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NeutralNet: Development and testing of a machine...
Journal article

NeutralNet: Development and testing of a machine learning solution for pulse shape discrimination

Abstract

Accurate description of radiation fields containing neutrons continues to be a difficult task to complete. This difficulty arises because of the inherent sensitivity of neutron detectors to other types of radiation, and the ability of neutrons to generate secondary particles producing mixed field environments. This research looks at the development and performance of various machine learning architectures when applied to the task of pulse shape …

Authors

Garnett RL; Byun SH

Journal

Applied Radiation and Isotopes, Vol. 211, ,

Publisher

Elsevier

Publication Date

September 2024

DOI

10.1016/j.apradiso.2024.111384

ISSN

0969-8043