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Journal of Graphics ›› 2023, Vol. 44 ›› Issue (3): 588-598.DOI: 10.11996/JG.j.2095-302X.2023030588

• Computer Graphics and Virtual Reality • Previous Articles     Next Articles

Study on multi-scale visual analysis method of activated corrosion products in fusion reactor

LUO Yue-tong1,2(), YANG Meng-nan1, PENG Jun1, ZHOU Bo1, ZHANG Yan-kong1()   

  1. 1. School of Computer and Information, Hefei University of Technology, Hefei Anhui 230601, China
    2. Engineering Research Center of Safety Critical Industrial Measurement and Control Technology, Ministry of Education, Hefei Anhui 230009, China
  • Received:2022-07-17 Accepted:2022-12-13 Online:2023-06-30 Published:2023-06-30
  • Contact: ZHANG Yan-kong (1990-), lecturer, master. His main research interests cover visualization and visual analytics, etc. E-mail:zhangyankong@hfut.edu.cn
  • About author:

    LUO Yue-tong (1978-), professor, Ph.D. His main research interests cover computer aided design, visual analysis. E-mail:ytluo@hfut.edu.cn

Abstract:

Fusion energy is regarded as the ultimate clean energy for human use, and safety is paramount for the advancement of fusion energy. Experts in this field must ensure the safety of the entire process from production to usage. Currently, the problem of activated corrosion products in the cooling pipes of fusion reactors poses a significant challenge to safety. These products are the primary sources of radioactivity in fusion reactors and cause safety problems. They have a critical impact on the shielding design, personnel protection, and accident consequences of fusion reactors. Moreover, the activated corrosion products are distributed throughout the cooling pipe and accumulate over time. Therefore, studying their distribution characteristics in cooling pipes is essential for ensuring fusion safety. At this stage, experts in the field lack a method that can quickly and efficiently analyze the distribution characteristics of the activated corrosion products. During the research process, various parts of the cooling pipe of the fusion reactor were classified according to different characteristics, and a large number of components were obtained. Therefore, the activated corrosion products are widely distributed in the components and are composed of various radioactive substances such as Co57, Co60, and Mn54. The composition and distribution of the activated corrosion products evolve over time; therefore, the activated corrosion product data are multivariate time-series data. Considering the characteristics of the activated corrosion product data and the analytical needs of domain experts, a visual analysis system was designed and developed. Its main features include the following: ① To address the problem of too many components of the cooling pipe, it proposed a multi-level clustering analysis approach to divide the components and help domain experts quickly select representative components for in-depth analysis, thereby avoiding checking all components one by one. ② The system addressed the challenge of a large time span by automatically extracting potential critical time periods using the multi-granularity division method, thus enabling domain experts to focus on critical time periods. ③ A set of multi view linkage visual analysis systems was designed to assist domain experts in quickly obtaining the overall distribution characteristics of activated corrosion products through flexible interaction. Based on the above characteristics, a Web-based system that can conduct multi-scale and multi-granularity analyses of fusion reactor activated corrosion products was designed. The International Thermonuclear Experimental Reactor (ITER) is currently the largest international cooperation project in the world. The effectiveness of the method was tested using the activated corrosion product data of the ITER reactor from 2013 to 2020. Domain experts pointed out that the tool is useful in selecting representative components and key time periods and can greatly improve their work efficiency.

Key words: visibility analysis, multivariable time series data, multi-layer analysis, fusion nuclear safety, activated corrosion products

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