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roman pasechnik

Roman Pasechnik

Senior lecturer

roman pasechnik

Generating gravitational waveform libraries of exotic compact binaries with deep learning

Author

  • Felipe F. Freitas
  • Carlos A.R. Herdeiro
  • António P. Morais
  • António Onofre
  • Roman Pasechnik
  • Eugen Radu
  • Nicolas Sanchis-Gual
  • Rui Santos

Summary, in English

Current gravitational wave (GW) detections rely on the existence of libraries of theoretical waveforms. Consequently, finding new physics with GWs requires libraries of nonstandard models, which are computationally demanding. We discuss how deep learning frameworks can be used to generate new waveforms "learned"from a simulation dataset obtained, say, from numerical relativity simulations. Concretely, we use the WaveGAN architecture of a generative adversarial network (GAN). As a proof of concept we provide this neural network (NN) with a sample of (>500) waveforms from the collisions of exotic compact objects (Proca stars), obtained from numerical relativity simulations. Dividing the sample into a training and a validation set, we show that after a sufficiently large number of training epochs the NN can produce from 12% to 25% of the synthetic waveforms with an overlapping match of at least 95% with the ones from the validation set. We also demonstrate that a NN can be used to predict the overlapping match score, with 90% accuracy, of new synthetic samples. These are encouraging results for using GANs for data augmentation and interpolation in the context of GWs, to cover the full parameter space of, say, exotic compact binaries, without the need for intensive numerical relativity simulations.

Department/s

  • Particle and nuclear physics

Publishing year

2024-06

Language

English

Publication/Series

Physical Review D

Volume

109

Issue

12

Document type

Journal article

Publisher

American Physical Society

Topic

  • Physical Sciences

Status

Published

ISBN/ISSN/Other

  • ISSN: 2470-0010