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Scenario adaptive disruption prediction study for next generation burning-plasma tokamaks

ORAL

Abstract

Next generation high performance (HP) tokamaks risk damage from unmitigated disruptions at high current and power. Achieving reliable disruption prediction for a device’s HP operation based on its low performance (LP) data is one key to success. In this presentation, through explorative data analysis and dedicated numerical experiments on multiple existing tokamaks, we demonstrate how the operational regimes of tokamaks can affect the power of a trained disruption predictor. First, our results suggest data-driven disruption predictors trained on abundant LP discharges work poorly on the HP regime of the same tokamak, which is a consequence of the distinct distributions of the tightly correlated signals related to disruptions in these two regimes. Second, we find that matching operational parameters among tokamaks strongly improves cross-machine accuracy and the suitable predictivity of the HP regime for the target machine can be achieved by combining LP data from the target with HP data from other machines. These results provide a possible disruption predictor development strategy for next generation tokamaks, such as ITER and SPARC, and highlight the importance of developing baseline scenario discharges of future tokamaks on current machines.

 

Publication: J.X. Zhu et al. 2021, Scenario adaptive disruption prediction study for next generation burning-plasma tokamaks, submitted to Nuclear Fusion

Presenters

  • Jinxiang Zhu

    Massachusetts Institute of Technology MI, PSFC

Authors

  • Jinxiang Zhu

    Massachusetts Institute of Technology MI, PSFC

  • Cristina Rea

    Massachusetts Institute of Technology MIT, Massachusetts Institute of Technology, PSFC, MIT

  • Robert S Granetz

    Massachusetts Institute of Technology MI, Massachusetts Institute of Technology, MIT PSFC, MIT Plasma Science and Fusion Center, PSFC

  • Earl S Marmar

    Massachusetts Institute of Technology MIT, MIT PSFC

  • Kevin Montes

    NextEra Energy, Inc

  • Ryan Sweeney

    Massachusetts Institute of Technology MIT, MIT PSFC, MIT Plasma Science and Fusion Center, PSFC, Massachusetts Institute of Technology

  • Roy A Tinguely

    Massachusetts Institute of Technology MIT, Massachusetts Institute of Technology, PSFC

  • Dalong Chen

    Institute of Plasma Physics, Chinese Academy of Sciences

  • Biao Shen

    Institute of Plasma Physics, Chinese Academy of Sciences

  • Bingjia Xiao

    Institute of Plasma Physics, Chinese Academy of Sciences

  • David A Humphreys

    General Atomics - San Diego

  • Jayson L Barr

    General Atomics - San Diego

  • Orso-Maria O Meneghini

    General Atomics - San Diego, General Atomics