Real-time virtual circuits for plasma shape control via neural network emulators
Alasdair Ross, George K. Holt, Kamran Pentland, Adriano Agnello, Nicola C. Amorisco, Pedro Cavestany, Aran Garrod, Timothy Nunn, Charles Vincent, Graham McArdle

TL;DR
This paper introduces neural network emulators trained on extensive simulated equilibria to compute virtual circuits for real-time plasma shape control in tokamaks, improving robustness and adaptability.
Contribution
It develops a scalable neural network approach to generate accurate, differentiable virtual circuits for plasma control, surpassing traditional precomputed methods.
Findings
Neural network emulators achieve high accuracy across diverse equilibria.
Emulated virtual circuits effectively disentangle control parameters.
The approach enables real-time, state-aware plasma shape control.
Abstract
Reliable position and shape control in tokamak plasmas requires accurate real-time regulation of several strongly coupled shape parameters. The control vectors that disentangle these couplings, referred to as \textit{virtual circuits} (VCs), enable independent shape parameter control for a specific Grad--Shafranov (GS) equilibrium. Numerical calculation of VCs is not currently feasible in real time, therefore VCs are usually computed prior to each experiment, using a small number of reference GS equilibria sampled along the desired scenario trajectory, with each VC used to control the plasma within a preset time interval. While effective near the reference equilibrium, this approach can lead to degraded performance as the plasma departs from the reference equilibrium and/or from the desired trajectory, and it complicates the design of robust control strategies for rapidly evolving…
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