We propose a data-assisted two-stage method for solving an inverse random source problem of the Helmholtz equation. In the first stage, the regularized Kaczmarz method is employed to generate initial approximations of the mean and variance based on the mild solution of the stochastic Helmholtz equation. A dataset is then obtained by sampling the approximate and corresponding true profiles from a certain a-priori criterion. The second stage is formulated as an image-to-image translation problem, and several data-assisted approaches are utilized to handle the dataset and obtain enhanced reconstructions. Numerical experiments demonstrate that the data-assisted two-stage method provides satisfactory reconstruction for both homogeneous and inhomogeneous media with fewer realizations.
翻译:我们提出了一种数据辅助的二阶段方法来求解Helmholtz方程的反随机源问题。在第一阶段中,使用正则Kaczmarz方法基于随机Helmholtz方程的温和解生成均值和方差的初始估计。然后通过从某种先验准则对近似和对应的真实剖面进行采样来得到数据集。第二阶段被制定为图像到图像转换问题,并使用几种数据辅助方法来处理数据集并获得增强的重建。数值实验表明,数据辅助的二阶段方法为均匀介质和非均匀介质提供了令人满意的重建结果,且所需实现较少。