理论指导下的数据科学——Diyab组岩石物理案例研究

N. Leseur, A. Mendez, M. Baig, Pierre-Olivier Goiran
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引用次数: 0

摘要

本文介绍了一个以理论为指导的数据科学案例研究,以评估阿拉伯半岛一些最大储层的上侏罗统Diyab组烃源岩的潜力。采用了一种基于三步法的工作流程,将测井工具的物理响应与概率机器学习算法相结合,对该远景区的4口井进行了评估。首先,在一口概念井上建立了岩心校准的多矿物模型,并获得了大量的测井数据和岩心测量数据。为了将从后一种物理驱动解释中获得的知识转移到其他数据稀缺的井中,然后通过高斯过程回归(GPR)了解输出岩石和流体体积与其输入测井响应之间的关系。最后,在对关键井进行训练后,将后一种概率算法应用于其余三口井,以预测储层性质,量化资源潜力并估计与体积相关的不确定性。在这项工作中引入的物理信息机器学习方法被发现提供的结果与大多数可用的岩心数据相匹配,而差异通常可以通过厚度在核日志分辨率下的层压的出现来解释。总的来说,GPR方法似乎能够有效地将数据丰富的关键井的知识转移到其他数据稀缺的井。与传统的独立于关键井进行的地层评价不同,目前的方法确保了最终的岩石物理解释能够反映并受益于在关键井位获得的洞察力和物理驱动的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Theory-Guided Data Science, A Petrophysical Case Study from the Diyab Formation
A practical example of a theory-guided data science case study is presented to evaluate the potential of the Diyab formation, an Upper Jurassic interval, source rock of some of the largest reservoirs in the Arabian Peninsula. A workflow base on a three-step approach combining the physics of logging tool response and a probabilistic machine-learning algorithm was undertaken to evaluate four wells of the prospect. At first, a core-calibrated multi-mineral model was established on a concept well for which an extensive suite of logs and core measurements had been acquired. To transfer the knowledge gained from the latter physics-driven interpretation onto the other data-scarce wells, the relationship between the output rock and fluid volumes and their input log responses was then learned by means of a Gaussian Process Regression (GPR). Finally, once trained on the key well, the latter probabilistic algorithm was deployed on the three remaining wells to predict reservoir properties, quantify resource potential and estimate volumetric-related uncertainties. The physics-informed machine-learning approach introduced in this work was found to provide results which matches with the majority of the available core data, while discrepancies could generally be explained by the occurrence of laminations which thickness are under the resolution of nuclear logs. Overall, the GPR approach seems to enable an efficient transfer of knowledge from data-rich key wells to other data-scarce wells. As opposed to a more conventional formation evaluation process which is carried out more independently from the key well, the present approach ensures that the final petrophysical interpretation reflects and benefits from the insights and the physics-driven coherency achieved at key well location.
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