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首页> 外文期刊>Journal of Petroleum Science & Engineering >History matching and production optimization under uncertainties Application of closed-loop reservoir management
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History matching and production optimization under uncertainties Application of closed-loop reservoir management

机译:闭环水库管理不确定性应用下的历史匹配与生产优化

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摘要

There is an intensive investigation reported in the literature regarding the development of robust methods to improve the economical performance during the production management of petroleum fields. One paradigm that emerged in the last decade and has been calling the attention of various research groups is known as closed-loop reservoir management. The closed-loop entails the application of history matching and production optimization in a near-continuous feedback process. This work presents a closed-loop workflow constructed with ensemble-based methods. The proposed workflow consists of three components: history matching, model selection and production optimization. For history matching, we use the method known as ensemble smoother with multiple data assimilation. For model selection, we propose a procedure grounded on the calculation of distances defined in a metric space and a minimization procedure to determine the optimal set of representative models. For production optimization, we use the ensemble-based optimization method. We investigate the performance of each method separately before testing the complete closed-loop in a benchmark problem based on Namorado field in Campos Basis, Brazil. The results showed the effectiveness of the proposed methods to form a robust closed-loop workflow.
机译:有关在石油领域生产管理期间提高经济性能的强劲方法,有一项集约化调查。在过去十年中出现的一个范式并呼吁各种研究组的注意被称为闭环水库管理。闭环需要在近连续反馈过程中应用历史匹配和生产优化。此工作介绍了基于集合的方法构造的闭环工作流程。所提出的工作流包括三个组件:历史匹配,模型选择和生产优化。对于历史匹配,我们使用具有多个数据同化的集合更顺畅的方法。对于模型选择,我们提出了一种在度量空间中定义的距离计算的过程以及最小化过程以确定最佳的代表模型。对于生产优化,我们使用基于集合的优化方法。我们在基于Campos基于Namorado字段的基准问题中测试完整的闭环之前,我们分别调查了每个方法的性能。结果表明,所提出的方法的有效性形成强大的闭环工作流程。

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