Computer methods in applied mechanics and engineering2025,Vol.443Issue(Aug.1) :1.1-1.29.DOI:10.1016/j.cma.2025.118022

Point cloud neural operator for parametric PDEs on complex and variable geometries

Zeng C. Zhang Y. Zhou J. Wang Y. Wang Z. Wu L. Liu Y. Huang D.Z.
Computer methods in applied mechanics and engineering2025,Vol.443Issue(Aug.1) :1.1-1.29.DOI:10.1016/j.cma.2025.118022

Point cloud neural operator for parametric PDEs on complex and variable geometries

Zeng C. 1Zhang Y. 1Zhou J. 1Wang Y. 1Wang Z. 1Wu L. 2Liu Y. 3Huang D.Z.4
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作者信息

  • 1. School of Mathematical Sciences Peking University
  • 2. School of Mathematical Sciences Peking University||Center for Machine Learning Research Peking University
  • 3. Department of Mathematical Sciences Tsinghua University
  • 4. Center for Machine Learning Research Peking University||Beijing International Center for Mathematical Research Peking UniversityBeijing International Center for Mathematical Research Peking University||
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Abstract

© 2025Surrogate models are critical for accelerating computationally expensive simulations in science and engineering, particularly for solving parametric partial differential equations (PDEs). Developing practical surrogate models poses significant challenges, particularly in handling geometrically complex and variable domains, which are often discretized as point clouds. In this work, we systematically investigate the formulation of neural operators — maps between infinite-dimensional function spaces — on point clouds to better handle complex and variable geometries while mitigating discretization effects. We introduce the Point Cloud Neural Operator (PCNO), designed to efficiently approximate solution maps of parametric PDEs on such domains. We evaluate the performance of PCNO on a range of pedagogical PDE problems, focusing on aspects such as boundary layers, adaptively meshed point clouds, and variable domains with topological variations. Its practicality is further demonstrated through three-dimensional applications, such as predicting pressure loads on various vehicle types and simulating the inflation process of intricate parachute structures.

Key words

Complex geometries/Computational mechanics/Neural networks/Parametric partial differential equations/Surrogate modeling

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出版年

2025
Computer methods in applied mechanics and engineering

Computer methods in applied mechanics and engineering

SCI
ISSN:0045-7825
参考文献量119
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