Marcus Vinicius Rodrigues Maas, Heather Bedle, Mario Ricardo Ballinas, Marcilio Castro de Matos
{"title":"揭示地震多属性、油井动态数据与巴西盐前碳酸盐岩储层生产力之间的隐含关系:浅层与深层机器学习方法。","authors":"Marcus Vinicius Rodrigues Maas, Heather Bedle, Mario Ricardo Ballinas, Marcilio Castro de Matos","doi":"10.1190/int-2023-0113.1","DOIUrl":null,"url":null,"abstract":"During the initial phases of an EP project, the most reliable data on the reservoirs deliverability are acquired via drill stem tests (DST), which provide productivity per flow units, whenever production logging tool (PLT) data are available. However, DSTs are restricted to a few kilometers, whereas seismic data cover large areas. The integration of these data has been challenging, particularly due to the difference in scale between them. So, a new workflow to determine the relationship between post-stack seismic attributes and reservoir productivity using classic supervised (shallow) and deep learning regression algorithms was proposed. The DST parameters were predicted over the entire seismic cube, which can be extremely valuable for the decision-making process. The dataset is from the Brazilian deep water pre-salt carbonate reservoirs of the Mero Field, which is a well explored area with a plethora of test and production data. It is adjacent to an underexplored area (Central Libra appraisal plan), which is covered by the same seismic survey. Thus, any relationships between seismic attributes and well productivity data observed at the Mero field are extrapolated to the adjacent underexplored area. Ten seismic attributes and DST data from ten wells of Mero Field were used to train shallow and deep learning supervised regression algorithms for the prediction of flow capacity and productivity index seismic cubes. Twenty development wells (blind tests) were employed for the assessment of our predictive models. The highest percentage of correct predictions at the blind test wells (85%) was obtained with random forest regression using six attributes derived from a spectrally balanced full-stack volume, neither AVO nor inversion data were needed. Deep learning provided lower performance (75%) at a higher computational cost. 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引用次数: 0
摘要
在 EP 项目的初始阶段,只要有生产测井仪器(PLT)数据,就可以通过钻杆测试(DST)获得有关储层可开采性的最可靠数据。然而,钻杆测试的范围仅限于几公里,而地震数据则覆盖大片区域。这些数据的整合具有挑战性,特别是由于它们之间的规模差异。因此,我们提出了一种新的工作流程,利用经典的监督(浅层)和深度学习回归算法来确定叠后地震属性与储层产能之间的关系。对整个地震立方体的 DST 参数进行了预测,这对决策过程极具价值。数据集来自巴西 Mero 油田的深水前盐碳酸盐岩储层,这是一个勘探良好的地区,有大量的测试和生产数据。它毗邻一个勘探不足的地区(Central Libra 评估计划),该地区也在同一地震勘探范围内。因此,在梅罗油田观察到的地震属性和油井生产数据之间的任何关系都可以推断到邻近的未充分勘探区。梅罗油田的十个地震属性和十口井的 DST 数据被用于训练浅层和深度学习监督回归算法,以预测流动能力和产能指数地震立方体。采用 20 口开发井(盲测)对我们的预测模型进行评估。在盲测井中,采用随机森林回归法预测的正确率最高(85%),该方法使用了从频谱平衡的全叠层卷中提取的六个属性,既不需要 AVO 数据,也不需要反演数据。深度学习的性能较低(75%),但计算成本较高。它展示了一种新的储层去风险工具,可用于同一地震勘探覆盖区域的项目优化。
Unraveling hidden relationships between seismic multi-attributes, well dynamic data, and Brazilian pre-salt carbonate reservoirs productivity: a shallow versus deep machine learning approach.
During the initial phases of an EP project, the most reliable data on the reservoirs deliverability are acquired via drill stem tests (DST), which provide productivity per flow units, whenever production logging tool (PLT) data are available. However, DSTs are restricted to a few kilometers, whereas seismic data cover large areas. The integration of these data has been challenging, particularly due to the difference in scale between them. So, a new workflow to determine the relationship between post-stack seismic attributes and reservoir productivity using classic supervised (shallow) and deep learning regression algorithms was proposed. The DST parameters were predicted over the entire seismic cube, which can be extremely valuable for the decision-making process. The dataset is from the Brazilian deep water pre-salt carbonate reservoirs of the Mero Field, which is a well explored area with a plethora of test and production data. It is adjacent to an underexplored area (Central Libra appraisal plan), which is covered by the same seismic survey. Thus, any relationships between seismic attributes and well productivity data observed at the Mero field are extrapolated to the adjacent underexplored area. Ten seismic attributes and DST data from ten wells of Mero Field were used to train shallow and deep learning supervised regression algorithms for the prediction of flow capacity and productivity index seismic cubes. Twenty development wells (blind tests) were employed for the assessment of our predictive models. The highest percentage of correct predictions at the blind test wells (85%) was obtained with random forest regression using six attributes derived from a spectrally balanced full-stack volume, neither AVO nor inversion data were needed. Deep learning provided lower performance (75%) at a higher computational cost. It demonstrated a new reservoir de-risking tool that can be used for project optimization in areas covered by the same seismic survey.