Point-cloud machine learning methods for analysis of TPC data
ORAL
Abstract
Machine learning techniques that operate directly on point cloud data were investigated for events in the Active-Target Time Projection Chamber at the Facility for Rare Isotope Beams at Michigan State University. PointNet++ was used for event classification and track identification in the 22Mg +4He experiment that ran at NSCL1 and on simulated data for the upcoming 10Be + 4He experiment at NSCL. Accuracy as high as $98\%$ was achieved for the event classification method. Point-wise convolutions were also examined for both data cleaning and simulating detector response tasks. Results are compared with other machine learning methods such as Convolutional Neural Networks and traditional analysis methods.
1First Direct Measurement of 22Mg(α,p)25Al and Implications for X-Ray Burst Model-Observation Comparisons. J.S. Randhawa et al. Phys. Rev. Lett. 125, 202701
1First Direct Measurement of 22Mg(α,p)25Al and Implications for X-Ray Burst Model-Observation Comparisons. J.S. Randhawa et al. Phys. Rev. Lett. 125, 202701
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Presenters
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Michelle P Kuchera
Davidson College
Authors
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Michelle P Kuchera
Davidson College
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Yassid Ayyad
Universidade de Santiago de Compostela, University of Santiago de Compostela, Instituto Galego de Física de Altas Enerxías, NSCL, Michigan State University
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Daniel Bazin
Michigan State University
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Anela Davis
Davidson College
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Sidney Knowles
Davidson College
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Niya Ma
Davidson College
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Wolfgang Mittig
Michigan State University
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Erika Navarro
Davidson College
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Raghu Ramanujan
Davidson College
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Mike Remezo
Davidson College
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Andrew Rice
Davidson College
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Annabel Winters-McCabe
Davidson College