SPInS, a pipeline for massive stellar parameter inference: A public Python tool to age-date, weigh, size up stars, and more
Yveline Lebreton, Daniel Roy Reese

TL;DR
SPInS is a Python tool that infers stellar parameters like age, mass, and radius from observational data using a Bayesian MCMC approach, aiding large-scale stellar studies.
Contribution
The paper introduces SPInS, a novel Python-based Bayesian tool that infers stellar parameters from diverse observational constraints with error estimates and correlations.
Findings
Successfully infers stellar parameters across the Hertzsprung-Russell diagram.
Validates results by comparing with literature data.
Efficiently characterizes coeval stars and provides additional derived quantities.
Abstract
Stellar parameters are required in a variety of contexts, ranging from the characterisation of exoplanets to Galactic archaeology. Among them, the age of stars cannot be directly measured, while the mass and radius can be measured in some particular cases (binary systems, interferometry). Stellar ages, masses, and radii have to be inferred from stellar evolution models by appropriate techniques. We have designed a Python tool named SPInS. It takes a set of photometric, spectroscopic, interferometric, and/or asteroseismic observational constraints and, relying on a stellar model grid, provides the age, mass, and radius of a star, among others, as well as error bars and correlations. We make the tool available to the community via a dedicated website. SPInS uses a Bayesian approach to find the PDF of stellar parameters from a set of classical constraints. At the heart of the code is a…
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Taxonomy
TopicsStellar, planetary, and galactic studies · Astronomy and Astrophysical Research · Scientific Research and Discoveries
