参数域声波和电磁波传播的Galerkin神经网络- pod

IF 2.1 3区 数学 Q2 MATHEMATICS, APPLIED
Philipp Weder, Mariella Kast, Fernando Henríquez, Jan S. Hesthaven
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引用次数: 0

摘要

我们研究了参数定义域中声学和电磁波问题的降阶模型。参数到解映射的近似遵循所谓的Galerkin POD- nn方法,该方法将通过适当正交分解(POD)构建约简基与神经网络(nn)相结合。与标准的降基方法相反,这种方法允许对任何给定参数输入的降阶解进行快速有效的评估。在分析随机或参数定义域的问题时,我们通常从将公式转移到参考域开始。这产生了一个参数无关泛函空间上的参数相关变分问题集。特别地,我们考虑以高维、可能无限的参数输入为特征的仿射参数域变换。为了保证高保真度解的评估次数可控,我们建议使用低差异序列对参数空间进行有效采样。然后,我们训练一个神经网络来学习约简表示中的系数。这种方法完全解耦了简化基范式的离线和在线阶段。三维亥姆霍兹方程和麦克斯韦方程的数值结果证实了该方法在一定程度上的精度,并且与传统的Galerkin POD方法相比,该方法在在线加速方面有显著提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Galerkin neural network-POD for acoustic and electromagnetic wave propagation in parametric domains

We investigate reduced order models for acoustic and electromagnetic wave problems in parametrically defined domains. The parameter-to-solution maps are approximated following the so-called Galerkin POD-NN method, which combines the construction of a reduced basis via proper orthogonal decomposition (POD) with neural networks (NNs). As opposed to the standard reduced basis method, this approach allows for the swift and efficient evaluation of reduced order solutions for any given parametric input. As is customary in the analysis of problems in random or parametrically defined domains, we start by transporting the formulation to a reference domain. This yields a parameter-dependent variational problem set on parameter-independent functional spaces. In particular, we consider affine-parametric domain transformations characterized by a high-dimensional, possibly countably infinite, parametric input. To keep the number of evaluations of the high-fidelity solutions manageable, we propose using low-discrepancy sequences to sample the parameter space efficiently. Then, we train an NN to learn the coefficients in the reduced representation. This approach completely decouples the offline and online stages of the reduced basis paradigm. Numerical results for the three-dimensional Helmholtz and Maxwell equations confirm the method’s accuracy up to a certain barrier and show significant gains in online speed-up compared to the traditional Galerkin POD method.

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来源期刊
CiteScore
3.00
自引率
5.90%
发文量
68
审稿时长
3 months
期刊介绍: Advances in Computational Mathematics publishes high quality, accessible and original articles at the forefront of computational and applied mathematics, with a clear potential for impact across the sciences. The journal emphasizes three core areas: approximation theory and computational geometry; numerical analysis, modelling and simulation; imaging, signal processing and data analysis. This journal welcomes papers that are accessible to a broad audience in the mathematical sciences and that show either an advance in computational methodology or a novel scientific application area, or both. Methods papers should rely on rigorous analysis and/or convincing numerical studies.
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