TY - JOUR
T1 - A fusion of neural, genetic and ensemble machine learning approaches for enhancing the engineering predictive capabilities of lightweight foamed reinforced concrete beam
AU - Chen, Yang
AU - Zeng, Jie
AU - Jia, Jianping
AU - Jabli, Mahjoub
AU - Abdullah, Nermeen
AU - Elattar, Samia
AU - Khadimallah, Mohamed Amine
AU - Marzouki, Riadh
AU - Hashmi, Ahmed
AU - Assilzadeh, Hamid
N1 - Publisher Copyright:
© 2024
PY - 2024/5/1
Y1 - 2024/5/1
N2 - This research explores lightweight foamed reinforced concrete beams, crucial in modern construction for their strength and reduced weight. It introduces a novel approach, integrating three machine learning models: Neural Networks (NNs), Genetic Algorithms (GAs), and Ensemble Techniques, especially Gradient Boosting Machines (GBM). The study evaluates a dataset of 100 tests under various stress conditions, leveraging NNs for deep learning, GAs for feature optimization, and the robustness of GBM. The results demonstrate NNs achieving 88.5% deflection accuracy, 87% load-bearing capacity, and 86% failure point accuracy. GAs show slightly lower performance, while GBM excels with 90.2%, 91%, and 89% in these areas, respectively. Notably, the combined model significantly improves accuracy, reaching 96.8% in deflection, 97.2% in load-bearing capacity, and 96.5% in failure point prediction. This fusion of diverse machine learning approaches marks a significant advancement in structural engineering, enhancing predictive modeling for concrete beams.
AB - This research explores lightweight foamed reinforced concrete beams, crucial in modern construction for their strength and reduced weight. It introduces a novel approach, integrating three machine learning models: Neural Networks (NNs), Genetic Algorithms (GAs), and Ensemble Techniques, especially Gradient Boosting Machines (GBM). The study evaluates a dataset of 100 tests under various stress conditions, leveraging NNs for deep learning, GAs for feature optimization, and the robustness of GBM. The results demonstrate NNs achieving 88.5% deflection accuracy, 87% load-bearing capacity, and 86% failure point accuracy. GAs show slightly lower performance, while GBM excels with 90.2%, 91%, and 89% in these areas, respectively. Notably, the combined model significantly improves accuracy, reaching 96.8% in deflection, 97.2% in load-bearing capacity, and 96.5% in failure point prediction. This fusion of diverse machine learning approaches marks a significant advancement in structural engineering, enhancing predictive modeling for concrete beams.
KW - Ensemble techniques
KW - Genetic algorithms (GAs)
KW - Gradient boosting machines (GBM)
KW - Lightweight foamed reinforced concrete beams
KW - Neural networks (NNs)
KW - Predictive modeling
UR - http://www.scopus.com/inward/record.url?scp=85190848508&partnerID=8YFLogxK
U2 - 10.1016/j.powtec.2024.119680
DO - 10.1016/j.powtec.2024.119680
M3 - Article
AN - SCOPUS:85190848508
SN - 0032-5910
VL - 440
JO - Powder Technology
JF - Powder Technology
M1 - 119680
ER -