深度学习在恒星参数确定中的应用:I-约束超参数

IF 0.5 4区 物理与天体物理 Q4 ASTRONOMY & ASTROPHYSICS Open Astronomy Pub Date : 2022-01-01 DOI:10.1515/astro-2022-0007
M. Gebran, Kathleen Connick, H. Farhat, F. Paletou, I. Bentley
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引用次数: 2

摘要

摘要机器学习是分析和解释日益增多的可用天文数据的有效方法。在这项研究中,我们展示了一种教学方法,它应该有利于任何愿意在恒星参数确定的背景下尝试深度学习技术的人。使用卷积神经网络架构,我们逐步概述了如何选择最佳参数来推导恒星参数的最准确值:T eff{T}_{\rm{eff}}、log g\log g、[M/H]和v e sin i{v}_{e} 我。使用带有随机噪声的合成光谱来约束该方法并模拟观测结果。我们发现,每个恒星参数都需要不同的网络超参数组合,达到的最大精度取决于这种组合以及观测的信噪比和网络架构。我们还表明,在对该技术进行优化后,该技术可以应用于不同波长范围内的其他光谱类型。
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Deep learning application for stellar parameters determination: I-constraining the hyperparameters
Abstract Machine learning is an efficient method for analysing and interpreting the increasing amount of astronomical data that are available. In this study, we show a pedagogical approach that should benefit anyone willing to experiment with deep learning techniques in the context of stellar parameter determination. Using the convolutional neural network architecture, we give a step-by-step overview of how to select the optimal parameters for deriving the most accurate values for the stellar parameters of stars: T eff {T}_{{\rm{eff}}} , log g \log g , [M/H], and v e sin i {v}_{e}\sin i . Synthetic spectra with random noise were used to constrain this method and to mimic the observations. We found that each stellar parameter requires a different combination of network hyperparameters and the maximum accuracy reached depends on this combination as well as the signal-to-noise ratio of the observations, and the architecture of the network. We also show that this technique can be applied to other spectral-types in different wavelength ranges after the technique has been optimized.
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来源期刊
Open Astronomy
Open Astronomy Physics and Astronomy-Astronomy and Astrophysics
CiteScore
1.30
自引率
14.30%
发文量
37
审稿时长
16 weeks
期刊介绍: The journal disseminates research in both observational and theoretical astronomy, astrophysics, solar physics, cosmology, galactic and extragalactic astronomy, high energy particles physics, planetary science, space science and astronomy-related astrobiology, presenting as well the surveys dedicated to astronomical history and education.
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