GeoArmadillo中稀土元素数据的自动评估及其在GEOROC和PetDB数据库中的应用

IF 3.6 2区 地球科学 Q1 GEOCHEMISTRY & GEOPHYSICS
David M. Ernst Styn , Kerstin A. Lehnert , Gerhard Wörner , Marie K. Traun , Malte Mues
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引用次数: 0

摘要

由于先进和高效的分析工具的可用性,发表的地球化学数据的数量不断增加。这些数据可以通过精心策划的、特定领域的、相互关联的综合数据库访问。这样的大数据汇编对于地球化学前沿研究和地球科学样品成分数据在邻近领域的应用具有巨大的潜力。然而,使用从多年文献中收集的数据也会给数据分析带来陷阱和不确定性。虽然原始数据的作者通常知道其重要性和局限性,但“外部”数据用户往往发现很难评估数据的可靠性、固有的不确定性以及可能的分析性人工制品。稀土元素群在地球化学研究中广泛应用于化学运输和分化的示踪剂,以及地球化学指纹图谱。因此,我们开发了一种数据评估方法,可以自动筛选地球化学数据中的可疑稀土模式和异常。我们的稀土数据评估是基于稀土在自然过程中的地球化学行为。具体来说,我们解决了归一化稀土模式的“平滑性”,识别了稀土图中的意外异常值,以及各种类型的散点。我们在从GEOROC和PetDB地球化学数据库中提取的大型数据集上广泛测试了我们的REE数据评估方法。我们确定了不同类型的异常REE模式,我们将其与潜在的人工制品和数据质量问题联系起来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated rare earth element data assessment in GeoArmadillo and application to the GEOROC and PetDB databases
The amount of published geochemical data is continuously increasing due to the availability of advanced and highly efficient analytical tools. These data are made accessible through curated, domain-specific and interconnected synthesis databases. Such large data compilations bear great potential for leading-edge research in geochemistry and the application of compositional data of geoscientific samples in neighbouring fields. However, using data compiled from literature over many years also introduces pitfalls and uncertainties for data analysis. While the authors of the original data usually know their significance and limitations, “external” data users often find it challenging to assess the reliability of data, inherent uncertainties and, possibly, analytical artefacts. The group of rare earth elements (REEs) is widely used in geochemical research as tracers of chemical transport and differentiation, as well as geochemical fingerprinting. Therefore, we developed a data assessment method that can automatically screen geochemical data for suspicious REE patterns and anomalies. Our REE data assessment is based on REEs' geochemical behaviour in natural processes. Specifically, we address the “smoothness” of normalised REE patterns, identify unexpected outliers in REE plots, and various types of scatter.
We extensively tested our REE data assessment method on large datasets extracted from the GEOROC and PetDB geochemical databases. We identified distinct types of anomalous REE patterns that we relate to potential artefacts and data quality issues.
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来源期刊
Chemical Geology
Chemical Geology 地学-地球化学与地球物理
CiteScore
7.20
自引率
10.30%
发文量
374
审稿时长
3.6 months
期刊介绍: Chemical Geology is an international journal that publishes original research papers on isotopic and elemental geochemistry, geochronology and cosmochemistry. The Journal focuses on chemical processes in igneous, metamorphic, and sedimentary petrology, low- and high-temperature aqueous solutions, biogeochemistry, the environment and cosmochemistry. Papers that are field, experimentally, or computationally based are appropriate if they are of broad international interest. The Journal generally does not publish papers that are primarily of regional or local interest, or which are primarily focused on remediation and applied geochemistry. The Journal also welcomes innovative papers dealing with significant analytical advances that are of wide interest in the community and extend significantly beyond the scope of what would be included in the methods section of a standard research paper.
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