arrow
Volume 15, Issue 1
Deep Domain Decomposition Methods: Helmholtz Equation

Wuyang Li, Ziming Wang, Tao Cui, Yingxiang Xu & Xueshuang Xiang

Adv. Appl. Math. Mech., 15 (2023), pp. 118-138.

Published online: 2022-10

Export citation
  • Abstract

This paper proposes a deep-learning-based Robin-Robin domain decomposition method (DeepDDM) for Helmholtz equations. We first present the plane wave activation-based neural network (PWNN), which is more efficient for solving Helmholtz equations with constant coefficients and wavenumber $k$ than finite difference methods (FDM). On this basis, we use PWNN to discretize the subproblems divided by domain decomposition methods (DDM), which is the main idea of DeepDDM. This paper will investigate the number of iterations of using DeepDDM for continuous and discontinuous Helmholtz equations. The results demonstrate that: DeepDDM exhibits behaviors consistent with conventional robust FDM-based domain decomposition method (FDM-DDM) under the same Robin parameters, i.e., the number of iterations by DeepDDM is almost the same as that of FDM-DDM. By choosing suitable Robin parameters on different subdomains, the convergence rate is almost constant with the rise of wavenumber in both continuous and discontinuous cases. The performance of DeepDDM on Helmholtz equations may provide new insights for improving the PDE solver by deep learning.

  • AMS Subject Headings

35Q68, 65N55, 78A48

  • Copyright

COPYRIGHT: © Global Science Press

  • Email address
  • BibTex
  • RIS
  • TXT
@Article{AAMM-15-118, author = {Li , WuyangWang , ZimingCui , TaoXu , Yingxiang and Xiang , Xueshuang}, title = {Deep Domain Decomposition Methods: Helmholtz Equation}, journal = {Advances in Applied Mathematics and Mechanics}, year = {2022}, volume = {15}, number = {1}, pages = {118--138}, abstract = {

This paper proposes a deep-learning-based Robin-Robin domain decomposition method (DeepDDM) for Helmholtz equations. We first present the plane wave activation-based neural network (PWNN), which is more efficient for solving Helmholtz equations with constant coefficients and wavenumber $k$ than finite difference methods (FDM). On this basis, we use PWNN to discretize the subproblems divided by domain decomposition methods (DDM), which is the main idea of DeepDDM. This paper will investigate the number of iterations of using DeepDDM for continuous and discontinuous Helmholtz equations. The results demonstrate that: DeepDDM exhibits behaviors consistent with conventional robust FDM-based domain decomposition method (FDM-DDM) under the same Robin parameters, i.e., the number of iterations by DeepDDM is almost the same as that of FDM-DDM. By choosing suitable Robin parameters on different subdomains, the convergence rate is almost constant with the rise of wavenumber in both continuous and discontinuous cases. The performance of DeepDDM on Helmholtz equations may provide new insights for improving the PDE solver by deep learning.

}, issn = {2075-1354}, doi = {https://doi.org/10.4208/aamm.OA-2021-0305}, url = {http://global-sci.org/intro/article_detail/aamm/21128.html} }
TY - JOUR T1 - Deep Domain Decomposition Methods: Helmholtz Equation AU - Li , Wuyang AU - Wang , Ziming AU - Cui , Tao AU - Xu , Yingxiang AU - Xiang , Xueshuang JO - Advances in Applied Mathematics and Mechanics VL - 1 SP - 118 EP - 138 PY - 2022 DA - 2022/10 SN - 15 DO - http://doi.org/10.4208/aamm.OA-2021-0305 UR - https://global-sci.org/intro/article_detail/aamm/21128.html KW - Helmholtz equation, deep learning, domain decomposition method, plane wave method. AB -

This paper proposes a deep-learning-based Robin-Robin domain decomposition method (DeepDDM) for Helmholtz equations. We first present the plane wave activation-based neural network (PWNN), which is more efficient for solving Helmholtz equations with constant coefficients and wavenumber $k$ than finite difference methods (FDM). On this basis, we use PWNN to discretize the subproblems divided by domain decomposition methods (DDM), which is the main idea of DeepDDM. This paper will investigate the number of iterations of using DeepDDM for continuous and discontinuous Helmholtz equations. The results demonstrate that: DeepDDM exhibits behaviors consistent with conventional robust FDM-based domain decomposition method (FDM-DDM) under the same Robin parameters, i.e., the number of iterations by DeepDDM is almost the same as that of FDM-DDM. By choosing suitable Robin parameters on different subdomains, the convergence rate is almost constant with the rise of wavenumber in both continuous and discontinuous cases. The performance of DeepDDM on Helmholtz equations may provide new insights for improving the PDE solver by deep learning.

Wuyang Li, Ziming Wang, Tao Cui, Yingxiang Xu & Xueshuang Xiang. (2022). Deep Domain Decomposition Methods: Helmholtz Equation. Advances in Applied Mathematics and Mechanics. 15 (1). 118-138. doi:10.4208/aamm.OA-2021-0305
Copy to clipboard
The citation has been copied to your clipboard