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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.
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.