利用奇异值分解方法求解偏微分方程,提高人工神经网络学习效率

IF 1.4 Q2 MATHEMATICS, APPLIED
Alfi Bella Kurniati , Maharani A. Bakar , Nur Fadhilah Ibrahim , Hanani Farhah Harun
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引用次数: 0

摘要

偏微分方程(PDEs)在模拟自然现象方面具有重要的潜力。必须寻找解决偏微分方程的实用方法。最近,人工神经网络(ANN)已成为逼近PDE解的有前途的工具。该方法在与各种优化技术的混合中具有很强的适应性,是一种强有力的工具。然而,人工神经网络的一个缺点是收敛速度慢。为此,我们将基于奇异值分解(SVD)的矩阵分解方法引入到人工神经网络学习过程中。分解矩阵通过在人工神经网络的第一和第二隐藏层的权重之间建立联系来操作,从而允许奇异矩阵值的生成。在分解方法中,确定保留的奇异值分量的过程涉及到从奇异值分解派生出来的三种约简技术:Thin SVD、Compact SVD和Truncated SVD。利用这些方法解决了6个一维和二维的二阶偏微分方程问题,并将其结合到一个独特的神经网络学习框架中。结果表明,与传统的人工神经网络或未采用分解方法的人工神经网络相比,本文提出的方法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing artificial neural network learning efficiency through Singular value decomposition for solving partial differential equations
Partial differential equations (PDEs) hold significant potential for modelling natural phenomena. It is essential to look at a practical way to solve the PDEs. Recently, Artificial Neural Networks (ANN) have emerged as promising tool for approximating PDE solutions. This approach stands out for its adaptability in hybridizing with various optimization techniques, rendering it a potent tool. One drawback of ANN, however, lies in its tendency for slow convergence. In response, we introduce the matrix decomposition method into the ANN learning process, rooted in Singular Value Decomposition (SVD). Decomposed matrix operates by establishing connections between the weights in the first and second hidden layers of the ANN, allowing the generation of singular matrix values. The process of determining the number of retained singular value components in the decomposition method involves three reduction techniques derived from SVD: Thin SVD, Compact SVD, and Truncated SVD. Six problems of second-order PDE on one- and two-dimensionality were solved using these methods, which were combined into a unique ANN learning framework. The results showed that our proposed method exhibits better performance compared to the conventional ANN or those without the decomposition method.
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来源期刊
Results in Applied Mathematics
Results in Applied Mathematics Mathematics-Applied Mathematics
CiteScore
3.20
自引率
10.00%
发文量
50
审稿时长
23 days
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