2021
DOI: 10.3847/1538-3881/ac0ef0
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StelNet: Hierarchical Neural Network for Automatic Inference in Stellar Characterization

Abstract: Characterizing the fundamental parameters of stars from observations is crucial for studying the stars themselves, their planets, and the galaxy as a whole. Stellar evolution theory predicting the properties of stars as a function of stellar age and mass enables translating observables into physical stellar parameters by fitting the observed data to synthetic isochrones. However, the complexity of overlapping evolutionary tracks often makes this task numerically challenging, and with a precision that can be hi… Show more

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