基于大数据分析的流相砂体连通性预测方法研究--以渤海某油田为例

Cai Li, Fei Ma, Yuxiu Wang, Delong Zhang
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摘要

砂体连通性是渤海 A 油田勘探有效性的关键制约因素。传统的连通性研究通常采用地震属性融合等方法,而该地区连片复合砂体的发育使得用常规地震属性表征连通性变化具有挑战性。针对渤海A油田的上述问题,本研究提出了一种基于深林算法的大数据分析方法来预测砂体连通性。首先,通过整理研究区丰富的勘探开发沙体数据,筛选出具有可靠连通性的典型沙体。然后,提取敏感地震属性,获得训练样本。最后,基于深林算法,通过机器学习建立属性组合与沙体连通性之间的映射模型。该方法首次实现了对渤海油田连续复合砂体连通性的定量判定。与传统的高分辨率处理、地震属性分析等连通性判别方法相比,该方法在机器学习过程中能够结合研究区的沙体特征,综合多种地震属性共同判断连通性。研究结果表明,该方法在预测连续复合砂体连通性方面具有较高的准确性和时效性。应用于渤海A油田,成功识别了多个砂体的连通性关系,为后续的勘探潜力评估和井位优化提供了有力支持。该方法也为研究类似复杂地质条件下的砂体连通性提供了新的思路和方法。
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Research on the prediction method for fluvial-phase sandbody connectivity based on big data analysis--a case study of Bohai a oilfield
The connectivity of sandbodies is a key constraint to the exploration effectiveness of Bohai A Oilfield. Conventional connectivity studies often use methods such as seismic attribute fusion, while the development of contiguous composite sandbodies in this area makes it challenging to characterize connectivity changes with conventional seismic attributes. Aiming at the above problem in the Bohai A Oilfield, this study proposes a big data analysis method based on the Deep Forest algorithm to predict the sandbody connectivity. Firstly, by compiling the abundant exploration and development sandbodies data in the study area, typical sandbodies with reliable connectivity were selected. Then, sensitive seismic attribute were extracted to obtain training samples. Finally, based on the Deep Forest algorithm, mapping model between attribute combinations and sandbody connectivity was established through machine learning. This method achieves the first quantitative determination of the connectivity for continuous composite sandbodies in the Bohai Oilfield. Compared with conventional connectivity discrimination methods such as high-resolution processing and seismic attribute analysis, this method can combine the sandbody characteristics of the study area in the process of machine learning, and jointly judge connectivity by combining multiple seismic attributes. The study results show that this method has high accuracy and timeliness in predicting connectivity for continuous composite sandbodies. Applied to the Bohai A Oilfield, it successfully identified multiple sandbody connectivity relationships and provided strong support for the subsequent exploration potential assessment and well placement optimization. This method also provides a new idea and method for studying sandbody connectivity under similar complex geological conditions.
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