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Efficient emulation of relativistic heavy ion collisions with transfer learning

Publication ,  Journal Article
Liyanage, D; Ji, Y; Everett, D; Heffernan, M; Heinz, U; Mak, S; Paquet, JF
Published in: Physical Review C
March 1, 2022

Measurements from the Large Hadron Collider (LHC) and the Relativistic Heavy Ion Collider (RHIC) can be used to study the properties of quark-gluon plasma. Systematic constraints on these properties must combine measurements from different collision systems and methodically account for experimental and theoretical uncertainties. Such studies require a vast number of costly numerical simulations. While computationally inexpensive surrogate models ("emulators") can be used to efficiently approximate the predictions of heavy ion simulations across a broad range of model parameters, training a reliable emulator remains a computationally expensive task. We use transfer learning to map the parameter dependencies of one model emulator onto another, leveraging similarities between different simulations of heavy ion collisions. By limiting the need for large numbers of simulations to only one of the emulators, this technique reduces the numerical cost of comprehensive uncertainty quantification when studying multiple collision systems and exploring different models.

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Published In

Physical Review C

DOI

EISSN

2469-9993

ISSN

2469-9985

Publication Date

March 1, 2022

Volume

105

Issue

3
 

Citation

APA
Chicago
ICMJE
MLA
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Liyanage, D., Ji, Y., Everett, D., Heffernan, M., Heinz, U., Mak, S., & Paquet, J. F. (2022). Efficient emulation of relativistic heavy ion collisions with transfer learning. Physical Review C, 105(3). https://doi.org/10.1103/PhysRevC.105.034910
Liyanage, D., Y. Ji, D. Everett, M. Heffernan, U. Heinz, S. Mak, and J. F. Paquet. “Efficient emulation of relativistic heavy ion collisions with transfer learning.” Physical Review C 105, no. 3 (March 1, 2022). https://doi.org/10.1103/PhysRevC.105.034910.
Liyanage D, Ji Y, Everett D, Heffernan M, Heinz U, Mak S, et al. Efficient emulation of relativistic heavy ion collisions with transfer learning. Physical Review C. 2022 Mar 1;105(3).
Liyanage, D., et al. “Efficient emulation of relativistic heavy ion collisions with transfer learning.” Physical Review C, vol. 105, no. 3, Mar. 2022. Scopus, doi:10.1103/PhysRevC.105.034910.
Liyanage D, Ji Y, Everett D, Heffernan M, Heinz U, Mak S, Paquet JF. Efficient emulation of relativistic heavy ion collisions with transfer learning. Physical Review C. 2022 Mar 1;105(3).

Published In

Physical Review C

DOI

EISSN

2469-9993

ISSN

2469-9985

Publication Date

March 1, 2022

Volume

105

Issue

3