Back to Search Start Over

Deep Learning of Dark Energy Spectroscopic Instrument Mock Spectra to Find Damped Ly α Systems

Authors :
Wang, B
Zou, J
Cai, Z
Prochaska, JX
Sun, Z
Ding, J
Font-Ribera, A
Gonzalez, A
Herrera-Alcantar, HK
Irsic, V
Lin, X
Brooks, D
Chabanier, S
Belsunce, RD
Palanque-Delabrouille, N
Tarle, G
Zhou, Z
Wang, B [0000-0003-4877-1659]
Zou, J [0000-0001-9189-0368]
Cai, Z [0000-0001-8467-6478]
Prochaska, JX [0000-0002-7738-6875]
Sun, Z [0000-0002-8246-7792]
Ding, J [0000-0003-4651-8510]
Herrera-Alcantar, HK [0000-0002-9136-9609]
Irsic, V [0000-0002-5445-461X]
Lin, X [0000-0001-6052-4234]
Brooks, D [0000-0002-8458-5047]
Chabanier, S [0000-0002-5692-5243]
Palanque-Delabrouille, N [0000-0003-3188-784X]
Tarle, G [0000-0003-1704-0781]
Apollo - University of Cambridge Repository
Publication Year :
2022
Publisher :
American Astronomical Society, 2022.

Abstract

We have updated and applied a convolutional neural network (CNN) machine-learning model to discover and characterize damped Lyα systems (DLAs) based on Dark Energy Spectroscopic Instrument (DESI) mock spectra. We have optimized the training process and constructed a CNN model that yields a DLA classification accuracy above 99% for spectra that have signal-to-noise ratios (S/N) above 5 per pixel. The classification accuracy is the rate of correct classifications. This accuracy remains above 97% for lower S/N ≈1 spectra. This CNN model provides estimations for redshift and H i column density with standard deviations of 0.002 and 0.17 dex for spectra with S/N above 3 pixel−1. Also, this DLA finder is able to identify overlapping DLAs and sub-DLAs. Further, the impact of different DLA catalogs on the measurement of baryon acoustic oscillations (BAO) is investigated. The cosmological fitting parameter result for BAO has less than 0.61% difference compared to analysis of the mock results with perfect knowledge of DLAs. This difference is lower than the statistical error for the first year estimated from the mock spectra: above 1.7%. We also compared the performances of the CNN and Gaussian Process (GP) models. Our improved CNN model has moderately 14% higher purity and 7% higher completeness than an older version of the GP code, for S/N > 3. Both codes provide good DLA redshift estimates, but the GP produces a better column density estimate by 24% less standard deviation. A credible DLA catalog for the DESI main survey can be provided by combining these two algorithms.

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....d298216f8123a99d5618bf0c7f686649
Full Text :
https://doi.org/10.17863/cam.82269