展示基于组合的综合建模的灵活性和成本效益——以三个油藏为例

Abdul Saboor Khan, Salah Alqallabi, A. Phade, A. Skorstad, F. Al-Jenaibi, Mohamed Tarik Gacem, Mustapha Adli, Sheharyar Mansur, Lyes Malla
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引用次数: 0

摘要

本研究的目的是证明基于综合井系建模方法对不同复杂程度的多个油藏的价值。研究人员选择了三种不同的碳酸盐岩储层,这些储层面临着不同的挑战,以展示该方法对地下团队的灵活性。建模的不确定性包括静态和动态两个领域,并在较短的油藏建模周期内获得有价值的见解。在多学科团队的指导下,建立了集成的工作流程,将推荐的静态和动态建模过程并行地结合起来,以克服单个油藏的建模挑战。在考虑不确定性时,考虑了层间通信、挡板的存在、高渗透率条纹、邻近油田的通信、含水饱和度建模的不确定性、具有滞后的相对渗透率、流体接触深度偏移等挑战。所有沉积学、结构和动态储层参数的不确定性都是通过地下团队之间的共同对话和合作来确定的,以确保建模的最佳实践得到遵守。相模型采用自适应多高斯模拟,不确定性在地质上合理的组合的动态响应中传播。然后,使用基于集成的调节工具同时对这些等概率模型进行历史匹配,以在指定公差范围内匹配现有的观察到的现场生产数据;每个储层的井数、网格数量和生产历史都不同。与传统方法相比,该方法大大缩短了建模周期,不考虑储层的固有复杂性,同时提供更好的历史匹配模型,尊重地质和输入数据的相关性。根据建模目标,这些模型仅使用足够的细节级别创建,从而留下更多时间从模型集合中提取见解。来自不同领域的数据中的不确定性不是孤立的,而是传播到整个领域,因为这些不确定性可能在另一个领域或在总响应不确定性中发挥重要作用。同样,该方法鼓励油藏建模方面的合作努力,并促进地球科学家和工程师之间的信任,确保模型在所有地下域保持一致。它允许灵活地结合适合单个储层的建模实践。此外,对历史匹配整体的分析显示了对储层的更多见解,例如高渗透条纹和挡板等特征的位置和可能范围,这些特征在最初的过程中没有明确建模。预测策略进一步在这些等概率模型的集合上运行,捕捉动态响应中的现实不确定性,有助于做出明智的油藏管理决策。该方法成功地应用于三种不同复杂程度的油藏实例。从模型构建到决策制定的快速跟踪过程使所有相关领域的快速洞察成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Demonstrating Flexibility and Cost-Efficiency of Integrated Ensemble-Based Modeling – One Approach on Three Reservoirs
The aim of this study is to demonstrate the value of an integrated ensemble-based modeling approach for multiple reservoirs of varying complexity. Three different carbonate reservoirs are selected with varying challenges to showcase the flexibility of the approach to subsurface teams. Modeling uncertainties are included in both static and dynamic domains and valuable insights are attained in a short reservoir modeling cycle time. Integrated workflows are established with guidance from multi-disciplinary teams to incorporate recommended static and dynamic modeling processes in parallel to overcome the modeling challenges of the individual reservoirs. Challenges such as zonal communication, presence of baffles, high permeability streaks, communication from neighboring fields, water saturation modeling uncertainties, relative permeability with hysteresis, fluid contact depth shift etc. are considered when accounting for uncertainties. All the uncertainties in sedimentology, structure and dynamic reservoir parameters are set through common dialogue and collaboration between subsurface teams to ensure that modeling best practices are adhered to. Adaptive pluri-Gaussian simulation is used for facies modeling and uncertainties are propagated in the dynamic response of the geologically plausible ensembles. These equiprobable models are then history-matched simultaneously using an ensemble-based conditioning tool to match the available observed field production data within a specified tolerance; with each reservoir ranging in number of wells, number of grid cells and production history. This approach results in a significantly reduced modeling cycle time compared to the traditional approach, regardless of the inherent complexity of the reservoir, while giving better history-matched models that are honoring the geology and correlations in input data. These models are created with only enough detail level as per the modeling objectives, leaving more time to extract insights from the ensemble of models. Uncertainties in data, from various domains, are not isolated there, but rather propagated throughout, as these might have an important role in another domain, or in the total response uncertainty. Similarly, the approach encourages a collaborative effort in reservoir modeling and fosters trust between geo-scientists and engineers, ascertaining that models remain consistent across all subsurface domains. It allows for the flexibility to incorporate modeling practices fit for individual reservoirs. Moreover, analysis of the history-matched ensemble shows added insights to the reservoirs such as the location and possible extent of features like high permeability streaks and baffles that are not explicitly modeled in the process initially. Forecast strategies further run on these ensembles of equiprobable models, capture realistic uncertainties in dynamic responses which can help make informed reservoir management decisions. The integrated ensemble-based modeling approach is successfully applied on three different reservoir cases, with different levels of complexity. The fast-tracked process from model building to decision making enabled rapid insights for all domains involved.
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