4.7 Article

STROOPWAFEL: simulating rare outcomes from astrophysical populations, with application to gravitational-wave sources

Journal

MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY
Volume 490, Issue 4, Pages 5228-5248

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/mnras/stz2558

Keywords

gravitational waves; methods: statistical; software: development; binaries: general; stars: evolution

Funding

  1. EC Research Innovation Action under the H2020 Programme [INFRAIA-2016-1-730897]
  2. School of Mathematics, University of Edinburgh
  3. Birmingham Institute for Gravitational Wave Astronomy, University of Birmingham
  4. McKinsey excellence grant
  5. Kapteyn grant
  6. National Science Foundation [PHY-1607611]
  7. Simons Foundation
  8. European Union'sHorizon 2020 research and innovation programme from the European Research Council (ERC) [715063]
  9. Netherlands Organisation for Scientific Research (NWO) as part of the Vidi research program BinWaves [639.042.728]
  10. Australian Research Council Centre of Excellence for Gravitational Wave Discovery (OzGrav) [CE170100004]
  11. Consejo Nacional de Ciencia y Tecnologia (CONACYT)
  12. U.S. National Science Foundation
  13. French Centre National de Recherche Scientifique (CNRS)
  14. Italian Istituto Nazionale della Fisica Nucleare (INFN)
  15. Dutch Nikhef

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Gravitational-wave observations of double compact object (DCO) mergers are providing new insights into the physics of massive stars and the evolution of binary systems. Making the most of expected near-future observations for understanding stellar physics will rely on comparisons with binary population synthesis models. However, the vast majority of simulated binaries never produce DCOs, which makes calculating such populations computationally inefficient. We present an importance sampling algorithm, STROOPWAFEL, that improves the computational efficiency of population studies of rare events, by focusing the simulation around regions of the initial parameter space found to produce outputs of interest. We implement the algorithm in the binary population synthesis code COMPAS, and compare the efficiency of our implementation to the standard method of Monte Carlo sampling from the birth probability distributions. STROOPWAFEL finds similar to 25-200 times more DCO mergers than the standard sampling method with the same simulation size, and so speeds up simulations by up to two orders of magnitude. Finding more DCO mergers automatically maps the parameter space with far higher resolution than when using the traditional sampling. This increase in efficiency also leads to a decrease of a factor of similar to 3-10 in statistical sampling uncertainty for the predictions from the simulations. This is particularly notable for the distribution functions of observable quantities such as the black hole and neutron star chirp mass distribution, including in the tails of the distribution functions where predictions using standard sampling can be dominated by sampling noise.

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