Seeing Through the Gaps: AI for Super-Resolution and Diagnostic Recovery in Fusion Devices

ORAL  · Invited

Abstract

In this talk, we present a breakthrough in fusion diagnostic capabilities through the development of Diag2Diag, a machine-learning framework that synthesizes super-resolution Thomson Scattering (SRTS) data at MHz frequencies. This method enables real-time, single-event capture of entire Edge Localized Mode (ELM) cycles within a single discharge on DIII-D—illuminating key phases of ELM onset, crash, and recovery without the need for hardware upgrades. We will show that such model can be trained and adapted using low computation resources and generates synthetic diagnostics in real-time. Leveraging correlated diagnostic signals, Diag2Diag also delivers the first direct experimental evidence of pedestal flattening caused by Resonant Magnetic Perturbation (RMP)-induced magnetic islands near the plasma boundary. Beyond physics insights, we discuss the application of this approach to address the challenge of diagnostic failure, allowing reconstruction of critical data with high fidelity validated against ECE and interferometry. Additional applications to present and discuss include (1) super-resolved density tracking in pellet-fueled plasmas that enables detailed tracking of the rapid, localized density changes induced by pellet injection, and (2) investigating the discrepancies in electron temperature measurements between ECE and TS by closing the gaps between the temporal resolution of ECE and TS measurements on different tokamaks such as DIII-D, WEST. These results represent a transformative step toward cost-effective, robust diagnostics and stability control strategies for ITER and future reactors. By enhancing our ability to observe and interpret fast edge dynamics in high-performance plasmas, Diag2Diag paves the way for optimized fusion operation and sustained energy production.

*This work is supported by US DOE Grant Nos. DE-FC02-04ER54698, DE-SC0022270, DE-SC0022272, DE-SC0024527, DE-SC0020413, DE-SC0015480, and DE-SC0024626. In addition, this research was supported by Princeton Laboratory for Artificial Intelligence under Award 2025-97 and the National Research Foundation of Korea (NRF) Award RS-2024-00346024 funded by the Korea government (MSIT).

Publication: https://doi.org/10.48550/arXiv.2405.05908

Presenters

  • Azarakhsh Jalalvand

    • Princeton University

Authors

  • Azarakhsh Jalalvand

    • Princeton University
  • SangKyeun Kim

    • Princeton Plasma Physics Laboratory (PPPL)
  • Qiming Hu

    • Princeton University
    • Princeton Plasma Physics Laboratory (PPPL)
  • Peter Steiner

    • Princeton University
  • Jaemin Seo

    • Chung-Ang University
  • Andrew O Nelson

    • Columbia University
  • Luca Senni

    • ENEA Department Fusion and Technology for Nuclear Safety, C R Frascati, 00044 Frascati, Italy
  • Fenton Glass

    • General Atomics
  • Didier Mazon

    • CEA, IRFM
  • francesco orsitto

    • ENEA Department Fusion and Technology for Nuclear Safety, C R Frascati, 00044 Frascati, Italy
  • Suk-Ho Hong

    • General Atomics
  • Yong-su Na

    • Seoul National University
  • Egemen Kolemen

    • Princeton University