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Estimation of Impact Parameter and Transverse Spherocity in heavy-ion collisions at the LHC energies using Machine Learning

Recently, machine learning (ML) techniques have led to a range of numerous developments in the field of nuclear and high-energy physics. In heavy-ion collisions, the impact parameter of a collision is one of the crucial observables that has a significant impact on the final state particle production...

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Autores principales: Mallick, Neelkamal, Tripathy, Sushanta, Mishra, Aditya Nath, Deb, Suman, Sahoo, Raghunath
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:https://dx.doi.org/10.1103/PhysRevD.103.094031
http://cds.cern.ch/record/2756388
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author Mallick, Neelkamal
Tripathy, Sushanta
Mishra, Aditya Nath
Deb, Suman
Sahoo, Raghunath
author_facet Mallick, Neelkamal
Tripathy, Sushanta
Mishra, Aditya Nath
Deb, Suman
Sahoo, Raghunath
author_sort Mallick, Neelkamal
collection CERN
description Recently, machine learning (ML) techniques have led to a range of numerous developments in the field of nuclear and high-energy physics. In heavy-ion collisions, the impact parameter of a collision is one of the crucial observables that has a significant impact on the final state particle production. However, the calculation of such a quantity is nearly impossible in experiments as the length scale ranges in the level of a few fermi. In this work, we implement the ML-based regression technique via boosted decision trees to obtain a prediction of the impact parameter in Pb-Pb collisions at sNN=5.02  TeV using a multiphase transport model. In addition, we predict an event shape observable, transverse spherocity in Pb-Pb collisions at sNN=2.76 and 5.02 TeV using a multiphase transport and pythia8 based on Angantyr model. After a successful implementation in small collision systems, the use of transverse spherocity in heavy-ion collisions has potential to reveal new results from heavy-ion collisions where the production of a quark gluon plasma medium is already established. We predict the centrality dependent spherocity distributions from the training of minimum bias simulated data and find that the predictions from the boosted decision trees based ML technique match with true simulated data. In the absence of experimental measurements, we propose to implement a machine learning based regression technique to obtain transverse spherocity from the known final state observables in heavy-ion collisions.
id cern-2756388
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2021
record_format invenio
spelling cern-27563882023-08-12T03:25:33Zdoi:10.1103/PhysRevD.103.094031http://cds.cern.ch/record/2756388engMallick, NeelkamalTripathy, SushantaMishra, Aditya NathDeb, SumanSahoo, RaghunathEstimation of Impact Parameter and Transverse Spherocity in heavy-ion collisions at the LHC energies using Machine Learningnucl-thNuclear Physics - Theorynucl-exNuclear Physics - Experimenthep-exParticle Physics - Experimenthep-phParticle Physics - PhenomenologyRecently, machine learning (ML) techniques have led to a range of numerous developments in the field of nuclear and high-energy physics. In heavy-ion collisions, the impact parameter of a collision is one of the crucial observables that has a significant impact on the final state particle production. However, the calculation of such a quantity is nearly impossible in experiments as the length scale ranges in the level of a few fermi. In this work, we implement the ML-based regression technique via boosted decision trees to obtain a prediction of the impact parameter in Pb-Pb collisions at sNN=5.02  TeV using a multiphase transport model. In addition, we predict an event shape observable, transverse spherocity in Pb-Pb collisions at sNN=2.76 and 5.02 TeV using a multiphase transport and pythia8 based on Angantyr model. After a successful implementation in small collision systems, the use of transverse spherocity in heavy-ion collisions has potential to reveal new results from heavy-ion collisions where the production of a quark gluon plasma medium is already established. We predict the centrality dependent spherocity distributions from the training of minimum bias simulated data and find that the predictions from the boosted decision trees based ML technique match with true simulated data. In the absence of experimental measurements, we propose to implement a machine learning based regression technique to obtain transverse spherocity from the known final state observables in heavy-ion collisions.Recently, machine learning (ML) techniques have led to a range of numerous developments in the field of nuclear and high-energy physics. In heavy-ion collisions, the impact parameter of a collision is one of the crucial observables which has a significant impact on the final state particle production. However, calculation of such a quantity is nearly impossible in experiments as the length scale ranges in the level of a few fermi. In this work, we implement the ML-based regression technique via Boosted Decision Tree (BDT) to obtain a prediction of impact parameter in Pb-Pb collisions at $\sqrt{s_{\rm NN}}$ = 5.02 TeV using A Multi-Phase Transport (AMPT) model. In addition, we predict an event shape observable, transverse spherocity in Pb-Pb collisions at $\sqrt{s_{\rm NN}}$ = 2.76 and 5.02 TeV using AMPT and PYTHIA8 based on Angantyr model. After a successful implementation in small collision systems, the use of transverse spherocity in heavy-ion collisions has potential to reveal new results from heavy-ion collisions where the production of a QGP medium is already established. We predict the centrality dependent spherocity distributions from the training of minimum bias simulated data and it was found that the predictions from BDT based ML technique match with true simulated data. In the absence of experimental measurements, we propose to implement Machine learning based regression technique to obtain transverse spherocity from the known final state observables in heavy-ion collisions.arXiv:2103.01736oai:cds.cern.ch:27563882021-03-02
spellingShingle nucl-th
Nuclear Physics - Theory
nucl-ex
Nuclear Physics - Experiment
hep-ex
Particle Physics - Experiment
hep-ph
Particle Physics - Phenomenology
Mallick, Neelkamal
Tripathy, Sushanta
Mishra, Aditya Nath
Deb, Suman
Sahoo, Raghunath
Estimation of Impact Parameter and Transverse Spherocity in heavy-ion collisions at the LHC energies using Machine Learning
title Estimation of Impact Parameter and Transverse Spherocity in heavy-ion collisions at the LHC energies using Machine Learning
title_full Estimation of Impact Parameter and Transverse Spherocity in heavy-ion collisions at the LHC energies using Machine Learning
title_fullStr Estimation of Impact Parameter and Transverse Spherocity in heavy-ion collisions at the LHC energies using Machine Learning
title_full_unstemmed Estimation of Impact Parameter and Transverse Spherocity in heavy-ion collisions at the LHC energies using Machine Learning
title_short Estimation of Impact Parameter and Transverse Spherocity in heavy-ion collisions at the LHC energies using Machine Learning
title_sort estimation of impact parameter and transverse spherocity in heavy-ion collisions at the lhc energies using machine learning
topic nucl-th
Nuclear Physics - Theory
nucl-ex
Nuclear Physics - Experiment
hep-ex
Particle Physics - Experiment
hep-ph
Particle Physics - Phenomenology
url https://dx.doi.org/10.1103/PhysRevD.103.094031
http://cds.cern.ch/record/2756388
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AT tripathysushanta estimationofimpactparameterandtransversespherocityinheavyioncollisionsatthelhcenergiesusingmachinelearning
AT mishraadityanath estimationofimpactparameterandtransversespherocityinheavyioncollisionsatthelhcenergiesusingmachinelearning
AT debsuman estimationofimpactparameterandtransversespherocityinheavyioncollisionsatthelhcenergiesusingmachinelearning
AT sahooraghunath estimationofimpactparameterandtransversespherocityinheavyioncollisionsatthelhcenergiesusingmachinelearning