Please use this identifier to cite or link to this item: http://hdl.handle.net/20.500.12984/8493
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dc.contributor.authorSALAZAR CANIZALES, EDGAR MARTIN
dc.creatorSALAZAR CANIZALES, EDGAR MARTIN;-SACE941030HSRLND03
dc.date.issued44050
dc.identifier.isbn2208607
dc.identifier.urihttp://hdl.handle.net/20.500.12984/8493-
dc.descriptionTesis de maestría en ciencias: física
dc.description.abstractCosmic Microwave Background photons are inverse Compton scattered by energetic electrons in galaxy clusters and distorted by its bulk motion in a process known as the SunyaevZel’dovich (SZ) effect. Conventional methods that calculate cluster peculiar velocities require additional information like the thermal component (tSZ) or underlying electron density ne to estimate each cluster’s optical depth τ, however observational measurements contain large errors and biases. This work studies the feasibility of using deep learning regression algorithms for estimating individual cluster peculiar velocities from the simulated kinematic (kSZ) component signal, thus exempting the need of τ. This formalism is tested using the Magneticum cosmological hydrodynamical simulation. Both tSZ and kSZ, along with ne maps were generated at z = [1:04-1:32]. Trials with a simple convolutional neural network yielded prediction error standard deviations as low as σe = 11:019 km s^-1 ; whilst both methods implementing τ’s explicit calculation yielded standard deviations of 81:569 km s^-1 using tSZ and 87:527 km s^-1 for ne. The neural network provided reliable predictions for studying LSS velocity fields using the pairwise velocity estimator v12, in addition to improved correlation compared to conventional methods.
dc.description.sponsorshipUniversidad de Sonora. División de Ciencias Exactas y Naturales. Departamento de Investigación en Física, 2020.
dc.formatAcrobat PDF
dc.languageInglés
dc.language.isoeng
dc.publisherSALAZAR CANIZALES, EDGAR MARTIN
dc.rightsopenAccess
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0
dc.subject.classificationFOTONES
dc.subject.lccQB991.C64 .S24
dc.subject.lcshRadiación del fondo cósmico
dc.subject.lcshAstrofísica
dc.titlePeculiar velocity estimation from Sunyaev-Zel'dovich effect simulated signal using deep learning
dc.typeTesis de maestría
dc.contributor.directorFELDMAN, HUME; 0000-0001-7014-2176
dc.degree.departmentDivisión de Ciencias Exactas y Naturales
dc.degree.disciplineCIENCIAS FÍSICO MATEMÁTICAS Y CIENCIAS DE LA TIERRA
dc.degree.grantorUniversidad de Sonora. Campus Hermosillo
dc.degree.levelMaestria
dc.degree.nameMAESTRÍA EN CIENCIAS: FÍSICA
dc.identificator221211
dc.type.ctimasterThesis
Appears in Collections:Maestría
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