4.7 Article

Modelling luminous-blue-variable isolation

期刊

出版社

OXFORD UNIV PRESS
DOI: 10.1093/mnras/stx2050

关键词

binaries: general; stars: evolution; stars: massive; stars: variables: general

资金

  1. National Science Foundation (NSF) [AST-1312221, AST-1515559]
  2. Division Of Astronomical Sciences
  3. Direct For Mathematical & Physical Scien [1515559] Funding Source: National Science Foundation

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Observations show that luminous blue variables (LBVs) are far more dispersed than massive O-type stars, and Smith & Tombleson suggested that these large separations are inconsistent with a single-star evolution model of LBVs. Instead, they suggested that the large distances are most consistent with binary evolution scenarios. To test these suggestions, we modelled young stellar clusters and their passive dissolution, and we find that, indeed, the standard single-star evolution model is mostly inconsistent with the observed LBV environments. If LBVs are single stars, then the lifetimes inferred from their luminosity and mass are far too short to be consistent with their extreme isolation. This implies that there is either an inconsistency in the luminosity-to-mass mapping or the mass-to-age mapping. In this paper, we explore binary solutions that modify the mass-to-age mapping and are consistent with the isolation of LBVs. For the binary scenarios, our crude models suggest that LBVs are rejuvenated stars. They are either the result of mergers or they are mass gainers and received a kick when the primary star exploded. In the merger scenario, if the primary is about 19 M-circle dot, then the binary has enough time to wander far afield, merge and form a rejuvenated star. In the mass-gainer and kick scenario, we find that LBV isolation is consistent with a wide range of kick velocities, anywhere from 0 to similar to 105 km s(-1). In either scenario, binarity seems to play a major role in the isolation of LBVs.

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