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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CITATION STYLE
Gebran, M., Connick, K., Farhat, H., Paletou, F., & Bentley, I. (2022). Deep learning application for stellar parameters determination: I-constraining the hyperparameters. Open Astronomy, 31(1), 38–57. https://doi.org/10.1515/astro-2022-0007
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