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首页> 外文期刊>Neural computing & applications >An AI-based workflow for estimating shale barrier configurations from SAGD production histories
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An AI-based workflow for estimating shale barrier configurations from SAGD production histories

机译:一种基于AI的工作流程,用于估算SAGD生产历史的Shale屏障配置

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摘要

An artificial intelligence (AI)-based workflow is deployed to develop and test procedures for estimating shale barrier configurations from SAGD production profiles. The data employed in this project are derived from a set of synthetic SAGD reservoir simulations based on petrophysical properties and operational constraints representative of Athabasca oil sands reservoirs. Initially, a two-dimensional reservoir simulation model is employed. The underlying model is homogeneous. Its petrophysical properties, such as the porosity, permeability, initial oil saturation and net pay thickness, have been taken from average values for several pads in Suncor's Firebag project. Reservoir heterogeneities are simulated by superimposing sets of idealized shale barrier configurations on the homogeneous model. The location and geometry of each shale barrier is parameterized by a unique set of indices. The resulting heterogeneous model is subjected to flow simulation to simulate SAGD production. Next, a two-step workflow is followed: (1) a network model based on AI tools is constructed to match the output of the reservoir simulation (shale indices are inputs, while production rate is the output) for a known training set of shale barrier configurations; (2) for a new SAGD production history generated via reservoir simulation with a shale barrier configuration that is unknown to the AI model generated in Step 1, an optimization scheme based on a genetic algorithm approach is adopted to perturb the shale indices until the difference between the target production history and the production history predicted from the AI model is minimized. A number of cases have been tested. The results show a good agreement between the shale barrier configurations predicted by the AI model with the configurations used to generate production histories in the reservoir simulation model (i.e., the "true" model). Thus, this optimization workflow offers potential to become an alternative tool for indirect inference of the uncertain distribution of shale barriers in SAGD reservoirs from data capturing field performance. This work highlights the potential of an AI-based workflow to infer the presence and distribution of heterogeneous shale barriers from field SAGD production time series data. It presents an innovative parameterization scheme suitable for representing heterogeneous characteristics of shale barriers. If this approach proves to be successful, it could allow the distribution of shale barriers to be inferred together with the impact of these barriers on SAGD performance. This would provide a basis for developing operating strategies to reduce the impact of the barriers.
机译:部署了人工智能(AI)的工作流程,以开发和测试程序,用于从SAGD生产简介中估算页岩屏障配置。该项目中所采用的数据来自基于岩石物理特性的一组合成的SAGD储层模拟,以及代表Athabasca油砂储层的运营限制。最初,采用了二维储层模拟模型。底层模型是均匀的。它的岩石物理学属性,例如孔隙率,渗透性,初始油饱和度和净支付厚度,已经取自Suncor Firebag项目的几个垫的平均值。通过叠加在均匀模型上的理想化页面屏障配置的叠加储层异质性。每个页面屏障的位置和几何形状由一组独特的指数参数化。对所得的异质模型进行流量模拟以模拟SAGD生产。接下来,遵循两步工作流程:(1)构建基于AI工具的网络模型以匹配储库仿真的输出(页岩指数是输入的,而生产率是输出的,用于页岩的已知训练集屏障配置; (2)对于通过储库模拟产生的新的SAGD生产历史,通过步骤1中生成的AI模型未知的页岩屏障配置,采用基于遗传算法方法的优化方案来扰乱页岩索引,直到之间的差异从AI模型预测的目标生产历史和生产历史被最小化。已经测试了许多情况。结果显示了通过用于在储层模拟模型中生成生产历史的配置(即,“真实”模型中的生产历史来预测的SALE屏障配置之间的良好一致性。因此,这种优化工作流程提供了可能成为从数据捕获场性能的SAGD储存器中的页岩屏障不确定推断的替代工具。这项工作突出了基于AI的工作流程的潜力,以推断出来自场SAGD生产时间序列数据的异构页岩屏障的存在和分布。它提出了一种创新的参数化方案,适用于代表页岩屏障的异构特征。如果这种方法证明是成功的,它可以允许将页岩屏障分配在一起与这些障碍对SAGD性能的影响。这将为制定经营策略来提供减少障碍的影响的基础。

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