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Institut d'Astrophysique et
de Géophysique (Bât. B5c)

Quartier Agora
Allée du 6 août, 19C
B-4000 Liège 1 (Sart-Tilman)
Belgique

Tel.: 04.366.9779
Fax: 04.366.9729

Séminaires : Documents

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SANS L'ACCORD PRÉALABLE DE L'AUTEUR :
Andreï Utina, <a.utina@maastrichtuniversity.nl>
6ème séminaire : Jeudi 01 avril, 16h00
Deep learning searches for gravitational waves stochastic backgrounds
Andreï Utina (Nikhef)

The background of gravitational waves has long been studied and remains one of the most exciting aspects in the observation and analysis of gravitational radiation. The work focuses on the study of the background of gravitational waves using deep neural networks. An astrophysical background due to the presence of many binary black hole coalescences was simulated for Advanced LIGO O3 sensitivity and the Einstein Telescope design sensitivity. The detection pipeline targets signal data out of the noisy detector background. Its architecture comprises of simulated whitened data as input to three classes of deep neural networks algorithms: a 1D and a 2D convolutional neural network (CNN) and a Long Short Term Memory (LSTM) network. It was found that all three algorithms could distinguish signals from noise with high precision for the ET sensitivity, but the current sensitivity of LIGO is too low to permit the algorithms to learn signal features from the input vectors.
Université de Liège > Faculté des Sciences > Département d'Astrophysique, Géophysique et Océanographie : CoWebAGO, Juin 2009.