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Deep Learning and Image Processing for the Automated Analysis of Thermal Events on the First Wall and Divertor of Fusion Reactors

Plasma physics and controlled fusion(2022)SCI 2区

CEA

Cited 14|Views11
Abstract
A multi-stage process that detects, tracks and classifies thermal events automatically using thermal imaging of the inside of fusion reactors is presented. The process relies on the Cascade R-CNN algorithm for the detection and classification and on the SORT algorithm for the tracking. The process is trained using a dataset of 325 thermal events distributed in seven classes, manually annotated from 20 infrared movies of the inside of the WEST tokamak. This dataset is created using user-friendly annotation tools, based on simple thresholding. The performance of the process is evaluated using modified indicators that emphasize the importance of the detection of the hottest zones of the hot spots. The modified mean average precision on a test dataset establishes at 27%.
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fusion reactors protection,automated thermal events analysis,deep learning,computer vision,image processing
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要点】:论文提出了一种利用深度学习和图像处理技术自动检测、跟踪及分类核聚变反应堆内壁和偏转器上热事件的算法,实现了对热事件的自动化分析,其创新点在于采用了级联R-CNN算法进行检测与分类,结合SORT算法进行跟踪。

方法】:研究使用级联R-CNN算法进行热事件的检测与分类,并结合SORT算法进行跟踪。

实验】:实验基于WEST tokamak内部的红外视频,构建了一个包含325个热事件的训练数据集,分为七类,通过用户友好的标注工具进行手动标注。性能评估采用修改后的平均精度指标,在测试数据集上,修改后的平均精度达到了27%。