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An Examination of Transformation Techniques to Investigate and Interpret Multivariate Geochemical Data Analysis: Tellus Case Study

机译:调查和解读多元地球化学数据分析的转化技术考察:Tellus案例研究

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This research aims to use the multivariate geochemical dataset, generated by the Tellus project, to investigate the appropriate use of transformation methods to maintain the integrity of geochemical data and inherent constrained behaviour in multivariate relationships. The widely used normal score transform is compared with the use of a stepwise conditional transform technique. The Tellus Project, man-aged by GSNI and funded by the Department of Enterprise Trade and Development and the EU's Building Sustainable Prosperity Fund, involves the most comprehen-sive geological mapping project ever undertaken in Northern Ireland. Previous study has demonstrated spatial variability in the Tellus data but geostatistical analysis and interpretation of the datasets requires use of an appropriate methodology that repro-duces the inherently complex multivariate relations. Previous investigation of the Tellus geochemical data has included use of Gaussian-based techniques. However, earth science variables are rarely Gaussian, hence transformation of data is integral-to the approach. The multivariate geochemical dataset generated by the Tellus project provides an opportunity to investigate the appropriate use of transformation methods, as required for Gaussian-based geostatistical analysis. In particular, the stepwise conditional transform is investigated and developed for the geochemical datasets obtained as part of the Tellus project. The transform is applied to four vari-ables in a bivariate nested fashion due to the limited availability of data. Simulation of these transformed variables is then carried out, along with a corresponding back transformation to original units. Results show that the stepwise transform is suc-cessful in reproducing both univariate statistics and the complex bivariate relations exhibited by the data. Greater fidelity to multivariate relationships will improve un-certainty models, which are required for consequent geological, environmental and economic inferences.
机译:本研究旨在使用多元地球化学数据集,由特力项目产生,调查相应使用的转化方法来维持地球化学数据和多变量关系的内在约束行为的完整性。与使用逐步条件变换技术进行比较广泛使用的正常分数变换。由GSNI和企业贸易和发展部门资助的TEXTUS项目和欧盟建设可持续繁荣基金资助,涉及北爱尔兰有史以来最受普遍的地质映射项目。以前的研究表明了碲数据的空间变异,但数据集的地质统计分析和解释需要使用彻底的方法来赋予固有的复杂多元关系。先前对德鲁化地球化学数据的调查包括使用基于高斯的技术。然而,地球科学变量很少高斯,因此数据的转换是一体化的方法。由Tellus项目产生的多变量地球化学数据集提供了调查适当使用转换方法的机会,根据高斯的地统计分析所需的情况。特别地,研究逐步条件变换并为作为碲项目的一部分获得的地球化学数据集进行开发。由于数据可用性有限,将变换应用于四个变量的时尚,以二元嵌套方式。然后执行这些变换变量的模拟,以及对应于原始单元的相应背部变换。结果表明,逐步变换在再现单变量统计数据和数据展示的复杂生物关系方面是成功的。对多元关系的更大保真度将改善未成应的模型,这是随后的地质,环境和经济推论所必需的。

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