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A proposed model to estimate flow coefficients from charged-particle densities using Deep Learning

In the first microseconds of the Big Bang, all known matter in the Universe was in a state of Quark-Gluon Plasma (QGP). The primary purpose of heavy ion collisions is to investigate QGP’s formation and properties. For this purpose, measuring the so-called flow coefficients is an essential observable...

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Autor principal: Saldic, Zlatko
Lenguaje:eng
Publicado: 2020
Materias:
Acceso en línea:http://cds.cern.ch/record/2724558
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author Saldic, Zlatko
author_facet Saldic, Zlatko
author_sort Saldic, Zlatko
collection CERN
description In the first microseconds of the Big Bang, all known matter in the Universe was in a state of Quark-Gluon Plasma (QGP). The primary purpose of heavy ion collisions is to investigate QGP’s formation and properties. For this purpose, measuring the so-called flow coefficients is an essential observable. In this thesis, we approach the challenge of estimating the flow coefficients $v$$_{n}$ for $n$ = 1, 2, ..., 5 from charged-particle densities $_{dηdϕ}^{d^2Nch}$ using Deep Learning (DL). For this reason, we construct a controlled experiment by simulating nuclei collisions with a Glauber model. Next, we use the calculations from the Glauber to produce charged particles from various particle production models. Lastly, we distribute the final state particles in the relevant coordinate system (η, ϕ). We propose a model based on a Convolutional Neural Network (CNN) capable of analyzing patterns found in charged-particle densities to predict flow coefficients, with confidence intervals quantified by systematic uncertainties. We found that the proposed model can estimate the flow coefficient event by event, with high accuracy and precision for central and semi-central collisions. The performance was evaluated on a test set of 3.000 simulated Pb-Pb events, and yielded a Pearson product-moment correlation coefficient (PPMCC) of 0.42 for directed $v$$_{1}$ , 0.90 for elliptical $v$$_{2}$ , 0.86 for both triangular $v$$_{3}$ and quintuple $v$$_{5}$ , and 0.87 for the quadruple $v$$_{4}$ flow coefficients. The proposed model lays the groundwork for a novel technical approach towards estimating flow coefficients with the possibility of assisting already established methods.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2020
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spelling cern-27245582020-09-21T13:22:18Zhttp://cds.cern.ch/record/2724558engSaldic, ZlatkoA proposed model to estimate flow coefficients from charged-particle densities using Deep LearningDetectors and Experimental TechniquesIn the first microseconds of the Big Bang, all known matter in the Universe was in a state of Quark-Gluon Plasma (QGP). The primary purpose of heavy ion collisions is to investigate QGP’s formation and properties. For this purpose, measuring the so-called flow coefficients is an essential observable. In this thesis, we approach the challenge of estimating the flow coefficients $v$$_{n}$ for $n$ = 1, 2, ..., 5 from charged-particle densities $_{dηdϕ}^{d^2Nch}$ using Deep Learning (DL). For this reason, we construct a controlled experiment by simulating nuclei collisions with a Glauber model. Next, we use the calculations from the Glauber to produce charged particles from various particle production models. Lastly, we distribute the final state particles in the relevant coordinate system (η, ϕ). We propose a model based on a Convolutional Neural Network (CNN) capable of analyzing patterns found in charged-particle densities to predict flow coefficients, with confidence intervals quantified by systematic uncertainties. We found that the proposed model can estimate the flow coefficient event by event, with high accuracy and precision for central and semi-central collisions. The performance was evaluated on a test set of 3.000 simulated Pb-Pb events, and yielded a Pearson product-moment correlation coefficient (PPMCC) of 0.42 for directed $v$$_{1}$ , 0.90 for elliptical $v$$_{2}$ , 0.86 for both triangular $v$$_{3}$ and quintuple $v$$_{5}$ , and 0.87 for the quadruple $v$$_{4}$ flow coefficients. The proposed model lays the groundwork for a novel technical approach towards estimating flow coefficients with the possibility of assisting already established methods.CERN-THESIS-2020-073oai:cds.cern.ch:27245582020-07-21T05:44:16Z
spellingShingle Detectors and Experimental Techniques
Saldic, Zlatko
A proposed model to estimate flow coefficients from charged-particle densities using Deep Learning
title A proposed model to estimate flow coefficients from charged-particle densities using Deep Learning
title_full A proposed model to estimate flow coefficients from charged-particle densities using Deep Learning
title_fullStr A proposed model to estimate flow coefficients from charged-particle densities using Deep Learning
title_full_unstemmed A proposed model to estimate flow coefficients from charged-particle densities using Deep Learning
title_short A proposed model to estimate flow coefficients from charged-particle densities using Deep Learning
title_sort proposed model to estimate flow coefficients from charged-particle densities using deep learning
topic Detectors and Experimental Techniques
url http://cds.cern.ch/record/2724558
work_keys_str_mv AT saldiczlatko aproposedmodeltoestimateflowcoefficientsfromchargedparticledensitiesusingdeeplearning
AT saldiczlatko proposedmodeltoestimateflowcoefficientsfromchargedparticledensitiesusingdeeplearning