论文标题

用于不确定性量化的冷藏采样:来自气象逆问题的动机

Chilled Sampling for Uncertainty Quantification: A Motivation From A Meteorological Inverse Problem

论文作者

Héas, Patrick, Cérou, Frédéric, Rousset, Mathias

论文摘要

从卫星图像中提取的大气运动向量(AMV)是唯一具有良好全球覆盖范围的风观测。它们是进食数值天气预测(NWP)模型的重要特征。已经提出了几种贝叶斯模型来估计AMV。尽管对于正确同化NWP模型至关重要,但很少有方法可以彻底表征估计误差。估计误差的困难源于后验分布的特异性,这既是很高的维度,又是由于奇异的可能性而导致的。在这个困难的反问题的推动下,这项工作研究了使用基于梯度的马尔可夫链蒙特卡洛(MCMC)算法评估(预期)估计错误。主要的贡献是提出一种称为“冷藏”的一般策略,这相当于在点估计附近的后验分布进行局部近似。从理论的角度来看,我们表明,在规律性假设下,随着温度降低到最佳的高斯近似值,在最大a后验估计值下,冰冷的后验分布家族在分布中收敛,也称为拉普拉斯近似值。因此,在这种高维非线性环境中,冷藏采样可提供对这种近似值通常无法触及的访问权限。从经验的角度来看,我们根据一些定量的贝叶斯标准评估了提出的方法。我们的数值模拟是对合成和真实气象数据进行的。他们揭示了所提出的冷藏不仅在点估计的准确性及其相关的预期错误方面表现出显着的增长,而且在MCMC算法的收敛速度方面也有很大的加速。

Atmospheric motion vectors (AMVs) extracted from satellite imagery are the only wind observations with good global coverage. They are important features for feeding numerical weather prediction (NWP) models. Several Bayesian models have been proposed to estimate AMVs. Although critical for correct assimilation into NWP models, very few methods provide a thorough characterization of the estimation errors. The difficulty of estimating errors stems from the specificity of the posterior distribution, which is both very high dimensional, and highly ill-conditioned due to a singular likelihood. Motivated by this difficult inverse problem, this work studies the evaluation of the (expected) estimation errors using gradient-based Markov Chain Monte Carlo (MCMC) algorithms. The main contribution is to propose a general strategy, called here chilling, which amounts to sampling a local approximation of the posterior distribution in the neighborhood of a point estimate. From a theoretical point of view, we show that under regularity assumptions, the family of chilled posterior distributions converges in distribution as temperature decreases to an optimal Gaussian approximation at a point estimate given by the Maximum A Posteriori, also known as the Laplace approximation. Chilled sampling therefore provides access to this approximation generally out of reach in such high-dimensional nonlinear contexts. From an empirical perspective, we evaluate the proposed approach based on some quantitative Bayesian criteria. Our numerical simulations are performed on synthetic and real meteorological data. They reveal that not only the proposed chilling exhibits a significant gain in terms of accuracy of the point estimates and of their associated expected errors, but also a substantial acceleration in the convergence speed of the MCMC algorithms.

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