Asteroseismic Data Analysis with DIAMONDS
Enrico Corsaro

TL;DR
This paper introduces DIAMONDS, a Bayesian nested sampling tool for analyzing complex asteroseismic data from space missions like Kepler, enabling detailed stellar oscillation modeling with high efficiency.
Contribution
The paper presents DIAMONDS, a novel Bayesian analysis code using nested sampling for robust and efficient asteroseismic parameter estimation and model comparison.
Findings
Effective fitting of stellar background signals.
Successful peak-bagging of oscillation modes.
Use of Bayesian evidence for peak significance assessment.
Abstract
Since the advent of the space-based photometric missions such as CoRoT and NASA's Kepler, asteroseismology has acquired a central role in our understanding about stellar physics. The Kepler spacecraft, especially, is still releasing excellent photometric observations that contain a large amount of information not yet investigated. For exploiting the full potential of these data, sophisticated and robust analysis tools are now essential, so that further constraining of stellar structure and evolutionary models can be obtained. In addition, extracting detailed asteroseismic properties for many stars can yield new insights on their correlations to fundamental stellar properties and dynamics. After a brief introduction to the Bayesian notion of probability, I describe the code DIAMONDS for Bayesian parameter estimation and model comparison by means of the nested sampling Monte Carlo (NSMC)…
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