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Multi-Step Physics-Informed Deep Operator Neural Network for Directly Solving Partial Differential Equations

Applied Sciences (Switzerland), ISSN: 2076-3417, Vol: 14, Issue: 13
2024
  • 0
    Citations
  • 0
    Usage
  • 3
    Captures
  • 2
    Mentions
  • 0
    Social Media
Metric Options:   Counts1 Year3 Year

Metrics Details

  • Captures
    3
  • Mentions
    2
    • Blog Mentions
      1
      • 1
    • News Mentions
      1
      • 1

Most Recent Blog

Applied Sciences, Vol. 14, Pages 5490: Multi-Step Physics-Informed Deep Operator Neural Network for Directly Solving Partial Differential Equations

Applied Sciences, Vol. 14, Pages 5490: Multi-Step Physics-Informed Deep Operator Neural Network for Directly Solving Partial Differential Equations Applied Sciences doi: 10.3390/app14135490 Authors: Jing Wang

Most Recent News

New Applied Sciences Research Reported from Southwest University of Science and Technology (Multi-Step Physics-Informed Deep Operator Neural Network for Directly Solving Partial Differential Equations)

2024 JUL 17 (NewsRx) -- By a News Reporter-Staff News Editor at NewsRx Science Daily -- New research on applied sciences is the subject of

Article Description

This paper establishes a method for solving partial differential equations using a multi-step physics-informed deep operator neural network. The network is trained by embedding physics-informed constraints. Different from traditional neural networks for solving partial differential equations, the proposed method uses a deep neural operator network to indirectly construct the mapping relationship between the variable functions and solution functions. This approach makes full use of the hidden information between the variable functions and independent variables. The process whereby the model captures incredibly complex and highly nonlinear relationships is simplified, thereby making network learning easier and enhancing the extraction of information about the independent variables in partial differential systems. In terms of solving partial differential equations, we verify that the multi-step physics-informed deep operator neural network markedly improves the solution accuracy compared with a traditional physics-informed deep neural operator network, especially when the problem involves complex physical phenomena with large gradient changes.

Bibliographic Details

Jing Wang; Jun Huang; Qingfeng Wang; Yubo Li; Anping Wu; Feng Liu; Zheng Chen

MDPI AG

Materials Science; Physics and Astronomy; Engineering; Chemical Engineering; Computer Science

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