Real-time virtual circuits for plasma shape control via neural network surrogates: dynamic validation in closed-loop simulations
K. Pentland, A. Ross, N. C. Amorisco, P. Cavestany, T. Nunn, A. Agnello, G. K. Holt, C. Vincent

TL;DR
This paper demonstrates that neural network emulators of virtual circuits can effectively and robustly control plasma shape in tokamak simulations, paving the way for real-time fusion plasma management.
Contribution
It introduces a neural network-based approach to emulate virtual circuits for plasma control, validated through closed-loop simulations with robustness to uncertainties.
Findings
Neural network emulators accurately replicate virtual circuits in plasma control.
Emulators maintain performance despite measurement uncertainties.
Effective control demonstrated in MAST-U plasma scenarios.
Abstract
Reliable confinement and stable performance of tokamak fusion plasmas require accurate real-time magnetic shape control. A promising route to reduced latency and increased flexibility in plasma control systems (PCS) is to emulate physics-based controllers using neural networks. In prior work, we have demonstrated that virtual circuits (VCs), which define the poloidal field coil current vectors able to modify each plasma shape parameter independently, can be accurately emulated with neural network models trained on a large library of simulated Grad-Shafranov equilibria. This enables magnetic controllers to accurately adapt to evolving plasma equilibria, in contrast to pre-set VC schedules whose performance degrades upon departure from their reference equilibria. Here, we investigate the performance and robustness of these emulators in closed-loop simulations using the FreeGSNKE Pulse…
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