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Time-dependent analysis of edge plasma turbulence via deep learning from partial observations

POSTER

Abstract

We demonstrate that a physics-informed multi-network deep learning architecture constrained by partial differential equations can accurately learn turbulent fields consistent with drift-reduced Braginskii theory from just partial observations of electron pressure in contrast with conventional analytic equilibrium methods. This framework further enables the first ever direct quantitative comparisons of electron pressure and electric field fluctuations in nonlinear global electromagnetic gyrokinetic simulations and electrostatic two-fluid theory. Accordingly, we quantitatively explore the concomitant response that exists between the fluctuating electron pressure and electric potential which constitutes one of the key relationships demarcating a plasma turbulence model. The methods outlined can be readily adapted to the study of magnetized quasineutral plasmas in advanced geometries and presents broad implications for the validation of reduced plasma turbulence models in experimental and astrophysical settings. In particular, applications of our deep learning framework to tokamak diagnostics for time-dependent analysis and interpretation of edge turbulent fluctuations measured by gas puff imaging will be considered.

Presenters

  • Abhilash Mathews

    Massachusetts Institute of Technology MI, Massachusetts Institute of Technology

Authors

  • Abhilash Mathews

    Massachusetts Institute of Technology MI, Massachusetts Institute of Technology

  • Jerry W Hughes

    MIT PSFC, Massachusetts Institute of Technology MI, Massachusetts Institute of Technology MIT

  • Manaure Francisquez

    Princeton Plasma Physics Laboratory

  • James L Terry

    Massachusetts Institute of Technology MIT, MIT PSFC

  • Noah R Mandell

    MIT Plasma Science and Fusion Center, MIT, Massachusetts Institute of Technology MI, Massachusetts Institute of Technology

  • Seung Gyou Baek

    Massachusetts Institute of Technology MI, Massachusetts Institute of Technology, Massachusetts Institute of Technology MIT, MIT PSFC

  • Adam Q Kuang

    Massachusetts Institute of Technology MI, MIT Plasma Science and Fusion Center, MIT PSFC, Massachusetts Institute of Technology MIT

  • David R Hatch

    University of Texas at Austin, Institute for Fusion Studies, University of Texas at Austin