The Swan: Data-Driven Inference of Stellar Surface Gravities for Cool Stars from Photometric Light Curves
Maryum Sayeed, Daniel Huber, Adam Wheeler, Melissa Ness

TL;DR
The paper introduces 'The Swan', a fast, data-driven method to accurately determine stellar surface gravities from Kepler light curves, applicable to various star types and adaptable to TESS data, enhancing stellar characterization efficiency.
Contribution
It presents a novel local linear regression approach for deriving stellar surface gravity from light curves, achieving high precision and broad applicability across stellar evolutionary stages.
Findings
Achieves ~0.02 dex precision for seismic stars
Attains ~0.11 dex precision for Gaia stars
Effective for TESS data with 27-day baseline
Abstract
Stellar light curves are well known to encode physical stellar properties. Precise, automated and computationally inexpensive methods to derive physical parameters from light curves are needed to cope with the large influx of these data from space-based missions such as Kepler and TESS. Here we present a new methodology which we call The Swan, a fast, generalizable and effective approach for deriving stellar surface gravity () for main sequence, subgiant and red giant stars from Kepler light curves using local linear regression on the full frequency content of Kepler long cadence power spectra. With this inexpensive data-driven approach, we recover to a precision of 0.02 dex for 13,822 stars with seismic values between 0.2-4.4 dex, and 0.11 dex for 4,646 stars with Gaia derived values between 2.3-4.6 dex. We further develop a…
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