岩石面分析和利用机器学习方法对地球物理研究和地震勘探数据进行性质预测的可能性

E. Kolbikova
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摘要

任何油田开发战略的成功与否,都取决于对其主要储层地质构造的了解程度。随着该地区的钻探,油气成藏结构的概念得到了完善,但由于储层孔隙空间结构复杂,该地区剖面的岩性非均质性,因此在后续的井安置过程中,地质不确定性和风险仍然很高。由于这些原因,油气生产的主要问题之一是预测岩石类型和流体在整个储层中远离井的分布,因为岩石性质的确定是储层建模研究中不确定性的主要来源[1,2]。拟议的项目将展示基于机器学习方法的算法,该算法可以预测该剖面的岩性分布和岩相变化的不确定性。
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Lithofacial analysis and possibilities for prediction of properties on geophysical research and seismic exploration data by methods of machine learning
The success of a development strategy for any field depends on the degree of knowledge of the geological structure of its main reservoirs. As the area is drilled out, the concept of the structure of the hydrocarbon accumulation is refined, but in the case of a complex structure of the void space of the reservoirs and the lithological heterogeneity of the section over the area, geological uncertainties and risks during the subsequent placement of wells remain high. For these reasons, one of the main problems in hydrocarbon production is predicting rock types and the distribution of fluids throughout the reservoir away from wells, since the determination of rock properties is a major source of uncertainty in reservoir modeling studies [1, 2]. The proposed project will demonstrate algorithms based on machine learning methods that allow predicting the distribution of lithology and the uncertainty of lithofacies variability in the section.
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