Operator learning is a recently developed generalization of regression to mappings between functions. It promises to drastically reduce expensive numerical integration of PDEs to fast evaluations of mappings between functional states of a system, i.e., surrogate and reduced-order modeling. Operator learning has already found applications in several areas such as modeling sea ice, combustion, and atmospheric physics. Recent approaches towards integrating uncertainty quantification into the operator models have relied on likelihood based methods to infer parameter distributions from noisy data. However, stochastic operators may yield actions from which a likelihood is difficult or impossible to construct. In this paper, we introduce, GenUQ, a measure-theoretic approach to UQ that avoids constructing a likelihood by introducing a generative hyper-network model that produces parameter distributions consistent with observed data. We demonstrate that GenUQ outperforms other UQ methods in three example problems, recovering a manufactured operator, learning the solution operator to a stochastic elliptic PDE, and modeling the failure location of porous steel under tension.
翻译:算子学习是回归问题向函数间映射的泛化,近年来得到发展。它有望将偏微分方程昂贵的数值积分大幅简化为系统函数状态间映射的快速评估,即替代建模与降阶建模。算子学习已在多个领域得到应用,如海冰建模、燃烧模拟与大气物理。近期将不确定性量化整合进算子模型的尝试主要依赖基于似然的方法,从含噪声数据推断参数分布。然而,随机算子可能产生难以或无法构建似然函数的映射作用。本文提出GenUQ——一种测度论导向的不确定性量化方法,通过引入生成式超网络模型来生成与观测数据一致的参数分布,从而避免构建似然函数。我们在三个示例问题中证明GenUQ优于其他不确定性量化方法:重构人工构造的算子、学习随机椭圆型偏微分方程的解算子,以及预测拉伸载荷下多孔钢的失效位置。