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A stochastic learning-from-data approach to the history-matching problem

机译:历史匹配问题的随机学习从数据方法

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History matching is the process whereby the values of uncertain attributes of a reservoir model are changed with the purpose of finding models that match existing reservoir production data. As an inverse and ill-posed problem in engineering, it admits multiple solutions and plays a key role in reservoir management tasks: reservoir models support important and strategic field development decisions and, the more calibrated the models, the higher the confidence on their forecast for the actual reservoir's performance. In this work, we introduce a stochastic learning-from-data approach to the history-matching problem. With a data-driven nature, the proposed algorithm has dedicated components to handle petrophysical and global uncertain attributes, and generates new solutions using the patterns of attributes present in solutions that are judiciously selected among a set of solutions for each well and variable involved in the history-matching process. We apply our approach to the UNISIM-I-H benchmark, a challenging synthetic case based on the Namorado Field, Campos Basin, Brazil. The results indicate the potential of our learning proposal towards generating multiple solutions that not only match the history data but, most importantly, offer acceptable performance while forecasting field production. Compared with history-matching methodologies previously applied to the same benchmark, our approach produces competitive results in terms of matching quality and forecast capacity, using substantially fewer simulations.
机译:历史匹配是储层模型的不确定属性的值的过程,目的是找到与现有储层生产数据匹配的模型。作为工程中的反向和不良问题,它承认多个解决方案并在水库管理任务中发挥关键作用:水库模型支持重要和战略性领域的开发决策,较为校准的模型,对其预测的信心越高实际水库的表现。在这项工作中,我们介绍了历史匹配问题的随机学习从数据方法。利用数据驱动性质,所提出的算法具有专用组件来处理汽水物理和全局不确定属性,并使用在涉及的每个井和可变的一组解决方案中明智地选择的解决方案中存在的属性模式来生成新的解决方案历史匹配过程。我们将我们的方法应用于Unisim-i-H基准,这是一个基于Namorado领域的挑战性综合性案例,巴西坎多多园林。结果表明,我们的学习建议对产生多种解决方案的潜力,不仅与历史数据相匹配,而且最重要的是,在预测现场生产的同时提供可接受的性能。与以前应用于相同基准的历史匹配方法相比,我们的方法在匹配质量和预测能力方面产生竞争力,使用大幅较少的模拟。

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