Litcius/Paper detail

Identifying 46 New Open Cluster Candidates in Gaia EDR3 Using a Hybrid pyUPMASK and Random Forest Method

Huanbin Chi, Shoulin 守林 Wei 卫, Feng Wang, Zhongmu Li

2023The Astrophysical Journal Supplement Series17 citationsDOIOpen Access PDF

Abstract

Abstract Open clusters (OCs) are regarded as tracers to understand stellar evolution theory and validate stellar models. In this study, we presented a robust approach to identifying OCs. A hybrid method consisting of pyUPMASK and the random forest (RF) algorithm is first used to remove field stars and determine more reliable members. An identification model based on the RF algorithm built based on 3714 OC samples from Gaia DR2 and EDR3 is then applied to identify OC candidates. The OC candidates are obtained after isochrone fitting, advanced stellar population synthesis model fitting, and visual inspection. Using the proposed approach, we revisited 868 candidates and preliminarily clustered them by the friends-of-friends algorithm in Gaia EDR3. Excluding OCs that have already been reported, we focused on the remaining 300 unknown candidates. From high to low fitting quality, these unrevealed candidates were further classified into Class A (59), Class B (21), and Class C (220). As a result, 46 new reliable OC candidates among Classes A and B are identified after visual inspection.

Topics & Concepts

Open clusterClass (philosophy)StarsIdentification (biology)Cluster (spacecraft)Computer sciencePopulationArtificial intelligenceRandom forestAstrophysicsPhysicsComputer visionBiologyProgramming languageSociologyBotanyDemographyStellar, planetary, and galactic studiesAstronomy and Astrophysical ResearchGamma-ray bursts and supernovae
Identifying 46 New Open Cluster Candidates in Gaia EDR3 Using a Hybrid pyUPMASK and Random Forest Method | Litcius