TL;DR
This paper introduces a deep learning-based method that enhances gravitational wave detection sensitivity, successfully identifying known black hole mergers and improving detection confidence for faint signals in LIGO data.
Contribution
It presents a novel ML-based ranking statistic that significantly improves the sensitivity and false alarm rate in binary black hole merger searches in LIGO data.
Findings
Successful recovery of all CBCs in GWTC-1 catalog.
Detection of GW151216 with improved significance.
~10-30% increase in detection volume for various masses.
Abstract
We present a novel Machine Learning (ML) based strategy to search for binary black hole (BBH) mergers in data from ground-based gravitational wave (GW) observatories. This is the first ML-based search that not only recovers all the compact binary coalescences (CBCs) in the first GW transients catalog (GWTC-1), but also makes a clean detection of GW151216 by only adding a new coincident ranking statistic (MLStat) to a standard analysis that was used for GWTC-1. In CBC searches, reducing contamination by terrestrial and instrumental transients, which create a loud noise background by triggering numerous false alarms, is crucial to improving the sensitivity for detecting true events. The sheer volume of data and a large number of expected detections also prompts the use of ML techniques. We perform transfer learning to train "InceptionV3", a pre-trained deep neural network, along with…
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