Normalizing flows for microscopic calculations of the nuclear equation of state
ORAL
Abstract
The nuclear equation of state (EOS) at finite temperature is fundamental to describe the properties of medium-energy heavy-ion collisions as well as the hydrodynamic evolution of core-collapse supernovae and neutron star mergers. Microscopic calculations of the hot and dense matter equation of state using state-of-the-art nuclear two-body and three-body forces in many-body perturbation theory is numerically challenging due to the repeated evaluation of high-dimensional integrals across varying density, temperature, and composition. In this talk we demonstrate that normalizing flows provide a suitable Monte Carlo integration framework for such microscopic EOS calculations. Normalizing flows are a class of machine learning models used to construct a complex distribution from a simple base distribution and thus can be used to generate highly expressive representations of the integrands that appear in high-order many-body perturbation theory calculations. Moreover, a normalizing flow model trained on one target integrand can be easily transferred to the calculation of similar integrals as the density, temperature, or even nuclear potential is varied.
*Work supported by the National Science Foundation under Grant No. PHY1652199 and by the U.S. Department of Energy National Nuclear Security Administration under Grant No. DE-NA0003841. Portions of this research were conducted with the advanced computing resources provided by Texas A&M High Performance Research Computing.
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Publication: J. Brady, P. Wen, and J. W. Holt, Phys. Rev. Lett.127,062701 (2021)
Presenters
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Pengsheng Wen
- Texas A&M University