论文标题
降低操作员有价值数据的逆问题的模型方法
A model reduction approach for inverse problems with operator valued data
论文作者
论文摘要
我们研究了与操作员有价值数据的线性逆问题的有效数值解,例如在地震探索,反向散射或断层扫描成像中。数据空间的高维度意味着对远期操作员的评估已经极高的计算成本,这使逆问题(例如,通过迭代正则化方法)实际上是不可行的。为了克服这一障碍,我们利用了问题的潜在张量产品结构,并提出了一种策略,用于构建远期运算符的准最佳排名降低订单模型的策略,该模型可以比截断的奇异值分解更有效地计算出来。在功能分析设置中给出了对所提出的模型还原方法的完整分析,并讨论了还原订单模型的有效数值构建以及它们在逆问题的数值解决方案中的应用。总而言之,在离线阶段可以以与对远期操作员的单一评估相同的成本来实现低级别近似值的设置,而在线阶段的实际解决方案可以以极高的效率来完成。理论结果通过应用于荧光光学断层扫描中的典型模型问题来说明。
We study the efficient numerical solution of linear inverse problems with operator valued data which arise, e.g., in seismic exploration, inverse scattering, or tomographic imaging. The high-dimensionality of the data space implies extremely high computational cost already for the evaluation of the forward operator which makes a numerical solution of the inverse problem, e.g., by iterative regularization methods, practically infeasible. To overcome this obstacle, we take advantage of the underlying tensor product structure of the problem and propose a strategy for constructing low-dimensional certified reduced order models of quasi-optimal rank for the forward operator which can be computed much more efficiently than the truncated singular value decomposition. A complete analysis of the proposed model reduction approach is given in a functional analytic setting and the efficient numerical construction of the reduced order models as well as of their application for the numerical solution of the inverse problem is discussed. In summary, the setup of a low-rank approximation can be achieved in an offline stage at essentially the same cost as a single evaluation of the forward operator, while the actual solution of the inverse problem in the online phase can be done with extremely high efficiency. The theoretical results are illustrated by application to a typical model problem in fluorescence optical tomography.