Pedestal profile predictions with quantified uncertainty

ORAL

Abstract

The confinement in H-mode plasmas is strongly influenced by the pedestal structure. However, predictions of pedestal profiles remain limited by gaps in our understanding of pedestal transport. While high-fidelity nonlinear simulations are computationally expensive and impractical for routine use, existing MHD-based reduced models rely on transport constraints that limit their applicability in many relevant plasma scenarios (e.g. ELM-free regimes). Moreover, they lack predictive capabilities regarding necessary heating power and/or the pedestal density.

This work addresses these limitations by developing fast, validated transport models for the pedestal. The models are based on a quasilinear mixing-length approach, utilizing linear gyrokinetic simulations performed with GENE. A Bayesian uncertainty quantification framework is employed to calibrate and validate the models against experimental pedestal profiles from the DIII-D tokamak, incorporating experimental uncertainties via Gaussian process regression. The forward propagation of uncertainties is implemented using the integrated modeling framework ASTRA. Initial validation results are presented for two transport models: one based on electron temperature gradient (ETG) modes [1] and another targeting electromagnetic modes.

[1] Hatch et al., Nucl. Fusion, 2024

*This material is based upon work supported by US DoE grant DE-FC02-04ER54698 and the U.S. Department of Energy, Office of Science, Office of Advanced Scientific Computing Research and Office of Fusion Energy Sciences, Scientific Discovery through Advanced Computing (SciDAC) program under Award Number(s) DE-SC0024425.

Presenters

  • Leonhard A Leppin

    • University of Texas at Austin

Authors

  • Leonhard A Leppin

    • University of Texas at Austin
  • Cole Darin Stephens

    • University of Texas ar Austin
    • Insititute for Fusion Studies
  • Ping-Yu Li

    • University of Texas at Austin
  • Joseph M Schmidt

    • University of Texas at Austin
  • Saeid Houshmandyar

    • University of Texas at Austin
  • Norman M. Cao

    • Insititute for Fusion Studies
  • Caitlin Curry

    • University of Texas at Austin
  • Todd A. Oliver

    • Oden Institute for Computational Engineering and Sciences
  • David R Hatch

    • University of Texas at Austin
    • IFS, University of Texas