A census of $\rho$ Oph candidate members from Gaia DR2

H. C'anovas, C. Cantero, L. Cieza, A. Bombrun, U. Lammers, B. Mer'in, A. Mora, 'Alvaro Ribas, D. Ru'iz-Rodr'iguez
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引用次数: 20

Abstract

The Ophiuchus cloud complex is one of the best laboratories to study the earlier stages of the stellar and protoplanetary disc evolution. The wealth of accurate astrometric measurements contained in the Gaia Data Release 2 can be used to update the census of Ophiuchus member candidates. We seek to find potential new members of Ophiuchus and identify those surrounded by a circumstellar disc. We constructed a control sample composed of 188 bona fide Ophiuchus members. Using this sample as a reference we applied three different density-based machine learning clustering algorithms (DBSCAN, OPTICS, and HDBSCAN) to a sample drawn from the Gaia catalogue centred on the Ophiuchus cloud. The clustering analysis was applied in the five astrometric dimensions defined by the three-dimensional Cartesian space and the proper motions in right ascension and declination. The three clustering algorithms systematically identify a similar set of candidate members in a main cluster with astrometric properties consistent with those of the control sample. The increased flexibility of the OPTICS and HDBSCAN algorithms enable these methods to identify a secondary cluster. We constructed a common sample containing 391 member candidates including 166 new objects, which have not yet been discussed in the literature. By combining the Gaia data with 2MASS and WISE photometry, we built the spectral energy distributions from 0.5 to $22\microm$ for a subset of 48 objects and found a total of 41 discs, including 11 Class II and 1 Class III new discs. Density-based clustering algorithms are a promising tool to identify candidate members of star forming regions in large astrometric databases. If confirmed, the candidate members discussed in this work would represent an increment of roughly 40% of the current census of Ophiuchus.
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来自盖亚DR2的$\rho$ Oph候选成员的普查
蛇夫座星云复合体是研究恒星和原行星盘早期演化的最佳实验室之一。盖亚数据发布2中包含的丰富的精确天文测量数据可用于更新蛇夫座候选成员的普查。我们试图找到蛇夫座潜在的新成员,并识别那些被星周盘包围的成员。我们建立了一个由188个真正的蛇夫座成员组成的对照样本。以这个样本为参考,我们将三种不同的基于密度的机器学习聚类算法(DBSCAN, OPTICS和HDBSCAN)应用于以蛇夫座云为中心的盖亚目录中的样本。将聚类分析方法应用于三维笛卡尔空间所定义的5个天体测量维度和赤经赤纬的固有运动。三种聚类算法系统地识别出主簇中具有与控制样本一致的天体测量特性的相似候选成员集。OPTICS和HDBSCAN算法增加的灵活性使这些方法能够识别次要集群。我们构建了一个包含391个候选成员的共同样本,其中包括166个尚未在文献中讨论的新对象。通过将Gaia数据与2MASS和WISE光度法相结合,我们建立了48个天体子集的光谱能量分布,从0.5到$22\microm$,共发现41个圆盘,其中11个为II类,1个为III类。基于密度的聚类算法是在大型天体测量数据库中识别恒星形成区域候选成员的一种很有前途的工具。如果得到证实,这项工作中讨论的候选成员将代表当前蛇夫座人口普查的大约40%的增量。
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