利用机器学习方法重新审视锆石源岩的地球化学分类

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-01-16 DOI:10.1007/s11004-023-10128-z
Keita Itano, Hikaru Sawada
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引用次数: 0

摘要

保存在锆石中的微量元素指纹为了解锆石的来源和结晶条件提供了线索。已经建立了许多地球化学指标,从地球化学角度评估源岩特征;但是,尚未对多元痕量元素数据进行充分的统计研究。在过去几十年中,来自各种岩石类型的大量锆石数据已经可以获取,因此现在有必要重新评估微量元素在区分源岩类型方面的作用。我们采用了一个新的锆石痕量元素数据集,并建立了分类模型,以区分八种源岩类型:火成岩(酸性、中性、碱性、金伯利岩、碳酸盐岩和辉绿岩)、变质岩和热液岩。传统的决策树分析无法对新数据集进行正确分类,而随机森林和支持向量机算法则实现了高精度分类(精确度、召回率和 F1 分数均为 80%)。这项工作证实,痕量元素组成是利用碎屑锆石进行省份研究和矿物勘探的有用工具。然而,由于汇编的数据集存在许多缺失值,因此模型还有改进的余地。四极电感耦合等离子体质谱法无法测量的微量元素,如 P 和 Sc,对于更准确的分类至关重要。
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Revisiting the Geochemical Classification of Zircon Source Rocks Using a Machine Learning Approach

Trace element fingerprints preserved in zircons offer clues to their origin and crystallization conditions. Numerous geochemical indicators have been established to evaluate the source rock characteristics from a geochemical perspective; however, multivariate trace element data have not been sufficiently investigated statistically. As substantial amounts of zircon data from a wide range of rock types have become accessible over the past few decades, it is now essential to reassess the utility of trace elements in discriminating source rock types. We employed a new zircon trace element dataset and established classification models to distinguish eight types of source rocks: igneous (acidic, intermediate, basic, kimberlite, carbonatite, and nepheline syenite), metamorphic, and hydrothermal. Whereas a conventional decision tree analysis was unable to correctly classify the new dataset, the random forest and support vector machine algorithms achieved high-precision classifications (> 80% precision, recall, and F1 score). This work confirms that trace element composition is a helpful tool for province studies and mineral exploration using detrital zircons. However, the compiled dataset with many missing values leaves room for improving the models. Trace elements, such as P and Sc, which cannot be measured by quadrupole inductively coupled plasma mass spectrometry, are vital for more accurate classification.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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