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Robust impurity detection and tracking for tokamaks

  • Līga Avotiņa (Member of the Working Group)
  • , Larisa Baumane (Member of the Working Group)
  • , Dāvis Čonka (Member of the Working Group)
  • , Mihails Haļitovs (Member of the Working Group)
  • , Ieva Igaune (Member of the Working Group)
  • , Juris Jansons (Member of the Working Group)
  • , Gunta Ķizāne (Member of the Working Group)
  • , Ričards Kovaldins (Member of the Working Group)
  • , Andris Leščinskis (Member of the Working Group)
  • , Broņislavs Leščinskis (Member of the Working Group)
  • , Elīna Pajuste (Member of the Working Group)
  • , Aigars Vītiņš (Member of the Working Group)
  • , Artūrs Zariņš (Member of the Working Group)
  • , Roberts Zariņš (Member of the Working Group)
  • , Cowley C.
  • , JET Contributors

    Research output: Contribution to journalArticlepeer-review

    5 Citations (Scopus)

    Abstract

    A robust impurity detection and tracking code, able to generate large sets of dust tracks from tokamak camera footage, is presented. This machine learning-based code is tested with cameras from the Joint European Torus, Doublet-III-D, and Magnum-PSI and is able to generate dust tracks with a 65-100% classification accuracy. Moreover, the number dust particles detected from a single camera shot can be up to the order of 1000. Several areas of improvement for the code are highlighted, such as generating more significant training data sets and accounting for selection biases. Although the code is tested with dust in single two-dimensional camera views, it could easily be applied to multiple-camera stereoscopic reconstruction or nondust impurities.

    Original languageEnglish
    Article number043311
    JournalPhysical Review E
    Volume102
    Issue number4
    DOIs
    Publication statusPublished - Oct 2020

    UN SDGs

    This output contributes to the following UN Sustainable Development Goals (SDGs)

    1. SDG 7 - Affordable and Clean Energy
      SDG 7 Affordable and Clean Energy

    OECD Field of Science

    • 1.3 Physical Sciences

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