首页> 外文期刊>International journal for uncertainty quantifications >DATA-CONSISTENT SOLUTIONS TO STOCHASTIC INVERSE PROBLEMS USING A PROBABILISTIC MULTI-FIDELITY METHOD BASED ON CONDITIONAL DENSITIES
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DATA-CONSISTENT SOLUTIONS TO STOCHASTIC INVERSE PROBLEMS USING A PROBABILISTIC MULTI-FIDELITY METHOD BASED ON CONDITIONAL DENSITIES

机译:基于条件密度的概率多保真法对随机逆问题进行数据 - 一致的解决方案

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摘要

We build upon a recently developed approach for solving stochastic inverse problems based on a combination of measure-theoretic principles and Bayes' rule. We propose a multi fidelity method to reduce the computational burden of performing uncertainty quantification using high-fidelity models. This approach is based on a Monte Carlo framework for uncertainty quantification that combines information from solvers of various fidelities to obtain statistics on the quantities of interest of the problem. In particular, our goal is to generate samples from a high-fidelity push forward density at a fraction of the costs of standard Monte Carlo methods, while maintaining flexibility in the number of random model input parameters. Key to this methodology is the construction of a regression model to represent the stochastic mapping between the low- and high-fidelity models, such that most of the computations can be leveraged to the low fidelity model. To that end, we employ Gaussian process regression and present extensions to multi-level-type hierarchies as well as to the case of multiple quantities of interest. Finally, we demonstrate the feasibility of the framework in several numerical examples.
机译:我们根据最近开发的方法来解决基于测量理论原则和贝叶斯规则的组合来解决随机逆问题。我们提出了一种多保真方法,以减少使用高保真模型执行不确定性量化的计算负担。这种方法基于蒙特卡罗框架,用于不确定量化,这些框架将来自各种保真度的求解器的信息结合起来获得对问题的兴趣数量的统计数据。特别是,我们的目标是在标准蒙特卡罗方法的成本的一小部分中产生从高保真的推动密度的样本,同时保持随机模型输入参数的数量的灵活性。该方法的关键是建造回归模型,以表示低保低模型与高保真模型之间的随机映射,使得大多数计算可以利用到低保真模型。为此,我们采用高斯进程回归并将扩展目前到多级型层次结构以及多重兴趣的情况。最后,我们展示了若干数值例子中框架的可行性。

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