地震属性在储层整体覆盖分析中的应用

Q2 Earth and Planetary Sciences
Leading Edge Pub Date : 2022-12-01 DOI:10.1190/tle41120848.1
E. Lie, T. Bhakta, I. Sandø
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引用次数: 0

摘要

在油藏模型的基于整体地震历史匹配的背景下,缺乏质量控制(QC)方法来确保实测地震数据在建模地震数据的范围内。由于地震数据的高维性,很难将数据可视化,也很难与大量的综合数据进行有效的比较。介绍了两个称为覆盖率和重要性的属性,以合并审查集成的关键元素。覆盖属性描述了模型集复制测量数据的位置,重要性属性标识了在噪声阈值之上拟合数据的重要位置。然后将这两个属性结合起来,以突出我们的油藏模型集合在哪个空间区域适合建模数据,以及我们的模型集合与实测数据之间存在显著差异的地方。这些属性与噪声密切相关,因为必须根据噪声水平来分析覆盖范围。虽然可能没有明确地校正噪声,但该方法校正了所评估噪声的属性。将该方法应用于野外地震资料的四维绝对差幅图和四维相对阻抗差立方图。第一个例子表明,在没有任何历史匹配的情况下,改变集合的油水接触可以提高覆盖范围;第二个例子表明,使用三维地震属性比使用二维地震数据图更难获得良好的覆盖范围。提出的QC属性为更好地管理集成中地震数据的覆盖范围提供了工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Inclusion of seismic attributes in reservoir ensemble coverage analysis
There is a lack of quality-control (QC) methods to ensure measured seismic data are within the span of modeled seismic data in the context of ensemble-based seismic history matching of reservoir models. The dimensionality of seismic data makes it difficult to visualize the data and further compare them to the large number of ensembles in an efficient manner. Two attributes called coverage and importance are introduced to incorporate the key elements of reviewing an ensemble. The coverage attribute delineates where the set of models replicates the measured data, and the importance attribute identifies where it is important to fit the data above the noise threshold. The two attributes are then combined to highlight in which spatial area our reservoir model ensemble appropriately models the data and where a significant discrepancy exists between our ensemble of models and the measured data. The attributes are closely connected to noise, as coverage always must be analyzed in terms of the noise level. Although noise may not be explicitly corrected for, the methodology corrects the attributes for the noise assessed. The method is applied on two data examples from field seismic data: a 4D absolute difference amplitude map and a 4D relative impedance difference cube. The first example shows how changing the oil-water contact of the ensemble can improve the coverage without any history matching, and the second shows how it is more difficult to get a good coverage using 3D seismic attributes rather than using 2D maps of seismic data. The proposed QC attributes provide tools to better manage coverage of seismic data in the ensemble.
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来源期刊
Leading Edge
Leading Edge Earth and Planetary Sciences-Geology
CiteScore
3.10
自引率
0.00%
发文量
180
期刊介绍: THE LEADING EDGE complements GEOPHYSICS, SEG"s peer-reviewed publication long unrivalled as the world"s most respected vehicle for dissemination of developments in exploration and development geophysics. TLE is a gateway publication, introducing new geophysical theory, instrumentation, and established practices to scientists in a wide range of geoscience disciplines. Most material is presented in a semitechnical manner that minimizes mathematical theory and emphasizes practical applications. TLE also serves as SEG"s publication venue for official society business.
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