Combining physics-based simulations and experimental data from multiple machines to predict and control tokamak profile evolution

ORAL

Abstract

Hominid tokamak scientists and operators combine experimental experience and physical models to guide decision-making in machine design and control. Methods for "data fusion" are beginning to provide practical methodologies to build AI models mimicking this human process: taking advantage of both the generalizability of physical models and the quantitative accuracy of experimental results in a single model. For the task of tokamak plasma profile prediction, a variety of such methodologies are presented: (1) multi-machine learning exploiting non-dimensionalization, (2) providing interpreted context from simulations as additional input to machine learning models, (3) transfer learning from simulation to experimental data, and (4) meta-learning (akin to stacked generalization) by combining physics-based and empirical models on equal footing. It is demonstrated that, for the task of extrapolating plasma profile predictions from low- to high-plasma current DIII-D scenarios, a meta-learned profile-predictor using ASTRA/TGLF physics simulations and data is more accurate than a model built on physics or data alone. Applications of the methodology to the task of commissioning a new reactor such as ITER are discussed.

*This material is based upon work supported by the U.S. Department of Energy, Office of Science, Office of Fusion Energy Sciences, using the DIII-D National Fusion Facility, a DOE Office of Science user facility, under Award DE-FC02-04ER54698 and DE-AC02-09CH11466. Additionally, this material is supported by the National Science Foundation Graduate Research Fellowship under Grant No. DGE-2039656 and by the U.S. Department of Energy, under Awards DE-SC0015480.

Presenters

  • Joseph A Abbate

    • Princeton Plasma Physics Laboratory

Authors

  • Joseph A Abbate

    • Princeton Plasma Physics Laboratory
  • Egemen Kolemen

    • Princeton University
  • Emiliano Fable

    • Max Planck Institut fur Plasmaphysik
  • Giovanni Tardini

    • Max Planck Institut fur Plasmaphysik
  • Hiro Josep Farre Kaga

    • Princeton Plasma Physics Lab
    • Princeton Plasma Physics Laboratory