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Augmenting time resolution of Thomson scattering profiles with machine learning in LTX-β

POSTER

Abstract



Thomson scattering (TS) is a key diagnostic tool for measuring spatially resolved electron density (ne) and temperature (Te) in all plasma confinement devices. However, due to complexity, TS is often difficult to implement for high time-resolution measurements, particularly on smaller machines. In the LTX-β tokamak, TS provides good spatial resolution but is limited to single time-point measurement per discharge, lacking any time resolution. To overcome this limitation, a neural network-based machine learning (ML) model is being developed to infer ne and Te spatial profiles at arbitrary time points within a discharge. Since ne and Te spatial profiles depend on various operational and diagnostic parameters, such as plasma current, shaping coil currents, fueling, and wall conditioning—these are used as model inputs. Notably, ne measured by the microwave interferometer shows strong dependence on fueling rate and the extent of lithium wall conditioning in LTX-β. Therefore, line-integrated ne from the interferometer is included as an input to encapsulate information about fueling and wall condition. The model is trained on a large, manually curated dataset spanning multiple years of LTX-β operation, consisting of TS data from 2000 plus discharges and at various time points and operational regimes. Results on model optimization and the accuracy of the predicted ne and Te profiles will be presented.

Presenters

  • Santanu Banerjee

    Princeton Plasma Physics Laboratory (PPPL)

Authors

  • Santanu Banerjee

    Princeton Plasma Physics Laboratory (PPPL)

  • Dennis P Boyle

    Princeton Plasma Physics Laboratory (PPPL)

  • Ricardo Shousha

    Princeton Plasma Physics Laboratory (PPPL), Princeton Plasma Physics Laboratory

  • Anurag Maan

    Princeton Plasma Physics Laboratory (PPPL)

  • Christopher J Hansen

    Columbia University

  • Shigeyuki Kubota

    University of California, Los Angeles

  • Boting Li

    Princeton Plasma Physics Laboratory (PPPL)

  • Hussain Gajani

    University of Wisconsin - Madison

  • Javier Jose Morales

    Princeton University

  • Camila Lopez Perez

    Pennsylvania State University

  • Tosh Xavier Keating Le

    Princeton Plasma Physics Laboratory, Carleton College

  • Richard Majeski

    Princeton Plasma Physics Laboratory, Princeton Plasma Physics Laboratory (PPPL)