A Gaussian process guide for signal regression in magnetic fusion

  • Craig Michoski
  • , Todd A. Oliver
  • , David R. Hatch
  • , Ahmed Diallo
  • , Mike Kotschenreuther
  • , David Eldon
  • , Matthew Waller
  • , Richard Groebner
  • , Andrew Oakleigh Nelson

Research output: Contribution to journalComment/debatepeer-review

5 Scopus citations

Abstract

Extracting reliable information from diagnostic data in tokamaks is critical for understanding, analyzing, and controlling the behavior of fusion plasmas and validating models describing that behavior. Recent interest within the fusion community has focused on the use of principled statistical methods, such as Gaussian process regression (GPR), to attempt to develop sharper, more reliable, and more rigorous tools for examining the complex observed behavior in these systems. While GPR is an enormously powerful tool, there is also the danger of drawing fragile, or inconsistent conclusions from naive GPR fits that are not driven by principled treatments. Here we review the fundamental concepts underlying GPR in a way that may be useful for broad-ranging applications in fusion science. We also revisit how GPR is developed for profile fitting in tokamaks. We examine various extensions and targeted modifications applicable to experimental observations in the edge of the DIII-D tokamak. Finally, we discuss best practices for applying GPR to fusion data.

Original languageEnglish (US)
Article number035001
JournalNuclear Fusion
Volume64
Issue number3
DOIs
StatePublished - Mar 2024

All Science Journal Classification (ASJC) codes

  • Nuclear and High Energy Physics
  • Condensed Matter Physics

Keywords

  • Gaussian processes
  • nuclear fusion
  • plasma physics

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