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Estimating Elliptic Flow Coefficient in Heavy Ion Collisions using Deep Learning
Machine learning techniques have been employed for the high energy physics community since the early 80s to deal with a broad spectrum of problems. This work explores the prospects of using deep learning techniques to estimate elliptic flow (<math display="inline"><msub><mi&...
Autores principales: | , , , , |
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Lenguaje: | eng |
Publicado: |
2022
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Materias: | |
Acceso en línea: | https://dx.doi.org/10.1103/PhysRevD.105.114022 http://cds.cern.ch/record/2803022 |
_version_ | 1780972768409419776 |
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author | Mallick, Neelkamal Prasad, Suraj Mishra, Aditya Nath Sahoo, Raghunath Barnaföldi, Gergely Gábor |
author_facet | Mallick, Neelkamal Prasad, Suraj Mishra, Aditya Nath Sahoo, Raghunath Barnaföldi, Gergely Gábor |
author_sort | Mallick, Neelkamal |
collection | CERN |
description | Machine learning techniques have been employed for the high energy physics community since the early 80s to deal with a broad spectrum of problems. This work explores the prospects of using deep learning techniques to estimate elliptic flow (<math display="inline"><msub><mi>v</mi><mn>2</mn></msub></math>) in heavy-ion collisions at the RHIC and LHC energies. A novel method is developed to process the input observables from particle kinematic information. The proposed deep neural network (DNN) model is trained with Pb-Pb collisions at <math display="inline"><msqrt><msub><mi>s</mi><mrow><mi>NN</mi></mrow></msub></msqrt><mo>=</mo><mn>5.02</mn><mtext> </mtext><mtext> </mtext><mi>TeV</mi></math> minimum bias events simulated with a multiphase transport model. The predictions from the machine learning technique are compared to both simulation and experiment. The deep learning model seems to preserve the centrality and energy dependence of <math display="inline"><msub><mi>v</mi><mn>2</mn></msub></math> for the LHC and RHIC energies. The DNN model is also quite successful in predicting the <math display="inline"><msub><mi>p</mi><mi mathvariant="normal">T</mi></msub></math> dependence of <math display="inline"><msub><mi>v</mi><mn>2</mn></msub></math>. When subjected to event simulation with additional noise, the proposed DNN model still keeps the robustness and prediction accuracy intact up to a reasonable extent. |
id | cern-2803022 |
institution | Organización Europea para la Investigación Nuclear |
language | eng |
publishDate | 2022 |
record_format | invenio |
spelling | cern-28030222023-09-19T05:38:45Zdoi:10.1103/PhysRevD.105.114022http://cds.cern.ch/record/2803022engMallick, NeelkamalPrasad, SurajMishra, Aditya NathSahoo, RaghunathBarnaföldi, Gergely GáborEstimating Elliptic Flow Coefficient in Heavy Ion Collisions using Deep Learningnucl-thNuclear Physics - Theorynucl-exNuclear Physics - Experimenthep-thParticle Physics - Theoryhep-exParticle Physics - Experimenthep-phParticle Physics - PhenomenologyMachine learning techniques have been employed for the high energy physics community since the early 80s to deal with a broad spectrum of problems. This work explores the prospects of using deep learning techniques to estimate elliptic flow (<math display="inline"><msub><mi>v</mi><mn>2</mn></msub></math>) in heavy-ion collisions at the RHIC and LHC energies. A novel method is developed to process the input observables from particle kinematic information. The proposed deep neural network (DNN) model is trained with Pb-Pb collisions at <math display="inline"><msqrt><msub><mi>s</mi><mrow><mi>NN</mi></mrow></msub></msqrt><mo>=</mo><mn>5.02</mn><mtext> </mtext><mtext> </mtext><mi>TeV</mi></math> minimum bias events simulated with a multiphase transport model. The predictions from the machine learning technique are compared to both simulation and experiment. The deep learning model seems to preserve the centrality and energy dependence of <math display="inline"><msub><mi>v</mi><mn>2</mn></msub></math> for the LHC and RHIC energies. The DNN model is also quite successful in predicting the <math display="inline"><msub><mi>p</mi><mi mathvariant="normal">T</mi></msub></math> dependence of <math display="inline"><msub><mi>v</mi><mn>2</mn></msub></math>. When subjected to event simulation with additional noise, the proposed DNN model still keeps the robustness and prediction accuracy intact up to a reasonable extent.Machine Learning (ML) techniques have been employed for the high energy physics (HEP) community since the early 80s to deal with a broad spectrum of problems. This work explores the prospects of using Deep Learning techniques to estimate elliptic flow ($v_2$) in heavy-ion collisions at the RHIC and LHC energies. A novel method is developed to process the input observables from particle kinematic information. The proposed DNN model is trained with Pb-Pb collisions at $\sqrt{s_{\rm NN}} = 5.02$ TeV minimum bias events simulated with AMPT model. The predictions from the ML technique are compared to both simulation and experiment. The Deep Learning model seems to preserve the centrality and energy dependence of $v_2$ for the LHC and RHIC energies. The DNN model is also quite successful in predicting the $p_{\rm T}$ dependence of $v_2$. When subjected to event simulation with additional noise, the proposed DNN model still keeps the robustness and prediction accuracy intact up to a reasonable extent.arXiv:2203.01246oai:cds.cern.ch:28030222022-03-02 |
spellingShingle | nucl-th Nuclear Physics - Theory nucl-ex Nuclear Physics - Experiment hep-th Particle Physics - Theory hep-ex Particle Physics - Experiment hep-ph Particle Physics - Phenomenology Mallick, Neelkamal Prasad, Suraj Mishra, Aditya Nath Sahoo, Raghunath Barnaföldi, Gergely Gábor Estimating Elliptic Flow Coefficient in Heavy Ion Collisions using Deep Learning |
title | Estimating Elliptic Flow Coefficient in Heavy Ion Collisions using Deep Learning |
title_full | Estimating Elliptic Flow Coefficient in Heavy Ion Collisions using Deep Learning |
title_fullStr | Estimating Elliptic Flow Coefficient in Heavy Ion Collisions using Deep Learning |
title_full_unstemmed | Estimating Elliptic Flow Coefficient in Heavy Ion Collisions using Deep Learning |
title_short | Estimating Elliptic Flow Coefficient in Heavy Ion Collisions using Deep Learning |
title_sort | estimating elliptic flow coefficient in heavy ion collisions using deep learning |
topic | nucl-th Nuclear Physics - Theory nucl-ex Nuclear Physics - Experiment hep-th Particle Physics - Theory hep-ex Particle Physics - Experiment hep-ph Particle Physics - Phenomenology |
url | https://dx.doi.org/10.1103/PhysRevD.105.114022 http://cds.cern.ch/record/2803022 |
work_keys_str_mv | AT mallickneelkamal estimatingellipticflowcoefficientinheavyioncollisionsusingdeeplearning AT prasadsuraj estimatingellipticflowcoefficientinheavyioncollisionsusingdeeplearning AT mishraadityanath estimatingellipticflowcoefficientinheavyioncollisionsusingdeeplearning AT sahooraghunath estimatingellipticflowcoefficientinheavyioncollisionsusingdeeplearning AT barnafoldigergelygabor estimatingellipticflowcoefficientinheavyioncollisionsusingdeeplearning |