Applications of emulation and Bayesian methods in heavy-ion physics

IF 3.4 3区 物理与天体物理 Q2 PHYSICS, NUCLEAR
Jean-François Paquet
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引用次数: 0

Abstract

Heavy-ion collisions provide a window into the properties of many-body systems of deconfined quarks and gluons. Understanding the collective properties of quarks and gluons is possible by comparing models of heavy-ion collisions to measurements of the distribution of particles produced at the end of the collisions. These model-to-data comparisons are extremely challenging, however, because of the complexity of the models, the large amount of experimental data, and their uncertainties. Bayesian inference provides a rigorous statistical framework to constrain the properties of nuclear matter by systematically comparing models and measurements. This review covers model emulation and Bayesian methods as applied to model-to-data comparisons in heavy-ion collisions. Replacing the model outputs (observables) with Gaussian process emulators is key to the Bayesian approach currently used in the field, and both current uses of emulators and related recent developments are reviewed. The general principles of Bayesian inference are then discussed along with other Bayesian methods, followed by a systematic comparison of seven recent Bayesian analyses that studied quark-gluon plasma properties, such as the shear and bulk viscosities. The latter comparison is used to illustrate sources of differences in analyses, and what it can teach us for future studies.
重离子物理学中模拟和贝叶斯方法的应用
重离子碰撞提供了一个了解去夸克和胶子多体系统特性的窗口。通过将重离子碰撞模型与碰撞结束时产生的粒子分布测量结果进行比较,可以了解夸克和胶子的集体特性。然而,由于模型的复杂性、大量实验数据及其不确定性,这些模型与数据的比较极具挑战性。贝叶斯推理提供了一个严格的统计框架,通过系统地比较模型和测量结果来约束核物质的特性。本综述涉及重离子碰撞中应用于模型与数据比较的模型模拟和贝叶斯方法。用高斯过程仿真器代替模型输出(观测值)是该领域目前使用的贝叶斯方法的关键,本文对仿真器的当前用途和相关的最新发展进行了综述。然后讨论了贝叶斯推理的一般原理和其他贝叶斯方法,接着对最近研究夸克-胶子等离子体特性(如剪切粘度和体积粘度)的七种贝叶斯分析进行了系统比较。后一项比较用于说明分析差异的来源,以及对我们未来研究的启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.60
自引率
5.70%
发文量
105
审稿时长
1 months
期刊介绍: Journal of Physics G: Nuclear and Particle Physics (JPhysG) publishes articles on theoretical and experimental topics in all areas of nuclear and particle physics, including nuclear and particle astrophysics. The journal welcomes submissions from any interface area between these fields. All aspects of fundamental nuclear physics research, including: nuclear forces and few-body systems; nuclear structure and nuclear reactions; rare decays and fundamental symmetries; hadronic physics, lattice QCD; heavy-ion physics; hot and dense matter, QCD phase diagram. All aspects of elementary particle physics research, including: high-energy particle physics; neutrino physics; phenomenology and theory; beyond standard model physics; electroweak interactions; fundamental symmetries. All aspects of nuclear and particle astrophysics including: nuclear physics of stars and stellar explosions; nucleosynthesis; nuclear equation of state; astrophysical neutrino physics; cosmic rays; dark matter. JPhysG publishes a variety of article types for the community. As well as high-quality research papers, this includes our prestigious topical review series, focus issues, and the rapid publication of letters.
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