Deep generative models for detector signature simulation: A taxonomic review

Q1 Physics and Astronomy
Baran Hashemi , Claudius Krause
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引用次数: 0

Abstract

In modern collider experiments, the quest to explore fundamental interactions between elementary particles has reached unparalleled levels of precision. Signatures from particle physics detectors are low-level objects (such as energy depositions or tracks) encoding the physics of collisions (the final state particles of hard scattering interactions). The complete simulation of them in a detector is a computational and storage-intensive task. To address this computational bottleneck in particle physics, alternative approaches have been developed, introducing additional assumptions and trade off accuracy for speed. The field has seen a surge in interest in surrogate modeling the detector simulation, fueled by the advancements in deep generative models. These models aim to generate responses that are statistically identical to the observed data. In this paper, we conduct a comprehensive and exhaustive taxonomic review of the existing literature on the simulation of detector signatures from both methodological and application-wise perspectives. Initially, we formulate the problem of detector signature simulation and discuss its different variations that can be unified. Next, we classify the state-of-the-art methods into five distinct categories based on their underlying model architectures, summarizing their respective generation strategies. Finally, we shed light on the challenges and opportunities that lie ahead in detector signature simulation, setting the stage for future research and development.

探测器特征模拟的深度生成模型:分类综述
在现代对撞机实验中,对基本粒子之间基本相互作用的探索达到了无与伦比的精确程度。粒子物理探测器的特征是编码碰撞物理(硬散射相互作用的终态粒子)的低级对象(如能量沉积或轨道)。在探测器中对其进行完整模拟是一项计算和存储密集型任务。为了解决粒子物理学中的这一计算瓶颈问题,人们开发了替代方法,引入了额外的假设,并在精度与速度之间进行了权衡。在深度生成模型的推动下,该领域对探测器模拟的代理建模兴趣激增。这些模型旨在生成在统计上与观测数据相同的响应。在本文中,我们从方法论和应用的角度,对现有的探测器特征模拟文献进行了全面、详尽的分类综述。首先,我们提出了探测器特征模拟的问题,并讨论了可以统一的不同变体。接下来,我们根据底层模型架构将最先进的方法分为五类,并总结了它们各自的生成策略。最后,我们阐明了探测器特征模拟所面临的挑战和机遇,为未来的研究和发展奠定了基础。
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
Reviews in Physics
Reviews in Physics Physics and Astronomy-Physics and Astronomy (all)
CiteScore
21.30
自引率
0.00%
发文量
8
审稿时长
98 days
期刊介绍: Reviews in Physics is a gold open access Journal, publishing review papers on topics in all areas of (applied) physics. The journal provides a platform for researchers who wish to summarize a field of physics research and share this work as widely as possible. The published papers provide an overview of the main developments on a particular topic, with an emphasis on recent developments, and sketch an outlook on future developments. The journal focuses on short review papers (max 15 pages) and these are freely available after publication. All submitted manuscripts are fully peer-reviewed and after acceptance a publication fee is charged to cover all editorial, production, and archiving costs.
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