Next-Generation Neutron Detector: Study of Position Resolution via Machine Learning
ORAL
Abstract
The MoNA Collaboration is designing the Next-Generation Neutron Detector (NGn) to improve the position resolution of neutron detection in invariant-mass spectroscopy experiments. More accurate position resolution of neutrons improves the overall reconstructed decay energy of unbound states, which leads to better understanding of exotic nuclei near the neutron dripline. A small scale prototype of the future NGn was fabricated out of scintillating plastic and a modular array of Silicon Photomultipliers (SiPMs) with DAQ based on a Front-End Readout System (FERS). Davidson College conducted tests on the prototype board by moving a UV laser across the face of the scintillator in a grid pattern. At Hope College, we have been analyzing this laser data, along with additional data collected at Hope College using a collimated 90Sr source. The currently predicted position resolution using the machine learning algorithm is ~3mm. Preliminary results of these ongoing tests will be presented.
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Presenters
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Bishop D Carl
Hope College
Authors
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Bishop D Carl
Hope College
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Spencer Hughes
Hope College
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Truman Sandy
Davidson College
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Kaesy Arlet Diaz Castellanos
Davidson College
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Paul A Deyoung
Hope College
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Anthony N Kuchera
Davidson College
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Thomas Baumann
Facility for Rare Isotope Beams, Michigan State University