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An overlooked source of uncertainty in the mass of the Milky Way
by
Oman, Kyle A
, Riley, Alexander H
in
Covariance matrix
/ Galactic rotation
/ Gaussian process
/ Mass distribution
/ Statistical analysis
/ Uncertainty
2024
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An overlooked source of uncertainty in the mass of the Milky Way
by
Oman, Kyle A
, Riley, Alexander H
in
Covariance matrix
/ Galactic rotation
/ Gaussian process
/ Mass distribution
/ Statistical analysis
/ Uncertainty
2024
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An overlooked source of uncertainty in the mass of the Milky Way
Paper
An overlooked source of uncertainty in the mass of the Milky Way
2024
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Overview
In the conventional approach to decomposing a rotation curve into a set of contributions from mass model components, the measurements of the rotation curve at different radii are taken to be independent. It is clear, however, that radial correlations are present in such data, for instance (but not only) because the orbital speed depends on the mass distribution at all (or, minimally, inner) radii. We adopt a very simple parametric form for a covariance matrix and constrain its parameters using Gaussian process regression. Applied to the rotation curve of the Milky Way, this suggests the presence of correlations between neighbouring rotation curve points with amplitudes \\(<10\\,\\mathrm{km}\\,\\mathrm{s}^{-1}\\) over length scales of \\(1.5\\)-\\(2.5\\,\\mathrm{kpc}\\) regardless of the assumed dark halo component. We show that accounting for such covariance can result in a \\(\\sim 50\\) per cent lower total mass estimate for the Milky Way than when it is neglected, and that the statistical uncertainty associated with the covariance is comparable to or exceeds the total systematic uncertainty budget. Our findings motivate including more detailed treatment of rotation curve covariance in future analyses.
Publisher
Cornell University Library, arXiv.org
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