State-of-the-art AI-based computational analysis in civil engineering

C Wang, L Song, Z Yuan, J Fan - Journal of Industrial Information …, 2023 - Elsevier
With the informatization of the building and infrastructure industry, conventional analysis
methods are gradually proving inadequate in meeting the demands of the new era, such as …

[HTML][HTML] From model-driven to data-driven: A review of hysteresis modeling in structural and mechanical systems

T Wang, M Noori, WA Altabey, Z Wu, R Ghiasi… - … Systems and Signal …, 2023 - Elsevier
Hysteresis is a natural phenomenon that widely exists in structural and mechanical systems.
The characteristics of structural hysteretic behaviors are complicated. Therefore, numerous …

Real-time prediction of key monitoring physical parameters for early warning of fire-induced building collapse

W Ji, GQ Li, S Zhu - Computers & Structures, 2022 - Elsevier
This paper proposes a real-time prediction method for key monitoring physical parameters
(KMPPs) for early warning of fire-induced building collapse using machine learning. Since …

Hybrid stacked neural network empowered by novel loss function for structural response history prediction using input excitation and roof acceleration

R Karami, O Yazdanpanah, KM Dolatshahi… - … Applications of Artificial …, 2024 - Elsevier
This paper presents a framework to predict the entire displacement time histories of all floors
of buildings using a novel double-head neural network composed of causal Convolution …

Physics-informed deep 1D CNN compiled in extended state space fusion for seismic response modeling

Q Xiong, Q Kong, H Xiong, L Liao, C Yuan - Computers & Structures, 2024 - Elsevier
Artificial neural networks have been proven promisingly powerful in developing a data-
driven surrogate model for rapid seismic response modeling, while very few of them embody …

Deep learning for seismic structural monitoring by accounting for mechanics-based model uncertainty

M Cheraghzade, M Roohi - Journal of Building Engineering, 2022 - Elsevier
This paper presents a hybrid deep learning methodology for seismic structural monitoring,
damage detection, and localization of instrumented buildings. The proposed methodology …

Machine learning chain models for multi-response prediction of electrical equipment in substation subjected to earthquakes

W Zhu, Q Xie - Engineering Structures, 2024 - Elsevier
Engineering structures often exhibit multiple potential vulnerable positions during strong
earthquakes, such as porcelain insulators and connection flanges of electrical equipment in …

Prediction of seismic acceleration response of precast segmental self-centering concrete filled steel tube single-span bridges based on machine learning method

D Zhang, Y Chen, C Zhang, G Xue, J Zhang… - Engineering …, 2023 - Elsevier
The precast segmental self-centering concrete-filled steel tube (PSCFST) bridge is not only
the ideal choice for fast and environmentally friendly construction but also has good seismic …

Hybrid surrogate model combining physics and data for seismic drift estimation of shear‐wall structures

Y Fei, W Liao, P Zhao, X Lu… - Earthquake Engineering & …, 2024 - Wiley Online Library
To address the issue of costly computational expenditure related to high‐fidelity numerical
models, surrogate models have been widely used in various engineering tasks, including …

A semantic augmented approach to FEMA P-58 based dynamic regional seismic loss estimation application

Z Pan, J Shi, L Jiang - Journal of Building Engineering, 2024 - Elsevier
Regional seismic loss estimation (RSLE) is a crucial process in both immediate post-
earthquake emergency response and long-term reconstruction endeavors. Over the years …