5–8 May 2026
CERN
Europe/Zurich timezone

★ Normalizing flows for complete parameter estimation on time-frequency representations of gravitational-wave data ★

8 May 2026, 09:40
20m
40/S2-A01 - Salle Anderson (CERN)

40/S2-A01 - Salle Anderson

CERN

95
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Talk AI for Real-Time Data Processing AI for real-time data processing

Speaker

Daniel Lanchares (Universidad de Oviedo - ICTEA)

Description

The speed-up of parameter estimation is an active field of research in gravitational-wave data analysis. In this work we present GP15, a deep-learning method that merges residual networks and normalizing flows into a general-purpose, image-based estimator of binary black hole (BBH) parameters. Building on our early work, we map BBH spectrograms from the Advanced LIGO and Advanced Virgo detectors to color channels in an RGB image amenable to be processed with residual networks. GP15 is trained on simulated data for BBH mergers obtained with the \texttt{IMRPhenomXPHM} waveform approximant and tested for all three-detector events from the GWTC-3 and GWTC-2.1 catalogs reported by the LIGO-Virgo-KAGRA (LVK) collaboration. Overall, our model yields good agreement with the LVK results over most parameters. Our simple model can produce large amounts of posterior samples in the order of a second, complementing existing approaches with normalizing flows based on time-only or frequency-only representation of gravitational-wave data.

Author

Daniel Lanchares (Universidad de Oviedo - ICTEA)

Co-authors

Joaquín González-Nuevo (Universidad de Oviedo - ICTEA) José A. Font (Universitat de València) Luigi Toffolatti (Universidad de Oviedo - ICTEA) Lysiane Mornas (Universidad de Oviedo - ICTEA) Osvaldo G. Freitas (Universitat de València) Pietro Vischia (Universidad de Oviedo - ICTEA)

Presentation materials