The GALAH Survey: Velocity fluctuations in the Milky Way using red clump giants
Shourya Khanna, Sanjib Sharma, Joss Bland-Hawthorn, Michael Hayden,, David M. Nataf, Yuan-Sen Ting, Janez Kos, Sarah Martell, Tomaz Zwitter,, Gayandhi De Silva, Martin Asplund, Sven Buder, Ly Duong, Jane Lin, Jeffrey D., Simpson, Borja Anguiano, Jonathan Horner, Prajwal R. Kafle

TL;DR
This study maps line-of-sight velocity fluctuations in the Milky Way using Red Clump stars, finding smaller amplitude fluctuations than previous surveys, which impacts understanding of Galactic dynamics.
Contribution
It provides a refined measurement of velocity fluctuations in the Milky Way, accounting for systematics and comparing observations with simulations to improve dynamical models.
Findings
Negligible large-scale fluctuations away from the Galactic plane
Measured fluctuations in the mid-plane are about 4.6 km/s, smaller than previous estimates
Distances to high-mass Red Clump stars can be underestimated, affecting velocity fluctuation estimates.
Abstract
If the Galaxy is axisymmetric and in dynamical equilibrium, we expect negligible fluctuations in the residual line-of-sight velocity field. Recent results using the \apg{} survey find significant fluctuations in velocity for stars in the midplane (0.25 kpc) out to 5 kpc, suggesting that the dynamical influence of non-axisymmetric features i.e., the Milky Way's bar, spiral arms and merger events extends out to the Solar neighborhood. Their measured power spectrum has a characteristic amplitude of 11 \kms{} on a scale of 2.5 kpc. The existence of such large-scale streaming motions has important implications for determining the Sun's motion about the Galactic Centre. Using Red Clump stars from \glh{} and \apg{}, we map the line-of-sight velocities around the Sun (d5 kpc), and 1.25 kpc from the midplane. By subtracting a smooth axisymmetric model for the velocity field, we…
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