简化CLRM在合成绿地饱和同化值研究中的应用

C. Nieto, R. Bratvold, R. Hanea, J. Rafiee
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引用次数: 0

摘要

地球物理油藏监测系统(如4D地震)在油气行业的应用越来越广泛,因为它们可以提供关于储层内流体运动的独特而有用的信息。这些信息与许多油藏管理决策相关;包括新井布置、油井干预和油藏模型更新。不幸的是,由于需要多学科方法来模拟未来测量在未来决策中所隐含的价值,因此很难估计任何数据获取方案的价值创造。这种评估需要一个通用的决策模拟框架,可以整合来自地质建模师、地球物理学家和油藏工程师的输入。这项工作提出了一个例子,说明如何将闭环油藏管理(CLRM)简化作为一个框架,在一个简单的玩具模型中模拟由于同化生产和饱和而导致的净现值变化。它将最先进的数据同化和不确定性建模方法与鲁棒优化遗传算法相结合,以计算由于模型更新而产生的NPV改进及其与从合成储层获得的NPV的关系。在这种情况下,提出了一个简单的综合模型。它用两口发现井在含水层的强烈影响下重建了一段绿地。油藏开发需要在固定的钻井时间内选择4个井位。在CLRM框架内使用遗传算法进行开发策略选择。随后介绍了两种情况:一种情况是在头两口井钻完后,在确定最后两口井的位置之前,只吸收产量;第二种情况是,生产和饱和同时被同化。假定同化的饱和度图是四维地震采集的输出。模型更新要求对最后两口井进行优化重新定位,从而导致NPV的变化。结果表明,在这两种情况下,最后两口井的重新定位如何增加所获得的npv。当产量和饱和度都被同化时,可以得到更大的增量。此外,当考虑饱和同化时,系统预报能力的提高幅度最大。综合期望净现值与第一次发展战略优化所得值同化后减小;这表明由于初始集合分布的扩展,早期的NPV估值是乐观的。该研究提出了一个资产模拟框架,可用于通过油藏不确定性的系统建模来评估数据采集投资,并以决策为导向。这可能包括纳入额外的不确定模型参数,注水器和井转换的插入,不同间隔的饱和度同化,同化的饱和度图质量的变化,以及其他经济约束的敏感性研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simplified Use of CLRM to Study Value of Saturation Assimilation on a Synthetic Green Field
Geophysical Reservoir Monitoring GRM systems such 4D seismic are increasingly used in the oil and gas industry because they provide unique and useful information on fluid movement within the reservoir. This information is relevant for many reservoir management decisions; including new well placement, well intervention, and reservoir model updating. Unfortunately, it has been difficult to estimate the value creation of any data acquisition scheme due to the fact that a multidisciplinary approach is required to model the value that future measurements will imply in future decisions. This assessment requires a common decision making simulation frame work that can integrate the input from geo-modelers, geophysicist and reservoir engineers. This work presents an example of how a Close Loop Reservoir Management (CLRM) simplification can be used as a framework for simulating NPV changes due to assimilation of production and saturations in a simple toy model. It combines state-of-the-art data assimilation and uncertainty modeling methods with a robust optimization genetic algorithm to calculate NPV improvements due to model update and its relationship with the NPV obtained from the synthetic reservoir. In this context a simple synthetic model is presented. It recreates a segment of green field under a strong aquifer influence with two discovery wells. The reservoir development requires the selection of 4 well locations at fixed drilling times. The development strategy selection is obtained with the use of a genetic algorithm within the CLRM framework. Subsequently two cases are presented: one of assimilating only production after the first two wells have been drilled, just before deciding the locations of the last two wells; and a second case, in which production and saturation are assimilated at the same time. The saturation map assimilated is assumed to be output of a 4D seismic acquisition. The model update imposes the need of optimally relocate the last two wells which results in a NPV change. The results show how the obtained NPVs is incremented by the relocation of the last two wells in both cases. A bigger increment is obtained when both, production and saturation are assimilated. In addition, the ensemble improved its forecast capability the most, when saturation assimilation is included. Nevertheless, the ensemble expected NPV decreases after assimilation from the value obtained from the first development strategy optimization; this indicates an optimistic early NPV valuation due to the initial ensemble distributions spread. The study presents an asset simulation framework that could be used to evaluate data acquisition investments through the systematic modeling of reservoir uncertainties with in a decision oriented focus. This could include the inclusion of additional uncertain model parameters, the insertion of water injector and well conversions, the assimilation of saturations at different intervals, the change on the quality of the saturation maps assimilated, in addition to sensitivity studies of other economic constrains.
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