collaboration 2016, ' No galaxy left behind : accurate measurements with the faintest objects in the Dark Energy Survey ', MNRAS, vol. 457, no. 1, pp. 786-808 . https://doi.org/10.1093/mnras/stv2953, NASA Astrophysics Data System
- Accession number :
- edsair.doi.dedup.....83183eae291d203bcf2ee3046c33d278
- Full Text :
- https://doi.org/10.1093/mnras/stv2953