Machine learning for structural engineering: A state-of-the-art review

HT Thai - Structures, 2022‏ - Elsevier
Abstract Machine learning (ML) has become the most successful branch of artificial
intelligence (AI). It provides a unique opportunity to make structural engineering more …

[HTML][HTML] Using machine learning to predict the long-term performance of fibre-reinforced polymer structures: A state-of-the-art review

C Machello, M Bazli, A Rajabipour, HM Rad… - … and Building Materials, 2023‏ - Elsevier
When exposed to environmental conditions, fibre-reinforced polymer (FRP) composites are
prone to material degradation. The environmental reduction factor in different structural …

[HTML][HTML] Explainable machine learning model and reliability analysis for flexural capacity prediction of RC beams strengthened in flexure with FRCM

TG Wakjira, M Ibrahim, U Ebead, MS Alam - Engineering Structures, 2022‏ - Elsevier
This paper presents a data-driven approach to determine the load and flexural capacities of
reinforced concrete (RC) beams strengthened with fabric reinforced cementitious matrix …

[HTML][HTML] Tree-based machine learning approach to modelling tensile strength retention of Fibre Reinforced Polymer composites exposed to elevated temperatures

C Machello, KA Baghaei, M Bazli, A Hadigheh… - Composites Part B …, 2024‏ - Elsevier
Abstract Fibre Reinforced Polymer (FRP) composites are susceptible to degradation at
elevated temperatures. Accurate modelling of the tensile performance of FRP composites …

Soft computing-based models for the prediction of masonry compressive strength

PG Asteris, PB Lourenço, M Hajihassani… - Engineering …, 2021‏ - Elsevier
Masonry is a building material that has been used in the last 10.000 years and remains
competitive today for the building industry. The compressive strength of masonry is used in …

Explainable extreme gradient boosting tree-based prediction of load-carrying capacity of FRP-RC columns

AS Bakouregui, HM Mohamed, A Yahia… - Engineering …, 2021‏ - Elsevier
This study presents a new approach for predicting the load-carrying capacity of reinforced
concrete (RC) columns reinforced with fiber-reinforced polymer (FRP) bars with an eXtreme …

Machine learning-based prediction of CFST columns using gradient tree boosting algorithm

QV Vu, VH Truong, HT Thai - Composite Structures, 2021‏ - Elsevier
Among recent artificial intelligence techniques, machine learning (ML) has gained
significant attention during the past decade as an emerging topic in civil and structural …

Prediction of ultimate condition of FRP-confined recycled aggregate concrete using a hybrid boosting model enriched with tabular generative adversarial networks

XY Zhao, JX Chen, GM Chen, JJ Xu, LW Zhang - Thin-Walled Structures, 2023‏ - Elsevier
Despite its multiple benefits, recycled aggregate concrete (RAC) usually exhibits inferior
properties compared with natural aggregate concrete, which has been deemed as a hurdle …

Predicting shear strength of FRP-reinforced concrete beams using novel synthetic data driven deep learning

A Marani, ML Nehdi - Engineering Structures, 2022‏ - Elsevier
Abstract Machine learning algorithms have emerged as a powerful technique to predict the
engineering properties of composite materials and structures where traditional statistical …

Long-term performance prediction framework based on XGBoost decision tree for pultruded FRP composites exposed to water, humidity and alkaline solution

X Liu, TQ Liu, P Feng - Composite Structures, 2022‏ - Elsevier
Fiber reinforced polymer (FRP) composites are susceptible to material degradation when
exposed to environmental effects. To predict the residual tensile strength and modulus of …