Author:
Jung K.Y.,Han B.Y.,Jeon E.J.,Jeong Y.,Jo H.S.,Kim J.Y.,Kim J.G.,Kim Y.D.,Ko Y.J.,Lee M.H.,Lee J.,Moon C.S.,Oh Y.M.,Park H.K.,Seo S.H.,Seol D.W.,Siyeon K.,Sun G.M.,Yoon Y.S.,Yu I.
Abstract
Abstract
A convolutional neural network (CNN) architecture is
developed to improve the pulse shape discrimination (PSD) power of
the gadolinium-loaded organic liquid scintillation detector to
reduce the fast neutron background in the inverse beta decay
candidate events of the NEOS-II data. A power spectrum of an event
is constructed using a fast Fourier transform of the time domain raw
waveforms and put into CNN. An early data set is evaluated by CNN
after it is trained using low energy β and α events.
The signal-to-background ratio averaged over 1–10 MeV visible
energy range is enhanced by more than 20% in the result of the CNN
method compared to that of an existing conventional PSD method, and
the improvement is even higher in the low energy region.
Subject
Mathematical Physics,Instrumentation
Cited by
2 articles.
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