Gravitational-wave model for neutron star merger remnants with supervised learning
We present a time-domain model for the gravitational waves emitted by equal-mass binary neutron star merger remnants for a fixed equation of state. We construct a large set of numerical relativity simulations for a single equation of state consistent with current constraints, totaling 157 equal-mass...
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Zusammenfassung: | We present a time-domain model for the gravitational waves emitted by
equal-mass binary neutron star merger remnants for a fixed equation of state.
We construct a large set of numerical relativity simulations for a single
equation of state consistent with current constraints, totaling 157 equal-mass
binary neutron star merger configurations. The gravitational-wave model is
constructed using the supervised learning method of K-nearest neighbor
regression. As a first step toward developing a general model with supervised
learning methods that accounts for the dependencies on equation of state and
the binary masses of the system, we explore the impact of the size of the
dataset on the model. We assess the accuracy of the model for a varied dataset
size and number density in total binary mass. Specifically, we consider five
training sets of $\{ 20,40, 60, 80, 100\}$ simulations uniformly distributed in
total binary mass. We evaluate the resulting models in terms of faithfulness
using a test set of 30 additional simulations that are not used during training
and which are equidistantly spaced in total binary mass. The models achieve
faithfulness with maximum values in the range of $0.980$ to $0.995$. We assess
our models simulating signals observed by the three-detector network of
Advanced LIGO-Virgo. We find that all models with training sets of size equal
to or larger than $40$ achieve an unbiased measurement of the main
gravitational-wave frequency. We confirm that our results do not depend
qualitatively on the choice of the (fixed) equation of state. We conclude that
training sets, with a minimum size of $40$ simulations, or a number density of
approximately $11$ simulations per $0.1\,M_\odot$ of total binary mass, suffice
for the construction of faithful templates for the post-merger signal for a
single equation of state and equal-mass binaries (abbreviated). |
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DOI: | 10.48550/arxiv.2405.09513 |