Machine learning for understanding pulsating stars I: the non-linear phenomenon in {\delta} Scuti stars
J.R. Rodon, J. Pascual-Granado, M. Lares-Martiz, M. Rodr\'iguez S\'anchez, C. Roche

TL;DR
This paper employs machine learning clustering on frequency-domain features of $ ext{δ}$ Scuti stars to reveal intrinsic subgroups and non-linear effects beyond traditional amplitude-based classification.
Contribution
It introduces a novel clustering approach using non-linear frequency features to better classify $ ext{δ}$ Scuti stars and uncover hidden subgroups.
Findings
Amplitude-based classification partially aligns with clusters
Additional subgroups suggest complex non-linear effects
Non-linear features like subtraction frequencies are significant
Abstract
Scuti stars are pulsating variable stars that exhibit both radial and non-radial pulsations, making them key objects for understanding stellar evolution and internal structures. The current classification of Scuti stars into High-Amplitude Scuti (HADS) and Low-Amplitude Scuti (LADS) stars is based on the peak-to-peak amplitude of their light curves (>0.3 mag). Nevertheless, this classification may not fully capture the complexity of their pulsation mechanisms and non-linear effects, leading to possible misclassifications. This investigation aims to challenge the existing classification of Scuti stars according to amplitude, employing the exploration of frequency domain features and non-linear mechanisms in order to identify intrinsic subgroups. The objective is to get a deeper understanding of the properties of Scuti stars. We…
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Taxonomy
TopicsStellar, planetary, and galactic studies · Astronomy and Astrophysical Research · Astrophysics and Star Formation Studies
