When propagating uncertainty in the data of differential equations, the probability laws describing the uncertainty are typically themselves subject to uncertainty. We present a sensitivity analysis of uncertainty propagation for differential equations with random inputs to perturbations of the input measures. We focus on the elliptic diffusion equation with random coefficient and source term, for which the probability measure of the solution random field is shown to be Lipschitz-continuous in both total variation and Wasserstein distance. The result generalizes to the solution map of any differential equation with locally H\"older dependence on input parameters. In addition, these results extend to Lipschitz continuous quantities of interest of the solution as well as to coherent risk functionals of these applied to evaluate the impact of their uncertainty. Our analysis is based on the sensitivity of risk functionals and pushforward measures for locally H\"older mappings with respect to the Wasserstein distance of perturbed input distributions. The established results are applied, in particular, to the case of lognormal diffusion and the truncation of series representations of input random fields.
翻译:当传播差异方程式数据的不确定性时,描述不确定性的概率法本身通常会受到不确定性的影响。我们对不确定性的不确定性传播进行了敏感分析,以随机输入的方式对输入计量进行扰动。我们侧重于随机系数和源术语的椭圆扩散方程式,其中随机字段的概率测量显示,在总变异和瓦塞尔斯坦距离方面,解决方案随机字段的概率是连续的。结果将本地H\"老H"对输入参数的依赖程度的差别方程式的解析图加以概括。此外,这些结果还扩展到了Lipschitz对解决方案的持续兴趣以及用于评估其不确定性影响的连贯风险功能。我们的分析基于风险功能的敏感性和对本地H\"老式H\"绘图的推进措施。既定结果尤其适用于输入随机字段的逻辑扩散和序列表达。