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Surrogate model based iterative ensemble smoother for subsurface flow data assimilation

机译:基于替代模型的迭代集成平滑器,用于地下流量数据同化

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摘要

Subsurface geological formation properties often involve some degree of uncertainty. Thus, for most conditions, uncertainty quantification and data assimilation are necessary for predicting subsurface flow. The surrogate model based method is one common type of uncertainty quantification method, in which a surrogate model is constructed for approximating the relationship between model output and model input. Based on the prediction ability, the constructed surrogate model can be utilized for performing data assimilation. In this work, we develop an algorithm for implementing an iterative ensemble smoother (ES) using the surrogate model. We first derive an iterative ES scheme using a regular routine. In order to utilize surrogate models, we then borrow the idea of Chen and Oliver (2013) to modify the Hessian, and further develop an independent parameter based iterative ES formula. Finally, we establish the algorithm for the implementation of iterative ES using surrogate models. Two surrogate models, the PCE surrogate and the interpolation surrogate, are introduced for illustration. The performances of the proposed algorithm are tested by synthetic cases. The results show that satisfactory data assimilation results can be obtained by using surrogate models that have sufficient accuracy. (C) 2016 Elsevier Ltd. All rights reserved.
机译:地下地质构造特性通常涉及一定程度的不确定性。因此,在大多数情况下,不确定性量化和数据同化对于预测地下流量是必要的。基于替代模型的方法是不确定性量化方法的一种常见类型,其中构建替代模型以近似模型输出与模型输入之间的关系。基于预测能力,所构建的替代模型可用于执行数据同化。在这项工作中,我们开发了一种使用代理模型实现迭代集成平滑器(ES)的算法。我们首先使用常规例程得出迭代ES方案。为了利用代理模型,我们借用Chen和Oliver(2013)的思想来修改Hessian,并进一步开发基于独立参数的迭代ES公式。最后,我们建立了使用代理模型实现迭代ES的算法。为说明起见,介绍了两种代理模型:PCE代理和插值代理。通过综合实例测试了该算法的性能。结果表明,使用具有足够准确性的替代模型可以获得令人满意的数据同化结果。 (C)2016 Elsevier Ltd.保留所有权利。

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