Chak-Hau Michael Tso, Marco Iglesias, Andrew Binley
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引用次数: 0
Abstract
Summary This paper explores the applicability of Ensemble Kalman Inversion (EKI) with level-set parameterization for solving geophysical inverse problems. In particular, we focus on its extension to induced polarization (IP) data with uncertainty quantification. IP data may provide rich information on characteristics of geological materials due to its sensitivity to characteristics of the pore-grain interface. In many IP studies, different geological units are juxtaposed and the goal is to delineate these units and obtain estimates of unit properties with uncertainty bounds. Conventional inversion of IP data does not resolve well sharp interfaces and tends to reduce and smooth resistivity variations, while not readily providing uncertainty estimates. Recently, it has been shown for DC resistivity that EKI is an efficient solver for inverse problems which provides uncertainty quantification, and its combination with level set parameterization can delineate arbitrary interfaces well. In this contribution, we demonstrate the extension of EKI to IP data using a sequential approach, where the mean field obtained from DC resistivity inversion is used as input for a separate phase angle inversion. We illustrate our workflow using a series of synthetic and field examples. Variations with uncertainty bounds in both DC resistivity and phase angles are recovered by EKI, which provides useful information for hydrogeological site characterization. While phase angles are less well-resolved than DC resistivity, partly due to their smaller range and higher percentage data errors, it complements DC resistivity for site characterization. Overall, EKI with level set parameterization provides a practical approach forward for efficient hydrogeophysical imaging under uncertainty.
摘要 本文探讨了具有水平集参数化的集合卡尔曼反演(EKI)在解决地球物理反演问题中的适用性。特别是,我们将重点放在将其扩展到带有不确定性量化的感应偏振(IP)数据上。由于对孔隙-晶粒界面特征的敏感性,IP 数据可以提供有关地质材料特征的丰富信息。在许多 IP 研究中,不同的地质单元并列在一起,目标是划分这些单元,并获得具有不确定性边界的单元属性估计值。传统的 IP 数据反演不能很好地解决尖锐界面的问题,往往会减小电阻率的变化并使其平滑,同时不能随时提供不确定性估计。最近,针对直流电阻率的研究表明,EKI 是一种高效的逆问题求解器,可以提供不确定性量化,其与水平集参数化的结合可以很好地划分任意界面。在这篇论文中,我们展示了使用顺序方法将 EKI 扩展到 IP 数据的过程,其中直流电阻率反演得到的平均场被用作单独相角反演的输入。我们使用一系列合成和现场示例来说明我们的工作流程。EKI 恢复了直流电阻率和相位角中具有不确定性边界的变化,为水文地质现场特征描述提供了有用的信息。虽然相位角的分辨率不如直流电阻率高,部分原因是其范围较小,数据误差百分比较高,但它对直流电阻率的场地特征描述起到了补充作用。总之,带有水平集参数化的 EKI 为不确定条件下的高效水文地质物理成像提供了一种实用的方法。
期刊介绍:
Geophysical Journal International publishes top quality research papers, express letters, invited review papers and book reviews on all aspects of theoretical, computational, applied and observational geophysics.