Deep least-squares methods: an unsupervised learning-based numerical method for solving elliptic PDEs
Cai, Zhiqiang, Chen, Jingshuang, Liu, Min, Liu, Xinyu
The approach makes use of the deep neural network to approximate solutions of PDEs through the compositional construction and employs least-squares functionals as loss functions to determine parameters of the deep neural network. There are various least-squares functionals for a partial differential equation. This paper focuses on the so-called first-order system least-squares (FOSLS) functional studied in [3], which is based on a first-order system of scalar second-order elliptic PDEs. Numerical results for second-order elliptic PDEs in one dimension are presented.
Nov-5-2019