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Hierarchical Bayesian Approach to Boundary Value Problems with Stochastic Boundary Conditions

机译:带有随机边界条件的边值问题的多层贝叶斯方法

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摘要

Boundary value problems are ubiquitous in the atmospheric and ocean sciences. Typical settings include bounded, partially bounded, global, and limited area domains, discretized for applications of numerical models of the relevant fluid equations. Often, limited area models are constructed to interpret intensive datasets collected over a specific region, from a variety of observational platforms. These data are noisy and they typically do not span the domain of interest uniformly in space and time. Traditional numerical procedures cannot easily account for these uncertainties. A hierarchical Bayesian modeling framework is developed for solving boundary value problems in such settings. By allowing the boundary process to be stochastic, and conditioning the interior process on this boundary, one can account for the uncertainties in the boundary process in a reasonable fashion. In the presence of data and all its uncertainties, this idea can be related through Bayes' theorem to produce distributions of the interior process given the observational data. The method is illustrated with an example of obtaining atmospheric streamfunction fields in the Labrador Sea region, given scatterometer-derived observations of the surface wind field.
机译:边值问题在大气和海洋科学中无处不在。典型设置包括有界,部分有界,全局和有限区域域,这些域离散化以用于相关流体方程的数值模型的应用。通常,会构建有限区域模型来解释从各种观测平台在特定区域收集的密集数据集。这些数据比较嘈杂,通常不会在时间和空间上均匀地跨越感兴趣的领域。传统的数值程序无法轻松解决这些不确定性。开发了分级贝叶斯建模框架以解决这种情况下的边值问题。通过允许边界过程是随机的,并在此边界上限制内部过程,可以以合理的方式解决边界过程中的不确定性。在存在数据及其所有不确定性的情况下,可以通过贝叶斯定理将该想法联系起来,从而在给定观测数据的情况下产生内部过程的分布。给定散射仪得出的表面风场观测结果,以获取拉布拉多海地区大气流函数场为例说明了该方法。

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