Detecting Binary Black Hole Mergers with Effective Machine Learning Infrastructure
ORAL
Abstract
Deep learning models have quickly become a popular alternative to traditional matched filtering analyses for the identification of gravitational wave signals. The reduced computational cost and the potential for real-time, higher confidence detections have made these techniques an attractive avenue to explore; however, work remains in developing a network that can be effectively deployed on live data during a data collection run of the LIGO-Virgo-KAGRA detectors. We present here the preliminary results of a model for identifying binary black hole mergers, BBHNet, which has been built using libraries that address this gap, hermes and ml4gw. We demonstrate that our model is capable of event identification, and show that our design choices allow for rapid iteration and effective analysis of model performance.
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Presenters
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William Benoit
University of Minnesota
Authors
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William Benoit
University of Minnesota
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Alec M Gunny
Massachusetts Institute of Technology
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Ethan J Marx
Massachusetts Institute of Technology
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Deep Chatterjee
Massachusetts Institute of Technology, MIT
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Rafia Omer
University of Minnesota
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Michael W Coughlin
University of Minnesota
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Erik Katsavounidis
Massachusetts Institute of Technology, MIT, LIGO Lab, MIT
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Muhammed Saleem
University of Minnesota
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Eric Moreno
Massachusetts Institute of Technology, MIT
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Dylan S Rankin
Massachusetts Institute of Technology, University of Pennsylvania, MIT
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Philip C Harris
Massachusetts Institute of Technology, MIT
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Ryan J Raikman
Carnegie Mellon University