Back to Search Start Over

Neural-network accelerated coupled core-pedestal simulations with self-consistent transport of impurities and compatible with ITER IMAS

Authors :
G. M. Staebler
Jonathan Citrin
Orso Meneghini
Emily Belli
A. Tema
Jin Myung Park
P. B. Snyder
Brendan Lyons
C. S. Imai
L.L. Lao
Brian Grierson
Joseph McClenaghan
T. L. Cordemiglia
G. Snoep
Saskia Mordijck
Sterling Smith
Jeff Candy
Science and Technology of Nuclear Fusion
Applied Physics and Science Education
Source :
Nuclear Fusion, Nuclear Fusion, 61(2):026006. Institute of Physics, Nuclear Fusion, 61, 026006
Publication Year :
2021

Abstract

An integrated modeling workflow capable of finding the steady-state plasma solution with self-consistent core transport, pedestal structure, current profile, and plasma equilibrium physics has been developed and tested against a DIII-D discharge. Key features of the achieved core-pedestal coupled workflow are its ability to account for the transport of impurities in the plasma self-consistently, as well as its use of machine learning accelerated models for the pedestal structure and for the turbulent transport physics. Notably, the coupled workflow is implemented within the One Modeling Framework for Integrated Tasks (OMFIT) framework, and makes use of the ITER integrated modeling and analysis suite data structure for exchanging data among the physics codes that are involved in the simulations. Such technical advance has been facilitated by the development of a new numerical library named ordered multidimensional arrays structure.

Details

Language :
English
ISSN :
00295515
Database :
OpenAIRE
Journal :
Nuclear Fusion, Nuclear Fusion, 61(2):026006. Institute of Physics, Nuclear Fusion, 61, 026006
Accession number :
edsair.doi.dedup.....4a7ab0efead778164d9a782233a28629
Full Text :
https://doi.org/10.1088/1741-4326/abb918