PLASM-PHCVNov 16, 2021

Tracking Blobs in the Turbulent Edge Plasma of a Tokamak Fusion Device

arXiv:2111.08570v3
Originality Synthesis-oriented
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This work addresses the challenge of experimental turbulence analysis in fusion research, which is incremental by applying existing tracking methods to a new domain with specific data.

The paper tackles the problem of analyzing turbulence in tokamak fusion plasmas by applying motion tracking to identify and track turbulent filaments (blobs) in high-frequency video data, achieving results that agree with state-of-the-art methods and providing a public dataset to broaden research accessibility.

The analysis of turbulence in plasmas is fundamental in fusion research. Despite extensive progress in theoretical modeling in the past 15 years, we still lack a complete and consistent understanding of turbulence in magnetic confinement devices, such as tokamaks. Experimental studies are challenging due to the diverse processes that drive the high-speed dynamics of turbulent phenomena. This work presents a novel application of motion tracking to identify and track turbulent filaments in fusion plasmas, called blobs, in a high-frequency video obtained from Gas Puff Imaging diagnostics. We compare four baseline methods (RAFT, Mask R-CNN, GMA, and Flow Walk) trained on synthetic data and then test on synthetic and real-world data obtained from plasmas in the Tokamak `a Configuration Variable (TCV). The blob regime identified from an analysis of blob trajectories agrees with state-of-the-art conditional averaging methods for each of the baseline methods employed, giving confidence in the accuracy of these techniques. High entry barriers traditionally limit tokamak plasma research to a small community of researchers in the field. By making a dataset and benchmark publicly available, we hope to open the field to a broad community in science and engineering.

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