Artykuł w czasopiśmie
Brak miniatury
Licencja

CC-BYCC-BY - Uznanie autorstwa

Machine learning for gravitational-wave detection: surrogate Wiener filtering for the prediction and optimized cancellation of Newtonian noise at Virgo

Autor
Badaracco, F.
Harms, J.
Bertolini, A.
Bulik, Tomasz
Fiori, I.
Idźkowski, Bartosz
Kutynia, Adam
Nikliborc, K.
Paoletti, F.
Paoli, A.
Data publikacji
2020
Abstrakt (EN)

The cancellation of noise from terrestrial gravity fluctuations, also known as Newtonian noise (NN), in gravitational-wave detectors is a formidable challenge. Gravity fluctuations result from density perturbations associated with environmental fields, e.g., seismic and acoustic fields, which are characterized by complex spatial correlations. Measurements of these fields necessarily provide incomplete information, and the question is how to make optimal use of available information for the design of a noise-cancellation system. In this paper, we present a machine-learning approach to calculate a surrogate model of a Wiener filter. The model is used to calculate optimal configurations of seismometer arrays for a varying number of sensors, which is the missing keystone for the design of NN cancellation systems. The optimization results indicate that efficient noise cancellation can be achieved even for complex seismic fields with relatively few seismometers provided that they are deployed in optimal configurations. In the form presented here, the optimization method can be applied to all current and future gravitational-wave detectors located at the surface and with minor modifications also to future underground detectors.

Dyscyplina PBN
astronomia
Czasopismo
Classical and Quantum Gravity
Tom
37
Zeszyt
19
Strony od-do
195016
ISSN
0264-9381
Data udostępnienia w otwartym dostępie
2020-09-10
Licencja otwartego dostępu
Uznanie autorstwa