Evolutionary influences on the structure of red-giant acoustic oscillation spectra from 600d of Kepler observations
T. Kallinger, S. Hekker, B. Mosser, J. De Ridder, T. R. Bedding, Y. P., Elsworth, M. Gruberbauer, D. B. Guenther, D. Stello, S. Basu, R. A. Garcia,, W. J. Chaplin, F. Mullally, M. Still, and S. E. Thompson

TL;DR
This study uses Kepler data to analyze red giant oscillation spectra, revealing how seismic phase shifts and frequency separations can distinguish evolutionary stages like RGB and core He burning, with implications for stellar modeling.
Contribution
We demonstrate that local seismic observables, especially the phase shift eps_c and Dnu_c, effectively discriminate evolutionary stages in red giants, supported by model validation.
Findings
eps_c differs significantly between RGB and core He burning stars at the same Dnu_c
The pair (Dnu_c, eps_c) reliably indicates evolutionary stage, comparable to period spacing
Radial mode shape symmetry correlates with stellar evolution phase
Abstract
Context: The Kepler space mission is reaching continuous observing times long enough to start studying the fine structure of the observed p-mode spectra. Aims: In this paper, we aim to study the signature of stellar evolution on the radial and p-dominated l=2 modes in an ensemble of red giants that show solar-type oscillations. Results: We find that the phase shift of the central radial mode (eps_c) is significantly different for red giants at a given large frequency separation (Dnu_c) but which burn only H in a shell (RGB) than those that have already ignited core He burning. Even though not directly probing the stellar core the pair of local seismic observables (Dnu_c, eps_c) can be used as an evolutionary stage discriminator that turned out to be as reliable as the period spacing of the mixed dipole modes. We find a tight correlation between eps_c and Dnu_c for RGB stars and no…
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