An investigation of the photometric variability of confirmed and candidate Galactic Be stars using ASAS-3 data
Klaus Bernhard (1, 2), Sebasti\'an Otero (1), Stefan H\"ummerich (1, and 2), Nadejda Kaltcheva (3), Ernst Paunzen (4), Terry Bohlsen (5) ((1), American Association of Variable Star Observers (AAVSO) (2) Bundesdeutsche

TL;DR
This study analyzes photometric variability in a large sample of Galactic Be stars using ASAS-3 data, revealing complex outburst behaviors and frequency differences across spectral types, thus enhancing understanding of Be star variability.
Contribution
It provides a comprehensive analysis of photometric variability in confirmed and candidate Be stars, highlighting the prevalence and characteristics of outbursts across spectral types using ASAS-3 data.
Findings
Most stars show complex variability including outbursts and long-term changes.
Early-type Be stars have more frequent outbursts than later types.
Outburst rise and fall times follow a consistent ratio across spectral subtypes.
Abstract
We present an investigation of a large sample of confirmed (N=233) and candidate (N=54) Galactic classical Be stars (mean V magnitude range of 6.4 to 12.6 mag), with the main aim of characterizing their photometric variability. Our sample stars were preselected among early-type variables using light curve morphology criteria. Spectroscopic information was gleaned from the literature, and archival and newly-acquired spectra. Photometric variability was analyzed using archival ASAS-3 time series data. To enable a comparison of results, we have largely adopted the methodology of Labadie-Bartz et al. (2017), who carried out a similar investigation based on KELT data. Complex photometric variations were established in most stars: outbursts on different time-scales (in 735% of stars), long-term variations (366%), periodic variations on intermediate time-scales (11%) and…
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