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Correlation-Based Adaptive Localization for Ensemble-Based History Matching: Applied to the Norne Field Case Study

机译:基于集合的历史匹配的基于相关性的自适应定位:应用于Norne Field Case研究

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Ensemble-based methods are among the state-of-the-art history matching algorithms. In practice, they often suffer from ensemble collapse, a phenomenon that deteriorates history matching performance. To prevent ensemble collapse, it is customary to equip an ensemble history matching algorithm with a certain localization scheme. Conventional localization methods use distances between physical locations of model variables and observations to modify the degree of observations' influence on model updates. Distance- based localization methods work well in many problems, but they also suffer from some long-standing issues, including, for instance, the dependence on the presence of physical locations of both model variables and observations, the challenges in dealing with nonlocal and time-lapse observations, and the non- adaptivity to handle different types of model variables. To enhance the applicability of localization to various history matching problems, we propose to adopt an adaptive localization scheme that exploits the correlations between model variables and observations for localization. We elaborate how correlation-based adaptive localization can mitigate or overcome the noticed issues arising in conventional distance-based localization. To demonstrate the efficacy of correlation-based adaptive localization, we apply it to history-match the real production data of the full Norne field model using an iterative ensemble smoother (iES), and compare the history matching results to those obtained by using the same iES but with distance-based localization. Our study indicates that, in comparison to distance-based localization, correlation- based localization not only achieves close or better performance in terms of data mismatch, but also is more convenient to implement and use in practical history matching problems. As a result, the proposed correlation-based localization scheme may serve as a viable alternative to conventional distance-based localization.
机译:基于集合的方法是最先进的历史匹配算法。在实践中,他们经常遭受集合崩溃,这是一种恶化历史匹配性能的现象。为防止集合崩溃,它习惯于装备具有特定定位方案的集合历史匹配算法。传统的本地化方法在模型变量的物理位置之间使用距离和观察来修改观察程度对模型更新的影响。基于距离的本地化方法在许多问题中运作良好,但它们也遭受了一些长期问题,包括例如对模型变量和观察的物理位置存在的依赖性,处理非局部和时间的挑战 - 期望观察,以及处理不同类型的模型变量的非适度。为了提高本地化对各种历史匹配问题的适用性,我们建议采用自适应定位方案,该方案利用模型变量与本地化观察之间的相关性。我们详细说明了基于相关的自适应定位如何减轻或克服传统距离的定位中出现的注意问题。为了展示基于相关的适应性本地化的功效,我们将其应用于使用迭代集合更顺畅(IES)来历史与全部Norne现场模型的实际生产数据相匹配,并将历史匹配结果与使用相同获得的人进行比较IES但基于距离的本地化。我们的研究表明,与基于距离的本地化相比,基于相关的本地化不仅在数据不匹配方面实现了紧密或更好的性能,而且在实际历史匹配问题中实现和使用更方便。结果,所提出的基于相关的定位方案可以作为对基于距离的定位的可行替代品。

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