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Machine-Learning-based 0D Parameter Control on KSTAR

ORAL

Abstract

It is required to control 0D plasma parameters such as βN, βp, q95, or li to sustain the fusion power and stability at the desired level in the future tokamak reactor. In this work, we describe a new scheme to control βN using the deep reinforcement learning (RL) technique that manipulates multi-dimensional control knobs such as plasma current and boundary shape parameters [1]. Deep RL algorithm trains an artificial decision-making agent to maximize the reward, through its trials and errors of virtual experiments in a data-driven simulator. As the reward is defined to increase when the achieved βN is close to the target, the RL agent is trained to provide the optimal scenario manipulation for the given target. We address several KSTAR experimental results conducted with RL-determined controls to achieve various targets of βN. They show successful control of βN by manipulating the plasma shape only, and also the achievement of high performance of βN~3 and H89~2.5. Furthermore, we trained the RL agent to control multiple 0D parameters, βp, q95, and li simultaneously into arbitrarily given target regimes, which can provide guidance of the operation scenario development [2]. This methodology can be a first step for the autonomous tokamak operation using machine learning techniques.

Publication: [1] Jaemin Seo et al., Nuclear Fusion, 2021 (in press)<br>[2] Jaemin Seo et al., 47th EPS Conference on Plasma Physics, 2021, P1-1056

Presenters

  • Jaemin Seo

    Seoul National University

Authors

  • Jaemin Seo

    Seoul National University

  • Yong-Su Na

    Seoul National University, Seoul National University, Seoul, Korea

  • Boseong Kim

    Seoul National University, Seoul National University, Seoul, Korea

  • Chan-Young Lee

    Seoul National University, Seoul National University, Seoul, Korea

  • Minseo Park

    Seoul National University, Seoul National University, Seoul, Korea

  • Sangjin Park

    Seoul National University, Seoul National University, Seoul, Korea

  • Youngho Lee

    Korea Institute of Fusion Energy (KFE), Korea Institute of Fusion Energy, Korea Institute of Fusion Energy, Daejeon, Korea