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On Uncertainty Quantification of History Matched Facies Models

机译:关于历史匹配相模型的不确定性量化

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Estimation of facies boundaries adds additional complexity to history matching process. Because facies types are categorical variables, history matching methods that rely on derivatives (gradient based methods) or Gaussian assumption (e.g. ensemble-based methods) cannot be readily used. It has been shown that by appropriate parameterization history matched models with desired geological facies features can be obtained. Little attention, however, has been paid to history matched facies models in terms their ability to quantifying uncertainty after conditioning to dynamic data. In this study, we analyze the quality of uncertainty quantification of history matched TPG and MPS facies models in terms of their representation in the model space and in terms of predictability using several synthetic examples Although it is generally thought that the predictability of reservoir models with realistic facies distributions will be better than less realistic models, the benefit of model complexity for predictions has not been well established In this study we show scenarios in which good prediction can be achieved with models that do not have correct geological features The importance of geology for model predictability likely depends on the type of geological features, available data for model calibration, and the quantity to be predicted.
机译:面部边界的估计对历史匹配过程增加了额外的复杂性。由于相片类型是分类变量,所以依赖衍生物(基于梯度的方法)或高斯假设(例如基于基于梯度的方法)的历史匹配方法不能容易地使用。已经表明,通过适当的参数化历史,可以获得具有所需地质相特征的匹配模型。然而,已经注意到历史与历史匹配的相模型的关注点,他们在调节到动态数据后量化不确定性的能力。在这项研究中,我们在模型空间中的表示和使用若干合成示例的可预测性方面分析了历史匹配和MPS相表模型的不确定度量的质量,尽管通常认为具有现实的储层模型的可预测性相片分布将优于更少于现实的模型,在本研究中的预测模型复杂性的好处在本研究中尚未得到很好的建立,我们展示了使用没有正确地质特征的模型可以实现良好预测的场景,这些模型具有模型的地质的重要性。模型的重要性可预测性可能取决于地质特征类型,用于模型校准的可用数据,以及要预测的数量。

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