体积纹理提取在三维地震资料中的应用——喀尔巴阡前深中新世沉积岩相构造勘探

IF 0.4 Q4 ENVIRONMENTAL SCIENCES Geology, Geophysics and Environment Pub Date : 2021-01-26 DOI:10.7494/GEOL.2020.46.4.301
M. Łukaszewski
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引用次数: 1

摘要

喀尔巴阡前深区有大量的常规气田,也有证据表明该地区可能存在非常规天然气聚集。这些地质形态的地震特征不同,振幅变化规模小,数据量大,使得地质解释过程非常耗时。此外,大量地震数据中信息的分散性越来越需要自动、自学习的认知过程。机器学习的最新发展为地震解释,特别是多属性地震分析增加了新的能力。每种情况都需要正确选择属性。本文提出了灰度共生矩阵方法及其两个纹理属性:能量和熵。为了发现隐藏在地震痕迹之间的微妙地质特征,将Haralick的两个结构参数应用到中新世矿床层段的高级解释中。在此基础上,圈定了一个海底斜坡河道系统,从而发现了天然气钻孔与地质环境之间未知的早期关系。充填喀尔巴阡前深的中新世沉积物,由于其岩性和相的多样性,为测试和实施机器学习技术提供了良好的条件。所提出的纹理属性是用于地震相分类的自学习系统所需的输入成分。
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The application of volume texture extraction to three-dimensional seismic data – lithofacies structures exploration within the Miocene deposits of the Carpathian Foredeep
There are numerous conventional fields of natural gas in the Carpathian Foredeep, and there is also evidence to suggest that unconventional gas accumulations may occur in this region. The different seismic signatures of these geological forms, the small scale of amplitude variation, and the large amount of data make the process of geological interpretation extremely time consuming. Moreover, the dispersed nature of information in a large block of seismic data increasingly requires automatic, self-learning cognitive processes. Recent developments with Machine Learning have added new capabilities to seismic interpretation, especially to multi-attribute seismic analysis. Each case requires a proper selection of attributes. In this paper, the Grey Level Co-occurrence Matrix method is presented and its two texture attributes: Energy and Entropy. Haralick’s two texture parameters were applied to an advanced interpretation of the interval of Miocene deposits in order to discover the subtle geological features hidden between the seismic traces. As a result, a submarine-slope channel system was delineated leading to the discovery of unknown earlier relationships between gas boreholes and the geological environment. The Miocene deposits filling the Carpathian Foredeep, due to their lithological and facies diversity, provide excellent conditions for testing and implementing Machine Learning techniques. The presented texture attributes are the desired input components for self-learning systems for seismic facies classification.
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