Big Data Analytics for Seismic Fracture Identification, Using Amplitude-Based Statistics

E. Udegbe, E. Morgan, S. Srinivasan
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引用次数: 1

Abstract

Present day innovations in seismic acquisition tools and techniques have enabled the acquisition of detailed seismic datasets, which in many cases are extremely large (on the order of terabytes to petabytes). However, data analysis tools for extracting information on critical subsurface features such as fractures are still evolving. Traditional methods rely on time-consuming iterative workflows, which involve computing seismic attributes, de-noising and expert interpretation. Additionally, with the increasingly widespread acquisition of time-lapse seismic surveys (4D), there is a heightened demand for reliable automated workflows to assist feature interpretation from seismic data. We present a novel data-driven tool for fast fracture identification in BIG post-stack seismic datasets, motivated by techniques developed for real-time face detection. The proposed algorithm computes spatiotemporal amplitude statistics using Haar-like bases, in order to characterize the seismic amplitude properties that correspond to fracture occurrence in a unit window or voxel. Under this approach, the amplitude data is decomposed into a collection of simple-to-calculate "mini-attributes", which carry information on the amplitude gradient and curvature characteristics at varying locations and scales. These features then serve as inputs to a cascade of boosted classification tree models, which select and combine the most discriminative features to develop a probabilistic binary classification model. This overall approach helps to eliminate the computationally-intensive and subjective use of ad-hoc seismic attributes in existing approaches. We first demonstrate the viability of the proposed methodology for identifying discrete macro-fractures in a 2D synthetic seismic dataset. Next, we validate the approach using 3D post-stack seismic data from the Niobrara Shale interval within the Teapot Dome field. We show the applicability of the proposed framework for identifying sub-seismic fractures, by considering the amplitude profile adjacent to interpreted fullbore microimage (FMI) well log data. The upscaled spatial distribution of the predicted fractures shows agreement with existing geological studies and align with interpreted large-scale faults within the interval of interest.
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基于振幅统计的地震裂缝识别大数据分析
目前,地震采集工具和技术的创新使得能够获取详细的地震数据集,在许多情况下,这些数据集非常大(在tb到pb量级)。然而,用于提取关键地下特征(如裂缝)信息的数据分析工具仍在不断发展。传统方法依赖耗时的迭代工作流程,包括计算地震属性、去噪和专家解释。此外,随着时间推移地震勘探(4D)的日益普及,对可靠的自动化工作流程的需求也越来越高,以协助地震数据的特征解释。在实时人脸检测技术的推动下,我们提出了一种新的数据驱动工具,用于在大叠后地震数据集中快速识别裂缝。该算法使用haar样基计算时空振幅统计,以便在单位窗口或体素中表征与裂缝发生相对应的地震振幅特性。在这种方法下,振幅数据被分解成一组易于计算的“迷你属性”,这些“迷你属性”携带着不同位置和尺度下的振幅梯度和曲率特征信息。然后,这些特征作为一系列增强分类树模型的输入,这些模型选择并组合最具判别性的特征来开发概率二分类模型。这种整体方法有助于消除现有方法中对特别地震属性的计算密集型和主观使用。我们首先证明了所提出的方法在二维合成地震数据集中识别离散宏观裂缝的可行性。接下来,我们使用来自Teapot Dome油田Niobrara页岩层段的三维叠后地震数据验证了该方法。通过考虑与全孔微成像(FMI)测井数据相邻的振幅剖面,我们证明了所提出的框架在识别亚地震裂缝方面的适用性。预测裂缝的升级空间分布与现有的地质研究一致,并与感兴趣区间内解释的大型断层一致。
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