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Nested sampling algorithm for subsurface flow model selection, uncertainty quantification, and nonlinear calibration

机译:嵌套采样算法用于地下流动模型选择,不确定性量化和非线性校准

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摘要

Calibration of subsurface flow models is an essential step for managing ground water aquifers, designing of contaminant remediation plans, and maximizing recovery from hydrocarbon reservoirs. We investigate an efficient sampling algorithm known as nested sampling (NS), which can simultaneously sample the posterior distribution for uncertainty quantification, and estimate the Bayesian evidence for model selection. Model selection statistics, such as the Bayesian evidence, are needed to choose or assign different weights to different models of different levels of complexities. In this work, we report the first successful application of nested sampling for calibration of several nonlinear subsurface flow problems. The estimated Bayesian evidence by the NS algorithm is used to weight different parameterizations of the subsurface flow models (prior model selection). The results of the numerical evaluation implicitly enforced Occam's razor where simpler models with fewer number of parameters are favored over complex models. The proper level of model complexity was automatically determined based on the information content of the calibration data and the data mismatch of the calibrated model.
机译:地下流模型的校准是管理地下水含水层,设计污染物修复计划以及最大程度地从碳氢化合物储层开采的必不可少的步骤。我们研究了一种称为嵌套采样(NS)的有效采样算法,该算法可以同时采样后验分布以进行不确定性量化,并估计用于模型选择的贝叶斯证据。需要模型选择统计信息(例如贝叶斯证据)来为不同复杂程度的不同模型选择不同的权重或为其分配不同的权重。在这项工作中,我们报告了嵌套采样在校准多个非线性地下流动问题方面的首次成功应用。通过NS算法估计的贝叶斯证据被用来加权地下流动模型的不同参数化(先前的模型选择)。数值评估的结果隐含了Occam的剃须刀,其中参数数量较少的简单模型优于复杂模型。根据校准数据的信息内容和校准模型的数据不匹配,自动确定合适的模型复杂度。

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