Active Disruption Avoidance and Trajectory Design for Tokamak Ramp-downs with Neural Differential Equations and Reinforcement Learning
Allen M. Wang, Oswin So, Charles Dawson, Darren T. Garnier, Cristina, Rea, and Chuchu Fan

TL;DR
This paper presents a reinforcement learning-based method for safely ramping down plasma in tokamaks, using hybrid physics-ML models and trajectory design to prevent disruptions in fusion reactors.
Contribution
It introduces a novel RL approach with physics-aware simulation environments for disruption avoidance and trajectory design in tokamaks, emphasizing safety and robustness.
Findings
RL policy successfully avoids disruptive limits in high-fidelity simulations
Constraint-conditioned policies enable interpretable trajectory design
Simulation environment facilitates robust feed-forward trajectory optimization
Abstract
The tokamak offers a promising path to fusion energy, but plasma disruptions pose a major economic risk, motivating considerable advances in disruption avoidance. This work develops a reinforcement learning approach to this problem by training a policy to safely ramp-down the plasma current while avoiding limits on a number of quantities correlated with disruptions. The policy training environment is a hybrid physics and machine learning model trained on simulations of the SPARC primary reference discharge (PRD) ramp-down, an upcoming burning plasma scenario which we use as a testbed. To address physics uncertainty and model inaccuracies, the simulation environment is massively parallelized on GPU with randomized physics parameters during policy training. The trained policy is then successfully transferred to a higher fidelity simulator where it successfully ramps down the plasma while…
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Taxonomy
TopicsVehicle Dynamics and Control Systems
MethodsLib
