3D Morphology of Open Clusters in the Solar Neighborhood with Gaia EDR3 II: Hierarchical Star Formation Revealed by Spatial and Kinematic Substructures
Xiaoying Pang (1, 2), Shih-Yun Tang (3, 4), Yuqian Li (1), Zeqiu, Yu (1), Long Wang (5), Jiayu Li (1), Yezhang Li (1), Yifan Wang (1), Yanshu, Wang (1), Teng Zhang (1), Mario Pasquato (6, 7), M.B.N. Kouwenhoven (1), ((1) Department of Physics, Xi'an Jiaotong-Liverpool University

TL;DR
This study uses Gaia EDR3 data and machine learning to analyze the morphology and kinematics of 85 open clusters, revealing hierarchical star formation patterns, substructure classifications, and dynamical processes in the solar neighborhood.
Contribution
It introduces a new classification of cluster substructures and uncovers hierarchical formation processes through spatial and kinematic analysis.
Findings
Identification of 85 open clusters with detailed substructure classification.
Discovery of hierarchical groups forming filament networks in young regions.
Evidence of dynamical processes like filament dissolution and subgroup mergers.
Abstract
We identify members of 65 open clusters in the solar neighborhood using the machine-learning algorithm StarGO based on Gaia EDR3 data. After adding members of twenty clusters from previous studies (Pang et al. 2021a,b; Li et al. 2021) we obtain 85 clusters, and study their morphology and kinematics. We classify the substructures outside the tidal radius into four categories: filamentary (f1) and fractal (f2) for clusters Myr, and halo (h) and tidal-tail (t) for clusters Myr. The kinematical substructures of f1-type clusters are elongated; these resemble the disrupted cluster Group X. Kinematic tails are distinct in t-type clusters, especially Pleiades. We identify 29 hierarchical groups in four young regions (Alessi 20, IC 348, LP 2373, LP 2442); ten among these are new. The hierarchical groups form filament networks. Two regions (Alessi 20, LP 2373) exhibit global…
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