最佳油田开发规划的综合自适应预测框架

A. Salehi, Gill Hetz, Feyisayo Olalotiti, N. Sorek, H. Darabi, D. Castineira
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引用次数: 6

摘要

油气田智能油藏管理的一个重要方面是识别和预测剩余的、可行的、可操作的油田开发机会(fdo)。在目前的工作中,我们引入了一种基于全物理模拟的自适应预测框架,该框架应用了一系列尖端技术,为油田和井级性能提供短期和长期预测。我们的工作流程可以应用于全面的机会清单,包括管后再完井、填充钻井和侧钻机会。在我们的方法中,我们从模型降阶技术开始,该技术涉及到在给定地质模型中存在的冗余的简约消除。这涉及一种自适应模型升级策略,该策略通过局部改变模型网格分辨率来保留关键地质特征附近的精细细节。使用基于流线的流量指标进行验证的简化模型被传递到自动化灵敏度研究和模型校准引擎中,以有效地协调现场观察到的生产趋势。在这里,我们应用了最近提出的集成平滑鲁棒Levenberg- Marquardt (ES-rLM)方法来生成复制储层能量的可信模型实现。在基于灵敏度的局部反演步骤中,进一步改进了代表性模型,以匹配井级多相生产数据。采用一种替代流线的方法,该方法符合一般的非结构化网格格式,可在局部反演模块中直接计算底层网格上的生产数据敏感性。最后,校准后的模型直接传递给优化和预测引擎,以评估和优化油田机会和开发方案。该框架已成功地应用于中东、北美和南美的几个大型成熟资产。本文介绍了拉丁美洲一个大型油藏的案例研究,初步确定了数百个油田的开发机会。然后,我们将预测框架应用于各种场景,包括提供最佳油田开发计划的所有机会。我们提出了一个系统的工作流现场规模建模和优化使用自适应框架。我们的方法促进了一个灵活的框架,以快速产生可靠的预测,并以稳健的方式量化相关的不确定性。这种灵活性和鲁棒性的优势与我们快速和自动化的两阶段模型校准模块相关联,从而大大节省了计算时间。通过改进对断层连通性、渗透率分布、流体饱和度演化和波及体积的估计,使其成为量化不确定性的有效方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comprehensive Adaptive Forecasting Framework for Optimum Field Development Planning
An integral aspect of smart reservoir management of oil and gas fields is the process of identifying and performance forecasting of the remaining, feasible, and actionable field development opportunities (FDOs). In the present work, we introduce an adaptive full-physics simulation-based forecasting framework that applies a series of cutting-edge technologies to provide short- and long-term forecasts for both field- and well-level performance. Our workflow can be applied to a comprehensive opportunities inventory including behind-pipe recompletion, infill drilling, and sidetrack opportunities. In our approach, we begin with a model order reduction technique, which involves a parsimonious elimination of redundancies existing in a given geologic model. This involves an adaptive model upscaling strategy that retains fine details in the vicinity of critical geological features by locally varying the resulting model grid resolution. Reduced models, which are validated using streamline-based flow metrics, are passed into an automated sensitivity study and model calibration engine for efficient reconciliation of observed production trends in the field. Here, we apply a recently proposed Ensemble Smoother robust Levenberg- Marquardt (ES-rLM) method to generate plausible model realizations that replicate the reservoir energy. Representative models are further improved in a sensitivity-based local inversion step to match multiphase production data at the well level. An approach alternative to streamlines, which is compliant with a general unstructured grid format, is utilized to directly compute production data sensitivities on the underlying grid in the local inversion module. Finally, calibrated models are directly passed to the optimization and forecasting engine to assess and optimize field opportunities and development scenarios. This framework has been successfully applied to several giant mature assets in the Middle East, North America, and South America. A case study for one of the giant reservoirs in Latin America is presented where hundreds of field development opportunities are initially identified. We then apply our forecasting framework to the various scenarios including all opportunities to deliver the optimum field development plan. We propose a systematic workflow for field-scale modeling and optimization using an adaptive framework. Our approach facilitates a flexible framework to rapidly generate reliable forecasts and quantify associated uncertainties in a robust manner. This advantage in flexibility and robustness is tied to our fast and automated two-stage model calibration module that leads to substantial savings in computational time. This makes it an efficient method for quantifying the uncertainty as demonstrated through improved estimation of the faults’ connectivity, permeability distribution, fluid saturation evolution, and swept volume.
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