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Uncertainty in training image-based inversion of hydraulic head data constrained to ERT data: workflow and case study

机译:训练基于图像的液压头数据反演的不确定性受限于ERT数据:工作流程和案例研究

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摘要

[en] In inverse problems, investigating uncertainty in the posterior distribution of model parameters is as important as matching data. In recent years, most efforts have focused on techniques to sample the posterior distribution with reasonable computational costs. Within a Bayesian context, this posterior depends on the prior distribution. However, most of the studies ignore modeling the prior with realistic geological uncertainty. In this paper, we propose a workflow inspired by a Popper-Bayes philosophy, that data should first be used to falsify models, then only be considered for matching. We propose a workflow consisting of three steps: (1) in defining the prior, we interpret multiple alternative geological scenarios from literature (architecture of facies) and site specific data (proportions of facies). Prior spatial uncertainty is modeled using multiple-point geostatistics, where each scenario is defined using a training image. (2) We validate these prior geological scenarios by simulating electrical resistivity tomography (ERT) data on realizations of each scenario and comparing them to field ERT in a lower dimensional space. In this second step, the idea is to probabilistically falsify scenarios with ERT, meaning that scenarios which are incompatible receive an updated probability of zero while compatible scenarios receive a non-zero updated belief. (3) We constrain the hydrogeological model with hydraulic head and ERT using a stochastic search method. The workflow is applied to a synthetic and a field case studies in an alluvial aquifer. This study highlights the importance of considering and estimate prior uncertainty (without data) through a process of probabilistic falsification.
机译:在反问题中,调查模型参数的后验分布中的不确定性与匹配数据一样重要。近年来,大多数工作都集中在以合理的计算成本对后验分布进行采样的技术上。在贝叶斯上下文中,此后验取决于先验分布。但是,大多数研究都忽略了具有实际地质不确定性的先验模型。在本文中,我们提出了受Popper-Bayes哲学启发的工作流程,该数据首先应用于伪造模型,然后才考虑进行匹配。我们提出了一个工作流程,该工作流程包括三个步骤:(1)在定义先验条件时,我们从文献(相的构造)和特定于现场的数据(相的比例)中解释多种备选地质方案。使用多点地统计学对先前的空间不确定性进行建模,其中每种情况都使用训练图像进行定义。 (2)我们通过模拟每种情况下的电阻率层析成像(ERT)数据并将它们与低维空间中的ERT进行比较,来验证这些先前的地质情况。在第二步中,想法是用ERT概率性地伪造场景,这意味着不兼容的场景接收到的更新概率为零,而兼容的场景接收到了非零的更新信念。 (3)采用随机搜索法,用水头和ERT对水文地质模型进行约束。该工作流程适用于冲积含水层的合成和现场案例研究。这项研究强调了通过概率伪造过程来考虑和估计先前不确定性(没有数据)的重要性。

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