用实例解决平面弹性问题的物理信息神经网络集合

IF 2.3 3区 工程技术 Q2 MECHANICS Acta Mechanica Pub Date : 2024-08-29 DOI:10.1007/s00707-024-04053-3
Aliki D. Mouratidou, Georgios A. Drosopoulos, Georgios E. Stavroulakis
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引用次数: 0

摘要

固体力学中的二维(平面)弹性方程是利用物理信息神经网络(PINNs)集合进行数值求解的。方程系统包括运动学定义(即应变-位移关系)、连接应力张量与外部加载力的平衡方程以及应力和应变张量的各向同性构成关系。考虑了应变张量和位移的不同边界条件。所提出的计算方法基于人工智能原理,并使用了已开发的开源机器学习平台、用 Python 编写的科学软件 Tensorflow 和用于深度学习的应用编程接口 Keras 库。深度学习是通过训练物理信息神经网络模型来实现的,目的是拟合普通弹性方程和给定配位点的边界条件。数值技术在一个给出精确解的例子中进行了测试。利用提出的多 PINN 模型计算了两个平面应力问题实例。数值解与使用商业有限元软件获得的结果进行了比较。数值结果表明,应用多网络方法比使用具有多个输出的单 PINN 更为有利。得出的结果证实了所引入方法的效率。所提出的技术可以扩展并应用于具有非线性材料特性的结构。
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Ensemble of physics-informed neural networks for solving plane elasticity problems with examples

Two-dimensional (plane) elasticity equations in solid mechanics are solved numerically with the use of an ensemble of physics-informed neural networks (PINNs). The system of equations consists of the kinematic definitions, i.e. the strain–displacement relations, the equilibrium equations connecting a stress tensor with external loading forces and the isotropic constitutive relations for stress and strain tensors. Different boundary conditions for the strain tensor and displacements are considered. The proposed computational approach is based on principles of artificial intelligence and uses a developed open-source machine learning platform, scientific software Tensorflow, written in Python and Keras library, an application programming interface, intended for a deep learning. A deep learning is performed through training the physics-informed neural network model in order to fit the plain elasticity equations and given boundary conditions at collocation points. The numerical technique is tested on an example, where the exact solution is given. Two examples with plane stress problems are calculated with the proposed multi-PINN model. The numerical solution is compared with results obtained after using commercial finite element software. The numerical results have shown that an application of a multi-network approach is more beneficial in comparison with using a single PINN with many outputs. The derived results confirmed the efficiency of the introduced methodology. The proposed technique can be extended and applied to the structures with nonlinear material properties.

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来源期刊
Acta Mechanica
Acta Mechanica 物理-力学
CiteScore
4.30
自引率
14.80%
发文量
292
审稿时长
6.9 months
期刊介绍: Since 1965, the international journal Acta Mechanica has been among the leading journals in the field of theoretical and applied mechanics. In addition to the classical fields such as elasticity, plasticity, vibrations, rigid body dynamics, hydrodynamics, and gasdynamics, it also gives special attention to recently developed areas such as non-Newtonian fluid dynamics, micro/nano mechanics, smart materials and structures, and issues at the interface of mechanics and materials. The journal further publishes papers in such related fields as rheology, thermodynamics, and electromagnetic interactions with fluids and solids. In addition, articles in applied mathematics dealing with significant mechanics problems are also welcome.
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