AI ensemble for signal detection of higher order gravitational wave modes of quasi-circular, spinning, non-precessing binary black hole mergers
Minyang Tian, E. A. Huerta, Huihuo Zheng

TL;DR
This paper presents an AI ensemble that detects higher order gravitational wave modes from binary black hole mergers with high accuracy, leveraging advanced graph models and supercomputing resources for training and inference.
Contribution
Introduces the first AI ensemble specifically designed for detecting higher order gravitational wave modes in binary black hole signals, utilizing spatiotemporal-graph models and transfer learning.
Findings
State-of-the-art detection accuracy achieved
Processed a year-long dataset in 5.19 minutes
Reported only 2 misclassifications per year of data
Abstract
We introduce spatiotemporal-graph models that concurrently process data from the twin advanced LIGO detectors and the advanced Virgo detector. We trained these AI classifiers with 2.4 million IMRPhenomXPHM waveforms that describe quasi-circular, spinning, non-precessing binary black hole mergers with component masses , and individual spins ; and which include the modes, and mode mixing effects in the harmonics. We trained these AI classifiers within 22 hours using distributed training over 96 NVIDIA V100 GPUs in the Summit supercomputer. We then used transfer learning to create AI predictors that estimate the total mass of potential binary black holes identified by all AI classifiers in the ensemble. We used this ensemble, 3 classifiers for…
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Taxonomy
TopicsPulsars and Gravitational Waves Research · Gamma-ray bursts and supernovae · Astrophysical Phenomena and Observations
