Detailed models of interacting short-period massive binary stars
K. Sen (1, 2), N. Langer (1, 2), P. Marchant (3, 4), A. Menon, (1, 5), S. E. de Mink (6, 5, 7), A. Schootemeijer (1), C. Sch\"urmann, (1, 2), L.Mahy (8), B. Hastings (1, 2), K. Nathaniel (1), H. Sana (3),, C. Wang (1, 2), X.T. Xu (1, 2) ((1) Argelander-Institut fur, Astronomie

TL;DR
This study uses extensive binary evolution models to analyze massive short-period binary stars undergoing mass transfer, providing insights into their observable properties, evolutionary phases, and implications for supernova progenitors.
Contribution
It offers the first large grid of detailed models for semi-detached massive binaries, matching observations and exploring mass transfer efficiencies and surface enrichment.
Findings
Approximately 3% of core hydrogen burning O-star binaries are semi-detached.
Donor stars are up to 25 times more luminous than single stars of same mass.
Models suggest varying degrees of conservative and inefficient mass transfer.
Abstract
About a quarter of massive binary stars undergo mass transfer while both stars burn hydrogen at their cores, first on the thermal and then on the nuclear timescale. The nuclear timescale mass transfer leads to observable counterparts: the semi-detached so-called massive Algol binaries. However, comprehensive model predictions for these systems are sparse. We study them using a large grid of ~10,000 detailed binary evolution models calculated with the stellar evolution code MESA, covering initial donor masses between 10-40 M and initial orbital periods above 1.4 d, at a metallicity suitable for the Large Magellanic Cloud (LMC). Our models imply ~30, or ~3% of the ~1,000 core hydrogen burning O-star binaries in the LMC to be currently in the semi-detached phase. Our donor models are up to 25-times more luminous than single stars of identical mass and effective temperature, which…
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