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Statistical inference of anomalous thermal transport with uncertainty quantification for interpretive 2-D SOL models

ORAL

Abstract

The critical task of inferring anomalous cross-field transport coefficients, which control the particle and power flux to the outboard wall, is addressed in simulations of boundary plasmas with fluid models. A workflow for parameter inference in the UEDGE fluid code is developed using Bayesian optimization with parallelized sampling and integrated uncertainty quantification. In this workflow, transport coefficients are inferred by maximizing their posterior probability distribution, which is generally multidimensional and non-Gaussian. Uncertainty quantification is integrated throughout the optimization within the Bayesian framework that combines diagnostic uncertainties and model limitations. As a concrete example, we infer the anomalous electron thermal diffusivity χ from an interpretive 2-D model describing electron heat transport in the conduction-limited region with radiative power loss. The workflow is first benchmarked against synthetic data and then tested on H-, L-, and I-mode discharges from DIII-D to match their midplane temperature and divertor heat flux profiles. We demonstrate that the workflow efficiently infers diffusivity and its associated uncertainty, generating 2-D profiles that match 1-D measurements. Future efforts will focus on incorporating more complicated fluid models and analyzing transport coefficients inferred from a large database of experimental results.

Publication: Fu, Yichen, et al. "Statistical inference of anomalous thermal transport with uncertainty quantification for interpretive 2-D SOL models." arXiv preprint arXiv:2507.05413 (2025).

Presenters

  • Yichen Fu

    Lawrence Livermore National Laboratory

Authors

  • Yichen Fu

    Lawrence Livermore National Laboratory

  • Benjamin Dudson

    Lawrence Livermore National Laboratory

  • Xiao Chen

    Lawrence Livermore Natl Lab

  • Maxim V Umansky

    Lawrence Livermore National Laboratory

  • Filippo Scotti

    Lawrence Livermore National Laboratory

  • Tom Rognlien

    Lawrence Livermore National Laboratory

  • Anthony W Leonard

    General Atomics