化学地层学可以用高分辨率元素数据进行对比和储层表征

M. Hussain, A. Amao, K. Al-Ramadan, L. Babalola, John T. Humphrey
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摘要

已有研究表明,将多元统计分析应用于化学地层学,可以增强层序地层相关性的模糊性。化学相和相关的化学带可以在高度均匀的地层中定义,使用专门设计的统计算法。在这项研究中,我们首先研究了线性和非线性降维技术在分析化学相和化学带发育的地球化学数据集中的更好表现。这个概念模型对层序地层对比的一般适用性随后进行了测试。结果表明,线性方法可以解释63%的输入数据方差,而非线性技术可以解释100%的方差。此外,线性技术可以更好地用于建立化学相,而非线性技术在建立相关化学带方面表现得更好,同时也提高了准确性。
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Chemostratigraphy Enables Correlations and Reservoir Characterization with High Resolution Elemental Data
Previous studies have shown that by applying multivariate statistical analysis to chemostratigraphy, indistinct sequence stratigraphic correlations can be enhanced. Chemofacies and correlatable chemozones can be defined within highly homogenous strata, using specially designed statistical algorithms. In this study, we first investigated the better performing of linear and non-linear dimensionality reduction techniques in analyzing geochemical datasets for chemofacies and chemozones development. The general applicability of this conceptual model for sequence stratigraphic correlations, was subsequently tested. The results show that the linear method was able to account for 63% of input data variance while the non-linear technique accounted for 100% of the variance. In addition, the linear techniques are better utilized to establish chemofacies, whereas the non-linear techniques considerably perform better in establishing correlatable chemozones, while also improving accuracy.
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