Deep neural network based real-time ELM prediction and reconstruction of turbulent flow based on the DIII-D BES measurement
POSTER
Abstract
Since ELM crashes cause losses and fast relaxation of the pedestal energy and profiles, it is crucial to predict them beforehand to achieve high-performance and safe tokamak operations. With 2D turbulence and eddy flow measurements of electron density given by the DIII-D BES system, we develop a neural network which is able to predict not only ELMs several msecs before their onsets but the first ELMs after the L-H transition under about 0.8 true positive rate. Since BES configuration with a time window containing the spatiotemporally fluctuating density is used as the network inputs, it is also necessary to know what information the network obtains from its input. Thus, we train another network to prove that the turbulent velocity fields are one of the information being able to be captured by the network. As a preliminary result, we use the time-delayed cross-correlation to generate the ground truth of radial velocity profiles as a training dataset. Therefore, we expect that our network is possible to extract the velocity information from the BES signals and provide various velocity-related characteristics of plasmas in real time.
Presenters
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Semin Joung
University of Wisconsin - Madison
Authors
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Semin Joung
University of Wisconsin - Madison
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David R Smith
University of Wisconsin - Madison
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Benedikt Geiger
University of Wisconsin - Madison
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Kevin Gill
University of Wisconsin-Madison
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George R McKee
University of Wisconsin - Madison, UWisc. Madison
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Zheng Yan
University of Wisconsin - Madison
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Jeffrey Zimmerman
University of Wisconsin - Madison
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Ryan Coffee
SLAC, SLAC National Accelerator Lab
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Finn H O'Shea
SLAC National Accelerator Lab
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Azarakhsh Jalalvand
Princeton University
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Egemen Kolemen
Princeton University