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Geochemical Discrimination of Monazite Source Rock Based on Machine Learning Techniques and Multinomial Logistic Regression Analysis

机译:基于机器学习技术的Monazite源岩地球化学辨别技术与多项逻辑回归分析

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Detrital monazite geochronology has been used in provenance studies. However, there are complexities in the interpretation of age spectra due to their wide occurrence in both igneous and metamorphic rocks. We use the multinomial logistic regression (MLR) and cross-validation (CV) techniques to establish a geochemical discrimination of monazite source rocks. The elemental abundance-based geochemical discrimination was tested by selecting 16 elements from granitic and metamorphic rocks. The MLR technique revealed that light rare earth elements (REEs), Eu, and some heavy REEs are important discriminators that reflect elemental fractionation during magmatism and/or metamorphism. The best model yielded a discrimination rate of ~97%, and the CV method validated this approach. We applied the discrimination model to detrital monazites from African rivers. The detrital monazites were mostly classified as granitic and of garnet-bearing metamorphic origins; however, their proportion of metamorphic origin was smaller than the proportion that was obtained by using the elemental-ratio-based discrimination proposed by Itano et al. in Chemical Geology (2018). Considering the occurrence of metamorphic rocks in the hinterlands and the different age spectra between monazite and zircon in the same rivers, a ratio-based discrimination would be more reliable. Nevertheless, our study demonstrates the advantages of machine-learning-based approaches for the quantitative discrimination of monazite.
机译:脱滴色的Monazite地质学中已用于出处研究。然而,由于其宽度的岩石和变质岩石突出,因此在年龄谱的解释中存在复杂性。我们使用多项式物流回归(MLR)和交叉验证(CV)技术来建立单一的Monazite源岩的地球化学鉴别。通过从花岗岩和变质岩石中选择16个元素来测试基于元素丰富的地球化学鉴别。 MLR技术揭示了轻稀土元素(REES),欧盟和一些重型REES是重要的鉴别器,其在岩浆学和/或变质期间反映了元素分级。最佳模型产生差异〜97%,CV方法验证了这种方法。我们将歧视模型应用于非洲河流的替代金属石。滴乳的单纯性大部分归类为花岗岩和石榴石变质起源;然而,它们的变质原点比例小于通过使用Itano等人提出的基于元素比的歧视而获得的比例。在化学地质(2018)中。考虑到腹地中变质岩石的变质岩石和Monazite和锆石之间的不同年龄谱在同一河流中,基于比率的歧视将更加可靠。尽管如此,我们的研究表明了基于机器学习的机器的方法的优势,以获得单一的定量辨别。

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