Neural network model of neutral beam injection in the EAST tokamak to enable fast transport simulations
Z. Wang, S. Morosohk, T. Rafiq, E. Schuster, M.D. Boyer and W. Choi
Fusion Engineering and Design 191 (2023) 113514
Abstract
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The neutral beam injection (NBI) system in EAST produces energetic neutral
particles, which collide with electrons and ions in tokamak plasmas and
heat the plasmas through Coulomb collisions. Moreover, it drives a
non-inductive source of current, due to the charge-exchange collision
between neutral particles and ions, and injects toroidal torque, which
generates a toroidal rotation of the plasma. The effect caused by the NBI
system, such as plasma heating, current drive, total neutron rate, momentum
transfer, and shine-through, are modeled by a comprehensive module called
NUBEAM. However, NUBEAM is computationally intensive since it relies on
Monte Carlo methods. In this work, a neural network model has been developed
as a surrogate model for NUBEAM in EAST. The database for neural-network
model training, validation and testing is generated by running TRANSP for
experimental discharges from recent EAST campaigns (after the latest NBI
upgrade) while using the NUBEAM module. Simulation results illustrate
that the trained neural network has the capability of replicating the
predictions made by NUBEAM while demanding a significantly shorter execution
time. These results indicate that surrogate models like the one proposed
in this work could enable fast transport simulations for EAST after integrating
them into a control-oriented predictive code such as COTSIM.