A Multidisciplinary Approach to Production Optimization through Hydraulic Fracturing Stimulation and Geomechanical Modelling in Clair Field

L. Dumitrache, Alistair Roy, Anastasia Bird, B. Goktas, C. Sorgi, Reginald Stanley, V. De Gennaro, E. Eswein, J. Abbott
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Abstract

The integration of data and discipline specific knowledge is a common challenge when attempting to optimize or accelerate an asset's recovery through hydraulic fracture stimulations. Any potential omission of data or understanding will increase uncertainty and a project's chance of failure. Therefore, when looking to optimize the production of a given asset, it is key to take a holistic approach that breaks down any technical and organisational barriers. This project couples the output of the different subsurface and stimulation disciplines to reduce the uncertainty associated with the production forecast of planned stimulation designs. The following paper presents the integrated approach for the Graben sector of UK's North Sea Clair oil field, largest oil field currently in Europe. Geophysicists, petrophysicists, and geologists generate a static model which is calibrated and validated by reservoir engineers through dynamic reservoir simulation. This model is used to identify the optimum exploitation scenario for a hydrocarbon reservoir and is assessed by the geomechanics engineer to deduce the subsurface stresses and strains to create a 3D mechanical earth model. The multidisciplinary validated representation is handed over to the stimulation engineer to implement various treatments, either performed or to be performed. Once these treatments are designed, the reservoir engineer produces a production forecast which is then fed back to all team members involved in the process, enabling an optimization loop. Considering that this is a multi-well (producers and injector) study, any inference is reflected by the analysis and the optimum hydraulic fracture design is chosen for implementation by an offshore stimulation vessel. Traditionally, for forecasting purposes, hydraulic fractures can be implemented using conventional reservoir simulation; however, these are very much approximated models of what the stimulation engineers are designing and implementing. Often, the reservoir, production, stimulation engineers can come up with individual forecasts that are obtained independently and omit basic information. A typical example is the way stresses might change due to stimulation and production and the possibility to account for them in an integrated way. The proposed workflow eliminates these shortcomings, and the asset team delivers a single forecast of the exact fracture design considering a fully consistent model of the subsurface, which is to be implemented by the stimulation vessel for the different wells.
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基于水力压裂增产和地质力学建模的Clair油田多学科增产方法
当试图通过水力压裂增产来优化或加速资产采收率时,数据和专业知识的整合是一个常见的挑战。任何潜在的数据或理解的遗漏都会增加不确定性和项目失败的机会。因此,当寻求优化给定资产的生产时,关键是采取一种打破任何技术和组织障碍的整体方法。该项目结合了不同地下和增产学科的产量,以减少计划增产设计产量预测的不确定性。本文介绍了目前欧洲最大的油田英国北海克莱尔油田地堑段的综合方法。地球物理学家、岩石物理学家和地质学家生成静态模型,由油藏工程师通过动态油藏模拟进行校准和验证。该模型用于确定油气储层的最佳开采方案,并由地质力学工程师进行评估,以推断地下应力和应变,从而创建三维力学地球模型。经过多学科验证的表征被移交给增产工程师,以实施各种已经实施或即将实施的处理措施。一旦设计出这些处理措施,油藏工程师就会进行产量预测,然后将预测结果反馈给参与该过程的所有团队成员,从而实现优化循环。考虑到这是一项多井(生产井和注入井)研究,任何推断都将通过分析反映出来,并选择最佳水力压裂设计,由海上增产船实施。传统上,为了预测裂缝,可以使用常规油藏模拟来实现水力裂缝;然而,这些只是增产工程师正在设计和实施的非常近似的模型。通常情况下,油藏、生产和增产工程师可以独立得出单独的预测结果,而忽略了基本信息。一个典型的例子是压力可能会因增产和生产而变化,并可能以综合的方式来解释它们。所提出的工作流程消除了这些缺点,并且资产团队在考虑到完全一致的地下模型的情况下,提供了准确的裂缝设计的单一预测,该预测将由不同井的增产船实施。
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