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Main Authors: Lim, Sung Hak, Putney, Eric, Buckley, Matthew R., Shih, David
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2305.13358
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author Lim, Sung Hak
Putney, Eric
Buckley, Matthew R.
Shih, David
author_facet Lim, Sung Hak
Putney, Eric
Buckley, Matthew R.
Shih, David
contents We present a novel, data-driven analysis of Galactic dynamics, using unsupervised machine learning -- in the form of density estimation with normalizing flows -- to learn the underlying phase space distribution of 6 million nearby stars from the Gaia DR3 catalog. Solving the equilibrium collisionless Boltzmann equation, we calculate -- for the first time ever -- a model-free, unbinned estimate of the local acceleration and mass density fields within a 3 kpc sphere around the Sun. As our approach makes no assumptions about symmetries, we can test for signs of disequilibrium in our results. We find our results are consistent with equilibrium at the 10% level, limited by the current precision of the normalizing flows. After subtracting the known contribution of stars and gas from the calculated mass density, we find clear evidence for dark matter throughout the analyzed volume. Assuming spherical symmetry and averaging mass density measurements, we find a local dark matter density of $0.47\pm 0.05$ GeV/cm$^3$. We compute the dark matter density at four radii in the stellar halo and fit to a generalized NFW profile. Although the uncertainties are large, we find a profile broadly consistent with recent analyses.
format Preprint
id arxiv_https___arxiv_org_abs_2305_13358
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Mapping Dark Matter in the Milky Way using Normalizing Flows and Gaia DR3
Lim, Sung Hak
Putney, Eric
Buckley, Matthew R.
Shih, David
Astrophysics of Galaxies
High Energy Physics - Phenomenology
We present a novel, data-driven analysis of Galactic dynamics, using unsupervised machine learning -- in the form of density estimation with normalizing flows -- to learn the underlying phase space distribution of 6 million nearby stars from the Gaia DR3 catalog. Solving the equilibrium collisionless Boltzmann equation, we calculate -- for the first time ever -- a model-free, unbinned estimate of the local acceleration and mass density fields within a 3 kpc sphere around the Sun. As our approach makes no assumptions about symmetries, we can test for signs of disequilibrium in our results. We find our results are consistent with equilibrium at the 10% level, limited by the current precision of the normalizing flows. After subtracting the known contribution of stars and gas from the calculated mass density, we find clear evidence for dark matter throughout the analyzed volume. Assuming spherical symmetry and averaging mass density measurements, we find a local dark matter density of $0.47\pm 0.05$ GeV/cm$^3$. We compute the dark matter density at four radii in the stellar halo and fit to a generalized NFW profile. Although the uncertainties are large, we find a profile broadly consistent with recent analyses.
title Mapping Dark Matter in the Milky Way using Normalizing Flows and Gaia DR3
topic Astrophysics of Galaxies
High Energy Physics - Phenomenology
url https://arxiv.org/abs/2305.13358