基于稀土元素参数的铀矿石成因多元统计评价

Xuepeng Shao, Wenting Bu, Youyi Ni, Hailong Wang, Xuemei Liu, Chuting Yang, Fanhua Hao
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引用次数: 1

摘要

核材料的来源评估是核取证的关键目标。在各种指纹图谱中,稀土元素(ree)在地质和采矿/磨矿过程中表现相似,因此被认为是鉴定研究中强有力的地质特征。本文提出稀土杂质与Nd-Ce同位素比值结合作为铀矿石来源评价的新指纹图谱。建立了一个数据库,其中包括来自7个国家的25个样品的稀土元素参数的质谱测量。比较了聚类分析(CA)、主成分分析(PCA)和线性判别分析(LDA)等多元统计方法的效率。结果表明,大部分铀矿石样品按地理来源分类是正确的,Nd-Ce同位素比值在改进分类中起着关键作用。所建立的LDA模型具有很高的识别率(100%)和令人满意的预测能力(90%),证明该方法是追踪未知铀矿石样品的有力工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Origin assessment of uranium ores using multivariate statistical method based on their rare-earth elemental parameters

Origin assessment of nuclear materials is the key aim of nuclear forensics. Among the various fingerprints, rare-earth elements (REEs) are regarded as a powerful geological signature in authentication studies as they behave similarly during geologic and mining/milling processes. In this study, the combination of rare-earth impurities and Nd–Ce isotope ratios were proposed as a novel fingerprint for the origin assessment of uranium ores. A database was established, comprising mass spectrometric measurements of rare-earth elemental parameters of twenty-five samples from seven countries. The efficiencies of different multivariate statistical techniques, including cluster analysis (CA), principal component analysis (PCA) and linear discriminant analysis (LDA), were compared. The results showed that most of uranium ore samples were correctly classified according to geographical origins, and Nd–Ce isotope ratios played a key role in improving the classification. High recognition (100%) and satisfactory predictive ability (90%) of the developed LDA model proved that the proposed method is a powerful tool for tracing unknown uranium ore samples.

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