Probing properties of quark-gluon plasma using machine learning
Year of publication
2024
Authors
Hirvonen, Henry
Abstract
This thesis focuses on a phenomenological modeling of ultrarelativistic heavy-ion collisions. The primary objective is to investigate and constrain the properties of the quark-gluon plasma (QGP) by comparing fluid-dynamical simulation results with various flow observables measured at CERN-LHC and BNL-RHIC. To achieve this, the existing EKRT+fluid dynamics heavy-ion collision framework is further developed, and machine learning techniques are utilized to reduce the computational cost of complex simulations. These types of advancements are crucial for the improving understanding of the QGP properties. The introduction of the thesis provides a general description of the employed heavy-ion collision framework and discusses the novel features introduced in this thesis. The main contributions of this work can be categorized into three development areas: dynamical decoupling, neural networks, and the Monte-Carlo EKRT initial state model. Firstly, incorporating a dynamical decoupling into the fluid-dynamical framework improved the description of peripheral collision systems, resulting in a better agreement with the measured flow coefficients compared to constant temperature decoupling. Secondly, neural networks were trained to predict flow observables directly from the initial state, effectively replacing the computationally expensive hydrodynamic simulations and reducing the required computation time by several orders of magnitude. Finally, a new Monte-Carlo EKRT initial state model was introduced and successfully applied to the studies of rapidity distributions of charged particles and their flow coefficients, as well as midrapidity flow observables. Keywords: relativistic heavy-ion collisions, quark-gluon plasma, relativistic hydrodynamics, machine learning
Show moreOrganizations and authors
University of Jyväskylä
Hirvonen Henry
Publication type
Publication format
Monograph
Audience
Scientific
MINEDU's publication type classification code
G5 Doctoral dissertation (articles)
Publication channel information
Journal/Series
JYU Dissertations
Publisher
University of Jyväskylä
ISSN
ISBN
Open access
Open access in the publisher’s service
Yes
Open access of publication channel
Fully open publication channel
Self-archived
No
Other information
Fields of science
Physical sciences
Keywords
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Publication country
Finland
Internationality of the publisher
Domestic
Language
English
International co-publication
No
Co-publication with a company
No
The publication is included in the Ministry of Education and Culture’s Publication data collection
Yes