Vertical instability forecasting and controllability assessment of multi-device tokamak plasmas in DECAF with data-driven optimization

  • M. Tobin
  • , S. A. Sabbagh
  • , V. Zamkovska
  • , J. D. Riquezes
  • , J. Butt
  • , G. Cunningham
  • , L. Kogan
  • , J. Measures
  • , S. Blackmore
  • , C. Ham
  • , J. Harrison
  • , J. W. Berkery
  • , S. Gerhardt
  • , J. G. Bak
  • , J. Lee
  • , S. W. Yoon

Research output: Contribution to journalArticlepeer-review

5 Scopus citations

Abstract

Reliable vertical position control will be an essential element of any future tokamak-based fusion power plant in order to reduce disruptions and maximize performance. We investigate methods to improve vertical controllability boundary determination in plasma operational space and demonstrate a data-driven approach based on direct pseudoinversion of operational space data that is rigorously quantitative, applicable in real-time plasma control systems, and physically intuitive to interpret. Applied to historical shot data from entire run campaigns on the MAST-U, KSTAR, and NSTX tokamaks, this approach, implemented in DECAF, improves vertical displacement event identification accuracy to 98.9%-100%. Further, we explore the application of a physics-based vertical stability metric as an early warning forecaster for vertical displacement events. The development of a linear surrogate model for the plasma current density profile, with a coefficient of determination of 0.992 on the training dataset, enables potential employment of this forecaster in real-time. The application of this approach on historical data from the MAST-U MU02 campaign yields a forecaster with 62.6% accuracy, indicating promise for this method when further refined and potentially coupled with other stability metrics.

Original languageEnglish (US)
Article number105020
JournalPlasma Physics and Controlled Fusion
Volume66
Issue number10
DOIs
StatePublished - Oct 1 2024

All Science Journal Classification (ASJC) codes

  • Nuclear Energy and Engineering
  • Condensed Matter Physics

Keywords

  • disruptions
  • machine learning
  • multi-device
  • tokamak
  • vertical displacement event
  • vertical stability

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