Point Cloud Based Machine Learning for Event Classification and Track Identification of Nuclear Reactions
POSTER
Abstract
PointNet++, a deep neural network architecture for three-dimensional point cloud data, was used for classification tasks of time-projection chamber data of nuclear reactions at the National Superconducting Cyclotron Laboratory at Michigan State University. This chamber, known as the Active-Target Time Projection Chamber (AT-TPC), functions as both target and detector for nuclear reactions. We used simulated data from the $^{22}$Mg + $^4$He experiment [1] and the upcoming $^{10}$Be + $^4$He experiments in the AT-TPC to train our models. Event classification models achieved an accuracy and F1 score of .96 in both experiments, which is comparable to the performance achieved by Convolutional Neural Networks with significantly less data processing. Track identification tasks achieved an accuracy of .96 and an F1 score of 0.94 for the selection of alpha particles in the $^{22}$Mg + $^4$He experiment.
Authors
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Andrew Rice
Davidson College
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Anela Davis
Davidson College
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Erika Navarro
Davidson College
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Mike Remezo
Davidson College
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Annabel Winters-McCabe
Davidson College
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Michelle Kuchera
Davidson College
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Raghu Ramanujan
Davidson College
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Yassid Ayyad
Instituto Galego de Física de Altas Enerxías
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Daniel Bazin
Facility for Rare Isotope Beams