arXiv Analytics

Sign in

arXiv:1809.09135 [astro-ph.SR]AbstractReferencesReviewsResources

Coefficients of variation for detecting solar-like oscillations

Keaton J. Bell, Saskia Hekker, James S. Kuszlewicz

Published 2018-09-24Version 1

Detecting the presence and characteristic scale of a signal is a common problem in data analysis. We develop a fast statistical test of the null hypothesis that a Fourier-like power spectrum is consistent with noise. The null hypothesis is rejected where the local "coefficient of variation" (CV)---the ratio of the standard deviation to the mean---in a power spectrum deviates significantly from expectations for pure noise (CV~1.0 for a Chi^2 2-degrees-of-freedom distribution). This technique is of particular utility for detecting signals in power spectra with frequency-dependent noise backgrounds, as it is only sensitive to features that are sharp relative to the inspected frequency bin width. We develop a CV-based algorithm to quickly detect the presence of solar-like oscillations in photometric power spectra that are dominated by stellar granulation. This approach circumvents the need for background fitting to measure the frequency of maximum solar-like oscillation power, nu_max. In this paper, we derive the basic method and demonstrate its ability to detect the pulsational power excesses from the well-studied APOKASC-2 sample of oscillating red giants observed by Kepler. We recover the cataloged nu_max values with an average precision of 2.7% for 99.5% of the stars with 4 years of Kepler photometry. Our method produces false positives for <1% of dwarf stars with nu_max well above the long-cadence Nyquist frequency. The algorithm also flags spectra that exhibit astrophysically interesting signals in addition to single, solar-like oscillation power excesses, which we catalog as part of our characterization of the Kepler light curves of APOKASC-2 targets.

Comments: 11 pages, 6 figures. Accepted for publication in MNRAS
Categories: astro-ph.SR, astro-ph.IM
Related articles:
arXiv:2203.09404 [astro-ph.SR] (Published 2022-03-17)
A probabilistic method for detecting solar-like oscillations using meaningful prior information
arXiv:1804.07495 [astro-ph.SR] (Published 2018-04-20)
Detecting Solar-like Oscillations in Red Giants with Deep Learning
arXiv:1601.06348 [astro-ph.SR] (Published 2016-01-24)
A new simple dynamo model for stellar activity cycle