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A Bayesian Estimation of the Milky Way’s Circular Velocity Curve using Gaia DR3

<!--HTML-->The hidden hand of dark matter (DM) shaping the Milky Way remains elusive as the dark substructure of the Galaxy is probed by tracing the dance of celestial bodies in the cosmic shadows. In our work, we exploit the increase of volume and precision in data brought about by ongoing la...

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Autor principal: Põder, Sven
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2860569
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author Põder, Sven
author_facet Põder, Sven
author_sort Põder, Sven
collection CERN
description <!--HTML-->The hidden hand of dark matter (DM) shaping the Milky Way remains elusive as the dark substructure of the Galaxy is probed by tracing the dance of celestial bodies in the cosmic shadows. In our work, we exploit the increase of volume and precision in data brought about by ongoing large-scale stellar surveys and use approximately 1.6 million Red Giant Branch stars from Gaia DR3. We present a novel Bayesian inference approach to estimate the circular velocity curve of the Milky Way along with uncertainties that account for various sources of systematic uncertainty as our methodology provides a self-consistent way to quantify uncertainties in the Sun’s Galactocentric distance and the spatial-kinematic morphology of the tracer stars. In addition to estimating the circular velocity curve within a range of 5 to 15 kpc, we also infer the DM mass within 15 kpc and predict the local spherically-averaged DM density.
id cern-2860569
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
record_format invenio
spelling cern-28605692023-06-01T21:43:20Zhttp://cds.cern.ch/record/2860569engPõder, SvenA Bayesian Estimation of the Milky Way’s Circular Velocity Curve using Gaia DR3Third EuCAPT Annual SymposiumEucapt Conferences<!--HTML-->The hidden hand of dark matter (DM) shaping the Milky Way remains elusive as the dark substructure of the Galaxy is probed by tracing the dance of celestial bodies in the cosmic shadows. In our work, we exploit the increase of volume and precision in data brought about by ongoing large-scale stellar surveys and use approximately 1.6 million Red Giant Branch stars from Gaia DR3. We present a novel Bayesian inference approach to estimate the circular velocity curve of the Milky Way along with uncertainties that account for various sources of systematic uncertainty as our methodology provides a self-consistent way to quantify uncertainties in the Sun’s Galactocentric distance and the spatial-kinematic morphology of the tracer stars. In addition to estimating the circular velocity curve within a range of 5 to 15 kpc, we also infer the DM mass within 15 kpc and predict the local spherically-averaged DM density.oai:cds.cern.ch:28605692023
spellingShingle Eucapt Conferences
Põder, Sven
A Bayesian Estimation of the Milky Way’s Circular Velocity Curve using Gaia DR3
title A Bayesian Estimation of the Milky Way’s Circular Velocity Curve using Gaia DR3
title_full A Bayesian Estimation of the Milky Way’s Circular Velocity Curve using Gaia DR3
title_fullStr A Bayesian Estimation of the Milky Way’s Circular Velocity Curve using Gaia DR3
title_full_unstemmed A Bayesian Estimation of the Milky Way’s Circular Velocity Curve using Gaia DR3
title_short A Bayesian Estimation of the Milky Way’s Circular Velocity Curve using Gaia DR3
title_sort bayesian estimation of the milky way’s circular velocity curve using gaia dr3
topic Eucapt Conferences
url http://cds.cern.ch/record/2860569
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AT podersven thirdeucaptannualsymposium
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