用有限元混合公式和人工神经网络修正项逼近声学黑洞

IF 3.5 3区 工程技术 Q1 MATHEMATICS, APPLIED Finite Elements in Analysis and Design Pub Date : 2024-08-26 DOI:10.1016/j.finel.2024.104236
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引用次数: 0

摘要

固体弹性动力学问题中的波传播通常需要精细的计算网格。在这项工作中,我们建议将稳定有限元方法(FEM)与人工神经网络(ANN)修正项相结合,在粗网格上解决此类问题。首先介绍了频域线性弹性问题的不可还原和混合速度-应力公式,并使用变分多尺度有限元法对其进行离散化。然后设计了一个非线性 ANN 修正项,将其添加到有限元代数矩阵系统中,并在粗网格上求解弹性动力学时产生精确的解决方案。作为案例研究,我们考虑了梁和板等高纵横比结构元素上的声学黑洞(ABHs)。ABH 是一种挠性波陷阱,其原理是在梁的末端或板的二维圆形压痕内根据幂律曲线减小结构厚度。要使 ABH 正常工作,末端/中心的厚度必须非常小,这就需要非常精细的计算网格。所提出的将稳定有限元与 ANN 修正相结合的策略使我们能够在粗网格上精确模拟 ABH 的响应,包括 ABH 阶数和训练测试之外的残余厚度值,以及不同的激励频率。
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Approximation of acoustic black holes with finite element mixed formulations and artificial neural network correction terms

Wave propagation in elastodynamic problems in solids often requires fine computational meshes. In this work we propose to combine stabilized finite element methods (FEM) with an artificial neural network (ANN) correction term to solve such problems on coarse meshes. Irreducible and mixed velocity–stress formulations for the linear elasticity problem in the frequency domain are first presented and discretized using a variational multiscale FEM. A non-linear ANN correction term is then designed to be added to the FEM algebraic matrix system and produce accurate solutions when solving elastodynamics on coarse meshes. As a case study we consider acoustic black holes (ABHs) on structural elements with high aspect ratios such as beams and plates. ABHs are traps for flexural waves based on reducing the structural thickness according to a power-law profile at the end of a beam, or within a two-dimensional circular indentation in a plate. For the ABH to function properly, the thickness at the termination/center must be very small, which demands very fine computational meshes. The proposed strategy combining the stabilized FEM with the ANN correction allows us to accurately simulate the response of ABHs on coarse meshes for values of the ABH order and residual thickness outside the training test, as well as for different excitation frequencies.

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来源期刊
CiteScore
4.80
自引率
3.20%
发文量
92
审稿时长
27 days
期刊介绍: The aim of this journal is to provide ideas and information involving the use of the finite element method and its variants, both in scientific inquiry and in professional practice. The scope is intentionally broad, encompassing use of the finite element method in engineering as well as the pure and applied sciences. The emphasis of the journal will be the development and use of numerical procedures to solve practical problems, although contributions relating to the mathematical and theoretical foundations and computer implementation of numerical methods are likewise welcomed. Review articles presenting unbiased and comprehensive reviews of state-of-the-art topics will also be accommodated.
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