基于地震属性分析和大数据分析的储层表征数据驱动建模与预测

Xu Zhou, M. Tyagi, Guoyin Zhang, Hao Yu, Yangkang Chen
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引用次数: 6

摘要

随着数据采集和存储技术的发展,石油和天然气行业存在大量数据驱动决策的可用数据。本研究探索了利用大数据分析技术建立三维地震测量的地震属性值与测井记录的岩石物理属性之间的统计关系。这些关系和模型可以进一步用于勘探和生产作业的优化。三维地震数据可用于在地震勘探的所有位置提取各种地震属性值。测井资料提供了沿井筒岩石物理值的精确约束。利用大数据分析方法建立地震属性与岩石物理数据之间的统计关系。由于地震数据是在储层尺度上的,并且可以在地震调查的每个样本单元中获得,因此这些关系可以用于估计地震调查中所有位置的岩石物理性质。本研究选择了Teapot dome三维地震勘探,提取地震属性值。从三维地震体中提取一组瞬时地震属性,包括曲率、瞬时相位和轨迹包络线。深度学习神经网络模型用于建立地震测量输入的地震属性值与测井记录的岩石物理性质之间的关系。结果表明,基于多隐层的深度学习神经网络模型能够利用三维地震体中提取的地震属性值预测孔隙度。利用地震属性子集提高了模型从地震数据预测孔隙度值的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Driven Modeling and Prediction for Reservoir Characterization Using Seismic Attribute Analyses and Big Data Analytics
With recent developments in data acquisition and storage techniques, there exists huge amount of available data for data-driven decision making in the Oil & Gas industry. This study explores an application of using Big Data Analytics to establish the statistical relationships between seismic attribute values from a 3D seismic survey and petrophysical properties from well logs. Such relationships and models can be further used for the optimization of exploration and production operations. 3D seismic data can be used to extract various seismic attribute values at all locations within the seismic survey. Well logs provide accurate constraints on the petrophysical values along the wellbore. Big Data Analytics methods are utilized to establish the statistical relationships between seismic attributes and petrophysical data. Since seismic data are at the reservoir scale and are available at every sample cell of the seismic survey, these relationships can be used to estimate the petrophysical properties at all locations inside the seismic survey. In this study, the Teapot dome 3D seismic survey is selected to extract seismic attribute values. A set of instantaneous seismic attributes, including curvature, instantaneous phase, and trace envelope, are extracted from the 3D seismic volume. Deep Learning Neural Network models are created to establish the relationships between the input seismic attribute values from the seismic survey and petrophysical properties from well logs. Results show that a Deep Learning Neural Network model with multi-hidden layers is capable of predicting porosity values using extracted seismic attribute values from 3D seismic volumes. Ultilization of a subset of seismic attributes improves the model performance in predicting porosity values from seismic data.
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