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Closed-loop field development with multipoint geostatistics and statistical performance assessment

机译:具有多点地统计学和统计性能评估的闭环现场开发

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摘要

Closed-loop field development (CLFD) optimization is a comprehensive framework for optimal development of subsurface resources. CLFD involves three major steps: 1) optimization of full development plan based on current set of models, 2) drilling new wells and collecting new spatial and temporal (production) data, 3) model calibration based on all data. This process is repeated until the optimal number of wells is drilled. This work introduces a new CLFD implementation for complex systems described by multipoint geostatistics (MPS). Model calibration is accomplished in two steps: conditioning to spatial data by a geostatistical simulation method, and conditioning to production data by optimization-based PCA. A statistical procedure (TruMAP) is presented to assess the performance of CLFD. For performance assessment by TruMAP, the methodology is applied to an oil reservoir example for 25 different true-model cases. Application of a single-step of CLFD, improved the true NPV in 64%-80% of cases. The full CLFD procedure (with three steps) improved the true NPV in 96% of cases, with an average improvement of 37%. These results indicate that probability of improving true NPV increases with closed-loop step. This massive computational experiment involved about 9.5 million reservoir simulation runs that took about 320,000 CPU hours. (C) 2019 Elsevier Inc. All rights reserved.
机译:闭环现场开发(CLFD)优化是最佳开发地下资源的全面框架。 CLFD涉及三个主要步骤:1)基于当前模型集的全开发计划优化,2)基于所有数据钻探新井和收集新的空间和时间(生产)数据,3)模型校准。重复该过程,直到钻出最佳井数。这项工作引入了多点地统计数据(MPS)描述的复杂系统的新CLFD实现。模型校准分两步完成:通过地质统计模拟方法调节空间数据,并通过基于优化的PCA调节到生产数据。提出了统计程序(Trumap)以评估CLFD的表现。对于Trumap的性能评估,该方法适用于储油液示例,适用于25种不同的真实模型案例。在64%-80%的情况下,在64%-80%的情况下施加一步的CLFD。完整的CLFD程序(具有三个步骤)在96%的病例中提高了真实的NPV,平均提高了37%。这些结果表明,通过闭环步骤改善真正的NPV的概率增加。这种大规模的计算实验涉及大约950万的水库模拟运行,占320,000点CPU小时。 (c)2019 Elsevier Inc.保留所有权利。

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