Euclid preparation – XXIII. Derivation of galaxy physical properties with deep machine learning using mock fluxes and H-band images

dc.contributor.authorCourbin, Frédéric
dc.contributor.authorCarretero, Jorge
dc.contributor.authorCastander, Francisco Javier
dc.contributor.authorBisigello, Laura
dc.contributor.authorEuclid Collaboration
dc.date.accessioned2025-04-30T15:23:52Z
dc.date.available2025-04-30T15:23:52Z
dc.date.issued2023
dc.date.updated2025-04-30T15:23:52Z
dc.description.abstractNext-generation telescopes, like Euclid, Rubin/LSST, and Roman, will open new windows on the Universe, allowing us to infer physical properties for tens of millions of galaxies. Machine-learning methods are increasingly becoming the most efficient tools to handle this enormous amount of data, because they are often faster and more accurate than traditional methods. We investigate how well redshifts, stellar masses, and star-formation rates (SFRs) can be measured with deep-learning algorithms for observed galaxies within data mimicking the Euclid and Rubin/LSST surveys. We find that deep-learning neural networks and convolutional neural networks (CNNs), which are dependent on the parameter space of the training sample, perform well in measuring the properties of these galaxies and have a better accuracy than methods based on spectral energy distribution fitting. CNNs allow the processing of multiband magnitudes together with HE-band images. We find that the estimates of stellar masses improve with the use of an image, but those of redshift and SFR do not. Our best results are deriving (i) the redshift within a normalized error of <0.15 for 99.9 per cent of the galaxies with signal-to-noise ratio >3 in the HE band; (ii) the stellar mass within a factor of two (∼0.3 dex) for 99.5 per cent of the considered galaxies; and (iii) the SFR within a factor of two (∼0.3 dex) for ∼70 per cent of the sample. We discuss the implications of our work for application to surveys as well as how measurements of these galaxy parameters can be improved with deep learning.
dc.format.extent20 p.
dc.format.mimetypeapplication/pdf
dc.identifier.idgrec755909
dc.identifier.issn0035-8711
dc.identifier.urihttps://hdl.handle.net/2445/220737
dc.language.isoeng
dc.publisherRoyal Astronomical Society
dc.relation.isformatofReproducció del document publicat a: https://doi.org/10.1093/mnras/stac3810
dc.relation.ispartofMonthly Notices of the Royal Astronomical Society, 2023, vol. 520, p. 3529-3548
dc.relation.urihttps://doi.org/10.1093/mnras/stac3810
dc.rights(c) Courbin Frederic et al., 2023
dc.rights.accessRightsinfo:eu-repo/semantics/openAccess
dc.sourceArticles publicats en revistes (Institut de Ciències del Cosmos (ICCUB))
dc.subject.classificationAprenentatge automàtic
dc.subject.classificationCosmologia
dc.subject.classificationGalàxies
dc.subject.classificationTelescopis espacials
dc.subject.otherMachine learning
dc.subject.otherCosmology
dc.subject.otherGalaxies
dc.subject.otherSpace telescopes
dc.titleEuclid preparation – XXIII. Derivation of galaxy physical properties with deep machine learning using mock fluxes and H-band images
dc.typeinfo:eu-repo/semantics/article
dc.typeinfo:eu-repo/semantics/publishedVersion

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