2021
DOI: 10.55176/2414-1038-2021-4-5-17
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ALGORITHM FOR ESTIMATING THE EFFICIENCY OF NEURAL NETWORKS FOR n/γ-SEPARATION IN ORGANIC SCINTILLATORS

Abstract: Machine learning is one of the leading directions in digital signal processing. For example, in neutron spectrometry, artificial neural networks are actively used to suppress gamma background when analyzing signals from scintillation detectors. This article describes a method for determining the quality of n/γ-separation by an artificial neural network. The efficiency of the method is demonstrated by analyzing the signals obtained by measuring the prompt neutron spectrum of 252Cf spontaneous fission using a sc… Show more

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