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Machine learning based event classification for the energy-differential measurement of the natC(n,p) and natC(n,d) reactions

The paper explores the feasibility of using machine learning techniques, in particular neural networks, for classification of the experimental data from the joint <math display="inline" id="d1e994" altimg="si4.svg"><msup><mrow/><mrow><mtext>...

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Detalles Bibliográficos
Autores principales: Žugec, P., Barbagallo, M., Andrzejewski, J., Perkowski, J., Colonna, N., Bosnar, D., Gawlik, A., Sabate-Gilarte, M., Bacak, M., Mingrone, F., Chiaveri, E.
Lenguaje:eng
Publicado: 2022
Materias:
Acceso en línea:https://dx.doi.org/10.1016/j.nima.2022.166686
http://cds.cern.ch/record/2806918
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author Žugec, P.
Barbagallo, M.
Andrzejewski, J.
Perkowski, J.
Colonna, N.
Bosnar, D.
Gawlik, A.
Sabate-Gilarte, M.
Bacak, M.
Mingrone, F.
Chiaveri, E.
author_facet Žugec, P.
Barbagallo, M.
Andrzejewski, J.
Perkowski, J.
Colonna, N.
Bosnar, D.
Gawlik, A.
Sabate-Gilarte, M.
Bacak, M.
Mingrone, F.
Chiaveri, E.
author_sort Žugec, P.
collection CERN
description The paper explores the feasibility of using machine learning techniques, in particular neural networks, for classification of the experimental data from the joint <math display="inline" id="d1e994" altimg="si4.svg"><msup><mrow/><mrow><mtext>nat</mtext></mrow></msup></math>C(n,p) and <math display="inline" id="d1e1005" altimg="si4.svg"><msup><mrow/><mrow><mtext>nat</mtext></mrow></msup></math>C(n,d) reaction cross section measurement from the neutron time of flight facility n_TOF at CERN. Each relevant <math display="inline" id="d1e1017" altimg="si72.svg"><mrow><mi>Δ</mi><mi>E</mi><mo linebreak="goodbreak" linebreakstyle="after">−</mo><mi>E</mi></mrow></math> pair of strips from two segmented silicon telescopes is treated separately and afforded its own dedicated neural network. An important part of the procedure is a careful preparation of training datasets, based on the raw data from Geant4 simulations. Instead of using these raw data for the training of neural networks, we divide a relevant 3-parameter space into discrete voxels, classify each voxel according to a particle/reaction type and submit these voxels to a training procedure. The classification capabilities of the structurally optimized and trained neural networks are found to be superior to those of the manually selected cuts.
id cern-2806918
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2022
record_format invenio
spelling cern-28069182023-01-31T10:15:35Zdoi:10.1016/j.nima.2022.166686doi:10.1016/j.nima.2022.166686http://cds.cern.ch/record/2806918engŽugec, P.Barbagallo, M.Andrzejewski, J.Perkowski, J.Colonna, N.Bosnar, D.Gawlik, A.Sabate-Gilarte, M.Bacak, M.Mingrone, F.Chiaveri, E.Machine learning based event classification for the energy-differential measurement of the natC(n,p) and natC(n,d) reactionsnucl-exNuclear Physics - Experimentcs.CVComputing and Computersphysics.data-anOther Fields of PhysicsThe paper explores the feasibility of using machine learning techniques, in particular neural networks, for classification of the experimental data from the joint <math display="inline" id="d1e994" altimg="si4.svg"><msup><mrow/><mrow><mtext>nat</mtext></mrow></msup></math>C(n,p) and <math display="inline" id="d1e1005" altimg="si4.svg"><msup><mrow/><mrow><mtext>nat</mtext></mrow></msup></math>C(n,d) reaction cross section measurement from the neutron time of flight facility n_TOF at CERN. Each relevant <math display="inline" id="d1e1017" altimg="si72.svg"><mrow><mi>Δ</mi><mi>E</mi><mo linebreak="goodbreak" linebreakstyle="after">−</mo><mi>E</mi></mrow></math> pair of strips from two segmented silicon telescopes is treated separately and afforded its own dedicated neural network. An important part of the procedure is a careful preparation of training datasets, based on the raw data from Geant4 simulations. Instead of using these raw data for the training of neural networks, we divide a relevant 3-parameter space into discrete voxels, classify each voxel according to a particle/reaction type and submit these voxels to a training procedure. The classification capabilities of the structurally optimized and trained neural networks are found to be superior to those of the manually selected cuts.The paper explores the feasibility of using machine learning techniques, in particular neural networks, for classification of the experimental data from the joint $^\text{nat}$C(n,p) and $^\text{nat}$C(n,d) reaction cross section measurement from the neutron time of flight facility n_TOF at CERN. Each relevant $\Delta E$-$E$ pair of strips from two segmented silicon telescopes is treated separately and afforded its own dedicated neural network. An important part of the procedure is a careful preparation of training datasets, based on the raw data from Geant4 simulations. Instead of using these raw data for the training of neural networks, we divide a relevant 3-parameter space into discrete voxels, classify each voxel according to a particle/reaction type and submit these voxels to a training procedure. The classification capabilities of the structurally optimized and trained neural networks are found to be superior to those of the manually selected cuts.arXiv:2204.04955oai:cds.cern.ch:28069182022-04-11
spellingShingle nucl-ex
Nuclear Physics - Experiment
cs.CV
Computing and Computers
physics.data-an
Other Fields of Physics
Žugec, P.
Barbagallo, M.
Andrzejewski, J.
Perkowski, J.
Colonna, N.
Bosnar, D.
Gawlik, A.
Sabate-Gilarte, M.
Bacak, M.
Mingrone, F.
Chiaveri, E.
Machine learning based event classification for the energy-differential measurement of the natC(n,p) and natC(n,d) reactions
title Machine learning based event classification for the energy-differential measurement of the natC(n,p) and natC(n,d) reactions
title_full Machine learning based event classification for the energy-differential measurement of the natC(n,p) and natC(n,d) reactions
title_fullStr Machine learning based event classification for the energy-differential measurement of the natC(n,p) and natC(n,d) reactions
title_full_unstemmed Machine learning based event classification for the energy-differential measurement of the natC(n,p) and natC(n,d) reactions
title_short Machine learning based event classification for the energy-differential measurement of the natC(n,p) and natC(n,d) reactions
title_sort machine learning based event classification for the energy-differential measurement of the natc(n,p) and natc(n,d) reactions
topic nucl-ex
Nuclear Physics - Experiment
cs.CV
Computing and Computers
physics.data-an
Other Fields of Physics
url https://dx.doi.org/10.1016/j.nima.2022.166686
https://dx.doi.org/10.1016/j.nima.2022.166686
http://cds.cern.ch/record/2806918
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