Black hole-neutron star mergers and short GRBs: a relativistic toy model to estimate the mass of the torus
Francesco Pannarale, Aaryn Tonita, Luciano Rezzolla

TL;DR
This paper introduces a relativistic toy model to estimate the remnant torus mass in black hole-neutron star mergers, providing a computationally efficient alternative to numerical simulations and exploring parameter space effects.
Contribution
The authors develop and calibrate a simplified relativistic model to predict torus mass, enabling rapid exploration of merger parameters beyond current computational limits.
Findings
Torus mass is maximized with high black hole spin, low stellar compactness, and large mass ratio.
The model achieves a few percent accuracy compared to full simulations.
Estimated torus masses vary from less than 0.34 to about 1.33 solar masses depending on parameters.
Abstract
The merger of a binary system composed of a black hole and a neutron star may leave behind a torus of hot, dense matter orbiting around the black hole. While numerical-relativity simulations are necessary to simulate this process accurately, they are also computationally expensive and unable at present to cover the large space of possible parameters, which include the relative mass ratio, the stellar compactness, and the black hole spin. To mitigate this and provide a first reasonable coverage of the space of parameters, we have developed a method for estimating the mass of the remnant torus from black hole-neutron star mergers. The toy model makes use of an improved relativistic affine model to describe the tidal deformations of an extended tri-axial ellipsoid orbiting around a Kerr black hole and measures the mass of the remnant torus by considering which of the fluid particles…
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