A large class of inverse problems for PDEs are only well-defined as mappings from operators to functions. Existing operator learning frameworks map functions to functions and need to be modified to learn inverse maps from data. We propose a novel architecture termed Neural Inverse Operators (NIOs) to solve these PDE inverse problems. Motivated by the underlying mathematical structure, NIO is based on a suitable composition of DeepONets and FNOs to approximate mappings from operators to functions. A variety of experiments are presented to demonstrate that NIOs significantly outperform baselines and solve PDE inverse problems robustly, accurately and are several orders of magnitude faster than existing direct and PDE-constrained optimization methods.
翻译:现有操作者学习框架将功能映射成功能,需要加以修改以从数据中学习反向地图。我们建议建立一个名为神经反向操作者(NIOs)的新结构,以解决PDE的反向问题。受基本数学结构的驱动,NIO以DeepONets和FNOs的合适构成为基础,将操作者测绘成功能的近似图。提供了各种实验,以证明NIOs明显超过基线,并强有力、准确地解决PDE反向问题,比现有的直接和受PDE制约的优化方法快几级。