Numerical determination of the width and shape of the effective string using Stochastic Normalizing Flows

IF 5.5 1区 物理与天体物理 Q1 Physics and Astronomy Journal of High Energy Physics Pub Date : 2025-02-13 DOI:10.1007/JHEP02(2025)090
Michele Caselle, Elia Cellini, Alessandro Nada
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Abstract

Flow-based architectures have recently proved to be an efficient tool for numerical simulations of Effective String Theories regularized on the lattice that otherwise cannot be efficiently sampled by standard Monte Carlo methods. In this work we use Stochastic Normalizing Flows, a state-of-the-art deep learning architecture based on non-equilibrium Monte Carlo simulations, to study different effective string models. After testing the reliability of this approach through a comparison with exact results for the Nambu-Gotō model, we discuss results on observables that are challenging to study analytically, such as the width of the string and the shape of the flux density. Furthermore, we perform a novel numerical study of Effective String Theories with terms beyond the Nambu-Gotō action, including a broader discussion on their significance for lattice gauge theories. The combination of these findings enables a quantitative description of the fine details of the confinement mechanism in different lattice gauge theories. The results presented in this work establish the reliability and feasibility of flow-based samplers for Effective String Theories and pave the way for future applications on more complex models.

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用随机归一化流数值确定有效管柱的宽度和形状
基于流的体系结构最近被证明是在晶格上正则化有效弦理论的数值模拟的有效工具,否则无法通过标准蒙特卡罗方法有效地采样。在这项工作中,我们使用基于非平衡蒙特卡罗模拟的最先进的深度学习架构随机归一化流来研究不同的有效字符串模型。在通过与nambu - gottu模型的精确结果的比较检验了该方法的可靠性之后,我们讨论了具有解析性研究挑战性的观测结果,如弦的宽度和通量密度的形状。此外,我们进行了一个新的数值研究的有效弦理论的术语超越了南布- goti作用,包括更广泛的讨论其意义的晶格规范理论。这些发现的结合使得在不同晶格规范理论中对约束机制的精细细节进行定量描述成为可能。这项工作的结果建立了有效弦理论中基于流动采样器的可靠性和可行性,并为未来在更复杂模型中的应用铺平了道路。
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来源期刊
Journal of High Energy Physics
Journal of High Energy Physics 物理-物理:粒子与场物理
CiteScore
10.30
自引率
46.30%
发文量
2107
审稿时长
1.5 months
期刊介绍: The aim of the Journal of High Energy Physics (JHEP) is to ensure fast and efficient online publication tools to the scientific community, while keeping that community in charge of every aspect of the peer-review and publication process in order to ensure the highest quality standards in the journal. Consequently, the Advisory and Editorial Boards, composed of distinguished, active scientists in the field, jointly establish with the Scientific Director the journal''s scientific policy and ensure the scientific quality of accepted articles. JHEP presently encompasses the following areas of theoretical and experimental physics: Collider Physics Underground and Large Array Physics Quantum Field Theory Gauge Field Theories Symmetries String and Brane Theory General Relativity and Gravitation Supersymmetry Mathematical Methods of Physics Mostly Solvable Models Astroparticles Statistical Field Theories Mostly Weak Interactions Mostly Strong Interactions Quantum Field Theory (phenomenology) Strings and Branes Phenomenological Aspects of Supersymmetry Mostly Strong Interactions (phenomenology).
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