Enabling data-driven NTM studies with advanced mode labeling
POSTER
Abstract
We present the application of automatic Neoclassical Tearing Mode (NTM) labeling on Alcator C-Mod and DIII-D. Previous work on DIII-D has labeled onset of 2/1 modes in multiple ways, including extrapolating backwards from maximum N1RMS [1] and training a classifier on a set of human-labeled shots before applying to all shots. NTMs on Alcator C-Mod are rare by comparison, so we leverage computer vision to segment spectrograms from high-frequency Mirnov probes [2]. Data fetching and spectrogram calculation is done using the open-source DisruptionPy library [3]. If an NTM is identified, we perform spectral analysis combining multiple probes to infer the mode’s structure, and use filament tracing to calculate perturbed current and island width [4]. These detailed labels will enable data-driven approaches to prevent NTMs, such as cross-machine database analysis for designing safe operating scenarios and real-time trajectory optimization with model predictive control.
[1] L. Bardóczi et al 2023, Nucl. Fusion 63 126052
[2] E.D. Zapata-Cornejo et al 2024, Plasma Phys. Control. Fusion 66 095016
[3] Trevisan et al, Zenodo (2024) 10.5281/zenodo.13935223
[4] R. Sweeney et al 2017, Nucl. Fusion 57 016019
[1] L. Bardóczi et al 2023, Nucl. Fusion 63 126052
[2] E.D. Zapata-Cornejo et al 2024, Plasma Phys. Control. Fusion 66 095016
[3] Trevisan et al, Zenodo (2024) 10.5281/zenodo.13935223
[4] R. Sweeney et al 2017, Nucl. Fusion 57 016019
Presenters
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Zander N Keith
Massachusetts Institute of Technology
Authors
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Zander N Keith
Massachusetts Institute of Technology
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Enrique de Dios Zapata Cornejo
Massachusetts Institute of Technology, MIT Plasma Science and Fusion Center
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Stuart Royce Sands Benjamin
Massachusetts Institute of Technology
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Gregorio L Trevisan
Massachusetts Institute of Technology
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Yumou Wei
Massachusetts Institute of Technology
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Cristina Rea
Massachusetts Institute of Technology