Expansion of the EPED-NN database for DIII-D RMP ELM suppressed discharges

POSTER

Abstract

In this project, we expand the RMP EPED database with information on plasma rotation at the top of the pedestal and SURFMN predictions for islands where external field penetration is predicted by resistive plasma response models. Resonant Magnetic Perturbations (RMPs) control dangerous Edge Localized Modes (ELMs) in H-mode discharges by limiting the H-mode pressure pedestal growth below the critical level. Machine learning models, particularly neural networks (NN), offer a data-driven approach for pedestal predictions. EPED is the leading model to describe and predict the pedestal height and width, and an accelerated NN version was built on a large database of EPED simulations. Previous research has shown that EPED and EPED-NN over-predict the height and width of the pedestal in RMP ELM-suppressed discharges. This project builds on the OMFIT framework to improve a vast database of pedestal parameters, including their uncertainties in DIII-D RMP ELM-suppressed discharges. Automated pedestal predictions for new plasma discharges will guide RMP ELM suppression scenario development towards high pedestal regimes while suppressing ELMs.

*Work supported by US DOE under the Science Undergraduate Laboratory Internship (SULI) program, DE-FC02-04ER54698, DEAC02-09CH11466 and DE-FG02-05ER54809.

Presenters

  • Mark A Prince

    • Luther College

Authors

  • Mark A Prince

    • Luther College
  • Dmitriy M Orlov

    • University of California, San Diego
    • University of California San Diego
  • Mitchell M Clark

    • General Atomics
  • SangKyeun Kim

    • Princeton Plasma Physics Laboratory
    • Princeton Plasma Physics Lab
    • Princeton Plasma Physics Laboratory (PPPL)
  • Florian M. M Laggner

    • North Carolina State University
  • Noah B Simon

    • North Carolina State University