tokamak equilibrium reconstruction;
machine learning;
artificial intelligence;
Gaussian process;
model order reduction;
neural network;
3D perturbed equilibrium;
REVERSED MAGNETIC SHEAR;
ENHANCED CONFINEMENT;
MHD EQUILIBRIUM;
TOKAMAK;
DISCHARGES;
STABILITY;
PLASMAS;
MODES;
D O I:
10.1088/1361-6587/ac6fff
中图分类号:
O35 [流体力学];
O53 [等离子体物理学];
学科分类号:
070204 ;
080103 ;
080704 ;
摘要:
Recent progress in the application of machine learning (ML)/artificial intelligence (AI) algorithms to improve the Equilibrium Fitting (EFIT) code equilibrium reconstruction for fusion data analysis applications is presented. A device-independent portable core equilibrium solver capable of computing or reconstructing equilibrium for different tokamaks has been created to facilitate adaptation of ML/AI algorithms. A large EFIT database comprising of DIII-D magnetic, motional Stark effect, and kinetic reconstruction data has been generated for developments of EFIT model-order-reduction (MOR) surrogate models to reconstruct approximate equilibrium solutions. A neural-network MOR surrogate model has been successfully trained and tested using the magnetically reconstructed datasets with encouraging results. Other progress includes developments of a Gaussian process Bayesian framework that can adapt its many hyperparameters to improve processing of experimental input data and a 3D perturbed equilibrium database from toroidal full magnetohydrodynamic linear response modeling using the Magnetohydrodynamic Resistive Spectrum - Feedback (MARS-F) code for developments of 3D-MOR surrogate models.
机构:
Brigham & Womens Hosp, Dept Med, Div Cardiovasc Med, Boston, MA USA
Harvard Med Sch, Boston, MA USABrigham & Womens Hosp, Dept Med, Div Cardiovasc Med, Boston, MA USA