POD-DL-ROM 的误差估计:通过适当正交分解增强的非线性参数化 PDE 减阶建模深度学习框架

IF 1.7 3区 数学 Q2 MATHEMATICS, APPLIED
Simone Brivio, Stefania Fresca, Nicola Rares Franco, Andrea Manzoni
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引用次数: 0

摘要

最近提出的 POD-DL-ROMs 是为非线性参数化偏微分方程建立精确可靠的降阶模型(ROMs)的一种极为通用的策略,它结合了(i)通过适当正交分解(POD)获得的初步降维,以提高效率、(ii) 自编码器架构,将 POD 空间的维度进一步降低到少数潜坐标,以及 (iii) 密集神经网络,学习描述潜坐标动态的地图,作为输入参数和时间变量的函数。在这项工作中,我们旨在通过全面的误差分析来证明 POD-DL-ROMs 出色的近似能力,说明生成训练数据所需的采样、POD 空间的维度和底层神经网络的复杂性对解决方案的影响,从而制定实用的标准来控制相关解域近似的相对误差,并得出一般误差估计值。此外,我们还表明,从理论角度来看,POD-DL-ROM 在模型复杂度方面优于几种基于深度学习的技术。最后,我们通过适当的数值实验验证了我们的发现,实验范围从分析定义的参数依赖算子到若干参数化 PDE。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Error estimates for POD-DL-ROMs: a deep learning framework for reduced order modeling of nonlinear parametrized PDEs enhanced by proper orthogonal decomposition

POD-DL-ROMs have been recently proposed as an extremely versatile strategy to build accurate and reliable reduced order models (ROMs) for nonlinear parametrized partial differential equations, combining (i) a preliminary dimensionality reduction obtained through proper orthogonal decomposition (POD) for the sake of efficiency, (ii) an autoencoder architecture that further reduces the dimensionality of the POD space to a handful of latent coordinates, and (iii) a dense neural network to learn the map that describes the dynamics of the latent coordinates as a function of the input parameters and the time variable. Within this work, we aim at justifying the outstanding approximation capabilities of POD-DL-ROMs by means of a thorough error analysis, showing how the sampling required to generate training data, the dimension of the POD space, and the complexity of the underlying neural networks, impact on the solutions us to formulate practical criteria to control the relative error in the approximation of the solution field of interest, and derive general error estimates. Furthermore, we show that, from a theoretical point of view, POD-DL-ROMs outperform several deep learning-based techniques in terms of model complexity. Finally, we validate our findings by means of suitable numerical experiments, ranging from parameter-dependent operators analytically defined to several parametrized PDEs.

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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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