PHYSICS-CONSTRAINED CONVOLUTIONAL RECURRENT NEURAL NETWORKS FOR SOLVING SPATIAL-TEMPORAL PDES WITH ARBITRARY BOUNDARY CONDITIONS

Guangfa Li, Yanglong Lu, Dehao Liu

Research output: Chapter in Book/Conference Proceeding/ReportConference Paper published in a bookpeer-review

Abstract

The inception of physics-constrained or physics-informed machine learning represents a paradigm shift, addressing the challenges associated with data scarcity and enhancing model interpretability. This innovative approach incorporates the fundamental laws of physics as constraints, guiding the training process of machine learning models. In this work, the physics-constrained convolutional recurrent neural network is further extended for solving spatial-temporal partial differential equations with arbitrary boundary conditions. Two notable advancements are introduced: the implementation of boundary conditions as soft constraints through finite difference-based differentiation, and the establishment of an adaptive weighting mechanism for the optimal allocation of weights to various losses. These enhancements significantly augment the network's ability to manage intricate boundary conditions and expedite the training process. The efficacy of the proposed model is validated through its application to two-dimensional problems in heat transfer, phase transition, and fluid dynamics, which are pivotal in materials modeling. Compared to traditional physics-constrained neural networks, the physics-constrained convolutional recurrent neural network demonstrates a tenfold increase in prediction accuracy within a similar computational budget. Moreover, the model's exceptional performance in extrapolating solutions for the Burgers' equation underscores its utility. Consequently, this research establishes the physics-constrained recurrent neural network as a viable surrogate model for sophisticated spatiotemporal PDE systems, particularly beneficial in scenarios plagued by sparse and noisy datasets.

Original languageEnglish
Title of host publication44th Computers and Information in Engineering Conference (CIE)
PublisherAmerican Society of Mechanical Engineers (ASME)
ISBN (Electronic)9780791888346
DOIs
Publication statusPublished - 2024
EventASME 2024 International Design Engineering Technical Conferences and Computers and Information in Engineering Conference, IDETC-CIE 2024 - Washington, United States
Duration: 25 Aug 202428 Aug 2024

Publication series

NameProceedings of the ASME Design Engineering Technical Conference
Volume2A-2024

Conference

ConferenceASME 2024 International Design Engineering Technical Conferences and Computers and Information in Engineering Conference, IDETC-CIE 2024
Country/TerritoryUnited States
CityWashington
Period25/08/2428/08/24

Bibliographical note

Publisher Copyright:
© 2024 by ASME.

Keywords

  • Convolutional recurrent neural networks
  • Finite difference
  • Machine learning
  • Partial differential equations
  • Physics-constrained neural networks

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