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Demonstration of object location, classification, and characterization by developed deep learning dust ablation trail analysis code package using plasma jets.

Authors :
Liang, Chen
Ma, Zhuang
Sun, Zhen
Zhang, Xiaoman
You, Xin
Liu, Zhuang
Zuo, Guizhong
Hu, Jiansheng
Feng, Yan
Source :
Review of Scientific Instruments. Feb2023, Vol. 94 Issue 2, p1-9. 9p.
Publication Year :
2023

Abstract

Based on deep learning, a Dust Ablation Trail Analysis (DATA) code package is developed to detect dust ablation trails in tokamaks, which is intended to analyze a large amount data of tokamak dusts. To validate and benchmark the DATA code package, 2440 plasma jet images are exploited for the training and test of the deep learning DATA code package, since plasma jets resemble the shape and size of dust ablation clouds in tokamaks. After being trained by 1920 plasma jet images, the DATA code package is able to locate 100% plasma jets, classify plasma jets with the accuracy of >99.9%, and output image skeleton information for classified plasma jets. The DATA code package trained by the plasma jet images is also used to analyze the dust ablation trails captured in the Experimental Advanced Superconducting (EAST) tokamak with the satisfactory performance, further verifying its applicability in the fusion dust ablation investigation. Based on its excellent performance presented here, it is demonstrated that our DATA code package is able to automatically identify and analyze dust ablation trails in tokamaks, which can be used for further detailed investigations, such as the three-dimensional reconstruction of dusts and their ablation trails. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00346748
Volume :
94
Issue :
2
Database :
Academic Search Index
Journal :
Review of Scientific Instruments
Publication Type :
Academic Journal
Accession number :
162170505
Full Text :
https://doi.org/10.1063/5.0123614