湖相页岩气储层岩相测井识别方法——以鄂尔多斯盆地延长组长7段为例

Hongyan Yu, Zhenliang Wang, Hao Cheng, Q. Yin, Bojiang Fan, Xiaoyan Qin, Xiaorong Luo, Xiangzen Wang, Lixia Zhang
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引用次数: 2

摘要

非常规油气藏是油气勘探开发的关键,尤其是页岩气藏。页岩气储层岩相的鉴别是页岩气储层工程中的首要问题。矿物成分会影响吸收气体和游离气体的含量,因此它们的鉴别是很重要的。矿物组成为岩相的一部分。在以往的岩性识别中,页岩含量一直是常用的方法,这种方法在砂岩储层中是有效的;然而,它并不适合在页岩气藏中使用。本文以鄂尔多斯盆地延长组7段为例。通过岩性分析,得出重叠法和交叉图法对页岩气储层也不适用的结论。鄂尔多斯盆地页岩气储层可划分为7个岩相。利用常规测井得到的页岩体积和lgR数据,结合处理后数据集中有机质的反映,形成了一种数学方法,并将其应用于页岩气储层。这里使用决策树。但由于参数过多,难以准确区分所有岩相。主成分分析(PCA)是一种用于将多维数据集降维到较低维度进行分析的技术。该技术在岩石物理学和地质学中非常有用,可以作为一种将多个测井曲线合并为一个或两个测井曲线而不丢失信息的初步方法。将主成分分析与决策树算法相结合,实现了页岩气储层岩相的准确识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Identified Method for Lacustrine Shale Gas Reservoir LithofaciesUsing Logs: A Case Study for No. 7 Section in Yanchang Formation inOrdos Basin
Unconventional reservoirs are keys to oil and gas exploration and development, especially shale gas reservoirs. Discriminated shale gas reservoir lithofacies are, in particular, a primary problem in shale gas reservoir engineering. The mineral composition will affect both absorbed and free gas contents, therefore their identification is important. The mineral composition is one part of lithofacies. The shale content has always been used in previous lithological identifications: this method is effective in sand reservoirs; however, it is not suitable for use in shale gas reservoirs. This paper takes No.7 section in Yanchang formation in Ordos basin as an example. Through a lithological analysis, it was concluded that overlap method and cross-plot method are not also inappropriate for shale gas reservoirs. The Ordos basin shale gas reservoir is divided into seven lithofacies. We form a mathematical method and apply it to shale gas reservoirs using the shale volume and lgR which are available from conventional well logging and reflect organic matter in the processed dataset. Decision tree is used here. However, there were too many parameters to discriminate all lithofacies precisely. Principal component analysis (PCA) is a technique used to reduce multidimensional data sets to lower dimensions for analysis. This technique can be useful in petro-physics and geology as a preliminary method of combining multiple logs into a single entity or two logs without losing information. Combining PCA and a decision tree algorithm, the lithofacies of a shale gas reservoir were accurately discriminated.
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