Convolutional neural network based reduced order modeling for multiscale problems

IF 3.8 2区 物理与天体物理 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Journal of Computational Physics Pub Date : 2025-03-01 Epub Date: 2025-01-02 DOI:10.1016/j.jcp.2024.113710
Xuehan Zhang, Lijian Jiang
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Abstract

In this paper, we combine convolutional neural networks (CNNs) with reduced order modeling (ROM) for efficient simulations of multiscale problems. These problems are modeled by partial differential equations with high-dimensional random inputs. The proposed method involves two separate CNNs: Basis CNNs and Coefficient CNNs (Coef CNNs), which correspond to two main parts of ROM. The method is thus called CNN-based ROM. The former one learns input-specific basis functions from the snapshots of fine-scale solutions. An activation function, inspired by Galerkin projection, is utilized at the output layer to reconstruct fine-scale solutions from the basis functions. Numerical results show that the basis functions learned by the Basis CNNs resemble data, which help to significantly reduce the number of the basis functions. Moreover, CNN-based ROM is less sensitive to data fluctuation caused by numerical errors than traditional ROM. Since the tests of Basis CNNs still need fine-scale stiffness matrix and load vector, it can not be directly applied to nonlinear problems. The latter CNNs, called Coef CNNs, are then designed to determine the coefficients for linear combination of basis functions. In addition, two applications of CNN-based ROM are presented, including predicting MsFEM basis functions within large oversampling regions and building accurate surrogates for inverse problems.
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基于卷积神经网络的多尺度问题降阶建模
在本文中,我们将卷积神经网络(cnn)与降阶建模(ROM)相结合,以有效地模拟多尺度问题。这些问题用带有高维随机输入的偏微分方程来建模。该方法涉及两个独立的cnn: Basis cnn和Coefficient cnn (Coef cnn),它们对应于ROM的两个主要部分,因此该方法被称为基于cnn的ROM。前者从精细尺度解的快照中学习特定于输入的基函数。基于伽辽金投影的激活函数,在输出层利用基函数重构精细尺度解。数值结果表明,basis cnn学习到的基函数与数据相似,这有助于显著减少基函数的数量。此外,与传统的ROM相比,基于cnn的ROM对数值误差引起的数据波动不太敏感,由于Basis cnn的测试仍然需要精细尺度的刚度矩阵和载荷向量,因此不能直接应用于非线性问题。后一种cnn被称为Coef cnn,用于确定基函数线性组合的系数。此外,还介绍了基于cnn的ROM的两种应用,包括在大过采样区域内预测MsFEM基函数和为逆问题建立精确的代理。
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来源期刊
Journal of Computational Physics
Journal of Computational Physics 物理-计算机:跨学科应用
CiteScore
7.60
自引率
14.60%
发文量
763
审稿时长
5.8 months
期刊介绍: Journal of Computational Physics thoroughly treats the computational aspects of physical problems, presenting techniques for the numerical solution of mathematical equations arising in all areas of physics. The journal seeks to emphasize methods that cross disciplinary boundaries. The Journal of Computational Physics also publishes short notes of 4 pages or less (including figures, tables, and references but excluding title pages). Letters to the Editor commenting on articles already published in this Journal will also be considered. Neither notes nor letters should have an abstract.
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