Interpretation of Machine Learning Disruption Predictions on DIII-D

POSTER

Abstract

Chains of precursors leading to disruptive events on hundreds of DIII-D discharges are compared with predictions from the Disruption Prediction using Random Forests (DPRF) algorithm embedded in the DIII-D plasma control system. Using a feature contribution method developed for random forest algorithms, the input features driving each prediction are identified and shown to correlate with the occurrence of relevant physics precursors. In contrast to other ‘black-box’ approaches, this lends an element of interpretability to the application of a machine-learning based disruption predictor. This introduces the possibility of pairing predictions with appropriate actuator responses in order to avoid disruptions. Disruptions initiated by locked modes and radiative events, for example, are shown to be prevalent in DIII-D but could be preventable using relevant actuators if properly identified with sufficient warning time. These examples are compared with similar cases on JET in order to motivate the development of an interpretable, cross-device predictor that can satisfy constraints for next generation tokamaks.

*This work has been supported by US DOE under DE-FC02-04ER54698 and DE-SC0014264, and carried out within the framework of the EUROfusion Consortium with funding from the Euratom research and training programme 2014-2018 and 2019-2020 under grant agreement No 633053. The views and opinions expressed herein do not necessarily reflect those of the European Commission.

Authors

  • K Montes

    • MIT PSFC
  • C. Rea

    • MIT PSFC
    • Massachusetts Institute of Technology
    • MIT
  • Robert Granetz

    • MIT PSFC
    • MIT
    • Massachusetts Institute of Technology
  • A Pau

    • EPFL
  • Olivier Sauter

    • EPFL-SPC, Switzerland
    • EPFL
    • Ecole polytechnique federale de Lausanne (EPFL), Swiss Plasma Center (SPC)