A machine-learning-based tool for last closed magnetic flux surface
reconstruction on tokamak
- URL: http://arxiv.org/abs/2207.05695v1
- Date: Tue, 12 Jul 2022 17:15:29 GMT
- Title: A machine-learning-based tool for last closed magnetic flux surface
reconstruction on tokamak
- Authors: Chenguang Wan, Zhi Yu, Alessandro Pau, Xiaojuan Liu, and Jiangang Li
- Abstract summary: Nuclear fusion power created by tokamak devices holds one of the most promising ways as a sustainable source of clean energy.
One main challenge research field of tokamak is to predict the last closed magnetic flux surface (LCFS) determined by the interaction of the actuator coils and the internal tokamak plasma.
We present a new machine learning model for reconstructing the LCFS from the Experimental Advanced Superconducting Tokamak (EAST) that learns automatically from the experimental data.
- Score: 58.42256764043771
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Nuclear fusion power created by tokamak devices holds one of the most
promising ways as a sustainable source of clean energy. One main challenge
research field of tokamak is to predict the last closed magnetic flux surface
(LCFS) determined by the interaction of the actuator coils and the internal
tokamak plasma. This work requires high-dimensional, high-frequency,
high-fidelity, real-time tools, further complicated by the wide range of
actuator coils input interact with internal tokamak plasma states. In this
work, we present a new machine learning model for reconstructing the LCFS from
the Experimental Advanced Superconducting Tokamak (EAST) that learns
automatically from the experimental data of EAST. This architecture can check
the control strategy design and integrate it with the tokamak control system
for real-time magnetic prediction. In the real-time modeling test, our approach
achieves over 99% average similarity in LCFS reconstruction of the entire
discharge process. In the offline magnetic reconstruction, our approach reaches
over 93% average similarity.
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