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The dark energy survey 5-yr photometrically identified type Ia supernovae

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The dark energy survey 5-yr photometrically identified type Ia supernovae. / Dark Energy Survey Collaboration.
In: Monthly Notices of the Royal Astronomical Society, Vol. 514, No. 4, 31.08.2022, p. 5159-5177.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Dark Energy Survey Collaboration 2022, 'The dark energy survey 5-yr photometrically identified type Ia supernovae', Monthly Notices of the Royal Astronomical Society, vol. 514, no. 4, pp. 5159-5177. https://doi.org/10.1093/mnras/stac1691

APA

Dark Energy Survey Collaboration (2022). The dark energy survey 5-yr photometrically identified type Ia supernovae. Monthly Notices of the Royal Astronomical Society, 514(4), 5159-5177. https://doi.org/10.1093/mnras/stac1691

Vancouver

Dark Energy Survey Collaboration. The dark energy survey 5-yr photometrically identified type Ia supernovae. Monthly Notices of the Royal Astronomical Society. 2022 Aug 31;514(4):5159-5177. Epub 2022 Jun 20. doi: 10.1093/mnras/stac1691

Author

Dark Energy Survey Collaboration. / The dark energy survey 5-yr photometrically identified type Ia supernovae. In: Monthly Notices of the Royal Astronomical Society. 2022 ; Vol. 514, No. 4. pp. 5159-5177.

Bibtex

@article{e31c202a986244098099d7ff799b77e9,
title = "The dark energy survey 5-yr photometrically identified type Ia supernovae",
abstract = "As part of the cosmology analysis using Type Ia Supernovae (SN Ia) in the Dark Energy Survey (DES), we present photometrically identified SN Ia samples using multiband light curves and host galaxy redshifts. For this analysis, we use the photometric classification framework SUPERNNOVAtrained on realistic DES-like simulations. For reliable classification, we process the DES SN programme (DES-SN) data and introduce improvements to the classifier architecture, obtaining classification accuracies of more than 98 per cent on simulations. This is the first SN classification to make use of ensemble methods, resulting in more robust samples. Using photometry, host galaxy redshifts, and a classification probability requirement, we identify 1863 SNe Ia from which we select 1484 cosmology-grade SNe Ia spanning the redshift range of 0.07 < z < 1.14. We find good agreement between the light-curve properties of the photometrically selected sample and simulations. Additionally, we create similar SN Ia samples using two types of Bayesian Neural Network classifiers that provide uncertainties on the classification probabilities. We test the feasibility of using these uncertainties as indicators for out-of-distribution candidates and model confidence. Finally, we discuss the implications of photometric samples and classification methods for future surveys such as Vera C. Rubin Observatory Legacy Survey of Space and Time....",
author = "{Dark Energy Survey Collaboration} and A. M{\"o}ller and M. Smith and M. Sako and M. Sullivan and M. Vincenzi and P. Wiseman and P. Armstrong and J. Asorey and D. Brout and D. Carollo and Davis, {T. M.} and C. Frohmaier and L. Galbany and K. Glazebrook and L. Kelsey and R. Kessler and Lewis, {G. F.} and C. Lidman and U. Malik and Nichol, {R. C.} and D. Scolnic and Tucker, {B. E.} and Abbott, {T. M. C.} and M. Aguena and S. Allam and J. Annis and E. Bertin and S. Bocquet and D. Brooks and Burke, {D. L.} and {Carnero Rosell}, A. and {Carrasco Kind}, M. and J. Carretero and Castander, {F. J.} and C. Conselice and M. Costanzi and M. Crocce and {da Costa}, {L. N.} and {De Vicente}, J. and S. Desai and Diehl, {H. T.} and P. Doel and S. Everett and I. Ferrero and Finley, {D. A.} and B. Flaugher and D. Friedel and J. Frieman and J. Garc{\'i}a-Bellido and Gerdes, {D. W.}",
year = "2022",
month = aug,
day = "31",
doi = "10.1093/mnras/stac1691",
language = "English",
volume = "514",
pages = "5159--5177",
journal = "Monthly Notices of the Royal Astronomical Society",
issn = "0035-8711",
publisher = "OXFORD UNIV PRESS",
number = "4",

}

RIS

TY - JOUR

T1 - The dark energy survey 5-yr photometrically identified type Ia supernovae

AU - Dark Energy Survey Collaboration

AU - Möller, A.

AU - Smith, M.

AU - Sako, M.

AU - Sullivan, M.

AU - Vincenzi, M.

AU - Wiseman, P.

AU - Armstrong, P.

AU - Asorey, J.

AU - Brout, D.

AU - Carollo, D.

AU - Davis, T. M.

AU - Frohmaier, C.

AU - Galbany, L.

AU - Glazebrook, K.

AU - Kelsey, L.

AU - Kessler, R.

AU - Lewis, G. F.

AU - Lidman, C.

AU - Malik, U.

AU - Nichol, R. C.

AU - Scolnic, D.

AU - Tucker, B. E.

AU - Abbott, T. M. C.

AU - Aguena, M.

AU - Allam, S.

AU - Annis, J.

AU - Bertin, E.

AU - Bocquet, S.

AU - Brooks, D.

AU - Burke, D. L.

AU - Carnero Rosell, A.

AU - Carrasco Kind, M.

AU - Carretero, J.

AU - Castander, F. J.

AU - Conselice, C.

AU - Costanzi, M.

AU - Crocce, M.

AU - da Costa, L. N.

AU - De Vicente, J.

AU - Desai, S.

AU - Diehl, H. T.

AU - Doel, P.

AU - Everett, S.

AU - Ferrero, I.

AU - Finley, D. A.

AU - Flaugher, B.

AU - Friedel, D.

AU - Frieman, J.

AU - García-Bellido, J.

AU - Gerdes, D. W.

PY - 2022/8/31

Y1 - 2022/8/31

N2 - As part of the cosmology analysis using Type Ia Supernovae (SN Ia) in the Dark Energy Survey (DES), we present photometrically identified SN Ia samples using multiband light curves and host galaxy redshifts. For this analysis, we use the photometric classification framework SUPERNNOVAtrained on realistic DES-like simulations. For reliable classification, we process the DES SN programme (DES-SN) data and introduce improvements to the classifier architecture, obtaining classification accuracies of more than 98 per cent on simulations. This is the first SN classification to make use of ensemble methods, resulting in more robust samples. Using photometry, host galaxy redshifts, and a classification probability requirement, we identify 1863 SNe Ia from which we select 1484 cosmology-grade SNe Ia spanning the redshift range of 0.07 < z < 1.14. We find good agreement between the light-curve properties of the photometrically selected sample and simulations. Additionally, we create similar SN Ia samples using two types of Bayesian Neural Network classifiers that provide uncertainties on the classification probabilities. We test the feasibility of using these uncertainties as indicators for out-of-distribution candidates and model confidence. Finally, we discuss the implications of photometric samples and classification methods for future surveys such as Vera C. Rubin Observatory Legacy Survey of Space and Time....

AB - As part of the cosmology analysis using Type Ia Supernovae (SN Ia) in the Dark Energy Survey (DES), we present photometrically identified SN Ia samples using multiband light curves and host galaxy redshifts. For this analysis, we use the photometric classification framework SUPERNNOVAtrained on realistic DES-like simulations. For reliable classification, we process the DES SN programme (DES-SN) data and introduce improvements to the classifier architecture, obtaining classification accuracies of more than 98 per cent on simulations. This is the first SN classification to make use of ensemble methods, resulting in more robust samples. Using photometry, host galaxy redshifts, and a classification probability requirement, we identify 1863 SNe Ia from which we select 1484 cosmology-grade SNe Ia spanning the redshift range of 0.07 < z < 1.14. We find good agreement between the light-curve properties of the photometrically selected sample and simulations. Additionally, we create similar SN Ia samples using two types of Bayesian Neural Network classifiers that provide uncertainties on the classification probabilities. We test the feasibility of using these uncertainties as indicators for out-of-distribution candidates and model confidence. Finally, we discuss the implications of photometric samples and classification methods for future surveys such as Vera C. Rubin Observatory Legacy Survey of Space and Time....

U2 - 10.1093/mnras/stac1691

DO - 10.1093/mnras/stac1691

M3 - Journal article

VL - 514

SP - 5159

EP - 5177

JO - Monthly Notices of the Royal Astronomical Society

JF - Monthly Notices of the Royal Astronomical Society

SN - 0035-8711

IS - 4

ER -