Litcius/Paper detail

Improving the background of gravitational-wave searches for core collapse supernovae: a machine learning approach

M Cavaglià, S Gaudio, T Hansen, K Staats, M Szczepańczyk, M Zanolin

2020Machine Learning Science and Technology36 citationsDOIOpen Access PDF

Abstract

Abstract Based on the prior O1–O2 observing runs, about 30% of the data collected by Advanced LIGO and Virgo in the next observing runs are expected to be single-interferometer data, i.e. they will be collected at times when only one detector in the network is operating in observing mode. Searches for gravitational-wave signals from supernova events do not rely on matched filtering techniques because of the stochastic nature of the signals. If a Galactic supernova occurs during single-interferometer times, separation of its unmodelled gravitational-wave signal from noise will be even more difficult due to lack of coherence between detectors. We present a novel machine learning method to perform single-interferometer supernova searches based on the standard LIGO-Virgo coherent WaveBurst pipeline. We show that the method may be used to discriminate Galactic gravitational-wave supernova signals from noise transients, decrease the false alarm rate of the search, and improve the supernova detection reach of the detectors.

Topics & Concepts

SupernovaDetectorNoise (video)Computer scienceConstant false alarm rateArtificial intelligenceFalse alarmLIGOPhysicsBackground noiseSIGNAL (programming language)Core (optical fiber)Coherence (philosophical gambling strategy)AstrophysicsNoise reductionSignal processingAlgorithmAstronomyMachine learningPattern recognition (psychology)Detection theorySupervised learningSignal-to-noise ratio (imaging)Pulsars and Gravitational Waves ResearchGamma-ray bursts and supernovaeNeutrino Physics Research