基于图谱拉普拉斯的贝叶斯多保真度建模

Orazio Pinti, Jeremy M. Budd, Franca Hoffmann, Assad A. Oberai
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引用次数: 0

摘要

我们提出了一种新颖的概率方法,用于生成多保真度数据,同时考虑低保真度和高保真度数据中固有的误差。在这种方法中,根据低保真数据构建的图拉普拉卡矩被用来定义真实数据点坐标的多元高斯先验密度。此外,少数高保真数据点被用于构建共轭似然项。之后,应用贝叶斯规则推导出后验密度的显式表达式,后验密度也是多元高斯的。该密度的最大后验估计值(MAP)被选为最佳多保真度估计值。研究表明,MAP 估计值和后验密度的协方差可以通过线性方程组的求解来确定。随后,研究人员开发了两种方法,一种是基于谱截断的方法,另一种是基于低阶近似的方法,以高效求解这些方程。多保真度方法在固体力学和流体力学的各种问题上进行了测试,测试数据代表了相关量的矢量以及一维和二维的离散空间场。结果表明,通过利用一小部分高保真数据,多保真方法可以显著提高大量低保真数据点的精度。
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Graph Laplacian-based Bayesian Multi-fidelity Modeling
We present a novel probabilistic approach for generating multi-fidelity data while accounting for errors inherent in both low- and high-fidelity data. In this approach a graph Laplacian constructed from the low-fidelity data is used to define a multivariate Gaussian prior density for the coordinates of the true data points. In addition, few high-fidelity data points are used to construct a conjugate likelihood term. Thereafter, Bayes rule is applied to derive an explicit expression for the posterior density which is also multivariate Gaussian. The maximum \textit{a posteriori} (MAP) estimate of this density is selected to be the optimal multi-fidelity estimate. It is shown that the MAP estimate and the covariance of the posterior density can be determined through the solution of linear systems of equations. Thereafter, two methods, one based on spectral truncation and another based on a low-rank approximation, are developed to solve these equations efficiently. The multi-fidelity approach is tested on a variety of problems in solid and fluid mechanics with data that represents vectors of quantities of interest and discretized spatial fields in one and two dimensions. The results demonstrate that by utilizing a small fraction of high-fidelity data, the multi-fidelity approach can significantly improve the accuracy of a large collection of low-fidelity data points.
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