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Testing the chemical tagging technique with open clusters

机译:使用开放式集群测试化学标记技术

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Context. Stars are born together from giant molecular clouds and, if we assume that the priors were chemically homogeneous and well-mixed, we expect them to share the same chemical composition. Most of the stellar aggregates are disrupted while orbiting the Galaxy and most of the dynamic information is lost, thus the only possibility of reconstructing the stellar formation history is to analyze the chemical abundances that we observe today. Aims. The chemical tagging technique aims to recover disrupted stellar clusters based merely on their chemical composition. We evaluate the viability of this technique to recover co-natal stars that are no longer gravitationally bound. Methods. Open clusters are co-natal aggregates that have managed to survive together. We compiled stellar spectra from 31 old and intermediate-age open clusters, homogeneously derived atmospheric parameters, and 17 abundance species, and applied machine learning algorithms to group the stars based on their chemical composition. This approach allows us to evaluate the viability and efficiency of the chemical tagging technique. Results. We found that stars at different evolutionary stages have distinct chemical patterns that may be due to NLTE effects, atomic diffusion, mixing, and biases. When separating stars into dwarfs and giants, we observed that a few open clusters show distinct chemical signatures while the majority show a high degree of overlap. This limits the recovery of co-natal aggregates by applying the chemical tagging technique. Nevertheless, there is room for improvement if more elements are included and models are improved.
机译:上下文。恒星是从巨大的分子云中诞生而来的,如果我们假设先验分子在化学上是均质的并且混合得很好,那么我们希望它们具有相同的化学组成。绕星系运行时,大多数恒星聚集体都被破坏,并且大部分动态信息都丢失了,因此重建恒星形成历史的唯一可能性就是分析我们今天观察到的化学丰度。目的化学标记技术旨在仅根据其化学成分来恢复被破坏的恒星簇。我们评估了该技术恢复不再受重力束缚的新生代恒星的可行性。方法。疏散星团是设法共同生存的新生代聚集体。我们从31个旧的和中年的开放星团,均匀导出的大气参数和17个丰度物种中编辑了恒星光谱,并应用了机器学习算法根据恒星的化学成分对恒星进行分组。这种方法使我们能够评估化学标记技术的可行性和效率。结果。我们发现处于不同演化阶段的恒星具有不同的化学模式,这可能是由于NLTE效应,原子扩散,混合和偏差所致。当将恒星分为矮星和巨星时,我们观察到一些开放的团簇显示出不同的化学特征,而大多数则显示出高度的重叠。通过应用化学标签技术,这限制了新生婴儿聚集体的回收。但是,如果包含更多元素并改进模型,则仍有改进的空间。

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