Physics-driven learning for inverse problems in quantum chromodynamics

被引:0
|
作者
Aarts, Gert [1 ]
Fukushima, Kenji [2 ]
Hatsuda, Tetsuo [3 ]
Ipp, Andreas [4 ]
Shi, Shuzhe [5 ]
Wang, Lingxiao [3 ]
Zhou, Kai [6 ,7 ]
机构
[1] Swansea Univ, Dept Phys, Swansea, Wales
[2] Univ Tokyo, Dept Phys, Tokyo, Japan
[3] RIKEN, Interdisciplinary Theoret & Math Sci Program iTHEM, Wako, Japan
[4] TU Wien, Inst Theoret Phys, Vienna, Austria
[5] Tsinghua Univ, Dept Phys, Beijing, Peoples R China
[6] Chinese Univ Hong Kong, Sch Sci & Engn, Shenzhen, Guangdong, Peoples R China
[7] Frankfurt Inst Adv Studies, Frankfurt, Germany
基金
日本科学技术振兴机构; 日本学术振兴会; 中国国家自然科学基金;
关键词
NEURAL-NETWORKS;
D O I
10.1038/s42254-024-00798-x
中图分类号
O59 [应用物理学];
学科分类号
摘要
The integration of deep learning techniques and physics-driven designs is reforming the way we address inverse problems, in which accurate physical properties are extracted from complex observations. This is particularly relevant for quantum chromodynamics (QCD) - the theory of strong interactions - with its inherent challenges in interpreting observational data and demanding computational approaches. This Perspective highlights advances of physics-driven learning methods, focusing on predictions of physical quantities towards QCD physics and drawing connections to machine learning. Physics-driven learning can extract quantities from data more efficiently in a probabilistic framework because embedding priors can reduce the optimization effort. In the application of first-principles lattice QCD calculations and QCD physics of hadrons, neutron stars and heavy-ion collisions, we focus on learning physically relevant quantities, such as perfect actions, spectral functions, hadron interactions, equations of state and nuclear structure. We also emphasize the potential of physics-driven designs of generative models beyond QCD physics.
引用
收藏
页码:154 / 163
页数:10
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