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Mapping Thin Sandstone Reservoirs - Application of 3D Visualization and Spectral Decomposition Techniques

机译:映射薄砂岩储层 - 应用3D可视化和光谱分解技术

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The 3-D data of C-37 of Tapti-Daman sub-basin of Mumbai offshore Basin, India, have been evaluated for delineation and mapping of Oligocene Mahuva pay sands. Post drill analysis of log and seismic data show that low impedance pay sands, embedded in high impedance shales, are separated in thin beds by limestone and/or shale streaks. Delineation of these sands by conventional interpretation methods is difficult because of thin and discontinuous occurrences, abundance of limestone streaks and limited bandwidth of seismic data. 3-D visualization of surfaces and volume attributes, neural network based seismic trace shape classification and spectral decomposition techniques have been applied with integration of well and log data. Amplitude attributes based on full bandwidth data were found more contaminated by thin limestone streaks. Spectral decomposition based iso-frequency sections and slices mapped areal extent and temporal thickness of pay zone. 3-D visualization of selected frequencies from instantaneous frequency volumes and seismic trace shape classification maps provided comparable image of the reservoir sands. Marine sands near shore-zone areas during continued sea level fall are envisaged depositional system for the pay sands. The sandstones are spread over 90 km2 area in isolated sand bodies.
机译:印度孟买海上盆地孟买盆地山地盆地C-37的3D数据已被评估为少妇Mahuva Pay Sands的描绘和测绘。钻探日志和地震数据的钻探分析表明,嵌入在高阻抗的低阻抗支付砂,嵌入在高阻抗中,用石灰石和/或页岩条分开。由于薄而不连续的发生,通过常规解释方法描绘这些砂岩难以造成薄而不连续,石灰石条纹和地震数据的有限带宽。 3-D表面和卷属性的可视化,基于神经网络的地震迹线形状分类和谱分解技术已经应用了井和日志数据的集成。基于完全带宽数据的幅度属性被薄石灰岩条纹更污染。基于光谱分解的ISO频截面和切片映射的面积范围和支付区的时间厚度。从瞬时频率体积和地震迹线分类的3-D可视化所选择的频率和地震迹象分类图提供了储层砂的类似图像。在持续海平面落后的岸区地区附近的海洋沙子是预留的支付沙子的沉积系统。砂岩在孤立的沙子体积超过90平方公里。

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