On the latent dimension of deep autoencoders for reduced order modeling of PDEs parametrized by random fields

IF 1.7 3区 数学 Q2 MATHEMATICS, APPLIED Advances in Computational Mathematics Pub Date : 2024-08-28 DOI:10.1007/s10444-024-10189-6
Nicola Rares Franco, Daniel Fraulin, Andrea Manzoni, Paolo Zunino
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Abstract

Deep Learning is having a remarkable impact on the design of Reduced Order Models (ROMs) for Partial Differential Equations (PDEs), where it is exploited as a powerful tool for tackling complex problems for which classical methods might fail. In this respect, deep autoencoders play a fundamental role, as they provide an extremely flexible tool for reducing the dimensionality of a given problem by leveraging on the nonlinear capabilities of neural networks. Indeed, starting from this paradigm, several successful approaches have already been developed, which are here referred to as Deep Learning-based ROMs (DL-ROMs). Nevertheless, when it comes to stochastic problems parameterized by random fields, the current understanding of DL-ROMs is mostly based on empirical evidence: in fact, their theoretical analysis is currently limited to the case of PDEs depending on a finite number of (deterministic) parameters. The purpose of this work is to extend the existing literature by providing some theoretical insights about the use of DL-ROMs in the presence of stochasticity generated by random fields. In particular, we derive explicit error bounds that can guide domain practitioners when choosing the latent dimension of deep autoencoders. We evaluate the practical usefulness of our theory by means of numerical experiments, showing how our analysis can significantly impact the performance of DL-ROMs.

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论深度自动编码器的潜在维度,用于对随机场参数化的 PDE 进行降阶建模
深度学习对偏微分方程(PDEs)的降阶模型(ROMs)设计产生了显著影响,它被用作一种强大的工具,用于解决经典方法可能无法解决的复杂问题。在这方面,深度自动编码器发挥着根本性的作用,因为它提供了一种极其灵活的工具,可利用神经网络的非线性能力来降低给定问题的维度。事实上,从这一范例出发,已经开发出了几种成功的方法,在此称为基于深度学习的 ROM(DL-ROM)。然而,当涉及以随机场为参数的随机问题时,目前对 DL-ROMs 的理解大多基于经验证据:事实上,其理论分析目前仅限于取决于有限数量(确定性)参数的 PDE 的情况。这项工作的目的是扩展现有文献,提供一些关于在随机场产生的随机性情况下使用 DL-ROM 的理论见解。特别是,我们推导出了明确的误差边界,可以指导领域从业者选择深度自动编码器的潜在维度。我们通过数值实验评估了我们理论的实用性,展示了我们的分析如何显著影响 DL-ROM 的性能。
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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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