作者
Weihang Ouyang, Liang Chen, An-Rui Liang, Si-Wei Liu
发表日期
2024/8/15
期刊
Computers & Structures
卷号
300
页码范围
107425
出版商
Pergamon
简介
The line finite element method (LFEM) is the predominant simulation method in structural design due to its robustness in large-scale structural analysis. However, it sometimes suffers from the tedious computational process due to its fine-mesh requirement to ensure accuracy. The machine learning (ML) technique provides an efficient mesh-free alternative but necessitating tremendous training datasets for modeling large-scale structural systems. In this paper, a novel numerical framework, named the neural networks-based line element (NNLE) method, synergizing the unique advantages of the finite element method and ML technique, is proposed and presented within the context of large deflection frame analysis. The neural networks (NN) model is only trained for modeling single components, thereby significantly diminishing the model scale and the required training dataset. Then, the NN model is used to …
学术搜索中的文章
W Ouyang, L Chen, AR Liang, SW Liu - Computers & Structures, 2024