UOCS. III. UVIT catalogue of open clusters with machine learning based membership using \textit{Gaia} EDR3 astrometry
Vikrant V. Jadhav, Clara M. Pennock, Annapurni Subramaniam, Ram Sagar, and Prasanta Kumar Nayak

TL;DR
This paper develops a machine learning method to identify open cluster members using Gaia EDR3 data, providing new catalogs and insights into cluster properties and UV characteristics of stars.
Contribution
The study introduces a robust machine learning approach combining astrometric, photometric, and systematic data to improve cluster membership determination and cataloging.
Findings
Detected 200-2500 additional members per cluster.
Provided UV photometric catalogs including blue stragglers and giants.
Identified UV excess and white dwarfs in clusters.
Abstract
We present a study of six open clusters (Berkeley 67, King 2, NGC 2420, NGC 2477, NGC 2682 and NGC 6940) using the Ultra Violet Imaging Telescope (UVIT) aboard \textit{ASTROSAT} and \textit{Gaia} EDR3. We used combinations of astrometric, photometric and systematic parameters to train and supervise a machine learning algorithm along with a Gaussian mixture model for the determination of cluster membership. This technique is robust, reproducible and versatile in various cluster environments. In this study, the \textit{Gaia} EDR3 membership catalogues are provided along with classification of the stars as \texttt{members, candidates} and \texttt{field} in the six clusters. We could detect 200--2500 additional members using our method with respect to previous studies, which helped estimate mean space velocities, distances, number of members and core radii. UVIT photometric catalogues,…
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