Paper
21 July 2023 Design of a hybrid model of finite element method and machine learning to predict mode I-II crack expansions
Jianchun Yao, Xiaoqi Li, Jiawei Xiang
Author Affiliations +
Proceedings Volume 12717, 3rd International Conference on Artificial Intelligence, Automation, and High-Performance Computing (AIAHPC 2023); 127170Y (2023) https://doi.org/10.1117/12.2685330
Event: 3rd International Conference on Artificial Intelligence, Automation, and High-Performance Computing (AIAHPC 2023), 2023, Wuhan, China
Abstract
Compound mode I-II crack expansion is a common fracture source for the failures of mechanical components in real-world running structures. Therefore, prediction of crack extensions of mode I-II loading is a long-term research hotspot. Software FRANC3D is widely used to simulate the growth of fatigue cracks with high precision for engineering applications. However, the high computational cost for the usage of FRANC3D are obviously. Data-driven machine learning model is another strategy to predict crack expansion with low accuracy for the lack of training samples in real-world running structures. In order to fast and accuracy predict compound mode I-II crack expansion, a hybrid model of Finite Element Method (FEM) and Machine Learning (ML) is developed by interchangeably using FEM and ML. Two cases are given to validate the performance of the present hybrid model by using FEM and Support Vector Regression (SVR) and Generalized Regression Neural Network (GRNN), respectively to predict compound mode I-II crack expansions in a stress plate. Finally, to verify the high precision and efficiency of the hybrid model compared with the results of simulation and other models.
© (2023) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Jianchun Yao, Xiaoqi Li, and Jiawei Xiang "Design of a hybrid model of finite element method and machine learning to predict mode I-II crack expansions", Proc. SPIE 12717, 3rd International Conference on Artificial Intelligence, Automation, and High-Performance Computing (AIAHPC 2023), 127170Y (21 July 2023); https://doi.org/10.1117/12.2685330
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KEYWORDS
Machine learning

Finite element methods

Chemical elements

Material fatigue

Data modeling

Design and modelling

Solid modeling

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