With the aid of hardware and software developments, there has been a surge of interests in solving partial differential equations by deep learning techniques, and the integration with domain decomposition strategies has recently attracted considerable attention due to its enhanced representation and parallelization capacity of the network solution. While there are already several works that substitute the numerical solver of overlapping Schwarz methods with the deep learning approach, the non-overlapping counterpart has not been thoroughly studied yet because of the inevitable interface overfitting problem that would propagate the errors to neighbouring subdomains and eventually hamper the convergence of outer iteration. In this work, a novel learning approach, i.e., the compensated deep Ritz method, is proposed to enable the flux transmission across subregion interfaces with guaranteed accuracy, thereby allowing us to construct effective learning algorithms for realizing the more general non-overlapping domain decomposition methods in the presence of overfitted interface conditions. Numerical experiments on a series of elliptic boundary value problems including the regular and irregular interfaces, low and high dimensions, smooth and high-contrast coefficients on multidomains are carried out to validate the effectiveness of our proposed domain decomposition learning algorithms.
翻译:在硬件和软件开发的帮助下,在通过深层次学习技术解决部分差异方程式方面,人们的兴趣激增,而且由于网络解决方案的代表性和平行能力得到增强,与域分解战略的整合最近引起相当大的关注。虽然已有几项工作用深层学习方法取代重叠的施瓦兹方法的数字解析器,但对于非重叠对应方尚未进行彻底研究,因为无法避免的接口问题会将错误传播到相邻的次域,并最终妨碍外向循环的融合。在这项工作中,提议采用新颖的学习方法,即补偿的深层里兹方法,以便能够在次区域界面之间进行通量传输,保证准确性,从而使我们能够建立有效的学习算法,以便在界面条件过于完善的情况下,实现更普遍的非重叠的域解析法。关于一系列离子边界值问题的数值实验,包括常规和不规则的接口、低和高维度、多界域上平滑和高调系数,以验证我们拟议的域解剖式学习算法的有效性。