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Deep and Physics-Informed Neural Networks as a Substitute for Finite Element Analysis

Published: 11 September 2024 Publication History

Abstract

Today, an engineer's success is largely based on their skill at employing Finite Element Analysis (FEA), a standard engineering modeling tool to numerically assess the behavior of structures. So far, improvements in computational power and FEA element formulations have supported significant advancements in this field. FEA can be used to provide accurate and fast answers to many engineering problems. However, FEA models are still associated with prohibitive time costs when solving complex scenarios. Unlike traditional computer algorithms, Machine Learning, by minimizing pre-established loss functions, can ascertain patterns and make predictions without being explicitly programmed for a given task. This paper presents initial results on improving structural analysis tools by harnessing the power of Machine Learning algorithms, namely Deep Artificial Neural Networks (ANNs) and Physics-Informed Neural Networks (PINNs), with the final objective of substituting or accelerating FEA in accurately predicting the structural behavior within an engineering domain. It is found that ANNs can accurately predict the stress, strain, and displacement maps for a cantilevered rectangular plate under a concentrated load. ANNs demonstrate that, with a large training dataset, efficient and accurate predictions can be achieved although only for specific problems. These algorithms could be enhanced with the governing differential equations to improve convergence and speed. PINNs show that, despite being less efficient than FEA, the method shows more generalization potential than ANNs. Both results show the potential for machine learning algorithms to enhance traditional computational mechanics methods.

References

[1]
Thai, Huu-Tai. "Machine learning for structural engineering: A state-of-the-art review." In Structures, vol. 38, pp. 448-491. Elsevier, 2022.
[2]
Tapeh, Arash Teymori Gharah, and M. Z. Naser. "Artificial intelligence, machine learning, and deep learning in structural engineering: a scientometrics review of trends and best practices." Archives of Computational Methods in Engineering 30, no. 1 (2023): 115-159.
[3]
Liang, Liang, Minliang Liu, Caitlin Martin, and Wei Sun. "A deep learning approach to estimate stress distribution: a fast and accurate surrogate of finite-element analysis." Journal of The Royal Society Interface 15, no. 138 (2018): 20170844.
[4]
Bolandi, Hamed, Xuyang Li, Talal Salem, Vishnu Naresh Boddeti, and Nizar Lajnef. "Bridging finite element and deep learning: High-resolution stress distribution prediction in structural components." Frontiers of Structural and Civil Engineering 16, no. 11 (2022): 1365-1377.
[5]
Shin, Seungyeon, Ah-hyeon Jin, Soyoung Yoo, Sunghee Lee, ChangGon Kim, Sungpil Heo, and Namwoo Kang. "Wheel impact test by deep learning: prediction of location and magnitude of maximum stress." Structural and Multidisciplinary Optimization 66, no. 1 (2023): 24.
[6]
Ribeiro, Bruno Alves, João Alves Ribeiro, Faez Ahmed, Hugo Penedones, Jorge Belinha, Luís Sarmento, Miguel Anibal Bessa, and Sérgio Tavares. "SimuStruct: Simulated Structural Plate with Holes Dataset for Machine Learning Application." In Workshop on''Machine Learning for Materials''ICLR 2023. 2023.
[7]
Zhi, Peng, Wu, Yuching, Qi, Cheng, Zhu, Tao, Wu, Xiao and Wu, Hongyu “Surrogate-Based Physics-Informed Neural Networks for Elliptic Partial Differential Equations.” Mathematics, 11, issue 12, p. 1-16, (2023)
[8]
Jiang, Haoliang, Zhenguo Nie, Roselyn Yeo, Amir Barati Farimani, and Levent Burak Kara. "Stressgan: A generative deep learning model for two-dimensional stress distribution prediction." Journal of Applied Mechanics 88, no. 5 (2021): 051005.
[9]
Nie, Zhenguo, Haoliang Jiang, and Levent Burak Kara. "Stress field prediction in cantilevered structures using convolutional neural networks." Journal of Computing and Information Science in Engineering 20, no. 1 (2020): 011002.
[10]
Raissi, Maziar, Paris Perdikaris, and George E. Karniadakis. "Physics-informed neural networks: A deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations." Journal of Computational Physics 378 (2019): 686-707.
[11]
Karniadakis, George Em, Ioannis G. Kevrekidis, Lu Lu, Paris Perdikaris, Sifan Wang, and Liu Yang. "Physics-informed machine learning." Nature Reviews Physics 3, no. 6 (2021): 422-440.
[12]
Lu, Lu, Xuhui Meng, Zhiping Mao, and George Em Karniadakis. "DeepXDE: A deep learning library for solving differential equations." SIAM Review 63, no. 1 (2021): 208-228.
[13]
Zhuang, Xiaoying, Hongwei Guo, Naif Alajlan, Hehua Zhu, and Timon Rabczuk. "Deep autoencoder based energy method for the bending, vibration, and buckling analysis of Kirchhoff plates with transfer learning." European Journal of Mechanics-A/Solids 87 (2021): 104225.
[14]
Li, Wei, Martin Z. Bazant, and Juner Zhu. "A physics-guided neural network framework for elastic plates: Comparison of governing equations-based and energy-based approaches." Computer Methods in Applied Mechanics and Engineering 383 (2021): 113933.
[15]
Rao, Chengping, Hao Sun, and Yang Liu. "Physics-informed deep learning for computational elastodynamics without labeled data." Journal of Engineering Mechanics 147, no. 8 (2021): 04021043.
[16]
Grossmann, Tamara G., Urszula Julia Komorowska, Jonas Latz, and Carola-Bibiane Schönlieb. "Can physics-informed neural networks beat the finite element method?." arXiv preprint arXiv:2302.04107 (2023).
[17]
Dassault Systèmes Simulia, Abaqus 6.18, (2016).

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  • (2024)Physics-Informed Neural Network for Solving a One-Dimensional Solid Mechanics ProblemModelling10.3390/modelling50400805:4(1532-1549)Online publication date: 18-Oct-2024

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  1. Deep and Physics-Informed Neural Networks as a Substitute for Finite Element Analysis

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      cover image ACM Other conferences
      ICMLT '24: Proceedings of the 2024 9th International Conference on Machine Learning Technologies
      May 2024
      336 pages
      ISBN:9798400716379
      DOI:10.1145/3674029
      This work is licensed under a Creative Commons Attribution International 4.0 License.

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      Association for Computing Machinery

      New York, NY, United States

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      Published: 11 September 2024

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      1. Finite Element Analysis
      2. Machine Learning

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      • (2024)Physics-Informed Neural Network for Solving a One-Dimensional Solid Mechanics ProblemModelling10.3390/modelling50400805:4(1532-1549)Online publication date: 18-Oct-2024

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