基于数据挖掘技术的复杂碳酸盐岩储层渗透率计算

Xiongyan Li
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引用次数: 0

摘要

由于复杂碳酸盐岩储层岩性和孔隙类型的复杂性,其渗透率计算一直是一个难题。为了准确计算复杂碳酸盐岩储层渗透率,介绍了一种数据挖掘技术。建立了数据挖掘的技术流程,分为数据仓库、数据预处理、储层类型分类、敏感参数选择、分类模型建立、分类模型评价、分类模型应用七个步骤。数据驱动方法可以发现常规储层评价方法无法识别的有效知识,这些知识仍然包含在油气数据中。由于数据驱动方法在获取有效知识的同时可能获取大量无效知识,因此需要引入领域知识参与数据挖掘过程。领域知识驱动方法可以从油气数据中提取出最有价值和最有效的信息。数据驱动和领域知识驱动相结合的方法可以避免复杂碳酸盐岩储层岩性和孔隙类型的细分。因此,采用数据驱动和领域知识驱动相结合的方法,可以准确计算复杂碳酸盐岩储层的渗透率。与前一种方法的渗透率计算结果相比,数据挖掘技术的渗透率计算结果精度提高了18.39%。数据驱动与领域知识驱动相结合,可以解决传统储层评价方法难以克服的难题。此外,还可以为储层评价提供新的理论和技术。渗透率计算结果证明了该方法的可行性和正确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Permeability Calculation of Complex Carbonate Reservoirs Based on Data Mining Techniques
Due to the complexity of lithologies and pore types, the permeability calculation of complex carbonate reservoirs has always been a difficult problem. To accurately calculate the permeability of complex carbonate reservoirs, a data mining technique is introduced. The technical process of data mining is established and divided into seven steps: data warehousing, data preprocessing, classification of reservoir types, selection of sensitive parameters, establishment of the classification model, evaluation of classification model, and application of classification model. The data-driven method can find effective knowledge that conventional reservoir evaluation methods cannot recognize and that are still contained in oil and gas data. Since the data-driven method may acquire a large amount of invalid knowledge while obtaining effective knowledge, the domain knowledge needs to be introduced to participate in the data mining process. The domain-knowledge-driven method can extract the most valuable and effective information from oil and gas data. The combination of data-driven and domain knowledge-driven methods is possible to avoid subdividing lithologies and pore types of complex carbonate reservoirs. As a result, the permeability of complex carbonate reservoirs can be accurately calculated based on the combination of data-driven and domain-knowledge-driven methods. Compared with the permeability calculation result by the previous method, the accuracy of the permeability calculation result by the data mining technique is improved by 18.39%. The combination of data-driven and domain-knowledge-driven methods can solve the difficult problem that traditional reservoir evaluation methods cannot overcome. Additionally, they can also provide new theories and techniques for reservoir evaluation. The permeability calculation result proves the feasibility and correctness of the method.
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