川西坳陷东斜坡下侏罗统大安寨段复杂岩性测井识别

Mengyuan Zhang , Runcheng Xie , Shuai Yin , Meizhou Deng , Jun Chen , Shaoke Feng , Ziwei Luo , Jian Chen
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引用次数: 1

摘要

近年来,随着川西坳陷东坡油气勘探的深入,该区自流井组大安寨段优质气藏研究取得突破。川西坳陷东坡大安寨段岩性精细测井识别是储层甜点预测的核心课题。本文以四川盆地西部大安寨段为例,利用大量岩心、地质资料和测井解释模型,系统地进行了多岩性测井模型的工作流程和对比。研究表明,大安寨段主要发育四种岩性,即页岩、含泥灰岩灰岩、贝壳灰岩和砂岩。交会图和蜘蛛图方法可以有效地筛选出对岩性敏感的测井参数,包括自然伽马(GR)、中子(CNL)、深部横向电阻率(RD)和声波时差(AC)。利用“岩性概率因子”、“BP神经网络”和聚类分析方法,可以高精度地识别研究区大安寨段的岩性。其中,“岩性概率因子”和“BP神经网络”方法对岩性的预测精度均超过80%。因此,这两种方法被优化为大安寨段岩性测井识别的最有效方法。本研究对世界同类气藏的岩性识别具有一定的参考价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Logging identification of complex lithology of the Lower Jurassic Da'anzhai Member in the eastern slope of the western Sichuan Depression

In recent years, with the in-depth development of oil and gas exploration in the eastern slope of the western Sichuan Depression, breakthroughs have been made in the research on high-quality gas reservoirs in the Da'anzhai Member of the Ziliujing Formation in this area. Fine logging identification of lithology in the Da'anzhai Member in the eastern slope of the western Sichuan Depression is the core subject of reservoir sweet spot prediction. In this paper, taking the Da'anzhai Member in the western Sichuan Basin as an example, the work flow and comparisons of multi-lithology logging models have been systematically conducted, using a large number of cores, geological data and logging interpretation models. The research shows that there are four main lithologies developed in the Da'anzhai Member, namely shale, marl-bearing limestone, shell limestone and sandstone. Intersection and spider diagram methods can effectively screen out the logging parameters that are sensitive to lithology, including natural gamma (GR), neutron (CNL), deep lateral resistivity (RD), and acoustic wave time difference (AC). The lithology of the Da'anzhai Member in the study area can be identified with high precision via the "lithology probability factor", "BP neural network" and cluster analysis methods. Among them, the "lithologic probability factor" and "BP neural network" methods have a prediction accuracy of lithology exceeds 80%. Therefore, these two methods are optimized as the most effective methods for logging identification of lithology in the Da'anzhai Member. This study has certain reference value for the lithology identification of similar gas reservoirs worldwide.

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