基于机器学习的测井数据复杂岩性识别方法

Mi Liu, Song Hu, Jun Zhang, Youlong Zou
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引用次数: 4

摘要

海陆过渡相沉积环境导致储层岩性复杂,岩性变化快,存在薄互层,纵横向非均质性强。由此产生的岩性识别困难对储层参数的评估和甜点的预测提出了挑战。研究了川西南A区二叠纪龙潭组海陆过渡相储层。根据岩心描述、矿物成分分析和测井响应,本研究将储层岩性分为八种类型,即煤、碳质页岩、泥岩、泥质粉砂岩、粉砂岩、细砂岩、钙质泥岩和铝土矿泥岩。然后,本研究确定了不同岩性的测井响应特征,建立了从测井数据识别典型岩性的图表,形成了一套从测井数据中识别复杂储层岩性的方法和过程。此外,本研究还采用多分辨率图聚类、交叉图决策树和随机森林等方法建立了岩性识别模型。这些模型的准确率分别为84.3%、85.6%和91%,表明总体识别精度较高。此外,本研究还比较分析了不同岩性识别方法的应用条件、优缺点,为后续从测井资料中识别复杂储层岩性提供了指导。
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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Methods for identifying complex lithologies from log data based on machine learning

The sedimentary environment of the marine-continental transitional facies leads to complex reservoir lithologies characterized by rapid changes in lithology, the presence of thin interbeds, and strong heterogeneity in both vertical and horizontal directions. The resultant difficulties with lithology identification pose challenges to the evaluation of reservoir parameters and the prediction of sweet spots. This study investigated the reservoirs of marine-continental transitional facies in the Permian Longtan Formation in area A, southwestern Sichuan. Based on core descriptions, mineral composition analysis, and log responses, this study divided the reservoir lithologies into eight types, i.e., coals, carbonaceous shales, mudstones, argillaceous siltstones, siltstones, fine sandstones, calcareous mudstones, and bauxitic mudstones. Then, this study determined the log response characteristics of different lithologies, established the charts for identifying typical lithologies from log data, and formed a set of methods and processes for identifying complex reservoir lithologies from log data. Furthermore, this study established lithology identification models using methods of multi-resolution graph-based clustering (MRGC), cross plot - decision tree, and random forest. These models had an accuracy rate of 84.3%, 85.6%, and 91%, respectively, indicating high identification precision overall. In addition, this study compared and analyzed the application conditions, advantages, and disadvantages of different lithology identification methods, providing guidance for subsequent identification of complex reservoir lithologies from log data.

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