Redirecting to original paper in 30 seconds...

Click below to go immediately or wait for automatic redirect

arxiv_ml 90% Match Research Paper Fusion energy researchers,Control engineers,RL practitioners,Plasma physicists 2 weeks ago

Plasma Shape Control via Zero-shot Generative Reinforcement Learning

reinforcement-learning › offline-rl
📄 Abstract

Abstract: Traditional PID controllers have limited adaptability for plasma shape control, and task-specific reinforcement learning (RL) methods suffer from limited generalization and the need for repetitive retraining. To overcome these challenges, this paper proposes a novel framework for developing a versatile, zero-shot control policy from a large-scale offline dataset of historical PID-controlled discharges. Our approach synergistically combines Generative Adversarial Imitation Learning (GAIL) with Hilbert space representation learning to achieve dual objectives: mimicking the stable operational style of the PID data and constructing a geometrically structured latent space for efficient, goal-directed control. The resulting foundation policy can be deployed for diverse trajectory tracking tasks in a zero-shot manner without any task-specific fine-tuning. Evaluations on the HL-3 tokamak simulator demonstrate that the policy excels at precisely and stably tracking reference trajectories for key shape parameters across a range of plasma scenarios. This work presents a viable pathway toward developing highly flexible and data-efficient intelligent control systems for future fusion reactors.
Authors (9)
Niannian Wu
Rongpeng Li
Zongyu Yang
Yong Xiao
Ning Wei
Yihang Chen
+3 more
Submitted
October 20, 2025
arXiv Category
physics.plasm-ph
arXiv PDF

Key Contributions

Proposes a novel framework for plasma shape control using zero-shot generative reinforcement learning from offline data. It combines GAIL with Hilbert space representation learning to mimic PID control styles and create a structured latent space, enabling a versatile policy deployable for diverse tasks without retraining.

Business Value

Advances the control systems for fusion reactors, potentially accelerating the development of clean energy sources. Improved control leads to more stable and efficient plasma confinement.