Spatially-localized Alfvén eigenmode classification using convolutional neural networks
POSTER
Abstract
We use an expert-labeled database of DIII-D discharges to classify five types of Alfvén eigenmodes (AEs) with convolutional neural networks, opening up the possibility of deep-learning-enhanced real-time control of this important class of plasma dynamics. Each DIII-D discharge in the database consists of forty radially-localized electron cyclotron emission (ECE) measurements, sampled at 500 kHz for the first 2 seconds of the discharge. The model attempts to predict when each AE type occurs in a validation dataset, and discriminates between the five types of AE activity. This strategy performs strongly at spatio-temporally localized prediction and classification of Alfven eigenmodes (approximate average true positive rates of 80% and false positive rates of 2%), indicating future promise for more sophisticated spatio-temporal models and incorporation into future real-time control strategies.
Presenters
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Alan Kaptanoglu
University of Washington
Authors
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Alan Kaptanoglu
University of Washington
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Azarakhsh Jalalvand
Ghent University
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Alvin V Garcia
University of California, Irvine
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Andrew O Nelson
Princeton Plasma Physics Library, Princeton University
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Joseph A Abbate
Princeton University, Princeton Plasma Physics Laboratory, Princeton University / PPPL
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Geert Verdoolaege
Ghent University
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Steven L Brunton
University of Washington
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William W Heidbrink
University of California, Irvine
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Egemen Kolemen
Princeton University, Princeton University / PPPL, Princeton University/PPPL