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Overview and Progress of the EFIT-AI Project

POSTER

Abstract

The EFIT-AI project is creating a modern advanced equilibrium reconstruction code suitable for tokamak experiments and burning plasmas. Key elements of the EFIT-AI framework include: 1. improved optimization and data analysis capabilities using a ML-enhanced Bayesian framework, 2. a Model-Order-Reduction (MOR) version of the two-dimensional (2D) Grad- Shafranov equation solver using a neural network, and 3. a MOR version of three-dimensional (3D) perturbed equilibrium reconstruction tool. The success of ML relies on large amounts of quality data. To enable this, we have created a large database of curated EFIT equilibria, which has required developing new curation techniques. We will present results of training EFIT-MOR on both magnetic and MSE reconstructions and discuss the applicability of EFIT-MOR for RT control and as initial conditions for EFIT-AI. The core solver, now called EFIT-AI, has been substantially improved in portability, performance, and testing, and is ready for use in production environments. Bayesian approaches using Gaussian Process techniques offer a way of accurately and efficiently providing the experimental inputs into EFIT-AI without the manual efforts required for removing bad data or avoiding overfitting. We include work on using new kernels and likelihood functions to improve accuracy of prior methods used within the fusion community.

Presenters

  • Scott E Kruger

    Tech-X Corp

Authors

  • Scott E Kruger

    Tech-X Corp

  • Lang L Lao

    General Atomics

  • Cihan Akcay

    General Atomics

  • Torrin A Bechtel

    Oakridge Associate Universities

  • Yueqiang Q Liu

    General Atomics - San Diego, General Atomics

  • Joseph T McClenaghan

    General Atomics - San Diego, General Atomics

  • David Orozco

    General Atomics - San Diego, General Atomics

  • David P Schissel

    General Atomics - San Diego

  • Sterling P Smith

    General Atomics, General Atomics - San Diego

  • Xuan Sun

    General Atomics

  • Eric Howell

    Tech-X Corporation

  • Jarrod Leddy

    Tech-X Corp

  • Sandeep Madireddy

    Argonne National Laboratory

  • Jaehoon Koo

    Argonne National Laboratory

  • Samuel W Williams

    Lawrence Berkeley National Laboratory

  • Oscar Antepara

    Lawrence Berkeley National Laboratory

  • Alexei Pankin

    Princeton Plasma Physics Laboratory

  • Daniel Greenhouse

    University of York, United Kingdom