用于 PDEs 的物理信息图形网格网络:解决复杂问题的混合方法

IF 4 2区 工程技术 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Advances in Engineering Software Pub Date : 2024-08-21 DOI:10.1016/j.advengsoft.2024.103758
M. Chenaud , F. Magoulès , J. Alves
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引用次数: 0

摘要

最近,深度学习的兴起带来了许多应用,包括利用物理信息神经网络求解偏微分方程。这种方法在一些学术案例中被证明非常有效。然而,由于缺乏物理不变性,再加上无法处理复杂几何图形或缺乏泛化能力等其他重大缺陷,它们在工业环境中无法与经典数值求解器竞争。本研究强调了在物理信息学习中使用自动微分的局限性。本文介绍了一种将物理信息图神经网络与有限元数值核相结合的混合方法。在研究了我们模型的理论特性后,我们将其应用于复杂的二维和三维几何图形。我们的选择得到了烧蚀研究的支持,并对所提出方法的通用能力进行了评估。
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Physics-Informed Graph-Mesh Networks for PDEs: A hybrid approach for complex problems

The recent rise of deep learning has led to numerous applications, including solving partial differential equations using Physics-Informed Neural Networks. This approach has proven highly effective in several academic cases. However, their lack of physical invariances, coupled with other significant weaknesses, such as an inability to handle complex geometries or their lack of generalization capabilities, make them unable to compete with classical numerical solvers in industrial settings. In this work, a limitation regarding the use of automatic differentiation in the context of physics-informed learning is highlighted. A hybrid approach combining physics-informed graph neural networks with numerical kernels from finite elements is introduced. After studying the theoretical properties of our model, we apply it to complex geometries, in two and three dimensions. Our choices are supported by an ablation study, and we evaluate the generalization capacity of the proposed approach.

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来源期刊
Advances in Engineering Software
Advances in Engineering Software 工程技术-计算机:跨学科应用
CiteScore
7.70
自引率
4.20%
发文量
169
审稿时长
37 days
期刊介绍: The objective of this journal is to communicate recent and projected advances in computer-based engineering techniques. The fields covered include mechanical, aerospace, civil and environmental engineering, with an emphasis on research and development leading to practical problem-solving. The scope of the journal includes: • Innovative computational strategies and numerical algorithms for large-scale engineering problems • Analysis and simulation techniques and systems • Model and mesh generation • Control of the accuracy, stability and efficiency of computational process • Exploitation of new computing environments (eg distributed hetergeneous and collaborative computing) • Advanced visualization techniques, virtual environments and prototyping • Applications of AI, knowledge-based systems, computational intelligence, including fuzzy logic, neural networks and evolutionary computations • Application of object-oriented technology to engineering problems • Intelligent human computer interfaces • Design automation, multidisciplinary design and optimization • CAD, CAE and integrated process and product development systems • Quality and reliability.
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