A Machine Learning-Based Surrogate Finite Element Model for Estimating Dynamic Response of Mechanical Systems

被引:21
作者
Hashemi, Ali [1 ]
Jang, Jinwoo [1 ]
Beheshti, Javad [2 ]
机构
[1] Florida Atlantic Univ, Dept Civil Environm & Geomat Engn, Boca Raton, FL 33431 USA
[2] Islamic Azad Univ, IT & Comp Engn Dept, Tafresh 39515164, Iran
关键词
Surrogate modeling; finite element analysis; mechanical system analysis; machine learning; artificial neural networks; random forest trees; gradient boosting regression trees; adaptive boosting trees; DAMAGE DETECTION; PREDICTION; FRAMEWORK; NETWORKS; BRIDGES;
D O I
10.1109/ACCESS.2023.3282453
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
An efficient approach for improving the predictive understanding of dynamic mechanical system variability is developed in this work. The approach requires low model assessment time through the fitting of surrogate models. ML-based surrogate algorithms for finite element analysis (FEA) are developed in this study to accelerate FEA and prevent rerunning complex simulations. The research begins with an overview of the recent novelties in ML algorithms applied to finite element (FE) and other physics-based computational schemes. To predict the time-varying response variables, that is, the displacement of a two-dimensional truss structure, a surrogate FE technique based on ML algorithms is developed. In this work, several ML regression algorithms, including decision trees (DTs) and deep neural networks, are developed, and their efficacies are compared. In this study, the ML-based surrogate FE models are able to effectively predict the response of the truss structure in two dimensions over the entire structure. Extreme gradient-boosting DTs provide more precise outcomes and outperform other ML algorithms.
引用
收藏
页码:54509 / 54525
页数:17
相关论文
共 98 条
[61]   Computational mechanics enhanced by deep learning [J].
Oishi, Atsuya ;
Yagawa, Genki .
COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2017, 327 :327-351
[62]   The determination of bridge displacement using measured acceleration [J].
Park, KT ;
Kim, SH ;
Park, HS ;
Lee, KW .
ENGINEERING STRUCTURES, 2005, 27 (03) :371-378
[63]   A real-time iterative machine learning approach for temperature profile prediction in additive manufacturing processes [J].
Paul, Arindam ;
Mozaffar, Mojtaba ;
Yang, Zijiang ;
Liao, Wei-keng ;
Choudhary, Alok ;
Cao, Jian ;
Agrawal, Ankit .
2019 IEEE INTERNATIONAL CONFERENCE ON DATA SCIENCE AND ADVANCED ANALYTICS (DSAA 2019), 2019, :541-550
[64]   Data-driven shear strength prediction of steel fiber reinforced concrete beams using machine learning approach [J].
Rahman, Jesika ;
Ahmed, Khondaker Sakil ;
Khan, Nafiz Imtiaz ;
Islam, Kamrul ;
Mangalathu, Sujith .
ENGINEERING STRUCTURES, 2021, 233 (233)
[65]  
Raj M., 2021, INTEGRATING MAT MANU, V10, P1
[66]   Identifying Time Periods of Minimal Thermal Gradient for Temperature-Driven Structural Health Monitoring [J].
Reilly, John ;
Glisic, Branko .
SENSORS, 2018, 18 (03)
[67]   Ensemble of surrogates combining Kriging and Artificial Neural Networks for reliability analysis with local goodness measurement [J].
Ren, Chao ;
Aoues, Younes ;
Lemosse, Didier ;
De Cursi, Eduardo Souza .
STRUCTURAL SAFETY, 2022, 96
[68]   Assessing the predictive capability of ensemble tree methods for landslide susceptibility mapping using XGBoost, gradient boosting machine, and random forest [J].
Sahin, Emrehan Kutlug .
SN APPLIED SCIENCES, 2020, 2 (07)
[69]   Multi-fidelity surrogate modeling through hybrid machine learning for biomechanical and finite element analysis of soft tissues [J].
Sajjadinia, Seyed Shayan ;
Carpentieri, Bruno ;
Shriram, Duraisamy ;
Holzapfel, Gerhard A. .
COMPUTERS IN BIOLOGY AND MEDICINE, 2022, 148
[70]  
Sakaguchi K., 2021, FRONTIERS BUILT ENV, V6, P217