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A continuous learning algorithm for history matching

机译:用于历史匹配的连续学习算法

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摘要

History matching is a classical petroleum reservoir engineering data assimilation process whereby a reservoir model is calibrated to reproduce the behavior of a real reservoir yielding more reliable models for reservoir management, reservoir performance forecast and field development decisions. In this paper, we introduce a continuous learning-from-data algorithm for history-matching problems that generates solutions using the patterns of input attributes identified in the k-best solutions for each variable involved in the process. The proposed algorithm consists of a two-staged optimization strategy, in which each stage handles different types of reservoir uncertain attributes. The proposed learning approach continuously evaluates the data of all-available models and supports the strategic choice of input patterns that can be used in the generation of different and eventually better history-matched models. We apply the proposed algorithm to the UNISIM-I-H benchmark case, a complex synthetic reservoir model based on Namorado field, Campos basin, Brazil. The results outperform the ones from related work for the same benchmark, indicating the efficiency and effectiveness of the proposed strategy towards improving the history-matching quality of an initial set of solutions, with a lower simulation footprint.
机译:历史匹配是经典的石油储层工程数据同化过程,其中,对储层模型进行了校准以重现真实储层的行为,从而为储层管理,储层性能预测和油田开发决策提供了更可靠的模型。在本文中,我们介绍了一种用于历史匹配问题的连续数据学习算法,该算法使用k个最佳解决方案中确定的输入属性的模式来生成解决方案,以解决此过程中涉及的每个变量。所提出的算法包括两阶段的优化策略,其中每个阶段处理不同类型的储层不确定性属性。所提出的学习方法会不断评估所有可用模型的数据,并支持对输入模式的战略选择,这些输入模式可用于生成不同的,最终更好的历史匹配模型。我们将提出的算法应用于UNISIM-I-H基准案例,该案例是基于巴西坎波斯盆地Namorado油田的复杂综合储层模型。结果优于相同基准测试的相关结果,表明所提出的策略以较低的模拟足迹提高初始解决方案的历史记录匹配质量的效率和有效性。

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