Machine-Learning enabled analysis of ELM filament dynamics in KSTAR
- URL: http://arxiv.org/abs/2201.07941v1
- Date: Thu, 20 Jan 2022 01:14:47 GMT
- Title: Machine-Learning enabled analysis of ELM filament dynamics in KSTAR
- Authors: Cooper Jacobus, Minjun J. Choi, Ralph Kube
- Abstract summary: We present a machine-learning-based model, capable of automatically identifying the position, spatial extend, and amplitude of ELM filaments.
The model achieves a $93.7%$ precision and allows us to robustly identify plasma filaments in unseen ECEI data.
We identify quasi-periodic oscillations of the filaments size, total heat content, and radial velocity.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The emergence and dynamics of filamentary structures associated with
edge-localized modes (ELMs) inside tokamak plasmas during high-confinement mode
is regularly studied using Electron Cyclotron Emission Imaging (ECEI)
diagnostic systems. Such diagnostics allow us to infer electron temperature
variations, often across a poloidal cross-section. Previously, detailed
analysis of these filamentary dynamics and classification of the precursors to
edge-localized crashes has been done manually. We present a
machine-learning-based model, capable of automatically identifying the
position, spatial extend, and amplitude of ELM filaments. The model is a deep
convolutional neural network that has been trained and optimized on an
extensive set of manually labeled ECEI data from the KSTAR tokamak. Once
trained, the model achieves a $93.7\%$ precision and allows us to robustly
identify plasma filaments in unseen ECEI data. The trained model is used to
characterize ELM filament dynamics in a single H-mode plasma discharge. We
identify quasi-periodic oscillations of the filaments size, total heat content,
and radial velocity. The detailed dynamics of these quantities appear strongly
correlated with each other and appear qualitatively different during the
pre-crash and ELM crash phases.
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