Litcius/Paper detail

Detection of gravitational-wave signals from binary neutron star mergers using machine learning

Marlin B. Schäfer, F. Ohme, A. Nitz

2020Physical review. D/Physical review. D.69 citationsDOIOpen Access PDF

Abstract

As two neutron stars merge, they emit gravitational waves that can potentially be detected by Earth-bound detectors. Matched-filtering-based algorithms have traditionally been used to extract quiet signals embedded in noise. We introduce a novel neural-network-based machine learning algorithm that uses time series strain data from gravitational-wave detectors to detect signals from nonspinning binary neutron star mergers. For the Advanced LIGO design sensitivity, our network has an average sensitive distance of 130 Mpc at a false-alarm rate of ten per month. Compared to other state-of-the-art machine learning algorithms, we find an improvement by a factor of 4 in sensitivity to signals with a signal-to-noise ratio between 8 and 15. However, this approach is not yet competitive with traditional matched-filtering-based methods. A conservative estimate indicates that our algorithm introduces on average 10.2 s of latency between signal arrival and generating an alert. We give an exact description of our testing procedure, which can be applied not only to machine-learning-based algorithms but all other search algorithms as well. We thereby improve the ability to compare machine learning and classical searches.

Topics & Concepts

Neutron starGravitational waveBinary numberAstrophysicsPhysicsAstronomyStar (game theory)Computer scienceMathematicsArithmeticPulsars and Gravitational Waves ResearchGamma-ray bursts and supernovaeGeophysics and Gravity Measurements