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Neural-PDE: a RNN based neural network for solving time dependent PDEs

Publication ,  Journal Article
Hu, Y; Zhao, T; Xu, S; Lin, L; Xu, Z
Published in: Communications in Information and Systems
January 1, 2022

Partial differential equations (PDEs) play a crucial role in studying a vast number of problems in science and engineering. Numerically solving nonlinear and/or high-dimensional PDEs is frequently a challenging task. Inspired by the traditional finite difference and finite elements methods and emerging advancements in machine learning, we propose a sequence-to-sequence learning (Seq2Seq) framework called Neural-PDE, which allows one to automatically learn governing rules of any time-dependent PDE system from existing data by using a bidirectional LSTM encoder, and predict the solutions in next n time steps. One critical feature of our proposed framework is that the Neural-PDE is able to simultaneously learn and simulate all variables of interest in a PDE system. We test the Neural-PDE by a range of examples, from2Rqf4Q6EMpztk7tthgBQBlPZ6Q84+one-dimensional PDEs to a multi-dimensional and nonlinear complex fluids model. The results show that the Neural-PDE is capable of learning the initial conditions, boundary conditions and differential operators defining the initial-boundary-value problem of a PDE system without the knowledge of the specific form of the PDE system. In our experiments, the Neural-PDE can efficiently extract the dynamics within 20 epochs training and produce accurate predictions. Furthermore, unlike the traditional machine learning approaches for learning PDEs, such as CNN and MLP, which require great quantity of parameters for model precision, the Neural-PDE shares parameters among all time steps, and thus considerably reduces computational complexity and leads to a fast learning algorithm.

Duke Scholars

Published In

Communications in Information and Systems

DOI

EISSN

2163-4548

ISSN

1526-7555

Publication Date

January 1, 2022

Volume

22

Issue

2

Start / End Page

223 / 245

Related Subject Headings

  • 4901 Applied mathematics
  • 1702 Cognitive Sciences
  • 0802 Computation Theory and Mathematics
  • 0102 Applied Mathematics
 

Citation

APA
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ICMJE
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Hu, Y., Zhao, T., Xu, S., Lin, L., & Xu, Z. (2022). Neural-PDE: a RNN based neural network for solving time dependent PDEs. Communications in Information and Systems, 22(2), 223–245. https://doi.org/10.4310/CIS.2022.v22.n2.a3
Hu, Y., T. Zhao, S. Xu, L. Lin, and Z. Xu. “Neural-PDE: a RNN based neural network for solving time dependent PDEs.” Communications in Information and Systems 22, no. 2 (January 1, 2022): 223–45. https://doi.org/10.4310/CIS.2022.v22.n2.a3.
Hu Y, Zhao T, Xu S, Lin L, Xu Z. Neural-PDE: a RNN based neural network for solving time dependent PDEs. Communications in Information and Systems. 2022 Jan 1;22(2):223–45.
Hu, Y., et al. “Neural-PDE: a RNN based neural network for solving time dependent PDEs.” Communications in Information and Systems, vol. 22, no. 2, Jan. 2022, pp. 223–45. Scopus, doi:10.4310/CIS.2022.v22.n2.a3.
Hu Y, Zhao T, Xu S, Lin L, Xu Z. Neural-PDE: a RNN based neural network for solving time dependent PDEs. Communications in Information and Systems. 2022 Jan 1;22(2):223–245.

Published In

Communications in Information and Systems

DOI

EISSN

2163-4548

ISSN

1526-7555

Publication Date

January 1, 2022

Volume

22

Issue

2

Start / End Page

223 / 245

Related Subject Headings

  • 4901 Applied mathematics
  • 1702 Cognitive Sciences
  • 0802 Computation Theory and Mathematics
  • 0102 Applied Mathematics