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Rapid Nuclear Forensics Analysis via Machine-Learning-Enabled Laser-Induced Breakdown Spectroscopy (LIBS)

机译:通过机器学习的激光诱导的击穿光谱(LIBS)快速核法医分析

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Nuclear forensics (NF) is an analytical methodology that involves analysis of intercepted nuclear and radiological materials (NRM) so as to establish their nuclear attribution. The critical challenge in NF currently is the lack of suitable microanalytical methodologies for direct, rapid, minimally invasive detection and quantification of NF signatures. Laser-induced breakdown spectroscopy (LIBS) has the potential to overcome these limitations with the aid of machine-learning (ML) techniques. In this paper, we report the development of ML-enabled LIBS methodology for rapid NF analysis and attribution in support of nuclear security. The atomic uranium lines at 385.464 nm, 385.957 nm, and 386.592 nm were identified as NF signatures of uranium for rapid qualitative detection of trace uranium concealed in organic binders and uranium-bearing mineral ores. The limit of detection of uranium using LIBS was determined to be 34 ppm. A multivariate calibration strategy for the quantification of trace uranium in cellulose and uranium-bearing mineral ores was developed using an artificial neural network (ANN, a feed forward back-propagation algorithm) and spectral feature selection: (1) uranium lines (348 nm to 455 nm), (2) uranium lines (380 nm to 388 nm), and (3) subtle uranium peaks (UV range). The model utilizing category 2 was able to predict the 48 ppm of uranium with a relative error prediction (REP) of 10%. The calibration model utilizing subtle uranium peaks, that is, category 3, could predict uranium in the pellets prepared from certified reference material (CRM) IAEA-RGU-1, with an REP of 6%. This demonstrates the power of ANN to model noisy LIBS spectra for trace quantitative analysis. The calibration model we developed predicted uranium concentrations in the uranium-bearing mineral ores in the range of 54-677 ppm. Principal component analysis (PCA) was performed on the LIBS spectra (200-980 nm) utilizing feature selection of the uranium-bearing samples collected from
机译:核法医(NF)是一种分析方法,涉及截取的核和放射材料(NRM)的分析,以便建立核归属。 NF中的临界挑战目前是缺乏合适的微量突出方法,用于直接,快速,微创检测和量化NF签名的定量。激光诱导的击穿光谱(Libs)有可能借助机器学习(ML)技术来克服这些限制。在本文中,我们举报了启用ML的LIBS方法的开发,以获得快速的NF分析和支持核安全性的归属。原子铀系为385.464nm,385.957nm和386.592nm被鉴定为铀的NF签名,以便快速定性检测隐藏在有机粘合剂和含铀矿物矿石中的痕量铀。使用libs检测铀的检测极限为34ppm。使用人工神经网络(ANN,馈送前后反向传播算法)和光谱特征选择:(1)铀线(348nm至348nm)开发了用于量化纤维素和铀矿物质矿石中含纤维素和铀矿物质矿石的多元校准策略。(1)铀线(348nm 455nm),(2)铀系(380nm至388nm),和(3)微妙的铀峰(UV范围)。利用类别2的模型能够预测具有10%的相对误差预测(REP)的48ppm的铀。利用细微铀峰的校准模型可以预测由认证参考材料(CRM)Iaea-Rgu-1制备的颗粒中的铀,其中REP为6%。这证明了ANN的力量,用于模型嘈杂的LIBS光谱,用于跟踪定量分析。校准模型我们在含有铀矿物质的预测铀浓度的范围内,在54-677ppm的范围内。利用从中收集的铀含量样本的特征选择对LIBS光谱(200-980nm)进行主成分分析(PCA)

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