利用 PCA 方法分析沉积环境中的地球化学趋势

IF 1.3 4区 地球科学 Q3 GEOSCIENCES, MULTIDISCIPLINARY
Deepshikha Srivastava, Chandra Prakash Dubey, Upasana Swaroop Banerji, Kumar Batuk Joshi
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引用次数: 0

摘要

调查大量沉积物的地球化学组成是揭示各种沉积过程复杂性的重要方法。然而,广泛的数据集和各种因素导致的沉积物变化所产生的错综复杂的问题,往往会妨碍清楚地识别地球化学波动的基本模式。在解决这些问题时,采用多元统计分析已被证明是在大型数据集中阐明复杂模式的宝贵工具。在本研究中,我们重点利用主成分分析(PCA)这一多元统计技术来揭示影响不同地球化学数据集的潜在沉积过程。具体来说,我们的注意力集中在对之前公布的西姆拉和柴尔群(简称 SCM)的玄武岩地球化学数据以及迪乌岛(简称 DMS)的泥滩沉积物地球化学数据的研究上。我们的 PCA 结果显示,最初的三个主成分(PC1、PC2 和 PC3)分别占 SCM 和 DMS 地球化学数据总方差的 52.51% 和 79.30%。值得注意的是,在 SCM 数据集的 PC1 中,SiO2 的负载荷以及不相容元素和与岩浆岩有关的元素的正载荷表明,沉积物的来源从长岩到中岩都有。此外,Th、U、Zr 和 Sc 同时出现在 PC1 和 PC2 中,并显示出正负载,这表明从长石源到中间源的再加工和再循环具有重要影响。就 DMS 数据集而言,PCA 分析凸显了 PC1 正轴上原位生产力和岩浆沉积物来源的主要影响。相反,PC1 的负轴则由中间来源和潜在的其他来源形成。进一步的粒度解释显示,PC2 的正轴归因于风化代用指标,而粘土质部分的斜长石矿物则控制着 PC3 的正轴。通过这项调查,我们的研究强调了 PCA 辅助地球化学数据分析在揭示沉积系统内导致所观察到的差异的错综复杂过程方面的重要作用。通过有效地提炼出驱动地球化学变异的多方面因素,这种方法在增强我们对沉积动力学的理解方面具有举足轻重的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Geochemical trends in sedimentary environments using PCA approach

Geochemical trends in sedimentary environments using PCA approach

Investigating the geochemical composition of bulk sediments stands as a crucial method for unraveling the complexities of various sedimentary processes. However, the intricacies arising from extensive datasets and alterations in sediment due to diverse factors often impede the clear identification of underlying patterns in geochemical fluctuations. In addressing these, employing multivariate statistical analyses has proven to be an invaluable tool for elucidating intricate patterns within large dataset. In this study, we focus on the utilization of Principal Component Analysis (PCA), a multivariate statistical technique, to uncover the underlying sedimentary processes influencing distinct geochemical dataset. Specifically, our attention is directed towards the examination of geochemical data from the previously published geochemical data of metasediments from Shimla and Chail group (referred to as SCM) and the mudflat sediments of Diu Island (referred to as DMS). Our PCA outcomes reveal that the initial three principal components (PC1, PC2, and PC3) account for 52.51% and 79.30% of the total variance within the SCM and DMS geochemical data, respectively. Notably, the negative loading of SiO2, alongside positive loadings of incompatible elements and those associated with mafic rocks on PC1 within the SCM dataset, indicates sediment origins ranging from felsic to intermediate sources. Additionally, the coexistence of Th, U, Zr, and Sc, exhibiting positive loadings in PC1 and PC2, suggests a significant influence of reworking and recycling from felsic to intermediate sources. In the context of the DMS dataset, PCA analysis highlights the dominant influence of in-situ productivity and mafic sediment sources along the positive axis of PC1. Conversely, the negative axis of PC1 is shaped by intermediate and potentially other sources. Further granularity in interpretation reveals the positive axis of PC2 being attributed to weathering proxies, while the dominance of plagioclase minerals in the clayey fraction controls the positive axis of PC3. Through this investigation, our study underscores the essential role of PCA-assisted geochemical data analysis in unraveling the intricate web of processes contributing to the variance observed within sedimentary systems. By effectively distilling the multifaceted factors driving geochemical variability, this approach emerges as a pivotal asset in enhancing our understanding of sedimentary dynamics.

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来源期刊
Journal of Earth System Science
Journal of Earth System Science Earth and Planetary Sciences-General Earth and Planetary Sciences
CiteScore
3.20
自引率
5.30%
发文量
226
期刊介绍: The Journal of Earth System Science, an International Journal, was earlier a part of the Proceedings of the Indian Academy of Sciences – Section A begun in 1934, and later split in 1978 into theme journals. This journal was published as Proceedings – Earth and Planetary Sciences since 1978, and in 2005 was renamed ‘Journal of Earth System Science’. The journal is highly inter-disciplinary and publishes scholarly research – new data, ideas, and conceptual advances – in Earth System Science. The focus is on the evolution of the Earth as a system: manuscripts describing changes of anthropogenic origin in a limited region are not considered unless they go beyond describing the changes to include an analysis of earth-system processes. The journal''s scope includes the solid earth (geosphere), the atmosphere, the hydrosphere (including cryosphere), and the biosphere; it also addresses related aspects of planetary and space sciences. Contributions pertaining to the Indian sub- continent and the surrounding Indian-Ocean region are particularly welcome. Given that a large number of manuscripts report either observations or model results for a limited domain, manuscripts intended for publication in JESS are expected to fulfill at least one of the following three criteria. The data should be of relevance and should be of statistically significant size and from a region from where such data are sparse. If the data are from a well-sampled region, the data size should be considerable and advance our knowledge of the region. A model study is carried out to explain observations reported either in the same manuscript or in the literature. The analysis, whether of data or with models, is novel and the inferences advance the current knowledge.
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