Predicting plasma pressure profiles with Gaussian process and a neural network in KSTAR based on magnetic signals

POSTER

Abstract

As an equilibrium plasma is a force-balanced state, i.e., J×Bp, in a tokamak, it is conceivable that magnetic signals, perhaps, can be used to infer the pressure profile. If such an inference can be reliably performed in real time, then this will greatly advance tokamak operations, especially for future fusion power plants where minimal number of diagnostics are only available. Thus, we have performed feasibility tests on predicting pressure profiles solely based on control magnetic signals by using a neural network. The neural network is trained with KSTAR pressure profiles which are obtained from Thomson Scattering (TS) and Charge Exchange System (CES) diagnostics where the Gaussian process is applied to the measured data. The neural network takes in-vessel coil currents, poloidal field current and plasma current as inputs and outputs the pressure profile. We present our preliminary results on our proposed scheme of predicting pressure profiles and discuss possibility of using the scheme for tokamak operations.

*This work was supported by National R&D Program through the National Research Foundation of Korea (NRF) funded by the Ministry of Science and ICT (Grant Numbers NRF-2020M1A7A1A03016161 and NRF-2021R1A2C2005654) and R&D Program of "KSTAR Experimental Collaboration and Fusion Plasma Research(EN2101-12)" through the Korea Institute of Fusion Energy(KFE) funded by the Government funds.

Presenters

  • MINSEOK KIM

    • KAIST

Authors

  • MINSEOK KIM

    • KAIST
  • Semin Joung

    • KAIST
  • Wonha Ko

    • Korea Institute of Fusion Energy
    • Korea Institute for Fusion Energy
    • Korea Institute of Fusion Energy (KFE)
  • Jongha Lee

    • Korea Institute of Fusion Energy
    • Korea Institute of Fusion Energy (KFE)
    • KFE
  • Young-chul Ghim

    • KAIST
    • Department of Nuclear and Quantum Engineering, KAIST, Daejeon, Republic of Korea