Unified deep learning approach for estimating the metallicities of RR Lyrae stars using light curves from Gaia Data Release 3

IF 5.8 2区 物理与天体物理 Q1 ASTRONOMY & ASTROPHYSICS
L. Monti, T. Muraveva, A. Garofalo, G. Clementini, M. L. Valentini
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引用次数: 0

Abstract

Context. RR Lyrae stars (RRLs) are old population pulsating variables that serve as useful metallicity tracers due to the correlation between their metal abundances and the shape of their light curves. With the advent of ESA’s Gaia mission Data Release 3 (DR3), which provides light curves for approximately 270 000 RRLs, it has become crucial to develop a machine learning technique for estimating metallicities for large samples of RRLs directly from their light curves.Aims. We extend our previous methodological study on RRab stars by developing and validating a unified deep learning (DL) framework capable of accurately estimating metallicities for both fundamental mode (RRab) and first-overtone (RRc) pulsators using their Gaia DR3 G-band light curves. Our goal is to create a single, consistent model to produce a large, homogeneous metallicity catalogue.Methods. We employed a gated recurrent units (GRUs)-based neural network architecture optimised for time-series extrinsic regression. The framework incorporates a rigorous pre-processing pipeline (including phase-folding, smoothing, and sample weighting) and is trained using Gaia DR3 G-band light curves and photometric metallicities of RRLs available in the literature. The model architecture and training implicitly handle the morphological differences between RRab and RRc light curves.Results. Our unified GRU model achieves high predictive accuracy. It successfully confirms the high precision for RRab stars reported in our previous work (RMSE = 0.0765 dex, R2 = 0.9401) and, crucially, demonstrates even stronger performance for the more challenging RRc stars (RMSE = 0.0720 dex, R2 = 0.9625). This represents a significant improvement over previous DL benchmarks. We also present a key finding: a clear positive correlation between the number of photometric data points in a light curve and the precision of the final metallicity estimate; this correlation quantifies the value of well-sampled observations.Conclusions. Crucially, we demonstrate that prediction accuracy scales with the number of photometric epochs, establishing that this framework is poised to deliver unprecedented precision with richer future datasets. Applying this methodology to the enhanced light curves from Gaia DR4 and the Vera C. Rubin Observatory will enable us to produce metallicity catalogues of unprecedented scale and fidelity, paving the way for next-generation studies in Galactic archaeology and chemo-dynamics.
基于Gaia数据发布3的光曲线估计天琴座RR星金属丰度的统一深度学习方法
上下文。天琴座RR星(RRLs)是古老的人口脉动变量,由于它们的金属丰度与它们的光曲线形状之间的相关性,它们可以作为有用的金属丰度示踪剂。随着欧空局的盖亚任务数据发布3 (DR3)的出现,它提供了大约27万个rrl的光曲线,开发一种机器学习技术来直接从rrl的光曲线中估计大量样本的金属含量变得至关重要。我们通过开发和验证一个统一的深度学习(DL)框架来扩展我们之前对RRab恒星的方法研究,该框架能够准确地估计基模(RRab)和第一泛音(RRc)脉动器的金属丰度,并使用它们的Gaia DR3 g波段光曲线。我们的目标是创建一个单一的,一致的模型,以产生一个大的,均匀的金属丰度目录。我们采用了一个门控循环单元(gru)为基础的神经网络架构优化时间序列外部回归。该框架包含严格的预处理流程(包括相位折叠、平滑和样本加权),并使用Gaia DR3 g波段光曲线和文献中可用的RRLs的光度金属度进行训练。模型结构和训练隐式处理了RRab和RRc光曲线的形态差异。我们的统一GRU模型具有较高的预测精度。它成功地证实了我们之前报道的RRab恒星的高精度(RMSE = 0.0765指数,R2 = 0.9401),至关重要的是,它对更具挑战性的RRc恒星(RMSE = 0.0720指数,R2 = 0.9625)展示了更强的性能。这比以前的DL基准测试有了显著的改进。我们还提出了一个关键发现:光曲线中光度数据点的数量与最终金属丰度估计的精度之间存在明显的正相关关系;这种相关性量化了充分抽样观察的价值。至关重要的是,我们证明了预测精度与光度时代的数量有关,这表明该框架有望在未来更丰富的数据集上提供前所未有的精度。将这种方法应用于Gaia DR4和Vera C. Rubin天文台的增强光曲线,将使我们能够产生前所未有的规模和保真度的金属丰度目录,为下一代银河系考古学和化学动力学研究铺平道路。
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来源期刊
Astronomy & Astrophysics
Astronomy & Astrophysics 地学天文-天文与天体物理
CiteScore
10.20
自引率
27.70%
发文量
2105
审稿时长
1-2 weeks
期刊介绍: Astronomy & Astrophysics is an international Journal that publishes papers on all aspects of astronomy and astrophysics (theoretical, observational, and instrumental) independently of the techniques used to obtain the results.
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