Bayesian distances and extinctions for giants observed by Kepler and APOGEE
Tha\'ise S. Rodrigues, L\'eo Girardi, Andrea Miglio, Diego Bossini, Jo, Bovy, Courtney Epstein, Marc H. Pinsonneault, Dennis Stello, Gail Zasowski,, Carlos Allende Prieto, William J. Chaplin, Saskia Hekker, Jennifer A., Johnson, Szabolcs M\'esz\'aros, Beno\^it Mosser

TL;DR
This paper introduces a Bayesian method combining spectroscopic and asteroseismic data to accurately determine distances and extinctions for giant stars observed by Kepler and APOGEE, achieving ~1.8% precision.
Contribution
It presents a novel integrated approach for estimating stellar distances and extinctions using combined spectroscopic and asteroseismic constraints within a Bayesian framework.
Findings
Distances range from 0.5 to 5 kpc with ~1.8% uncertainty.
Extinction estimates are systematically smaller than previous maps.
Results agree well with cluster and catalog measurements.
Abstract
We present a first determination of distances and extinctions for individual stars in the first release of the APOKASC catalogue, built from the joint efforts of the Apache Point Observatory Galactic Evolution Experiment (APOGEE) and the Kepler Asteroseismic Science Consortium (KASC). Our method takes into account the spectroscopic constraints derived from the APOGEE Stellar Parameters and Chemical Abundances Pipeline, together with the asteroseismic parameters from KASC. These parameters are then employed to estimate intrinsic stellar properties, including absolute magnitudes, using the Bayesian tool PARAM. We then find the distance and extinction that best fit the observed photometry in SDSS, 2MASS, and WISE passbands. The first 1989 giants targeted by APOKASC are found at typical distances between 0.5 and 5 kpc, with individual uncertainties of just ~1.8 per cent. Our extinction…
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