求解不同边界条件椭圆型问题的深Galerkin法与深Ritz法的比较研究

Jingrun Chen, Rui Du, Keke Wu
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引用次数: 40

摘要

近年来,人们对利用深度神经网络求解偏微分方程的兴趣日益浓厚,特别是在高维情况下。与经典数值方法(如有限差分法和有限元法)不同,深度神经网络边界条件的执行是高度非平凡的。一种通用策略是使用惩罚方法。本文采用深伽辽金法和深里兹法两种具有代表性的方法,对Dirichlet、Neumann、Robin和周期边界条件下的椭圆型问题进行了比较研究。前者在最小二乘意义上最小化偏微分方程残差,后者最小化相应的变分问题。因此,可以合理地预期,深度伽辽金方法更适合光滑解,而深度里兹方法更适合低正则性解。然而,通过大量的例子,我们观察到即使对于光滑解,深度里兹方法也可以以明显的维数依赖性优于深度伽辽金方法,并且深度伽辽金方法对于低正则性解也可以优于深度里兹方法。此外,在某些情况下,当边界条件可以精确地实现时,我们发现这种策略不仅提供了更好的近似解,而且简化了训练过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparison Study of Deep Galerkin Method and Deep Ritz Method for Elliptic Problems with Different Boundary Conditions
Recent years have witnessed growing interests in solving partial differential equations by deep neural networks, especially in the high-dimensional case. Unlike classical numerical methods, such as finite difference method and finite element method, the enforcement of boundary conditions in deep neural networks is highly nontrivial. One general strategy is to use the penalty method. In the work, we conduct a comparison study for elliptic problems with four different boundary conditions, i.e., Dirichlet, Neumann, Robin, and periodic boundary conditions, using two representative methods: deep Galerkin method and deep Ritz method. In the former, the PDE residual is minimized in the least-squares sense while the corresponding variational problem is minimized in the latter. Therefore, it is reasonably expected that deep Galerkin method works better for smooth solutions while deep Ritz method works better for low-regularity solutions. However, by a number of examples, we observe that deep Ritz method can outperform deep Galerkin method with a clear dependence of dimensionality even for smooth solutions and deep Galerkin method can also outperform deep Ritz method for low-regularity solutions. Besides, in some cases, when the boundary condition can be implemented in an exact manner, we find that such a strategy not only provides a better approximate solution but also facilitates the training process.
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