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Integrated Decision Based Planning with Data Centric Approach: A Novel Way for Successful Delivering of a Lean FDP for a Complex Carbonate Reservoir, North Oman

机译:基于综合决策规划,数据中心方法:成功提供瘦碳酸盐储层瘦FDP的新方法,北阿曼

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This paper expounds the value of integrated decision based planning in delivering field development plan (FDP) in a LEAN way. The basic philosophy of lean is waste minimization or elimination of nonvalue adding activities to improve efficiency, quality and lead-time. Integrated decision based planning is considered as the most pragmatic and efficient approach in integrated reservoir modelling process. Dynamic modeling is the most preferred tool assisting subsurface decisions making. Nevertheless, the data centric approach with support of scaled reservoir model has the advantage over the conventional full field physicsbased models specially, in case of a complex reservoir. Embracing the basic lean principles with focused decision based reservoir modeling strategy can establish a new level of performance within the organization in delivering FDPs. The Saih Rawl oil field (SRS) in North Oman is a thin Lower Cretaceous carbonate reservoir with post diagenetic imprint. Post oil fill structural change has resulted in re-saturation and oil trapping due to local capillary imbibitions. The complexities resulting from the tilted water contact, hysteresis in oil mobility and Sor variation with depth, pose a huge challenge in dynamic simulation. In addition, drilling feasibility for horizontal infill wells was quite challenging due to subsurface collision issues and rig footprint interference with existing surface facilities. Integrated decision based planning, linked to the subsurface and surface decisions was adopted for framing the integrated reservoir modeling (IRM) strategy. The IRM strategy with Decision Based Models (DBM), including analytical and sector simulation models, were used to understand the sweep pattern, locate the remaining oil and rank the various water-flood patterns. Data analysis including normalized decline-curve-analysis (DCA) based conduit models and comprehensive field performance analysis using Spotfire (an integrated data visualization and analysis tool by TIBCO), was used to understand the key reservoir management risks and infill potential. Throughout the process, the basic philosophy of lean was adopted embracing several lean tools to improve productivity, quality and lead-time. Out of 12 subsurface feasible options studied, the proposed optimum option envisages an increase in the oil recovery factor by 9% by drilling an additional 92 infill wells in 22 patterns. The successful completion of frontend loading phase of SRS project has achieved reducing in the FDP study time to 19 months compared to an average of 36 months in the past and project implementation 4 years ahead of the original plan. Fast tracking of the project implementation was possible due to standardization of the equipment, maximum utilization of the existing infrastructure and constructive collaboration with the stakeholders. The key enablers for the successful delivering of the SRS FDP study were mainly the integrated decision based planning with data centric approach in reservoir modeling workflow and adoption of basic lean principles This approach emphasizes the importance of adopting lean tools in frontend delivery process. The decision based planning with reservoir models linked to the project decision can significantly improve the efficiency and quality of the FDP. The stakeholder alignment and strong collaboration with key stakeholders of the project can further reduce the lead-time of project execution. The decision based IRM planning used for this study sets a benchmark for future FDP studies. The Urban Plan study approach for this project has also become the standard for other LEAN FDPs.
机译:本文阐述了基于综合决策规划的价值,以倾斜方式提供现场发展计划(FDP)。精益的基本哲学是浪费最小化或消除非价值的活动,以提高效率,质量和绳时间。基于综合决策的规划被认为是集成储层建模过程中最务实和有效的方法。动态建模是辅助地下决策的最优选工具。尽管如此,在复杂的储存器的情况下,在特殊的全场物理基础的模型上具有支持的数据中心方法的优点。拥有基于集中判定的储层建模策略的基本精益原则可以在提供FDPS的组织内建立新的性能水平。北阿曼的Saih Rawl油田(SRS)是一个薄的下白垩统碳酸盐储层,具有帖子成岩印记。产油后填充结构变化导致局部毛细管吸收引起的饱和和漏斗。由倾斜的水接触导致的复杂性,油动流动性和SOR的滞后深入,对动态模拟构成了巨大挑战。此外,由于地下碰撞问题和具有现有表面设施的钻井尺寸干扰,水平填充井的钻探可行性非常具有挑战性。采用综合决策规划,与地下和表面决策相关,用于框架集成储层建模(IRM)策略。使用基于判决的模型(DBM)的IRM策略(包括分析和扇区模拟模型)用于了解扫描图案,找到剩余的油并对各种水洪模式进行排名。数据分析包括基于归一化的拒绝曲线分析(DCA)的导管模型和使用Spotfire的综合场地性能分析(Tibco的集成数据可视化和分析工具)来了解关键的水库管理风险和填充潜力。在整个过程中,采用了采用了几种精益工具来提高生产力,质量和带来的基本哲学。在研究的12个地下可行的选择中,所提出的最佳选择通过在22种图案中钻取额外的92个填充井来设想储油因子的增加9%。成功完成SRS项目的前端加载阶段已在FDP学习时间降低到19个月,而过去36个月,项目实施前4年。由于设备的标准化,最大限度地利用现有基础设施和与利益相关者的建设性合作,可以快速跟踪项目实施。成功递送SRS FDP研究的关键推动者主要是基于综合决策规划,储层建模工作流程中的数据中心方法,采用基本精益原则,这种方法强调了采用前端交付过程中采用精益工具的重要性。与项目决策相关的储层模型的基于决策规划可以显着提高FDP的效率和质量。利益攸关方对齐和与项目关键利益相关者的强有力的合作可以进一步减少项目执行的提前期。本研究的基于决策的IRM计划为未来的FDP研究设定了基准。该项目的城市计划学习方法也成为其他贫民区FDP的标准。

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