Dynamic Gaussian Graph Operator: Learning parametric partial differential equations in arbitrary discrete mechanics problems

IF 8 2区 计算机科学 Q1 AUTOMATION & CONTROL SYSTEMS Engineering Applications of Artificial Intelligence Pub Date : 2025-05-15 Epub Date: 2025-03-10 DOI:10.1016/j.engappai.2025.110405
Chu Wang, Jinhong Wu, Yanzhi Wang, Zhijian Zha, Qi Zhou
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Abstract

Deep learning methods have access to be employed for solving physical systems governed by parametric partial differential equations (PDEs) due to massive scientific data. It has been refined to operator learning that focuses on learning non-linear mapping between infinite-dimensional function spaces, offering interface from observations to solutions. However, state-of-the-art neural operators are limited to constant and uniform discretization, thereby leading to deficiency in generalization on arbitrary discretization schemes for computational domain. In this work, we propose a novel operator learning algorithm, referred to as Dynamic Gaussian Graph Operator (DGGO) that expands neural operators to learning parametric PDEs in arbitrary discrete mechanics problems. The Dynamic Gaussian Graph (DGG) kernel learns to map the observation vectors defined in general Euclidean space to metric vectors defined in high-dimensional uniform metric space. The DGG integral kernel is parameterized by Gaussian kernel weighted Riemann sum approximating and using dynamic message passing graph to depict the interrelation within the integral term. Fourier Neural Operator is selected to localize the metric vectors on spatial and frequency domains. Metric vectors are regarded as located on latent uniform domain, wherein spatial and spectral transformation offer highly regular constraints on solution space. The efficiency and robustness of DGGO are validated by applying it to solve numerical arbitrary discrete mechanics problems in comparison with mainstream neural operators. Ablation experiments are implemented to demonstrate the effectiveness of spatial transformation in the DGG kernel. The proposed method is utilized to forecast stress field of hyper-elastic material with geometrically variable void as engineering application.
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动态高斯图算子:学习任意离散力学问题中的参数偏微分方程
由于大量的科学数据,深度学习方法可以用于求解由参数偏微分方程(PDEs)控制的物理系统。它已被改进为算子学习,专注于学习无限维函数空间之间的非线性映射,提供从观察到解决方案的接口。然而,目前的神经算子仅限于常数和均匀离散化,导致在计算域内任意离散化方案的泛化能力不足。在这项工作中,我们提出了一种新的算子学习算法,称为动态高斯图算子(DGGO),它将神经算子扩展到学习任意离散力学问题中的参数偏微分方程。动态高斯图(DGG)核学习将一般欧几里德空间中定义的观测向量映射到高维均匀度量空间中定义的度量向量。采用高斯核加权黎曼和近似对DGG积分核进行参数化,并利用动态消息传递图来描述积分项内的相互关系。采用傅里叶神经算子在空间域和频率域对度量向量进行局部化。度量向量被认为位于潜均匀域上,其中空间变换和谱变换对解空间提供了高度规则的约束。通过与主流神经算子的比较,验证了DGGO算法求解数值任意离散力学问题的有效性和鲁棒性。通过烧蚀实验验证了DGG核空间变换的有效性。将该方法应用于具有几何变孔隙的超弹性材料的应力场预测。
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来源期刊
Engineering Applications of Artificial Intelligence
Engineering Applications of Artificial Intelligence 工程技术-工程:电子与电气
CiteScore
9.60
自引率
10.00%
发文量
505
审稿时长
68 days
期刊介绍: Artificial Intelligence (AI) is pivotal in driving the fourth industrial revolution, witnessing remarkable advancements across various machine learning methodologies. AI techniques have become indispensable tools for practicing engineers, enabling them to tackle previously insurmountable challenges. Engineering Applications of Artificial Intelligence serves as a global platform for the swift dissemination of research elucidating the practical application of AI methods across all engineering disciplines. Submitted papers are expected to present novel aspects of AI utilized in real-world engineering applications, validated using publicly available datasets to ensure the replicability of research outcomes. Join us in exploring the transformative potential of AI in engineering.
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