Automatic Geological Facies Analysis in Crust-Mantle Transition Zone

Chiaki Morelli, Shiduo Yang, Yuki Maehara, Huimin Cai, Kyaw Moe, Yasuhiro Yamada, Juerg Matter
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Abstract

The Oman Drilling Project was conducted as a part of the International Continental Scientific Drilling Program (ICDP) from 2017 to 2018, and several boreholes, including four across the crust-mantle transition zone, were drilled in the program (Matter et al., 2019; Kelemen et al., 2020; Takazawa, 2021). A full suite of slim and conventional wireline logs, as well as high-resolution electrical borehole image and geochemical spectroscopy logs (Ellis and Singer, 2007; Liu, 2017), were acquired near the coring borehole. Full core samples were acquired from the coring boreholes, and various core analyses were conducted manually with significant time and effort to create a detailed core description. Identification of geological facies is crucial to understanding the complicated crust-mantle transition zone. Being able to achieve this facies recognition from available logging data using an automated method would optimize the operation cost and analysis time. This would be useful for the future scientific ultradeep ocean drilling Mohole to Mantle (M2M) project (Umino, 2015; Moe et al., 2018) planned by the International Ocean Discovery Program (IODP). We propose an automatic geological facies analysis (FaciesSpect) method using borehole images and other petrophysical log data on the Oman Drilling Project. Among the available logging data, borehole image (resistivity type with dynamic color scaling) and two log curves (Fe and Ca) from geochemical spectroscopy log data were selected for the automatic facies analysis. Fifteen clusters were classified from the selected log data using the proposed approach. The cluster distribution trend was consistent with cuttings and core lithologies and indicated three major lithology zones: dunite, gabbro, and harzburgite. Two automatic facies analysis methods, class-based machine learning and heterogeneous rock analysis, were performed to compare the results with those of FaciesSpect. These are well-established methods that can validate the newer FaciesSpect method result. The class results of the three different methods were compared. They are matched at major lithology change boundaries. FaciesSpect class results calibrated by core data could be matched not only with core lithology changes but also with texture changes, such as massive, layered, severely altered, deformed, and fractured, due to the advantage of using borehole image data as one form of input. In this case study, we applied the automatic facies analysis to a complicated scientific drilling well in the crust-mantle transition zone for the first time. The result successfully identified different lithologies, such as dunite and harzburgite, which have a high potential for hydrogen generation and are important resources for emissions-free renewable energy. We validated that the FaciesSpect method is useful for rapidly understanding the overall lithology and texture trends such as fractured, deformed, and massive intervals. The FaciesSpect method can also save analysis time and provide a fit-for-purpose result for different objectives beyond petroleum evaluation in a way that does not rely on the individual interpreter’s experiences. The high-resolution borehole image and geochemical spectroscopy logs are crucial inputs for automatic facies analysis in this study.
壳幔过渡带的自动地质构造分析
阿曼钻探项目是2017年至2018年国际大陆科学钻探计划(ICDP)的一部分,在该计划中钻探了多个钻孔,包括四个横跨地壳-地幔过渡带的钻孔(Matter等人,2019年;Kelemen等人,2020年;Takazawa,2021年)。在取芯钻孔附近采集了一整套纤细和传统的线性测井记录,以及高分辨率电气钻孔图像和地球化学光谱测井记录(Ellis 和 Singer,2007 年;Liu,2017 年)。从岩心钻孔中采集了完整的岩心样品,并花费大量时间和精力进行了各种人工岩心分析,以创建详细的岩心描述。地质面的识别对于了解复杂的地壳-地幔过渡带至关重要。使用自动方法从现有测井数据中识别地质面,将优化操作成本和分析时间。这对于国际大洋发现计划(IODP)计划的未来科学超深海钻探莫霍孔至地幔(M2M)项目(Umino,2015;Moe 等人,2018)非常有用。我们利用阿曼钻探项目的钻孔图像和其他岩石物理测井数据,提出了一种自动地质面分析(FaciesSpect)方法。在可用的测井数据中,我们选择了井眼图像(电阻率类型,带动态颜色缩放)和地球化学光谱测井数据中的两条测井曲线(铁和钙)进行自动地貌分析。利用所提出的方法,从选定的测井数据中划分出 15 个群组。岩群分布趋势与切屑和岩心岩性一致,并显示出三个主要岩性区:云英岩、辉长岩和哈兹堡岩。两种自动岩相分析方法,即基于类的机器学习和异质岩分析,与 FaciesSpect 的结果进行了比较。这些都是成熟的方法,可以验证较新的 FaciesSpect 方法的结果。比较了三种不同方法的分类结果。它们在主要岩性变化边界处进行了匹配。由岩心数据校准的 FaciesSpect 分类结果不仅可以与岩心岩性变化相匹配,还可以与纹理变化相匹配,如块状、层状、严重蚀变、变形和断裂,这是因为使用钻孔图像数据作为一种输入形式的优势。在本案例研究中,我们首次将自动岩相分析应用于地壳-地幔过渡带的一口复杂科学钻井。结果成功识别出了不同的岩性,如白云岩和哈兹堡岩,这些岩性具有很高的制氢潜力,是无排放可再生能源的重要资源。我们验证了 FaciesSpect 方法有助于快速了解整体岩性和纹理趋势,如断裂、变形和块状区间。FaciesSpect 方法还能节省分析时间,为石油评价以外的不同目标提供合适的结果,而不依赖于解释者的个人经验。在本研究中,高分辨率井眼图像和地球化学光谱测井记录是自动岩相分析的关键输入。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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