Litcius/Paper detail

GWAK: gravitational-wave anomalous knowledge with recurrent autoencoders

Ryan Raikman, Eric Moreno, Ekaterina Govorkova, Ethan Marx, Alec Gunny, William Benoit, Deep Chatterjee, Rafia Omer, M. Saleem, Dylan Rankin, M. W. Coughlin, Philip Harris, E. Katsavounidis

2024Machine Learning Science and Technology13 citationsDOIOpen Access PDF

Abstract

Abstract Matched-filtering detection techniques for gravitational-wave (GW) signals in ground-based interferometers rely on having well-modeled templates of the GW emission. Such techniques have been traditionally used in searches for compact binary coalescences (CBCs), and have been employed in all known GW detections so far. However, interesting science cases aside from compact mergers do not yet have accurate enough modeling to make matched filtering possible, including core-collapse supernovae and sources where stochasticity may be involved. Therefore the development of techniques to identify sources of these types is of significant interest. In this paper, we present a method of anomaly detection based on deep recurrent autoencoders to enhance the search region to unmodeled transients. We use a semi-supervised strategy that we name ‘Gravitational Wave Anomalous Knowledge’ (GWAK). While the semi-supervised approach to this problem entails a potential reduction in accuracy compared to fully supervised methods, it offers a generalizability advantage by enhancing the reach of experimental sensitivity beyond the constraints of pre-defined signal templates. We construct a low-dimensional embedded space using the GWAK method, capturing the physical signatures of distinct signals on each axis of the space. By introducing signal priors that capture some of the salient features of GW signals, we allow for the recovery of sensitivity even when an unmodeled anomaly is encountered. We show that regions of the GWAK space can identify CBCs, detector glitches and also a variety of unmodeled astrophysical sources.

Topics & Concepts

Gravitational waveComputer sciencePattern recognition (psychology)Artificial intelligenceSalientDetectorAnomaly detectionSIGNAL (programming language)PhysicsSensitivity (control systems)AstrophysicsElectronic engineeringEngineeringTelecommunicationsProgramming languagePulsars and Gravitational Waves ResearchGamma-ray bursts and supernovaeSeismic Waves and Analysis