LRPayne: Stellar parameters and abundances from low-resolution spectra
Nagaraj Vernekar, Lorenzo Spina, Sara Lucatello, Carmelo Arcidiacono, Luca Cortese, Matteo Simioni, Andrea Balestra

TL;DR
LRPayne is a new neural network-based algorithm that efficiently derives stellar parameters and chemical abundances from low-resolution spectra, suitable for large galactic surveys like WEAVE.
Contribution
It introduces a model-driven neural network approach trained on synthetic spectra to accurately determine stellar labels from low-resolution optical spectra.
Findings
High accuracy in recovering stellar parameters and abundances from synthetic spectra.
Good agreement with literature values for benchmark and metal-poor stars.
Effective at S/N of 20, with some challenges for specific elements.
Abstract
Aims. This paper introduces LRPayne, a novel algorithm designed for the efficient determination of stellar parameters and chemical abundances from low-resolution optical spectra, with a primary focus on data from large-scale galactic surveys such as WEAVE. Methods. LRPayne employs a model-driven approach, utilising a fully connected artificial neural network (ANN), trained on a library of 70,000 synthetic stellar spectra generated using iSpec with 1D MARCS model atmospheres and the Turbospectrum synthesis code. The network is trained to predict normalized flux given stellar labels (Teff, log(g), [Fe/H], vmic, vmax and v sin i, and 24 individual elemental abundances). Stellar parameters are subsequently derived from observed spectra by finding the best-fit synthetic spectrum from the ANN using a chi-squared minimisation technique. The method operates on spectra degraded to a resolution…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
Taxonomy
TopicsStellar, planetary, and galactic studies · Astronomy and Astrophysical Research · Educational Leadership and Practices
