Development of Neural Network Model With Explainable AI for Measuring Uranium Enrichment

被引:9
作者
Ryu, Jichang [1 ,2 ]
Park, Chanjun [1 ]
Park, Jungsuk [1 ]
Cho, Namchan [1 ]
Park, Jaehyun [2 ]
Cho, Gyuseong [2 ]
机构
[1] KEPCO Nucl Fuel Co Ltd, Dept Radiat Safety, Daejeon 34170, South Korea
[2] Korea Inst Adv Sci & Technol, Dept Nucl & Quantum Engn, Daejeon 34057, South Korea
关键词
Uranium; Detectors; Analytical models; Neural networks; Data models; Feature extraction; Training data; Artificial neural network (NN); explainable AI; principal component analysis (PCA); uranium enrichment; uranium spectrum; ACTIVITY RATIO;
D O I
10.1109/TNS.2021.3116090
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
In this work, we have developed a neural network (NN) model that can analyze enrichment from depleted (0.2%) to low enriched uranium (4.5%) when UO2 waste with very low radioactivity was contained in a 1-L Marinelli beaker, even when the measurement time is as short as 10 s using a low-resolution detector. The average count rate was about 3800 cps. Measurement of uranium enrichment is necessary for quantitative analysis of uranium radioactivity for disposal of uranium waste. Previously studied uranium enrichment methods (infinite thickness (IT) method, peak ratio (PR) method, and relative-efficiency (RE) method) are difficult to use for field measurement due to many limitations of the algorithms. Among existing methods, the RE method is accurate but requires a long measurement time; there is also a limitation in which a high-resolution detector is essential. In this work, we proposed a model to predict uranium enrichment using a low-resolution detector and an artificial NN model. Furthermore, we validated the results of the NN models using an explainable AI algorithm and principal component analysis (PCA). When the measurement time was less than 60 s, the existing method failed to analyze uranium enrichment, but the proposed model can predict enrichment of uranium within 5% of relative error when 5 g of uranium powder was mixed with various waste (ash, soil, and concrete).
引用
收藏
页码:2670 / 2681
页数:12
相关论文
共 43 条
[11]  
Gilmore G, 2008, Practical gamma-ray spectroscopy, DOI [10.1002/9780470861981, DOI 10.1002/9780470861981]
[12]   XAI-Explainable artificial intelligence [J].
Gunning, David ;
Stefik, Mark ;
Choi, Jaesik ;
Miller, Timothy ;
Stumpf, Simone ;
Yang, Guang-Zhong .
SCIENCE ROBOTICS, 2019, 4 (37)
[13]  
GUNNINK R, 1994, P S IAEA, P541
[14]  
Howard AG., 2017, ARXIV, V2017
[15]  
Jolliffe L., 2002, Principal Component Analysis
[16]   Automated Isotope Identification Algorithm Using Artificial Neural Networks [J].
Kamuda, M. ;
Stinnett, J. ;
Sullivan, C. J. .
IEEE TRANSACTIONS ON NUCLEAR SCIENCE, 2017, 64 (07) :1858-1864
[17]   An automated isotope identification and quantification algorithm for isotope mixtures in low-resolution gamma-ray spectra [J].
Kamuda, Mark ;
Sullivan, Clair J. .
RADIATION PHYSICS AND CHEMISTRY, 2019, 155 :281-286
[18]   The use of artificial neural networks in PVT-based radiation portal monitors [J].
Kangas, Lars J. ;
Keller, Paul E. ;
Siciliano, Eduard R. ;
Kouzes, Richard T. ;
Ely, James H. .
NUCLEAR INSTRUMENTS & METHODS IN PHYSICS RESEARCH SECTION A-ACCELERATORS SPECTROMETERS DETECTORS AND ASSOCIATED EQUIPMENT, 2008, 587 (2-3) :398-412
[19]   Multi-radioisotope identification algorithm using an artificial neural network for plastic gamma spectra [J].
Kim, Jinhwan ;
Park, Kyeongjin ;
Cho, Gyuseong .
APPLIED RADIATION AND ISOTOPES, 2019, 147 :83-90
[20]   Uranium Enrichment Determination Using a New Analysis Code for the U XKα Region: HyperGam-U [J].
Kim, Junhyuck ;
Choi, Hee-Dong ;
Park, Jongho .
NUCLEAR ENGINEERING AND TECHNOLOGY, 2016, 48 (03) :778-784