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Innovative dead-time correction and background subtraction for neutron multiplicity measurements using neural networks.
Garcia-Duarte, Jeremias; Mishnayot, Yonatan; Tamashiro, Aaron S; Lawrence, Jackson R; Harke, Jason T.
Afiliação
  • Garcia-Duarte J; Lawrence Livermore National Laboratory, NACS, Livermore, CA, 94550, USA. garciaduarte1@llnl.gov.
  • Mishnayot Y; Lawrence Livermore National Laboratory, NACS, Livermore, CA, 94550, USA.
  • Tamashiro AS; Lawrence Livermore National Laboratory, NACS, Livermore, CA, 94550, USA.
  • Lawrence JR; Lawrence Livermore National Laboratory, NACS, Livermore, CA, 94550, USA.
  • Harke JT; Lawrence Livermore National Laboratory, NACS, Livermore, CA, 94550, USA.
Sci Rep ; 14(1): 7579, 2024 Mar 30.
Article em En | MEDLINE | ID: mdl-38555306
ABSTRACT
The number of neutrons emitted from a nuclear reaction plays a crucial role in various fields, including nuclear theory, nuclear nonproliferation, nuclear energy and nuclear criticality safety. Accurate determination of neutron multiplicities requires the application of several corrections, with dead-time correction and background subtraction being particularly significant. These corrections become more challenging for neutron detectors with time-dependent neutron capture. In this work, we perform a comprehensive study of three existing methods used for dead-time correction and background subtraction in neutron detectors with time-dependent neutron capture. The methods were tested for dead-times in the range from 0 to 1 µs using a Monte Carlo model simulating the dead-time and background effects in the standard neutron multiplicity probability distribution of 252 Cf. The previous methods showed larger than desired uncertainty or systematic trade off. Those uncertainties prompted the development of a novel approach using neural networks trained with data from Monte Carlo simulations. The Neural Network method enabled the correction of neutron multiplicity probabilities more accurately than the other methods with fractional errors smaller than 3% for multiplicities around the peak of 252 Cf. A similar approach using neural networks could be applied to problems where the system being studied can be accurately simulated without having an accurate analytical description available. The neural network method presented in this paper can be easily expanded if multiplicities greater than 10 are expected.

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article