TL;DR
The Payne is a novel method that uses physical spectral models and neural network interpolation to accurately determine stellar parameters and abundances from observed spectra, demonstrated on APOGEE data.
Contribution
It introduces a flexible, robust interpolation approach for spectral modeling that combines physical models with machine learning, enabling precise stellar label estimation without recalibration.
Findings
Achieved 10^{-3} rms spectral flux prediction accuracy.
Produced physically sensible stellar parameters and more precise element abundances.
Demonstrated effectiveness on APOGEE DR14 data set.
Abstract
We present The Payne, a general method for the precise and simultaneous determination of numerous stellar labels from observed spectra, based on fitting physical spectral models. The Payne combines a number of important methodological aspects: it exploits the information from much of the available spectral range; it fits all labels (stellar parameters and element abundances) simultaneously; it uses spectral models, where the atmosphere structure and the radiative transport are consistently calculated to reflect the stellar labels. At its core The Payne has an approach to accurate and precise interpolation and prediction of the spectrum in high-dimensional label-space, which is flexible and robust, yet based on only a moderate number of ab initio models (O(1000) for 25 labels). With a simple neural-net-like functional form and a suitable choice of training labels, this interpolation…
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