FROST-CLUSTERS -- II. Massive stars, binaries and triples boost supermassive black hole seed formation in assembling star clusters (2506.04330v2)
Abstract: Observations and high-resolution hydrodynamical simulations indicate that massive star clusters form through a complex hierarchical assembly. We use simulations including post-Newtonian dynamics and stellar evolution to investigate this collisional assembly with the \bifrost{} code coupled to the \sevn{} stellar evolution module. With a full initial stellar mass function, we study the effect of initial binary and triple stars as well a high initial single star mass limit (450 $M_\odot$) on the hierarchical assembly, structure, and kinematics of massive ($M_\mathrm {cl}\sim106 M_\odot$, $N=1.8 \times 106$) star clusters. Simultaneously, intermediate mass black holes (IMBHs), potential seeds for supermassive black holes, can form and grow in our models by stellar collisions, tidal disruption events (TDEs) and black hole (BH) mergers. At a fixed cluster mass, stellar multiplicity or a high mass limit increase the numbers (up to $\sim$ 10) and masses (up to $104 M_\odot$) of the formed IMBHs within the first 10 Myr of cluster evolution. The TDE rates peak at $\Gamma_\mathrm {tde}\sim 5 \times 10{-5}$ yr${-1}$ shortly after IMBH formation at $\sim 2$ Myr. In all simulations, we find gravitational wave driven mergers involving stellar BHs and IMBHs. Initial multiplicity or a high mass limit also result in IMBH-IMBH mergers. The IMBH masses correlate with the initial cluster masses, surface densities and velocity dispersions approximately as $M_\bullet \propto M_\mathrm{cl}$, $M_\bullet \propto \Sigma_\mathrm{h}\mathrm{3/2}$ and $M_\bullet \propto \sigma\mathrm{3}$. Our results suggest IMBH masses above $M_\bullet \gtrsim 104 M_\odot$ for the dense $z\sim10$ star clusters recently observed by the James Webb Space Telescope.
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