论文标题
双绿色:通过边界积分网络学习格林的功能
BI-GreenNet: Learning Green's functions by boundary integral network
论文作者
论文摘要
格林的功能在偏微分方程(PDE)的理论分析和数值计算中都起着重要作用。但是,在大多数情况下,格林的功能很难计算。这些麻烦在以下三折中出现。首先,与原始PDE相比,格林功能的尺寸加倍,因此无法通过传统的基于网格的方法来处理。其次,格林的功能通常包含奇异性,从而增加了获得良好近似值的困难。最后,计算域可能非常复杂,甚至无限。为了覆盖这些问题,我们利用基本解决方案,边界积分方法和神经网络来开发一种新方法,以高精度计算Green的功能。我们专注于Green在有限域,无限域中的泊松和Helmholtz方程的功能。我们还考虑了带有接口的泊松方程和Helmholtz域。广泛的数值实验说明了我们解决绿色功能的方法的效率和准确性。此外,我们还使用通过我们的方法计算的绿色功能来求解一类PDE,并获得高精度解决方案,这显示了我们方法求解PDE的良好概括能力。
Green's function plays a significant role in both theoretical analysis and numerical computing of partial differential equations (PDEs). However, in most cases, Green's function is difficult to compute. The troubles arise in the following three folds. Firstly, compared with the original PDE, the dimension of Green's function is doubled, making it impossible to be handled by traditional mesh-based methods. Secondly, Green's function usually contains singularities which increase the difficulty to get a good approximation. Lastly, the computational domain may be very complex or even unbounded. To override these problems, we leverage the fundamental solution, boundary integral method and neural networks to develop a new method for computing Green's function with high accuracy in this paper. We focus on Green's function of Poisson and Helmholtz equations in bounded domains, unbounded domains. We also consider Poisson equation and Helmholtz domains with interfaces. Extensive numerical experiments illustrate the efficiency and the accuracy of our method for solving Green's function. In addition, we also use the Green's function calculated by our method to solve a class of PDE, and also obtain high-precision solutions, which shows the good generalization ability of our method on solving PDEs.