239 research outputs found
Gaia keeps on delivering: expanding the open cluster population with EDR3
Stars and planetary system
Gaia keeps on delivering: expanding the open cluster population with EDR3
Stars and planetary system
Hunting for open clusters in \textit{Gaia} DR2: the Galactic anticentre
The Gaia Data Release 2 (DR2) provided an unprecedented volume of precise
astrometric and excellent photometric data. In terms of data mining the Gaia
catalogue, machine learning methods have shown to be a powerful tool, for
instance in the search for unknown stellar structures. Particularly, supervised
and unsupervised learning methods combined together significantly improves the
detection rate of open clusters. We systematically scan Gaia DR2 in a region
covering the Galactic anticentre and the Perseus arm and
, with the goal of finding any open clusters that may
exist in this region, and fine tuning a previously proposed methodology
successfully applied to TGAS data, adapting it to different density regions.
Our methodology uses an unsupervised, density-based, clustering algorithm,
DBSCAN, that identifies overdensities in the five-dimensional astrometric
parameter space that may correspond
to physical clusters. The overdensities are separated into physical clusters
(open clusters) or random statistical clusters using an artificial neural
network to recognise the isochrone pattern that open clusters show in a colour
magnitude diagram. The method is able to recover more than 75% of the open
clusters confirmed in the search area. Moreover, we detected 53 open clusters
unknown previous to Gaia DR2, which represents an increase of more than 22%
with respect to the already catalogued clusters in this region. We find that
the census of nearby open clusters is not complete. Different machine learning
methodologies for a blind search of open clusters are complementary to each
other; no single method is able to detect 100% of the existing groups. Our
methodology has shown to be a reliable tool for the automatic detection of open
clusters, designed to be applied to the full Gaia DR2 catalogue.Comment: 8 pages, accepted by Astronomy and Astrophysics (A&A) the 14th May,
2019. Tables 1 and 2 available at the CD
Gaia kinematics reveal a complex lopsided and twisted Galactic disc warp
There are few warp kinematic models of the Galaxy able to characterise
structure and kinematics. These models are necessary to study the lopsidedness
of the warp and the twisting of the line-of-nodes of the stellar warp, already
seen in gas and dust. We use the \Gaia~Data Release 2 astrometric data up to
mag to characterise the structure of the Galactic warp, the vertical
motions and the dependency on the age. We use two populations up to
galactocentric distances of kpc, a young (OB-type) and an old (Red Giant
Branch, RGB). We use the nGC3 PCM and LonKin methods based on the Gaia
observables, together with 2D projections of the positions and proper motions
in the Galactic plane. We confirm the age dependency of the Galactic warp, both
in positions and kinematics, being the height of the Galactic warp of about
kpc for the OB sample and of kpc for the RGB at a galactocentric
distance of kpc. Both methods find that the onset radius is kpc
for the OB sample and kpc for the RGB. From the RGB sample, we find
from galactocentric distances larger than kpc the line-of-nodes twists away
from the Sun-anticentre line towards galactic azimuths
increasing with radius, though possibly influenced by extinction. The RGB
sample reveals a slightly lopsided stellar warp with pc between the
up and down sides. The line of maximum of proper motions in latitude is
systematically offset from the line-of-nodes estimated from the spatial data,
which our models predict as a kinematic signature of lopsidedness. We also show
a prominent wave-like pattern of a bending mode different in the OB and RGB,
and substructures that might not be related to the Galactic warp nor to a
bending mode. GDR2 triggers the need for complex kinematic models, flexible
enough to combine both wave-like patterns and an S-shaped lopsided
warp.[abridged]Comment: 14 pages (+7 pages of appendix), matches the accepted version in A&A
after referee comments (June 5th 2019
A machine learning-based tool for open cluster membership determination in Gaia DR3
Membership studies characterising open clusters with Gaia data, most using
DR2, are so far limited at magnitude G = 18 due to astrometric uncertainties at
the faint end. Our goal is to extend current open cluster membership lists with
faint members and to characterise the low-mass end, which members are important
for many applications, in particular for ground-based spectroscopic surveys. We
use a deep neural network architecture to learn the distribution of highly
reliable open cluster member stars around known clusters. After that, we use
the trained network to estimate new open cluster members based on their
similarities in a high-dimensional space, five-dimensional astrometry plus the
three photometric bands. Due to the improved astrometric precisions of Gaia DR3
with respect to DR2, we are able to homogeneously detect new faint member stars
(G > 18) for the known open cluster population. Our methodology can provide
extended membership lists for open clusters down to the limiting magnitude of
Gaia, which will enable further studies to characterise the open cluster
population, e.g. estimation of their masses, or their dynamics. These extended
membership lists are also ideal target lists for forthcoming ground-based
spectroscopic surveys.Comment: 10 pages, 6 figures. Submitted to Astronomy & Astrophysic
The (im)possibility of strong chemical tagging
Interstellar matter and star formatio
The Sagittarius stream with Gaia data
The in-fall of the Sagittarius Dwarf Spheroidal (Sgr) has possibly been responsible of important perturbations on the Milky Way (MW) disk. Yet, with only some thousand of line-of-sight velocities and very few astrometric measurements, there are still many open questions regarding its orbit and stellar content, which hinders our ability to constrain its effects on the MW. We present the largest sample of Sagittarius dwarf and stream stars available to date, obtained entirely by searching in the Gaia DR2 proper motions. Thanks to a smart use of the Gaia Archive combined with the Wavelet Transform to detect substructure, we have unveiled the stream and its proper motion in an almost 360° of its path on the sky, being the more extended and continuous proper motion sequence ever measured for a stream. We have also obtained a sample of RR Lyrae in the stream for which we gain access to the distances and, therefore, to the tangential velocities for the first time. We show the main kinematic and population characteristics of the stream derived in our study. A first comparison with one of the most successful models of the stream shows significant kinematical differences with the data. Our data will allow us to study the detailed the populations of Sgr, obtain the best possible fit to the MW potential from its orbit and, in turn, constrain its impact on our Galaxy
The Halo-Disc dynamical coupling:Gaia blind detection of the Monoceros and ACS structures
The astrometric sample provided by Gaia allows us to study the disc far from the Sun, in the halo and at their interface. It is at the very edge of the disc where the effects of external perturbations is most noticeable, but also where there could be the remnants of accreted satellites. Our goal is to characterise the kinematic substructure present at the edge of the Milky Way (MW) disc to provide observational constrains that can help us identify their origin. We present the most precise characterisation of Monoceros and the Anticentre stream (ACS), detected for the first time exclusively in phase-space, without limiting ourselves to a particular stellar type. Our results allow future works to model their orbital parameters, chemistry and star formation history, to establish their origin and, ultimately, understand the most influential processes that shaped the MW over its history
- …