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Data-driven uncertainty quantification for predictive flow and transport modeling using support vector machines

机译:使用支持向量机的预测流量和传输建模的数据驱动的不确定性量化

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Specification of hydraulic conductivity as a model parameter in groundwater flow and transport equations is an essential step in predictive simulations. It is often infeasible in practice to characterize this model parameter at all points in space due to complex hydrogeological environments leading to significant parameter uncertainties. Quantifying these uncertainties requires the formulation and solution of an inverse problem using data corresponding to observable model responses. Several types of inverse problems may be formulated under various physical and statistical assumptions on the model parameters, model response, and the data. Solutions to most types of inverse problems require large numbers of model evaluations. In this study, we incorporate the use of surrogate models based on support vector machines to increase the number of samples used in approximating a solution to an inverse problem at a relatively low computational cost. To test the global capabilities of this type of surrogate model for quantifying uncertainties, we use a framework rooted in measure theory for constructing pullback and push-forward probability measures to study the data-to-parameter-to-prediction propagation of uncertainties under minimal statistical assumptions. Additionally, we demonstrate that it is possible to build a support vector machine using relatively low-dimensional representations of the hydraulic conductivity to propagate distributions. The numerical examples further demonstrate that we can make reliable probabilistic predictions of contaminant concentration at spatial locations.
机译:作为地下水流动方程中的模型参数的液压导电性的规范是预测模拟的重要步骤。在实践中通常是不可行的,在于由于复杂的水文地质环境而在空间的所有点处表征了这种模型参数,这导致了显着的参数不确定性。量化这些不确定性需要使用对应于可观察模型响应的数据的反向问题的制定和解决方案。可以在模型参数,模型响应和数据上的各种物理和统计假设下配制几种类型的逆问题。对大多数类型的反问题的解决方案需要大量的模型评估。在这项研究中,我们纳入了基于支持向量机的代理模型的使用,以增加用于以相对低的计算成本近似于逆问题的样本的数量。为了测试这种类型代理模型的全局能力,用于量化不确定性,我们使用植根于测量理论的框架来构建回调和推进概率措施,以研究在最小统计下的数据到参数 - 预测的不确定性的传播假设。另外,我们证明可以使用液压导电性的相对低维表示来构建支持向量机以传播分布。数值例子进一步证明我们可以在空间位置处的污染物浓度进行可靠的概率预测。

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