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arxiv: 1103.0272 · v1 · pith:I224YU2Xnew · submitted 2011-03-01 · 🌌 astro-ph.CO

Efficient Merger of Binary Supermassive Black Holes in Merging Galaxies

classification 🌌 astro-ph.CO
keywords binarygalaxieshighmassivesimulationsblackfinal-parsecfully
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In spherical galaxies, binary supermassive black holes (SMBHs) have difficulty reaching sub-parsec separations due to depletion of stars on orbits that intersect the massive binary - the final-parsec problem. Galaxies that form via major mergers are substantially nonspherical, and it has been argued that the centrophilic orbits in triaxial galaxies might provide stars to the massive binary at a high enough rate to avoid stalling. Here we test that idea by carrying out fully self-consistent merger simulations of galaxies containing central SMBHs. We find hardening rates of the massive binaries that are indeed much higher than in spherical models, and essentially independent of the number of particles used in the simulations. Binary eccentricities remain high throughout the simulations. Our results constitute a fully stellar-dynamical solution to the final-parsec problem and imply a potentially high rate of events for low-frequency gravitational wave detectors like LISA.

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