Attention-aware convolutional neural networks for identification of magnetic islands in the tearing mode on EAST tokamak
Feifei Long, Yian Zhao, Yunjiao Zhang, Chenguang Wan, Yinan Zhou,, Ziwei Qiang, Kangning Yang, Jiuying Li, Tonghui Shi, Bihao Guo, Yang Zhang,, Hailing Zhao, Ang Ti, Adi Liu, Chu Zhou, Jinlin Xie, Zixi Liu, Ge Zhuang,, EAST Team

TL;DR
This paper introduces an attention-aware convolutional neural network (AM-CNN) that accurately identifies magnetic islands caused by tearing modes in tokamak plasma using ECE diagnostic data, achieving nearly 92% accuracy.
Contribution
The study develops a novel AM-CNN model with an attention mechanism for real-time magnetic island detection, integrating physical understanding with deep learning for improved performance.
Findings
Achieved 91.96% classification accuracy in identifying tearing modes.
AM-CNN outperforms traditional CNNs without attention mechanisms.
Demonstrated the potential for real-time tearing mode control in tokamaks.
Abstract
The tearing mode, a large-scale MHD instability in tokamak, typically disrupts the equilibrium magnetic surfaces, leads to the formation of magnetic islands, and reduces core electron temperature and density, thus resulting in significant energy losses and may even cause discharge termination. This process is unacceptable for ITER. Therefore, the accurate identification of a magnetic island in real time is crucial for the effective control of the tearing mode in ITER in the future. In this study, based on the characteristics induced by tearing modes, an attention-aware convolutional neural network (AM-CNN) is proposed to identify the presence of magnetic islands in tearing mode discharge utilizing the data from ECE diagnostics in the EAST tokamak. A total of 11 ECE channels covering the range of core is used in the tearing mode dataset, which includes 2.5*10^9 data collected from 68…
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Taxonomy
TopicsMagnetic confinement fusion research
