Cell-Average based Neural Network Method for Hunter-Saxton Equations
Abstract
In this paper, we develop a cell-average based neural network (CANN) method for solving the Hunter-Saxton equation with its zero-viscosity and zero-dispersion limits. Motivated from the finite volume schemes, the cell-average based neural network method is constructed based on the finite volume integrals of the original PDEs. Supervised training is designed to learn the solution average difference between two neighboring time steps. The training data set is generated by the cell average based on a single initial value of the given PDE. The training process employs multiple time levels of cell averages to maintain stability and control temporal accumulation errors. After being well trained based on appropriate meshes, this method can be utilized like a regular explicit finite volume method to evolve the solution under large time steps. Furthermore, it can be applied to solve different type of initial value problems without retraining the neural network. In order to validate the capability and robustness of the CANN method, we also utilize it to deal with the corrupted learning data which is generated from the Gaussian white noise. Several numerical examples of different types of Hunter-Saxton equations are presented to demonstrate the effectiveness, accuracy, capability, and robustness of the proposed method.
Recommended Citation
C. Zhang et al., "Cell-Average based Neural Network Method for Hunter-Saxton Equations," Advances in Applied Mathematics and Mechanics, vol. 16, no. 4, pp. 833 - 859, Global Science Press, Aug 2024.
The definitive version is available at https://doi.org/10.4208/aamm.OA-2022-0278
Department(s)
Mathematics and Statistics
Keywords and Phrases
cell-average based neural network; corruption data; Finite volume scheme; Hunter-Saxton equation
International Standard Serial Number (ISSN)
2075-1354; 2070-0733
Document Type
Article - Journal
Document Version
Citation
File Type
text
Language(s)
English
Rights
© 2024 Global Science Press, All rights reserved.
Publication Date
01 Aug 2024
Comments
National Natural Science Foundation of China, Grant 12201327