Exploring supernova gravitational waves with machine learning

Author:

Mitra A123ORCID,Shukirgaliyev B456ORCID,Abylkairov Y S47ORCID,Abdikamalov E14ORCID

Affiliation:

1. Department of Physics, Nazarbayev University , 53 Kabanbay Batyr ave, 010000 Astana, Kazakhstan

2. The Inter-University Centre for Astronomy and Astrophysics (IUCAA) , Post Bag 4, Ganeshkhind, Pune 411007, India

3. School of Materials Science and Green Technologies, Kazakh-British Technical University , 59 Tole bi street, 050000 Almaty, Kazakhstan

4. Energetic Cosmos Laboratory, Nazarbayev University , 53 Kabanbay Batyr ave, 010000 Astana, Kazakhstan

5. Fesenkov Astrophysical Institute , 23 Observatory str, 050020 Almaty, Kazakhstan

6. Faculty of Physics and Technology, Al-Farabi Kazakh National University , 71 Al-Farabi ave, 050020 Almaty, Kazakhstan

7. Department of Mathematics, Nazarbayev University , 53 Kabanbay Batyr ave, 010000 Astana, Kazakhstan

Abstract

ABSTRACT Core-collapse supernovae (CCSNe) emit powerful gravitational waves (GWs). Since GWs emitted by a source contain information about the source, observing GWs from CCSNe may allow us to learn more about CCSNs. We study if it is possible to infer the iron core mass from the bounce and early ring-down GW signal. We generate GW signals for a range of stellar models using numerical simulations and apply machine learning to train and classify the signals. We consider an idealized favorable scenario. First, we use rapidly rotating models, which produce stronger GWs than slowly rotating models. Secondly, we limit ourselves to models with four different masses, which simplifies the selection process. We show that the classification accuracy does not exceed $\sim \! 70{{\ \mathrm{ per \, cent}}}$, signifying that even in this optimistic scenario, the information contained in the bounce, and early ring-down GW signal is not sufficient to precisely probe the iron core mass. This suggests that it may be necessary to incorporate additional information such as the GWs from later post-bounce evolution and neutrino observations to accurately measure the iron core mass.

Funder

Ministry of Education and Science, Republic of Kazakhstan

Publisher

Oxford University Press (OUP)

Subject

Space and Planetary Science,Astronomy and Astrophysics

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