Porosity Prediction of a Carbonate Reservoir in Campos Basin Based on the Integration of Seismic Attributes and Well Log Data

Roberta Tomi Mori, E. Leite
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引用次数: 2

Abstract

We have calculated and interpreted a 3D porosity model of a reservoir through the integration of 3D seismic data with geophysical well logs using an artificial neural network (ANN). The reservoir is composed of Albian carbonates. In the first main stage of the study, horizons were traced by following continuous seismic events on seismic sections, along depths between top and base of the reservoir. In the second main stage, predictions of reservoir porosity values were obtained, as well as a 3D model, through the designed ANN. The estimated porosity values range from 5 to 30%. The correlation coefficient and the error of the estimated values with respect to the actual values extracted along the wells are equal to 0.90 and 2.86%, respectively. Porosity values increase from southwest to the northeast portion, and lower values are found at depths related to the traced horizons. Although isolated peaks of maximum porosity are observed, spatial patterns depicted in the model are associated with geological features such as different porosity types and cementation degree.
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基于地震属性和测井数据的Campos盆地碳酸盐岩储层孔隙度预测
利用人工神经网络(ANN)将三维地震数据与地球物理测井数据相结合,计算并解释了某油藏的三维孔隙度模型。储层由阿尔比系碳酸盐岩组成。在研究的第一个主要阶段,通过沿着储层顶部和底部之间的深度跟踪地震剖面上的连续地震事件来追踪层位。在第二阶段,通过设计的人工神经网络获得储层孔隙度的预测值,并建立三维模型。孔隙度估算值在5% ~ 30%之间。估计值与沿井实际提取值的相关系数和误差分别为0.90和2.86%。孔隙度值由西南向东北增大,与所示层位相关的深度孔隙度值较低。虽然观察到最大孔隙度的孤立峰,但模型中描述的空间模式与不同的孔隙度类型和胶结程度等地质特征有关。
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