Exploring Machine-Learning-Enabled Libs Towards Forensic Trace Attributive Analysis of Fission Products in Surrogate High-Level Nuclear Waste

被引:0
作者
Joshua Nyairo Onkangi
Hudson Kalambuka Angeyo
机构
[1] University of Nairobi,Department of Physics
来源
Journal of Applied Spectroscopy | 2024年 / 90卷
关键词
laser-induced breakdown spectroscopy; artificial neural networks; principal component analysis; machine learning; nuclear forensics and attribution; high-level nuclear waste; fission products;
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学科分类号
摘要
We investigated the utility of machine-learning-enabled LIBS for direct rapid analysis of selected fission products (FPs), namely, Y, Sr, Rb, and Zr in surrogate high-level nuclear waste mimicking three hypothetical but realistic scenarios: post-detonation glass debris, post-detonation powders, and microliter liquid drops from a radiological crime scene (RCS). Artificial neural network calibration strategies for trace quantitative analysis of the FPs in these materials were developed and achieved >95% prediction for all sample types. Owing to a lack of appropriate certified reference materials synthetic reference standards materials were used to perform method validation to accuracies ˃91%. Based on the spectral responses of the FPs, principal component analysis successfully differentiated nuclear from non-nuclear waste, demonstrating the method’s potential for RCS nuclear forensic and attributive analysis.
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页码:1325 / 1333
页数:8
相关论文
共 86 条
[1]  
Miller M(2007)Spectrochim. Acta B Nonproliferation Rev. 14 33-60
[2]  
Kim Y-S(2012)Spectrochim. Acta B At. Spectrosc. 74 90-193
[3]  
Russo RE(1999)Spectrochim. Acta B Appl. Phys. A 69 S887-S894
[4]  
Mao XL(2013)Spectrochim. Acta B Appl. Spectrosc. 67 1275-1284
[5]  
Liu HC(2016)Spectrochim. Acta B Opt. Mater. 52 32-37
[6]  
Yoo JH(2011)Spectrochim. Acta B At. Spectrosc. 66 761-764
[7]  
Mao SS(2013)Spectrochim. Acta B At. Spectrosc. 87 139-146
[8]  
Choi I(2014)Spectrochim. Acta B At. Spectrosc. 96 12-20
[9]  
Chan GC-Y(2014)undefined Anal. Chem. 86 5399-5405
[10]  
Mao X(2008)undefined Appl. Opt. 47 G158-G165